skillopt-sleep
GitHub驱动本地Claude Agent在离线状态下进行自我优化。通过回顾历史会话、挖掘重复任务并离线重放,将学习成果安全地整合至记忆和技能文件中,提升Agent对特定用户工作的适应能力。
Trigger Scenarios
Install
npx skills add microsoft/SkillOpt --skill skillopt-sleep -g -y
SKILL.md
Frontmatter
{
"name": "skillopt-sleep",
"description": "Use when the user wants their Claude agent to self-improve from past usage, asks about a nightly\/offline 'sleep' or 'dream' cycle, memory\/skill consolidation, or says things like 'make my agent better the more I use it', 'review my past sessions', 'learn my preferences', 'consolidate what you learned', 'run the sleep cycle', or wants to schedule offline self-optimization. Drives the skillopt_sleep engine: harvest past sessions -> mine recurring tasks -> replay offline -> consolidate validated CLAUDE.md\/SKILL.md behind a held-out gate."
}
SkillOpt-Sleep: offline self-evolution for a local Claude agent
SkillOpt-Sleep gives the user's agent a sleep cycle. While the user is
offline (e.g. nightly), it reviews their real past Claude Code sessions,
re-runs recurring tasks on their own API budget, and consolidates what it
learns into memory (CLAUDE.md) and skills (SKILL.md) — but only
keeps changes that pass a held-out validation gate, and only after the user
adopts them. The agent gets measurably better at this user's recurring work,
with no model-weight training. It is the deployment-time analogue of training:
short-term experience → long-term competence.
It synthesizes three ideas:
- SkillOpt — the skill/memory doc is trainable text; bounded add/delete/replace edits; accepted only through a held-out gate; rejected edits become negative feedback.
- Claude Dreams — offline consolidation that reads past sessions and rebuilds memory (dedup/merge/resolve); the input is never mutated; output is reviewed then adopted.
- Agent sleep — periodic offline replay turns episodes into durable skill.
When to use this skill
Trigger when the user wants any of:
- "make my agent learn from how I use it" / "get better the more I use it" / "remember my preferences across sessions"
- a nightly/scheduled or on-demand offline self-improvement / dream / sleep run
- to review past sessions/trajectories and distill recurring tasks
- to consolidate feedback into
CLAUDE.mdor a managed skill - to schedule the cycle (cron) or adopt a staged proposal
The cycle (six stages)
- Harvest — read
~/.claude/projects/*/<session>.jsonl+~/.claude/history.jsonl(READ-ONLY) → session digests. - Mine — digests →
TaskRecords (recurring intents + outcome labels + checkable refs where possible). - Replay — re-run tasks offline under the current skill+memory → (hard, soft) scores.
- Consolidate — reflect on failures → propose bounded edits → gate on a held-out slice; accept only if it strictly improves.
- Stage — write
proposed_CLAUDE.md,proposed_SKILL.md, a diff, andreport.mdinto<project>/.skillopt-sleep/staging/<date>/. Nothing live changes. - Adopt — explicit (or opt-in auto): copy staged files over live ones, backing up first.
How to drive it
Prefer the /skillopt-sleep command. Under the hood it calls the bundled runner:
"${CLAUDE_PLUGIN_ROOT}/scripts/sleep.sh" status # what's happened
"${CLAUDE_PLUGIN_ROOT}/scripts/sleep.sh" dry-run --project "$(pwd)" # safe preview
"${CLAUDE_PLUGIN_ROOT}/scripts/sleep.sh" run --project "$(pwd)" # full cycle, stages a proposal
"${CLAUDE_PLUGIN_ROOT}/scripts/sleep.sh" adopt --project "$(pwd)" # apply staged proposal (with backup)
- Default backend is
mock(deterministic, no API spend) — good for trying the plumbing. - Add
--backend claudeor--backend codexto spend the user's real budget for genuine improvement. - Scope defaults to the invoked project;
--scope allharvests every project.
Scheduling
"${CLAUDE_PLUGIN_ROOT}/scripts/sleep.sh" schedule --project "$(pwd)" --hour 3 --minute 17
"${CLAUDE_PLUGIN_ROOT}/scripts/sleep.sh" unschedule --project "$(pwd)"
Installs a nightly cron entry. unschedule --all removes every managed entry.
All CLI flags
| Flag | Default | Description |
|---|---|---|
--project PATH |
cwd | Project directory to evolve |
--scope all|invoked |
invoked | Harvest scope |
--backend mock|claude|codex|copilot |
mock | Replay backend (mock = no API spend) |
--model NAME |
backend default | Override the model used for replay |
--source claude|codex|auto |
claude | Transcript source |
--lookback-hours N |
72 | Harvest window |
--max-sessions N |
unlimited | Cap harvested sessions |
--max-tasks N |
40 | Cap mined tasks |
--target-skill-path PATH |
auto | Explicit SKILL.md to evolve |
--tasks-file PATH |
— | Reviewed TaskRecord JSON (skip harvest) |
--progress |
off | Print phase progress to stderr |
--auto-adopt |
off | Auto-adopt if gate passes |
--edit-budget N |
4 | Max bounded edits per night |
--json |
off | Machine-readable JSON output |
Config keys (~/.skillopt-sleep/config.json)
Beyond the CLI flags, advanced behavior is controlled via config:
preferences— free-text house rules injected into the optimizer's reflect step (e.g. "Always use async/await", "Answers in\boxed{}").gate_mode—on(default, validation-gated) oroff(greedy, accept all edits).gate_metric—hard,soft, ormixed(default). Controls how the held-out gate scores.dream_rollouts— >1 enables multi-rollout contrastive reflection per task.recall_k— >0 recalls K similar past tasks into the dream (long-term memory).evolve_memory/evolve_skill— independently toggle CLAUDE.md vs SKILL.md consolidation.
Memory consolidation
The sleep cycle can consolidate both:
- SKILL.md — the managed skill file (bounded edits: add/delete/replace)
- CLAUDE.md — the project memory (same bounded edits)
Both are gated by the same held-out validation score. Set evolve_memory: false to consolidate only skills, or evolve_skill: false for only memory.
Hard rules
- Never hand-edit the user's
CLAUDE.md/SKILL.mdas part of this skill. Only theadoptaction changes live files, and it backs them up first. - Harvest is read-only.
mockreplay has no side effects. - Always show the user the held-out baseline → candidate score and the exact proposed edits before suggesting adoption. Evidence before adoption.
- If asked whether it really helps, run
python -m skillopt_sleep.experiments.run_experiment --persona researcher --json— a deterministic demo that proves held-out lift and that the gate blocks harmful edits.
Validate / demo
# deterministic proof (no API): held-out score rises, gate blocks regressions
python -m skillopt_sleep.experiments.run_experiment --persona researcher --assert-improves
python -m skillopt_sleep.experiments.run_experiment --persona programmer --assert-improves
See the SkillOpt-Sleep guide section for recorded output and
docs/superpowers/specs/2026-06-07-skillopt-sleep-claude-code-plugin-design.md
for the full design.
Version History
- e4ea6a6 Current 2026-07-05 20:21


