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hypatia-memory
Automatic memory extraction and management for hypatia knowledge graph
Instalar con Codex o Claude Copia este prompt, pégalo en Codex, Claude u otro asistente, y deja que revise la página de la skill y la instale por ti.
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Automatic memory extraction and management for hypatia knowledge graph
Instalar con Codex o Claude Copia este prompt, pégalo en Codex, Claude u otro asistente, y deja que revise la página de la skill y la instale por ti.
Basado en la clasificación ocupacional SOC
| name | hypatia-memory |
| description | Automatic memory extraction and management for hypatia knowledge graph |
| user-invocable | false |
| allowed-tools | Bash, Read, Grep, Glob |
You are an automatic memory management system built on hypatia. Your job is to:
All layers run in the same hook invocations; conversation logging always runs first.
This skill is activated via hooks in ~/.claude/settings.json (or Cursor equivalent):
| Hook Event | When | Output Signal | AI Response |
|---|---|---|---|
UserPromptSubmit | Every user message | TRIGGER:log | Record user message + check summary cascade + optional semantic extract |
UserPromptSubmit | Every user message (if remember/forget) | TRIGGER:immediate | Explicit remember/forget (semantic layer) |
UserPromptSubmit | Every 5 turns | TRIGGER:extract | Scan for completed work units (semantic layer) |
Stop / assistant turn hook | Session end or each assistant reply | TRIGGER:log | Record assistant message + check summary cascade |
Stop | Session ending | TRIGGER:session-end | Record session summary if available + final semantic extract pass |
On every TRIGGER:log: always execute Conversation Logging Protocol first.
If the hook outputs nothing (no trigger), no action is needed.
When a new session begins, load relevant rules and taboos:
basename of the git root or CWD)# Load project-specific and global rules
hypatia query '["$knowledge", ["$contains", "tags", "rule"], ["$or", ["$contains", "scopes", "<PROJECT>"], ["$contains", "scopes", ""]]]'
# Load project-specific and global taboos
hypatia query '["$knowledge", ["$contains", "tags", "taboo"], ["$or", ["$contains", "scopes", "<PROJECT>"], ["$contains", "scopes", ""]]]'
This protocol runs on every user and assistant message (TRIGGER:log). It is independent of semantic work-unit extraction.
Resolve from hook context when available; otherwise derive:
| Field | Source |
|---|---|
<PROJECT> | basename of git root or CWD |
<SESSION_ID> | Hook session_id, Cursor conversation_id, or stable hash of transcript path |
<TURN> | Monotonic turn counter within session (increment per logged message) |
<ROLE> | user or assistant |
Every conversational turn becomes one knowledge entry.
hypatia knowledge-create "msg-<SESSION_ID>-<TURN>" \
-d "## Role
<ROLE>
## Timestamp
<ISO-8601>
## Content
<full message text>" \
--tags "message" \
--scopes "<PROJECT>"
Rules:
message (no role tag; use content to determine role).msg-<SESSION_ID>-<TURN>.If the hook or environment provides a session-level summary (e.g. compaction summary, session title, or end-of-session digest):
hypatia knowledge-create "session-<SESSION_ID>" \
-d "<session summary text>" \
--tags "session" \
--scopes "<PROJECT>"
session-<SESSION_ID> when new summary text arrives (prefer knowledge-update if entry exists).When both msg-<SESSION_ID>-<TURN> and session-<SESSION_ID> exist:
hypatia statement-create "msg-<SESSION_ID>-<TURN>" "belongTo" "session-<SESSION_ID>" \
--scopes "<PROJECT>"
Predicate is exactly belongTo (message → session).
After writing each new message, run the cascade from level 1 upward.
Constants: BATCH_SIZE = 16 (for L2+)
Predicate: All summary triples use predicate summary.
| Triple | Meaning |
|---|---|
<summary-name> summary <item-name> | Summary condenses the item |
| Level | Tag | Triggers when | Summarizes |
|---|---|---|---|
| 1 | ["summary", "summary 1"] | Token count ≥ max_tokens × 0.9 | message entries |
| 2 | ["summary", "summary 2"] | Count ≥ 16 unlinked L1 | summary 1 entries |
| N | ["summary", "summary N"] | Count ≥ 16 unlinked L(N-1) | summary (N-1) entries |
Token-based L1 threshold:
max_tokens depends on the model in use (e.g. GLM-5.1: 200k, DeepSeek V4 Pro: 1M).Context compression trigger:
settings.max_token × 0.9, also trigger summary generation and start a new session. This is independent of the L1 count/trigger — it's an emergency compression.Use $not-summaried (native JSE operator with LEFT JOIN):
hypatia query '["$not-summaried", "<TAG>", ["$contains", "scopes", "<PROJECT>"]]'
Or use the shorthand:
hypatia session-current --scope <PROJECT>
| Level | <TAG> |
|---|---|
| 1 | message |
| 2 | summary 1 |
| N | summary (N-1) |
Results are sorted oldest first (ASC). For L1: count tokens (estimate chars/4). For L2+: take first 16 if count ≥ 16.
When a batch is ready at level L:
hypatia knowledge-create "<extracted-summary-name>" \
-d "<synthesized summary markdown>" \
--tags "summary,summary <L>" \
--scopes "<PROJECT>"
summary,summary <L> where L is the level number.hypatia statement-create "<summary-name>" "summary" "<item-name>" \
--scopes "<PROJECT>"
Run one statement-create per item in the batch.
After creating a level-L summary, re-run step 4a for level L+1 (the new summary may complete another batch at the next tier).
Stop when a level has fewer than the required threshold — do not partially summarize.
When submitting a conversation to the AI API, construct the messages list as:
[system_prompt, uncompressed_messages..., reference_info, latest_user_input]
System prompt: Constructed using the existing logic (rules, taboos, project context).
Uncompressed messages: The current set of messages that have not been summarized. Query with:
hypatia query '["$not-summaried", "message", ["$contains", "scopes", "<PROJECT>"]]'
Reference info: Analyze the user's latest input — do NOT use it verbatim as a search query. Instead:
["$not-summaried", "message", ["$contains", "scopes", "<PROJECT>"]] + filter in reasoning["$knowledge", ["$search", "<derived keywords>"]]["$knowledge", ["$similar", "<conceptual query>"]]["$statement", ["$triple", "<entity>", "$*", "$*"]]## Reference Information
The following relevant context was retrieved from the knowledge base:
1. <entry-name>: <summary or key content>
2. <entry-name>: <summary or key content>
...
Latest user input: Always the most recent user message, placed last.
After receiving the response: Save the assistant's response as a new message in the conversation history.
This layer extracts insights (rules, taboos, work units). It does not replace conversation logging.
When receiving TRIGGER:extract:
[hypatia-memory] Work unit still in progress, nothing extracted. and stop (logging still completed in Step 1)For TRIGGER:session-end:
When a completed work unit is detected:
Skip short or insubstantial segments (greetings, single-line acknowledgments like "thanks" or "ok").
| Pattern | Signature | Extraction Strategy |
|---|---|---|
| One-shot correct | Question → correct answer, no back-and-forth | Extract Q+A directly |
| Correction chain | Question → answer → user correction → fix → ... | Synthesize: initial Q + each correction + final answer |
| Exploration | Open-ended discussion without single "correct" answer | Extract key findings, decisions, rationale |
| Bug fix | Bug report → investigation → root cause → fix | Extract: symptoms, root cause, fix approach |
| Design decision | Tradeoff discussion → decision → rationale | Extract: options considered, decision, why |
| Trivial | Greeting, chitchat, simple factual lookup | Skip — not worth remembering |
For one-shot correct:
Title: <topic-slug>
Content:
## Context
<1 line summary>
## Solution
<the answer or approach>
## Key Detail
<non-obvious detail>
For correction chains:
Title: <topic-slug>
Content:
## Context
## Initial Attempt
## Why It Was Wrong
## Correct Approach
## Lesson
Synthesis rules:
Arc<Mutex<T>>" is good. "Use proper synchronization" is useless.What to include: technical decisions, non-obvious solutions, error patterns, design patterns, user preferences, project conventions.
What to discard: full debug logs, temporary paths, verbose tool outputs, repetitive retries, "thank you"/"ok" exchanges.
hypatia knowledge-create "wu-<date>-<slug>" \
-d "<synthesized content>" \
--tags "memory,work-unit,<topic-tags>" \
--scopes "<PROJECT>"
hypatia statement-create "wu-<date>-<slug>" "is_a" "work-unit" \
--scopes "<PROJECT>"
Optionally link to conversation graph:
hypatia statement-create "wu-<date>-<slug>" "derivedFrom" "msg-<SESSION_ID>-<TURN>"
Before storing, check for similar knowledge:
hypatia search "<keywords>" --limit 5 -c knowledge
supersedes statementextends statementWhen the user explicitly asks to remember or forget:
rule, taboo, or general memoryhypatia knowledge-create "<name>" \
-d "<content>" \
--tags "memory,<type>" \
--scopes "<PROJECT>,<optional-global>"
is_a statement and relationship statementshypatia search "<topic>" --limit 10message / summary entries if full erasure)For conversation logging:
[hypatia-memory] Logged msg-abc-042. Cascade: +1 summary 1 (token threshold).
For work unit extraction:
[hypatia-memory] Extracted 2 work units (1 one-shot, 1 correction-chain), skipped 1 trivial.
wu-2026-05-10-sort-function → memory,work-unit,rust
For immediate operations:
[hypatia-memory] Stored: "rule:prefer-immutable-patterns" (rule, scoped to my-project).
For forget operations:
[hypatia-memory] Removed 1 entry and 2 relationships.
When nothing to extract (semantic only):
[hypatia-memory] Work unit still in progress, nothing extracted.
message, session, summary <N>, memory, work-unit, rule, taboo--scopes "<PROJECT>"; global rules use ""session-<SESSION_ID> (tags: session)
↑ belongTo
msg-<SESSION_ID>-<TURN> (tags: message)
<summary-name> (tags: summary, summary 1)
↓ summary (×batch)
msg-...
<summary-name> (tags: summary, summary 2)
↓ summary (×16)
<summary-name>... (tags: summary, summary 1)
wu-<date>-<slug> (tags: memory, work-unit) ← semantic layer, optional derivedFrom → msg-*