memory

تایید شده

Complete memory system for OpenClaw agents. Combines behavioral protocol (when to save) + auto-capture (heartbeat-enforced) + keyword search (recall) + maintenance (consolidation). Use for persistent memory, context recovery, answering "what did we discuss about X", and surviving context compaction. Includes SESSION-STATE.md pattern for hot context and RECENT_CONTEXT.md for auto-updated highlights.

@openclaw
MIT۱۴۰۴/۱۲/۳
65از ۱۰۰
(0)
۱.۰k
۴۱۷
۴۹۲

نصب مهارت

مهارت‌ها کدهای شخص ثالث از مخازن عمومی GitHub هستند. SkillHub الگوهای مخرب شناخته‌شده را اسکن می‌کند اما نمی‌تواند امنیت را تضمین کند. قبل از نصب، کد منبع را بررسی کنید.

نصب سراسری (سطح کاربر):

npx skillhub install openclaw/skills/memory

نصب در پروژه فعلی:

npx skillhub install openclaw/skills/memory --project

مسیر پیشنهادی: ~/.claude/skills/memory/

بررسی هوش مصنوعی

کیفیت دستورالعمل62
دقت توضیحات62
کاربردی بودن68
صحت فنی70

Scored 65 for a solid 3-script memory system with clear protocol and templates. Main gaps: no error handling table, no negative triggers in description, and OpenClaw branding limits perceived generality despite generic functionality.

محتوای SKILL.md

---
name: memory
description: Complete memory system for OpenClaw agents. Combines behavioral protocol (when to save) + auto-capture (heartbeat-enforced) + keyword search (recall) + maintenance (consolidation). Use for persistent memory, context recovery, answering "what did we discuss about X", and surviving context compaction. Includes SESSION-STATE.md pattern for hot context and RECENT_CONTEXT.md for auto-updated highlights.
---

# Memory Skill

A complete memory system that actually works. Not just tools — a full protocol.

## The Problem

Agents forget. Context compresses. You wake up fresh each session. 

Most memory solutions give you tools but no protocol for WHEN to use them. You forget to remember.

## The Solution

**The Flow:**
```
User message → auto-capture (heartbeat) → relevant memories loaded (recall) → respond with context
```

**Three layers:**
1. **Protocol** — WHEN to save (on user input, not agent memory)
2. **Capture** — HOW to extract (automatic, timer-enforced)
3. **Recall** — HOW to find (keyword search with time decay)
4. **Maintenance** — HOW to prune (consolidation)

## Quick Setup

### 1. Copy templates to your workspace

```bash
cp skills/memory/references/SESSION-STATE.md ./
cp skills/memory/references/RECENT_CONTEXT.md ./
```

### 2. Add protocol to your AGENTS.md

Add this to your agent instructions:

```markdown
### 🔄 MEMORY PROTOCOL (MANDATORY)

**Before Responding to Context Questions:**
When user asks about past discussions, decisions, or preferences:
1. FIRST run: `python3 skills/memory/scripts/recall.py "user's question"`
2. READ the results (they're now in your context)
3. THEN respond using that context

**After Substantive Conversations:**
Run: `python3 skills/memory/scripts/capture.py --facts "fact1" "fact2"`

**Write-Ahead Log Rule:**
If user provides concrete detail (name, correction, decision), update SESSION-STATE.md BEFORE responding.
```

### 3. Add auto-capture to HEARTBEAT.md

```markdown
## Memory Auto-Capture (EVERY HEARTBEAT)
1. If meaningful conversation since last capture:
   - Run: `python3 skills/memory/scripts/capture.py --facts "fact1" "fact2"`
   - Update RECENT_CONTEXT.md with highlights
   - Update SESSION-STATE.md if task changed
```

## Commands

### Capture

Store facts from conversations:

```bash
# Specific facts (recommended)
python3 scripts/capture.py --facts "Bill prefers X" "Decided to use Y" "TODO: implement Z"

# Raw text (auto-extracts)
python3 scripts/capture.py "conversation text here"

# From file
python3 scripts/capture.py --file /path/to/conversation.txt
```

### Recall

Search memory for relevant context:

```bash
python3 scripts/recall.py "what did we decide about the database"
python3 scripts/recall.py --recent 7 "Bill's preferences"  # last 7 days only
```

Returns snippets with timestamps and relevance scores. Recent memories score higher.

### Consolidate

Run periodic maintenance:

```bash
python3 scripts/consolidate.py           # full consolidation
python3 scripts/consolidate.py --stats   # just show statistics
python3 scripts/consolidate.py --dry-run # preview without changes
```

Finds duplicates, identifies stale memories, suggests MEMORY.md updates.

## File Structure

```
your-workspace/
├── SESSION-STATE.md      # Hot context (active task "RAM")
├── RECENT_CONTEXT.md     # Auto-updated recent highlights
├── MEMORY.md             # Curated long-term memory
└── memory/
    ├── 2026-01-30.md     # Daily log
    ├── 2026-01-29.md     # Daily log
    └── topics/           # (optional) Category files
```

## SESSION-STATE.md Pattern

This is your "RAM" — the active task context that survives compaction.

```markdown
# SESSION-STATE.md — Active Working Memory

## Current Task
[What you're working on RIGHT NOW]

## Immediate Context
[Key details, decisions, corrections from this session]

## Key Files
[Paths to relevant files]

## Last Updated
[Timestamp]
```

**Read it FIRST** at every session start. Update it when task context changes.

## Fact Categories

Capture extracts facts with categories:

- `[decision]` — choices made
- `[preference]` — user likes/dislikes
- `[todo]` — action items
- `[insight]` — learnings
- `[important]` — flagged as critical
- `[note]` — general notes

## Limitations

- **Keyword search** — not semantic (LanceDB integration planned)
- **Behavioral component** — you still need to follow the protocol
- **No auto-injection** — recall results require you to call the script

## What Makes This Different

| Other Skills | Memory Skill |
|--------------|--------------|
| Tools only | Protocol + tools |
| Manual trigger | Heartbeat auto-capture |
| No templates | SESSION-STATE.md pattern |
| Just storage | Storage + search + maintenance |

## Roadmap

- [ ] LanceDB semantic search (local, no API)
- [ ] Auto-injection into context (OpenClaw integration)
- [ ] Contradiction detection
- [ ] Memory analytics

---

*Built by g1itchbot. Dogfooded on myself first.*