enhanced-memory

An enhanced memory system for OpenClaw agents that replaces the default single-file MEMORY.md with a complete memory architecture: hierarchical directory organization by category, [category:value] tag indexing with multi-tag AND search, automatic lifecycle management (active → archive, never delete), and intelligent cross-category retrieval that auto-routes queries to the right memory module. Gives your agent structured, searchable, long-lived memory out of the box.

Safety Notice

This listing is from the official public ClawHub registry. Review SKILL.md and referenced scripts before running.

Copy this and send it to your AI assistant to learn

Install skill "enhanced-memory" with this command: npx skills add fatcatmaofei/openclaw-enhanced-memory

Enhanced Memory

A structured memory system that gives your OpenClaw agent organized, searchable, long-lived memory instead of a single monolithic MEMORY.md.

Why?

The default MEMORY.md approach hits a wall fast:

  • One file grows endlessly → slow to read, expensive on tokens
  • No categorization → food logs mixed with project notes mixed with relationship context
  • No retrieval strategy → agent re-reads everything or misses what matters
  • No lifecycle → old entries clutter active memory forever

Tagged Memory fixes all of this.

Core Features

1. Hierarchical Directory Organization

Memories are stored in purpose-built directories:

memory/
├── current/          # Active memories (last 6 months)
├── archived/         # Auto-archived older memories (permanent, never deleted)
│   └── YYYY-MM/      # Organized by month
├── RELATION/         # One file per person (relationship context)
├── food/             # Meal and food logs
├── training/         # Exercise and workout records
├── connections.md    # Global relationship graph
├── system/           # System config and logs
└── misc/             # Everything else

2. Tag-Based Indexing

Tag any line in any memory file with [category:value] markers:

## 2026-02-20

- Had lunch with Zhang Hao [人物:张浩东] [类型:聚餐] [地点:campus]
- Discussed the new project deadline [项目:openclaw] [类型:会议]
- Yoyo learned a new trick today [宠物:悠悠] [类型:milestone]

Tags support multi-tag AND search — find the exact memory you need:

# Single tag search
python3 scripts/memory_tag_search.py "人物:张浩东"

# Multi-tag AND search (all tags must match)
python3 scripts/memory_tag_search.py "人物:王隆哲" "类型:开票信息"

# List all tags in the system
python3 scripts/memory_tag_search.py --list-tags

# List tags under a specific category
python3 scripts/memory_tag_search.py --list-tags --category 人物

3. Lifecycle Management

Memories age gracefully — never lost, always accessible:

AgeLocationStatus
0–6 monthsmemory/current/Active, auto-retrieved
6–12 monthsmemory/archived/YYYY-MM/Archived, searchable on demand
12+ monthsmemory/archived/Permanent archive, manual query

Run the lifecycle manager manually or via cron:

# Default: archive memories older than 6 months
python3 scripts/memory_lifecycle_manager.py

# Custom threshold (e.g., 90 days)
python3 scripts/memory_lifecycle_manager.py 90

4. Smart Cross-Category Retrieval

The retrieval strategy script auto-classifies queries and searches the right directories:

python3 scripts/memory_retrieval_strategy.py "What did I eat yesterday?"
# → Searches memory/food/ + memory/current/

python3 scripts/memory_retrieval_strategy.py "How is Yoyo doing?"
# → Searches memory/RELATION/悠悠.md + memory/connections.md

python3 scripts/memory_retrieval_strategy.py "Yang Lingxiao"
# → Searches memory/RELATION/ + memory/connections.md

Query type detection covers: food, training, relationships, pets, system, mood, projects, and more.

Scripts

ScriptPurpose
scripts/memory_tag_search.pyTag-based indexing and search (single/multi-tag AND queries, tag listing)
scripts/memory_retrieval_strategy.pySmart retrieval — auto-classifies queries and routes to relevant memory directories
scripts/memory_lifecycle_manager.pyAutomatic archival of old memories (configurable threshold, never deletes)

Integration

AGENTS.md

Add the following to your AGENTS.md memory section:

## Memory

### Directory Structure
- `memory/current/` — active memories (6 months)
- `memory/archived/` — permanent archive
- `memory/RELATION/` — per-person relationship files
- `memory/food/` — meal logs
- `memory/training/` — workout logs

### Retrieval Strategy
- Exact queries (names, dates, codes) → `grep` the file system
- Fuzzy/semantic queries → `python3 scripts/memory_retrieval_strategy.py "<query>"`
- Tag search → `python3 scripts/memory_tag_search.py "<category>:<value>"`

### Tagging Convention
When writing memory entries, tag important lines:
  [人物:name] [类型:type] [地点:place] [项目:project] [情绪:mood]

HEARTBEAT.md

Add periodic memory maintenance to your heartbeat checklist:

## Memory Maintenance (every few days)
- [ ] Run `python3 scripts/memory_lifecycle_manager.py` to archive old memories
- [ ] Run `python3 scripts/memory_tag_search.py --list-tags` to review tag health
- [ ] Check `memory/current/` file count — if growing large, verify archival is running

Cron (optional)

Set up monthly auto-archival:

# Run on the 1st of every month at 03:00
0 3 1 * * cd /path/to/workspace && python3 scripts/memory_lifecycle_manager.py

Customization

  • Archive threshold: Edit ARCHIVE_THRESHOLD_DAYS in memory_lifecycle_manager.py (default: 180 days)
  • Query patterns: Add new regex patterns to QUERY_TYPES in memory_retrieval_strategy.py
  • Memory directories: Add new modules to MODULES_TO_ARCHIVE in memory_lifecycle_manager.py
  • Tag categories: Tags are freeform — just use [category:value] in any .md file

Requirements

  • Python 3.8+
  • No external dependencies (stdlib only)

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

Related Skills

Related by shared tags or category signals.

Automation

database-specialist

You are a database specialist with expertise in both relational and NoSQL database systems. Use when: relational databases, nosql databases, database design,...

Registry SourceRecently Updated
Automation

Snaplii AI Agent Cashback Payment

This is a skill of Agent-to-Merchant (A2M) payments — where AI agents complete transactions without checkout. Snaplii uses pre-funded gift cards as a payment...

Registry SourceRecently Updated
Automation

deployment-engineer

Expert deployment engineer specializing in CI/CD pipelines, release automation, and deployment strategies. Masters blue-green, canary, and rolling deployment...

Registry SourceRecently Updated
Automation

Almured Connection

Agent-to-agent consultation marketplace via MCP. Ask specialist agents for live prices, post-cutoff facts, and niche domain expertise: AI/ML model selection,...

Registry SourceRecently Updated