| name | mnemon |
| description | Persistent memory CLI for LLM agents. Store facts, recall past knowledge, link related memories, manage lifecycle. |
| metadata | {"openclaw":{"emoji":"🧠","requires":{"bins":["mnemon"]},"install":[{"id":"brew","kind":"brew","formula":"mnemon-dev/tap/mnemon","bins":["mnemon"],"label":"Install mnemon (Homebrew)"},{"id":"go","kind":"go","package":"github.com/mnemon-dev/mnemon@latest","bins":["mnemon"],"label":"Install mnemon (go install)"}]}} |
mnemon
Install & Configure
1. Install the binary
Homebrew (macOS / Linux):
brew install mnemon-dev/tap/mnemon
Go install:
go install github.com/mnemon-dev/mnemon@latest
2. Set up OpenClaw integration
mnemon setup --target openclaw --yes
This single command deploys all components:
- Skill →
~/.openclaw/skills/mnemon/SKILL.md
- Hook →
~/.openclaw/hooks/mnemon-prime/ (agent:bootstrap — injects behavioral guide)
- Plugin →
~/.openclaw/extensions/mnemon/ (remind, nudge, compact hooks)
- Prompts →
~/.mnemon/prompt/ (guide.md, skill.md)
Restart the OpenClaw gateway to activate.
3. Customize (optional)
Edit ~/.mnemon/prompt/guide.md to tune recall/remember behavior.
Plugin hooks are configured in ~/.openclaw/openclaw.json:
{
"plugins": {
"entries": {
"mnemon": {
"enabled": true,
"config": {
"remind": true,
"nudge": true,
"compact": false
}
}
}
}
}
| Hook | Default | Description |
|---|
remind | on | Recall relevant memories + remind agent on each message |
nudge | on | Suggest remember sub-agent after each reply |
compact | off | Save key insights before context compaction |
4. Uninstall
mnemon setup --eject --target openclaw --yes
Workflow
- Remember:
mnemon remember "<fact>" --cat <cat> --imp <1-5> --entities "e1,e2" --source agent
- Diff is built-in: duplicates skipped, conflicts auto-replaced.
- Output includes
action (added/updated/skipped), semantic_candidates, causal_candidates.
- Link (evaluate candidates from step 1 — use judgment, not mechanical rules):
- Review
causal_candidates: does a genuine cause-effect relationship exist? causal_signal is regex-based and prone to false positives — only link if the memories are truly causally related.
- Review
semantic_candidates: are these memories meaningfully related? High similarity alone is not sufficient — skip candidates that share keywords but discuss unrelated topics.
- Syntax:
mnemon link <id> <candidate> --type <causal|semantic> --weight <0-1> [--meta '<json>']
- Recall:
mnemon recall "<query>" --limit 10
Commands
mnemon remember "<fact>" --cat <cat> --imp <1-5> --entities "e1,e2" --source agent
mnemon link <id1> <id2> --type <type> --weight <0-1> [--meta '<json>']
mnemon recall "<query>" --limit 10
mnemon search "<query>" --limit 10
mnemon import --dry-run <file>
mnemon import <file>
mnemon forget <id>
mnemon related <id> --edge causal
mnemon gc --threshold 0.4
mnemon gc --keep <id>
mnemon status
mnemon log
mnemon store list
mnemon store create <name>
mnemon store set <name>
mnemon store remove <name>
Import Historical Chats
When the user asks to import old chats, notes, or exported context, create a
memory_draft.json with schema_version: "1", insights entries containing
content, category, importance, tags, entities, and optional
created_at, plus optional edges using source_index, target_index,
edge_type, weight, and reason. Run mnemon import --dry-run <file>,
then run mnemon import <file> only after validation passes. After import,
verify with mnemon status and a focused mnemon search or mnemon recall.
Check the output errors field because imports can partially succeed.
Guardrails
- Use the
exec tool to run mnemon commands.
- Do not store secrets, passwords, or tokens.
- Categories:
preference · decision · insight · fact · context
- Edge types:
temporal · semantic · causal · entity
- Max 8,000 chars per insight.