context-clean-up
Context Clean Up (audit-only)
This skill identifies what is bloating prompt context and turns it into a safe, reversible plan.
Contract
- Audit-only by default.
- No automatic deletions.
- No unattended config edits.
- No silent cron/session pruning.
- If you ask for changes, the skill should propose:
- exact change,
- expected impact,
- rollback plan,
- verification steps.
Safety model
- No
exectool usage. - No
readtool usage. - If you want file-level analysis, run the bundled script manually and paste the JSON.
Quick start
/context-clean-up→ audit + actionable plan (no changes)
Optional manual report generation:
python3 scripts/context_cleanup_audit.py --out context-cleanup-audit.json
Windows variant:
py -3 scripts/context_cleanup_audit.py --out context-cleanup-audit.json
What to measure (authoritative, not vibes)
When available, prefer fresh-session /context json receipts over subjective claims like “it feels leaner”.
High-signal fields:
eligible skillsskills.promptCharsprojectContextCharssystemPrompt.charspromptTokens
If exact receipts are unavailable, fall back to ranked offenders + change scope, but label confidence lower.
Common offender classes
-
Tool result dumps
- oversized
execoutput - large
readoutput - long
web_fetchpayloads
- oversized
-
Automation transcript noise
- cron jobs that say “OK” every run
- heartbeat messages that are not alert-only
-
Bootstrap reinjection bloat
- overgrown
AGENTS.md/MEMORY.md/SOUL.md/USER.md - long runbooks embedded directly in
SKILL.md
- overgrown
-
Ambient specialist surface
- too many always-visible specialist skills that should be on-demand workers/subagents instead
-
Summary accretion
- repeated summaries that keep historical detail instead of restart-critical facts only
Recommended trim ladder (lowest-risk first)
Phase 1 — Noise discipline
- Make no-op automation truly silent (
NO_REPLYor nothing on success). - Keep alerts out-of-band when possible.
Phase 2 — Bootstrap slimming
- Keep always-injected files short.
- Move long guidance to
references/,memory/, or external notes.
Phase 3 — Ambient surface reduction
- Remove low-frequency specialist skills from always-on prompt surface.
- Prefer worker/subagent invocation for specialist flows.
Phase 4 — Higher-risk changes
- Tool-surface or deeper runtime/config narrowing.
- Only propose with stronger rollback and explicit approval.
Workflow (audit → plan)
Step 0 — Determine scope
You need:
- workspace dir
- state dir (
<OPENCLAW_STATE_DIR>)
Common defaults:
- macOS/Linux:
~/.openclaw - Windows:
%USERPROFILE%\.openclaw
Step 1 — Run the audit script
python3 scripts/context_cleanup_audit.py --workspace . --state-dir <OPENCLAW_STATE_DIR> --out context-cleanup-audit.json
Interpretation cheatsheet:
- huge tool outputs → transcript bloat
- many cron/system lines → automation bloat
- large bootstrap docs → reinjection bloat
Step 2 — Produce a fix plan
Include:
- top offenders
- lowest-risk fixes first
- expected impact
- rollback notes
- verification plan
Step 3 — Verify
After changes:
- confirm automation is silent on success
- check context growth flattens
- if possible, compare fresh-session
/context jsonbefore/after
Important caveat
Many OpenClaw runtimes snapshot skills/bootstrap per session. So skill/config slimming often does not fully apply to the current session. Use a new session for authoritative verification.
References
references/out-of-band-delivery.mdreferences/cron-noise-checklist.md