Openclaw-master-skills elite-longterm-memory
Ultimate AI agent memory system for Cursor, Claude, ChatGPT & Copilot. WAL protocol + vector search + git-notes + cloud backup. Never lose context again. Vibe-coding ready.
git clone https://github.com/LeoYeAI/openclaw-master-skills
T=$(mktemp -d) && git clone --depth=1 https://github.com/LeoYeAI/openclaw-master-skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/elite-longterm-memory" ~/.claude/skills/leoyeai-openclaw-master-skills-elite-longterm-memory && rm -rf "$T"
T=$(mktemp -d) && git clone --depth=1 https://github.com/LeoYeAI/openclaw-master-skills "$T" && mkdir -p ~/.openclaw/skills && cp -r "$T/skills/elite-longterm-memory" ~/.openclaw/skills/leoyeai-openclaw-master-skills-elite-longterm-memory && rm -rf "$T"
skills/elite-longterm-memory/SKILL.md- rm -rf on root/home
- dumps environment variables
- references .env files
- references API keys
Elite Longterm Memory 🧠
The ultimate memory system for AI agents. Combines 6 proven approaches into one bulletproof architecture.
Never lose context. Never forget decisions. Never repeat mistakes.
Architecture Overview
┌─────────────────────────────────────────────────────────────────┐ │ ELITE LONGTERM MEMORY │ ├─────────────────────────────────────────────────────────────────┤ │ │ │ ┌─────────────┐ ┌─────────────┐ ┌─────────────┐ │ │ │ HOT RAM │ │ WARM STORE │ │ COLD STORE │ │ │ │ │ │ │ │ │ │ │ │ SESSION- │ │ LanceDB │ │ Git-Notes │ │ │ │ STATE.md │ │ Vectors │ │ Knowledge │ │ │ │ │ │ │ │ Graph │ │ │ │ (survives │ │ (semantic │ │ (permanent │ │ │ │ compaction)│ │ search) │ │ decisions) │ │ │ └─────────────┘ └─────────────┘ └─────────────┘ │ │ │ │ │ │ │ └────────────────┼────────────────┘ │ │ ▼ │ │ ┌─────────────┐ │ │ │ MEMORY.md │ ← Curated long-term │ │ │ + daily/ │ (human-readable) │ │ └─────────────┘ │ │ │ │ │ ▼ │ │ ┌─────────────┐ │ │ │ SuperMemory │ ← Cloud backup (optional) │ │ │ API │ │ │ └─────────────┘ │ │ │ └─────────────────────────────────────────────────────────────────┘
The 5 Memory Layers
Layer 1: HOT RAM (SESSION-STATE.md)
From: bulletproof-memory
Active working memory that survives compaction. Write-Ahead Log protocol.
# SESSION-STATE.md — Active Working Memory ## Current Task [What we're working on RIGHT NOW] ## Key Context - User preference: ... - Decision made: ... - Blocker: ... ## Pending Actions - [ ] ...
Rule: Write BEFORE responding. Triggered by user input, not agent memory.
Layer 2: WARM STORE (LanceDB Vectors)
From: lancedb-memory
Semantic search across all memories. Auto-recall injects relevant context.
# Auto-recall (happens automatically) memory_recall query="project status" limit=5 # Manual store memory_store text="User prefers dark mode" category="preference" importance=0.9
Layer 3: COLD STORE (Git-Notes Knowledge Graph)
From: git-notes-memory
Structured decisions, learnings, and context. Branch-aware.
# Store a decision (SILENT - never announce) python3 memory.py -p $DIR remember '{"type":"decision","content":"Use React for frontend"}' -t tech -i h # Retrieve context python3 memory.py -p $DIR get "frontend"
Layer 4: CURATED ARCHIVE (MEMORY.md + daily/)
From: OpenClaw native
Human-readable long-term memory. Daily logs + distilled wisdom.
workspace/ ├── MEMORY.md # Curated long-term (the good stuff) └── memory/ ├── 2026-01-30.md # Daily log ├── 2026-01-29.md └── topics/ # Topic-specific files
Layer 5: CLOUD BACKUP (SuperMemory) — Optional
From: supermemory
Cross-device sync. Chat with your knowledge base.
export SUPERMEMORY_API_KEY="your-key" supermemory add "Important context" supermemory search "what did we decide about..."
Layer 6: AUTO-EXTRACTION (Mem0) — Recommended
NEW: Automatic fact extraction
Mem0 automatically extracts facts from conversations. 80% token reduction.
npm install mem0ai export MEM0_API_KEY="your-key"
const { MemoryClient } = require('mem0ai'); const client = new MemoryClient({ apiKey: process.env.MEM0_API_KEY }); // Conversations auto-extract facts await client.add(messages, { user_id: "user123" }); // Retrieve relevant memories const memories = await client.search(query, { user_id: "user123" });
Benefits:
- Auto-extracts preferences, decisions, facts
- Deduplicates and updates existing memories
- 80% reduction in tokens vs raw history
- Works across sessions automatically
Quick Setup
1. Create SESSION-STATE.md (Hot RAM)
cat > SESSION-STATE.md << 'EOF' # SESSION-STATE.md — Active Working Memory This file is the agent's "RAM" — survives compaction, restarts, distractions. ## Current Task [None] ## Key Context [None yet] ## Pending Actions - [ ] None ## Recent Decisions [None yet] --- *Last updated: [timestamp]* EOF
2. Enable LanceDB (Warm Store)
In
~/.openclaw/openclaw.json:
{ "memorySearch": { "enabled": true, "provider": "openai", "sources": ["memory"], "minScore": 0.3, "maxResults": 10 }, "plugins": { "entries": { "memory-lancedb": { "enabled": true, "config": { "autoCapture": false, "autoRecall": true, "captureCategories": ["preference", "decision", "fact"], "minImportance": 0.7 } } } } }
3. Initialize Git-Notes (Cold Store)
cd ~/clawd git init # if not already python3 skills/git-notes-memory/memory.py -p . sync --start
4. Verify MEMORY.md Structure
# Ensure you have: # - MEMORY.md in workspace root # - memory/ folder for daily logs mkdir -p memory
5. (Optional) Setup SuperMemory
export SUPERMEMORY_API_KEY="your-key" # Add to ~/.zshrc for persistence
Agent Instructions
On Session Start
- Read SESSION-STATE.md — this is your hot context
- Run
for relevant prior contextmemory_search - Check memory/YYYY-MM-DD.md for recent activity
During Conversation
- User gives concrete detail? → Write to SESSION-STATE.md BEFORE responding
- Important decision made? → Store in Git-Notes (SILENTLY)
- Preference expressed? →
with importance=0.9memory_store
On Session End
- Update SESSION-STATE.md with final state
- Move significant items to MEMORY.md if worth keeping long-term
- Create/update daily log in memory/YYYY-MM-DD.md
Memory Hygiene (Weekly)
- Review SESSION-STATE.md — archive completed tasks
- Check LanceDB for junk:
memory_recall query="*" limit=50 - Clear irrelevant vectors:
memory_forget id=<id> - Consolidate daily logs into MEMORY.md
The WAL Protocol (Critical)
Write-Ahead Log: Write state BEFORE responding, not after.
| Trigger | Action |
|---|---|
| User states preference | Write to SESSION-STATE.md → then respond |
| User makes decision | Write to SESSION-STATE.md → then respond |
| User gives deadline | Write to SESSION-STATE.md → then respond |
| User corrects you | Write to SESSION-STATE.md → then respond |
Why? If you respond first and crash/compact before saving, context is lost. WAL ensures durability.
Example Workflow
User: "Let's use Tailwind for this project, not vanilla CSS" Agent (internal): 1. Write to SESSION-STATE.md: "Decision: Use Tailwind, not vanilla CSS" 2. Store in Git-Notes: decision about CSS framework 3. memory_store: "User prefers Tailwind over vanilla CSS" importance=0.9 4. THEN respond: "Got it — Tailwind it is..."
Maintenance Commands
# Audit vector memory memory_recall query="*" limit=50 # Clear all vectors (nuclear option) rm -rf ~/.openclaw/memory/lancedb/ openclaw gateway restart # Export Git-Notes python3 memory.py -p . export --format json > memories.json # Check memory health du -sh ~/.openclaw/memory/ wc -l MEMORY.md ls -la memory/
Why Memory Fails
Understanding the root causes helps you fix them:
| Failure Mode | Cause | Fix |
|---|---|---|
| Forgets everything | disabled | Enable + add OpenAI key |
| Files not loaded | Agent skips reading memory | Add to AGENTS.md rules |
| Facts not captured | No auto-extraction | Use Mem0 or manual logging |
| Sub-agents isolated | Don't inherit context | Pass context in task prompt |
| Repeats mistakes | Lessons not logged | Write to memory/lessons.md |
Solutions (Ranked by Effort)
1. Quick Win: Enable memory_search
If you have an OpenAI key, enable semantic search:
openclaw configure --section web
This enables vector search over MEMORY.md + memory/*.md files.
2. Recommended: Mem0 Integration
Auto-extract facts from conversations. 80% token reduction.
npm install mem0ai
const { MemoryClient } = require('mem0ai'); const client = new MemoryClient({ apiKey: process.env.MEM0_API_KEY }); // Auto-extract and store await client.add([ { role: "user", content: "I prefer Tailwind over vanilla CSS" } ], { user_id: "ty" }); // Retrieve relevant memories const memories = await client.search("CSS preferences", { user_id: "ty" });
3. Better File Structure (No Dependencies)
memory/ ├── projects/ │ ├── strykr.md │ └── taska.md ├── people/ │ └── contacts.md ├── decisions/ │ └── 2026-01.md ├── lessons/ │ └── mistakes.md └── preferences.md
Keep MEMORY.md as a summary (<5KB), link to detailed files.
Immediate Fixes Checklist
| Problem | Fix |
|---|---|
| Forgets preferences | Add section to MEMORY.md |
| Repeats mistakes | Log every mistake to |
| Sub-agents lack context | Include key context in spawn task prompt |
| Forgets recent work | Strict daily file discipline |
| Memory search not working | Check is set |
Troubleshooting
Agent keeps forgetting mid-conversation: → SESSION-STATE.md not being updated. Check WAL protocol.
Irrelevant memories injected: → Disable autoCapture, increase minImportance threshold.
Memory too large, slow recall: → Run hygiene: clear old vectors, archive daily logs.
Git-Notes not persisting: → Run
git notes push to sync with remote.
memory_search returns nothing: → Check OpenAI API key:
echo $OPENAI_API_KEY
→ Verify memorySearch enabled in openclaw.json
Links
- bulletproof-memory: https://clawdhub.com/skills/bulletproof-memory
- lancedb-memory: https://clawdhub.com/skills/lancedb-memory
- git-notes-memory: https://clawdhub.com/skills/git-notes-memory
- memory-hygiene: https://clawdhub.com/skills/memory-hygiene
- supermemory: https://clawdhub.com/skills/supermemory
Built by @NextXFrontier — Part of the Next Frontier AI toolkit