agent-memory-setup
by autosolutionsai-didac
Set up the full OpenClaw agent memory system with 3-tier memory (HOT/WARM/COLD), daily logs, semantic search (QMD), and lossless context management (Lossless Claw). Use when onboarding a new agent, setting up memory for a fresh OpenClaw instance, or when asked to install the memory system on a new agent. Triggers on "set up memory", "install memory system", "onboard new agent memory", "memory setup", "agent onboarding".
安装
claude skill add --url github.com/openclaw/skills/tree/main/skills/autosolutionsai-didac/agent-memory-setup文档
Agent Memory Setup
Set up a complete 3-tier memory system for any OpenClaw agent. Includes directory structure, memory files, semantic search, and context compaction.
What Gets Installed
- 3-tier memory structure (HOT → WARM → COLD)
- QMD — semantic search over MEMORY.md and memory/*.md files
- Lossless Claw — compacts old conversation into expandable summaries (prevents amnesia)
- AGENTS.md — instructions the agent reads every session to use the memory system
- openclaw.json config — enables memorySearch, compaction, context pruning, heartbeats
Setup Steps
Step 1: Run the setup script
bash scripts/setup_memory.sh /path/to/agent/workspace
This creates:
memory/,memory/hot/,memory/warm/directoriesmemory/hot/HOT_MEMORY.md(active session state)memory/warm/WARM_MEMORY.md(stable config & preferences)MEMORY.md(long-term archive)memory/YYYY-MM-DD.md(today's daily log)memory/heartbeat-state.json(heartbeat tracking)
It also checks for QMD and Lossless Claw, installing them if possible.
Step 2: Copy the AGENTS.md template
Read references/AGENTS_TEMPLATE.md and write it to the agent's workspace as AGENTS.md. Adapt the heartbeat section to the agent's domain if needed (e.g., a CFO agent checks costs, a marketing agent checks social metrics).
Step 3: Configure openclaw.json
Add to agents.defaults (or the specific agent config):
"memorySearch": { "provider": "local" },
"compaction": { "mode": "safeguard" },
"contextPruning": { "mode": "cache-ttl", "ttl": "1h" },
"heartbeat": { "every": "1h" }
Enable these plugins for the agent:
"session-memory": { "enabled": true },
"bootstrap-extra-files": { "enabled": true },
"lossless-claw": { "enabled": true }
Step 4: Restart and verify
openclaw gateway restart
Verify:
qmd --versionreturns a versionopenclaw plugin listshows lossless-claw- All memory directories and files exist
How the Tiers Work
| Tier | File | Purpose | Update Frequency |
|---|---|---|---|
| 🔥 HOT | memory/hot/HOT_MEMORY.md | Current task, pending actions | Every few turns |
| 🌡️ WARM | memory/warm/WARM_MEMORY.md | Stable preferences, API refs, gotchas | When things change |
| ❄️ COLD | MEMORY.md | Milestones, decisions, distilled lessons | Weekly/monthly |
Daily logs (memory/YYYY-MM-DD.md) capture raw session events. Periodically, the agent reviews daily logs and promotes important items up to COLD.
Plugin Details
- QMD: Local semantic search engine. Enables
memory_searchto find relevant memories by meaning, not just keywords. Install:pip install qmd - Lossless Claw (
@martian-engineering/lossless-claw): Instead of losing old messages when context fills up, compacts them into summaries that can be expanded back. Install:openclaw plugins install @martian-engineering/lossless-claw
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