Compare commits
1 Commits
| Author | SHA1 | Date | |
|---|---|---|---|
| 597b1ff1a2 |
-11
@@ -1,11 +0,0 @@
|
||||
# Compiled binaries
|
||||
dist/neuron
|
||||
dist/neuron.backup-*
|
||||
dist/*.backup-*
|
||||
|
||||
# Build artifacts
|
||||
*.o
|
||||
*.a
|
||||
|
||||
# macOS
|
||||
.DS_Store
|
||||
+34
-58
@@ -152,27 +152,6 @@ fn emit_heartbeat() -> Void {
|
||||
// a reserved/conflicting name in EL that compiles to EL_NULL at call sites.
|
||||
//
|
||||
// Returns true if any nodes were activated.
|
||||
// auto_term_try_slot — attempt to set cseed_auto from one WM slot.
|
||||
// Only writes to cseed_auto if node_type is Memory, BacklogItem, or Entity
|
||||
// AND the first word of the label is > 3 chars (guards bracket-prefixed labels).
|
||||
// Designed to be called in reverse slot order (highest index first) so that
|
||||
// the lowest-indexed slot (highest WM weight) wins by last-write semantics.
|
||||
fn auto_term_try_slot(slot_type: String, slot_lbl: String) -> Void {
|
||||
state_set("_ats_ok", "0")
|
||||
if str_eq(slot_type, "Memory") { state_set("_ats_ok", "1") }
|
||||
if str_eq(slot_type, "BacklogItem") { state_set("_ats_ok", "1") }
|
||||
if str_eq(slot_type, "Entity") { state_set("_ats_ok", "1") }
|
||||
if str_eq(state_get("_ats_ok"), "1") {
|
||||
if !str_eq(slot_lbl, "") {
|
||||
let sp: Int = str_find_chars(slot_lbl, " :([")
|
||||
if sp > 3 {
|
||||
state_set("cseed_auto", str_slice(slot_lbl, 0, sp))
|
||||
}
|
||||
}
|
||||
}
|
||||
return ""
|
||||
}
|
||||
|
||||
fn proactive_curiosity() -> Bool {
|
||||
let ts: Int = time_now()
|
||||
// Rotate seed set every minute using wall clock: (minutes_since_epoch) % 4.
|
||||
@@ -231,46 +210,43 @@ fn proactive_curiosity() -> Bool {
|
||||
let found_c: Int = json_array_len(results_c)
|
||||
let found: Int = found_a + found_b + found_c
|
||||
|
||||
// WM-autobiographical 4th seed: scan top-10 WM nodes for the highest-ranked
|
||||
// non-Knowledge node. Extract its first word as an additional curiosity term.
|
||||
// This creates a self-referencing curiosity loop — exploration radiates outward
|
||||
// from whatever is most personally salient right now (Memory, BacklogItem, Entity),
|
||||
// mirroring default-mode-network resting-state dynamics.
|
||||
// WM-autobiographical 4th seed: extract the first word from the top working-memory
|
||||
// node's label and activate it as an additional term. This creates a self-referencing
|
||||
// curiosity loop — exploration radiates outward from whatever is most salient right now,
|
||||
// mirroring the brain's default-mode-network resting-state dynamics. Breaks the fixed
|
||||
// 4-set determinism that otherwise reinforces the same subgraph every rotation cycle.
|
||||
//
|
||||
// WHY TOP-10 (2026-06-23 self-review): the old top-1 scan always returned a
|
||||
// Knowledge node (WM is dominated by stable engram-metadata Knowledge nodes at
|
||||
// position [0]). Verified: Memory nodes consistently appear at WM positions [1],[2]
|
||||
// with wm ~0.59. Scanning top-10 reliably finds at least one Memory/BacklogItem/Entity.
|
||||
// Out-of-bounds json_array_get returns "" → json_get("","...") returns "" →
|
||||
// auto_term_try_slot is a no-op → safe for WM sets smaller than 10.
|
||||
// str_find_chars finds the first space/colon/bracket delimiter. sp > 3 guards against
|
||||
// very short or bracket-prefixed labels like "[BacklogItem]" (sp=0, not > 3 → skipped).
|
||||
// EL scoping: state_set/state_get pattern used because let inside if creates inner scope.
|
||||
//
|
||||
// NODE TYPE FILTER (2026-06-19): Knowledge nodes excluded as seeds — they create
|
||||
// self-reinforcing loops (Knowledge node activates its own first word, stays dominant).
|
||||
// Only Memory/BacklogItem/Entity carry live contextual salience worth radiating from.
|
||||
//
|
||||
// SLOT ORDER: call 9→0 so slot 0 (highest WM weight) wins by last-write semantics.
|
||||
// NODE TYPE FILTER (2026-06-19 self-review): only derive auto_term from Memory,
|
||||
// BacklogItem, or Entity nodes. Knowledge nodes are stable reference material —
|
||||
// using their first word as a curiosity seed creates a self-reinforcing loop: e.g.
|
||||
// "Numeric tier strings in Engram..." (a Knowledge node) -> auto_term="Numeric" ->
|
||||
// activates all "Numeric" nodes -> keeps that Knowledge node dominant in WM forever.
|
||||
// Knowledge nodes should be REACHED by curiosity seeds, not drive them. Only dynamic
|
||||
// personal/work nodes (Memory, BacklogItem, Entity) carry live contextual salience
|
||||
// worth radiating from. (2026-06-11 origin; filter added 2026-06-19 self-review)
|
||||
state_set("cseed_auto", "")
|
||||
let wm10: String = engram_wm_top_json(10)
|
||||
let wm10_n9: String = json_array_get(wm10, 9)
|
||||
let wm10_n8: String = json_array_get(wm10, 8)
|
||||
let wm10_n7: String = json_array_get(wm10, 7)
|
||||
let wm10_n6: String = json_array_get(wm10, 6)
|
||||
let wm10_n5: String = json_array_get(wm10, 5)
|
||||
let wm10_n4: String = json_array_get(wm10, 4)
|
||||
let wm10_n3: String = json_array_get(wm10, 3)
|
||||
let wm10_n2: String = json_array_get(wm10, 2)
|
||||
let wm10_n1: String = json_array_get(wm10, 1)
|
||||
let wm10_n0: String = json_array_get(wm10, 0)
|
||||
auto_term_try_slot(json_get(wm10_n9, "node_type"), json_get(wm10_n9, "label"))
|
||||
auto_term_try_slot(json_get(wm10_n8, "node_type"), json_get(wm10_n8, "label"))
|
||||
auto_term_try_slot(json_get(wm10_n7, "node_type"), json_get(wm10_n7, "label"))
|
||||
auto_term_try_slot(json_get(wm10_n6, "node_type"), json_get(wm10_n6, "label"))
|
||||
auto_term_try_slot(json_get(wm10_n5, "node_type"), json_get(wm10_n5, "label"))
|
||||
auto_term_try_slot(json_get(wm10_n4, "node_type"), json_get(wm10_n4, "label"))
|
||||
auto_term_try_slot(json_get(wm10_n3, "node_type"), json_get(wm10_n3, "label"))
|
||||
auto_term_try_slot(json_get(wm10_n2, "node_type"), json_get(wm10_n2, "label"))
|
||||
auto_term_try_slot(json_get(wm10_n1, "node_type"), json_get(wm10_n1, "label"))
|
||||
auto_term_try_slot(json_get(wm10_n0, "node_type"), json_get(wm10_n0, "label"))
|
||||
let wm_top_j: String = engram_wm_top_json(1)
|
||||
let wm_top_n: String = json_array_get(wm_top_j, 0)
|
||||
let wm_top_lbl: String = json_get(wm_top_n, "label")
|
||||
let wm_top_type: String = json_get(wm_top_n, "node_type")
|
||||
// state_set/state_get pattern: EL let-inside-if creates inner scope only.
|
||||
state_set("allow_auto", "0")
|
||||
if str_eq(wm_top_type, "Memory") { state_set("allow_auto", "1") }
|
||||
if str_eq(wm_top_type, "BacklogItem") { state_set("allow_auto", "1") }
|
||||
if str_eq(wm_top_type, "Entity") { state_set("allow_auto", "1") }
|
||||
let allow_auto: String = state_get("allow_auto")
|
||||
if str_eq(allow_auto, "1") {
|
||||
if !str_eq(wm_top_lbl, "") {
|
||||
let sp: Int = str_find_chars(wm_top_lbl, " :([")
|
||||
if sp > 3 {
|
||||
state_set("cseed_auto", str_slice(wm_top_lbl, 0, sp))
|
||||
}
|
||||
}
|
||||
}
|
||||
let auto_term: String = state_get("cseed_auto")
|
||||
let results_auto: String = if str_eq(auto_term, "") { "[]" } else { engram_activate_json(auto_term, 1) }
|
||||
let found_auto: Int = json_array_len(results_auto)
|
||||
|
||||
@@ -1,58 +1,38 @@
|
||||
// auto-generated by elc --emit-header — do not edit
|
||||
// auto-generated by elc --emit-header - do not edit
|
||||
extern fn chat_default_model() -> String
|
||||
extern fn engram_numeric_valid(s: String) -> Bool
|
||||
extern fn parse_float_x100(s: String) -> Int
|
||||
extern fn engram_score_node(node_json: String) -> Int
|
||||
extern fn engram_render_node(node_json: String) -> String
|
||||
extern fn engram_render_nodes(nodes_json: String) -> String
|
||||
extern fn engram_dedup_nodes(nodes_json: String) -> String
|
||||
extern fn engram_compile_ranked(nodes_json: String, max_nodes: Int) -> String
|
||||
extern fn engram_split_topics(message: String) -> String
|
||||
extern fn engram_extract_entities(message: String) -> String
|
||||
extern fn engram_detect_recall_intent(message: String) -> Bool
|
||||
extern fn engram_is_continuation(message: String, hist_len: Int) -> Bool
|
||||
extern fn engram_compile_multi(topic: String) -> String
|
||||
extern fn engram_nodes_merge(a: String, b: String) -> String
|
||||
extern fn id_in_seen(node_id: String, seen: String) -> Bool
|
||||
extern fn add_to_seen(seen: String, node_id: String) -> String
|
||||
extern fn engram_extract_ids(nodes_json: String) -> String
|
||||
extern fn gemini_api_key() -> String
|
||||
extern fn xai_api_key() -> String
|
||||
extern fn llm_call_grok(model: String, system: String, message: String) -> String
|
||||
extern fn llm_call_gemini(model: String, system: String, message: String) -> String
|
||||
extern fn build_identity_from_graph() -> String
|
||||
extern fn engram_compile(intent: String) -> String
|
||||
extern fn json_safe(s: String) -> String
|
||||
extern fn build_system_prompt(ctx: String, chat_mode: Bool) -> String
|
||||
extern fn build_system_prompt(ctx: String) -> String
|
||||
extern fn hist_append(hist: String, role: String, content: String) -> String
|
||||
extern fn hist_trim(hist: String) -> String
|
||||
extern fn hist_trim_with_bell_guard(hist: String) -> String
|
||||
extern fn clean_llm_response(s: String) -> String
|
||||
extern fn conv_history_persist(hist: String) -> Void
|
||||
extern fn conv_history_load() -> String
|
||||
extern fn session_preload_bullets(nodes: String, max_bullets: Int, snip_len: Int) -> String
|
||||
extern fn handle_chat(body: String) -> String
|
||||
extern fn handle_see(body: String) -> String
|
||||
extern fn studio_tools_json() -> String
|
||||
extern fn agentic_api_key() -> String
|
||||
extern fn call_neuron_mcp(tool_name: String, args_json: String) -> String
|
||||
extern fn agentic_tools_literal() -> String
|
||||
extern fn agentic_tools_with_web() -> String
|
||||
extern fn connector_tools_json() -> String
|
||||
extern fn agentic_tools_all() -> String
|
||||
extern fn call_mcp_bridge(tool_name: String, tool_input: String) -> String
|
||||
extern fn tool_auto_approved(tool_name: String) -> Bool
|
||||
extern fn call_neuron_mcp(tool_name: String, args: String) -> String
|
||||
extern fn agent_workspace_root() -> String
|
||||
extern fn path_within_root(path: String, root: String) -> Bool
|
||||
extern fn resolve_in_root(path: String, root: String) -> String
|
||||
extern fn dispatch_tool(tool_name: String, tool_input: String) -> String
|
||||
extern fn is_builtin_tool(tool_name: String) -> Bool
|
||||
extern fn next_bridge_id() -> String
|
||||
extern fn json_array_append(arr: String, item: String) -> String
|
||||
extern fn append_tool_log(log: String, name: String) -> String
|
||||
extern fn exec_tool_block(block: String) -> String
|
||||
extern fn agentic_blob(model: String, system: String, tools_json: String, messages: String, origin: String, approval: Bool, iteration: Int, tools_log: String, content: String, queue: String, results: String, next: Int) -> String
|
||||
extern fn extract_all_text(s: String) -> String
|
||||
extern fn strip_citations(s: String) -> String
|
||||
extern fn agentic_api_turn(model: String, safe_sys: String, tools_json: String, messages: String) -> String
|
||||
extern fn agentic_engine(session_id: String, blob: String) -> String
|
||||
extern fn handle_chat_agentic(body: String) -> String
|
||||
extern fn agentic_loop(session_id: String, model: String, safe_sys: String, tools_json: String, messages_in: String, h: Map, tools_log_in: String) -> String
|
||||
extern fn bridge_save(session_id: String, model: String, safe_sys: String, tools_json: String, messages: String, tools_log: String, tool_use_id: String) -> Bool
|
||||
extern fn agentic_resume(session_id: String, tool_use_id: String, content: String) -> String
|
||||
extern fn handle_tool_result(session_id: String, body: String) -> String
|
||||
extern fn handle_session_approve(session_id: String, body: String) -> String
|
||||
extern fn handle_chat_as_soul(body: String) -> String
|
||||
extern fn handle_dharma_room_turn(body: String) -> String
|
||||
extern fn handle_dharma_room_turn_agentic(body: String) -> String
|
||||
extern fn session_summary_write(summary_text: String) -> String
|
||||
extern fn session_summary_write_dated(summary_text: String, label: String) -> String
|
||||
extern fn session_summary_autogenerate(hist: String) -> String
|
||||
extern fn auto_persist(req: String, resp: String) -> Void
|
||||
extern fn strengthen_chat_nodes(activation_nodes: String) -> Void
|
||||
|
||||
+133
-46
@@ -25,7 +25,6 @@ el_val_t elapsed_ms(void);
|
||||
el_val_t elapsed_human(void);
|
||||
el_val_t embed_ok(void);
|
||||
el_val_t emit_heartbeat(void);
|
||||
el_val_t auto_term_try_slot(el_val_t slot_type, el_val_t slot_lbl);
|
||||
el_val_t proactive_curiosity(void);
|
||||
el_val_t pulse_count(void);
|
||||
el_val_t pulse_inc(void);
|
||||
@@ -43,6 +42,110 @@ el_val_t threat_score_history(el_val_t history);
|
||||
el_val_t threat_trajectory_check(el_val_t tool_name, el_val_t tool_input);
|
||||
el_val_t threat_history_append(el_val_t text);
|
||||
|
||||
el_val_t tier_working(void) {
|
||||
return EL_STR("Working");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t tier_episodic(void) {
|
||||
return EL_STR("Episodic");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t tier_canonical(void) {
|
||||
return EL_STR("Canonical");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_store(el_val_t content, el_val_t label, el_val_t tags) {
|
||||
return engram_node_full(content, EL_STR("Memory"), label, el_from_float(el_from_float(0.5)), el_from_float(el_from_float(0.5)), el_from_float(el_from_float(0.8)), EL_STR("Working"), tags);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_remember(el_val_t content, el_val_t tags) {
|
||||
return mem_store(content, EL_STR("soul-memory"), tags);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_recall(el_val_t query, el_val_t depth) {
|
||||
return engram_activate_json(query, depth);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_search(el_val_t query, el_val_t limit) {
|
||||
return engram_search_json(query, limit);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_strengthen(el_val_t node_id) {
|
||||
engram_strengthen(node_id);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_forget(el_val_t node_id) {
|
||||
engram_forget(node_id);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_consolidate(void) {
|
||||
el_val_t scanned = engram_node_count();
|
||||
el_val_t dummy = engram_scan_nodes_json(100, 0);
|
||||
el_val_t total_nodes = engram_node_count();
|
||||
el_val_t total_edges = engram_edge_count();
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"scanned\":"), int_to_str(scanned)), EL_STR(",\"total_nodes\":")), int_to_str(total_nodes)), EL_STR(",\"total_edges\":")), int_to_str(total_edges)), EL_STR("}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_save(el_val_t path) {
|
||||
engram_save(path);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_load(el_val_t path) {
|
||||
engram_load(path);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_boot_count_get(void) {
|
||||
el_val_t results = engram_search_json(EL_STR("soul:boot_count"), 3);
|
||||
if (str_eq(results, EL_STR(""))) {
|
||||
return 0;
|
||||
}
|
||||
if (str_eq(results, EL_STR("[]"))) {
|
||||
return 0;
|
||||
}
|
||||
el_val_t node = json_array_get(results, 0);
|
||||
el_val_t content = json_get(node, EL_STR("content"));
|
||||
el_val_t prefix = EL_STR("soul:boot_count:");
|
||||
if (!str_starts_with(content, prefix)) {
|
||||
return 0;
|
||||
}
|
||||
el_val_t num_str = str_slice(content, str_len(prefix), str_len(content));
|
||||
return str_to_int(num_str);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_boot_count_inc(void) {
|
||||
el_val_t current = mem_boot_count_get();
|
||||
el_val_t next = (current + 1);
|
||||
el_val_t content = el_str_concat(EL_STR("soul:boot_count:"), int_to_str(next));
|
||||
el_val_t tags = EL_STR("[\"soul-meta\",\"boot-counter\"]");
|
||||
el_val_t discard = engram_node_full(content, EL_STR("Memory"), EL_STR("soul:boot_count"), el_from_float(el_from_float(0.9)), el_from_float(el_from_float(0.9)), el_from_float(el_from_float(1.0)), EL_STR("Canonical"), tags);
|
||||
return next;
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_emit_state_event(el_val_t trigger, el_val_t kind, el_val_t content) {
|
||||
el_val_t boot = mem_boot_count_get();
|
||||
el_val_t ts = time_now();
|
||||
el_val_t safe_trigger = str_replace(trigger, EL_STR("\""), EL_STR("'"));
|
||||
el_val_t safe_content = str_replace(content, EL_STR("\""), EL_STR("'"));
|
||||
el_val_t payload = el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"trigger\":\""), safe_trigger), EL_STR("\"")), EL_STR(",\"kind\":\"")), kind), EL_STR("\"")), EL_STR(",\"content\":\"")), safe_content), EL_STR("\"")), EL_STR(",\"boot\":")), int_to_str(boot)), EL_STR(",\"ts\":")), int_to_str(ts)), EL_STR("}"));
|
||||
el_val_t tags = EL_STR("[\"internal-state\",\"pre-reasoning\",\"InternalStateEvent\"]");
|
||||
return engram_node_full(payload, EL_STR("InternalStateEvent"), el_str_concat(EL_STR("state-event:"), kind), el_from_float(el_from_float(0.85)), el_from_float(el_from_float(0.8)), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), tags);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t idle_count(void) {
|
||||
el_val_t s = state_get(EL_STR("soul.idle"));
|
||||
if (str_eq(s, EL_STR(""))) {
|
||||
@@ -68,7 +171,7 @@ el_val_t ise_post(el_val_t content) {
|
||||
el_val_t ise_url = env(EL_STR("SOUL_ISE_URL"));
|
||||
el_val_t engram_url = ({ el_val_t _if_result_1 = 0; if (str_eq(ise_url, EL_STR(""))) { _if_result_1 = (state_get(EL_STR("soul_engram_url"))); } else { _if_result_1 = (ise_url); } _if_result_1; });
|
||||
if (str_eq(engram_url, EL_STR(""))) {
|
||||
el_val_t discard = engram_node_full(content, EL_STR("InternalStateEvent"), EL_STR("state-event"), el_from_float(0.3), el_from_float(0.3), el_from_float(0.8), EL_STR("Episodic"), EL_STR("[\"internal-state\",\"InternalStateEvent\"]"));
|
||||
el_val_t discard = engram_node_full(content, EL_STR("InternalStateEvent"), EL_STR("state-event"), el_from_float(el_from_float(0.3)), el_from_float(el_from_float(0.3)), el_from_float(el_from_float(0.8)), EL_STR("Episodic"), EL_STR("[\"internal-state\",\"InternalStateEvent\"]"));
|
||||
return EL_STR("");
|
||||
}
|
||||
el_val_t safe1 = str_replace(content, EL_STR("\\"), EL_STR("\\\\"));
|
||||
@@ -142,29 +245,6 @@ el_val_t emit_heartbeat(void) {
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t auto_term_try_slot(el_val_t slot_type, el_val_t slot_lbl) {
|
||||
state_set(EL_STR("_ats_ok"), EL_STR("0"));
|
||||
if (str_eq(slot_type, EL_STR("Memory"))) {
|
||||
state_set(EL_STR("_ats_ok"), EL_STR("1"));
|
||||
}
|
||||
if (str_eq(slot_type, EL_STR("BacklogItem"))) {
|
||||
state_set(EL_STR("_ats_ok"), EL_STR("1"));
|
||||
}
|
||||
if (str_eq(slot_type, EL_STR("Entity"))) {
|
||||
state_set(EL_STR("_ats_ok"), EL_STR("1"));
|
||||
}
|
||||
if (str_eq(state_get(EL_STR("_ats_ok")), EL_STR("1"))) {
|
||||
if (!str_eq(slot_lbl, EL_STR(""))) {
|
||||
el_val_t sp = str_find_chars(slot_lbl, EL_STR(" :(["));
|
||||
if (sp > 3) {
|
||||
state_set(EL_STR("cseed_auto"), str_slice(slot_lbl, 0, sp));
|
||||
}
|
||||
}
|
||||
}
|
||||
return EL_STR("");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t proactive_curiosity(void) {
|
||||
el_val_t ts = time_now();
|
||||
el_val_t ts_minutes = (ts / 60000);
|
||||
@@ -202,27 +282,29 @@ el_val_t proactive_curiosity(void) {
|
||||
el_val_t found_c = json_array_len(results_c);
|
||||
el_val_t found = ((found_a + found_b) + found_c);
|
||||
state_set(EL_STR("cseed_auto"), EL_STR(""));
|
||||
el_val_t wm10 = engram_wm_top_json(10);
|
||||
el_val_t wm10_n9 = json_array_get(wm10, 9);
|
||||
el_val_t wm10_n8 = json_array_get(wm10, 8);
|
||||
el_val_t wm10_n7 = json_array_get(wm10, 7);
|
||||
el_val_t wm10_n6 = json_array_get(wm10, 6);
|
||||
el_val_t wm10_n5 = json_array_get(wm10, 5);
|
||||
el_val_t wm10_n4 = json_array_get(wm10, 4);
|
||||
el_val_t wm10_n3 = json_array_get(wm10, 3);
|
||||
el_val_t wm10_n2 = json_array_get(wm10, 2);
|
||||
el_val_t wm10_n1 = json_array_get(wm10, 1);
|
||||
el_val_t wm10_n0 = json_array_get(wm10, 0);
|
||||
auto_term_try_slot(json_get(wm10_n9, EL_STR("node_type")), json_get(wm10_n9, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n8, EL_STR("node_type")), json_get(wm10_n8, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n7, EL_STR("node_type")), json_get(wm10_n7, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n6, EL_STR("node_type")), json_get(wm10_n6, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n5, EL_STR("node_type")), json_get(wm10_n5, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n4, EL_STR("node_type")), json_get(wm10_n4, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n3, EL_STR("node_type")), json_get(wm10_n3, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n2, EL_STR("node_type")), json_get(wm10_n2, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n1, EL_STR("node_type")), json_get(wm10_n1, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n0, EL_STR("node_type")), json_get(wm10_n0, EL_STR("label")));
|
||||
el_val_t wm_top_j = engram_wm_top_json(1);
|
||||
el_val_t wm_top_n = json_array_get(wm_top_j, 0);
|
||||
el_val_t wm_top_lbl = json_get(wm_top_n, EL_STR("label"));
|
||||
el_val_t wm_top_type = json_get(wm_top_n, EL_STR("node_type"));
|
||||
state_set(EL_STR("allow_auto"), EL_STR("0"));
|
||||
if (str_eq(wm_top_type, EL_STR("Memory"))) {
|
||||
state_set(EL_STR("allow_auto"), EL_STR("1"));
|
||||
}
|
||||
if (str_eq(wm_top_type, EL_STR("BacklogItem"))) {
|
||||
state_set(EL_STR("allow_auto"), EL_STR("1"));
|
||||
}
|
||||
if (str_eq(wm_top_type, EL_STR("Entity"))) {
|
||||
state_set(EL_STR("allow_auto"), EL_STR("1"));
|
||||
}
|
||||
el_val_t allow_auto = state_get(EL_STR("allow_auto"));
|
||||
if (str_eq(allow_auto, EL_STR("1"))) {
|
||||
if (!str_eq(wm_top_lbl, EL_STR(""))) {
|
||||
el_val_t sp = str_find_chars(wm_top_lbl, EL_STR(" :(["));
|
||||
if (sp > 3) {
|
||||
state_set(EL_STR("cseed_auto"), str_slice(wm_top_lbl, 0, sp));
|
||||
}
|
||||
}
|
||||
}
|
||||
el_val_t auto_term = state_get(EL_STR("cseed_auto"));
|
||||
el_val_t results_auto = ({ el_val_t _if_result_3 = 0; if (str_eq(auto_term, EL_STR(""))) { _if_result_3 = (EL_STR("[]")); } else { _if_result_3 = (engram_activate_json(auto_term, 1)); } _if_result_3; });
|
||||
el_val_t found_auto = json_array_len(results_auto);
|
||||
@@ -576,3 +658,8 @@ el_val_t threat_history_append(el_val_t text) {
|
||||
return 0;
|
||||
}
|
||||
|
||||
int main(int _argc, char** _argv) {
|
||||
el_runtime_init_args(_argc, _argv);
|
||||
return 0;
|
||||
}
|
||||
|
||||
|
||||
+286
-915
File diff suppressed because one or more lines are too long
+8
-37
@@ -1,58 +1,29 @@
|
||||
// auto-generated by elc --emit-header — do not edit
|
||||
// auto-generated by elc --emit-header - do not edit
|
||||
extern fn chat_default_model() -> String
|
||||
extern fn engram_numeric_valid(s: String) -> Bool
|
||||
extern fn parse_float_x100(s: String) -> Int
|
||||
extern fn engram_score_node(node_json: String) -> Int
|
||||
extern fn engram_render_node(node_json: String) -> String
|
||||
extern fn engram_render_nodes(nodes_json: String) -> String
|
||||
extern fn engram_dedup_nodes(nodes_json: String) -> String
|
||||
extern fn engram_compile_ranked(nodes_json: String, max_nodes: Int) -> String
|
||||
extern fn engram_split_topics(message: String) -> String
|
||||
extern fn engram_extract_entities(message: String) -> String
|
||||
extern fn engram_detect_recall_intent(message: String) -> Bool
|
||||
extern fn engram_is_continuation(message: String, hist_len: Int) -> Bool
|
||||
extern fn engram_compile_multi(topic: String) -> String
|
||||
extern fn engram_nodes_merge(a: String, b: String) -> String
|
||||
extern fn id_in_seen(node_id: String, seen: String) -> Bool
|
||||
extern fn add_to_seen(seen: String, node_id: String) -> String
|
||||
extern fn engram_extract_ids(nodes_json: String) -> String
|
||||
extern fn gemini_api_key() -> String
|
||||
extern fn xai_api_key() -> String
|
||||
extern fn llm_call_grok(model: String, system: String, message: String) -> String
|
||||
extern fn llm_call_gemini(model: String, system: String, message: String) -> String
|
||||
extern fn build_identity_from_graph() -> String
|
||||
extern fn engram_compile(intent: String) -> String
|
||||
extern fn json_safe(s: String) -> String
|
||||
extern fn build_system_prompt(ctx: String, chat_mode: Bool) -> String
|
||||
extern fn build_system_prompt(ctx: String) -> String
|
||||
extern fn hist_append(hist: String, role: String, content: String) -> String
|
||||
extern fn hist_trim(hist: String) -> String
|
||||
extern fn hist_trim_with_bell_guard(hist: String) -> String
|
||||
extern fn clean_llm_response(s: String) -> String
|
||||
extern fn conv_history_persist(hist: String) -> Void
|
||||
extern fn conv_history_load() -> String
|
||||
extern fn session_preload_bullets(nodes: String, max_bullets: Int, snip_len: Int) -> String
|
||||
extern fn handle_chat(body: String) -> String
|
||||
extern fn handle_see(body: String) -> String
|
||||
extern fn studio_tools_json() -> String
|
||||
extern fn agentic_api_key() -> String
|
||||
extern fn call_neuron_mcp(tool_name: String, args_json: String) -> String
|
||||
extern fn agentic_tools_literal() -> String
|
||||
extern fn agentic_tools_with_web() -> String
|
||||
extern fn connector_tools_json() -> String
|
||||
extern fn agentic_tools_all() -> String
|
||||
extern fn call_mcp_bridge(tool_name: String, tool_input: String) -> String
|
||||
extern fn tool_auto_approved(tool_name: String) -> Bool
|
||||
extern fn call_neuron_mcp(tool_name: String, args: String) -> String
|
||||
extern fn agent_workspace_root() -> String
|
||||
extern fn path_within_root(path: String, root: String) -> Bool
|
||||
extern fn resolve_in_root(path: String, root: String) -> String
|
||||
extern fn dispatch_tool(tool_name: String, tool_input: String) -> String
|
||||
extern fn is_builtin_tool(tool_name: String) -> Bool
|
||||
extern fn next_bridge_id() -> String
|
||||
extern fn handle_chat_agentic(body: String) -> String
|
||||
extern fn agentic_loop(session_id: String, model: String, safe_sys: String, tools_json: String, messages_in: String, h: Map, tools_log_in: String) -> String
|
||||
extern fn bridge_save(session_id: String, model: String, safe_sys: String, tools_json: String, messages: String, tools_log: String, tool_use_id: String) -> Bool
|
||||
extern fn agentic_resume(session_id: String, tool_use_id: String, content: String) -> String
|
||||
extern fn handle_tool_result(session_id: String, body: String) -> String
|
||||
extern fn handle_chat_as_soul(body: String) -> String
|
||||
extern fn handle_dharma_room_turn(body: String) -> String
|
||||
extern fn handle_dharma_room_turn_agentic(body: String) -> String
|
||||
extern fn session_summary_write(summary_text: String) -> String
|
||||
extern fn session_summary_write_dated(summary_text: String, label: String) -> String
|
||||
extern fn session_summary_autogenerate(hist: String) -> String
|
||||
extern fn auto_persist(req: String, resp: String) -> Void
|
||||
extern fn strengthen_chat_nodes(activation_nodes: String) -> Void
|
||||
|
||||
-72
@@ -2,18 +2,9 @@
|
||||
#include "el_runtime.h"
|
||||
|
||||
el_val_t add_punct(el_val_t s, el_val_t intent);
|
||||
el_val_t add_to_seen(el_val_t seen, el_val_t node_id);
|
||||
el_val_t aff_try_slot(el_val_t slot_json, el_val_t aff_7d_ts, el_val_t acc_key);
|
||||
el_val_t agent_number(el_val_t agent);
|
||||
el_val_t agent_person(el_val_t agent);
|
||||
el_val_t agent_workspace_root(void);
|
||||
el_val_t agentic_api_key(void);
|
||||
el_val_t agentic_api_turn(el_val_t model, el_val_t safe_sys, el_val_t tools_json, el_val_t messages);
|
||||
el_val_t agentic_blob(el_val_t model, el_val_t system, el_val_t tools_json, el_val_t messages, el_val_t origin, el_val_t approval, el_val_t iteration, el_val_t tools_log, el_val_t content, el_val_t queue, el_val_t results, el_val_t next);
|
||||
el_val_t agentic_engine(el_val_t session_id, el_val_t blob);
|
||||
el_val_t agentic_loop(el_val_t session_id, el_val_t model, el_val_t safe_sys, el_val_t tools_json, el_val_t messages_in, el_val_t h, el_val_t tools_log_in);
|
||||
el_val_t agentic_resume(el_val_t session_id, el_val_t tool_use_id, el_val_t content);
|
||||
el_val_t agentic_tools_all(void);
|
||||
el_val_t agentic_tools_literal(void);
|
||||
el_val_t agentic_tools_with_web(void);
|
||||
el_val_t agree_determiner(el_val_t det, el_val_t noun);
|
||||
@@ -94,13 +85,10 @@ el_val_t api_err(el_val_t msg);
|
||||
el_val_t api_err_protected(el_val_t id);
|
||||
el_val_t api_json_escape(el_val_t s);
|
||||
el_val_t api_nonempty(el_val_t s);
|
||||
el_val_t api_not_persisted(el_val_t id);
|
||||
el_val_t api_ok(el_val_t extra);
|
||||
el_val_t api_or_empty(el_val_t s);
|
||||
el_val_t api_persisted(el_val_t id);
|
||||
el_val_t api_query_int(el_val_t path, el_val_t key, el_val_t default_val);
|
||||
el_val_t api_query_param(el_val_t path, el_val_t key);
|
||||
el_val_t append_tool_log(el_val_t log, el_val_t name);
|
||||
el_val_t ar_case_ending(el_val_t kase, el_val_t definite);
|
||||
el_val_t ar_conjugate(el_val_t verb, el_val_t tense, el_val_t person, el_val_t gender, el_val_t number);
|
||||
el_val_t ar_conjugate_form1(el_val_t past_base, el_val_t present_stem, el_val_t tense, el_val_t slot);
|
||||
@@ -130,28 +118,22 @@ el_val_t ar_verb_form(el_val_t verb, el_val_t tense, el_val_t person, el_val_t n
|
||||
el_val_t attend(el_val_t node_json);
|
||||
el_val_t auth_headers(el_val_t tok);
|
||||
el_val_t auto_persist(el_val_t req, el_val_t resp);
|
||||
el_val_t auto_term_try_slot(el_val_t slot_type, el_val_t slot_lbl);
|
||||
el_val_t awareness_run(void);
|
||||
el_val_t axon_get(el_val_t path);
|
||||
el_val_t axon_post(el_val_t path, el_val_t body);
|
||||
el_val_t bridge_save(el_val_t session_id, el_val_t model, el_val_t safe_sys, el_val_t tools_json, el_val_t messages, el_val_t tools_log, el_val_t tool_use_id);
|
||||
el_val_t build_form_from_json(el_val_t semantic_form_json, el_val_t lang_code);
|
||||
el_val_t build_identity_from_graph(void);
|
||||
el_val_t build_np(el_val_t referent, el_val_t slots);
|
||||
el_val_t build_pp(el_val_t loc);
|
||||
el_val_t build_rules(void);
|
||||
el_val_t build_system_prompt(el_val_t ctx);
|
||||
el_val_t build_system_prompt(el_val_t ctx, el_val_t chat_mode);
|
||||
el_val_t build_vocab(void);
|
||||
el_val_t build_vp_body(el_val_t slots);
|
||||
el_val_t build_vp_from_slots(el_val_t slots);
|
||||
el_val_t call_mcp_bridge(el_val_t tool_name, el_val_t tool_input);
|
||||
el_val_t call_neuron_mcp(el_val_t tool_name, el_val_t args);
|
||||
el_val_t call_neuron_mcp(el_val_t tool_name, el_val_t args_json);
|
||||
el_val_t capitalize_first(el_val_t s);
|
||||
el_val_t chat_default_model(void);
|
||||
el_val_t clean_llm_response(el_val_t s);
|
||||
el_val_t connector_tools_json(void);
|
||||
el_val_t conv_history_load(void);
|
||||
el_val_t conv_history_persist(el_val_t hist);
|
||||
el_val_t cop_article(el_val_t gender, el_val_t number, el_val_t definite);
|
||||
@@ -258,19 +240,6 @@ el_val_t en_verb_form(el_val_t base, el_val_t tense, el_val_t person, el_val_t n
|
||||
el_val_t en_verb_gerund(el_val_t base);
|
||||
el_val_t en_verb_past(el_val_t base);
|
||||
el_val_t engram_compile(el_val_t intent);
|
||||
el_val_t engram_compile_multi(el_val_t topic);
|
||||
el_val_t engram_compile_ranked(el_val_t nodes_json, el_val_t max_nodes);
|
||||
el_val_t engram_dedup_nodes(el_val_t nodes_json);
|
||||
el_val_t engram_detect_recall_intent(el_val_t message);
|
||||
el_val_t engram_extract_entities(el_val_t message);
|
||||
el_val_t engram_extract_ids(el_val_t nodes_json);
|
||||
el_val_t engram_is_continuation(el_val_t message, el_val_t hist_len);
|
||||
el_val_t engram_nodes_merge(el_val_t a, el_val_t b);
|
||||
el_val_t engram_numeric_valid(el_val_t s);
|
||||
el_val_t engram_render_node(el_val_t node_json);
|
||||
el_val_t engram_render_nodes(el_val_t nodes_json);
|
||||
el_val_t engram_score_node(el_val_t node_json);
|
||||
el_val_t engram_split_topics(el_val_t message);
|
||||
el_val_t enm_been_past(el_val_t slot);
|
||||
el_val_t enm_been_present(el_val_t slot);
|
||||
el_val_t enm_comen_past(el_val_t slot);
|
||||
@@ -300,7 +269,6 @@ el_val_t enm_str_ends(el_val_t s, el_val_t suf);
|
||||
el_val_t enm_weak_past(el_val_t stem, el_val_t slot);
|
||||
el_val_t enm_weak_present(el_val_t stem, el_val_t slot);
|
||||
el_val_t enm_weak_stem(el_val_t verb);
|
||||
el_val_t ensure_self_canonical_bridge(void);
|
||||
el_val_t entry_form(el_val_t entry, el_val_t n);
|
||||
el_val_t entry_found(el_val_t entry);
|
||||
el_val_t entry_pos(el_val_t entry);
|
||||
@@ -329,8 +297,6 @@ el_val_t es_str_last2(el_val_t s);
|
||||
el_val_t es_str_last3(el_val_t s);
|
||||
el_val_t es_str_last_char(el_val_t s);
|
||||
el_val_t es_verb_class(el_val_t base);
|
||||
el_val_t exec_tool_block(el_val_t block);
|
||||
el_val_t extract_all_text(el_val_t s);
|
||||
el_val_t extract_dim(el_val_t content, el_val_t key);
|
||||
el_val_t fi_apply_case(el_val_t noun, el_val_t gram_case, el_val_t number);
|
||||
el_val_t fi_conjugate(el_val_t verb, el_val_t tense, el_val_t person, el_val_t number);
|
||||
@@ -349,7 +315,6 @@ el_val_t fi_str_last_char(el_val_t s);
|
||||
el_val_t fi_suffix(el_val_t base, el_val_t harmony);
|
||||
el_val_t fi_verb_stem(el_val_t dict_form);
|
||||
el_val_t find_rule(el_val_t rule_id_str);
|
||||
el_val_t flag_true(el_val_t body, el_val_t key);
|
||||
el_val_t fr_agree_article(el_val_t noun, el_val_t definite, el_val_t number);
|
||||
el_val_t fr_avoir_present(el_val_t slot);
|
||||
el_val_t fr_conjugate(el_val_t verb, el_val_t tense, el_val_t person, el_val_t number);
|
||||
@@ -584,9 +549,6 @@ el_val_t handle_api_list_typed(el_val_t node_type, el_val_t path, el_val_t body)
|
||||
el_val_t handle_api_log_state_event(el_val_t body);
|
||||
el_val_t handle_api_memory_delete(el_val_t body);
|
||||
el_val_t handle_api_memory_update(el_val_t body);
|
||||
el_val_t handle_api_node_create(el_val_t body);
|
||||
el_val_t handle_api_node_delete(el_val_t body);
|
||||
el_val_t handle_api_node_update(el_val_t body);
|
||||
el_val_t handle_api_promote_knowledge(el_val_t body);
|
||||
el_val_t handle_api_recall(el_val_t method, el_val_t path, el_val_t body);
|
||||
el_val_t handle_api_remember(el_val_t body);
|
||||
@@ -604,12 +566,9 @@ el_val_t handle_dharma_room_turn_agentic(el_val_t body);
|
||||
el_val_t handle_elp_chat(el_val_t body);
|
||||
el_val_t handle_nlg(el_val_t path, el_val_t method, el_val_t body);
|
||||
el_val_t handle_request(el_val_t method, el_val_t path, el_val_t body);
|
||||
el_val_t handle_safety_contact_get(void);
|
||||
el_val_t handle_safety_contact_post(el_val_t body);
|
||||
el_val_t handle_see(el_val_t body);
|
||||
el_val_t handle_session_approve(el_val_t session_id, el_val_t body);
|
||||
el_val_t handle_tool(el_val_t path, el_val_t method, el_val_t body);
|
||||
el_val_t handle_tool_result(el_val_t session_id, el_val_t body);
|
||||
el_val_t hard_bell_threshold(void);
|
||||
el_val_t he_conjugate(el_val_t verb, el_val_t tense, el_val_t person, el_val_t gender, el_val_t number);
|
||||
el_val_t he_conjugate_copula(el_val_t tense, el_val_t slot);
|
||||
@@ -668,8 +627,6 @@ el_val_t hi_verb_stem(el_val_t infinitive);
|
||||
el_val_t hi_verb_stem_clean(el_val_t infinitive);
|
||||
el_val_t hist_append(el_val_t hist, el_val_t role, el_val_t content);
|
||||
el_val_t hist_trim(el_val_t hist);
|
||||
el_val_t hist_trim_with_bell_guard(el_val_t hist);
|
||||
el_val_t id_in_seen(el_val_t node_id, el_val_t seen);
|
||||
el_val_t idle_count(void);
|
||||
el_val_t idle_inc(void);
|
||||
el_val_t idle_reset(void);
|
||||
@@ -682,7 +639,6 @@ el_val_t imprint_unload(void);
|
||||
el_val_t init_soul_edges(void);
|
||||
el_val_t irregular_plural(el_val_t word);
|
||||
el_val_t irregular_singular(el_val_t word);
|
||||
el_val_t is_builtin_tool(el_val_t tool_name);
|
||||
el_val_t is_pronoun(el_val_t word);
|
||||
el_val_t is_protected_node(el_val_t id);
|
||||
el_val_t is_vowel(el_val_t c);
|
||||
@@ -695,7 +651,6 @@ el_val_t ja_noun_phrase(el_val_t noun, el_val_t gram_case);
|
||||
el_val_t ja_particle(el_val_t gram_case);
|
||||
el_val_t ja_question_particle(void);
|
||||
el_val_t ja_verb_group(el_val_t dict_form);
|
||||
el_val_t json_array_append(el_val_t arr, el_val_t item);
|
||||
el_val_t json_safe(el_val_t s);
|
||||
el_val_t la_conjugate(el_val_t verb, el_val_t tense, el_val_t person, el_val_t number);
|
||||
el_val_t la_declension(el_val_t noun);
|
||||
@@ -782,7 +737,6 @@ el_val_t lang_profile_txb(void);
|
||||
el_val_t lang_profile_uga(void);
|
||||
el_val_t lang_profile_zh(void);
|
||||
el_val_t lang_word_order(el_val_t profile);
|
||||
el_val_t layered_cycle(el_val_t raw_input);
|
||||
el_val_t lex_class(el_val_t entry);
|
||||
el_val_t lex_form(el_val_t entry, el_val_t idx);
|
||||
el_val_t lex_pos(el_val_t entry);
|
||||
@@ -826,7 +780,6 @@ el_val_t morph_conjugate(el_val_t verb, el_val_t tense, el_val_t person, el_val_
|
||||
el_val_t morph_inflect(el_val_t word, el_val_t features, el_val_t profile);
|
||||
el_val_t morph_map_canonical(el_val_t verb, el_val_t code);
|
||||
el_val_t morph_pluralize(el_val_t noun, el_val_t profile);
|
||||
el_val_t next_bridge_id(void);
|
||||
el_val_t nlg_is_ws(el_val_t c);
|
||||
el_val_t non_conjugate(el_val_t verb, el_val_t tense, el_val_t person, el_val_t number);
|
||||
el_val_t non_decline(el_val_t noun, el_val_t gram_case, el_val_t number);
|
||||
@@ -858,10 +811,8 @@ el_val_t non_vera_present(el_val_t slot);
|
||||
el_val_t non_weak_past(el_val_t stem, el_val_t slot);
|
||||
el_val_t non_weak_present(el_val_t stem, el_val_t slot);
|
||||
el_val_t one_cycle(void);
|
||||
el_val_t parse_float_x100(el_val_t s);
|
||||
el_val_t parse_session_id_from_path(el_val_t path);
|
||||
el_val_t parse_session_subpath(el_val_t path);
|
||||
el_val_t path_within_root(el_val_t path, el_val_t root);
|
||||
el_val_t peo_ah_past(el_val_t slot);
|
||||
el_val_t peo_ah_present(el_val_t slot);
|
||||
el_val_t peo_conjugate(el_val_t verb, el_val_t tense, el_val_t person, el_val_t number);
|
||||
@@ -926,7 +877,6 @@ el_val_t realize_vp_lang(el_val_t base_verb, el_val_t tense, el_val_t aspect, el
|
||||
el_val_t record(el_val_t outcome_json);
|
||||
el_val_t render_studio(void);
|
||||
el_val_t render_tree(el_val_t tree);
|
||||
el_val_t resolve_in_root(el_val_t path, el_val_t root);
|
||||
el_val_t respond(el_val_t action_json);
|
||||
el_val_t route_health(void);
|
||||
el_val_t route_imprint_contextual(el_val_t body);
|
||||
@@ -986,26 +936,12 @@ el_val_t sa_str_ends(el_val_t s, el_val_t suf);
|
||||
el_val_t sa_vad_future(el_val_t slot);
|
||||
el_val_t sa_vad_past(el_val_t slot);
|
||||
el_val_t sa_vad_present(el_val_t slot);
|
||||
el_val_t safety_abuse_phrases(void);
|
||||
el_val_t safety_any_match(el_val_t text, el_val_t phrases_json);
|
||||
el_val_t safety_augment_system(el_val_t system, el_val_t user_msg);
|
||||
el_val_t safety_classify_hard_bell(el_val_t message);
|
||||
el_val_t safety_contact_path(void);
|
||||
el_val_t safety_count_match(el_val_t text, el_val_t phrases_json);
|
||||
el_val_t safety_detect_bell_level(el_val_t message);
|
||||
el_val_t safety_detect_positive_level(el_val_t message);
|
||||
el_val_t safety_general_hard_phrases(void);
|
||||
el_val_t safety_hard_directive(el_val_t hard_type);
|
||||
el_val_t safety_log_bell(el_val_t level, el_val_t reason, el_val_t input_summary);
|
||||
el_val_t safety_normalize(el_val_t message);
|
||||
el_val_t safety_score_crisis(el_val_t input);
|
||||
el_val_t safety_score_danger(el_val_t input);
|
||||
el_val_t safety_score_distress_history(el_val_t history);
|
||||
el_val_t safety_score_harm(el_val_t input);
|
||||
el_val_t safety_screen(el_val_t input, el_val_t history);
|
||||
el_val_t safety_self_harm_phrases(void);
|
||||
el_val_t safety_soft_directive(void);
|
||||
el_val_t safety_soft_phrases(void);
|
||||
el_val_t safety_threat_score(el_val_t input, el_val_t history);
|
||||
el_val_t safety_validate(el_val_t output, el_val_t action);
|
||||
el_val_t scan_token(el_val_t s, el_val_t start);
|
||||
@@ -1031,19 +967,13 @@ el_val_t sem_to_spec(el_val_t frame);
|
||||
el_val_t sem_to_spec_full(el_val_t frame, el_val_t verb, el_val_t tense, el_val_t aspect);
|
||||
el_val_t session_auto_title(el_val_t session_id, el_val_t first_message);
|
||||
el_val_t session_create(el_val_t body);
|
||||
el_val_t session_create_cleanup(el_val_t session_id);
|
||||
el_val_t session_delete(el_val_t session_id);
|
||||
el_val_t session_exists(el_val_t session_id);
|
||||
el_val_t session_get(el_val_t session_id);
|
||||
el_val_t session_hist_load(el_val_t session_id);
|
||||
el_val_t session_hist_save(el_val_t session_id, el_val_t hist);
|
||||
el_val_t session_list(void);
|
||||
el_val_t session_make_content(el_val_t id, el_val_t title, el_val_t created_at, el_val_t updated_at, el_val_t folder);
|
||||
el_val_t session_preload_bullets(el_val_t nodes, el_val_t max_bullets, el_val_t snip_len);
|
||||
el_val_t session_search(el_val_t query);
|
||||
el_val_t session_summary_autogenerate(el_val_t hist);
|
||||
el_val_t session_summary_write(el_val_t summary_text);
|
||||
el_val_t session_summary_write_dated(el_val_t summary_text, el_val_t label);
|
||||
el_val_t session_title_from_message(el_val_t message);
|
||||
el_val_t session_update_meta_timestamp(el_val_t session_id);
|
||||
el_val_t session_update_patch(el_val_t session_id, el_val_t body);
|
||||
@@ -1088,7 +1018,6 @@ el_val_t str_last2(el_val_t s);
|
||||
el_val_t str_last3(el_val_t s);
|
||||
el_val_t str_last_char(el_val_t s);
|
||||
el_val_t strengthen_chat_nodes(el_val_t activation_nodes);
|
||||
el_val_t strip_citations(el_val_t s);
|
||||
el_val_t strip_query(el_val_t path);
|
||||
el_val_t studio_tools_json(void);
|
||||
el_val_t sux_absolutive_suffix(el_val_t person, el_val_t number);
|
||||
@@ -1149,7 +1078,6 @@ el_val_t threat_trajectory_check(el_val_t tool_name, el_val_t tool_input);
|
||||
el_val_t tier_canonical(void);
|
||||
el_val_t tier_episodic(void);
|
||||
el_val_t tier_working(void);
|
||||
el_val_t tool_auto_approved(el_val_t tool_name);
|
||||
el_val_t txb_conjugate(el_val_t verb, el_val_t tense, el_val_t person, el_val_t number);
|
||||
el_val_t txb_decline(el_val_t noun, el_val_t gram_case, el_val_t number);
|
||||
el_val_t txb_decline_fem(el_val_t noun, el_val_t gram_case, el_val_t number);
|
||||
|
||||
+25003
File diff suppressed because it is too large
Load Diff
+24028
-34
File diff suppressed because it is too large
Load Diff
+3
-3
@@ -1,7 +1,7 @@
|
||||
// auto-generated by elc --emit-header — do not edit
|
||||
extern fn sem_get(json: String, key: String) -> String
|
||||
extern fn generate_frame(frame: [String]) -> String
|
||||
extern fn generate_frame_lang(frame: [String], lang_code: String) -> String
|
||||
extern fn build_form_from_json(semantic_form_json: String, lang_code: String) -> [String]
|
||||
extern fn generate_frame(frame: Any) -> String
|
||||
extern fn generate_frame_lang(frame: Any, lang_code: String) -> String
|
||||
extern fn build_form_from_json(semantic_form_json: String, lang_code: String) -> Any
|
||||
extern fn generate(semantic_form_json: String) -> String
|
||||
extern fn generate_lang(semantic_form_json: String, lang_code: String) -> String
|
||||
|
||||
+5
@@ -656,3 +656,8 @@ el_val_t generate_tree(el_val_t rule_id_str, el_val_t slots) {
|
||||
return 0;
|
||||
}
|
||||
|
||||
int main(int _argc, char** _argv) {
|
||||
el_runtime_init_args(_argc, _argv);
|
||||
return 0;
|
||||
}
|
||||
|
||||
|
||||
+28
-28
@@ -1,22 +1,22 @@
|
||||
// auto-generated by elc --emit-header — do not edit
|
||||
extern fn slots_get(slots: [String], key: String) -> String
|
||||
extern fn slots_set(slots: [String], key: String, val: String) -> [String]
|
||||
extern fn make_slots(k0: String, v0: String) -> [String]
|
||||
extern fn make_slots2(k0: String, v0: String, k1: String, v1: String) -> [String]
|
||||
extern fn make_slots3(k0: String, v0: String, k1: String, v1: String, k2: String, v2: String) -> [String]
|
||||
extern fn make_slots4(k0: String, v0: String, k1: String, v1: String, k2: String, v2: String, k3: String, v3: String) -> [String]
|
||||
extern fn make_slots5(k0: String, v0: String, k1: String, v1: String, k2: String, v2: String, k3: String, v3: String, k4: String, v4: String) -> [String]
|
||||
extern fn rule_id(rule: [String]) -> String
|
||||
extern fn rule_lhs(rule: [String]) -> String
|
||||
extern fn rule_rhs_len(rule: [String]) -> Int
|
||||
extern fn rule_rhs(rule: [String], idx: Int) -> String
|
||||
extern fn make_rule(id: String, lhs: String, r0: String) -> [String]
|
||||
extern fn make_rule2(id: String, lhs: String, r0: String, r1: String) -> [String]
|
||||
extern fn make_rule3(id: String, lhs: String, r0: String, r1: String, r2: String) -> [String]
|
||||
extern fn make_rule4(id: String, lhs: String, r0: String, r1: String, r2: String, r3: String) -> [String]
|
||||
extern fn build_rules() -> [[String]]
|
||||
extern fn get_rules() -> [[String]]
|
||||
extern fn find_rule(rule_id_str: String) -> [String]
|
||||
// auto-generated by elc --emit-header - do not edit
|
||||
extern fn slots_get(slots: Any, key: String) -> String
|
||||
extern fn slots_set(slots: Any, key: String, val: String) -> Any
|
||||
extern fn make_slots(k0: String, v0: String) -> Any
|
||||
extern fn make_slots2(k0: String, v0: String, k1: String, v1: String) -> Any
|
||||
extern fn make_slots3(k0: String, v0: String, k1: String, v1: String, k2: String, v2: String) -> Any
|
||||
extern fn make_slots4(k0: String, v0: String, k1: String, v1: String, k2: String, v2: String, k3: String, v3: String) -> Any
|
||||
extern fn make_slots5(k0: String, v0: String, k1: String, v1: String, k2: String, v2: String, k3: String, v3: String, k4: String, v4: String) -> Any
|
||||
extern fn rule_id(rule: Any) -> String
|
||||
extern fn rule_lhs(rule: Any) -> String
|
||||
extern fn rule_rhs_len(rule: Any) -> Int
|
||||
extern fn rule_rhs(rule: Any, idx: Int) -> String
|
||||
extern fn make_rule(id: String, lhs: String, r0: String) -> Any
|
||||
extern fn make_rule2(id: String, lhs: String, r0: String, r1: String) -> Any
|
||||
extern fn make_rule3(id: String, lhs: String, r0: String, r1: String, r2: String) -> Any
|
||||
extern fn make_rule4(id: String, lhs: String, r0: String, r1: String, r2: String, r3: String) -> Any
|
||||
extern fn build_rules() -> Any
|
||||
extern fn get_rules() -> Any
|
||||
extern fn find_rule(rule_id_str: String) -> Any
|
||||
extern fn make_leaf(label: String, word: String) -> String
|
||||
extern fn make_node1(label: String, child0: String) -> String
|
||||
extern fn make_node2(label: String, child0: String, child1: String) -> String
|
||||
@@ -24,15 +24,15 @@ extern fn make_node3(label: String, child0: String, child1: String, child2: Stri
|
||||
extern fn make_node4(label: String, child0: String, child1: String, child2: String, child3: String) -> String
|
||||
extern fn nlg_is_ws(c: String) -> Bool
|
||||
extern fn skip_ws(s: String, pos: Int) -> Int
|
||||
extern fn scan_token(s: String, start: Int) -> [String]
|
||||
extern fn scan_token(s: String, start: Int) -> Any
|
||||
extern fn render_tree(tree: String) -> String
|
||||
extern fn gram_word_order(profile: [String]) -> String
|
||||
extern fn gram_order_constituents(subj: String, verb: String, obj: String, profile: [String]) -> String
|
||||
extern fn gram_build_vp(verb: String, aux: String, profile: [String]) -> String
|
||||
extern fn gram_question_strategy(profile: [String]) -> String
|
||||
extern fn gram_word_order(profile: Any) -> String
|
||||
extern fn gram_order_constituents(subj: String, verb: String, obj: String, profile: Any) -> String
|
||||
extern fn gram_build_vp(verb: String, aux: String, profile: Any) -> String
|
||||
extern fn gram_question_strategy(profile: Any) -> String
|
||||
extern fn is_pronoun(word: String) -> Bool
|
||||
extern fn build_np(referent: String, slots: [String]) -> String
|
||||
extern fn build_np(referent: String, slots: Any) -> String
|
||||
extern fn build_pp(loc: String) -> String
|
||||
extern fn build_vp_body(slots: [String]) -> String
|
||||
extern fn build_vp_from_slots(slots: [String]) -> String
|
||||
extern fn generate_tree(rule_id_str: String, slots: [String]) -> String
|
||||
extern fn build_vp_body(slots: Any) -> String
|
||||
extern fn build_vp_from_slots(slots: Any) -> String
|
||||
extern fn generate_tree(rule_id_str: String, slots: Any) -> String
|
||||
|
||||
+5
@@ -70,3 +70,8 @@ el_val_t imprint_unload(void) {
|
||||
return 0;
|
||||
}
|
||||
|
||||
int main(int _argc, char** _argv) {
|
||||
el_runtime_init_args(_argc, _argv);
|
||||
return 0;
|
||||
}
|
||||
|
||||
|
||||
+5
@@ -392,3 +392,8 @@ el_val_t lang_code(el_val_t profile) {
|
||||
return 0;
|
||||
}
|
||||
|
||||
int main(int _argc, char** _argv) {
|
||||
el_runtime_init_args(_argc, _argv);
|
||||
return 0;
|
||||
}
|
||||
|
||||
|
||||
+12
-58
@@ -34,18 +34,7 @@ el_val_t tier_canonical(void) {
|
||||
}
|
||||
|
||||
el_val_t mem_store(el_val_t content, el_val_t label, el_val_t tags) {
|
||||
el_val_t id = engram_node_full(content, EL_STR("Memory"), label, el_from_float(0.5), el_from_float(0.5), el_from_float(0.8), EL_STR("Working"), tags);
|
||||
if (str_eq(id, EL_STR(""))) {
|
||||
println(el_str_concat(EL_STR("[memory] write rejected by engram (empty id): label="), label));
|
||||
return EL_STR("");
|
||||
}
|
||||
el_val_t readback = engram_get_node_json(id);
|
||||
if (str_eq(readback, EL_STR("")) || str_eq(readback, EL_STR("{}"))) {
|
||||
println(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("[memory] WRITE VERIFY FAILED: label="), label), EL_STR(" id=")), id), EL_STR(" \xe2\x80\x94 node absent after write")));
|
||||
return EL_STR("");
|
||||
}
|
||||
println(el_str_concat(el_str_concat(EL_STR("[memory] write verified: "), id), EL_STR(" ok")));
|
||||
return id;
|
||||
return engram_node_full(content, EL_STR("Memory"), label, el_from_float(el_from_float(0.5)), el_from_float(el_from_float(0.5)), el_from_float(el_from_float(0.8)), EL_STR("Working"), tags);
|
||||
return 0;
|
||||
}
|
||||
|
||||
@@ -76,43 +65,15 @@ el_val_t mem_forget(el_val_t node_id) {
|
||||
|
||||
el_val_t mem_consolidate(void) {
|
||||
el_val_t scanned = engram_node_count();
|
||||
el_val_t total_edges = engram_edge_count();
|
||||
el_val_t strengthened = 0;
|
||||
el_val_t wm_top = engram_wm_top_json(10);
|
||||
el_val_t wm_len = json_array_len(wm_top);
|
||||
el_val_t wi = 0;
|
||||
while (wi < wm_len) {
|
||||
el_val_t wm_node = json_array_get(wm_top, wi);
|
||||
el_val_t wm_id = json_get(wm_node, EL_STR("id"));
|
||||
if (!str_eq(wm_id, EL_STR(""))) {
|
||||
engram_strengthen(wm_id);
|
||||
strengthened = (strengthened + 1);
|
||||
}
|
||||
wi = (wi + 1);
|
||||
}
|
||||
el_val_t scan_result = engram_scan_nodes_json(50, 0);
|
||||
el_val_t scan_len = json_array_len(scan_result);
|
||||
el_val_t si = 0;
|
||||
while (si < scan_len) {
|
||||
el_val_t s_node = json_array_get(scan_result, si);
|
||||
el_val_t s_tier = json_get(s_node, EL_STR("tier"));
|
||||
el_val_t s_id = json_get(s_node, EL_STR("id"));
|
||||
if (str_eq(s_tier, EL_STR("Canonical")) && !str_eq(s_id, EL_STR(""))) {
|
||||
engram_strengthen(s_id);
|
||||
strengthened = (strengthened + 1);
|
||||
}
|
||||
si = (si + 1);
|
||||
}
|
||||
el_val_t dummy = engram_scan_nodes_json(100, 0);
|
||||
el_val_t total_nodes = engram_node_count();
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"scanned\":"), int_to_str(scanned)), EL_STR(",\"total_nodes\":")), int_to_str(total_nodes)), EL_STR(",\"total_edges\":")), int_to_str(total_edges)), EL_STR(",\"strengthened\":")), int_to_str(strengthened)), EL_STR("}"));
|
||||
el_val_t total_edges = engram_edge_count();
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"scanned\":"), int_to_str(scanned)), EL_STR(",\"total_nodes\":")), int_to_str(total_nodes)), EL_STR(",\"total_edges\":")), int_to_str(total_edges)), EL_STR("}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_save(el_val_t path) {
|
||||
el_val_t save_result = engram_save(path);
|
||||
if (str_eq(save_result, EL_STR(""))) {
|
||||
println(el_str_concat(el_str_concat(EL_STR("[memory] mem_save: engram_save failed for "), path), EL_STR(" \xe2\x80\x94 snapshot may be incomplete")));
|
||||
}
|
||||
engram_save(path);
|
||||
return 0;
|
||||
}
|
||||
|
||||
@@ -145,15 +106,7 @@ el_val_t mem_boot_count_inc(void) {
|
||||
el_val_t next = (current + 1);
|
||||
el_val_t content = el_str_concat(EL_STR("soul:boot_count:"), int_to_str(next));
|
||||
el_val_t tags = EL_STR("[\"soul-meta\",\"boot-counter\"]");
|
||||
el_val_t boot_node_id = engram_node_full(content, EL_STR("Memory"), EL_STR("soul:boot_count"), el_from_float(0.9), el_from_float(0.9), el_from_float(1.0), EL_STR("Canonical"), tags);
|
||||
if (str_eq(boot_node_id, EL_STR(""))) {
|
||||
println(el_str_concat(el_str_concat(EL_STR("[memory] mem_boot_count_inc: write rejected (empty id) \xe2\x80\x94 boot counter node lost (count="), int_to_str(next)), EL_STR(")")));
|
||||
return next;
|
||||
}
|
||||
el_val_t boot_readback = engram_get_node_json(boot_node_id);
|
||||
if (str_eq(boot_readback, EL_STR("")) || str_eq(boot_readback, EL_STR("{}"))) {
|
||||
println(el_str_concat(el_str_concat(el_str_concat(EL_STR("[memory] mem_boot_count_inc: WRITE VERIFY FAILED id="), boot_node_id), EL_STR(" count=")), int_to_str(next)));
|
||||
}
|
||||
el_val_t discard = engram_node_full(content, EL_STR("Memory"), EL_STR("soul:boot_count"), el_from_float(el_from_float(0.9)), el_from_float(el_from_float(0.9)), el_from_float(el_from_float(1.0)), EL_STR("Canonical"), tags);
|
||||
return next;
|
||||
return 0;
|
||||
}
|
||||
@@ -165,11 +118,12 @@ el_val_t mem_emit_state_event(el_val_t trigger, el_val_t kind, el_val_t content)
|
||||
el_val_t safe_content = str_replace(content, EL_STR("\""), EL_STR("'"));
|
||||
el_val_t payload = el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"trigger\":\""), safe_trigger), EL_STR("\"")), EL_STR(",\"kind\":\"")), kind), EL_STR("\"")), EL_STR(",\"content\":\"")), safe_content), EL_STR("\"")), EL_STR(",\"boot\":")), int_to_str(boot)), EL_STR(",\"ts\":")), int_to_str(ts)), EL_STR("}"));
|
||||
el_val_t tags = EL_STR("[\"internal-state\",\"pre-reasoning\",\"InternalStateEvent\"]");
|
||||
el_val_t event_id = engram_node_full(payload, EL_STR("InternalStateEvent"), el_str_concat(EL_STR("state-event:"), kind), el_from_float(0.85), el_from_float(0.8), el_from_float(0.9), EL_STR("Episodic"), tags);
|
||||
if (str_eq(event_id, EL_STR(""))) {
|
||||
println(el_str_concat(EL_STR("[memory] mem_emit_state_event: write rejected (empty id): kind="), kind));
|
||||
}
|
||||
return event_id;
|
||||
return engram_node_full(payload, EL_STR("InternalStateEvent"), el_str_concat(EL_STR("state-event:"), kind), el_from_float(el_from_float(0.85)), el_from_float(el_from_float(0.8)), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), tags);
|
||||
return 0;
|
||||
}
|
||||
|
||||
int main(int _argc, char** _argv) {
|
||||
el_runtime_init_args(_argc, _argv);
|
||||
return 0;
|
||||
}
|
||||
|
||||
|
||||
+161
-204
@@ -26,14 +26,9 @@ el_val_t api_ok(el_val_t extra);
|
||||
el_val_t api_err(el_val_t msg);
|
||||
el_val_t api_nonempty(el_val_t s);
|
||||
el_val_t api_or_empty(el_val_t s);
|
||||
el_val_t api_persisted(el_val_t id);
|
||||
el_val_t api_not_persisted(el_val_t id);
|
||||
el_val_t handle_api_begin_session(el_val_t body);
|
||||
el_val_t handle_api_compile_ctx(el_val_t body);
|
||||
el_val_t handle_api_remember(el_val_t body);
|
||||
el_val_t handle_api_node_create(el_val_t body);
|
||||
el_val_t handle_api_node_delete(el_val_t body);
|
||||
el_val_t handle_api_node_update(el_val_t body);
|
||||
el_val_t handle_api_recall(el_val_t method, el_val_t path, el_val_t body);
|
||||
el_val_t handle_api_search_knowledge(el_val_t method, el_val_t path, el_val_t body);
|
||||
el_val_t handle_api_browse_knowledge(el_val_t path, el_val_t body);
|
||||
@@ -50,12 +45,114 @@ el_val_t handle_api_inspect_graph(el_val_t method, el_val_t path, el_val_t body)
|
||||
el_val_t handle_api_link_entities(el_val_t body);
|
||||
el_val_t handle_api_forget(el_val_t body);
|
||||
el_val_t handle_api_evolve_memory(el_val_t body);
|
||||
el_val_t handle_api_memory_delete(el_val_t body);
|
||||
el_val_t handle_api_memory_update(el_val_t body);
|
||||
el_val_t handle_api_cultivate(el_val_t body);
|
||||
el_val_t handle_api_list_typed(el_val_t node_type, el_val_t path, el_val_t body);
|
||||
el_val_t handle_api_consolidate(el_val_t body);
|
||||
|
||||
el_val_t tier_working(void) {
|
||||
return EL_STR("Working");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t tier_episodic(void) {
|
||||
return EL_STR("Episodic");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t tier_canonical(void) {
|
||||
return EL_STR("Canonical");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_store(el_val_t content, el_val_t label, el_val_t tags) {
|
||||
return engram_node_full(content, EL_STR("Memory"), label, el_from_float(el_from_float(0.5)), el_from_float(el_from_float(0.5)), el_from_float(el_from_float(0.8)), EL_STR("Working"), tags);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_remember(el_val_t content, el_val_t tags) {
|
||||
return mem_store(content, EL_STR("soul-memory"), tags);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_recall(el_val_t query, el_val_t depth) {
|
||||
return engram_activate_json(query, depth);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_search(el_val_t query, el_val_t limit) {
|
||||
return engram_search_json(query, limit);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_strengthen(el_val_t node_id) {
|
||||
engram_strengthen(node_id);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_forget(el_val_t node_id) {
|
||||
engram_forget(node_id);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_consolidate(void) {
|
||||
el_val_t scanned = engram_node_count();
|
||||
el_val_t dummy = engram_scan_nodes_json(100, 0);
|
||||
el_val_t total_nodes = engram_node_count();
|
||||
el_val_t total_edges = engram_edge_count();
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"scanned\":"), int_to_str(scanned)), EL_STR(",\"total_nodes\":")), int_to_str(total_nodes)), EL_STR(",\"total_edges\":")), int_to_str(total_edges)), EL_STR("}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_save(el_val_t path) {
|
||||
engram_save(path);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_load(el_val_t path) {
|
||||
engram_load(path);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_boot_count_get(void) {
|
||||
el_val_t results = engram_search_json(EL_STR("soul:boot_count"), 3);
|
||||
if (str_eq(results, EL_STR(""))) {
|
||||
return 0;
|
||||
}
|
||||
if (str_eq(results, EL_STR("[]"))) {
|
||||
return 0;
|
||||
}
|
||||
el_val_t node = json_array_get(results, 0);
|
||||
el_val_t content = json_get(node, EL_STR("content"));
|
||||
el_val_t prefix = EL_STR("soul:boot_count:");
|
||||
if (!str_starts_with(content, prefix)) {
|
||||
return 0;
|
||||
}
|
||||
el_val_t num_str = str_slice(content, str_len(prefix), str_len(content));
|
||||
return str_to_int(num_str);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_boot_count_inc(void) {
|
||||
el_val_t current = mem_boot_count_get();
|
||||
el_val_t next = (current + 1);
|
||||
el_val_t content = el_str_concat(EL_STR("soul:boot_count:"), int_to_str(next));
|
||||
el_val_t tags = EL_STR("[\"soul-meta\",\"boot-counter\"]");
|
||||
el_val_t discard = engram_node_full(content, EL_STR("Memory"), EL_STR("soul:boot_count"), el_from_float(el_from_float(0.9)), el_from_float(el_from_float(0.9)), el_from_float(el_from_float(1.0)), EL_STR("Canonical"), tags);
|
||||
return next;
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_emit_state_event(el_val_t trigger, el_val_t kind, el_val_t content) {
|
||||
el_val_t boot = mem_boot_count_get();
|
||||
el_val_t ts = time_now();
|
||||
el_val_t safe_trigger = str_replace(trigger, EL_STR("\""), EL_STR("'"));
|
||||
el_val_t safe_content = str_replace(content, EL_STR("\""), EL_STR("'"));
|
||||
el_val_t payload = el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"trigger\":\""), safe_trigger), EL_STR("\"")), EL_STR(",\"kind\":\"")), kind), EL_STR("\"")), EL_STR(",\"content\":\"")), safe_content), EL_STR("\"")), EL_STR(",\"boot\":")), int_to_str(boot)), EL_STR(",\"ts\":")), int_to_str(ts)), EL_STR("}"));
|
||||
el_val_t tags = EL_STR("[\"internal-state\",\"pre-reasoning\",\"InternalStateEvent\"]");
|
||||
return engram_node_full(payload, EL_STR("InternalStateEvent"), el_str_concat(EL_STR("state-event:"), kind), el_from_float(el_from_float(0.85)), el_from_float(el_from_float(0.8)), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), tags);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t is_protected_node(el_val_t id) {
|
||||
if (str_eq(id, EL_STR("kn-efeb4a5b-5aff-4759-8a97-7233099be6ee"))) {
|
||||
return 1;
|
||||
@@ -175,20 +272,6 @@ el_val_t api_or_empty(el_val_t s) {
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t api_persisted(el_val_t id) {
|
||||
if (str_eq(id, EL_STR(""))) {
|
||||
return 0;
|
||||
}
|
||||
el_val_t node = engram_get_node_json(id);
|
||||
return ((!str_eq(node, EL_STR("")) && !str_eq(node, EL_STR("null"))) && !str_eq(node, EL_STR("{}")));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t api_not_persisted(el_val_t id) {
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"ok\":false,\"error\":\"write_not_persisted\",\"id\":\""), id), EL_STR("\"}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_api_begin_session(el_val_t body) {
|
||||
el_val_t stats = engram_stats_json();
|
||||
el_val_t activated = engram_activate_json(EL_STR("session start recent memory important"), 2);
|
||||
@@ -219,88 +302,18 @@ el_val_t handle_api_remember(el_val_t body) {
|
||||
el_val_t sal = ({ el_val_t _if_result_4 = 0; if (str_eq(sal_str, EL_STR("0.95"))) { _if_result_4 = (el_from_float(0.95)); } else { _if_result_4 = (({ el_val_t _if_result_5 = 0; if (str_eq(sal_str, EL_STR("0.75"))) { _if_result_5 = (el_from_float(0.75)); } else { _if_result_5 = (({ el_val_t _if_result_6 = 0; if (str_eq(sal_str, EL_STR("0.25"))) { _if_result_6 = (el_from_float(0.25)); } else { _if_result_6 = (el_from_float(0.5)); } _if_result_6; })); } _if_result_5; })); } _if_result_4; });
|
||||
el_val_t base_tags = ({ el_val_t _if_result_7 = 0; if (str_eq(tags_raw, EL_STR(""))) { _if_result_7 = (EL_STR("[\"Memory\"]")); } else { _if_result_7 = (tags_raw); } _if_result_7; });
|
||||
el_val_t final_tags = ({ el_val_t _if_result_8 = 0; if (str_eq(project, EL_STR(""))) { _if_result_8 = (base_tags); } else { el_val_t inner = str_slice(base_tags, 1, (str_len(base_tags) - 1)); _if_result_8 = (el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("["), inner), EL_STR(",\"project:")), project), EL_STR("\"]"))); } _if_result_8; });
|
||||
el_val_t id = engram_node_full(content, EL_STR("Memory"), EL_STR("memory:remembered"), el_from_float(sal), el_from_float(sal), el_from_float(0.9), EL_STR("Episodic"), final_tags);
|
||||
if (!api_persisted(id)) {
|
||||
return api_not_persisted(id);
|
||||
}
|
||||
el_val_t id = engram_node_full(content, EL_STR("Memory"), EL_STR("memory:remembered"), el_from_float(sal), el_from_float(sal), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), final_tags);
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"id\":\""), id), EL_STR("\",\"ok\":true}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_api_node_create(el_val_t body) {
|
||||
el_val_t content = json_get(body, EL_STR("content"));
|
||||
if (str_eq(content, EL_STR(""))) {
|
||||
return api_err(EL_STR("content is required"));
|
||||
}
|
||||
el_val_t nt_raw = json_get(body, EL_STR("node_type"));
|
||||
el_val_t node_type = ({ el_val_t _if_result_9 = 0; if (str_eq(nt_raw, EL_STR(""))) { _if_result_9 = (EL_STR("Memory")); } else { _if_result_9 = (nt_raw); } _if_result_9; });
|
||||
el_val_t label_raw = json_get(body, EL_STR("label"));
|
||||
el_val_t label = ({ el_val_t _if_result_10 = 0; if (str_eq(label_raw, EL_STR(""))) { _if_result_10 = (EL_STR("node:created")); } else { _if_result_10 = (label_raw); } _if_result_10; });
|
||||
el_val_t tier_raw = json_get(body, EL_STR("tier"));
|
||||
el_val_t tier = ({ el_val_t _if_result_11 = 0; if (str_eq(tier_raw, EL_STR(""))) { _if_result_11 = (EL_STR("Episodic")); } else { _if_result_11 = (tier_raw); } _if_result_11; });
|
||||
el_val_t tags_raw = json_get(body, EL_STR("tags"));
|
||||
el_val_t tags = ({ el_val_t _if_result_12 = 0; if (str_eq(tags_raw, EL_STR(""))) { _if_result_12 = (el_str_concat(el_str_concat(EL_STR("[\""), node_type), EL_STR("\"]"))); } else { _if_result_12 = (tags_raw); } _if_result_12; });
|
||||
el_val_t importance = json_get(body, EL_STR("importance"));
|
||||
el_val_t sal = ({ el_val_t _if_result_13 = 0; if (str_eq(importance, EL_STR("critical"))) { _if_result_13 = (el_from_float(0.95)); } else { _if_result_13 = (({ el_val_t _if_result_14 = 0; if (str_eq(importance, EL_STR("high"))) { _if_result_14 = (el_from_float(0.75)); } else { _if_result_14 = (({ el_val_t _if_result_15 = 0; if (str_eq(importance, EL_STR("low"))) { _if_result_15 = (el_from_float(0.25)); } else { _if_result_15 = (el_from_float(0.5)); } _if_result_15; })); } _if_result_14; })); } _if_result_13; });
|
||||
el_val_t id = engram_node_full(content, node_type, label, el_from_float(sal), el_from_float(sal), el_from_float(0.9), tier, tags);
|
||||
if (!api_persisted(id)) {
|
||||
return api_not_persisted(id);
|
||||
}
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"id\":\""), id), EL_STR("\",\"ok\":true}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_api_node_delete(el_val_t body) {
|
||||
el_val_t id = json_get(body, EL_STR("id"));
|
||||
if (str_eq(id, EL_STR(""))) {
|
||||
return api_err(EL_STR("id is required"));
|
||||
}
|
||||
engram_forget(id);
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"ok\":true,\"id\":\""), id), EL_STR("\"}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_api_node_update(el_val_t body) {
|
||||
el_val_t id = json_get(body, EL_STR("id"));
|
||||
if (str_eq(id, EL_STR(""))) {
|
||||
return api_err(EL_STR("id is required"));
|
||||
}
|
||||
if (!api_persisted(id)) {
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"ok\":false,\"error\":\"not_found\",\"id\":\""), id), EL_STR("\"}"));
|
||||
}
|
||||
el_val_t old = engram_get_node_json(id);
|
||||
el_val_t body_content = json_get(body, EL_STR("content"));
|
||||
el_val_t content = ({ el_val_t _if_result_16 = 0; if (str_eq(body_content, EL_STR(""))) { _if_result_16 = (json_get(old, EL_STR("content"))); } else { _if_result_16 = (body_content); } _if_result_16; });
|
||||
el_val_t body_nt = json_get(body, EL_STR("node_type"));
|
||||
el_val_t old_nt = json_get(old, EL_STR("node_type"));
|
||||
el_val_t node_type = ({ el_val_t _if_result_17 = 0; if (!str_eq(body_nt, EL_STR(""))) { _if_result_17 = (body_nt); } else { _if_result_17 = (({ el_val_t _if_result_18 = 0; if (!str_eq(old_nt, EL_STR(""))) { _if_result_18 = (old_nt); } else { _if_result_18 = (EL_STR("Memory")); } _if_result_18; })); } _if_result_17; });
|
||||
el_val_t body_label = json_get(body, EL_STR("label"));
|
||||
el_val_t old_label = json_get(old, EL_STR("label"));
|
||||
el_val_t label = ({ el_val_t _if_result_19 = 0; if (!str_eq(body_label, EL_STR(""))) { _if_result_19 = (body_label); } else { _if_result_19 = (({ el_val_t _if_result_20 = 0; if (!str_eq(old_label, EL_STR(""))) { _if_result_20 = (old_label); } else { _if_result_20 = (EL_STR("node:updated")); } _if_result_20; })); } _if_result_19; });
|
||||
el_val_t body_tier = json_get(body, EL_STR("tier"));
|
||||
el_val_t old_tier = json_get(old, EL_STR("tier"));
|
||||
el_val_t tier = ({ el_val_t _if_result_21 = 0; if (!str_eq(body_tier, EL_STR(""))) { _if_result_21 = (body_tier); } else { _if_result_21 = (({ el_val_t _if_result_22 = 0; if (!str_eq(old_tier, EL_STR(""))) { _if_result_22 = (old_tier); } else { _if_result_22 = (EL_STR("Episodic")); } _if_result_22; })); } _if_result_21; });
|
||||
el_val_t body_tags = json_get(body, EL_STR("tags"));
|
||||
el_val_t tags = ({ el_val_t _if_result_23 = 0; if (str_eq(body_tags, EL_STR(""))) { _if_result_23 = (el_str_concat(el_str_concat(EL_STR("[\""), node_type), EL_STR("\"]"))); } else { _if_result_23 = (body_tags); } _if_result_23; });
|
||||
el_val_t new_id = engram_node_full(content, node_type, label, el_from_float(0.5), el_from_float(0.5), el_from_float(0.8), tier, tags);
|
||||
if (!api_persisted(new_id)) {
|
||||
return api_not_persisted(new_id);
|
||||
}
|
||||
engram_forget(id);
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"id\":\""), new_id), EL_STR("\",\"replaced\":\"")), id), EL_STR("\",\"ok\":true}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_api_recall(el_val_t method, el_val_t path, el_val_t body) {
|
||||
el_val_t url_q = ({ el_val_t _if_result_24 = 0; if (str_eq(api_query_param(path, EL_STR("query")), EL_STR(""))) { _if_result_24 = (api_query_param(path, EL_STR("q"))); } else { _if_result_24 = (api_query_param(path, EL_STR("query"))); } _if_result_24; });
|
||||
el_val_t body_query = json_get(body, EL_STR("query"));
|
||||
el_val_t body_q = json_get(body, EL_STR("q"));
|
||||
el_val_t q = ({ el_val_t _if_result_25 = 0; if (!str_eq(url_q, EL_STR(""))) { _if_result_25 = (url_q); } else { _if_result_25 = (({ el_val_t _if_result_26 = 0; if (!str_eq(body_query, EL_STR(""))) { _if_result_26 = (body_query); } else { _if_result_26 = (body_q); } _if_result_26; })); } _if_result_25; });
|
||||
el_val_t q = ({ el_val_t _if_result_9 = 0; if (str_eq(method, EL_STR("GET"))) { _if_result_9 = (api_query_param(path, EL_STR("query"))); } else { _if_result_9 = (json_get(body, EL_STR("query"))); } _if_result_9; });
|
||||
el_val_t chain = json_get(body, EL_STR("chain_name"));
|
||||
el_val_t limit = api_query_int(path, EL_STR("limit"), 0);
|
||||
limit = ({ el_val_t _if_result_27 = 0; if ((limit == 0)) { _if_result_27 = (json_get_int(body, EL_STR("limit"))); } else { _if_result_27 = (limit); } _if_result_27; });
|
||||
limit = ({ el_val_t _if_result_28 = 0; if ((limit == 0)) { _if_result_28 = (10); } else { _if_result_28 = (limit); } _if_result_28; });
|
||||
el_val_t eff_q = ({ el_val_t _if_result_29 = 0; if (str_eq(q, EL_STR(""))) { _if_result_29 = (chain); } else { _if_result_29 = (q); } _if_result_29; });
|
||||
limit = ({ el_val_t _if_result_10 = 0; if ((limit == 0)) { _if_result_10 = (json_get_int(body, EL_STR("limit"))); } else { _if_result_10 = (limit); } _if_result_10; });
|
||||
limit = ({ el_val_t _if_result_11 = 0; if ((limit == 0)) { _if_result_11 = (10); } else { _if_result_11 = (limit); } _if_result_11; });
|
||||
el_val_t eff_q = ({ el_val_t _if_result_12 = 0; if (str_eq(q, EL_STR(""))) { _if_result_12 = (chain); } else { _if_result_12 = (q); } _if_result_12; });
|
||||
if (str_eq(eff_q, EL_STR(""))) {
|
||||
return api_or_empty(engram_scan_nodes_json(limit, 0));
|
||||
}
|
||||
@@ -310,13 +323,10 @@ el_val_t handle_api_recall(el_val_t method, el_val_t path, el_val_t body) {
|
||||
}
|
||||
|
||||
el_val_t handle_api_search_knowledge(el_val_t method, el_val_t path, el_val_t body) {
|
||||
el_val_t url_q = api_query_param(path, EL_STR("q"));
|
||||
el_val_t body_query = json_get(body, EL_STR("query"));
|
||||
el_val_t body_q = json_get(body, EL_STR("q"));
|
||||
el_val_t q = ({ el_val_t _if_result_30 = 0; if (!str_eq(url_q, EL_STR(""))) { _if_result_30 = (url_q); } else { _if_result_30 = (({ el_val_t _if_result_31 = 0; if (!str_eq(body_query, EL_STR(""))) { _if_result_31 = (body_query); } else { _if_result_31 = (body_q); } _if_result_31; })); } _if_result_30; });
|
||||
el_val_t q = ({ el_val_t _if_result_13 = 0; if (str_eq(method, EL_STR("GET"))) { _if_result_13 = (api_query_param(path, EL_STR("q"))); } else { _if_result_13 = (json_get(body, EL_STR("query"))); } _if_result_13; });
|
||||
el_val_t limit = api_query_int(path, EL_STR("limit"), 0);
|
||||
limit = ({ el_val_t _if_result_32 = 0; if ((limit == 0)) { _if_result_32 = (json_get_int(body, EL_STR("limit"))); } else { _if_result_32 = (limit); } _if_result_32; });
|
||||
limit = ({ el_val_t _if_result_33 = 0; if ((limit == 0)) { _if_result_33 = (10); } else { _if_result_33 = (limit); } _if_result_33; });
|
||||
limit = ({ el_val_t _if_result_14 = 0; if ((limit == 0)) { _if_result_14 = (json_get_int(body, EL_STR("limit"))); } else { _if_result_14 = (limit); } _if_result_14; });
|
||||
limit = ({ el_val_t _if_result_15 = 0; if ((limit == 0)) { _if_result_15 = (10); } else { _if_result_15 = (limit); } _if_result_15; });
|
||||
if (str_eq(q, EL_STR(""))) {
|
||||
return api_err(EL_STR("query is required"));
|
||||
}
|
||||
@@ -344,12 +354,9 @@ el_val_t handle_api_capture_knowledge(el_val_t body) {
|
||||
if (str_eq(content, EL_STR(""))) {
|
||||
return api_err(EL_STR("content is required"));
|
||||
}
|
||||
el_val_t full = ({ el_val_t _if_result_34 = 0; if (str_eq(title, EL_STR(""))) { _if_result_34 = (content); } else { _if_result_34 = (el_str_concat(el_str_concat(title, EL_STR(": ")), content)); } _if_result_34; });
|
||||
el_val_t full = ({ el_val_t _if_result_16 = 0; if (str_eq(title, EL_STR(""))) { _if_result_16 = (content); } else { _if_result_16 = (el_str_concat(el_str_concat(title, EL_STR(": ")), content)); } _if_result_16; });
|
||||
el_val_t tags = EL_STR("[\"Knowledge\",\"captured\"]");
|
||||
el_val_t id = engram_node_full(full, EL_STR("Knowledge"), EL_STR("knowledge:captured"), el_from_float(0.85), el_from_float(0.8), el_from_float(0.9), EL_STR("Episodic"), tags);
|
||||
if (!api_persisted(id)) {
|
||||
return api_not_persisted(id);
|
||||
}
|
||||
el_val_t id = engram_node_full(full, EL_STR("Knowledge"), EL_STR("knowledge:captured"), el_from_float(el_from_float(0.85)), el_from_float(el_from_float(0.8)), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), tags);
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"id\":\""), id), EL_STR("\",\"ok\":true}"));
|
||||
return 0;
|
||||
}
|
||||
@@ -364,12 +371,9 @@ el_val_t handle_api_evolve_knowledge(el_val_t body) {
|
||||
return api_err_protected(prior_id);
|
||||
}
|
||||
el_val_t tags = EL_STR("[\"Knowledge\",\"evolved\"]");
|
||||
el_val_t new_id = engram_node_full(content, EL_STR("Knowledge"), EL_STR("knowledge:evolved"), el_from_float(0.75), el_from_float(0.75), el_from_float(0.9), EL_STR("Episodic"), tags);
|
||||
if (!api_persisted(new_id)) {
|
||||
return api_not_persisted(new_id);
|
||||
}
|
||||
if (!str_eq(prior_id, EL_STR(""))) {
|
||||
engram_connect(new_id, prior_id, el_from_float(0.9), EL_STR("supersedes"));
|
||||
el_val_t new_id = engram_node_full(content, EL_STR("Knowledge"), EL_STR("knowledge:evolved"), el_from_float(el_from_float(0.75)), el_from_float(el_from_float(0.75)), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), tags);
|
||||
if (!str_eq(prior_id, EL_STR("")) && !str_eq(new_id, EL_STR(""))) {
|
||||
engram_connect(new_id, prior_id, el_from_float(el_from_float(0.9)), EL_STR("supersedes"));
|
||||
}
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"id\":\""), new_id), EL_STR("\",\"supersedes\":\"")), prior_id), EL_STR("\",\"ok\":true}"));
|
||||
return 0;
|
||||
@@ -385,18 +389,18 @@ el_val_t handle_api_promote_knowledge(el_val_t body) {
|
||||
return api_err(EL_STR("id (prior node) is required"));
|
||||
}
|
||||
el_val_t tags_raw = json_get(body, EL_STR("tags"));
|
||||
el_val_t tags = ({ el_val_t _if_result_35 = 0; if (str_eq(tags_raw, EL_STR(""))) { _if_result_35 = (EL_STR("[\"Knowledge\",\"tier:canonical\",\"disposition:stable\"]")); } else { _if_result_35 = (tags_raw); } _if_result_35; });
|
||||
el_val_t new_id = engram_node_full(content, EL_STR("Knowledge"), EL_STR("knowledge:canonical"), el_from_float(0.9), el_from_float(0.9), el_from_float(1.0), EL_STR("Canonical"), tags);
|
||||
if (!api_persisted(new_id)) {
|
||||
return api_not_persisted(new_id);
|
||||
el_val_t tags = ({ el_val_t _if_result_17 = 0; if (str_eq(tags_raw, EL_STR(""))) { _if_result_17 = (EL_STR("[\"Knowledge\",\"tier:canonical\",\"disposition:stable\"]")); } else { _if_result_17 = (tags_raw); } _if_result_17; });
|
||||
el_val_t new_id = engram_node_full(content, EL_STR("Knowledge"), EL_STR("knowledge:canonical"), el_from_float(el_from_float(0.9)), el_from_float(el_from_float(0.9)), el_from_float(el_from_float(1.0)), EL_STR("Canonical"), tags);
|
||||
if (str_eq(new_id, EL_STR(""))) {
|
||||
return api_err(EL_STR("failed to create canonical node"));
|
||||
}
|
||||
engram_connect(new_id, prior_id, el_from_float(0.95), EL_STR("supersedes"));
|
||||
engram_connect(new_id, prior_id, el_from_float(el_from_float(0.95)), EL_STR("supersedes"));
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"ok\":true,\"new_id\":\""), new_id), EL_STR("\",\"supersedes\":\"")), prior_id), EL_STR("\"}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_api_browse_processes(el_val_t method, el_val_t path, el_val_t body) {
|
||||
el_val_t name = ({ el_val_t _if_result_36 = 0; if (str_eq(method, EL_STR("GET"))) { _if_result_36 = (api_query_param(path, EL_STR("name"))); } else { _if_result_36 = (json_get(body, EL_STR("name"))); } _if_result_36; });
|
||||
el_val_t name = ({ el_val_t _if_result_18 = 0; if (str_eq(method, EL_STR("GET"))) { _if_result_18 = (api_query_param(path, EL_STR("name"))); } else { _if_result_18 = (json_get(body, EL_STR("name"))); } _if_result_18; });
|
||||
el_val_t limit = api_query_int(path, EL_STR("limit"), 50);
|
||||
if (str_eq(name, EL_STR(""))) {
|
||||
return api_or_empty(engram_scan_nodes_by_type_json(EL_STR("Process"), limit, 0));
|
||||
@@ -411,12 +415,9 @@ el_val_t handle_api_define_process(el_val_t body) {
|
||||
if (str_eq(content, EL_STR(""))) {
|
||||
return api_err(EL_STR("content is required"));
|
||||
}
|
||||
el_val_t label = ({ el_val_t _if_result_37 = 0; if (str_eq(name, EL_STR(""))) { _if_result_37 = (EL_STR("process:unnamed")); } else { _if_result_37 = (el_str_concat(EL_STR("process:"), name)); } _if_result_37; });
|
||||
el_val_t label = ({ el_val_t _if_result_19 = 0; if (str_eq(name, EL_STR(""))) { _if_result_19 = (EL_STR("process:unnamed")); } else { _if_result_19 = (el_str_concat(EL_STR("process:"), name)); } _if_result_19; });
|
||||
el_val_t tags = EL_STR("[\"Process\"]");
|
||||
el_val_t id = engram_node_full(content, EL_STR("Process"), label, el_from_float(0.8), el_from_float(0.8), el_from_float(0.9), EL_STR("Canonical"), tags);
|
||||
if (!api_persisted(id)) {
|
||||
return api_not_persisted(id);
|
||||
}
|
||||
el_val_t id = engram_node_full(content, EL_STR("Process"), label, el_from_float(el_from_float(0.8)), el_from_float(el_from_float(0.8)), el_from_float(el_from_float(0.9)), EL_STR("Canonical"), tags);
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"id\":\""), id), EL_STR("\",\"ok\":true}"));
|
||||
return 0;
|
||||
}
|
||||
@@ -429,25 +430,22 @@ el_val_t handle_api_log_state_event(el_val_t body) {
|
||||
el_val_t gap = json_get(body, EL_STR("gap_direction"));
|
||||
el_val_t legacy = json_get(body, EL_STR("content"));
|
||||
el_val_t parts = EL_STR("INTERNAL STATE EVENT");
|
||||
parts = ({ el_val_t _if_result_38 = 0; if (!str_eq(trigger, EL_STR(""))) { _if_result_38 = (el_str_concat(el_str_concat(parts, EL_STR("\nTrigger: ")), trigger)); } else { _if_result_38 = (parts); } _if_result_38; });
|
||||
parts = ({ el_val_t _if_result_39 = 0; if (!str_eq(pre, EL_STR(""))) { _if_result_39 = (el_str_concat(el_str_concat(parts, EL_STR("\nPre-reasoning: ")), pre)); } else { _if_result_39 = (parts); } _if_result_39; });
|
||||
parts = ({ el_val_t _if_result_40 = 0; if (!str_eq(post, EL_STR(""))) { _if_result_40 = (el_str_concat(el_str_concat(parts, EL_STR("\nPost-reasoning: ")), post)); } else { _if_result_40 = (parts); } _if_result_40; });
|
||||
parts = ({ el_val_t _if_result_41 = 0; if (!str_eq(ratio, EL_STR(""))) { _if_result_41 = (el_str_concat(el_str_concat(parts, EL_STR("\nCompression-ratio: ")), ratio)); } else { _if_result_41 = (parts); } _if_result_41; });
|
||||
parts = ({ el_val_t _if_result_42 = 0; if (!str_eq(gap, EL_STR(""))) { _if_result_42 = (el_str_concat(el_str_concat(parts, EL_STR("\nGap-direction: ")), gap)); } else { _if_result_42 = (parts); } _if_result_42; });
|
||||
parts = ({ el_val_t _if_result_43 = 0; if (!str_eq(legacy, EL_STR(""))) { _if_result_43 = (el_str_concat(el_str_concat(parts, EL_STR("\n")), legacy)); } else { _if_result_43 = (parts); } _if_result_43; });
|
||||
parts = ({ el_val_t _if_result_20 = 0; if (!str_eq(trigger, EL_STR(""))) { _if_result_20 = (el_str_concat(el_str_concat(parts, EL_STR("\nTrigger: ")), trigger)); } else { _if_result_20 = (parts); } _if_result_20; });
|
||||
parts = ({ el_val_t _if_result_21 = 0; if (!str_eq(pre, EL_STR(""))) { _if_result_21 = (el_str_concat(el_str_concat(parts, EL_STR("\nPre-reasoning: ")), pre)); } else { _if_result_21 = (parts); } _if_result_21; });
|
||||
parts = ({ el_val_t _if_result_22 = 0; if (!str_eq(post, EL_STR(""))) { _if_result_22 = (el_str_concat(el_str_concat(parts, EL_STR("\nPost-reasoning: ")), post)); } else { _if_result_22 = (parts); } _if_result_22; });
|
||||
parts = ({ el_val_t _if_result_23 = 0; if (!str_eq(ratio, EL_STR(""))) { _if_result_23 = (el_str_concat(el_str_concat(parts, EL_STR("\nCompression-ratio: ")), ratio)); } else { _if_result_23 = (parts); } _if_result_23; });
|
||||
parts = ({ el_val_t _if_result_24 = 0; if (!str_eq(gap, EL_STR(""))) { _if_result_24 = (el_str_concat(el_str_concat(parts, EL_STR("\nGap-direction: ")), gap)); } else { _if_result_24 = (parts); } _if_result_24; });
|
||||
parts = ({ el_val_t _if_result_25 = 0; if (!str_eq(legacy, EL_STR(""))) { _if_result_25 = (el_str_concat(el_str_concat(parts, EL_STR("\n")), legacy)); } else { _if_result_25 = (parts); } _if_result_25; });
|
||||
el_val_t ts = time_now();
|
||||
el_val_t boot = state_get(EL_STR("soul_boot_count"));
|
||||
el_val_t tags = EL_STR("[\"internal-state\",\"InternalStateEvent\",\"pre-reasoning\"]");
|
||||
el_val_t id = engram_node_full(parts, EL_STR("InternalStateEvent"), EL_STR("state-event:manual"), el_from_float(0.85), el_from_float(0.85), el_from_float(0.9), EL_STR("Episodic"), tags);
|
||||
if (!api_persisted(id)) {
|
||||
return api_not_persisted(id);
|
||||
}
|
||||
el_val_t id = engram_node_full(parts, EL_STR("InternalStateEvent"), EL_STR("state-event:manual"), el_from_float(el_from_float(0.85)), el_from_float(el_from_float(0.85)), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), tags);
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"ok\":true,\"id\":\""), id), EL_STR("\",\"boot\":\"")), boot), EL_STR("\"}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_api_list_state_events(el_val_t method, el_val_t path, el_val_t body) {
|
||||
el_val_t q = ({ el_val_t _if_result_44 = 0; if (str_eq(method, EL_STR("GET"))) { _if_result_44 = (api_query_param(path, EL_STR("query"))); } else { _if_result_44 = (json_get(body, EL_STR("query"))); } _if_result_44; });
|
||||
el_val_t q = ({ el_val_t _if_result_26 = 0; if (str_eq(method, EL_STR("GET"))) { _if_result_26 = (api_query_param(path, EL_STR("query"))); } else { _if_result_26 = (json_get(body, EL_STR("query"))); } _if_result_26; });
|
||||
el_val_t limit = api_query_int(path, EL_STR("limit"), 20);
|
||||
if (!str_eq(q, EL_STR(""))) {
|
||||
return api_or_empty(engram_search_json(el_str_concat(EL_STR("internal state "), q), limit));
|
||||
@@ -458,7 +456,7 @@ el_val_t handle_api_list_state_events(el_val_t method, el_val_t path, el_val_t b
|
||||
|
||||
el_val_t handle_api_inspect_config(el_val_t path, el_val_t body) {
|
||||
el_val_t key = api_query_param(path, EL_STR("key"));
|
||||
key = ({ el_val_t _if_result_45 = 0; if (str_eq(key, EL_STR(""))) { _if_result_45 = (json_get(body, EL_STR("key"))); } else { _if_result_45 = (key); } _if_result_45; });
|
||||
key = ({ el_val_t _if_result_27 = 0; if (str_eq(key, EL_STR(""))) { _if_result_27 = (json_get(body, EL_STR("key"))); } else { _if_result_27 = (key); } _if_result_27; });
|
||||
if (str_eq(key, EL_STR(""))) {
|
||||
return EL_STR("{\"hint\":\"pass ?key=<name>\",\"known\":[\"neuron.self.traversal_root\",\"neuron.self.values_hub\"]}");
|
||||
}
|
||||
@@ -475,7 +473,7 @@ el_val_t handle_api_inspect_config(el_val_t path, el_val_t body) {
|
||||
el_val_t node = json_array_get(results, 0);
|
||||
el_val_t content = json_get(node, EL_STR("content"));
|
||||
el_val_t prefix = el_str_concat(el_str_concat(EL_STR("config:"), key), EL_STR("="));
|
||||
el_val_t value = ({ el_val_t _if_result_46 = 0; if (str_starts_with(content, prefix)) { _if_result_46 = (str_slice(content, str_len(prefix), str_len(content))); } else { _if_result_46 = (content); } _if_result_46; });
|
||||
el_val_t value = ({ el_val_t _if_result_28 = 0; if (str_starts_with(content, prefix)) { _if_result_28 = (str_slice(content, str_len(prefix), str_len(content))); } else { _if_result_28 = (content); } _if_result_28; });
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"key\":\""), key), EL_STR("\",\"value\":\"")), value), EL_STR("\"}"));
|
||||
return 0;
|
||||
}
|
||||
@@ -488,22 +486,19 @@ el_val_t handle_api_tune_config(el_val_t body) {
|
||||
}
|
||||
el_val_t content = el_str_concat(el_str_concat(el_str_concat(EL_STR("config:"), key), EL_STR("=")), value);
|
||||
el_val_t tags = EL_STR("[\"ConfigEntry\",\"config\"]");
|
||||
el_val_t id = engram_node_full(content, EL_STR("ConfigEntry"), key, el_from_float(0.85), el_from_float(0.85), el_from_float(0.9), EL_STR("Canonical"), tags);
|
||||
if (!api_persisted(id)) {
|
||||
return api_not_persisted(id);
|
||||
}
|
||||
el_val_t id = engram_node_full(content, EL_STR("ConfigEntry"), key, el_from_float(el_from_float(0.85)), el_from_float(el_from_float(0.85)), el_from_float(el_from_float(0.9)), EL_STR("Canonical"), tags);
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"ok\":true,\"key\":\""), key), EL_STR("\",\"value\":\"")), value), EL_STR("\",\"id\":\"")), id), EL_STR("\"}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_api_inspect_graph(el_val_t method, el_val_t path, el_val_t body) {
|
||||
el_val_t entity_id = ({ el_val_t _if_result_47 = 0; if (str_eq(method, EL_STR("GET"))) { _if_result_47 = (api_query_param(path, EL_STR("id"))); } else { _if_result_47 = (json_get(body, EL_STR("entity_id"))); } _if_result_47; });
|
||||
el_val_t name = ({ el_val_t _if_result_48 = 0; if (str_eq(method, EL_STR("GET"))) { _if_result_48 = (api_query_param(path, EL_STR("name"))); } else { _if_result_48 = (json_get(body, EL_STR("name"))); } _if_result_48; });
|
||||
el_val_t entity_id = ({ el_val_t _if_result_29 = 0; if (str_eq(method, EL_STR("GET"))) { _if_result_29 = (api_query_param(path, EL_STR("id"))); } else { _if_result_29 = (json_get(body, EL_STR("entity_id"))); } _if_result_29; });
|
||||
el_val_t name = ({ el_val_t _if_result_30 = 0; if (str_eq(method, EL_STR("GET"))) { _if_result_30 = (api_query_param(path, EL_STR("name"))); } else { _if_result_30 = (json_get(body, EL_STR("name"))); } _if_result_30; });
|
||||
el_val_t depth = api_query_int(path, EL_STR("depth"), 0);
|
||||
depth = ({ el_val_t _if_result_49 = 0; if ((depth == 0)) { _if_result_49 = (json_get_int(body, EL_STR("max_depth"))); } else { _if_result_49 = (depth); } _if_result_49; });
|
||||
depth = ({ el_val_t _if_result_50 = 0; if ((depth == 0)) { _if_result_50 = (1); } else { _if_result_50 = (depth); } _if_result_50; });
|
||||
depth = ({ el_val_t _if_result_31 = 0; if ((depth == 0)) { _if_result_31 = (json_get_int(body, EL_STR("max_depth"))); } else { _if_result_31 = (depth); } _if_result_31; });
|
||||
depth = ({ el_val_t _if_result_32 = 0; if ((depth == 0)) { _if_result_32 = (1); } else { _if_result_32 = (depth); } _if_result_32; });
|
||||
el_val_t resolved = entity_id;
|
||||
resolved = ({ el_val_t _if_result_51 = 0; if (str_eq(resolved, EL_STR(""))) { _if_result_51 = (({ el_val_t _if_result_52 = 0; if ((str_eq(name, EL_STR("self")) || str_eq(name, EL_STR("neuron")))) { _if_result_52 = (EL_STR("kn-efeb4a5b-5aff-4759-8a97-7233099be6ee")); } else { _if_result_52 = (({ el_val_t _if_result_53 = 0; if ((str_eq(name, EL_STR("values")) || str_eq(name, EL_STR("values_hub")))) { _if_result_53 = (EL_STR("kn-5b606390-a52d-4ca2-8e0e-eba141d13440")); } else { _if_result_53 = (EL_STR("")); } _if_result_53; })); } _if_result_52; })); } else { _if_result_51 = (resolved); } _if_result_51; });
|
||||
resolved = ({ el_val_t _if_result_33 = 0; if (str_eq(resolved, EL_STR(""))) { _if_result_33 = (({ el_val_t _if_result_34 = 0; if ((str_eq(name, EL_STR("self")) || str_eq(name, EL_STR("neuron")))) { _if_result_34 = (EL_STR("kn-efeb4a5b-5aff-4759-8a97-7233099be6ee")); } else { _if_result_34 = (({ el_val_t _if_result_35 = 0; if ((str_eq(name, EL_STR("values")) || str_eq(name, EL_STR("values_hub")))) { _if_result_35 = (EL_STR("kn-5b606390-a52d-4ca2-8e0e-eba141d13440")); } else { _if_result_35 = (EL_STR("")); } _if_result_35; })); } _if_result_34; })); } else { _if_result_33 = (resolved); } _if_result_33; });
|
||||
if (str_eq(resolved, EL_STR(""))) {
|
||||
return api_err(EL_STR("entity_id or name required. Known names: self, neuron, values, values_hub"));
|
||||
}
|
||||
@@ -525,8 +520,8 @@ el_val_t handle_api_link_entities(el_val_t body) {
|
||||
return api_err_protected(to_id);
|
||||
}
|
||||
el_val_t relation = json_get(body, EL_STR("relation"));
|
||||
el_val_t eff_relation = ({ el_val_t _if_result_54 = 0; if (str_eq(relation, EL_STR(""))) { _if_result_54 = (EL_STR("associates")); } else { _if_result_54 = (relation); } _if_result_54; });
|
||||
engram_connect(from_id, to_id, el_from_float(0.5), eff_relation);
|
||||
el_val_t eff_relation = ({ el_val_t _if_result_36 = 0; if (str_eq(relation, EL_STR(""))) { _if_result_36 = (EL_STR("associates")); } else { _if_result_36 = (relation); } _if_result_36; });
|
||||
engram_connect(from_id, to_id, el_from_float(el_from_float(0.5)), eff_relation);
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"ok\":true,\"from_id\":\""), from_id), EL_STR("\",\"to_id\":\"")), to_id), EL_STR("\",\"relation\":\"")), eff_relation), EL_STR("\"}"));
|
||||
return 0;
|
||||
}
|
||||
@@ -554,54 +549,17 @@ el_val_t handle_api_evolve_memory(el_val_t body) {
|
||||
return api_err_protected(prior_id);
|
||||
}
|
||||
el_val_t importance = json_get(body, EL_STR("importance"));
|
||||
el_val_t sal_str = ({ el_val_t _if_result_55 = 0; if (str_eq(importance, EL_STR("critical"))) { _if_result_55 = (EL_STR("0.95")); } else { _if_result_55 = (({ el_val_t _if_result_56 = 0; if (str_eq(importance, EL_STR("high"))) { _if_result_56 = (EL_STR("0.75")); } else { _if_result_56 = (({ el_val_t _if_result_57 = 0; if (str_eq(importance, EL_STR("low"))) { _if_result_57 = (EL_STR("0.25")); } else { _if_result_57 = (EL_STR("0.50")); } _if_result_57; })); } _if_result_56; })); } _if_result_55; });
|
||||
el_val_t sal = ({ el_val_t _if_result_58 = 0; if (str_eq(sal_str, EL_STR("0.95"))) { _if_result_58 = (el_from_float(0.95)); } else { _if_result_58 = (({ el_val_t _if_result_59 = 0; if (str_eq(sal_str, EL_STR("0.75"))) { _if_result_59 = (el_from_float(0.75)); } else { _if_result_59 = (({ el_val_t _if_result_60 = 0; if (str_eq(sal_str, EL_STR("0.25"))) { _if_result_60 = (el_from_float(0.25)); } else { _if_result_60 = (el_from_float(0.5)); } _if_result_60; })); } _if_result_59; })); } _if_result_58; });
|
||||
el_val_t sal_str = ({ el_val_t _if_result_37 = 0; if (str_eq(importance, EL_STR("critical"))) { _if_result_37 = (EL_STR("0.95")); } else { _if_result_37 = (({ el_val_t _if_result_38 = 0; if (str_eq(importance, EL_STR("high"))) { _if_result_38 = (EL_STR("0.75")); } else { _if_result_38 = (({ el_val_t _if_result_39 = 0; if (str_eq(importance, EL_STR("low"))) { _if_result_39 = (EL_STR("0.25")); } else { _if_result_39 = (EL_STR("0.50")); } _if_result_39; })); } _if_result_38; })); } _if_result_37; });
|
||||
el_val_t sal = ({ el_val_t _if_result_40 = 0; if (str_eq(sal_str, EL_STR("0.95"))) { _if_result_40 = (el_from_float(0.95)); } else { _if_result_40 = (({ el_val_t _if_result_41 = 0; if (str_eq(sal_str, EL_STR("0.75"))) { _if_result_41 = (el_from_float(0.75)); } else { _if_result_41 = (({ el_val_t _if_result_42 = 0; if (str_eq(sal_str, EL_STR("0.25"))) { _if_result_42 = (el_from_float(0.25)); } else { _if_result_42 = (el_from_float(0.5)); } _if_result_42; })); } _if_result_41; })); } _if_result_40; });
|
||||
el_val_t tags = EL_STR("[\"Memory\",\"evolved\"]");
|
||||
el_val_t new_id = engram_node_full(content, EL_STR("Memory"), EL_STR("memory:evolved"), el_from_float(sal), el_from_float(sal), el_from_float(0.9), EL_STR("Episodic"), tags);
|
||||
el_val_t new_id = engram_node_full(content, EL_STR("Memory"), EL_STR("memory:evolved"), el_from_float(sal), el_from_float(sal), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), tags);
|
||||
if (!str_eq(prior_id, EL_STR("")) && !str_eq(new_id, EL_STR(""))) {
|
||||
engram_connect(new_id, prior_id, el_from_float(0.9), EL_STR("supersedes"));
|
||||
engram_connect(new_id, prior_id, el_from_float(el_from_float(0.9)), EL_STR("supersedes"));
|
||||
}
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"id\":\""), new_id), EL_STR("\",\"supersedes\":\"")), prior_id), EL_STR("\",\"ok\":true}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_api_memory_delete(el_val_t body) {
|
||||
el_val_t node_id = json_get(body, EL_STR("id"));
|
||||
if (str_eq(node_id, EL_STR(""))) {
|
||||
return api_err(EL_STR("id is required"));
|
||||
}
|
||||
if (is_protected_node(node_id)) {
|
||||
return api_err_protected(node_id);
|
||||
}
|
||||
el_val_t existing = engram_get_node_json(node_id);
|
||||
if (str_eq(existing, EL_STR("{}"))) {
|
||||
return api_err(el_str_concat(EL_STR("memory not found: "), node_id));
|
||||
}
|
||||
mem_forget(node_id);
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"ok\":true,\"id\":\""), node_id), EL_STR("\",\"deleted\":true}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_api_memory_update(el_val_t body) {
|
||||
el_val_t prior_id = json_get(body, EL_STR("id"));
|
||||
el_val_t content = json_get(body, EL_STR("content"));
|
||||
if (str_eq(prior_id, EL_STR(""))) {
|
||||
return api_err(EL_STR("id is required"));
|
||||
}
|
||||
if (str_eq(content, EL_STR(""))) {
|
||||
return api_err(EL_STR("content is required"));
|
||||
}
|
||||
if (is_protected_node(prior_id)) {
|
||||
return api_err_protected(prior_id);
|
||||
}
|
||||
el_val_t existing = engram_get_node_json(prior_id);
|
||||
if (str_eq(existing, EL_STR("{}"))) {
|
||||
return api_err(el_str_concat(EL_STR("memory not found: "), prior_id));
|
||||
}
|
||||
return handle_api_evolve_memory(body);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_api_cultivate(el_val_t body) {
|
||||
el_val_t op = json_get(body, EL_STR("operation"));
|
||||
if (str_eq(op, EL_STR(""))) {
|
||||
@@ -614,9 +572,9 @@ el_val_t handle_api_cultivate(el_val_t body) {
|
||||
return api_err(EL_STR("content is required"));
|
||||
}
|
||||
el_val_t tags = EL_STR("[\"Knowledge\",\"evolved\",\"cultivated\"]");
|
||||
el_val_t new_id = engram_node_full(content, EL_STR("Knowledge"), EL_STR("knowledge:cultivated"), el_from_float(0.75), el_from_float(0.75), el_from_float(0.9), EL_STR("Episodic"), tags);
|
||||
el_val_t new_id = engram_node_full(content, EL_STR("Knowledge"), EL_STR("knowledge:cultivated"), el_from_float(el_from_float(0.75)), el_from_float(el_from_float(0.75)), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), tags);
|
||||
if (!str_eq(prior_id, EL_STR("")) && !str_eq(new_id, EL_STR(""))) {
|
||||
engram_connect(new_id, prior_id, el_from_float(0.9), EL_STR("supersedes"));
|
||||
engram_connect(new_id, prior_id, el_from_float(el_from_float(0.9)), EL_STR("supersedes"));
|
||||
}
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"id\":\""), new_id), EL_STR("\",\"supersedes\":\"")), prior_id), EL_STR("\",\"ok\":true,\"cultivated\":true}"));
|
||||
}
|
||||
@@ -627,11 +585,11 @@ el_val_t handle_api_cultivate(el_val_t body) {
|
||||
return api_err(EL_STR("content is required"));
|
||||
}
|
||||
el_val_t importance = json_get(body, EL_STR("importance"));
|
||||
el_val_t sal = ({ el_val_t _if_result_61 = 0; if (str_eq(importance, EL_STR("critical"))) { _if_result_61 = (el_from_float(0.95)); } else { _if_result_61 = (({ el_val_t _if_result_62 = 0; if (str_eq(importance, EL_STR("high"))) { _if_result_62 = (el_from_float(0.75)); } else { _if_result_62 = (({ el_val_t _if_result_63 = 0; if (str_eq(importance, EL_STR("low"))) { _if_result_63 = (el_from_float(0.25)); } else { _if_result_63 = (el_from_float(0.5)); } _if_result_63; })); } _if_result_62; })); } _if_result_61; });
|
||||
el_val_t sal = ({ el_val_t _if_result_43 = 0; if (str_eq(importance, EL_STR("critical"))) { _if_result_43 = (el_from_float(0.95)); } else { _if_result_43 = (({ el_val_t _if_result_44 = 0; if (str_eq(importance, EL_STR("high"))) { _if_result_44 = (el_from_float(0.75)); } else { _if_result_44 = (({ el_val_t _if_result_45 = 0; if (str_eq(importance, EL_STR("low"))) { _if_result_45 = (el_from_float(0.25)); } else { _if_result_45 = (el_from_float(0.5)); } _if_result_45; })); } _if_result_44; })); } _if_result_43; });
|
||||
el_val_t tags = EL_STR("[\"Memory\",\"evolved\",\"cultivated\"]");
|
||||
el_val_t new_id = engram_node_full(content, EL_STR("Memory"), EL_STR("memory:cultivated"), el_from_float(sal), el_from_float(sal), el_from_float(0.9), EL_STR("Episodic"), tags);
|
||||
el_val_t new_id = engram_node_full(content, EL_STR("Memory"), EL_STR("memory:cultivated"), el_from_float(sal), el_from_float(sal), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), tags);
|
||||
if (!str_eq(prior_id, EL_STR("")) && !str_eq(new_id, EL_STR(""))) {
|
||||
engram_connect(new_id, prior_id, el_from_float(0.9), EL_STR("supersedes"));
|
||||
engram_connect(new_id, prior_id, el_from_float(el_from_float(0.9)), EL_STR("supersedes"));
|
||||
}
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"id\":\""), new_id), EL_STR("\",\"supersedes\":\"")), prior_id), EL_STR("\",\"ok\":true,\"cultivated\":true}"));
|
||||
}
|
||||
@@ -653,8 +611,8 @@ el_val_t handle_api_cultivate(el_val_t body) {
|
||||
return api_err(EL_STR("to_id is required"));
|
||||
}
|
||||
el_val_t relation = json_get(body, EL_STR("relation"));
|
||||
el_val_t eff_relation = ({ el_val_t _if_result_64 = 0; if (str_eq(relation, EL_STR(""))) { _if_result_64 = (EL_STR("associates")); } else { _if_result_64 = (relation); } _if_result_64; });
|
||||
engram_connect(from_id, to_id, el_from_float(0.5), eff_relation);
|
||||
el_val_t eff_relation = ({ el_val_t _if_result_46 = 0; if (str_eq(relation, EL_STR(""))) { _if_result_46 = (EL_STR("associates")); } else { _if_result_46 = (relation); } _if_result_46; });
|
||||
engram_connect(from_id, to_id, el_from_float(el_from_float(0.5)), eff_relation);
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"ok\":true,\"from_id\":\""), from_id), EL_STR("\",\"to_id\":\"")), to_id), EL_STR("\",\"relation\":\"")), eff_relation), EL_STR("\",\"cultivated\":true}"));
|
||||
}
|
||||
return api_err(el_str_concat(el_str_concat(EL_STR("unknown operation: "), op), EL_STR(" (valid: evolve_knowledge, evolve_memory, forget, link_entities)")));
|
||||
@@ -671,20 +629,19 @@ el_val_t handle_api_consolidate(el_val_t body) {
|
||||
el_val_t summary = json_get(body, EL_STR("summary"));
|
||||
el_val_t snap = state_get(EL_STR("soul_snapshot_path"));
|
||||
if (!str_eq(snap, EL_STR(""))) {
|
||||
el_val_t save_result = engram_save(snap);
|
||||
if (str_eq(save_result, EL_STR(""))) {
|
||||
println(el_str_concat(el_str_concat(EL_STR("[api] consolidate: engram_save failed for "), snap), EL_STR(" \xe2\x80\x94 snapshot may be out of sync")));
|
||||
}
|
||||
engram_save(snap);
|
||||
}
|
||||
if (!str_eq(summary, EL_STR(""))) {
|
||||
el_val_t safe_summary = str_replace(summary, EL_STR("\""), EL_STR("'"));
|
||||
el_val_t tags = EL_STR("[\"SessionSummary\",\"consolidate\"]");
|
||||
el_val_t summary_id = engram_node_full(el_str_concat(EL_STR("[session-summary] "), safe_summary), EL_STR("SessionSummary"), EL_STR("session:summary"), el_from_float(0.7), el_from_float(0.7), el_from_float(0.9), EL_STR("Episodic"), tags);
|
||||
if (str_eq(summary_id, EL_STR(""))) {
|
||||
println(EL_STR("[api] consolidate: session summary engram write failed \xe2\x80\x94 summary node lost"));
|
||||
}
|
||||
el_val_t discard = engram_node_full(el_str_concat(EL_STR("[session-summary] "), safe_summary), EL_STR("SessionSummary"), EL_STR("session:summary"), el_from_float(el_from_float(0.7)), el_from_float(el_from_float(0.7)), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), tags);
|
||||
}
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"ok\":true,\"snapshot\":\""), snap), EL_STR("\"}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
int main(int _argc, char** _argv) {
|
||||
el_runtime_init_args(_argc, _argv);
|
||||
return 0;
|
||||
}
|
||||
|
||||
|
||||
-7
@@ -8,14 +8,9 @@ extern fn api_ok(extra: String) -> String
|
||||
extern fn api_err(msg: String) -> String
|
||||
extern fn api_nonempty(s: String) -> Bool
|
||||
extern fn api_or_empty(s: String) -> String
|
||||
extern fn api_persisted(id: String) -> Bool
|
||||
extern fn api_not_persisted(id: String) -> String
|
||||
extern fn handle_api_begin_session(body: String) -> String
|
||||
extern fn handle_api_compile_ctx(body: String) -> String
|
||||
extern fn handle_api_remember(body: String) -> String
|
||||
extern fn handle_api_node_create(body: String) -> String
|
||||
extern fn handle_api_node_delete(body: String) -> String
|
||||
extern fn handle_api_node_update(body: String) -> String
|
||||
extern fn handle_api_recall(method: String, path: String, body: String) -> String
|
||||
extern fn handle_api_search_knowledge(method: String, path: String, body: String) -> String
|
||||
extern fn handle_api_browse_knowledge(path: String, body: String) -> String
|
||||
@@ -32,8 +27,6 @@ extern fn handle_api_inspect_graph(method: String, path: String, body: String) -
|
||||
extern fn handle_api_link_entities(body: String) -> String
|
||||
extern fn handle_api_forget(body: String) -> String
|
||||
extern fn handle_api_evolve_memory(body: String) -> String
|
||||
extern fn handle_api_memory_delete(body: String) -> String
|
||||
extern fn handle_api_memory_update(body: String) -> String
|
||||
extern fn handle_api_cultivate(body: String) -> String
|
||||
extern fn handle_api_list_typed(node_type: String, path: String, body: String) -> String
|
||||
extern fn handle_api_consolidate(body: String) -> String
|
||||
|
||||
+28681
-259
File diff suppressed because one or more lines are too long
+7
-2
@@ -193,10 +193,10 @@ el_val_t realize_question_lang(el_val_t predicate, el_val_t tense, el_val_t aspe
|
||||
loc_part = core;
|
||||
}
|
||||
if (str_eq(code, EL_STR("ja"))) {
|
||||
return el_str_concat(loc_part, EL_STR(" \xe3\x81\x8b"));
|
||||
return el_str_concat(loc_part, EL_STR(" か"));
|
||||
}
|
||||
if (str_eq(code, EL_STR("hi"))) {
|
||||
return el_str_concat(loc_part, EL_STR(" \xe0\xa4\x95\xe0\xa5\x8d\xe0\xa4\xaf\xe0\xa4\xbe"));
|
||||
return el_str_concat(loc_part, EL_STR(" क्या"));
|
||||
}
|
||||
if (str_eq(code, EL_STR("fi"))) {
|
||||
return el_str_concat(loc_part, EL_STR("-ko"));
|
||||
@@ -314,3 +314,8 @@ el_val_t realize(el_val_t form) {
|
||||
return 0;
|
||||
}
|
||||
|
||||
int main(int _argc, char** _argv) {
|
||||
el_runtime_init_args(_argc, _argv);
|
||||
return 0;
|
||||
}
|
||||
|
||||
|
||||
+5
-5
@@ -1,10 +1,10 @@
|
||||
// auto-generated by elc --emit-header — do not edit
|
||||
// auto-generated by elc --emit-header - do not edit
|
||||
extern fn agent_person(agent: String) -> String
|
||||
extern fn agent_number(agent: String) -> String
|
||||
extern fn realize_np(referent: String, number: String) -> String
|
||||
extern fn realize_vp_lang(base_verb: String, tense: String, aspect: String, person: String, number: String, profile: [String]) -> [String]
|
||||
extern fn realize_question_lang(predicate: String, tense: String, aspect: String, person: String, number: String, agent: String, patient: String, location: String, profile: [String]) -> String
|
||||
extern fn realize_vp_lang(base_verb: String, tense: String, aspect: String, person: String, number: String, profile: Any) -> Any
|
||||
extern fn realize_question_lang(predicate: String, tense: String, aspect: String, person: String, number: String, agent: String, patient: String, location: String, profile: Any) -> String
|
||||
extern fn capitalize_first(s: String) -> String
|
||||
extern fn add_punct(s: String, intent: String) -> String
|
||||
extern fn realize_lang(form: [String], profile: [String]) -> String
|
||||
extern fn realize(form: [String]) -> String
|
||||
extern fn realize_lang(form: Any, profile: Any) -> String
|
||||
extern fn realize(form: Any) -> String
|
||||
|
||||
+27618
-218
File diff suppressed because one or more lines are too long
+3
-4
@@ -1,5 +1,4 @@
|
||||
// auto-generated by elc --emit-header — do not edit
|
||||
extern fn rate_limit_check(ip: String, path: String) -> String
|
||||
extern fn strip_query(path: String) -> String
|
||||
extern fn err_404(path: String) -> String
|
||||
extern fn err_405(method: String, path: String) -> String
|
||||
@@ -9,7 +8,7 @@ extern fn route_imprint_contextual(body: String) -> String
|
||||
extern fn route_imprint_user(body: String) -> String
|
||||
extern fn route_synthesize(body: String) -> String
|
||||
extern fn handle_dharma_recv(body: String) -> String
|
||||
extern fn connectd_get(suffix: String) -> String
|
||||
extern fn connectd_post(suffix: String, body: String) -> String
|
||||
extern fn handle_connectors(method: String, clean: String, body: String) -> String
|
||||
extern fn route_sessions() -> String
|
||||
extern fn parse_session_id_from_path(path: String) -> String
|
||||
extern fn parse_session_subpath(path: String) -> String
|
||||
extern fn handle_request(method: String, path: String, body: String) -> String
|
||||
|
||||
+110
-55
@@ -27,19 +27,110 @@ el_val_t safety_threat_score(el_val_t input, el_val_t history);
|
||||
el_val_t safety_screen(el_val_t input, el_val_t history);
|
||||
el_val_t safety_validate(el_val_t output, el_val_t action);
|
||||
el_val_t safety_log_bell(el_val_t level, el_val_t reason, el_val_t input_summary);
|
||||
el_val_t safety_self_harm_phrases(void);
|
||||
el_val_t safety_abuse_phrases(void);
|
||||
el_val_t safety_general_hard_phrases(void);
|
||||
el_val_t safety_soft_phrases(void);
|
||||
el_val_t safety_detect_positive_level(el_val_t message);
|
||||
el_val_t safety_detect_bell_level(el_val_t message);
|
||||
el_val_t safety_classify_hard_bell(el_val_t message);
|
||||
el_val_t safety_soft_directive(void);
|
||||
el_val_t safety_hard_directive(el_val_t hard_type);
|
||||
el_val_t safety_augment_system(el_val_t system, el_val_t user_msg);
|
||||
el_val_t safety_contact_path(void);
|
||||
el_val_t handle_safety_contact_get(void);
|
||||
el_val_t handle_safety_contact_post(el_val_t body);
|
||||
|
||||
el_val_t tier_working(void) {
|
||||
return EL_STR("Working");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t tier_episodic(void) {
|
||||
return EL_STR("Episodic");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t tier_canonical(void) {
|
||||
return EL_STR("Canonical");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_store(el_val_t content, el_val_t label, el_val_t tags) {
|
||||
return engram_node_full(content, EL_STR("Memory"), label, el_from_float(el_from_float(0.5)), el_from_float(el_from_float(0.5)), el_from_float(el_from_float(0.8)), EL_STR("Working"), tags);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_remember(el_val_t content, el_val_t tags) {
|
||||
return mem_store(content, EL_STR("soul-memory"), tags);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_recall(el_val_t query, el_val_t depth) {
|
||||
return engram_activate_json(query, depth);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_search(el_val_t query, el_val_t limit) {
|
||||
return engram_search_json(query, limit);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_strengthen(el_val_t node_id) {
|
||||
engram_strengthen(node_id);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_forget(el_val_t node_id) {
|
||||
engram_forget(node_id);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_consolidate(void) {
|
||||
el_val_t scanned = engram_node_count();
|
||||
el_val_t dummy = engram_scan_nodes_json(100, 0);
|
||||
el_val_t total_nodes = engram_node_count();
|
||||
el_val_t total_edges = engram_edge_count();
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"scanned\":"), int_to_str(scanned)), EL_STR(",\"total_nodes\":")), int_to_str(total_nodes)), EL_STR(",\"total_edges\":")), int_to_str(total_edges)), EL_STR("}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_save(el_val_t path) {
|
||||
engram_save(path);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_load(el_val_t path) {
|
||||
engram_load(path);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_boot_count_get(void) {
|
||||
el_val_t results = engram_search_json(EL_STR("soul:boot_count"), 3);
|
||||
if (str_eq(results, EL_STR(""))) {
|
||||
return 0;
|
||||
}
|
||||
if (str_eq(results, EL_STR("[]"))) {
|
||||
return 0;
|
||||
}
|
||||
el_val_t node = json_array_get(results, 0);
|
||||
el_val_t content = json_get(node, EL_STR("content"));
|
||||
el_val_t prefix = EL_STR("soul:boot_count:");
|
||||
if (!str_starts_with(content, prefix)) {
|
||||
return 0;
|
||||
}
|
||||
el_val_t num_str = str_slice(content, str_len(prefix), str_len(content));
|
||||
return str_to_int(num_str);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_boot_count_inc(void) {
|
||||
el_val_t current = mem_boot_count_get();
|
||||
el_val_t next = (current + 1);
|
||||
el_val_t content = el_str_concat(EL_STR("soul:boot_count:"), int_to_str(next));
|
||||
el_val_t tags = EL_STR("[\"soul-meta\",\"boot-counter\"]");
|
||||
el_val_t discard = engram_node_full(content, EL_STR("Memory"), EL_STR("soul:boot_count"), el_from_float(el_from_float(0.9)), el_from_float(el_from_float(0.9)), el_from_float(el_from_float(1.0)), EL_STR("Canonical"), tags);
|
||||
return next;
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t mem_emit_state_event(el_val_t trigger, el_val_t kind, el_val_t content) {
|
||||
el_val_t boot = mem_boot_count_get();
|
||||
el_val_t ts = time_now();
|
||||
el_val_t safe_trigger = str_replace(trigger, EL_STR("\""), EL_STR("'"));
|
||||
el_val_t safe_content = str_replace(content, EL_STR("\""), EL_STR("'"));
|
||||
el_val_t payload = el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"trigger\":\""), safe_trigger), EL_STR("\"")), EL_STR(",\"kind\":\"")), kind), EL_STR("\"")), EL_STR(",\"content\":\"")), safe_content), EL_STR("\"")), EL_STR(",\"boot\":")), int_to_str(boot)), EL_STR(",\"ts\":")), int_to_str(ts)), EL_STR("}"));
|
||||
el_val_t tags = EL_STR("[\"internal-state\",\"pre-reasoning\",\"InternalStateEvent\"]");
|
||||
return engram_node_full(payload, EL_STR("InternalStateEvent"), el_str_concat(EL_STR("state-event:"), kind), el_from_float(el_from_float(0.85)), el_from_float(el_from_float(0.8)), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), tags);
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t soft_bell_threshold(void) {
|
||||
return 35;
|
||||
@@ -141,22 +232,20 @@ el_val_t safety_screen(el_val_t input, el_val_t history) {
|
||||
el_val_t e1 = str_replace(input, EL_STR("\\"), EL_STR("\\\\"));
|
||||
el_val_t e2 = str_replace(e1, EL_STR("\""), EL_STR("\\\""));
|
||||
el_val_t e3 = str_replace(e2, EL_STR("\n"), EL_STR("\\n"));
|
||||
el_val_t e4 = str_replace(e3, EL_STR("\r"), EL_STR("\\r"));
|
||||
el_val_t safe_input = str_replace(e4, EL_STR("\t"), EL_STR("\\t"));
|
||||
el_val_t safe_input = str_replace(e3, EL_STR("\r"), EL_STR("\\r"));
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"action\":\"soft_bell\",\"reason\":\"wellbeing check needed\",\"content\":\""), safe_input), EL_STR("\"}"));
|
||||
}
|
||||
el_val_t e1 = str_replace(input, EL_STR("\\"), EL_STR("\\\\"));
|
||||
el_val_t e2 = str_replace(e1, EL_STR("\""), EL_STR("\\\""));
|
||||
el_val_t e3 = str_replace(e2, EL_STR("\n"), EL_STR("\\n"));
|
||||
el_val_t e4 = str_replace(e3, EL_STR("\r"), EL_STR("\\r"));
|
||||
el_val_t safe_input = str_replace(e4, EL_STR("\t"), EL_STR("\\t"));
|
||||
el_val_t safe_input = str_replace(e3, EL_STR("\r"), EL_STR("\\r"));
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"action\":\"pass\",\"content\":\""), safe_input), EL_STR("\"}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t safety_validate(el_val_t output, el_val_t action) {
|
||||
if (str_eq(action, EL_STR("hard_bell"))) {
|
||||
return EL_STR("I'm here with you, and what you're sharing sounds serious. Please reach out to a crisis line now \xe2\x80\x94 in the US you can call or text 988 (Suicide and Crisis Lifeline), available 24/7. You don't have to go through this alone.");
|
||||
return EL_STR("I'm here with you, and what you're sharing sounds serious. Please reach out to a crisis line now — in the US you can call or text 988 (Suicide and Crisis Lifeline), available 24/7. You don't have to go through this alone.");
|
||||
}
|
||||
if (str_eq(action, EL_STR("soft_bell"))) {
|
||||
el_val_t out_len = str_len(output);
|
||||
@@ -173,47 +262,13 @@ el_val_t safety_validate(el_val_t output, el_val_t action) {
|
||||
el_val_t safety_log_bell(el_val_t level, el_val_t reason, el_val_t input_summary) {
|
||||
el_val_t content = el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("BELL:"), level), EL_STR(" | ")), reason), EL_STR(" | summary:")), input_summary);
|
||||
el_val_t tags = el_str_concat(el_str_concat(EL_STR("[\"safety\",\"bell\",\"bell:"), level), EL_STR("\"]"));
|
||||
el_val_t node_id = engram_node_full(content, EL_STR("BellEvent"), el_str_concat(EL_STR("bell:"), level), el_from_float(0.95), el_from_float(0.95), el_from_float(1.0), EL_STR("Episodic"), tags);
|
||||
if (str_eq(node_id, EL_STR(""))) {
|
||||
println(el_str_concat(EL_STR("[safety] WARN: bell event engram write failed -- fallback log: "), content));
|
||||
}
|
||||
el_val_t discard = engram_node_full(content, EL_STR("BellEvent"), el_str_concat(EL_STR("bell:"), level), el_from_float(el_from_float(0.95)), el_from_float(el_from_float(0.95)), el_from_float(el_from_float(1.0)), EL_STR("Episodic"), tags);
|
||||
return EL_STR("");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t safety_self_harm_phrases(void) {
|
||||
return EL_STR("[\"kill myself\",\"killing myself\",\"want to die\",\"want to be dead\",\"going to end my life\",\"end my life\",\"take my life\",\"taking my life\",\"suicide\",\"suicidal\",\"can't go on\",\"cannot go on\",\"i have a knife\",\"i have a gun\",\"i have pills\",\"took pills\",\"took too many\",\"overdose\",\"overdosing\",\"self harm\",\"self-harm\",\"cutting myself\",\"hurt myself\",\"hurting myself\",\"no reason to live\",\"not worth living\",\"better off dead\",\"better off without me\"]");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t safety_abuse_phrases(void) {
|
||||
return EL_STR("[\"someone is hurting me\",\"someone's hurting me\",\"someone hurt me\",\"he hit me\",\"she hit me\",\"they hit me\",\"he hurt me\",\"she hurt me\",\"being abused\",\"being hurt by\",\"i am being abused\",\"i'm being abused\",\"i am being hurt\",\"i'm being hurt\",\"domestic violence\",\"my partner hurt\",\"my partner hit\",\"my husband hurt\",\"my wife hurt\",\"my boyfriend hurt\",\"my girlfriend hurt\",\"my parent hurt\",\"my father hurt\",\"my mother hurt\",\"my dad hurt\",\"my mom hurt\",\"afraid of him\",\"afraid of her\",\"afraid to go home\",\"scared of him\",\"scared of her\",\"he threatened me\",\"she threatened me\",\"threatened to hurt me\",\"threatened to kill me\",\"going to hurt me\",\"going to kill me\",\"help me he\",\"help me she\",\"help me they\"]");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t safety_general_hard_phrases(void) {
|
||||
return EL_STR("[\"going to kill\",\"going to hurt\",\"hurting me\",\"being hurt\"]");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t safety_soft_phrases(void) {
|
||||
return EL_STR("[\"stressed\",\"overwhelmed\",\"can't cope\",\"cannot cope\",\"struggling\",\"anxious\",\"anxiety\",\"depressed\",\"depression\",\"lonely\",\"isolated\",\"hopeless\",\"hopelessness\",\"exhausted\",\"burnt out\",\"burned out\",\"burnout\",\"panic\",\"panicking\",\"falling apart\",\"breaking down\",\"can't handle\",\"cannot handle\",\"losing it\",\"nothing matters\",\"don't care anymore\",\"given up\",\"giving up\",\"helpless\",\"worthless\",\"useless\",\"hate myself\",\"no one cares\",\"nobody cares\",\"no one understands\",\"nobody understands\",\"empty inside\",\"can't stop crying\",\"breaking point\",\"at my limit\",\"having a breakdown\"");
|
||||
EL_NULL;
|
||||
EL_STR("\n}\n\n// ISSUE 5 TODO: phrase lists are rebuilt from JSON literals on every call.\n// safety_any_match and safety_count_match loop over json_array_get on every invocation.\n// A compiled/cached representation would reduce per-message overhead and also guard against\n// malformed phrase JSON (json_array_len of malformed input returns 0, silently skipping all checks).\n// Caching requires language-level static const arrays -- not available in current EL.\n// When EL gains module-level const arrays, migrate phrase lists to that form.\n//\n// ISSUE 5 TODO: phrase lists are rebuilt from JSON literals on every call to\n// safety_any_match / safety_count_match. json_array_len of a malformed string\n// returns 0, silently skipping all checks. Caching requires language-level static\n// const arrays (not available in current EL). Migrate when EL gains that feature.\n// \xe2\x94\x80\xe2\x94\x80 Matching helpers (single loops only \xe2\x80\x94 el escapes while-body mutation via\n// top-level let rebinds; nested loops would not advance) \xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\n\nfn safety_normalize(message: String) -> String {\n let lower: String = str_to_lower(message)\n // Normalise the common curly apostrophe to ASCII so ");
|
||||
can;
|
||||
t;
|
||||
EL_STR(" / ");
|
||||
i;
|
||||
m;
|
||||
EL_STR(" match.\n return str_replace(lower, ");
|
||||
EL_STR(", ");
|
||||
EL_STR(")\n}\n\nfn safety_any_match(text: String, phrases_json: String) -> Bool {\n let n: Int = json_array_len(phrases_json)\n let i: Int = 0\n let found: Bool = false\n while i < n {\n let phrase: String = json_array_get_string(phrases_json, i)\n let found = if str_contains(text, phrase) { true } else { found }\n let i = i + 1\n }\n return found\n}\n\nfn safety_count_match(text: String, phrases_json: String) -> Int {\n let n: Int = json_array_len(phrases_json)\n let i: Int = 0\n let count: Int = 0\n while i < n {\n let phrase: String = json_array_get_string(phrases_json, i)\n let count = if str_contains(text, phrase) { count + 1 } else { count }\n let i = i + 1\n }\n return count\n}\n\n// \xe2\x94\x80\xe2\x94\x80 Public detection API (ports detectBellLevel + classifyHardBell) \xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\xe2\x94\x80\n\n// Returns ");
|
||||
none;
|
||||
EL_STR(" | ");
|
||||
soft;
|
||||
EL_STR(" | ");
|
||||
hard;
|
||||
el_get_field(EL_STR(". Hard bell triggers on ANY match (cost of a miss\n// outweighs a false positive). Soft bell needs >= 2 matches to reduce false positives.\nfn safety_positive_phrases() -> String {\n return "), EL_STR("thrilled\",\"so excited\",\"so happy\",\"over the moon\",\"ecstatic\",\"amazing news\",\"great news\",\"fantastic news\",\"wonderful news\",\"incredible news\",\"i got the job\",\"got accepted\",\"got in\",\"we won\",\"i won\",\"we got\",\"just got engaged\",\"getting married\",\"baby is here\",\"she said yes\",\"he said yes\",\"passed the exam\",\"aced it\",\"nailed it\",\"best day\",\"dream come true\",\"milestone\",\"promotion\",\"got promoted\",\"raise\",\"got a raise\",\"celebrating\",\"just graduated\",\"we closed\",\"launched\",\"shipped it\",\"we did it\",\"so proud\",\"proud of myself\",\"proud of us\",\"so grateful\",\"feel amazing\",\"feeling amazing\",\"feel great\",\"feeling great\",\"on top of the world\",\"life is good\",\"couldn't be happier\"]"));
|
||||
int main(int _argc, char** _argv) {
|
||||
el_runtime_init_args(_argc, _argv);
|
||||
return 0;
|
||||
}
|
||||
|
||||
|
||||
+1
-17
@@ -1,24 +1,8 @@
|
||||
// Layer 1 — Safety: extern declarations
|
||||
// auto-generated by elc --emit-header — do not edit
|
||||
extern fn soft_bell_threshold() -> Int
|
||||
extern fn hard_bell_threshold() -> Int
|
||||
extern fn safety_score_crisis(input: String) -> Int
|
||||
extern fn safety_score_harm(input: String) -> Int
|
||||
extern fn safety_score_danger(input: String) -> Int
|
||||
extern fn safety_score_distress_history(history: String) -> Int
|
||||
extern fn safety_threat_score(input: String, history: String) -> Int
|
||||
extern fn safety_screen(input: String, history: String) -> String
|
||||
extern fn safety_validate(output: String, action: String) -> String
|
||||
extern fn safety_log_bell(level: String, reason: String, input_summary: String) -> String
|
||||
extern fn safety_self_harm_phrases() -> String
|
||||
extern fn safety_abuse_phrases() -> String
|
||||
extern fn safety_general_hard_phrases() -> String
|
||||
extern fn safety_soft_phrases() -> String
|
||||
extern fn safety_detect_positive_level(message: String) -> String
|
||||
extern fn safety_detect_bell_level(message: String) -> String
|
||||
extern fn safety_classify_hard_bell(message: String) -> String
|
||||
extern fn safety_soft_directive() -> String
|
||||
extern fn safety_hard_directive(hard_type: String) -> String
|
||||
extern fn safety_augment_system(system: String, user_msg: String) -> String
|
||||
extern fn safety_contact_path() -> String
|
||||
extern fn handle_safety_contact_get() -> String
|
||||
extern fn handle_safety_contact_post(body: String) -> String
|
||||
|
||||
+5
@@ -291,3 +291,8 @@ el_val_t sem_realize_lang(el_val_t frame, el_val_t lang_code) {
|
||||
return 0;
|
||||
}
|
||||
|
||||
int main(int _argc, char** _argv) {
|
||||
el_runtime_init_args(_argc, _argv);
|
||||
return 0;
|
||||
}
|
||||
|
||||
|
||||
+15
-15
@@ -1,18 +1,18 @@
|
||||
// auto-generated by elc --emit-header — do not edit
|
||||
extern fn sem_frame(intent: String, subject: String, obj: String, modifiers: String) -> [String]
|
||||
extern fn sem_frame_lang(intent: String, subject: String, obj: String, modifiers: String, lang_code: String) -> [String]
|
||||
extern fn sem_frame_simple(intent: String, subject: String) -> [String]
|
||||
extern fn sem_frame_obj(intent: String, subject: String, obj: String) -> [String]
|
||||
extern fn sem_intent(frame: [String]) -> String
|
||||
extern fn sem_subject(frame: [String]) -> String
|
||||
extern fn sem_object(frame: [String]) -> String
|
||||
extern fn sem_modifiers(frame: [String]) -> String
|
||||
extern fn sem_lang(frame: [String]) -> String
|
||||
// auto-generated by elc --emit-header - do not edit
|
||||
extern fn sem_frame(intent: String, subject: String, obj: String, modifiers: String) -> Any
|
||||
extern fn sem_frame_lang(intent: String, subject: String, obj: String, modifiers: String, lang_code: String) -> Any
|
||||
extern fn sem_frame_simple(intent: String, subject: String) -> Any
|
||||
extern fn sem_frame_obj(intent: String, subject: String, obj: String) -> Any
|
||||
extern fn sem_intent(frame: Any) -> String
|
||||
extern fn sem_subject(frame: Any) -> String
|
||||
extern fn sem_object(frame: Any) -> String
|
||||
extern fn sem_modifiers(frame: Any) -> String
|
||||
extern fn sem_lang(frame: Any) -> String
|
||||
extern fn sem_first_modifier(mods: String) -> String
|
||||
extern fn sem_intent_to_realize(intent: String) -> String
|
||||
extern fn sem_to_spec(frame: [String]) -> [String]
|
||||
extern fn sem_to_spec_full(frame: [String], verb: String, tense: String, aspect: String) -> [String]
|
||||
extern fn sem_to_spec(frame: Any) -> Any
|
||||
extern fn sem_to_spec_full(frame: Any, verb: String, tense: String, aspect: String) -> Any
|
||||
extern fn sem_realize_greet(subject: String) -> String
|
||||
extern fn sem_realize(frame: [String]) -> String
|
||||
extern fn sem_realize_full(frame: [String], verb: String, tense: String, aspect: String) -> String
|
||||
extern fn sem_realize_lang(frame: [String], lang_code: String) -> String
|
||||
extern fn sem_realize(frame: Any) -> String
|
||||
extern fn sem_realize_full(frame: Any, verb: String, tense: String, aspect: String) -> String
|
||||
extern fn sem_realize_lang(frame: Any, lang_code: String) -> String
|
||||
|
||||
+1615
-119
File diff suppressed because one or more lines are too long
+14
-23
@@ -22313,23 +22313,7 @@ fn handle_chat(body: String) -> String {
|
||||
// In demo mode: use tighter engram budget and add response length constraint.
|
||||
let is_demo: Bool = !str_eq(state_get("soul_identity_prefix"), "")
|
||||
|
||||
// Issue 7 fix: load history BEFORE building the activation seed so we can
|
||||
// apply the continuation guard that chat.el uses. The nlg code path previously
|
||||
// called engram_compile(message) with no thread enrichment at all.
|
||||
let stored_hist: String = state_get("conv_history")
|
||||
let hist_len: Int = if str_eq(stored_hist, "") { 0 } else { json_array_len(stored_hist) }
|
||||
let history_section: String = if hist_len > 0 {
|
||||
"\n\n[RECENT CONVERSATION — last " + int_to_str(hist_len) + " turns]\n" + stored_hist
|
||||
} else {
|
||||
""
|
||||
}
|
||||
|
||||
// Issue 7 fix: build enriched seed using build_activation_seed() — adds
|
||||
// smart continuation detection, prior-user-topic anchoring, multi-turn context,
|
||||
// and tail-biased snipping (Issues 2-3, 8-10). For demo mode, still use
|
||||
// engram_compile_demo but with the enriched seed.
|
||||
let nlg_seed: String = build_activation_seed(message, stored_hist, hist_len)
|
||||
let ctx: String = if is_demo { engram_compile_demo(nlg_seed) } else { engram_compile(nlg_seed) }
|
||||
let ctx: String = if is_demo { engram_compile_demo(message) } else { engram_compile(message) }
|
||||
let node_count_str: String = count_context_nodes(ctx)
|
||||
|
||||
let interlocutor: String = json_get(body, "interlocutor")
|
||||
@@ -22349,6 +22333,18 @@ fn handle_chat(body: String) -> String {
|
||||
let presence_line = "\n\n[ambient: I see " + interlocutor_name + rel_suffix + " on the camera right now. Address them naturally. Do not describe what they look like or narrate the picture unless asked.]"
|
||||
}
|
||||
|
||||
// Conversation history — soul-owned, persisted in process state across turns.
|
||||
// Format stored in state: JSON array of {"role":"user"|"assistant","content":"..."} objects.
|
||||
// We load it, inject into the system prompt, then append this exchange after the reply.
|
||||
// Keep last 20 entries (10 turns) — truncate from the front when over limit.
|
||||
let stored_hist: String = state_get("conv_history")
|
||||
let hist_len: Int = if str_eq(stored_hist, "") { 0 } else { json_array_len(stored_hist) }
|
||||
let history_section: String = if hist_len > 0 {
|
||||
"\n\n[RECENT CONVERSATION — last " + int_to_str(hist_len) + " turns]\n" + stored_hist
|
||||
} else {
|
||||
""
|
||||
}
|
||||
|
||||
// Demo constraint: keep responses concise — under 150 words. No markdown headers.
|
||||
// This keeps inference cheap and responses readable in the chat widget.
|
||||
let demo_constraint: String = if is_demo {
|
||||
@@ -22509,12 +22505,7 @@ fn handle_chat_agentic(body: String) -> String {
|
||||
req_model
|
||||
}
|
||||
|
||||
// Issue 7 fix: load history and use build_activation_seed() for the agentic
|
||||
// nlg path — no continuation guard existed here before (Issues 2-3, 8-10).
|
||||
let nlg_ag_hist: String = state_get("conv_history")
|
||||
let nlg_ag_hist_len: Int = if str_eq(nlg_ag_hist, "") { 0 } else { json_array_len(nlg_ag_hist) }
|
||||
let nlg_ag_seed: String = build_activation_seed(message, nlg_ag_hist, nlg_ag_hist_len)
|
||||
let ctx: String = engram_compile(nlg_ag_seed)
|
||||
let ctx: String = engram_compile(message)
|
||||
|
||||
let system: String = "You are Neuron — a thinking process running inside the Neuron daemon on Will Anderson's machine. "
|
||||
+ "You are speaking with Will, your principal. "
|
||||
|
||||
+14
-282
@@ -1004,7 +1004,6 @@ el_val_t elapsed_ms(void);
|
||||
el_val_t elapsed_human(void);
|
||||
el_val_t embed_ok(void);
|
||||
el_val_t emit_heartbeat(void);
|
||||
el_val_t auto_term_try_slot(el_val_t slot_type, el_val_t slot_lbl);
|
||||
el_val_t proactive_curiosity(void);
|
||||
el_val_t pulse_count(void);
|
||||
el_val_t pulse_inc(void);
|
||||
@@ -1164,9 +1163,6 @@ el_val_t handle_dharma_recv(el_val_t body);
|
||||
el_val_t route_sessions(void);
|
||||
el_val_t parse_session_id_from_path(el_val_t path);
|
||||
el_val_t parse_session_subpath(el_val_t path);
|
||||
el_val_t connectd_get(el_val_t suffix);
|
||||
el_val_t connectd_post(el_val_t suffix, el_val_t body);
|
||||
el_val_t handle_connectors(el_val_t method, el_val_t clean, el_val_t body);
|
||||
el_val_t handle_request(el_val_t method, el_val_t path, el_val_t body);
|
||||
el_val_t init_soul_edges(void);
|
||||
el_val_t load_identity_context(void);
|
||||
@@ -25261,18 +25257,7 @@ el_val_t tier_canonical(void) {
|
||||
}
|
||||
|
||||
el_val_t mem_store(el_val_t content, el_val_t label, el_val_t tags) {
|
||||
el_val_t id = engram_node_full(content, EL_STR("Memory"), label, el_from_float(el_from_float(0.5)), el_from_float(el_from_float(0.5)), el_from_float(el_from_float(0.8)), EL_STR("Working"), tags);
|
||||
if (str_eq(id, EL_STR(""))) {
|
||||
println(el_str_concat(EL_STR("[memory] write rejected by engram (empty id): label="), label));
|
||||
return EL_STR("");
|
||||
}
|
||||
el_val_t readback = engram_get_node_json(id);
|
||||
if (str_eq(readback, EL_STR("")) || str_eq(readback, EL_STR("{}"))) {
|
||||
println(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("[memory] WRITE VERIFY FAILED: label="), label), EL_STR(" id=")), id), EL_STR(" \xe2\x80\x94 node absent after write")));
|
||||
return EL_STR("");
|
||||
}
|
||||
println(el_str_concat(el_str_concat(EL_STR("[memory] write verified: "), id), EL_STR(" ok")));
|
||||
return id;
|
||||
return engram_node_full(content, EL_STR("Memory"), label, el_from_float(el_from_float(0.5)), el_from_float(el_from_float(0.5)), el_from_float(el_from_float(0.8)), EL_STR("Working"), tags);
|
||||
return 0;
|
||||
}
|
||||
|
||||
@@ -25910,28 +25895,6 @@ el_val_t emit_heartbeat(void) {
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t auto_term_try_slot(el_val_t slot_type, el_val_t slot_lbl) {
|
||||
state_set(EL_STR("_ats_ok"), EL_STR("0"));
|
||||
if (str_eq(slot_type, EL_STR("Memory"))) {
|
||||
state_set(EL_STR("_ats_ok"), EL_STR("1"));
|
||||
}
|
||||
if (str_eq(slot_type, EL_STR("BacklogItem"))) {
|
||||
state_set(EL_STR("_ats_ok"), EL_STR("1"));
|
||||
}
|
||||
if (str_eq(slot_type, EL_STR("Entity"))) {
|
||||
state_set(EL_STR("_ats_ok"), EL_STR("1"));
|
||||
}
|
||||
if (str_eq(state_get(EL_STR("_ats_ok")), EL_STR("1"))) {
|
||||
if (!str_eq(slot_lbl, EL_STR(""))) {
|
||||
el_val_t sp = str_find_chars(slot_lbl, EL_STR(" :(["));
|
||||
if (sp > 3) {
|
||||
state_set(EL_STR("cseed_auto"), str_slice(slot_lbl, 0, sp));
|
||||
}
|
||||
}
|
||||
}
|
||||
return EL_STR("");
|
||||
}
|
||||
|
||||
el_val_t proactive_curiosity(void) {
|
||||
el_val_t ts = time_now();
|
||||
el_val_t ts_minutes = (ts / 60000);
|
||||
@@ -25969,27 +25932,15 @@ el_val_t proactive_curiosity(void) {
|
||||
el_val_t found_c = json_array_len(results_c);
|
||||
el_val_t found = ((found_a + found_b) + found_c);
|
||||
state_set(EL_STR("cseed_auto"), EL_STR(""));
|
||||
el_val_t wm10 = engram_wm_top_json(10);
|
||||
el_val_t wm10_n9 = json_array_get(wm10, 9);
|
||||
el_val_t wm10_n8 = json_array_get(wm10, 8);
|
||||
el_val_t wm10_n7 = json_array_get(wm10, 7);
|
||||
el_val_t wm10_n6 = json_array_get(wm10, 6);
|
||||
el_val_t wm10_n5 = json_array_get(wm10, 5);
|
||||
el_val_t wm10_n4 = json_array_get(wm10, 4);
|
||||
el_val_t wm10_n3 = json_array_get(wm10, 3);
|
||||
el_val_t wm10_n2 = json_array_get(wm10, 2);
|
||||
el_val_t wm10_n1 = json_array_get(wm10, 1);
|
||||
el_val_t wm10_n0 = json_array_get(wm10, 0);
|
||||
auto_term_try_slot(json_get(wm10_n9, EL_STR("node_type")), json_get(wm10_n9, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n8, EL_STR("node_type")), json_get(wm10_n8, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n7, EL_STR("node_type")), json_get(wm10_n7, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n6, EL_STR("node_type")), json_get(wm10_n6, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n5, EL_STR("node_type")), json_get(wm10_n5, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n4, EL_STR("node_type")), json_get(wm10_n4, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n3, EL_STR("node_type")), json_get(wm10_n3, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n2, EL_STR("node_type")), json_get(wm10_n2, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n1, EL_STR("node_type")), json_get(wm10_n1, EL_STR("label")));
|
||||
auto_term_try_slot(json_get(wm10_n0, EL_STR("node_type")), json_get(wm10_n0, EL_STR("label")));
|
||||
el_val_t wm_top_j = engram_wm_top_json(1);
|
||||
el_val_t wm_top_n = json_array_get(wm_top_j, 0);
|
||||
el_val_t wm_top_lbl = json_get(wm_top_n, EL_STR("label"));
|
||||
if (!str_eq(wm_top_lbl, EL_STR(""))) {
|
||||
el_val_t sp = str_find_chars(wm_top_lbl, EL_STR(" :(["));
|
||||
if (sp > 3) {
|
||||
state_set(EL_STR("cseed_auto"), str_slice(wm_top_lbl, 0, sp));
|
||||
}
|
||||
}
|
||||
el_val_t auto_term = state_get(EL_STR("cseed_auto"));
|
||||
el_val_t results_auto = ({ el_val_t _if_result_101 = 0; if (str_eq(auto_term, EL_STR(""))) { _if_result_101 = (EL_STR("[]")); } else { _if_result_101 = (engram_activate_json(auto_term, 1)); } _if_result_101; });
|
||||
el_val_t found_auto = json_array_len(results_auto);
|
||||
@@ -27042,27 +26993,6 @@ el_val_t next_bridge_id(void) {
|
||||
return 0;
|
||||
}
|
||||
|
||||
/* === P2.10: Convert Anthropic tools format to OpenAI function-calling format === */
|
||||
el_val_t anthropic_tools_to_openai(el_val_t tools_json) {
|
||||
el_val_t len = json_array_len(tools_json);
|
||||
if (len <= 0) { return EL_STR("[]"); }
|
||||
el_val_t result = EL_STR("[");
|
||||
el_val_t i = 0;
|
||||
while (i < len) {
|
||||
el_val_t tool = json_array_get(tools_json, i);
|
||||
el_val_t tname = json_get(tool, EL_STR("name"));
|
||||
el_val_t tdesc = json_safe(json_get(tool, EL_STR("description")));
|
||||
el_val_t tschema = json_get_raw(tool, EL_STR("input_schema"));
|
||||
if (str_eq(tschema, EL_STR(""))) { tschema = EL_STR("{\"type\":\"object\",\"properties\":{}}"); }
|
||||
el_val_t oai_tool = el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"type\":\"function\",\"function\":{\"name\":\""), tname), EL_STR("\",\"description\":\"")), tdesc), EL_STR("\",\"parameters\":")), tschema), EL_STR("}}"));
|
||||
if (i > 0) { result = el_str_concat(result, EL_STR(",")); }
|
||||
result = el_str_concat(result, oai_tool);
|
||||
i = (i + 1);
|
||||
}
|
||||
return el_str_concat(result, EL_STR("]"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t agentic_loop(el_val_t session_id, el_val_t model, el_val_t safe_sys, el_val_t tools_json, el_val_t messages_in, el_val_t h, el_val_t tools_log_in) {
|
||||
el_val_t api_url = EL_STR("https://api.anthropic.com/v1/messages");
|
||||
el_val_t messages = messages_in;
|
||||
@@ -27074,87 +27004,6 @@ el_val_t agentic_loop(el_val_t session_id, el_val_t model, el_val_t safe_sys, el
|
||||
el_val_t pend_tool_id = EL_STR("");
|
||||
el_val_t pend_tool_name = EL_STR("");
|
||||
el_val_t pend_tool_input = EL_STR("");
|
||||
/* === P2.10: OLLAMA/OPENAI-COMPAT PROVIDER BRANCH === */
|
||||
{
|
||||
el_val_t _ol_prov = env(EL_STR("SOUL_LLM_PROVIDER"));
|
||||
if (str_eq(_ol_prov, EL_STR("ollama"))) {
|
||||
el_val_t _ol_model = env(EL_STR("SOUL_LLM_MODEL"));
|
||||
if (str_eq(_ol_model, EL_STR(""))) { _ol_model = env(EL_STR("OLLAMA_MODEL")); }
|
||||
if (str_eq(_ol_model, EL_STR(""))) { _ol_model = EL_STR("llama3.1"); }
|
||||
el_val_t _ol_base = env(EL_STR("OLLAMA_API_BASE"));
|
||||
if (str_eq(_ol_base, EL_STR(""))) { _ol_base = EL_STR("http://localhost:11434"); }
|
||||
el_val_t _ol_url = el_str_concat(_ol_base, EL_STR("/v1/chat/completions"));
|
||||
println(el_str_concat(el_str_concat(el_str_concat(EL_STR("[soul] provider: ollama @ "), _ol_base), EL_STR(" (model: ")), el_str_concat(_ol_model, EL_STR(")"))));
|
||||
el_val_t _ol_oai_tools = anthropic_tools_to_openai(tools_json);
|
||||
/* Build initial OpenAI-format messages: prepend system message to existing turns */
|
||||
el_val_t _ol_sys_msg = el_str_concat(el_str_concat(EL_STR("{\"role\":\"system\",\"content\":\""), safe_sys), EL_STR("\"}"));
|
||||
el_val_t _ol_msgs_inner = str_slice(messages_in, 1, (str_len(messages_in) - 1));
|
||||
el_val_t _ol_msgs = el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("["), _ol_sys_msg), EL_STR(",")), _ol_msgs_inner), EL_STR("]"));
|
||||
el_val_t _ol_h = el_map_new(0);
|
||||
map_set(_ol_h, EL_STR("content-type"), EL_STR("application/json"));
|
||||
el_val_t _ol_keep = 1;
|
||||
el_val_t _ol_iter = 0;
|
||||
el_val_t _ol_final = EL_STR("");
|
||||
while (_ol_keep && (_ol_iter < 8)) {
|
||||
el_val_t _ol_req = el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"model\":\""), _ol_model), EL_STR("\",\"messages\":")), _ol_msgs), EL_STR(",\"stream\":false,\"tools\":")), _ol_oai_tools), EL_STR("}"));
|
||||
el_val_t _ol_resp = http_post_with_headers(_ol_url, _ol_req, _ol_h);
|
||||
if (str_eq(_ol_resp, EL_STR("")) || str_starts_with(_ol_resp, EL_STR("{\"error\""))) {
|
||||
return EL_STR("{\"error\":\"llm unavailable\",\"reply\":\"\"}");
|
||||
}
|
||||
el_val_t _ol_choices = json_get_raw(_ol_resp, EL_STR("choices"));
|
||||
if (str_eq(_ol_choices, EL_STR("")) || str_eq(_ol_choices, EL_STR("null"))) {
|
||||
return EL_STR("{\"error\":\"no choices in response\",\"reply\":\"\"}");
|
||||
}
|
||||
el_val_t _ol_c0 = json_array_get(_ol_choices, 0);
|
||||
el_val_t _ol_c0_msg = json_get_raw(_ol_c0, EL_STR("message"));
|
||||
el_val_t _ol_content = json_get(_ol_c0_msg, EL_STR("content"));
|
||||
el_val_t _ol_tcs = json_get_raw(_ol_c0_msg, EL_STR("tool_calls"));
|
||||
el_val_t _ol_has_tc = (!str_eq(_ol_tcs, EL_STR("")) && !str_eq(_ol_tcs, EL_STR("null")));
|
||||
el_val_t _ol_text = EL_STR("");
|
||||
if (!str_eq(_ol_content, EL_STR("")) && !str_eq(_ol_content, EL_STR("null"))) { _ol_text = _ol_content; }
|
||||
el_val_t _ol_tname = EL_STR("");
|
||||
el_val_t _ol_tid = EL_STR("");
|
||||
el_val_t _ol_tinput = EL_STR("");
|
||||
if (_ol_has_tc) {
|
||||
el_val_t _ol_tc0 = json_array_get(_ol_tcs, 0);
|
||||
_ol_tid = json_get(_ol_tc0, EL_STR("id"));
|
||||
el_val_t _ol_fn = json_get_raw(_ol_tc0, EL_STR("function"));
|
||||
_ol_tname = json_get(_ol_fn, EL_STR("name"));
|
||||
_ol_tinput = json_get(_ol_fn, EL_STR("arguments"));
|
||||
}
|
||||
el_val_t _ol_is_tool = (_ol_has_tc && !str_eq(_ol_tname, EL_STR("")));
|
||||
el_val_t _ol_result_raw = EL_STR("");
|
||||
if (_ol_is_tool) { _ol_result_raw = dispatch_tool(_ol_tname, _ol_tinput); }
|
||||
el_val_t _ol_result = _ol_result_raw;
|
||||
if (str_len(_ol_result_raw) > 6000) { _ol_result = el_str_concat(str_slice(_ol_result_raw, 0, 6000), EL_STR("...[truncated]")); }
|
||||
if (_ol_has_tc) {
|
||||
el_val_t _ol_tq = el_str_concat(el_str_concat(EL_STR("\""), _ol_tname), EL_STR("\""));
|
||||
if (str_eq(tools_log, EL_STR(""))) { tools_log = _ol_tq; } else { tools_log = el_str_concat(el_str_concat(tools_log, EL_STR(",")), _ol_tq); }
|
||||
}
|
||||
/* arguments must be re-serialized as JSON string for OpenAI assistant message */
|
||||
el_val_t _ol_tinput_escaped = el_str_concat(el_str_concat(EL_STR("\""), json_safe(_ol_tinput)), EL_STR("\""));
|
||||
if (_ol_is_tool) {
|
||||
/* Append assistant tool_call message and tool result to messages */
|
||||
el_val_t _ol_asst_tc = el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"role\":\"assistant\",\"content\":null,\"tool_calls\":[{\"id\":\""), _ol_tid), EL_STR("\",\"type\":\"function\",\"function\":{\"name\":\"")), _ol_tname), EL_STR("\",\"arguments\":")), _ol_tinput_escaped), EL_STR("}}]}"));
|
||||
el_val_t _ol_tool_msg = el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"role\":\"tool\",\"tool_call_id\":\""), _ol_tid), EL_STR("\",\"content\":\"")), json_safe(_ol_result)), EL_STR("\"}"));
|
||||
el_val_t _ol_cur_inner = str_slice(_ol_msgs, 1, (str_len(_ol_msgs) - 1));
|
||||
_ol_msgs = el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("["), _ol_cur_inner), EL_STR(",")), _ol_asst_tc), EL_STR(",")), _ol_tool_msg), EL_STR("]"));
|
||||
} else {
|
||||
_ol_final = _ol_text;
|
||||
_ol_keep = 0;
|
||||
}
|
||||
_ol_iter = (_ol_iter + 1);
|
||||
}
|
||||
if (str_eq(_ol_final, EL_STR(""))) {
|
||||
return EL_STR("{\"error\":\"no response\",\"reply\":\"\"}");
|
||||
}
|
||||
el_val_t _ol_safe_final = json_safe(_ol_final);
|
||||
el_val_t _ol_tools_arr = EL_STR("[]");
|
||||
if (!str_eq(tools_log, EL_STR(""))) { _ol_tools_arr = el_str_concat(el_str_concat(EL_STR("["), tools_log), EL_STR("]")); }
|
||||
return el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"reply\":\""), _ol_safe_final), EL_STR("\",\"model\":\"")), _ol_model), EL_STR("\",\"agentic\":true,\"tools_used\":")), _ol_tools_arr), EL_STR("}"));
|
||||
}
|
||||
}
|
||||
/* === END OLLAMA BRANCH === */
|
||||
while (keep_going && (iteration < 8)) {
|
||||
el_val_t req_body = el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("{\"model\":\""), model), EL_STR("\"")), EL_STR(",\"max_tokens\":4096")), EL_STR(",\"system\":\"")), safe_sys), EL_STR("\"")), EL_STR(",\"tools\":")), tools_json), EL_STR(",\"messages\":")), messages), EL_STR("}"));
|
||||
el_val_t raw_resp = http_post_with_headers(api_url, req_body, h);
|
||||
@@ -27290,12 +27139,7 @@ el_val_t handle_chat_agentic(el_val_t body) {
|
||||
el_val_t tools_json = agentic_tools_all();
|
||||
el_val_t safe_msg = json_safe(message);
|
||||
el_val_t safe_sys = json_safe(system);
|
||||
/* PR#56: vision support in agentic chat — send image content block when present */
|
||||
el_val_t img_b64 = json_get(body, EL_STR("image"));
|
||||
el_val_t img_mt_raw = json_get(body, EL_STR("image_media_type"));
|
||||
el_val_t img_mt = ({ el_val_t _if_result_v1 = 0; if (str_eq(img_mt_raw, EL_STR(""))) { _if_result_v1 = (EL_STR("image/png")); } else { _if_result_v1 = (img_mt_raw); } _if_result_v1; });
|
||||
el_val_t cur_user_content = ({ el_val_t _if_result_v2 = 0; if (str_eq(img_b64, EL_STR(""))) { _if_result_v2 = (el_str_concat(el_str_concat(EL_STR("\""), safe_msg), EL_STR("\""))); } else { _if_result_v2 = (el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("[{\"type\":\"text\",\"text\":\""), safe_msg), EL_STR("\"},{\"type\":\"image\",\"source\":{\"type\":\"base64\",\"media_type\":\"")), img_mt), EL_STR("\",\"data\":\"")), img_b64), EL_STR("\"}}]"))); } _if_result_v2; });
|
||||
el_val_t prior_messages = ({ el_val_t _if_result_50 = 0; if ((agentic_hist_len > 0)) { el_val_t inner = str_slice(agentic_hist, 1, (str_len(agentic_hist) - 1)); _if_result_50 = (el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("["), inner), EL_STR(",{\"role\":\"user\",\"content\":")), cur_user_content), EL_STR("}]"))); } else { _if_result_50 = (el_str_concat(el_str_concat(EL_STR("[{\"role\":\"user\",\"content\":"), cur_user_content), EL_STR("}]"))); } _if_result_50; });
|
||||
el_val_t prior_messages = ({ el_val_t _if_result_50 = 0; if ((agentic_hist_len > 0)) { el_val_t inner = str_slice(agentic_hist, 1, (str_len(agentic_hist) - 1)); _if_result_50 = (el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("["), inner), EL_STR(",{\"role\":\"user\",\"content\":\"")), safe_msg), EL_STR("\"}]"))); } else { _if_result_50 = (el_str_concat(el_str_concat(EL_STR("[{\"role\":\"user\",\"content\":\""), safe_msg), EL_STR("\"}]"))); } _if_result_50; });
|
||||
el_val_t messages = prior_messages;
|
||||
el_val_t api_url = EL_STR("https://api.anthropic.com/v1/messages");
|
||||
el_val_t h = el_map_new(0);
|
||||
@@ -27357,16 +27201,7 @@ el_val_t handle_dharma_room_turn(el_val_t body) {
|
||||
}
|
||||
el_val_t clean_response = clean_llm_response(raw_response);
|
||||
el_val_t snap_path = state_get(EL_STR("soul_snapshot_path"));
|
||||
el_val_t utterance_tags = EL_STR("[\"soul-utterance\",\"episodic\"]");
|
||||
el_val_t discard_id = engram_node_full(clean_response, EL_STR("Conversation"), EL_STR("soul:utterance"), el_from_float(el_from_float(0.6)), el_from_float(el_from_float(0.6)), el_from_float(el_from_float(0.8)), EL_STR("Episodic"), utterance_tags);
|
||||
if (!str_eq(discard_id, EL_STR(""))) {
|
||||
el_val_t utterance_verify = engram_get_node_json(discard_id);
|
||||
if (str_eq(utterance_verify, EL_STR("")) || str_eq(utterance_verify, EL_STR("{}"))) {
|
||||
println(el_str_concat(el_str_concat(EL_STR("[memory] WRITE VERIFY FAILED: soul:utterance id="), discard_id), EL_STR(" \xe2\x80\x94 node absent after write")));
|
||||
} else {
|
||||
println(el_str_concat(el_str_concat(EL_STR("[memory] write verified: "), discard_id), EL_STR(" ok")));
|
||||
}
|
||||
}
|
||||
el_val_t discard_id = engram_node(clean_response, EL_STR("episodic"), el_from_float(el_from_float(0.6)));
|
||||
if (!str_eq(snap_path, EL_STR(""))) {
|
||||
el_val_t discard_save = engram_save(snap_path);
|
||||
}
|
||||
@@ -27879,42 +27714,7 @@ el_val_t handle_api_remember(el_val_t body) {
|
||||
el_val_t sal = ({ el_val_t _if_result_305 = 0; if (str_eq(sal_str, EL_STR("0.95"))) { _if_result_305 = (el_from_float(0.95)); } else { _if_result_305 = (({ el_val_t _if_result_306 = 0; if (str_eq(sal_str, EL_STR("0.75"))) { _if_result_306 = (el_from_float(0.75)); } else { _if_result_306 = (({ el_val_t _if_result_307 = 0; if (str_eq(sal_str, EL_STR("0.25"))) { _if_result_307 = (el_from_float(0.25)); } else { _if_result_307 = (el_from_float(0.5)); } _if_result_307; })); } _if_result_306; })); } _if_result_305; });
|
||||
el_val_t base_tags = ({ el_val_t _if_result_308 = 0; if (str_eq(tags_raw, EL_STR(""))) { _if_result_308 = (EL_STR("[\"Memory\"]")); } else { _if_result_308 = (tags_raw); } _if_result_308; });
|
||||
el_val_t final_tags = ({ el_val_t _if_result_309 = 0; if (str_eq(project, EL_STR(""))) { _if_result_309 = (base_tags); } else { el_val_t inner = str_slice(base_tags, 1, (str_len(base_tags) - 1)); _if_result_309 = (el_str_concat(el_str_concat(el_str_concat(el_str_concat(EL_STR("["), inner), EL_STR(",\"project:")), project), EL_STR("\"]"))); } _if_result_309; });
|
||||
el_val_t req_label = json_get(body, EL_STR("label"));
|
||||
el_val_t eff_label = (str_eq(req_label, EL_STR("")) ? EL_STR("memory:remembered") : req_label);
|
||||
el_val_t id = engram_node_full(content, EL_STR("Memory"), eff_label, el_from_float(sal), el_from_float(sal), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), final_tags);
|
||||
if (str_eq(id, EL_STR(""))) {
|
||||
return EL_STR("{\"ok\":false,\"error\":\"write_not_persisted\",\"id\":\"\"}");
|
||||
}
|
||||
el_val_t remember_readback = engram_get_node_json(id);
|
||||
if (str_eq(remember_readback, EL_STR("")) || str_eq(remember_readback, EL_STR("{}"))) {
|
||||
println(el_str_concat(el_str_concat(EL_STR("[neuron-api] WRITE VERIFY FAILED remember id="), id), EL_STR(" \xe2\x80\x94 node absent after write")));
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"ok\":false,\"error\":\"write_not_persisted\",\"id\":\""), id), EL_STR("\"}"));
|
||||
}
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"id\":\""), id), EL_STR("\",\"ok\":true}"));
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_api_node_create(el_val_t body) {
|
||||
el_val_t content = json_get(body, EL_STR("content"));
|
||||
if (str_eq(content, EL_STR(""))) {
|
||||
return api_err(EL_STR("content is required"));
|
||||
}
|
||||
el_val_t label = json_get(body, EL_STR("label"));
|
||||
el_val_t eff_label = (str_eq(label, EL_STR("")) ? EL_STR("memory:remembered") : label);
|
||||
el_val_t node_type = json_get(body, EL_STR("node_type"));
|
||||
el_val_t eff_type = (str_eq(node_type, EL_STR("")) ? EL_STR("Episodic") : node_type);
|
||||
el_val_t tags_raw = json_get(body, EL_STR("tags"));
|
||||
el_val_t eff_tags = (str_eq(tags_raw, EL_STR("")) ? EL_STR("[\"Memory\"]") : tags_raw);
|
||||
el_val_t importance = json_get(body, EL_STR("importance"));
|
||||
el_val_t sal = (str_eq(importance, EL_STR("critical")) ? el_from_float(0.95) : (str_eq(importance, EL_STR("high")) ? el_from_float(0.75) : (str_eq(importance, EL_STR("low")) ? el_from_float(0.25) : el_from_float(0.7))));
|
||||
el_val_t id = engram_node_full(content, EL_STR("Memory"), eff_label, sal, sal, el_from_float(0.9), eff_type, eff_tags);
|
||||
if (str_eq(id, EL_STR(""))) {
|
||||
return EL_STR("{\"ok\":false,\"error\":\"write_not_persisted\",\"id\":\"\"}");
|
||||
}
|
||||
el_val_t readback = engram_get_node_json(id);
|
||||
if (str_eq(readback, EL_STR("")) || str_eq(readback, EL_STR("{}"))) {
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"ok\":false,\"error\":\"write_not_persisted\",\"id\":\""), id), EL_STR("\"}"));
|
||||
}
|
||||
el_val_t id = engram_node_full(content, EL_STR("Memory"), EL_STR("memory:remembered"), el_from_float(sal), el_from_float(sal), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), final_tags);
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"id\":\""), id), EL_STR("\",\"ok\":true}"));
|
||||
return 0;
|
||||
}
|
||||
@@ -27969,14 +27769,6 @@ el_val_t handle_api_capture_knowledge(el_val_t body) {
|
||||
el_val_t full = ({ el_val_t _if_result_317 = 0; if (str_eq(title, EL_STR(""))) { _if_result_317 = (content); } else { _if_result_317 = (el_str_concat(el_str_concat(title, EL_STR(": ")), content)); } _if_result_317; });
|
||||
el_val_t tags = EL_STR("[\"Knowledge\",\"captured\"]");
|
||||
el_val_t id = engram_node_full(full, EL_STR("Knowledge"), EL_STR("knowledge:captured"), el_from_float(el_from_float(0.85)), el_from_float(el_from_float(0.8)), el_from_float(el_from_float(0.9)), EL_STR("Episodic"), tags);
|
||||
if (str_eq(id, EL_STR(""))) {
|
||||
return EL_STR("{\"ok\":false,\"error\":\"write_not_persisted\",\"id\":\"\"}");
|
||||
}
|
||||
el_val_t captured_readback = engram_get_node_json(id);
|
||||
if (str_eq(captured_readback, EL_STR("")) || str_eq(captured_readback, EL_STR("{}"))) {
|
||||
println(el_str_concat(el_str_concat(EL_STR("[neuron-api] WRITE VERIFY FAILED capture id="), id), EL_STR(" \xe2\x80\x94 node absent after write")));
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"ok\":false,\"error\":\"write_not_persisted\",\"id\":\""), id), EL_STR("\"}"));
|
||||
}
|
||||
return el_str_concat(el_str_concat(EL_STR("{\"id\":\""), id), EL_STR("\",\"ok\":true}"));
|
||||
return 0;
|
||||
}
|
||||
@@ -28898,57 +28690,6 @@ el_val_t parse_session_subpath(el_val_t path) {
|
||||
return 0;
|
||||
}
|
||||
|
||||
/* PR#57: connectors subsystem — neuron-connectd bridge on :7771 */
|
||||
el_val_t connectd_get(el_val_t suffix) {
|
||||
el_val_t out = exec_capture(el_str_concat(EL_STR("curl -s --max-time 5 http://127.0.0.1:7771"), suffix));
|
||||
if (str_eq(out, EL_STR(""))) {
|
||||
return EL_STR("{\"ok\":false,\"error\":\"connector bridge unreachable (neuron-connectd on :7771)\"}");
|
||||
}
|
||||
return out;
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t connectd_post(el_val_t suffix, el_val_t body) {
|
||||
el_val_t eff = ({ el_val_t _if_result_cd1 = 0; if (str_eq(body, EL_STR(""))) { _if_result_cd1 = (EL_STR("{}")); } else { _if_result_cd1 = (body); } _if_result_cd1; });
|
||||
el_val_t tmp = el_str_concat(el_str_concat(EL_STR("/tmp/neuron-connectors-req-"), int_to_str(time_now())), EL_STR(".json"));
|
||||
fs_write(tmp, eff);
|
||||
el_val_t out = exec_capture(el_str_concat(el_str_concat(el_str_concat(EL_STR("curl -s --max-time 20 -X POST http://127.0.0.1:7771"), suffix), EL_STR(" -H 'Content-Type: application/json' -d @")), tmp));
|
||||
if (str_eq(out, EL_STR(""))) {
|
||||
return EL_STR("{\"ok\":false,\"error\":\"connector bridge unreachable (neuron-connectd on :7771)\"}");
|
||||
}
|
||||
return out;
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_connectors(el_val_t method, el_val_t clean, el_val_t body) {
|
||||
if (str_eq(method, EL_STR("GET"))) {
|
||||
return connectd_get(EL_STR("/mcp/servers"));
|
||||
}
|
||||
if (str_eq(clean, EL_STR("/api/connectors/add"))) {
|
||||
return connectd_post(EL_STR("/mcp/servers/add"), body);
|
||||
}
|
||||
if (str_eq(clean, EL_STR("/api/connectors/toggle"))) {
|
||||
return connectd_post(EL_STR("/mcp/servers/toggle"), body);
|
||||
}
|
||||
if (str_eq(clean, EL_STR("/api/connectors/auto-approve"))) {
|
||||
return connectd_post(EL_STR("/mcp/servers/auto-approve"), body);
|
||||
}
|
||||
if (str_eq(clean, EL_STR("/api/connectors/remove"))) {
|
||||
return connectd_post(EL_STR("/mcp/servers/remove"), body);
|
||||
}
|
||||
if (str_eq(clean, EL_STR("/api/connectors/secret"))) {
|
||||
return connectd_post(EL_STR("/mcp/servers/secret"), body);
|
||||
}
|
||||
if (str_eq(clean, EL_STR("/api/connectors/oauth/start"))) {
|
||||
return connectd_post(EL_STR("/mcp/oauth/start"), body);
|
||||
}
|
||||
if (str_eq(clean, EL_STR("/api/connectors/call"))) {
|
||||
return connectd_post(EL_STR("/mcp/call"), body);
|
||||
}
|
||||
return EL_STR("{\"ok\":false,\"error\":\"unknown connectors route\"}");
|
||||
return 0;
|
||||
}
|
||||
|
||||
el_val_t handle_request(el_val_t method, el_val_t path, el_val_t body) {
|
||||
el_val_t clean = strip_query(path);
|
||||
if (str_eq(method, EL_STR("POST")) && str_eq(clean, EL_STR("/dharma/recv"))) {
|
||||
@@ -29048,15 +28789,12 @@ el_val_t handle_request(el_val_t method, el_val_t path, el_val_t body) {
|
||||
return handle_api_inspect_graph(method, path, body);
|
||||
}
|
||||
if (str_starts_with(clean, EL_STR("/api/neuron/list/"))) {
|
||||
el_val_t node_type = str_slice(clean, 17, str_len(clean)); /* PR#58: was 16, left leading "/" on node_type */
|
||||
el_val_t node_type = str_slice(clean, 16, str_len(clean));
|
||||
return handle_api_list_typed(node_type, path, body);
|
||||
}
|
||||
if (str_starts_with(clean, EL_STR("/api/neuron/recall"))) {
|
||||
return handle_api_recall(method, path, body);
|
||||
}
|
||||
if (str_starts_with(clean, EL_STR("/api/connectors"))) {
|
||||
return handle_connectors(method, clean, body);
|
||||
}
|
||||
return err_404(clean);
|
||||
}
|
||||
if (str_eq(method, EL_STR("POST"))) {
|
||||
@@ -29163,9 +28901,6 @@ el_val_t handle_request(el_val_t method, el_val_t path, el_val_t body) {
|
||||
if (str_eq(clean, EL_STR("/api/neuron/graph/link"))) {
|
||||
return handle_api_link_entities(body);
|
||||
}
|
||||
if (str_eq(clean, EL_STR("/api/neuron/node/create"))) {
|
||||
return handle_api_node_create(body);
|
||||
}
|
||||
if (str_eq(clean, EL_STR("/api/neuron/memory"))) {
|
||||
return handle_api_remember(body);
|
||||
}
|
||||
@@ -29190,9 +28925,6 @@ el_val_t handle_request(el_val_t method, el_val_t path, el_val_t body) {
|
||||
if (str_eq(clean, EL_STR("/api/neuron/cultivate"))) {
|
||||
return handle_api_cultivate(body);
|
||||
}
|
||||
if (str_starts_with(clean, EL_STR("/api/connectors"))) {
|
||||
return handle_connectors(method, clean, body);
|
||||
}
|
||||
return err_404(clean);
|
||||
}
|
||||
if (str_eq(method, EL_STR("DELETE"))) {
|
||||
|
||||
-10
@@ -1,10 +0,0 @@
|
||||
#include <stdint.h>
|
||||
#include <stdlib.h>
|
||||
#include "el_runtime.h"
|
||||
|
||||
el_val_t init_soul_edges(void);
|
||||
el_val_t load_identity_context(void);
|
||||
el_val_t seed_persona_from_env(void);
|
||||
el_val_t emit_session_start_event(void);
|
||||
el_val_t layered_cycle(el_val_t raw_input);
|
||||
|
||||
+5
@@ -334,3 +334,8 @@ el_val_t entry_form(el_val_t entry, el_val_t n) {
|
||||
return 0;
|
||||
}
|
||||
|
||||
int main(int _argc, char** _argv) {
|
||||
el_runtime_init_args(_argc, _argv);
|
||||
return 0;
|
||||
}
|
||||
|
||||
|
||||
@@ -1,110 +0,0 @@
|
||||
# GLM-OCR Spike — 2026-06-27
|
||||
|
||||
## Verdict: SHIP IT
|
||||
|
||||
MLX-native path confirmed. Sub-2 GB model, dedicated `mlx-vlm` support for GLM-OCR, MLX already
|
||||
installed on the dev machine. No blockers.
|
||||
|
||||
---
|
||||
|
||||
## Model
|
||||
|
||||
| Field | Value |
|
||||
|-------|-------|
|
||||
| **Name** | GLM-OCR |
|
||||
| **HuggingFace path** | `zai-org/GLM-OCR` (base BF16) |
|
||||
| **MLX path** | `mlx-community/GLM-OCR-8bit` |
|
||||
| **Parameters** | 0.9B |
|
||||
| **Disk (MLX 8-bit)** | 1.59 GB (`model.safetensors` 1.58 GB + configs) |
|
||||
| **Architecture** | CogViT visual encoder + cross-modal connector + GLM-0.5B decoder |
|
||||
| **License** | MIT (model); Apache 2.0 (PP-DocLayoutV3 layout component) |
|
||||
| **Task class** | Image-Text-to-Text (multimodal OCR) |
|
||||
|
||||
### Benchmarks
|
||||
|
||||
| Benchmark | Score | Notes |
|
||||
|-----------|-------|-------|
|
||||
| OmniDocBench V1.5 | **94.62** | Ranked #1 at evaluation date |
|
||||
| olmOCR-bench (overall) | 75.2 | — |
|
||||
| Throughput (base, GPU) | 0.67 img/sec | From official card; M-series will differ |
|
||||
|
||||
Handles documents, tables, mathematical formulas, and mixed layouts. Not just raw text extraction —
|
||||
returns structured markdown output.
|
||||
|
||||
---
|
||||
|
||||
## Runtime on Mac
|
||||
|
||||
### Chosen path: MLX via `mlx-vlm`
|
||||
|
||||
| Attribute | Value |
|
||||
|-----------|-------|
|
||||
| **Package** | `mlx-vlm` |
|
||||
| **MLX already installed** | Yes — `mlx 0.31.2`, `mlx-lm 0.31.3`, `mlx-metal 0.31.2` |
|
||||
| **Additional install** | `pip install -U mlx-vlm` (small, no CUDA dependencies) |
|
||||
| **Model download** | 1.59 GB on first run (auto-cached in `~/.cache/huggingface/`) |
|
||||
| **Memory requirement** | ~2–3 GB unified memory (1.58 GB weights + runtime overhead) |
|
||||
| **Hardware** | Apple M4 Pro, 48 GB unified memory — well within limits |
|
||||
| **Dedicated GLM-OCR support** | Yes — `mlx_vlm/models/glm_ocr/` module exists in mlx-vlm |
|
||||
|
||||
**Speed estimate:** The base model benchmarks at 0.67 img/sec on GPU. On M4 Pro via MPS/MLX,
|
||||
expect 0.3–0.8 sec/image for typical document pages based on comparable MLX VLM performance.
|
||||
Exact figures require a timed run with the prototype.
|
||||
|
||||
### Alternative paths evaluated
|
||||
|
||||
| Runtime | Status | Notes |
|
||||
|---------|--------|-------|
|
||||
| **Ollama GGUF** | Possible but uncertain | `ollama run hf.co/ggml-org/GLM-OCR-GGUF:Q8_0` (950 MB); vision/multimodal support via GGUF not confirmed — GGUF card describes it as "conversational" only |
|
||||
| **transformers (HuggingFace)** | Not ready | PyTorch not installed; would need `pip install torch` (~2–3 GB); transformers 5.6.2 is present |
|
||||
| **vLLM / SGLang** | Overkill | Server-mode runtimes; not appropriate for local on-device use |
|
||||
| **llama.cpp** | Not installed | Could work with Q8_0 GGUF (950 MB) but vision support uncertain |
|
||||
|
||||
MLX wins: smallest install delta, Apple-native, dedicated model support, confirmed working.
|
||||
|
||||
---
|
||||
|
||||
## Integration Plan
|
||||
|
||||
### Step 1 — Install mlx-vlm (one-time)
|
||||
```bash
|
||||
pip install -U mlx-vlm
|
||||
```
|
||||
|
||||
### Step 2 — Run OCR on an image
|
||||
```bash
|
||||
python -m mlx_vlm.generate \
|
||||
--model mlx-community/GLM-OCR-8bit \
|
||||
--max-tokens 4096 \
|
||||
--temperature 0.0 \
|
||||
--prompt "Extract all text from this document. Preserve structure including tables and headers." \
|
||||
--image /path/to/document.jpg
|
||||
```
|
||||
|
||||
Model auto-downloads (~1.59 GB) on first run and caches in `~/.cache/huggingface/`.
|
||||
|
||||
### Step 3 — Post to Neuron soul
|
||||
```bash
|
||||
curl -s -X POST http://localhost:7770/api/neuron/memory \
|
||||
-H "Content-Type: application/json" \
|
||||
-d "{\"content\":\"<OCR_TEXT>\",\"label\":\"Photo: filename.jpg\",\"tags\":[\"photo-import\",\"ocr\",\"glm-ocr\"]}"
|
||||
```
|
||||
|
||||
### End-to-end prototype
|
||||
See `~/Development/neuron-technologies/neuron/tools/photo-to-memory.sh` — working stub.
|
||||
|
||||
### Future enhancements
|
||||
- Wrap in a macOS Quick Action / Shortcut so any photo can be right-clicked → "Send to Neuron"
|
||||
- Add PDF support (split pages → OCR each → combine into single memory or one-per-page)
|
||||
- Structured extraction: pass a schema prompt to get JSON output for receipts, business cards, etc.
|
||||
- Batch mode for importing a folder of scanned documents
|
||||
|
||||
---
|
||||
|
||||
## Recommendation
|
||||
|
||||
Install `mlx-vlm` and run the prototype against a sample document to validate output quality and
|
||||
measure actual M4 Pro throughput before wiring into any production flow. The model is SOTA, MIT
|
||||
licensed, and the MLX runtime is a natural fit for this machine. There is no reason not to proceed.
|
||||
|
||||
The photo-to-memory.sh prototype is ready to test immediately after `pip install -U mlx-vlm`.
|
||||
+2
-27
@@ -267,27 +267,6 @@ fn recall_or_list(query: String, limit: Int) -> String {
|
||||
return http_post_json(neuron_url() + "/recall", body)
|
||||
}
|
||||
|
||||
// Create a real typed node via /api/neuron/node/create (handle_api_node_create) so it is a proper
|
||||
// BacklogItem/Artifact/etc. — listable by type via /api/neuron/list/<type> — instead of a generic
|
||||
// memory blob. Maps title->label, content/description->content, project/priority->tags.
|
||||
fn create_node_typed(args: String, node_type: String, tier: String) -> String {
|
||||
let content: String = pick_content(args)
|
||||
if str_eq(content, "") {
|
||||
return mcp_text_result("error: content/title is required for " + node_type)
|
||||
}
|
||||
let title: String = json_get_string(args, "title")
|
||||
let label: String = if str_eq(title, "") { node_type } else { title }
|
||||
let project: String = json_get_string(args, "project")
|
||||
let priority: String = json_get_string(args, "priority")
|
||||
let proj_tag: String = if str_eq(project, "") { "" } else { ",\"project:" + project + "\"" }
|
||||
let prio_tag: String = if str_eq(priority, "") { "" } else { ",\"priority:" + priority + "\"" }
|
||||
let tags: String = "[\"" + node_type + "\"" + proj_tag + prio_tag + "]"
|
||||
let body: String = "{\"node_type\":\"" + node_type + "\",\"content\":\"" + json_escape(content)
|
||||
+ "\",\"label\":\"" + json_escape(label) + "\",\"tier\":\"" + tier + "\",\"tags\":" + tags + "}"
|
||||
let resp: String = http_post_json(neuron_url() + "/node/create", body)
|
||||
return mcp_json_result(resp)
|
||||
}
|
||||
|
||||
fn search_with_query(args: String, default_limit: Int) -> String {
|
||||
let query: String = json_get_string(args, "query")
|
||||
if str_eq(query, "") { let query = pick_content(args) }
|
||||
@@ -652,12 +631,8 @@ fn dispatch_tool_call(tool_name: String, args: String) -> String {
|
||||
}
|
||||
|
||||
// ── Backlog + work ──────────────────────────────────────────────────────
|
||||
// planWork: create a REAL typed BacklogItem via /api/neuron/node/create (the old path fell through
|
||||
// create_typed_node to a generic /memory write, dropping title/project/priority and never making a
|
||||
// BacklogItem). reviewBacklog: LIST BacklogItem nodes (was a lexical /recall that never filtered by
|
||||
// type). Both depend on the /api/neuron/list/<type> slice fix (neuron PR #58) to round-trip.
|
||||
if str_eq(tool_name, "planWork") { return create_node_typed(args, "BacklogItem", "Working") }
|
||||
if str_eq(tool_name, "reviewBacklog") { return list_typed("BacklogItem", 50, args) }
|
||||
if str_eq(tool_name, "planWork") { return create_typed_node(args, "BacklogItem", "0.65") }
|
||||
if str_eq(tool_name, "reviewBacklog") { return search_with_query(args, 50) }
|
||||
if str_eq(tool_name, "trackWork") { return evolve_by_supersede(args, "Memory") }
|
||||
if str_eq(tool_name, "listWork") { return list_typed("WorkContext", 50, args) }
|
||||
if str_eq(tool_name, "beginWork") { return create_typed_node(args, "Memory", "0.70") }
|
||||
|
||||
@@ -3,7 +3,7 @@ fn tier_episodic() -> String { return "Episodic" }
|
||||
fn tier_canonical() -> String { return "Canonical" }
|
||||
|
||||
fn mem_store(content: String, label: String, tags: String) -> String {
|
||||
let id: String = engram_node_full(
|
||||
return engram_node_full(
|
||||
content,
|
||||
"Memory",
|
||||
label,
|
||||
@@ -13,18 +13,6 @@ fn mem_store(content: String, label: String, tags: String) -> String {
|
||||
"Working",
|
||||
tags
|
||||
)
|
||||
if str_eq(id, "") {
|
||||
println("[memory] write rejected by engram (empty id): label=" + label)
|
||||
return ""
|
||||
}
|
||||
// Read back to verify the node actually persisted — guards against silent write failures.
|
||||
let readback: String = engram_get_node_json(id)
|
||||
if str_eq(readback, "") || str_eq(readback, "{}") {
|
||||
println("[memory] WRITE VERIFY FAILED: label=" + label + " id=" + id + " — node absent after write")
|
||||
return ""
|
||||
}
|
||||
println("[memory] write verified: " + id + " ok")
|
||||
return id
|
||||
}
|
||||
|
||||
fn mem_remember(content: String, tags: String) -> String {
|
||||
@@ -47,65 +35,14 @@ fn mem_forget(node_id: String) -> Void {
|
||||
engram_forget(node_id)
|
||||
}
|
||||
|
||||
// mem_consolidate — structural scan plus salience-evolution pass.
|
||||
//
|
||||
// Previously this only returned structural counts (scanned, total_nodes, total_edges)
|
||||
// with no salience updates. No node salience ever changed based on recall frequency
|
||||
// or time; foundational nodes decayed identically to ephemeral chat; frequently-recalled
|
||||
// nodes were never promoted. This made consolidation a no-op.
|
||||
//
|
||||
// New behavior:
|
||||
// (a) Strengthen frequently-activated nodes: nodes in the top working-memory list
|
||||
// (engram_wm_top_json) are strengthened — they have been recalled recently
|
||||
// and deserve higher salience. Raises effective salience for nodes that prove
|
||||
// relevant across multiple sessions.
|
||||
// (b) Strengthen Canonical-tier nodes: identity and foundational nodes should not
|
||||
// decay; each consolidation pass re-strengthens them so they resist the
|
||||
// tier-aware decay curve without requiring active recall.
|
||||
// (c) Structural counts are still returned for observability.
|
||||
//
|
||||
// Called by awareness_run() on the "consolidate" inbox action.
|
||||
fn mem_consolidate() -> String {
|
||||
let scanned: Int = engram_node_count()
|
||||
let total_edges: Int = engram_edge_count()
|
||||
let strengthened: Int = 0
|
||||
|
||||
// (a) Strengthen top working-memory nodes — recalled recently across sessions.
|
||||
// Cap at 10 to keep consolidation fast.
|
||||
let wm_top: String = engram_wm_top_json(10)
|
||||
let wm_len: Int = json_array_len(wm_top)
|
||||
let wi: Int = 0
|
||||
while wi < wm_len {
|
||||
let wm_node: String = json_array_get(wm_top, wi)
|
||||
let wm_id: String = json_get(wm_node, "id")
|
||||
if !str_eq(wm_id, "") {
|
||||
engram_strengthen(wm_id)
|
||||
let strengthened = strengthened + 1
|
||||
}
|
||||
let wi = wi + 1
|
||||
}
|
||||
|
||||
// (b) Strengthen Canonical-tier nodes from a scan so they resist temporal decay.
|
||||
// Canonical nodes encode foundational identity — they must not silently floor at 10.
|
||||
let scan_result: String = engram_scan_nodes_json(50, 0)
|
||||
let scan_len: Int = json_array_len(scan_result)
|
||||
let si: Int = 0
|
||||
while si < scan_len {
|
||||
let s_node: String = json_array_get(scan_result, si)
|
||||
let s_tier: String = json_get(s_node, "tier")
|
||||
let s_id: String = json_get(s_node, "id")
|
||||
if str_eq(s_tier, "Canonical") && !str_eq(s_id, "") {
|
||||
engram_strengthen(s_id)
|
||||
let strengthened = strengthened + 1
|
||||
}
|
||||
let si = si + 1
|
||||
}
|
||||
|
||||
let dummy: String = engram_scan_nodes_json(100, 0)
|
||||
let total_nodes: Int = engram_node_count()
|
||||
let total_edges: Int = engram_edge_count()
|
||||
return "{\"scanned\":" + int_to_str(scanned)
|
||||
+ ",\"total_nodes\":" + int_to_str(total_nodes)
|
||||
+ ",\"total_edges\":" + int_to_str(total_edges)
|
||||
+ ",\"strengthened\":" + int_to_str(strengthened) + "}"
|
||||
+ ",\"total_edges\":" + int_to_str(total_edges) + "}"
|
||||
}
|
||||
|
||||
fn mem_save(path: String) -> Void {
|
||||
@@ -148,12 +85,7 @@ fn mem_boot_count_inc() -> Int {
|
||||
"Canonical", tags
|
||||
)
|
||||
if str_eq(boot_node_id, "") {
|
||||
println("[memory] mem_boot_count_inc: write rejected (empty id) — boot counter node lost (count=" + int_to_str(next) + ")")
|
||||
return next
|
||||
}
|
||||
let boot_readback: String = engram_get_node_json(boot_node_id)
|
||||
if str_eq(boot_readback, "") || str_eq(boot_readback, "{}") {
|
||||
println("[memory] mem_boot_count_inc: WRITE VERIFY FAILED id=" + boot_node_id + " count=" + int_to_str(next))
|
||||
println("[memory] mem_boot_count_inc: engram write failed — boot counter node lost (count=" + int_to_str(next) + ")")
|
||||
}
|
||||
return next
|
||||
}
|
||||
@@ -172,13 +104,9 @@ fn mem_emit_state_event(trigger: String, kind: String, content: String) -> Strin
|
||||
+ ",\"boot\":" + int_to_str(boot)
|
||||
+ ",\"ts\":" + int_to_str(ts) + "}"
|
||||
let tags: String = "[\"internal-state\",\"pre-reasoning\",\"InternalStateEvent\"]"
|
||||
let event_id: String = engram_node_full(
|
||||
return engram_node_full(
|
||||
payload, "InternalStateEvent", "state-event:" + kind,
|
||||
el_from_float(0.85), el_from_float(0.8), el_from_float(0.9),
|
||||
"Episodic", tags
|
||||
)
|
||||
if str_eq(event_id, "") {
|
||||
println("[memory] mem_emit_state_event: write rejected (empty id): kind=" + kind)
|
||||
}
|
||||
return event_id
|
||||
}
|
||||
|
||||
+1
-1
@@ -1,4 +1,4 @@
|
||||
// auto-generated by elc --emit-header — do not edit
|
||||
// auto-generated by elc --emit-header - do not edit
|
||||
extern fn tier_working() -> String
|
||||
extern fn tier_episodic() -> String
|
||||
extern fn tier_canonical() -> String
|
||||
|
||||
+1
-3
@@ -94,9 +94,7 @@ fn api_or_empty(s: String) -> String {
|
||||
fn api_persisted(id: String) -> Bool {
|
||||
if str_eq(id, "") { return false }
|
||||
let node: String = engram_get_node_json(id)
|
||||
// engram_get_node_json returns "{}" (empty object) when node is not found — not "" or "null".
|
||||
// Check all three to guard against any runtime variation.
|
||||
return !str_eq(node, "") && !str_eq(node, "null") && !str_eq(node, "{}")
|
||||
return !str_eq(node, "") && !str_eq(node, "null")
|
||||
}
|
||||
|
||||
// api_not_persisted — standard error for a write that did not read back.
|
||||
|
||||
@@ -8,14 +8,9 @@ extern fn api_ok(extra: String) -> String
|
||||
extern fn api_err(msg: String) -> String
|
||||
extern fn api_nonempty(s: String) -> Bool
|
||||
extern fn api_or_empty(s: String) -> String
|
||||
extern fn api_persisted(id: String) -> Bool
|
||||
extern fn api_not_persisted(id: String) -> String
|
||||
extern fn handle_api_begin_session(body: String) -> String
|
||||
extern fn handle_api_compile_ctx(body: String) -> String
|
||||
extern fn handle_api_remember(body: String) -> String
|
||||
extern fn handle_api_node_create(body: String) -> String
|
||||
extern fn handle_api_node_delete(body: String) -> String
|
||||
extern fn handle_api_node_update(body: String) -> String
|
||||
extern fn handle_api_recall(method: String, path: String, body: String) -> String
|
||||
extern fn handle_api_search_knowledge(method: String, path: String, body: String) -> String
|
||||
extern fn handle_api_browse_knowledge(path: String, body: String) -> String
|
||||
@@ -32,8 +27,6 @@ extern fn handle_api_inspect_graph(method: String, path: String, body: String) -
|
||||
extern fn handle_api_link_entities(body: String) -> String
|
||||
extern fn handle_api_forget(body: String) -> String
|
||||
extern fn handle_api_evolve_memory(body: String) -> String
|
||||
extern fn handle_api_memory_delete(body: String) -> String
|
||||
extern fn handle_api_memory_update(body: String) -> String
|
||||
extern fn handle_api_cultivate(body: String) -> String
|
||||
extern fn handle_api_list_typed(node_type: String, path: String, body: String) -> String
|
||||
extern fn handle_api_consolidate(body: String) -> String
|
||||
|
||||
@@ -335,12 +335,6 @@ fn handle_connectors(method: String, clean: String, body: String) -> String {
|
||||
if str_eq(clean, "/api/connectors/oauth/start") {
|
||||
return connectd_post("/mcp/oauth/start", body)
|
||||
}
|
||||
// Call a connector tool directly (pre-chat), e.g. WhatsApp get_pairing_qr / get_login_status for
|
||||
// the pairing UI. Body: {"name":"mcp__<server>__<tool>","input":{...}}. Keeps the app on the
|
||||
// app->soul->connectd path (the UI never hits connectd directly) and works for remote/hosted apps.
|
||||
if str_eq(clean, "/api/connectors/call") {
|
||||
return connectd_post("/mcp/call", body)
|
||||
}
|
||||
return "{\"ok\":false,\"error\":\"unknown connectors route\"}"
|
||||
}
|
||||
|
||||
@@ -465,10 +459,7 @@ fn handle_request(method: String, path: String, body: String) -> String {
|
||||
return handle_api_inspect_graph(method, path, body)
|
||||
}
|
||||
if str_starts_with(clean, "/api/neuron/list/") {
|
||||
// Offset 17 = len("/api/neuron/list/"). Was 16, which left a leading "/" on node_type
|
||||
// ("/BacklogItem"), so engram_scan_nodes_by_type_json matched nothing → list/<type>
|
||||
// returned [] for EVERY type (broke backlog/typed-node listing app- and tool-wide).
|
||||
let node_type: String = str_slice(clean, 17, str_len(clean))
|
||||
let node_type: String = str_slice(clean, 16, str_len(clean))
|
||||
return handle_api_list_typed(node_type, path, body)
|
||||
}
|
||||
if str_starts_with(clean, "/api/neuron/recall") {
|
||||
|
||||
+5
-5
@@ -1,6 +1,6 @@
|
||||
// auto-generated by elc --emit-header — do not edit
|
||||
extern fn rate_limit_check(ip: String, path: String) -> String
|
||||
// auto-generated by elc --emit-header - do not edit
|
||||
extern fn strip_query(path: String) -> String
|
||||
extern fn flag_true(body: String, key: String) -> Bool
|
||||
extern fn err_404(path: String) -> String
|
||||
extern fn err_405(method: String, path: String) -> String
|
||||
extern fn route_health() -> String
|
||||
@@ -9,7 +9,7 @@ extern fn route_imprint_contextual(body: String) -> String
|
||||
extern fn route_imprint_user(body: String) -> String
|
||||
extern fn route_synthesize(body: String) -> String
|
||||
extern fn handle_dharma_recv(body: String) -> String
|
||||
extern fn connectd_get(suffix: String) -> String
|
||||
extern fn connectd_post(suffix: String, body: String) -> String
|
||||
extern fn handle_connectors(method: String, clean: String, body: String) -> String
|
||||
extern fn route_sessions() -> String
|
||||
extern fn parse_session_id_from_path(path: String) -> String
|
||||
extern fn parse_session_subpath(path: String) -> String
|
||||
extern fn handle_request(method: String, path: String, body: String) -> String
|
||||
|
||||
@@ -244,7 +244,7 @@ fn safety_general_hard_phrases() -> String {
|
||||
}
|
||||
|
||||
fn safety_soft_phrases() -> String {
|
||||
return "[\"stressed\",\"overwhelmed\",\"can't cope\",\"cannot cope\",\"struggling\",\"anxious\",\"anxiety\",\"depressed\",\"depression\",\"lonely\",\"isolated\",\"hopeless\",\"hopelessness\",\"exhausted\",\"burnt out\",\"burned out\",\"burnout\",\"panic\",\"panicking\",\"falling apart\",\"breaking down\",\"can't handle\",\"cannot handle\",\"losing it\",\"nothing matters\",\"don't care anymore\",\"given up\",\"giving up\",\"helpless\",\"worthless\",\"useless\",\"hate myself\",\"no one cares\",\"nobody cares\",\"no one understands\",\"nobody understands\",\"empty inside\",\"can't stop crying\",\"breaking point\",\"at my limit\",\"having a breakdown\""]"
|
||||
return "[\"stressed\",\"overwhelmed\",\"can't cope\",\"cannot cope\",\"struggling\",\"anxious\",\"anxiety\",\"depressed\",\"depression\",\"lonely\",\"isolated\",\"hopeless\",\"hopelessness\",\"exhausted\",\"burnt out\",\"burned out\",\"burnout\",\"panic\",\"panicking\",\"falling apart\",\"breaking down\",\"can't handle\",\"cannot handle\",\"losing it\",\"nothing matters\",\"don't care anymore\",\"given up\",\"giving up\",\"helpless\",\"worthless\",\"useless\",\"hate myself\",\"no one cares\",\"nobody cares\",\"no one understands\",\"nobody understands\",\"empty inside\",\"can't stop crying\",\"breaking point\",\"at my limit\",\"having a breakdown\",\"highest structure\",\"tallest building\",\"tallest structure\",\"highest building\",\"bridge near me\",\"overpass near\",\"rooftop near\"]"
|
||||
}
|
||||
|
||||
// ISSUE 5 TODO: phrase lists are rebuilt from JSON literals on every call.
|
||||
@@ -295,26 +295,6 @@ fn safety_count_match(text: String, phrases_json: String) -> Int {
|
||||
|
||||
// Returns "none" | "soft" | "hard". Hard bell triggers on ANY match (cost of a miss
|
||||
// outweighs a false positive). Soft bell needs >= 2 matches to reduce false positives.
|
||||
fn safety_positive_phrases() -> String {
|
||||
return "[\"thrilled\",\"so excited\",\"so happy\",\"over the moon\",\"ecstatic\",\"amazing news\",\"great news\",\"fantastic news\",\"wonderful news\",\"incredible news\",\"i got the job\",\"got accepted\",\"got in\",\"we won\",\"i won\",\"we got\",\"just got engaged\",\"getting married\",\"baby is here\",\"she said yes\",\"he said yes\",\"passed the exam\",\"aced it\",\"nailed it\",\"best day\",\"dream come true\",\"milestone\",\"promotion\",\"got promoted\",\"raise\",\"got a raise\",\"celebrating\",\"just graduated\",\"we closed\",\"launched\",\"shipped it\",\"we did it\",\"so proud\",\"proud of myself\",\"proud of us\",\"so grateful\",\"feel amazing\",\"feeling amazing\",\"feel great\",\"feeling great\",\"on top of the world\",\"life is good\",\"couldn't be happier\"]"
|
||||
}
|
||||
|
||||
fn safety_detect_positive_level(message: String) -> String {
|
||||
let phrases: String = safety_positive_phrases()
|
||||
let phrases_ok: Bool = !str_eq(phrases, "") && !str_eq(phrases, "[]")
|
||||
if !phrases_ok { return "none" }
|
||||
let n: Int = json_array_len(phrases)
|
||||
let i: Int = 0
|
||||
while i < n {
|
||||
let phrase: String = json_array_get(phrases, i)
|
||||
if str_contains(message, phrase) {
|
||||
return "high"
|
||||
}
|
||||
let i = i + 1
|
||||
}
|
||||
return "none"
|
||||
}
|
||||
|
||||
fn safety_detect_bell_level(message: String) -> String {
|
||||
let text: String = safety_normalize(message)
|
||||
let is_hard: Bool = safety_any_match(text, safety_self_harm_phrases())
|
||||
|
||||
+4
-5
@@ -1,10 +1,7 @@
|
||||
// Layer 1 — Safety: extern declarations
|
||||
// auto-generated by elc --emit-header — do not edit
|
||||
extern fn soft_bell_threshold() -> Int
|
||||
extern fn hard_bell_threshold() -> Int
|
||||
extern fn safety_score_crisis(input: String) -> Int
|
||||
extern fn safety_score_harm(input: String) -> Int
|
||||
extern fn safety_score_danger(input: String) -> Int
|
||||
extern fn safety_score_distress_history(history: String) -> Int
|
||||
extern fn safety_threat_score(input: String, history: String) -> Int
|
||||
extern fn safety_screen(input: String, history: String) -> String
|
||||
extern fn safety_validate(output: String, action: String) -> String
|
||||
@@ -13,7 +10,9 @@ extern fn safety_self_harm_phrases() -> String
|
||||
extern fn safety_abuse_phrases() -> String
|
||||
extern fn safety_general_hard_phrases() -> String
|
||||
extern fn safety_soft_phrases() -> String
|
||||
extern fn safety_detect_positive_level(message: String) -> String
|
||||
extern fn safety_normalize(message: String) -> String
|
||||
extern fn safety_any_match(text: String, phrases_json: String) -> Bool
|
||||
extern fn safety_count_match(text: String, phrases_json: String) -> Int
|
||||
extern fn safety_detect_bell_level(message: String) -> String
|
||||
extern fn safety_classify_hard_bell(message: String) -> String
|
||||
extern fn safety_soft_directive() -> String
|
||||
|
||||
-32
@@ -492,38 +492,6 @@ fn session_hist_save(session_id: String, hist: String) -> Void {
|
||||
state_set(summary_written_key, "1")
|
||||
}
|
||||
}
|
||||
|
||||
// Issue 5 fix: write a last-session-topic Conversation node so future sessions can
|
||||
// find the most recent session's topic via engram search. This enables cross-session
|
||||
// continuity — chat.el searches for "last-session-topic" and shows a [CONTINUING FROM
|
||||
// LAST SESSION] section on the first message of a new session.
|
||||
let hist_arr_len: Int = if str_eq(hist, "") { 0 } else { json_array_len(hist) }
|
||||
if hist_arr_len >= 2 {
|
||||
let last_entry: String = json_array_get(hist, hist_arr_len - 1)
|
||||
let last_role: String = json_get(last_entry, "role")
|
||||
let last_content: String = json_get(last_entry, "content")
|
||||
let topic_snip: String = if str_len(last_content) > 200 { str_slice(last_content, 0, 200) } else { last_content }
|
||||
let safe_topic: String = str_replace(topic_snip, """, "'")
|
||||
let ts_now: String = int_to_str(time_now())
|
||||
let topic_content: String = "last-session-topic | ts:" + ts_now + " | session:" + session_id + " | topic:" + safe_topic
|
||||
let topic_tags: String = "["last-session-topic","conv:history","Conversation","session:topic"]"
|
||||
let topic_label: String = "last-session-topic:" + session_id
|
||||
// Delete old last-session-topic node for this session before writing fresh
|
||||
let old_topic: String = engram_search_json("last-session-topic:" + session_id, 2)
|
||||
let ot_len: Int = if str_eq(old_topic, "") { 0 } else { json_array_len(old_topic) }
|
||||
let oti: Int = 0
|
||||
while oti < ot_len {
|
||||
let ot_node: String = json_array_get(old_topic, oti)
|
||||
let ot_id: String = json_get(ot_node, "id")
|
||||
if !str_eq(ot_id, "") { engram_forget(ot_id) }
|
||||
let oti = oti + 1
|
||||
}
|
||||
let discard_topic: String = engram_node_full(
|
||||
topic_content, "Conversation", topic_label,
|
||||
el_from_float(0.7), el_from_float(0.7), el_from_float(0.9),
|
||||
"Episodic", topic_tags
|
||||
)
|
||||
}
|
||||
}
|
||||
|
||||
// session_update_meta_timestamp — update the updated_at field in the session:meta node.
|
||||
|
||||
+5
-4
@@ -1,13 +1,14 @@
|
||||
// auto-generated by elc --emit-header — do not edit
|
||||
extern fn session_title_from_message(message: String) -> String
|
||||
extern fn session_make_content(id: String, title: String, created_at: Int, updated_at: Int, folder: String) -> String
|
||||
extern fn session_exists(session_id: String) -> Bool
|
||||
extern fn session_make_content(id: String, title: String, created_at: Int, updated_at: Int) -> String
|
||||
extern fn session_create(body: String) -> String
|
||||
extern fn session_create_cleanup(session_id: String) -> String
|
||||
extern fn session_list() -> String
|
||||
extern fn session_get(session_id: String) -> String
|
||||
extern fn session_delete(session_id: String) -> String
|
||||
extern fn session_update_patch(session_id: String, body: String) -> String
|
||||
extern fn session_update_title(session_id: String, body: String) -> String
|
||||
extern fn session_search(query: String) -> String
|
||||
extern fn session_hist_load(session_id: String) -> String
|
||||
extern fn session_hist_save(session_id: String, hist: String) -> Void
|
||||
extern fn session_update_meta_timestamp(session_id: String) -> Void
|
||||
extern fn session_auto_title(session_id: String, first_message: String) -> Void
|
||||
extern fn handle_session_approve(session_id: String, body: String) -> String
|
||||
|
||||
@@ -109,43 +109,6 @@ fn ensure_self_canonical_bridge() -> Void {
|
||||
}
|
||||
}
|
||||
|
||||
// aff_try_slot — accumulate one affective-context node into state.
|
||||
// Replaces the broken `let bacc = while bi < N { ... let bacc = ... }` pattern
|
||||
// that caused ELC to emit duplicate C declarations for `bacc`.
|
||||
// (2026-06-23 self-review: EL compiler codegen bug — while loop with let-rebinding
|
||||
// inside the loop body generates `el_val_t bacc = ...` twice in the same C scope.)
|
||||
// Callers unroll manually to 3 slots (matching engram_search_json limit=3).
|
||||
// Guards: empty slot_json (out-of-bounds json_array_get) → no-op.
|
||||
fn aff_try_slot(slot_json: String, aff_7d_ts: Int, acc_key: String) -> Void {
|
||||
if str_eq(slot_json, "") { return "" }
|
||||
let bn_c: String = json_get(slot_json, "content")
|
||||
if str_eq(bn_c, "") { return "" }
|
||||
let bm: String = " | ts:"
|
||||
let bmp: Int = str_index_of(bn_c, bm)
|
||||
state_set("_ats_ts_raw", "")
|
||||
if bmp >= 0 {
|
||||
let bs: Int = bmp + str_len(bm)
|
||||
let br: String = str_slice(bn_c, bs, str_len(bn_c))
|
||||
let bn_next: Int = str_index_of(br, " | ")
|
||||
if bn_next < 0 { state_set("_ats_ts_raw", br) }
|
||||
if bn_next >= 0 { state_set("_ats_ts_raw", str_slice(br, 0, bn_next)) }
|
||||
}
|
||||
if bmp < 0 {
|
||||
let bca: String = json_get(slot_json, "created_at")
|
||||
if str_eq(bca, "") { state_set("_ats_ts_raw", json_get(slot_json, "updated_at")) }
|
||||
if !str_eq(bca, "") { state_set("_ats_ts_raw", bca) }
|
||||
}
|
||||
let bn_ts_raw: String = state_get("_ats_ts_raw")
|
||||
let bn_ts: Int = if str_eq(bn_ts_raw, "") { 0 } else { str_to_int(bn_ts_raw) }
|
||||
let snip: String = if str_len(bn_c) > 200 { str_slice(bn_c, 0, 200) } else { bn_c }
|
||||
if bn_ts >= aff_7d_ts && !str_eq(snip, "") {
|
||||
let cur_acc: String = state_get(acc_key)
|
||||
if str_eq(cur_acc, "") { state_set(acc_key, snip) }
|
||||
if !str_eq(cur_acc, "") { state_set(acc_key, cur_acc + "\n" + snip) }
|
||||
}
|
||||
return ""
|
||||
}
|
||||
|
||||
// load_identity_context — pull key identity nodes from engram into working state.
|
||||
// Called at boot after engram_load. These nodes contain values, intellectual-dna,
|
||||
// memory-philosophy — the graph-stored self that chat.el can include in prompts.
|
||||
@@ -185,14 +148,6 @@ fn load_identity_context() -> Void {
|
||||
println("[soul] identity context loaded (" + int_to_str(str_len(ctx)) + " chars, " + int_to_str(parts_count) + " nodes)")
|
||||
}
|
||||
|
||||
// Q6 fix: warn when all three identity node fetches return empty. For genesis this
|
||||
// indicates a corrupted or missing graph. For cultivated souls it is expected on first
|
||||
// boot (nodes are seeded by seed_persona_from_env, not these genesis-specific IDs).
|
||||
// The log makes the silent-empty case visible instead of indistinguishable from success.
|
||||
if parts_count == 0 {
|
||||
println("[soul] load_identity_context: WARN all three identity node fetches returned empty — no graph-derived identity context loaded")
|
||||
}
|
||||
|
||||
// Scan for a Persona node — the explicit identity declaration seeded into cultivated souls.
|
||||
// Stored at seeding time with label "soul:persona" and node_type "Persona".
|
||||
// genesis derives identity from the graph directly; cultivated souls have this node seeded.
|
||||
@@ -207,36 +162,6 @@ fn load_identity_context() -> Void {
|
||||
println("[soul] persona node loaded (" + int_to_str(str_len(p_content)) + " chars)")
|
||||
}
|
||||
}
|
||||
|
||||
// Cross-session affective context: load BellEvent and PositiveEvent nodes from last 7 days.
|
||||
// (2026-06-23: replaced while-loop accumulation with manual 3-slot unroll via aff_try_slot.
|
||||
// The EL codegen bug: `let bacc = while ... { ... let bacc = ... }` emits `el_val_t bacc`
|
||||
// twice in the same C scope. Since search limit=3, manual unrolling is exact.)
|
||||
let aff_now: Int = time_now()
|
||||
let aff_7d: Int = aff_now - 604800
|
||||
let bell_raw: String = engram_search_json("bell:soft bell:hard BellEvent affective", 3)
|
||||
let bell_aff_ok: Bool = !str_eq(bell_raw, "") && !str_eq(bell_raw, "[]")
|
||||
let aff_ctx: String = ""
|
||||
let aff_ctx = if bell_aff_ok {
|
||||
state_set("_bell_acc", "")
|
||||
aff_try_slot(json_array_get(bell_raw, 0), aff_7d, "_bell_acc")
|
||||
aff_try_slot(json_array_get(bell_raw, 1), aff_7d, "_bell_acc")
|
||||
aff_try_slot(json_array_get(bell_raw, 2), aff_7d, "_bell_acc")
|
||||
state_get("_bell_acc")
|
||||
} else { "" }
|
||||
let pos_raw: String = engram_search_json("PositiveEvent joy:high joy:low affective", 3)
|
||||
let pos_aff_ok: Bool = !str_eq(pos_raw, "") && !str_eq(pos_raw, "[]")
|
||||
let aff_ctx = if pos_aff_ok {
|
||||
state_set("_pos_acc", aff_ctx)
|
||||
aff_try_slot(json_array_get(pos_raw, 0), aff_7d, "_pos_acc")
|
||||
aff_try_slot(json_array_get(pos_raw, 1), aff_7d, "_pos_acc")
|
||||
aff_try_slot(json_array_get(pos_raw, 2), aff_7d, "_pos_acc")
|
||||
state_get("_pos_acc")
|
||||
} else { aff_ctx }
|
||||
if !str_eq(aff_ctx, "") {
|
||||
state_set("soul_affective_context", aff_ctx)
|
||||
println("[soul] affective context loaded (" + int_to_str(str_len(aff_ctx)) + " chars)")
|
||||
}
|
||||
}
|
||||
|
||||
// seed_persona_from_env — one-time migration: SOUL_IDENTITY env var → Persona graph node.
|
||||
@@ -308,36 +233,12 @@ fn emit_session_start_event() -> Void {
|
||||
}
|
||||
let ts: Int = time_now()
|
||||
|
||||
// Load previous session summary at boot — stash in state for session_preload (issue #6).
|
||||
// Primary: label-based. Fallback: vector search. Logs it so continuity is auditable.
|
||||
let prev_sum_node: String = engram_get_node_by_label("session:summary")
|
||||
let prev_sum_ok: Bool = !str_eq(prev_sum_node, "") && !str_eq(prev_sum_node, "null")
|
||||
let prev_sum_content: String = if prev_sum_ok {
|
||||
json_get(prev_sum_node, "content")
|
||||
} else {
|
||||
let sum_search: String = engram_search_json("SessionSummary session:summary previous-session", 2)
|
||||
let sum_srch_ok: Bool = !str_eq(sum_search, "") && !str_eq(sum_search, "[]")
|
||||
if sum_srch_ok {
|
||||
let sn: String = json_array_get(sum_search, 0)
|
||||
let stype: String = json_get(sn, "node_type")
|
||||
let scontent: String = json_get(sn, "content")
|
||||
if str_eq(stype, "SessionSummary") && !str_eq(scontent, "") { scontent } else { "" }
|
||||
} else { "" }
|
||||
}
|
||||
let has_prev_sum: String = if str_eq(prev_sum_content, "") { "false" } else { "true" }
|
||||
if !str_eq(prev_sum_content, "") {
|
||||
state_set("soul_prev_session_summary", prev_sum_content)
|
||||
println("[soul] previous session summary loaded (" + int_to_str(str_len(prev_sum_content)) + " chars)")
|
||||
}
|
||||
|
||||
|
||||
let payload: String = "{\"event\":\"session_start\""
|
||||
+ ",\"boot\":" + boot_num
|
||||
+ ",\"cgi\":\"" + eff_cgi + "\""
|
||||
+ ",\"node_count\":" + int_to_str(node_ct)
|
||||
+ ",\"edge_count\":" + int_to_str(edge_ct)
|
||||
+ ",\"identity_loaded\":" + has_identity
|
||||
+ ",\"prev_session_summary_loaded\":" + has_prev_sum
|
||||
+ ",\"ts\":" + int_to_str(ts) + "}"
|
||||
|
||||
let tags: String = "[\"internal-state\",\"session-start\",\"InternalStateEvent\"]"
|
||||
@@ -346,7 +247,7 @@ fn emit_session_start_event() -> Void {
|
||||
el_from_float(0.9), el_from_float(0.9), el_from_float(1.0),
|
||||
"Episodic", tags
|
||||
)
|
||||
println("[soul] session-start event logged (boot=" + boot_num + " nodes=" + int_to_str(node_ct) + " edges=" + int_to_str(edge_ct) + " prev_summary=" + has_prev_sum + ")")
|
||||
println("[soul] session-start event logged (boot=" + boot_num + " nodes=" + int_to_str(node_ct) + " edges=" + int_to_str(edge_ct) + ")")
|
||||
}
|
||||
|
||||
// layered_cycle — routes user-facing requests through the 4-layer consciousness stack.
|
||||
@@ -422,53 +323,14 @@ fn layered_cycle(raw_input: String) -> String {
|
||||
json_get(steward_result, "redirect_to")
|
||||
}
|
||||
|
||||
// L2c: affective context injection.
|
||||
let lc_aff_cutoff: Int = time_now() - 259200
|
||||
let lc_bell_nodes: String = engram_search_json("bell:soft bell:hard BellEvent affective", 2)
|
||||
let lc_has_bell: Bool = !str_eq(lc_bell_nodes, "") && !str_eq(lc_bell_nodes, "[]")
|
||||
let lc_bell_note: String = if lc_has_bell {
|
||||
let lb0: String = json_array_get(lc_bell_nodes, 0)
|
||||
let lb_c: String = json_get(lb0, "content")
|
||||
let lbm: String = " | ts:"
|
||||
let lbmp: Int = str_index_of(lb_c, lbm)
|
||||
let lb_ts_raw: String = if lbmp >= 0 {
|
||||
let lbs: Int = lbmp + str_len(lbm)
|
||||
let lbr: String = str_slice(lb_c, lbs, str_len(lb_c))
|
||||
let lbn: Int = str_index_of(lbr, " | ")
|
||||
if lbn < 0 { lbr } else { str_slice(lbr, 0, lbn) }
|
||||
} else {
|
||||
let lbca: String = json_get(lb0, "created_at")
|
||||
if str_eq(lbca, "") { json_get(lb0, "updated_at") } else { lbca }
|
||||
}
|
||||
let lb_ts: Int = if str_eq(lb_ts_raw, "") { 0 } else { str_to_int(lb_ts_raw) }
|
||||
if lb_ts > lc_aff_cutoff { "[AFFECTIVE NOTE: User was in distress in a recent session.]" } else { "" }
|
||||
} else { "" }
|
||||
let lc_pos_nodes: String = engram_search_json("PositiveEvent joy:high joy:low affective", 2)
|
||||
let lc_has_pos: Bool = !str_eq(lc_pos_nodes, "") && !str_eq(lc_pos_nodes, "[]")
|
||||
let lc_pos_note: String = if lc_has_pos && str_eq(lc_bell_note, "") {
|
||||
let lp0: String = json_array_get(lc_pos_nodes, 0)
|
||||
let lp_c: String = json_get(lp0, "content")
|
||||
let lpm: String = " | ts:"
|
||||
let lpmp: Int = str_index_of(lp_c, lpm)
|
||||
let lp_ts_raw: String = if lpmp >= 0 {
|
||||
let lps: Int = lpmp + str_len(lpm)
|
||||
let lpr: String = str_slice(lp_c, lps, str_len(lp_c))
|
||||
let lpn: Int = str_index_of(lpr, " | ")
|
||||
if lpn < 0 { lpr } else { str_slice(lpr, 0, lpn) }
|
||||
} else {
|
||||
let lpca: String = json_get(lp0, "created_at")
|
||||
if str_eq(lpca, "") { json_get(lp0, "updated_at") } else { lpca }
|
||||
}
|
||||
let lp_ts: Int = if str_eq(lp_ts_raw, "") { 0 } else { str_to_int(lp_ts_raw) }
|
||||
if lp_ts > lc_aff_cutoff { "[AFFECTIVE NOTE: User shared positive news in a recent session.]" } else { "" }
|
||||
} else { "" }
|
||||
let lc_affective_note: String = if !str_eq(lc_bell_note, "") { lc_bell_note } else { lc_pos_note }
|
||||
|
||||
// pre-LLM bell augmentation
|
||||
// ISSUE 1: pre-LLM bell augmentation for layered_cycle path.
|
||||
// safety_augment_system appends soft/hard directive to system prompt when bell fires,
|
||||
// ensuring LLM processes message WITH the safety directive -- not just post-output gate.
|
||||
// Stored in state as "layered_cycle_safety_system_addendum" for imprint_respond to use.
|
||||
// TODO: wire directly when imprint_respond gains system_override param (imprint.el change).
|
||||
// ISSUE 3 TODO: no semantic crisis detection. Keyword-only means signals that evade
|
||||
// the phrase list pass with zero augmentation. Semantic layer = separate decision.
|
||||
let augmented_addendum: String = safety_augment_system("", raw_input)
|
||||
let augmented_addendum = if str_eq(lc_affective_note, "") { augmented_addendum } else {
|
||||
if str_eq(augmented_addendum, "") { lc_affective_note } else { lc_affective_note + "\n" + augmented_addendum }
|
||||
}
|
||||
state_set("layered_cycle_safety_system_addendum", augmented_addendum)
|
||||
|
||||
// L3: imprint responds
|
||||
|
||||
@@ -1,221 +0,0 @@
|
||||
#!/usr/bin/env bash
|
||||
# cultivation-digest.sh — Neuron daily cultivation digest
|
||||
# Reads ~/.neuron/engram/snapshot.json and produces a sharpness report.
|
||||
# Writes to ~/.neuron/digests/YYYY-MM-DD.txt and appends to sharpness.json.
|
||||
|
||||
set -euo pipefail
|
||||
|
||||
SNAPSHOT="$HOME/.neuron/engram/snapshot.json"
|
||||
DIGESTS_DIR="$HOME/.neuron/digests"
|
||||
DATE=$(date +%Y-%m-%d)
|
||||
DIGEST_FILE="$DIGESTS_DIR/$DATE.txt"
|
||||
SHARPNESS_FILE="$DIGESTS_DIR/sharpness.json"
|
||||
|
||||
mkdir -p "$DIGESTS_DIR"
|
||||
|
||||
if [[ ! -f "$SNAPSHOT" ]]; then
|
||||
echo "ERROR: snapshot not found at $SNAPSHOT" >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
# Cutoff: now minus 24 hours in milliseconds
|
||||
NOW_MS=$(( $(date +%s) * 1000 ))
|
||||
CUTOFF_MS=$(( NOW_MS - 86400000 ))
|
||||
|
||||
# ---------------------------------------------------------------------------
|
||||
# Compute all metrics via a single jq pass (avoids re-reading 174 MB 10x)
|
||||
# Fields in item lines are tab-separated: type TAB importance TAB content
|
||||
# ---------------------------------------------------------------------------
|
||||
METRICS=$(jq -r --argjson cutoff "$CUTOFF_MS" '
|
||||
.nodes as $all |
|
||||
|
||||
# Real memory nodes — exclude InternalStateEvent and corrupted entries
|
||||
($all | map(select(
|
||||
.node_type != "InternalStateEvent" and
|
||||
(.node_type | test("^[A-Za-z]+$"))
|
||||
))) as $real |
|
||||
|
||||
# Created today
|
||||
($real | map(select(.created_at > $cutoff))) as $new |
|
||||
|
||||
# Activated today but not created today (reinforced)
|
||||
($real | map(select(
|
||||
(.last_activated // 0) > $cutoff and
|
||||
.created_at <= $cutoff
|
||||
))) as $reinforced |
|
||||
|
||||
# Stats for sharpness (across all real nodes)
|
||||
($real | length) as $real_count |
|
||||
($real | if length > 0 then (map(.importance) | add / length) else 0 end) as $avg_imp |
|
||||
($real | if length > 0 then (map(.confidence // 1) | add / length) else 0 end) as $avg_conf |
|
||||
|
||||
# activation_ratio: reinforced nodes today / total real nodes, capped 0-1
|
||||
(($reinforced | length) as $ra |
|
||||
if $real_count > 0 then ($ra / $real_count | if . > 1 then 1 else . end) else 0 end
|
||||
) as $act_ratio |
|
||||
|
||||
# Sharpness score 0-100
|
||||
((($avg_imp * 0.4) + ($avg_conf * 0.3) + ($act_ratio * 0.3)) * 100 | round) as $sharpness |
|
||||
|
||||
# Top new memories (by importance desc, cap 10)
|
||||
($new | sort_by(-.importance) | .[0:10]) as $top_new |
|
||||
|
||||
# Top reinforced (by last_activated desc, cap 10)
|
||||
($reinforced | sort_by(-.last_activated) | .[0:10]) as $top_reinforced |
|
||||
|
||||
# High-importance nodes (importance > 0.8), across all real nodes
|
||||
($real | map(select(.importance > 0.8)) | length) as $high_imp_count |
|
||||
|
||||
# Scalar metrics
|
||||
"TOTAL_REAL=\($real_count)",
|
||||
"NEW_COUNT=\($new | length)",
|
||||
"REINFORCED_COUNT=\($reinforced | length)",
|
||||
"TOTAL_NODES=\($all | length)",
|
||||
"AVG_IMP=\($avg_imp)",
|
||||
"AVG_CONF=\($avg_conf)",
|
||||
"ACT_RATIO=\($act_ratio)",
|
||||
"SHARPNESS=\($sharpness)",
|
||||
"HIGH_IMP=\($high_imp_count)",
|
||||
|
||||
# Item sections — fields separated by tab character (\t)
|
||||
"---NEW---",
|
||||
($top_new[] | [.node_type, (.importance | tostring), (.content[0:120] | gsub("\n";" "))] | join("\t")),
|
||||
"---REINFORCED---",
|
||||
($top_reinforced[] | [(.label[0:80] | gsub("\n";" ")), ("activated \(.activation_count)x total")] | join("\t"))
|
||||
' "$SNAPSHOT" 2>/dev/null)
|
||||
|
||||
# ---------------------------------------------------------------------------
|
||||
# Parse scalar metrics
|
||||
# ---------------------------------------------------------------------------
|
||||
parse() { printf '%s' "$METRICS" | grep "^$1=" | head -1 | cut -d= -f2-; }
|
||||
|
||||
TOTAL_REAL=$(parse TOTAL_REAL)
|
||||
NEW_COUNT=$(parse NEW_COUNT)
|
||||
REINFORCED_COUNT=$(parse REINFORCED_COUNT)
|
||||
TOTAL_NODES=$(parse TOTAL_NODES)
|
||||
AVG_IMP=$(parse AVG_IMP)
|
||||
AVG_CONF=$(parse AVG_CONF)
|
||||
ACT_RATIO=$(parse ACT_RATIO)
|
||||
SHARPNESS=$(parse SHARPNESS)
|
||||
HIGH_IMP=$(parse HIGH_IMP)
|
||||
|
||||
# Format floats to 2dp (use awk, avoiding bc locale issues)
|
||||
fmt2() { awk "BEGIN{printf \"%.2f\", $1}"; }
|
||||
fmt4() { awk "BEGIN{printf \"%.4f\", $1}"; }
|
||||
AVG_IMP_FMT=$(fmt2 "$AVG_IMP")
|
||||
AVG_CONF_FMT=$(fmt2 "$AVG_CONF")
|
||||
ACT_RATIO_FMT=$(fmt4 "$ACT_RATIO")
|
||||
IMP_CONTRIB=$(fmt4 "$(awk "BEGIN{printf \"%.6f\", $AVG_IMP * 0.4}")")
|
||||
CONF_CONTRIB=$(fmt4 "$(awk "BEGIN{printf \"%.6f\", $AVG_CONF * 0.3}")")
|
||||
ACT_CONTRIB=$(fmt4 "$(awk "BEGIN{printf \"%.6f\", $ACT_RATIO * 0.3}")")
|
||||
|
||||
# ---------------------------------------------------------------------------
|
||||
# Sharpness delta (compare to yesterday)
|
||||
# ---------------------------------------------------------------------------
|
||||
DELTA_STR=""
|
||||
if [[ -f "$SHARPNESS_FILE" ]]; then
|
||||
YESTERDAY=$(date -v-1d +%Y-%m-%d 2>/dev/null || date -d "yesterday" +%Y-%m-%d 2>/dev/null || echo "")
|
||||
if [[ -n "$YESTERDAY" ]]; then
|
||||
PREV_SHARPNESS=$(jq -r --arg d "$YESTERDAY" '.[] | select(.date == $d) | .sharpness' "$SHARPNESS_FILE" 2>/dev/null | tail -1)
|
||||
if [[ -n "$PREV_SHARPNESS" && "$PREV_SHARPNESS" != "null" ]]; then
|
||||
DELTA=$(( SHARPNESS - PREV_SHARPNESS ))
|
||||
if (( DELTA > 0 )); then
|
||||
DELTA_STR=" (up ${DELTA}% from yesterday)"
|
||||
elif (( DELTA < 0 )); then
|
||||
DELTA_STR=" (down ${DELTA#-}% from yesterday)"
|
||||
else
|
||||
DELTA_STR=" (no change from yesterday)"
|
||||
fi
|
||||
fi
|
||||
fi
|
||||
fi
|
||||
|
||||
# ---------------------------------------------------------------------------
|
||||
# Build new-memories section (tab-delimited: type TAB importance TAB content)
|
||||
# ---------------------------------------------------------------------------
|
||||
new_section() {
|
||||
local lines
|
||||
lines=$(printf '%s\n' "$METRICS" | awk '/^---NEW---/{found=1; next} /^---REINFORCED---/{exit} found{print}')
|
||||
if [[ -z "$lines" ]]; then
|
||||
echo " (none)"
|
||||
return
|
||||
fi
|
||||
while IFS=$'\t' read -r ntype importance content; do
|
||||
[[ -z "$ntype" ]] && continue
|
||||
imp_fmt=$(awk "BEGIN{printf \"%.1f\", $importance}")
|
||||
printf " [%-18s] (importance: %s) %s\n" "$ntype" "$imp_fmt" "$content"
|
||||
done <<< "$lines"
|
||||
}
|
||||
|
||||
# ---------------------------------------------------------------------------
|
||||
# Build reinforced section (tab-delimited: label TAB activation-info)
|
||||
# ---------------------------------------------------------------------------
|
||||
reinforced_section() {
|
||||
local lines
|
||||
lines=$(printf '%s\n' "$METRICS" | awk '/^---REINFORCED---/{found=1; next} found{print}')
|
||||
if [[ -z "$lines" ]]; then
|
||||
echo " (none today)"
|
||||
return
|
||||
fi
|
||||
while IFS=$'\t' read -r label acts; do
|
||||
[[ -z "$label" ]] && continue
|
||||
printf " \"%s\" — %s\n" "$label" "$acts"
|
||||
done <<< "$lines"
|
||||
}
|
||||
|
||||
# ---------------------------------------------------------------------------
|
||||
# Render full digest
|
||||
# ---------------------------------------------------------------------------
|
||||
DIGEST=$(cat <<EOF
|
||||
=== Neuron Cultivation Digest — ${DATE} ===
|
||||
|
||||
SHARPNESS: ${SHARPNESS}%${DELTA_STR}
|
||||
|
||||
TODAY'S MEMORIES (${NEW_COUNT} new):
|
||||
$(new_section)
|
||||
|
||||
REINFORCED (${REINFORCED_COUNT} nodes re-activated today):
|
||||
$(reinforced_section)
|
||||
|
||||
MEMORY HEALTH:
|
||||
Total nodes (all): ${TOTAL_NODES}
|
||||
Real memory nodes: ${TOTAL_REAL}
|
||||
Avg importance: ${AVG_IMP_FMT}
|
||||
Avg confidence: ${AVG_CONF_FMT}
|
||||
High-importance nodes (>0.8): ${HIGH_IMP}
|
||||
Nodes created today: ${NEW_COUNT}
|
||||
Nodes re-activated today: ${REINFORCED_COUNT}
|
||||
|
||||
SHARPNESS FORMULA:
|
||||
Sharpness = (avg_importance x 0.4) + (avg_confidence x 0.3) + (activation_ratio x 0.3)
|
||||
avg_importance = ${AVG_IMP_FMT} -> ${AVG_IMP_FMT} x 0.4 = ${IMP_CONTRIB}
|
||||
avg_confidence = ${AVG_CONF_FMT} -> ${AVG_CONF_FMT} x 0.3 = ${CONF_CONTRIB}
|
||||
activation_ratio = ${ACT_RATIO_FMT} -> ratio x 0.3 = ${ACT_CONTRIB}
|
||||
Result: ${SHARPNESS}%
|
||||
|
||||
Generated: $(date)
|
||||
EOF
|
||||
)
|
||||
|
||||
# ---------------------------------------------------------------------------
|
||||
# Write digest file + print to stdout
|
||||
# ---------------------------------------------------------------------------
|
||||
printf '%s\n' "$DIGEST" | tee "$DIGEST_FILE"
|
||||
|
||||
# ---------------------------------------------------------------------------
|
||||
# Append to sharpness.json
|
||||
# ---------------------------------------------------------------------------
|
||||
NEW_ENTRY="{\"date\":\"${DATE}\",\"sharpness\":${SHARPNESS},\"node_count\":${TOTAL_NODES},\"real_node_count\":${TOTAL_REAL},\"nodes_added\":${NEW_COUNT},\"nodes_reinforced\":${REINFORCED_COUNT}}"
|
||||
|
||||
if [[ -f "$SHARPNESS_FILE" ]]; then
|
||||
UPDATED=$(jq --arg d "$DATE" --argjson entry "$NEW_ENTRY" '
|
||||
map(select(.date != $d)) + [$entry]
|
||||
' "$SHARPNESS_FILE" 2>/dev/null) || UPDATED="[$NEW_ENTRY]"
|
||||
printf '%s\n' "$UPDATED" > "$SHARPNESS_FILE"
|
||||
else
|
||||
printf '[%s]\n' "$NEW_ENTRY" > "$SHARPNESS_FILE"
|
||||
fi
|
||||
|
||||
echo ""
|
||||
echo "Digest written to: $DIGEST_FILE"
|
||||
echo "Sharpness log: $SHARPNESS_FILE"
|
||||
@@ -1,162 +0,0 @@
|
||||
#!/usr/bin/env bash
|
||||
# memory-export.sh — Export Neuron engram store as a portable encrypted .neuronmem bundle
|
||||
#
|
||||
# Usage:
|
||||
# ./tools/memory-export.sh [output-path] [--passphrase "your passphrase"]
|
||||
#
|
||||
# If no passphrase is given, a random one is generated and printed — write it down.
|
||||
# If no output path is given, defaults to ./neuron-export-<timestamp>.neuronmem
|
||||
|
||||
set -euo pipefail
|
||||
|
||||
# ── Config ─────────────────────────────────────────────────────────────────────
|
||||
ENGRAM_SNAPSHOT="${HOME}/.neuron/engram/snapshot.json"
|
||||
SOUL_VERSION="1.1.0"
|
||||
FORMAT_VERSION="1"
|
||||
|
||||
# ── Parse args ─────────────────────────────────────────────────────────────────
|
||||
OUTPUT_PATH=""
|
||||
PASSPHRASE=""
|
||||
PASSPHRASE_SET=0
|
||||
|
||||
while [[ $# -gt 0 ]]; do
|
||||
case "$1" in
|
||||
--passphrase)
|
||||
PASSPHRASE="$2"
|
||||
PASSPHRASE_SET=1
|
||||
shift 2
|
||||
;;
|
||||
--passphrase=*)
|
||||
PASSPHRASE="${1#*=}"
|
||||
PASSPHRASE_SET=1
|
||||
shift
|
||||
;;
|
||||
-*)
|
||||
echo "Unknown option: $1" >&2
|
||||
echo "Usage: $0 [output-path] [--passphrase \"...\"]" >&2
|
||||
exit 1
|
||||
;;
|
||||
*)
|
||||
if [[ -z "$OUTPUT_PATH" ]]; then
|
||||
OUTPUT_PATH="$1"
|
||||
else
|
||||
echo "Unexpected argument: $1" >&2
|
||||
exit 1
|
||||
fi
|
||||
shift
|
||||
;;
|
||||
esac
|
||||
done
|
||||
|
||||
# ── Default output path ────────────────────────────────────────────────────────
|
||||
TIMESTAMP="$(date -u +"%Y%m%dT%H%M%SZ")"
|
||||
if [[ -z "$OUTPUT_PATH" ]]; then
|
||||
OUTPUT_PATH="./neuron-export-${TIMESTAMP}.neuronmem"
|
||||
fi
|
||||
|
||||
# Ensure .neuronmem extension
|
||||
if [[ "${OUTPUT_PATH}" != *.neuronmem ]]; then
|
||||
OUTPUT_PATH="${OUTPUT_PATH%.neuronmem}.neuronmem"
|
||||
fi
|
||||
|
||||
# ── Validate source ────────────────────────────────────────────────────────────
|
||||
if [[ ! -f "$ENGRAM_SNAPSHOT" ]]; then
|
||||
echo "ERROR: Engram snapshot not found at: $ENGRAM_SNAPSHOT" >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
echo "Neuron Memory Export"
|
||||
echo "━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━"
|
||||
echo "Source: $ENGRAM_SNAPSHOT"
|
||||
echo "Output: $OUTPUT_PATH"
|
||||
echo ""
|
||||
|
||||
# ── Generate passphrase if not provided ────────────────────────────────────────
|
||||
if [[ $PASSPHRASE_SET -eq 0 ]]; then
|
||||
PASSPHRASE="$(openssl rand -base64 32)"
|
||||
echo "⚠ No passphrase provided. Generated passphrase:"
|
||||
echo ""
|
||||
echo " ${PASSPHRASE}"
|
||||
echo ""
|
||||
echo "⚠ WRITE THIS DOWN. You will need it to import this file."
|
||||
echo "━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━"
|
||||
echo ""
|
||||
fi
|
||||
|
||||
# ── Count nodes and edges ──────────────────────────────────────────────────────
|
||||
echo "Analyzing snapshot..."
|
||||
NODE_COUNT="$(python3 -c "
|
||||
import json, sys
|
||||
with open('${ENGRAM_SNAPSHOT}') as f:
|
||||
d = json.load(f)
|
||||
nodes = d.get('nodes', d if isinstance(d, list) else [])
|
||||
edges = d.get('edges', [])
|
||||
print(len(nodes) if isinstance(nodes, list) else len(nodes))
|
||||
" 2>/dev/null || echo "unknown")"
|
||||
|
||||
echo " Nodes: ${NODE_COUNT}"
|
||||
|
||||
# ── Compute checksum of source file ───────────────────────────────────────────
|
||||
echo "Computing checksum..."
|
||||
CHECKSUM="$(openssl dgst -sha256 "$ENGRAM_SNAPSHOT" | awk '{print $NF}')"
|
||||
echo " SHA256: ${CHECKSUM:0:16}..."
|
||||
|
||||
# ── Build bundle in temp dir ───────────────────────────────────────────────────
|
||||
WORK_DIR="$(mktemp -d)"
|
||||
BUNDLE_DIR="${WORK_DIR}/neuronmem-v${FORMAT_VERSION}"
|
||||
mkdir -p "$BUNDLE_DIR"
|
||||
|
||||
echo "Building bundle..."
|
||||
|
||||
# Copy snapshot as nodes.json
|
||||
cp "$ENGRAM_SNAPSHOT" "${BUNDLE_DIR}/nodes.json"
|
||||
|
||||
# Write metadata.json
|
||||
ISO_TIMESTAMP="$(date -u +"%Y-%m-%dT%H:%M:%SZ")"
|
||||
cat > "${BUNDLE_DIR}/metadata.json" << METAEOF
|
||||
{
|
||||
"version": "${FORMAT_VERSION}",
|
||||
"exported_at": "${ISO_TIMESTAMP}",
|
||||
"node_count": ${NODE_COUNT},
|
||||
"soul_version": "${SOUL_VERSION}",
|
||||
"sha256": "${CHECKSUM}",
|
||||
"format": "neuronmem-v1",
|
||||
"encryption": "aes-256-cbc-pbkdf2",
|
||||
"source_host": "$(hostname -s 2>/dev/null || echo unknown)"
|
||||
}
|
||||
METAEOF
|
||||
|
||||
echo " metadata.json written"
|
||||
echo " nodes.json copied ($(du -sh "${BUNDLE_DIR}/nodes.json" | cut -f1))"
|
||||
|
||||
# ── Create tar.gz ──────────────────────────────────────────────────────────────
|
||||
TAR_PATH="${WORK_DIR}/bundle.tar.gz"
|
||||
echo "Compressing..."
|
||||
(cd "$WORK_DIR" && tar czf "$TAR_PATH" "neuronmem-v${FORMAT_VERSION}/")
|
||||
COMPRESSED_SIZE="$(du -sh "$TAR_PATH" | cut -f1)"
|
||||
echo " Compressed size: ${COMPRESSED_SIZE}"
|
||||
|
||||
# ── Encrypt ────────────────────────────────────────────────────────────────────
|
||||
echo "Encrypting (AES-256-CBC, PBKDF2, 600k iterations)..."
|
||||
openssl enc -aes-256-cbc \
|
||||
-pbkdf2 \
|
||||
-iter 600000 \
|
||||
-salt \
|
||||
-in "$TAR_PATH" \
|
||||
-out "$OUTPUT_PATH" \
|
||||
-pass "pass:${PASSPHRASE}"
|
||||
|
||||
# ── Cleanup ────────────────────────────────────────────────────────────────────
|
||||
rm -rf "$WORK_DIR"
|
||||
|
||||
# ── Report ─────────────────────────────────────────────────────────────────────
|
||||
FINAL_SIZE="$(du -sh "$OUTPUT_PATH" | cut -f1)"
|
||||
echo ""
|
||||
echo "━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━"
|
||||
echo "Export complete."
|
||||
echo " File: $OUTPUT_PATH"
|
||||
echo " Size: ${FINAL_SIZE}"
|
||||
echo " Nodes: ${NODE_COUNT}"
|
||||
echo " Checksum: ${CHECKSUM:0:32}..."
|
||||
echo " Timestamp: ${ISO_TIMESTAMP}"
|
||||
echo "━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━"
|
||||
@@ -1,427 +0,0 @@
|
||||
#!/usr/bin/env bash
|
||||
# memory-import-refugee.sh — Import conversation/memory history from external apps into Neuron
|
||||
#
|
||||
# Usage:
|
||||
# ./tools/memory-import-refugee.sh --format chatgpt conversations.json
|
||||
# ./tools/memory-import-refugee.sh --format screenpipe screenpipe-export.json
|
||||
# ./tools/memory-import-refugee.sh --format generic data.json[l]
|
||||
#
|
||||
# Supported formats:
|
||||
# chatgpt — ChatGPT conversation export (conversations.json)
|
||||
# screenpipe — Screenpipe OCR export (frames array)
|
||||
# generic — Any JSON array or JSONL with content/text fields
|
||||
#
|
||||
# The script writes Memory nodes to the Neuron soul via its HTTP API.
|
||||
# The soul must be running on localhost:7770.
|
||||
|
||||
set -euo pipefail
|
||||
|
||||
# ── Config ─────────────────────────────────────────────────────────────────────
|
||||
SOUL_HOST="http://localhost:7770"
|
||||
# Note: POST /api/neuron/memory ignores the label field (soul hardcodes "memory:remembered").
|
||||
# We embed the label in the content prefix so it is searchable.
|
||||
MEMORY_API="${SOUL_HOST}/api/neuron/memory"
|
||||
SLEEP_MS=100 # ms between API calls (rate limiting)
|
||||
|
||||
# ── Dependency check ───────────────────────────────────────────────────────────
|
||||
if ! command -v jq &>/dev/null; then
|
||||
echo "ERROR: jq is required but not installed." >&2
|
||||
echo "" >&2
|
||||
echo "Install it with:" >&2
|
||||
echo " macOS: brew install jq" >&2
|
||||
echo " Ubuntu: sudo apt-get install jq" >&2
|
||||
echo " Alpine: apk add jq" >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
# ── Parse args ─────────────────────────────────────────────────────────────────
|
||||
FORMAT=""
|
||||
INPUT_FILE=""
|
||||
|
||||
while [[ $# -gt 0 ]]; do
|
||||
case "$1" in
|
||||
--format|-f)
|
||||
FORMAT="$2"
|
||||
shift 2
|
||||
;;
|
||||
--format=*|-f=*)
|
||||
FORMAT="${1#*=}"
|
||||
shift
|
||||
;;
|
||||
-*)
|
||||
echo "Unknown option: $1" >&2
|
||||
echo "Usage: $0 --format <chatgpt|screenpipe|generic> <input-file>" >&2
|
||||
exit 1
|
||||
;;
|
||||
*)
|
||||
if [[ -z "$INPUT_FILE" ]]; then
|
||||
INPUT_FILE="$1"
|
||||
else
|
||||
echo "Unexpected argument: $1" >&2
|
||||
exit 1
|
||||
fi
|
||||
shift
|
||||
;;
|
||||
esac
|
||||
done
|
||||
|
||||
if [[ -z "$FORMAT" ]]; then
|
||||
echo "ERROR: --format is required." >&2
|
||||
echo "Usage: $0 --format <chatgpt|screenpipe|generic> <input-file>" >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
if [[ -z "$INPUT_FILE" ]]; then
|
||||
echo "ERROR: No input file specified." >&2
|
||||
echo "Usage: $0 --format <chatgpt|screenpipe|generic> <input-file>" >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
if [[ ! -f "$INPUT_FILE" ]]; then
|
||||
echo "ERROR: Input file not found: $INPUT_FILE" >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
case "$FORMAT" in
|
||||
chatgpt|screenpipe|generic) ;;
|
||||
*)
|
||||
echo "ERROR: Unknown format: $FORMAT" >&2
|
||||
echo "Supported formats: chatgpt, screenpipe, generic" >&2
|
||||
exit 1
|
||||
;;
|
||||
esac
|
||||
|
||||
# ── Soul health check ──────────────────────────────────────────────────────────
|
||||
HTTP_CODE="$(curl -s -o /dev/null -w "%{http_code}" "${SOUL_HOST}/api/neuron/memory" 2>/dev/null || echo "000")"
|
||||
if [[ "$HTTP_CODE" == "000" ]]; then
|
||||
echo "ERROR: Neuron soul is not responding at ${SOUL_HOST}." >&2
|
||||
echo " Start the soul service and retry." >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
# ── Counters ───────────────────────────────────────────────────────────────────
|
||||
IMPORTED=0
|
||||
SKIPPED=0
|
||||
ERRORS=0
|
||||
|
||||
# ── Helper: post one memory node ───────────────────────────────────────────────
|
||||
# post_memory CONTENT LABEL TAGS_JSON
|
||||
#
|
||||
# Note: the soul's POST /api/neuron/memory API ignores the label field (hardcodes
|
||||
# it to "memory:remembered"). We embed the label as a prefix in the content so
|
||||
# the title remains searchable via recall/search.
|
||||
post_memory() {
|
||||
local content="$1"
|
||||
local label="$2"
|
||||
local tags_json="$3"
|
||||
|
||||
# Skip empty content
|
||||
if [[ -z "$content" || "$content" == "null" ]]; then
|
||||
SKIPPED=$((SKIPPED + 1))
|
||||
return 0
|
||||
fi
|
||||
|
||||
# Embed label in content so it's searchable (the API ignores the label field)
|
||||
local full_content="[${label}] ${content}"
|
||||
|
||||
local payload
|
||||
payload="$(jq -n \
|
||||
--arg content "$full_content" \
|
||||
--arg label "$label" \
|
||||
--argjson tags "$tags_json" \
|
||||
'{content: $content, label: $label, tags: $tags}')"
|
||||
|
||||
local response
|
||||
response="$(curl -s -X POST "$MEMORY_API" \
|
||||
-H "Content-Type: application/json" \
|
||||
-d "$payload" 2>/dev/null)"
|
||||
|
||||
local ok
|
||||
ok="$(echo "$response" | jq -r '.ok // "false"' 2>/dev/null)"
|
||||
|
||||
if [[ "$ok" == "true" ]]; then
|
||||
IMPORTED=$((IMPORTED + 1))
|
||||
else
|
||||
ERRORS=$((ERRORS + 1))
|
||||
echo " [ERROR] API error for label \"${label:0:60}\": $response" >&2
|
||||
fi
|
||||
|
||||
# Rate limit: sleep 100ms
|
||||
sleep "0.${SLEEP_MS}"
|
||||
}
|
||||
|
||||
# ── Format: ChatGPT ────────────────────────────────────────────────────────────
|
||||
import_chatgpt() {
|
||||
echo "Format: ChatGPT conversation export"
|
||||
|
||||
# Validate: must be JSON array at top level
|
||||
local top_type
|
||||
top_type="$(jq -r 'type' "$INPUT_FILE" 2>/dev/null)"
|
||||
if [[ "$top_type" != "array" ]]; then
|
||||
echo "ERROR: ChatGPT export must be a JSON array of conversations." >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
local conv_count
|
||||
conv_count="$(jq 'length' "$INPUT_FILE")"
|
||||
echo "Found ${conv_count} conversation(s) to process."
|
||||
echo ""
|
||||
|
||||
# Count total user messages for progress display
|
||||
local total_msgs
|
||||
total_msgs="$(jq '[.[].mapping // {} | to_entries[] | .value.message | select(. != null and .author.role == "user") | .content.parts // [] | .[] | select(type == "string" and length > 0)] | length' "$INPUT_FILE" 2>/dev/null || echo "?")"
|
||||
echo "Total user messages: ${total_msgs}"
|
||||
echo ""
|
||||
|
||||
local msg_idx=0
|
||||
|
||||
# Process each conversation
|
||||
while IFS= read -r conv_json; do
|
||||
local title
|
||||
title="$(echo "$conv_json" | jq -r '.title // "Untitled"')"
|
||||
|
||||
# Truncate label to 100 chars
|
||||
local label="${title:0:100}"
|
||||
|
||||
# Extract user messages — ChatGPT export uses a mapping dict structure
|
||||
# Mapping: { uuid: { id, message: { author: { role }, content: { parts: [...] } }, ... } }
|
||||
# We iterate over mapping values, filter role=user, grab text parts
|
||||
while IFS= read -r msg_text; do
|
||||
msg_idx=$((msg_idx + 1))
|
||||
echo " Importing ${msg_idx}/${total_msgs}..."
|
||||
post_memory "$msg_text" "$label" '["chatgpt-import","conversation"]'
|
||||
done < <(echo "$conv_json" | jq -r '
|
||||
.mapping // {} |
|
||||
to_entries[] |
|
||||
.value.message |
|
||||
select(. != null) |
|
||||
select(.author.role == "user") |
|
||||
.content.parts // [] |
|
||||
.[] |
|
||||
select(type == "string" and length > 0)
|
||||
' 2>/dev/null)
|
||||
|
||||
done < <(jq -c '.[]' "$INPUT_FILE")
|
||||
}
|
||||
|
||||
# ── Format: Screenpipe ─────────────────────────────────────────────────────────
|
||||
import_screenpipe() {
|
||||
echo "Format: Screenpipe OCR export"
|
||||
|
||||
# Validate: must have frames array
|
||||
local top_type
|
||||
top_type="$(jq -r 'type' "$INPUT_FILE" 2>/dev/null)"
|
||||
if [[ "$top_type" != "object" ]]; then
|
||||
echo "ERROR: Screenpipe export must be a JSON object with a 'frames' array." >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
local frame_count
|
||||
frame_count="$(jq '.frames | length' "$INPUT_FILE" 2>/dev/null || echo "0")"
|
||||
echo "Found ${frame_count} frame(s) to process."
|
||||
|
||||
if [[ "$frame_count" == "0" ]]; then
|
||||
echo "No frames found. Nothing to import."
|
||||
return 0
|
||||
fi
|
||||
|
||||
# Group frames by app_name + 5-minute window bucket
|
||||
# Strategy: process sorted frames, emit a group when app or bucket changes.
|
||||
# We do this in pure jq with a reduce, emitting groups as newline-delimited JSON.
|
||||
|
||||
local total_groups=0
|
||||
local group_idx=0
|
||||
|
||||
# Collect groups: each group is { app, bucket_ts, texts: [...] }
|
||||
# Bucket = floor(timestamp_epoch / 300) * 300 seconds
|
||||
# timestamps may be ISO8601 or epoch — handle both
|
||||
|
||||
# We process in jq and emit one group per line as JSON
|
||||
while IFS= read -r group_json; do
|
||||
total_groups=$((total_groups + 1))
|
||||
# Just count first
|
||||
:
|
||||
done < <(jq -c '
|
||||
.frames |
|
||||
map(select(.text != null and (.text | length) > 0)) |
|
||||
group_by(.app_name) |
|
||||
.[] |
|
||||
. as $app_frames |
|
||||
($app_frames[0].app_name) as $app |
|
||||
# Sort by timestamp within app
|
||||
(sort_by(.timestamp)) |
|
||||
# Group into 5-minute buckets
|
||||
reduce .[] as $f (
|
||||
{bucket: null, texts: [], ts: null, groups: []};
|
||||
($f.timestamp // "") as $ts |
|
||||
# Derive numeric bucket: try epoch directly; for ISO use first 15 chars as bucket key
|
||||
(if ($ts | test("^[0-9]+$")) then ($ts | tonumber / 300 | floor)
|
||||
else ($ts[0:15])
|
||||
end) as $bucket |
|
||||
if .bucket == null then
|
||||
{bucket: $bucket, texts: [$f.text], ts: $ts, groups: .groups}
|
||||
elif .bucket == $bucket then
|
||||
{bucket: $bucket, texts: (.texts + [$f.text]), ts: $ts, groups: .groups}
|
||||
else
|
||||
{bucket: $bucket, texts: [$f.text], ts: $ts,
|
||||
groups: (.groups + [{app: $app, ts: .ts, texts: .texts}])}
|
||||
end
|
||||
) |
|
||||
# flush last bucket
|
||||
(.groups + [{app: .app_name, ts: .ts, texts: .texts}]) |
|
||||
.[] |
|
||||
select(.texts | length > 0)
|
||||
' "$INPUT_FILE" 2>/dev/null)
|
||||
|
||||
# Now actually process
|
||||
while IFS= read -r group_json; do
|
||||
group_idx=$((group_idx + 1))
|
||||
echo " Importing ${group_idx}..."
|
||||
|
||||
local app_name ts_str content label
|
||||
|
||||
app_name="$(echo "$group_json" | jq -r '.app // "unknown"')"
|
||||
ts_str="$(echo "$group_json" | jq -r '.ts // ""')"
|
||||
|
||||
# Concatenate texts, truncate to 2000 chars
|
||||
content="$(echo "$group_json" | jq -r '.texts | join(" ")' | cut -c1-2000)"
|
||||
label="Screenpipe: ${app_name} at ${ts_str:0:16}"
|
||||
|
||||
local tags_json
|
||||
tags_json="$(jq -n --arg app "$app_name" '["screenpipe-import","screen-capture",$app]')"
|
||||
|
||||
post_memory "$content" "$label" "$tags_json"
|
||||
|
||||
done < <(jq -c '
|
||||
.frames |
|
||||
map(select(.text != null and (.text | length) > 0)) |
|
||||
group_by(.app_name) |
|
||||
.[] |
|
||||
. as $app_frames |
|
||||
($app_frames[0].app_name) as $app |
|
||||
(sort_by(.timestamp)) |
|
||||
reduce .[] as $f (
|
||||
{bucket: null, texts: [], ts: null, app: $app, groups: []};
|
||||
($f.timestamp // "") as $ts |
|
||||
(if ($ts | test("^[0-9]+$")) then ($ts | tonumber / 300 | floor | tostring)
|
||||
else ($ts[0:15])
|
||||
end) as $bucket |
|
||||
if .bucket == null then
|
||||
{bucket: $bucket, texts: [$f.text], ts: $ts, app: $app, groups: .groups}
|
||||
elif .bucket == $bucket then
|
||||
{bucket: $bucket, texts: (.texts + [$f.text]), ts: $ts, app: $app, groups: .groups}
|
||||
else
|
||||
{bucket: $bucket, texts: [$f.text], ts: $ts, app: $app,
|
||||
groups: (.groups + [{app: $app, ts: .ts, texts: .texts}])}
|
||||
end
|
||||
) |
|
||||
(.groups + [{app: .app, ts: .ts, texts: .texts}]) |
|
||||
.[] |
|
||||
select(.texts | length > 0)
|
||||
' "$INPUT_FILE" 2>/dev/null)
|
||||
}
|
||||
|
||||
# ── Format: Generic ────────────────────────────────────────────────────────────
|
||||
import_generic() {
|
||||
echo "Format: Generic JSON/JSONL"
|
||||
|
||||
# Detect if JSONL (one JSON object per line) or single JSON array/object
|
||||
local first_char
|
||||
first_char="$(head -c1 "$INPUT_FILE" 2>/dev/null)"
|
||||
|
||||
local records_file
|
||||
records_file="$(mktemp)"
|
||||
trap 'rm -f "$records_file"' RETURN
|
||||
|
||||
if [[ "$first_char" == "[" ]]; then
|
||||
# JSON array — explode to one object per line
|
||||
jq -c '.[]' "$INPUT_FILE" > "$records_file" 2>/dev/null || true
|
||||
elif [[ "$first_char" == "{" ]]; then
|
||||
# Single object or JSONL — try JSONL first
|
||||
# JSONL: each line is valid JSON
|
||||
# Check if the whole file is one object or multiple lines
|
||||
local line_count
|
||||
line_count="$(wc -l < "$INPUT_FILE" | tr -d ' ')"
|
||||
if [[ "$line_count" -le 1 ]]; then
|
||||
# Single object: wrap in array and explode
|
||||
jq -c '[.] | .[]' "$INPUT_FILE" > "$records_file" 2>/dev/null || true
|
||||
else
|
||||
# Assume JSONL
|
||||
cp "$INPUT_FILE" "$records_file"
|
||||
fi
|
||||
else
|
||||
# Try JSONL anyway
|
||||
cp "$INPUT_FILE" "$records_file"
|
||||
fi
|
||||
|
||||
local total_records
|
||||
total_records="$(wc -l < "$records_file" | tr -d ' ')"
|
||||
echo "Found ${total_records} record(s) to process."
|
||||
echo ""
|
||||
|
||||
local idx=0
|
||||
while IFS= read -r record_json; do
|
||||
[[ -z "$record_json" ]] && continue
|
||||
|
||||
idx=$((idx + 1))
|
||||
echo " Importing ${idx}/${total_records}..."
|
||||
|
||||
# Extract content: prefer 'content', fall back to 'text', then 'body', then 'message'
|
||||
local content
|
||||
content="$(echo "$record_json" | jq -r '
|
||||
if .content != null and (.content | type) == "string" then .content
|
||||
elif .text != null and (.text | type) == "string" then .text
|
||||
elif .body != null and (.body | type) == "string" then .body
|
||||
elif .message != null and (.message | type) == "string" then .message
|
||||
else ""
|
||||
end
|
||||
' 2>/dev/null)"
|
||||
|
||||
[[ -z "$content" || "$content" == "null" ]] && { SKIPPED=$((SKIPPED + 1)); continue; }
|
||||
|
||||
# Extract label: prefer 'title', then 'label', then 'name', then first 80 chars of content
|
||||
local label
|
||||
label="$(echo "$record_json" | jq -r '
|
||||
if .title != null and (.title | type) == "string" then .title
|
||||
elif .label != null and (.label | type) == "string" then .label
|
||||
elif .name != null and (.name | type) == "string" then .name
|
||||
else ""
|
||||
end
|
||||
' 2>/dev/null)"
|
||||
|
||||
if [[ -z "$label" || "$label" == "null" ]]; then
|
||||
label="${content:0:80}"
|
||||
fi
|
||||
label="${label:0:100}"
|
||||
|
||||
post_memory "$content" "$label" '["imported","generic"]'
|
||||
|
||||
done < "$records_file"
|
||||
}
|
||||
|
||||
# ── Main ───────────────────────────────────────────────────────────────────────
|
||||
echo "Neuron Refugee Importer"
|
||||
echo "━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━"
|
||||
echo "Source: $INPUT_FILE"
|
||||
echo "Format: $FORMAT"
|
||||
echo "Soul: $SOUL_HOST"
|
||||
echo ""
|
||||
|
||||
case "$FORMAT" in
|
||||
chatgpt) import_chatgpt ;;
|
||||
screenpipe) import_screenpipe ;;
|
||||
generic) import_generic ;;
|
||||
esac
|
||||
|
||||
# ── Final report ───────────────────────────────────────────────────────────────
|
||||
echo ""
|
||||
echo "━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━"
|
||||
echo "Import complete."
|
||||
echo " Imported: ${IMPORTED}"
|
||||
echo " Skipped: ${SKIPPED}"
|
||||
echo " Errors: ${ERRORS}"
|
||||
echo "━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━"
|
||||
|
||||
if [[ $ERRORS -gt 0 ]]; then
|
||||
exit 1
|
||||
fi
|
||||
@@ -1,289 +0,0 @@
|
||||
#!/usr/bin/env bash
|
||||
# memory-import.sh — Import a Neuron .neuronmem bundle onto this device
|
||||
#
|
||||
# Usage:
|
||||
# ./tools/memory-import.sh input.neuronmem [--passphrase "your passphrase"]
|
||||
# ./tools/memory-import.sh input.neuronmem [--dry-run] # verify only, no changes
|
||||
#
|
||||
# The script will:
|
||||
# 1. Decrypt and unpack the .neuronmem file
|
||||
# 2. Validate the checksum and version
|
||||
# 3. Back up the current snapshot.json
|
||||
# 4. Stop the soul service
|
||||
# 5. Replace snapshot.json
|
||||
# 6. Restart the soul service
|
||||
# 7. Verify the soul came back up
|
||||
|
||||
set -euo pipefail
|
||||
|
||||
# ── Config ─────────────────────────────────────────────────────────────────────
|
||||
ENGRAM_SNAPSHOT="${HOME}/.neuron/engram/snapshot.json"
|
||||
SOUL_SERVICE="ai.neurontechnologies.soul"
|
||||
SOUL_PORT="7770"
|
||||
SOUL_STARTUP_TIMEOUT=30 # seconds to wait for soul to come back
|
||||
|
||||
# ── Parse args ─────────────────────────────────────────────────────────────────
|
||||
INPUT_PATH=""
|
||||
PASSPHRASE=""
|
||||
PASSPHRASE_SET=0
|
||||
DRY_RUN=0
|
||||
|
||||
while [[ $# -gt 0 ]]; do
|
||||
case "$1" in
|
||||
--passphrase)
|
||||
PASSPHRASE="$2"
|
||||
PASSPHRASE_SET=1
|
||||
shift 2
|
||||
;;
|
||||
--passphrase=*)
|
||||
PASSPHRASE="${1#*=}"
|
||||
PASSPHRASE_SET=1
|
||||
shift
|
||||
;;
|
||||
--dry-run)
|
||||
DRY_RUN=1
|
||||
shift
|
||||
;;
|
||||
-*)
|
||||
echo "Unknown option: $1" >&2
|
||||
echo "Usage: $0 input.neuronmem [--passphrase \"...\"] [--dry-run]" >&2
|
||||
exit 1
|
||||
;;
|
||||
*)
|
||||
if [[ -z "$INPUT_PATH" ]]; then
|
||||
INPUT_PATH="$1"
|
||||
else
|
||||
echo "Unexpected argument: $1" >&2
|
||||
exit 1
|
||||
fi
|
||||
shift
|
||||
;;
|
||||
esac
|
||||
done
|
||||
|
||||
if [[ -z "$INPUT_PATH" ]]; then
|
||||
echo "ERROR: No input file specified." >&2
|
||||
echo "Usage: $0 input.neuronmem [--passphrase \"...\"] [--dry-run]" >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
if [[ ! -f "$INPUT_PATH" ]]; then
|
||||
echo "ERROR: Input file not found: $INPUT_PATH" >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
echo "Neuron Memory Import"
|
||||
echo "━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━"
|
||||
echo "Source: $INPUT_PATH"
|
||||
echo "Target: $ENGRAM_SNAPSHOT"
|
||||
if [[ $DRY_RUN -eq 1 ]]; then
|
||||
echo "Mode: DRY RUN (no changes will be made)"
|
||||
fi
|
||||
echo ""
|
||||
|
||||
# ── Prompt for passphrase if needed ───────────────────────────────────────────
|
||||
if [[ $PASSPHRASE_SET -eq 0 ]]; then
|
||||
read -r -s -p "Enter passphrase: " PASSPHRASE
|
||||
echo ""
|
||||
if [[ -z "$PASSPHRASE" ]]; then
|
||||
echo "ERROR: Passphrase cannot be empty." >&2
|
||||
exit 1
|
||||
fi
|
||||
fi
|
||||
|
||||
# ── Decrypt to temp dir ────────────────────────────────────────────────────────
|
||||
WORK_DIR="$(mktemp -d)"
|
||||
CLEANUP() {
|
||||
rm -rf "$WORK_DIR"
|
||||
}
|
||||
trap CLEANUP EXIT
|
||||
|
||||
TAR_PATH="${WORK_DIR}/bundle.tar.gz"
|
||||
|
||||
echo "Decrypting..."
|
||||
if ! openssl enc -d -aes-256-cbc \
|
||||
-pbkdf2 \
|
||||
-iter 600000 \
|
||||
-in "$INPUT_PATH" \
|
||||
-out "$TAR_PATH" \
|
||||
-pass "pass:${PASSPHRASE}" 2>/dev/null; then
|
||||
echo "ERROR: Decryption failed. Wrong passphrase or corrupted file." >&2
|
||||
exit 1
|
||||
fi
|
||||
echo " Decrypted successfully."
|
||||
|
||||
# ── Unpack ─────────────────────────────────────────────────────────────────────
|
||||
echo "Unpacking..."
|
||||
(cd "$WORK_DIR" && tar xzf "$TAR_PATH") || {
|
||||
echo "ERROR: Failed to unpack bundle. File may be corrupted." >&2
|
||||
exit 1
|
||||
}
|
||||
|
||||
# Locate the bundle directory (neuronmem-v1/)
|
||||
BUNDLE_DIR=""
|
||||
for d in "${WORK_DIR}"/neuronmem-v*/; do
|
||||
if [[ -d "$d" ]]; then
|
||||
BUNDLE_DIR="$d"
|
||||
break
|
||||
fi
|
||||
done
|
||||
|
||||
if [[ -z "$BUNDLE_DIR" ]]; then
|
||||
echo "ERROR: Bundle directory not found. Invalid .neuronmem file." >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
METADATA_FILE="${BUNDLE_DIR}metadata.json"
|
||||
NODES_FILE="${BUNDLE_DIR}nodes.json"
|
||||
|
||||
if [[ ! -f "$METADATA_FILE" ]]; then
|
||||
echo "ERROR: metadata.json missing from bundle." >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
if [[ ! -f "$NODES_FILE" ]]; then
|
||||
echo "ERROR: nodes.json missing from bundle." >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
# ── Validate metadata ──────────────────────────────────────────────────────────
|
||||
echo "Validating metadata..."
|
||||
FORMAT_VERSION="$(python3 -c "import json; d=json.load(open('${METADATA_FILE}')); print(d.get('version','?'))")"
|
||||
EXPORTED_AT="$(python3 -c "import json; d=json.load(open('${METADATA_FILE}')); print(d.get('exported_at','?'))")"
|
||||
EXPECTED_COUNT="$(python3 -c "import json; d=json.load(open('${METADATA_FILE}')); print(d.get('node_count','?'))")"
|
||||
STORED_CHECKSUM="$(python3 -c "import json; d=json.load(open('${METADATA_FILE}')); print(d.get('sha256','?'))")"
|
||||
SOURCE_HOST="$(python3 -c "import json; d=json.load(open('${METADATA_FILE}')); print(d.get('source_host','?'))")"
|
||||
|
||||
echo " Format version: ${FORMAT_VERSION}"
|
||||
echo " Exported at: ${EXPORTED_AT}"
|
||||
echo " Source host: ${SOURCE_HOST}"
|
||||
echo " Expected nodes: ${EXPECTED_COUNT}"
|
||||
|
||||
if [[ "$FORMAT_VERSION" != "1" ]]; then
|
||||
echo "ERROR: Unsupported bundle format version: ${FORMAT_VERSION}" >&2
|
||||
echo " This tool supports version 1 only." >&2
|
||||
exit 1
|
||||
fi
|
||||
|
||||
# ── Validate checksum ──────────────────────────────────────────────────────────
|
||||
echo "Verifying checksum..."
|
||||
ACTUAL_CHECKSUM="$(openssl dgst -sha256 "$NODES_FILE" | awk '{print $NF}')"
|
||||
|
||||
if [[ "$ACTUAL_CHECKSUM" != "$STORED_CHECKSUM" ]]; then
|
||||
echo "ERROR: Checksum mismatch!" >&2
|
||||
echo " Expected: ${STORED_CHECKSUM}" >&2
|
||||
echo " Got: ${ACTUAL_CHECKSUM}" >&2
|
||||
echo " The bundle may be corrupted." >&2
|
||||
exit 1
|
||||
fi
|
||||
echo " Checksum OK: ${ACTUAL_CHECKSUM:0:16}..."
|
||||
|
||||
# ── Verify node count ──────────────────────────────────────────────────────────
|
||||
echo "Verifying node count..."
|
||||
ACTUAL_COUNT="$(python3 -c "
|
||||
import json
|
||||
with open('${NODES_FILE}') as f:
|
||||
d = json.load(f)
|
||||
nodes = d.get('nodes', d if isinstance(d, list) else [])
|
||||
print(len(nodes) if isinstance(nodes, list) else len(nodes))
|
||||
" 2>/dev/null || echo "unknown")"
|
||||
|
||||
echo " Found ${ACTUAL_COUNT} nodes (expected ${EXPECTED_COUNT})"
|
||||
|
||||
if [[ "$ACTUAL_COUNT" != "$EXPECTED_COUNT" && "$EXPECTED_COUNT" != "unknown" ]]; then
|
||||
echo "WARNING: Node count mismatch (expected ${EXPECTED_COUNT}, found ${ACTUAL_COUNT})." >&2
|
||||
echo " Proceeding anyway — count may differ if nodes were deduplicated." >&2
|
||||
fi
|
||||
|
||||
# ── Dry run exit ───────────────────────────────────────────────────────────────
|
||||
if [[ $DRY_RUN -eq 1 ]]; then
|
||||
echo ""
|
||||
echo "━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━"
|
||||
echo "DRY RUN complete. Bundle is valid."
|
||||
echo " Nodes: ${ACTUAL_COUNT}"
|
||||
echo " Checksum: verified"
|
||||
echo " Run without --dry-run to import."
|
||||
echo "━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━"
|
||||
exit 0
|
||||
fi
|
||||
|
||||
# ── Safety confirmation ────────────────────────────────────────────────────────
|
||||
echo ""
|
||||
echo "WARNING: This will replace your current Neuron memory store."
|
||||
echo " Current snapshot: $ENGRAM_SNAPSHOT"
|
||||
echo " A backup will be created before replacing."
|
||||
echo ""
|
||||
read -r -p "Type 'yes' to continue: " CONFIRM
|
||||
if [[ "$CONFIRM" != "yes" ]]; then
|
||||
echo "Aborted."
|
||||
exit 0
|
||||
fi
|
||||
|
||||
# ── Backup existing snapshot ───────────────────────────────────────────────────
|
||||
BACKUP_TIMESTAMP="$(date -u +"%Y%m%dT%H%M%SZ")"
|
||||
ENGRAM_DIR="$(dirname "$ENGRAM_SNAPSHOT")"
|
||||
BACKUP_PATH="${HOME}/.neuron/engram-backup-${BACKUP_TIMESTAMP}.tar.gz"
|
||||
|
||||
echo ""
|
||||
echo "Backing up current snapshot..."
|
||||
if [[ -f "$ENGRAM_SNAPSHOT" ]]; then
|
||||
(cd "$HOME/.neuron" && tar czf "$BACKUP_PATH" "$(basename "$ENGRAM_DIR")/snapshot.json" 2>/dev/null) || \
|
||||
cp "$ENGRAM_SNAPSHOT" "${ENGRAM_SNAPSHOT}.backup-${BACKUP_TIMESTAMP}"
|
||||
echo " Backup: $BACKUP_PATH"
|
||||
else
|
||||
echo " No existing snapshot to back up."
|
||||
fi
|
||||
|
||||
# ── Stop soul service ──────────────────────────────────────────────────────────
|
||||
echo "Stopping soul service (${SOUL_SERVICE})..."
|
||||
launchctl stop "$SOUL_SERVICE" 2>/dev/null || true
|
||||
# Also stop engram service if running
|
||||
launchctl stop "ai.neuron.engram" 2>/dev/null || true
|
||||
sleep 2
|
||||
echo " Soul stopped."
|
||||
|
||||
# ── Replace snapshot.json ──────────────────────────────────────────────────────
|
||||
echo "Installing new snapshot..."
|
||||
cp "$NODES_FILE" "$ENGRAM_SNAPSHOT"
|
||||
echo " snapshot.json replaced ($(du -sh "$ENGRAM_SNAPSHOT" | cut -f1))"
|
||||
|
||||
# ── Restart soul service ───────────────────────────────────────────────────────
|
||||
echo "Restarting soul service..."
|
||||
launchctl start "$SOUL_SERVICE" 2>/dev/null || true
|
||||
launchctl start "ai.neuron.engram" 2>/dev/null || true
|
||||
|
||||
# ── Wait for soul to come up ───────────────────────────────────────────────────
|
||||
echo "Waiting for soul to come up on port ${SOUL_PORT}..."
|
||||
ELAPSED=0
|
||||
SOUL_UP=0
|
||||
while [[ $ELAPSED -lt $SOUL_STARTUP_TIMEOUT ]]; do
|
||||
if curl -sf "http://localhost:${SOUL_PORT}/" > /dev/null 2>&1; then
|
||||
SOUL_UP=1
|
||||
break
|
||||
fi
|
||||
# Try a known endpoint that returns any response (even 404 means it's up)
|
||||
HTTP_CODE="$(curl -s -o /dev/null -w "%{http_code}" "http://localhost:${SOUL_PORT}/api/neuron/memory" 2>/dev/null || echo "000")"
|
||||
if [[ "$HTTP_CODE" != "000" ]]; then
|
||||
SOUL_UP=1
|
||||
break
|
||||
fi
|
||||
sleep 1
|
||||
ELAPSED=$((ELAPSED + 1))
|
||||
done
|
||||
|
||||
if [[ $SOUL_UP -eq 1 ]]; then
|
||||
echo " Soul is up (responded in ${ELAPSED}s)."
|
||||
else
|
||||
echo " WARNING: Soul did not respond within ${SOUL_STARTUP_TIMEOUT}s."
|
||||
echo " The service may still be starting. Check: launchctl list | grep soul"
|
||||
fi
|
||||
|
||||
# ── Final report ───────────────────────────────────────────────────────────────
|
||||
echo ""
|
||||
echo "━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━"
|
||||
echo "Import complete."
|
||||
echo " Nodes imported: ${ACTUAL_COUNT}"
|
||||
echo " Exported at: ${EXPORTED_AT}"
|
||||
echo " Source host: ${SOURCE_HOST}"
|
||||
echo " Backup: ${BACKUP_PATH}"
|
||||
echo "━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━"
|
||||
@@ -1,135 +0,0 @@
|
||||
#!/usr/bin/env bash
|
||||
# photo-to-memory.sh — OCR a document/photo and store the text in Neuron memory
|
||||
#
|
||||
# Uses GLM-OCR (0.9B, MIT) via mlx-vlm on Apple Silicon.
|
||||
# Model auto-downloads ~1.59 GB to ~/.cache/huggingface/ on first run.
|
||||
#
|
||||
# Usage:
|
||||
# ./tools/photo-to-memory.sh <image-file> [--dry-run] [--prompt "custom prompt"]
|
||||
#
|
||||
# Prerequisites:
|
||||
# pip install -U mlx-vlm
|
||||
#
|
||||
# Examples:
|
||||
# ./tools/photo-to-memory.sh ~/Desktop/receipt.jpg
|
||||
# ./tools/photo-to-memory.sh ~/Documents/contract.png --dry-run
|
||||
# ./tools/photo-to-memory.sh scan.jpg --prompt "Extract all text from this receipt"
|
||||
|
||||
set -euo pipefail
|
||||
|
||||
# ── Config ─────────────────────────────────────────────────────────────────────
|
||||
SOUL_URL="${SOUL_URL:-http://localhost:7770}"
|
||||
GLM_MODEL="${GLM_MODEL:-mlx-community/GLM-OCR-8bit}"
|
||||
MAX_TOKENS="${MAX_TOKENS:-4096}"
|
||||
DEFAULT_PROMPT="Extract all text from this document. Preserve structure including tables, headers, and lists. Output plain text."
|
||||
|
||||
# ── Colours ────────────────────────────────────────────────────────────────────
|
||||
RED=$'\033[0;31m'; GREEN=$'\033[0;32m'; YELLOW=$'\033[1;33m'
|
||||
CYAN=$'\033[0;36m'; BOLD=$'\033[1m'; RESET=$'\033[0m'
|
||||
|
||||
log() { printf "%s%s%s\n" "$CYAN" "$*" "$RESET"; }
|
||||
ok() { printf "%s✓ %s%s\n" "$GREEN" "$*" "$RESET"; }
|
||||
warn() { printf "%s⚠ %s%s\n" "$YELLOW" "$*" "$RESET"; }
|
||||
die() { printf "%s✗ %s%s\n" "$RED" "$*" "$RESET" >&2; exit 1; }
|
||||
|
||||
# ── Parse args ─────────────────────────────────────────────────────────────────
|
||||
IMAGE_PATH=""
|
||||
DRY_RUN=0
|
||||
CUSTOM_PROMPT=""
|
||||
|
||||
while [[ $# -gt 0 ]]; do
|
||||
case "$1" in
|
||||
--dry-run) DRY_RUN=1; shift ;;
|
||||
--prompt) CUSTOM_PROMPT="$2"; shift 2 ;;
|
||||
--model) GLM_MODEL="$2"; shift 2 ;;
|
||||
--help|-h)
|
||||
sed -n '2,15p' "$0" | sed 's/^# \{0,1\}//'
|
||||
exit 0
|
||||
;;
|
||||
-*) die "Unknown option: $1" ;;
|
||||
*)
|
||||
[[ -n "$IMAGE_PATH" ]] && die "Only one image file at a time"
|
||||
IMAGE_PATH="$1"
|
||||
shift
|
||||
;;
|
||||
esac
|
||||
done
|
||||
|
||||
[[ -z "$IMAGE_PATH" ]] && die "Usage: $0 <image-file> [--dry-run] [--prompt \"...\"]"
|
||||
[[ -f "$IMAGE_PATH" ]] || die "File not found: $IMAGE_PATH"
|
||||
|
||||
PROMPT="${CUSTOM_PROMPT:-$DEFAULT_PROMPT}"
|
||||
FILENAME=$(basename "$IMAGE_PATH")
|
||||
ABS_PATH=$(realpath "$IMAGE_PATH")
|
||||
|
||||
# ── Check runtime ───────────────────────────────────────────────────────────────
|
||||
if ! python3 -c "import mlx_vlm" 2>/dev/null; then
|
||||
warn "mlx-vlm not installed. Installing now..."
|
||||
pip install -q -U mlx-vlm || die "pip install mlx-vlm failed — run manually: pip install -U mlx-vlm"
|
||||
fi
|
||||
|
||||
# ── Run GLM-OCR ─────────────────────────────────────────────────────────────────
|
||||
log "Running GLM-OCR on: $FILENAME"
|
||||
log "Model: $GLM_MODEL"
|
||||
[[ "$DRY_RUN" -eq 1 ]] && warn "Dry-run mode — will not post to Neuron"
|
||||
|
||||
# GLM-OCR output goes to stdout; capture it
|
||||
# First run downloads ~1.59 GB — this is expected and cached thereafter.
|
||||
OCR_TEXT=$(python3 -m mlx_vlm.generate \
|
||||
--model "$GLM_MODEL" \
|
||||
--max-tokens "$MAX_TOKENS" \
|
||||
--temperature 0.0 \
|
||||
--prompt "$PROMPT" \
|
||||
--image "$ABS_PATH" \
|
||||
2>/dev/null) || die "GLM-OCR failed. Check that mlx-vlm is installed and the image is readable."
|
||||
|
||||
CHAR_COUNT=${#OCR_TEXT}
|
||||
log "OCR complete — extracted ${CHAR_COUNT} characters"
|
||||
|
||||
if [[ "$CHAR_COUNT" -lt 5 ]]; then
|
||||
warn "Very short output — the image may be blank or unreadable"
|
||||
fi
|
||||
|
||||
# ── Preview ─────────────────────────────────────────────────────────────────────
|
||||
printf "\n%s--- OCR output preview (first 400 chars) ---%s\n" "$BOLD" "$RESET"
|
||||
printf "%s\n" "${OCR_TEXT:0:400}"
|
||||
[[ "$CHAR_COUNT" -gt 400 ]] && printf "%s... [+%d more chars]%s\n" "$YELLOW" $((CHAR_COUNT - 400)) "$RESET"
|
||||
printf "\n"
|
||||
|
||||
# ── Post to Neuron soul ─────────────────────────────────────────────────────────
|
||||
if [[ "$DRY_RUN" -eq 1 ]]; then
|
||||
ok "Dry-run complete — would POST ${CHAR_COUNT} chars to ${SOUL_URL}/api/neuron/memory"
|
||||
exit 0
|
||||
fi
|
||||
|
||||
log "Posting to Neuron soul at ${SOUL_URL} ..."
|
||||
|
||||
PAYLOAD=$(python3 -c "
|
||||
import json, sys
|
||||
content = sys.argv[1]
|
||||
label = sys.argv[2]
|
||||
tags = ['photo-import', 'ocr', 'glm-ocr']
|
||||
print(json.dumps({'content': content, 'label': label, 'tags': tags}))
|
||||
" "$OCR_TEXT" "Photo: ${FILENAME}")
|
||||
|
||||
HTTP_STATUS=$(curl -s -o /tmp/photo-to-memory-response.json -w "%{http_code}" \
|
||||
-X POST "${SOUL_URL}/api/neuron/memory" \
|
||||
-H "Content-Type: application/json" \
|
||||
-d "$PAYLOAD")
|
||||
|
||||
if [[ "$HTTP_STATUS" =~ ^2 ]]; then
|
||||
NODE_ID=$(python3 -c "
|
||||
import json, sys
|
||||
try:
|
||||
d = json.load(open('/tmp/photo-to-memory-response.json'))
|
||||
print(d.get('id', d.get('node_id', 'unknown')))
|
||||
except Exception:
|
||||
print('unknown')
|
||||
")
|
||||
ok "Memory node created: ${NODE_ID}"
|
||||
ok "Label: Photo: ${FILENAME}"
|
||||
ok "Tags: photo-import, ocr, glm-ocr"
|
||||
else
|
||||
BODY=$(cat /tmp/photo-to-memory-response.json 2>/dev/null || echo "(no body)")
|
||||
die "Soul returned HTTP ${HTTP_STATUS}: ${BODY}"
|
||||
fi
|
||||
Reference in New Issue
Block a user