microsoft/SkillOpt
Python
Captured source
source ↗microsoft/SkillOpt
Description: SkillOpt is a text-space optimizer that trains reusable natural-language skills for frozen LLM agents through trajectory-driven edits, validation-gated updates, and deployable best_skill.md artifacts.
Language: Python
License: MIT
Stars: 5669
Forks: 559
Open issues: 8
Created: 2026-05-08T06:41:01Z
Pushed: 2026-06-10T14:06:28Z
Default branch: main
Fork: no
Archived: no
README:
SkillOpt: Executive Strategy for Self-Evolving Agent Skills
*Train agent skills like you train neural networks — with epochs, (mini-)batchsize, learning rates, and validation gates — but without touching model weights.*
> 📖 For installation, data preparation, training/eval commands, the full configuration reference, and framework internals, see the [Documentation & Reproduction Guide](docs/guideline.html) — view it rendered online or via GitHub Pages.
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News 🔥🔥🔥
- [2026-06-08] 😴 SkillOpt-Sleep is here — plugins for Claude Code, Codex, and Copilot. Give your local coding agent a nightly *sleep cycle*: it reviews your past sessions offline, replays your recurring tasks, and consolidates validated long-term memory + skills behind a held-out gate, so it gets better the more you use it. Validated on the public gbrain-evals
skillopt-v1benchmark with real Claude and Codex (deficient skills 0.00 → 1.00 on held-out, all 4 seeds). It's an open-source tool decoupled from the paper code. See [plugins/](plugins/) and the [SkillOpt-Sleep section](#-skillopt-sleep--the-deployment-time-companion) below. - [2026-06-03] 🎉 [gbrain](https://github.com/garrytan/gbrain), [gbrain-evals](https://github.com/garrytan/gbrain-evals/blob/main/docs/benchmarks/2026-06-03-skillopt.md), and [darwin-skill](https://github.com/alchaincyf/darwin-skill) have all integrated SkillOpt.
- [2026-06-02] 🎉 SkillOpt [v0.1.0](https://github.com/microsoft/SkillOpt/releases/tag/v0.1.0) is now available on [PyPI](https://pypi.org/project/skillopt/)! Install with
pip install skillopt. This initial release includes the full training loop (rollout → reflect → aggregate → select → update → evaluate), multi-backend support (OpenAI / Azure / Claude / Qwen / MiniMax), six built-in benchmarks, and WebUI dashboard.
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Overview
Modern agent skills are usually hand-crafted, generated one-shot by a strong LLM, or evolved through loosely controlled self-revision — none of which behaves like a deep-learning optimizer for the skill itself, and none of which reliably improves over its starting point under feedback.
SkillOpt treats the skill document as the trainable state of a frozen agent, and trains it with the discipline that makes weight-space optimization reproducible. A separate optimizer model turns scored rollouts into bounded add / delete / replace edits on a single skill document; a candidate edit is accepted only when it strictly improves a held-out validation score. A textual learning-rate budget, a rejected-edit buffer, and an epoch-wise slow / meta update make skill training stable while adding zero inference-time model calls at deployment.
The deployed artifact is a compact best_skill.md (typically 300–2,000 tokens) that runs against the unchanged target model. Across six benchmarks, seven target models, and three execution harnesses (direct chat, Codex CLI, Claude Code CLI), SkillOpt is best or tied-best on all 52 evaluated (model, benchmark, harness) cells and on GPT-5.5 lifts the average no-skill accuracy by +23.5 points in direct chat, +24.8 inside the Codex agentic loop, and +19.1 inside Claude Code. Optimized skill artifacts transfer across model scales, between Codex and Claude Code harnesses, and to nearby benchmarks without further optimization.
For the full method, ablations, and per-cell results see the paper; for a visual walkthrough of the loop see the project page; for deeper API / backend / benchmark docs see [docs/](docs/).
🎬 Demo Video
https://github.com/user-attachments/assets/eb12d3bc-371c-467f-904d-91b61f339ed7
▶ Watch the full demo on YouTube
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😴 SkillOpt-Sleep — the deployment-time companion
SkillOpt (above) trains a skill offline on a benchmark. SkillOpt-Sleep applies the same discipline to *your own daily usage*: it gives a local coding agent a nightly sleep cycle that reviews your past sessions, replays your recurring tasks on your own API budget, and consolidates what it learns into validated long-term memory and skills — behind a held-out gate, staged for your review. The agent gets better the more you use it, with no weight training.
It synthesizes SkillOpt (validation-gated bounded text edits), Claude Dreams (offline consolidation; review-then-adopt), and the agent sleep idea (short-term experience → long-term competence). One "night":
harvest session transcripts → mine recurring tasks → replay offline → consolidate (reflect → bounded edit → GATE on real held-out tasks) → stage proposal → (you) adopt
Plugins for three agents (one engine, three thin shells — see [plugins/](plugins/)):
| Platform | Folder | Install | |---|---|---| | Claude Code | [plugins/claude-code](plugins/claude-code) | /plugin marketplace add ./plugins/claude-code → /sleep | | Codex | [plugins/codex](plugins/codex) | bash plugins/codex/install.sh → /sleep | | Copilot | [plugins/copilot](plugins/copilot) | register plugins/copilot/mcp_server.py as an MCP server |
Validated on real models. On the public gbrain-evals skillopt-v1 benchmark, deficient skills go 0.00 → 1.00 on held-out sets with both Claude and Codex (all 4 seeds, including a real tool-use loop), cross-model transfer is positive, and the gate blocks regressions ([full results](docs/sleep/FINAL_REPORT.md)).
> Open-source tool, decoupled from the research. The engine lives in the > top-level [skillopt_sleep/](skillopt_sleep) package with zero dependency > on the paper's skillopt/ experiment code (the validation gate is vendored). > Controls — optional gate, multi-rollout contrastive reflection, token/time > budget,…
Excerpt shown — open the source for the full document.
Notability
notability 6.0/10New repo with strong traction (5k stars).