Commit Graph

9 Commits

Author SHA1 Message Date
Yifan Yang
b02ffc2c99 refactor(sleep): decouple engine to top-level skillopt_sleep/ (zero research dep)
Open-source-tool / research-code separation:
  - git mv skillopt/sleep/ -> skillopt_sleep/ (top-level, sibling to the research
    skillopt/ package). History preserved as renames.
  - All imports skillopt.sleep.* -> skillopt_sleep.*.
  - Vendor the validation gate into skillopt_sleep/gate.py (a self-contained copy
    of skillopt.evaluation.gate). The engine now has ZERO dependency on the
    research package — verified: grep finds no `from skillopt.` in skillopt_sleep/,
    and consolidate's gate resolves to skillopt_sleep.gate.
  - Plugin scripts/commands/skill call `-m skillopt_sleep`.

29 tests pass; `python -m skillopt_sleep` runs standalone.

Co-Authored-By: Claude Opus 4 <noreply@anthropic.com>
2026-06-08 14:31:52 +00:00
Yifan Yang
a29201adc4 feat(sleep): multi-objective reward (accuracy/tokens/latency) + user preferences
- ReplayResult records per-rollout tokens + latency_ms; replay_one measures them
  (approximated from text length when the backend doesn't track tokens, e.g. mock).
- replay.multi_objective_reward(w_acc, w_tokens, w_latency): weighted reward so a
  skill can be optimized to be cheaper/faster, not only more accurate (cost terms
  normalized vs a reference, default = accuracy-only / backward compatible).
- Backend.preferences (free text) injected into reflect as a prior; build_backend
  attaches it (to the optimizer for dual backends). run_gbrain gains --preferences.

3 new tests (multi-objective ordering, preference injection, cost recording).
29 tests pass; mock gates + 3.8/3.12 compile green.

Co-Authored-By: Claude Opus 4 <noreply@anthropic.com>
2026-06-08 14:31:51 +00:00
Yifan Yang
77ac33e8bf feat(sleep): multi-rollout contrastive reflection + token/time budget
The "脑补推演" core the user described — re-run the same task many times and
learn from the contrast between good and bad rollouts:

  - rollout.py: multi_rollout(task, k) runs K scored attempts; RolloutSet exposes
    best/worst/spread/pass_rate. contrastive_reflect picks the highest-spread
    tasks (some attempts passed, some failed — most informative) and asks the
    optimizer what the GOOD attempts did that the BAD ones didn't, distilling a
    general rule. Far stronger signal than a single failure.
  - consolidate(rollouts_k>1) uses contrastive reflection (falls back to
    single-shot reflect if it yields nothing).
  - budget.py: Budget(max_tokens|max_minutes) tracks spend; plan_depth() derives
    (nights, rollouts_k) from a token budget. run_gbrain gains --rollouts-k,
    --budget-tokens, --budget-minutes (auto-plans depth).

3 new tests (rollout stats, budget+plan, contrastive stub). 26 tests pass.

Co-Authored-By: Claude Opus 4 <noreply@anthropic.com>
2026-06-08 14:31:51 +00:00
Yifan Yang
c179a24c45 feat(sleep): slow-update long-term memory field (runs even with gate off)
Bring SkillOpt's epoch-wise slow/meta update (paper §3.6) into the sleep engine
as skillopt/sleep/slow_update.py — import-light, driven through the Backend
abstraction (mock/claude/codex):

  - Reuses the main repo's protected-field markers
    <!-- SLOW_UPDATE_START --> ... <!-- SLOW_UPDATE_END --> so the artifact is
    compatible; step-level edits never touch this field.
  - run_slow_update compares behavior under the first-night vs final skill across
    the val tasks, groups into improved/regressed/persistent/stable, and asks the
    optimizer to distill durable longitudinal guidance (refining prior text).
  - Wired into run_gbrain.run_seed AFTER the nights loop, gated by slow_update=True
    and run REGARDLESS of gate_mode — this is what preserves long-term memory even
    when the user turns the hard gate OFF (the user's slot_date=slow-update intent).

2 new tests (protected-field round-trip, stub-backend synthesis). 23 tests pass.

Co-Authored-By: Claude Opus 4 <noreply@anthropic.com>
2026-06-08 14:31:51 +00:00
Yifan Yang
6f1351edb9 feat(sleep): 3-way train/val/test split + gate_mode on|off
Data-split refactor (the anti-overfitting foundation the user asked for):
  - TaskRecord gains split∈{train,val,test} and origin∈{real,dream}.
  - assign_splits: real tasks deterministically split into val/test (disjoint);
    DREAM-augmented tasks (origin='dream') NEVER enter val/test — they only go to
    train. val gates updates; test is the final held-out measure.
  - gbrain loader maps its held-out.jsonl -> test, benchmark.jsonl -> train/val,
    so the gbrain held-out stays the true final score.
  - consolidate(): train drives reflect, val gates; adds gate_mode='off' (greedy,
    no hard filter) reporting val movement (greedy_improved/regressed/flat).
  - run_gbrain/transfer/experiment score on test (val fallback); run_gbrain gains
    --gate on|off. Legacy replay/holdout names normalized.

New test proves dream tasks never land in val/test. 21 tests pass; mock
experiment + gate=off both green.

Co-Authored-By: Claude Opus 4 <noreply@anthropic.com>
2026-06-08 14:31:51 +00:00
Yifan Yang
937bc1ec4d feat(sleep): real tool-loop replay for gbrain quick-answerer (tool_called judge)
The 4th gbrain seed (quick-answerer) is judged by tool_called=search: the agent
must ACTUALLY call a search tool. Add an honest tool loop:

  - Backend.attempt_with_tools(task, skill, memory, tools) -> (response, tools_called)
  - Claude: exposes a real ./search shell shim, runs with --allowedTools Bash in a
    clean cwd; detects the call from the shim's log (not a self-reported marker).
  - Codex: same shim under `exec --sandbox workspace-write`.
  - Mock: deterministic — "calls" a tool iff skill/memory instructs it (for CI).
  - replay_one routes tasks with a tool_called check through the tool loop and
    feeds detected calls to the rule judge; ReplayResult gains tools_called.

Verified live (Claude haiku): deficient skill -> tools_called=[] hard=0;
learned "must run ./search" rule -> tools_called=['search'] hard=1.0.
20 tests pass.

Co-Authored-By: Claude Opus 4 <noreply@anthropic.com>
2026-06-08 14:31:51 +00:00
Yifan Yang
7d9900b6af feat(sleep): optimizer/target model split, transfer experiment, LLM miner
Three additions driven by the goal of price-aware, model-flexible sleep:

1. DualBackend + build_backend(): route attempt->TARGET model and
   reflect/judge->OPTIMIZER model (SkillOpt's target-vs-optimizer split).
   gbrain runner gains --optimizer-backend/-model + --target-backend/-model.

2. run_transfer.py: sleep-scenario cross-model transfer. Optimize a skill on a
   SOURCE model (e.g. cheap haiku), freeze it, evaluate held-out on a TARGET
   model (e.g. expensive sonnet) with no further optimization — plus a direct
   reference. Mirrors the SkillOpt paper's transfer table; quantifies the
   "optimize cheap overnight, deploy anywhere" value prop.

3. llm_miner.py: turn real harvested transcripts into TaskRecords WITH checkable
   rule/rubric judges, wired into the cycle for non-mock backends, so real-data
   lift becomes measurable (heuristic miner remains the no-API fallback).
   Fixed a str.format brace bug the new unit test caught.

19 tests pass.

Co-Authored-By: Claude Opus 4 <noreply@anthropic.com>
2026-06-08 14:31:51 +00:00
Yifan Yang
4203086899 feat(sleep): real claude + codex backends, gbrain-evals benchmark, rule judges
Upgrade from mock-only to REAL multi-backend validation:

Backends (skillopt/sleep/backend.py):
  - CliBackend base: shared attempt/judge/reflect prompts, response cache,
    token accounting. Subclasses implement only _call().
  - ClaudeCliBackend: drives `claude -p --output-format text`.
  - CodexCliBackend: drives the REAL @openai/codex `exec -o <file>` for clean
    output; resolve_codex_path() skips the hermes wrapper at ~/.local/bin/codex.
  - reflect() now aggregates the exact failing judge criteria into the prompt
    (gbrain's lesson: tell the optimizer what the scorer rewards).

Rule judges (skillopt/sleep/judges.py): gbrain-compatible local scorers
  (section_present / regex / max_chars / contains / tool_called) — held-out
  scoring with no judge-API spend. TaskRecord gains a `judge` field +
  reference_kind="rule".

gbrain-evals adapter (experiments/gbrain_bench.py, run_gbrain.py): load
  garrytan/gbrain-evals skillopt-v1 deficient skills + train/held-out task
  sets and run our consolidate() loop against the SAME suite gbrain scores.

REAL results (docs/sleep/real_api_results.md), brief-writer seed, 1 night:
  - Claude (Haiku): held-out 0.00 -> 1.00
  - Codex:          held-out 0.00 -> 0.67
  Both proposed a correct, general format rule into the protected LEARNED block.

CLI: --backend {mock,claude,codex}, --codex-path, --model; experiment +
gbrain runners gain --limit-* cost controls. 17 tests pass.

Co-Authored-By: Claude Opus 4 <noreply@anthropic.com>
2026-06-08 14:31:51 +00:00
Yifan Yang
4e7add899d feat(sleep): nightly offline self-evolution engine + Claude Code plugin
Add skillopt/sleep — a deployment-time companion to SkillOpt that gives a
local Claude agent a nightly "sleep cycle":

  harvest ~/.claude transcripts -> mine recurring tasks -> replay offline
    -> consolidate (reflect -> bounded edit -> held-out GATE) -> stage -> adopt

Synthesizes SkillOpt (validation-gated bounded text optimization, reusing
skillopt.evaluation.gate verbatim), Claude Dreams (offline consolidation;
input never mutated; review-then-adopt), and the agent-sleep paper
(short-term experience -> long-term competence).

Engine (skillopt/sleep/, import-light, py>=3.10):
  - harvest.py   read-only parse of session JSONL + history.jsonl
  - mine.py      sessions -> TaskRecords (heuristic miner + LLM hook)
  - backend.py   MockBackend (deterministic, no API) + AnthropicBackend
  - replay.py    offline re-run -> (hard, soft) scores
  - consolidate.py  one SkillOpt epoch behind a held-out gate
  - memory.py    protected-region edits to SKILL.md / CLAUDE.md
  - staging.py   stage proposals; adopt with backup (Dreams safety contract)
  - cycle.py + __main__.py  orchestrator + CLI (run/dry-run/status/adopt/harvest)

Plugin (skillopt-sleep-plugin/): plugin.json, /sleep command, skillopt-sleep
skill, SessionEnd hook, bundled runner + cron generator.

Validation (deterministic, no API): persona experiment proves held-out lift
(researcher 0.33->1.0, programmer 0.32->1.0) AND that the gate rejects an
injected harmful edit. 13 stdlib-unittest tests pass, incl. full cycle +
adopt-with-backup and parsing of real on-disk transcripts.

Co-Authored-By: Claude Opus 4 <noreply@anthropic.com>
2026-06-08 14:31:51 +00:00