autoresearch-agent

Autonomous experiment loop that optimizes any file by a measurable metric. Inspired by Karpathy's autoresearch. The agent edits a target file, runs a fixed evaluation, keeps improvements (git commit), discards failures (git reset), and loops indefinitely. Use when: user wants to optimize code speed, reduce bundle/image size, improve test pass rate, optimize prompts, improve content quality (headlines, copy, CTR), or run any measurable improvement loop. Requires: a target file, an evaluation command that outputs a metric, and a git repo.

3,891 stars

Best use case

autoresearch-agent is best used when you need a repeatable AI agent workflow instead of a one-off prompt.

Autonomous experiment loop that optimizes any file by a measurable metric. Inspired by Karpathy's autoresearch. The agent edits a target file, runs a fixed evaluation, keeps improvements (git commit), discards failures (git reset), and loops indefinitely. Use when: user wants to optimize code speed, reduce bundle/image size, improve test pass rate, optimize prompts, improve content quality (headlines, copy, CTR), or run any measurable improvement loop. Requires: a target file, an evaluation command that outputs a metric, and a git repo.

Teams using autoresearch-agent should expect a more consistent output, faster repeated execution, less prompt rewriting.

When to use this skill

  • You want a reusable workflow that can be run more than once with consistent structure.

When not to use this skill

  • You only need a quick one-off answer and do not need a reusable workflow.
  • You cannot install or maintain the underlying files, dependencies, or repository context.

Installation

Claude Code / Cursor / Codex

$curl -o ~/.claude/skills/autoresearch-agent/SKILL.md --create-dirs "https://raw.githubusercontent.com/openclaw/skills/main/skills/alirezarezvani/autoresearch-agent/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/autoresearch-agent/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How autoresearch-agent Compares

Feature / Agentautoresearch-agentStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

Autonomous experiment loop that optimizes any file by a measurable metric. Inspired by Karpathy's autoresearch. The agent edits a target file, runs a fixed evaluation, keeps improvements (git commit), discards failures (git reset), and loops indefinitely. Use when: user wants to optimize code speed, reduce bundle/image size, improve test pass rate, optimize prompts, improve content quality (headlines, copy, CTR), or run any measurable improvement loop. Requires: a target file, an evaluation command that outputs a metric, and a git repo.

Where can I find the source code?

You can find the source code on GitHub using the link provided at the top of the page.

Related Guides

SKILL.md Source

# Autoresearch Agent

> You sleep. The agent experiments. You wake up to results.

Autonomous experiment loop inspired by [Karpathy's autoresearch](https://github.com/karpathy/autoresearch). The agent edits one file, runs a fixed evaluation, keeps improvements, discards failures, and loops indefinitely.

Not one guess — fifty measured attempts, compounding.

---

## Slash Commands

| Command | What it does |
|---------|-------------|
| `/ar:setup` | Set up a new experiment interactively |
| `/ar:run` | Run a single experiment iteration |
| `/ar:loop` | Start autonomous loop with configurable interval (10m, 1h, daily, weekly, monthly) |
| `/ar:status` | Show dashboard and results |
| `/ar:resume` | Resume a paused experiment |

---

## When This Skill Activates

Recognize these patterns from the user:

- "Make this faster / smaller / better"
- "Optimize [file] for [metric]"
- "Improve my [headlines / copy / prompts]"
- "Run experiments overnight"
- "I want to get [metric] from X to Y"
- Any request involving: optimize, benchmark, improve, experiment loop, autoresearch

If the user describes a target file + a way to measure success → this skill applies.

---

## Setup

### First Time — Create the Experiment

Run the setup script. The user decides where experiments live:

**Project-level** (inside repo, git-tracked, shareable with team):
```bash
python scripts/setup_experiment.py \
  --domain engineering \
  --name api-speed \
  --target src/api/search.py \
  --eval "pytest bench.py --tb=no -q" \
  --metric p50_ms \
  --direction lower \
  --scope project
```

**User-level** (personal, in `~/.autoresearch/`):
```bash
python scripts/setup_experiment.py \
  --domain marketing \
  --name medium-ctr \
  --target content/titles.md \
  --eval "python evaluate.py" \
  --metric ctr_score \
  --direction higher \
  --evaluator llm_judge_content \
  --scope user
```

The `--scope` flag determines where `.autoresearch/` lives:
- `project` (default) → `.autoresearch/` in the repo root. Experiment definitions are git-tracked. Results are gitignored.
- `user` → `~/.autoresearch/` in the home directory. Everything is personal.

### What Setup Creates

```
.autoresearch/
├── config.yaml                        ← Global settings
├── .gitignore                         ← Ignores results.tsv, *.log
└── {domain}/{experiment-name}/
    ├── program.md                     ← Objectives, constraints, strategy
    ├── config.cfg                     ← Target, eval cmd, metric, direction
    ├── results.tsv                    ← Experiment log (gitignored)
    └── evaluate.py                    ← Evaluation script (if --evaluator used)
```

**results.tsv columns:** `commit | metric | status | description`
- `commit` — short git hash
- `metric` — float value or "N/A" for crashes
- `status` — keep | discard | crash
- `description` — what changed or why it crashed

### Domains

| Domain | Use Cases |
|--------|-----------|
| `engineering` | Code speed, memory, bundle size, test pass rate, build time |
| `marketing` | Headlines, social copy, email subjects, ad copy, engagement |
| `content` | Article structure, SEO descriptions, readability, CTR |
| `prompts` | System prompts, chatbot tone, agent instructions |
| `custom` | Anything else with a measurable metric |

### If `program.md` Already Exists

The user may have written their own `program.md`. If found in the experiment directory, read it. It overrides the template. Only ask for what's missing.

---

## Agent Protocol

You are the loop. The scripts handle setup and evaluation — you handle the creative work.

### Before Starting
1. Read `.autoresearch/{domain}/{name}/config.cfg` to get:
   - `target` — the file you edit
   - `evaluate_cmd` — the command that measures your changes
   - `metric` — the metric name to look for in eval output
   - `metric_direction` — "lower" or "higher" is better
   - `time_budget_minutes` — max time per evaluation
2. Read `program.md` for strategy, constraints, and what you can/cannot change
3. Read `results.tsv` for experiment history (columns: commit, metric, status, description)
4. Checkout the experiment branch: `git checkout autoresearch/{domain}/{name}`

### Each Iteration
1. Review results.tsv — what worked? What failed? What hasn't been tried?
2. Decide ONE change to the target file. One variable per experiment.
3. Edit the target file
4. Commit: `git add {target} && git commit -m "experiment: {description}"`
5. Evaluate: `python scripts/run_experiment.py --experiment {domain}/{name} --single`
6. Read the output — it prints KEEP, DISCARD, or CRASH with the metric value
7. Go to step 1

### What the Script Handles (you don't)
- Running the eval command with timeout
- Parsing the metric from eval output
- Comparing to previous best
- Reverting the commit on failure (`git reset --hard HEAD~1`)
- Logging the result to results.tsv

### Starting an Experiment

```bash
# Single iteration (the agent calls this repeatedly)
python scripts/run_experiment.py --experiment engineering/api-speed --single

# Dry run (test setup before starting)
python scripts/run_experiment.py --experiment engineering/api-speed --dry-run
```

### Strategy Escalation
- Runs 1-5: Low-hanging fruit (obvious improvements, simple optimizations)
- Runs 6-15: Systematic exploration (vary one parameter at a time)
- Runs 16-30: Structural changes (algorithm swaps, architecture shifts)
- Runs 30+: Radical experiments (completely different approaches)
- If no improvement in 20+ runs: update program.md Strategy section

### Self-Improvement
After every 10 experiments, review results.tsv for patterns. Update the
Strategy section of program.md with what you learned (e.g., "caching changes
consistently improve by 5-10%", "refactoring attempts never improve the metric").
Future iterations benefit from this accumulated knowledge.

### Stopping
- Run until interrupted by the user, context limit reached, or goal in program.md is met
- Before stopping: ensure results.tsv is up to date
- On context limit: the next session can resume — results.tsv and git log persist

### Rules

- **One change per experiment.** Don't change 5 things at once. You won't know what worked.
- **Simplicity criterion.** A small improvement that adds ugly complexity is not worth it. Equal performance with simpler code is a win. Removing code that gets same results is the best outcome.
- **Never modify the evaluator.** `evaluate.py` is the ground truth. Modifying it invalidates all comparisons. Hard stop if you catch yourself doing this.
- **Timeout.** If a run exceeds 2.5× the time budget, kill it and treat as crash.
- **Crash handling.** If it's a typo or missing import, fix and re-run. If the idea is fundamentally broken, revert, log "crash", move on. 5 consecutive crashes → pause and alert.
- **No new dependencies.** Only use what's already available in the project.

---

## Evaluators

Ready-to-use evaluation scripts. Copied into the experiment directory during setup with `--evaluator`.

### Free Evaluators (no API cost)

| Evaluator | Metric | Use Case |
|-----------|--------|----------|
| `benchmark_speed` | `p50_ms` (lower) | Function/API execution time |
| `benchmark_size` | `size_bytes` (lower) | File, bundle, Docker image size |
| `test_pass_rate` | `pass_rate` (higher) | Test suite pass percentage |
| `build_speed` | `build_seconds` (lower) | Build/compile/Docker build time |
| `memory_usage` | `peak_mb` (lower) | Peak memory during execution |

### LLM Judge Evaluators (uses your subscription)

| Evaluator | Metric | Use Case |
|-----------|--------|----------|
| `llm_judge_content` | `ctr_score` 0-10 (higher) | Headlines, titles, descriptions |
| `llm_judge_prompt` | `quality_score` 0-100 (higher) | System prompts, agent instructions |
| `llm_judge_copy` | `engagement_score` 0-10 (higher) | Social posts, ad copy, emails |

LLM judges call the CLI tool the user is already running (Claude, Codex, Gemini). The evaluation prompt is locked inside `evaluate.py` — the agent cannot modify it. This prevents the agent from gaming its own evaluator.

The user's existing subscription covers the cost:
- Claude Code Max → unlimited Claude calls for evaluation
- Codex CLI (ChatGPT Pro) → unlimited Codex calls
- Gemini CLI (free tier) → free evaluation calls

### Custom Evaluators

If no built-in evaluator fits, the user writes their own `evaluate.py`. Only requirement: it must print `metric_name: value` to stdout.

```python
#!/usr/bin/env python3
# My custom evaluator — DO NOT MODIFY after experiment starts
import subprocess
result = subprocess.run(["my-benchmark", "--json"], capture_output=True, text=True)
# Parse and output
print(f"my_metric: {parse_score(result.stdout)}")
```

---

## Viewing Results

```bash
# Single experiment
python scripts/log_results.py --experiment engineering/api-speed

# All experiments in a domain
python scripts/log_results.py --domain engineering

# Cross-experiment dashboard
python scripts/log_results.py --dashboard

# Export formats
python scripts/log_results.py --experiment engineering/api-speed --format csv --output results.csv
python scripts/log_results.py --experiment engineering/api-speed --format markdown --output results.md
python scripts/log_results.py --dashboard --format markdown --output dashboard.md
```

### Dashboard Output

```
DOMAIN          EXPERIMENT          RUNS  KEPT  BEST         Δ FROM START  STATUS
engineering     api-speed            47    14   185ms        -76.9%        active
engineering     bundle-size          23     8   412KB        -58.3%        paused
marketing       medium-ctr           31    11   8.4/10       +68.0%        active
prompts         support-tone         15     6   82/100       +46.4%        done
```

### Export Formats

- **TSV** — default, tab-separated (compatible with spreadsheets)
- **CSV** — comma-separated, with proper quoting
- **Markdown** — formatted table, readable in GitHub/docs

---

## Proactive Triggers

Flag these without being asked:

- **No evaluation command works** → Test it before starting the loop. Run once, verify output.
- **Target file not in git** → `git init && git add . && git commit -m 'initial'` first.
- **Metric direction unclear** → Ask: is lower or higher better? Must know before starting.
- **Time budget too short** → If eval takes longer than budget, every run crashes.
- **Agent modifying evaluate.py** → Hard stop. This invalidates all comparisons.
- **5 consecutive crashes** → Pause the loop. Alert the user. Don't keep burning cycles.
- **No improvement in 20+ runs** → Suggest changing strategy in program.md or trying a different approach.

---

## Installation

### One-liner (any tool)
```bash
git clone https://github.com/alirezarezvani/claude-skills.git
cp -r claude-skills/engineering/autoresearch-agent ~/.claude/skills/
```

### Multi-tool install
```bash
./scripts/convert.sh --skill autoresearch-agent --tool codex|gemini|cursor|windsurf|openclaw
```

### OpenClaw
```bash
clawhub install cs-autoresearch-agent
```

---

## Related Skills

- **self-improving-agent** — improves an agent's own memory/rules over time. NOT for structured experiment loops.
- **senior-ml-engineer** — ML architecture decisions. Complementary — use for initial design, then autoresearch for optimization.
- **tdd-guide** — test-driven development. Complementary — tests can be the evaluation function.
- **skill-security-auditor** — audit skills before publishing. NOT for optimization loops.

Related Skills

autoresearch-pro

3891
from openclaw/skills

Automatically improve OpenClaw skills, prompts, or articles through iterative mutation-testing loops. Inspired by Karpathy's autoresearch. Use when user says 'optimize [skill]', 'autoresearch [skill]', 'improve my skill', 'optimize this prompt', 'improve my prompt', 'polish this article', 'improve this article', or explicitly requests quality improvement for any text-based content. Supports three modes: skill (SKILL.md files), prompt (any prompt text), and article (any document).

Workflow & Productivity

Autoresearch Skill

3891
from openclaw/skills

## Trigger

autoresearch

3891
from openclaw/skills

Autonomous AI research skill for running automated neural network experiments. This skill should be used when the user wants to set up autonomous AI research experiments, run automated neural network training, conduct autonomous machine learning research, or let AI agents experiment with model architectures and hyperparameters. Based on Andrej Karpathy's autoresearch project, this skill enables AI agents to autonomously modify training code, run experiments, evaluate results, and iteratively improve models. Use when: (1) Setting up autonomous research experiments, (2) Running automated neural network training, (3) Conducting AI-driven research optimization, (4) Experimenting with model architectures and hyperparameters, (5) Implementing autonomous research loops, or (6) When the user mentions "autonomous research", "AI experiments", "automated training", "neural network optimization", or "autoresearch".

codex-autoresearch-loop

3819
from openclaw/skills

Self-directed iterative research skill for Codex that continuously cycles through modify, verify, retain or discard, and repeat until a measurable goal is reached.

autoresearchclaw-autonomous-research

3817
from openclaw/skills

Fully autonomous research pipeline that turns a topic idea into a complete academic paper with real citations, experiments, and conference-ready LaTeX.

autoresearch-genealogy

3817
from openclaw/skills

Structured prompts, vault templates, and autonomous research workflows for AI-assisted genealogy using Claude Code.

---

3891
from openclaw/skills

name: article-factory-wechat

Content & Documentation

humanizer

3891
from openclaw/skills

Remove signs of AI-generated writing from text. Use when editing or reviewing text to make it sound more natural and human-written. Based on Wikipedia's comprehensive "Signs of AI writing" guide. Detects and fixes patterns including: inflated symbolism, promotional language, superficial -ing analyses, vague attributions, em dash overuse, rule of three, AI vocabulary words, negative parallelisms, and excessive conjunctive phrases.

Content & Documentation

find-skills

3891
from openclaw/skills

Helps users discover and install agent skills when they ask questions like "how do I do X", "find a skill for X", "is there a skill that can...", or express interest in extending capabilities. This skill should be used when the user is looking for functionality that might exist as an installable skill.

General Utilities

tavily-search

3891
from openclaw/skills

Use Tavily API for real-time web search and content extraction. Use when: user needs real-time web search results, research, or current information from the web. Requires Tavily API key.

Data & Research

baidu-search

3891
from openclaw/skills

Search the web using Baidu AI Search Engine (BDSE). Use for live information, documentation, or research topics.

Data & Research

agent-autonomy-kit

3891
from openclaw/skills

Stop waiting for prompts. Keep working.

Workflow & Productivity