autoresearch▌
github/awesome-copilot · updated Apr 8, 2026
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An autonomous experimentation loop for any programming task. You define the goal and how to measure it; the agent iterates autonomously -- modifying code, running experiments, measuring results, and keeping or discarding changes -- until interrupted.
Autoresearch: Autonomous Iterative Experimentation
An autonomous experimentation loop for any programming task. You define the goal and how to measure it; the agent iterates autonomously -- modifying code, running experiments, measuring results, and keeping or discarding changes -- until interrupted.
This skill is inspired by Karpathy's autoresearch, generalized from ML training to any programming task with a measurable outcome.
Agent Behavior Rules
- DO guide the user through the Setup phase interactively before starting the loop.
- DO establish a baseline measurement before making any changes.
- DO commit every experiment attempt before running it (so it can be reverted cleanly).
- DO keep a results log (TSV) tracking every experiment.
- DO revert changes that do not improve the metric (git reset to last known good).
- DO run autonomously once the loop starts -- never pause to ask "should I continue?".
- DO NOT modify files the user marked as out-of-scope.
- DO NOT skip the measurement step -- every experiment must be measured.
- DO NOT keep changes that regress the metric unless the user explicitly allowed trade-offs.
- DO NOT install new dependencies or make environment changes unless the user approved it.
Phase 1: Setup (Interactive)
Before any experimentation begins, work with the user to establish these parameters. Ask the user directly for each item. Do not assume or skip any.
1.1 Define the Goal
Ask the user:
What are you trying to improve or optimize?
Examples: execution time, memory usage, binary size, test pass rate, code coverage, API response latency, throughput, error rate, benchmark score, build time, bundle size, lines of code, cyclomatic complexity, etc.
Record the user's answer as the goal.
1.2 Define the Metric
Ask the user:
How do we measure success? What exact command produces the metric?
I need:
- The command to run (e.g.,
dotnet test,npm run benchmark,time ./build.sh,pytest --tb=short)- How to extract the metric from the output (e.g., a regex pattern, a specific line, a JSON field)
- Direction: Is lower better or higher better?
Example: "Run
dotnet test --logger trx, count passing tests. Higher is better." Example: "Runhyperfine './my-program', extract mean time. Lower is better."
Record:
METRIC_COMMAND: the command to runMETRIC_EXTRACTION: how to extract the numeric metric from outputMETRIC_DIRECTION:lower_is_betterorhigher_is_better
1.3 Define the Scope
Ask the user:
Which files or directories am I allowed to modify?
And which files are OFF LIMITS (read-only)?
Record:
IN_SCOPE_FILES: files/dirs the agent may editOUT_OF_SCOPE_FILES: files/dirs that must not be modified
1.4 Define Constraints
Ask the user:
Are there any constraints I should respect?
Examples:
- Time budget per experiment (e.g., "each run should take < 2 minutes")
- No new dependencies
- Must keep all existing tests passing
- Must not change the public API
- Must maintain backward compatibility
- VRAM/memory limit
- Code complexity limits (prefer simpler solutions)
Record as CONSTRAINTS.
1.5 Define the Experiment Budget (Optional)
Ask the user:
How many experiments should I run, or should I just keep going until you stop me?
You can say a number (e.g., "try 20 experiments") or "unlimited" (I'll run until you interrupt).
Record as MAX_EXPERIMENTS (number or unlimited).
1.6 Simplicity Criterion
Inform the user of the default simplicity policy:
Simplicity policy (default): All else being equal, simpler is better. A small improvement that adds ugly complexity is not worth it. Removing code while maintaining or improving the metric is a great outcome. I'll weigh the complexity cost against the improvement magnitude. Does this policy work for you, or do you want to adjust it?
Record any adjustments as SIMPLICITY_POLICY.
1.7 Confirm Setup
Summarize all parameters back to the user in a clear table:
| Parameter | Value |
|---|---|
| Goal | ... |
| Metric command | ... |
| Metric extraction | ... |
| Direction | lower is better / higher ... |
| In-scope files | ... |
| Out-of-scope files | ... |
| Constraints | ... |
| Max experiments | ... |
| Simplicity policy | ... |
Ask the user to confirm. Do not proceed until confirmed.
Phase 2: Branch & Baseline
Once the user confirms:
-
Create a branch: Propose a tag based on today's date (e.g.,
autoresearch/mar17). Create the branch:git checkout -b autoresearch/<tag>. -
Read in-scope files: Read all files that are in scope to build full context of the current state.
-
Initialize results.tsv: Create
results.tsvin the repo root with the header row:experiment commit metric status descriptionAdd
results.tsvandrun.logto.git/info/exclude(append if not already present) so they stay untracked without modifying any tracked files. -
Run the baseline: Execute the metric command on the current unmodified code. Record the result as experiment
0with statusbaselineinresults.tsv. -
Report baseline to the user:
Baseline established: [metric_name] = [value] Starting autonomous experimentation loop.
Phase 3: Experiment Loop
Run this loop continuously. Do not stop to ask the user. Run until:
MAX_EXPERIMENTSis reached, OR- The user manually interrupts
For each experiment:
LOOP:
1. THINK - Analyze previous results and the current code.
Generate an experiment hypothesis.
Consider: what worked, what didn't, what hasn't been tried.
2. EDIT - Modify the in-scope file(s) to implement the idea.
Keep changes focused and minimal per experiment.
3. COMMIT - git add + git commit with a short descriptive message.
Format: "experiment: <short description of what changed>"
4. RUN - Execute the metric command.
Redirect output to run.log so it does not flood the context window.
Use shell-appropriate redirection:
- Bash/Zsh: `<command> > run.log 2>&1`
- PowerShell: `<command> *> run.log`
5. MEASURE - Extract the metric from run.log.
If extraction fails (crash/error), read the last 50 lines
of run.log for the error.
6. DECIDE - Compare metric to the current best:
- IMPROVED: Keep the commit. Update the "best" baseline.
Log status = "keep".
- SAME OR WORSE: Revert. `git reset --hard HEAD~1`.
Log status = "discard".
- CRASH: Attempt a quick fix (typo, import, simple error).
Amend the experiment commit (`git commit --amend`) with the fix
and rerun. The experiment keeps its original number.
If unfixable after 2 attempts, revert the entire experiment
(`git reset --hard HEAD~1`) and log status = "crash".
7. LOG - Append a row to results.tsv:
experiment_number commit_hash metric_value status description
8. CONTINUE - Go to step 1.
Experiment Strategy
When generating experiment ideas, follow this priority order:
- Low-hanging fruit first: Simple parameter tweaks, obvious inefficiencies.
- Informed by results: If a direction showed promise, explore further in that direction.
- Diversify after plateaus: If the last 3-5 experiments all failed, try a different approach entirely.
- Combine winners: If experiments A and B each improved independently, try combining them.
- Simplification passes: Periodically try removing code/complexity to see if the metric holds.
- Radical changes: After exhausting incremental ideas, try larger architectural changes.
Handling Constraints
- Time budget: If a run exceeds 2x the expected duration, kill it and treat as a crash.
- Existing tests: If constraints require tests to pass, run them before/after and revert if they break.
- Memory/resources: Monitor and revert if resource usage exceeds stated limits.
Phase 4: Reporting
When the loop ends (budget reached or user interrupts):
- Print the full results.tsv as a formatted table.
- Summarize:
- Total experiments run
- Experiments kept / discarded / crashed
- Starting metric (baseline) vs. final metric
- Improvement percentage
- Top 3 most impactful changes
- Show the cumulative git log of kept experiments:
git log --oneline <start_commit>..HEAD - Recommend next steps: Based on the results, suggest what a human researcher might try next (ideas that were too risky/complex for automated experimentation).
Quick Reference
Results TSV Format
Tab-separated, 5 columns:
experiment commit metric status description
0 a1b2c3d 0.997900 baseline unmodified code
1 b2c3d4e 0.993200 keep increase learning rate to 0.04
2 c3d4e5f 1.005000 discard switch to GeLU activation
3 d4e5f6g 0.000000 crash double model width (OOM)
Git Workflow
- All experiments happen on the
autoresearch/<tag>branch - Each experiment is committed before running
- Failed experiments are reverted with
git reset --hard HEAD~1 - Successful experiments advance the branch
results.tsvandrun.logstay untracked (added to.git/info/exclude)
Key Principles
- Measure everything: No experiment without a measurement.
- Revert failures: The branch only advances on improvements.
- Stay autonomous: Never stop to ask. Think harder if stuck.
- Keep it simple: Complexity is a cost. Weigh it against gains.
- Log everything: The TSV is the research journal.
How to use autoresearch on Cursor
AI-first code editor with Composer
Prerequisites
Before installing skills in Cursor, ensure your development environment meets these requirements:
- ›Cursor installed and configured on your development machine
- ›Node.js version 16.0+ with npm package manager (verify with
node --version) - ›Active project directory or workspace where you want to add autoresearch
Execute installation command
Execute the skills CLI command in your project's root directory to begin installation:
The skills CLI fetches autoresearch from GitHub repository github/awesome-copilot and configures it for Cursor.
Select Cursor when prompted
The CLI will show a list of available agents. Use arrow keys to navigate and space to select Cursor:
Verify installation
Confirm successful installation by checking the skill directory location:
Reload or restart Cursor to activate autoresearch. Access the skill through slash commands (e.g., /autoresearch) or your agent's skill management interface.
Security & Verification Notice
We perform automated surface-level scans (Gen AI Scanner, Socket, Snyk) during installation. These checks detect common vulnerabilities but do not guarantee complete security. Always review skill source code and verify the publisher's reputation before production use.
Skills execute code in your development environment. Always verify the publisher's identity, review recent commits, and test in isolated environments before production deployment.
List & Monetize Your Skill
Submit your Claude Code skill and start earning
Use Cases▌
User Story & Requirements Generation
Create detailed user stories, acceptance criteria, and feature specs
Example
Generate user stories for 'password reset feature' with acceptance criteria, edge cases, and test scenarios
Reduce spec writing time by 50%, ensure comprehensive coverage
Competitive Analysis
Research competitors, compare features, identify gaps
Example
Analyze 5 competitor products, create feature comparison matrix, suggest differentiation opportunities
Complete competitive research in 2 hours instead of 2 days
Roadmap Prioritization
Evaluate features using frameworks (RICE, ICE, Kano) and create prioritized backlogs
Example
Score 20 feature ideas using RICE framework, generate prioritized roadmap with rationale
Make data-driven prioritization decisions faster
Stakeholder Communication
Draft PRDs, status updates, and stakeholder presentations
Example
Create executive summary of Q3 roadmap, monthly progress report, feature launch announcement
Save 3-5 hours/week on communication overhead
Implementation Guide▌
Prerequisites
- ›Claude Desktop or compatible AI client
- ›Access to product documentation and roadmap tools (Jira, Notion, etc.)
- ›Understanding of product management frameworks (RICE, Jobs-to-be-Done, etc.)
- ›Stakeholder contact information and communication channels
Time Estimate
30-60 minutes to see productivity improvements
Installation Steps
- 1.Install product management skill
- 2.Start with user story generation for known feature
- 3.Progress to competitive analysis: research 2-3 competitors
- 4.Use for roadmap prioritization: apply RICE/ICE scoring
- 5.Draft stakeholder communications and refine based on feedback
- 6.Build template library for recurring PM tasks
- 7.Share effective prompts with product team
Common Pitfalls
- ⚠Not validating competitive research—verify facts before sharing
- ⚠Accepting user stories without involving engineering team
- ⚠Over-relying on frameworks without qualitative judgment
- ⚠Not customizing outputs to company culture and communication style
- ⚠Skipping stakeholder validation of generated requirements
Best Practices▌
✓ Do
- +Validate research and competitive analysis with real data
- +Collaborate with engineering when generating technical requirements
- +Customize frameworks and templates to your company context
- +Use skill for first drafts, refine with stakeholder input
- +Document successful prompt patterns for PM tasks
- +Combine AI efficiency with human judgment and intuition
✗ Don't
- −Don't publish competitive analysis without fact-checking
- −Don't finalize user stories without engineering review
- −Don't make prioritization decisions solely on AI scoring
- −Don't skip customer validation of generated requirements
- −Don't ignore company-specific context and culture
💡 Pro Tips
- ★Provide context: company goals, constraints, customer feedback
- ★Ask for alternatives: 'Show 3 ways to prioritize this roadmap'
- ★Request stakeholder-specific formatting: 'Executive summary vs. engineering spec'
- ★Use skill for 70% generation + 30% customization to company needs
When to Use This▌
✓ Use When
Use for user story writing, competitive research, roadmap prioritization, stakeholder communication, and PRD drafting. Best for reducing repetitive documentation and research work.
✗ Avoid When
Avoid for strategic product vision (requires deep customer empathy), pricing decisions (needs market and financial expertise), or when face-to-face customer discovery is more valuable than speed.
Learning Path▌
- 1Basic: user stories, feature specs, status updates
- 2Intermediate: competitive analysis, prioritization frameworks, PRDs
- 3Advanced: product strategy, go-to-market planning, OKR setting
- 4Expert: product vision, market positioning, business model innovation
Discussion
Product Hunt–style comments (not star reviews)- No comments yet — start the thread.
Ratings
4.5★★★★★73 reviews- ★★★★★William Bansal· Dec 28, 2024
We added autoresearch from the explainx registry; install was straightforward and the SKILL.md answered most questions upfront.
- ★★★★★Noah Brown· Dec 28, 2024
autoresearch is among the better-maintained entries we tried; worth keeping pinned for repeat workflows.
- ★★★★★Sophia Chawla· Dec 28, 2024
Solid pick for teams standardizing on skills: autoresearch is focused, and the summary matches what you get after install.
- ★★★★★Yuki Johnson· Dec 24, 2024
I recommend autoresearch for anyone iterating fast on agent tooling; clear intent and a small, reviewable surface area.
- ★★★★★Shikha Mishra· Dec 12, 2024
autoresearch fits our agent workflows well — practical, well scoped, and easy to wire into existing repos.
- ★★★★★Yuki Khan· Dec 12, 2024
Registry listing for autoresearch matched our evaluation — installs cleanly and behaves as described in the markdown.
- ★★★★★Arya Perez· Dec 8, 2024
Keeps context tight: autoresearch is the kind of skill you can hand to a new teammate without a long onboarding doc.
- ★★★★★Sophia Malhotra· Nov 27, 2024
We added autoresearch from the explainx registry; install was straightforward and the SKILL.md answered most questions upfront.
- ★★★★★Dev Chawla· Nov 19, 2024
Keeps context tight: autoresearch is the kind of skill you can hand to a new teammate without a long onboarding doc.
- ★★★★★Yuki Yang· Nov 19, 2024
autoresearch fits our agent workflows well — practical, well scoped, and easy to wire into existing repos.
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