setup
Set up a new autoresearch experiment interactively. Collects domain, target file, eval command, metric, direction, and evaluator. Use when the user runs /ar:setup or asks to start optimizing a file with the autoresearch loop.
How do I install this agent skill?
npx skills add https://github.com/alirezarezvani/claude-skills --skill setupIs this agent skill safe to install?
- Gen Agent Trust Hubpass
The skill provides a legitimate interface for setting up research experiments. It functions by collecting user parameters and executing a local setup script. While it allows for the execution of user-defined evaluation commands, this behavior is documented and central to its intended purpose as a research automation tool.
- Socketpass
No alerts
- Snykpass
Risk: LOW · No issues
- Runlayerpass
1 file scanned · No issues
- ZeroLeakspass
Score: 93/100 · 2 sections analyzed
What does this agent skill do?
/ar:setup — Create New Experiment
Set up a new autoresearch experiment with all required configuration.
Usage
/ar:setup # Interactive mode
/ar:setup engineering api-speed src/api.py "pytest bench.py" p50_ms lower
/ar:setup --list # Show existing experiments
/ar:setup --list-evaluators # Show available evaluators
What It Does
If arguments provided
Pass them directly to the setup script:
python {skill_path}/scripts/setup_experiment.py \
--domain {domain} --name {name} \
--target {target} --eval "{eval_cmd}" \
--metric {metric} --direction {direction} \
[--evaluator {evaluator}] [--scope {scope}]
If no arguments (interactive mode)
Collect each parameter one at a time:
- Domain — Ask: "What domain? (engineering, marketing, content, prompts, custom)"
- Name — Ask: "Experiment name? (e.g., api-speed, blog-titles)"
- Target file — Ask: "Which file to optimize?" Verify it exists.
- Eval command — Ask: "How to measure it? (e.g., pytest bench.py, python evaluate.py)"
- Metric — Ask: "What metric does the eval output? (e.g., p50_ms, ctr_score)"
- Direction — Ask: "Is lower or higher better?"
- Evaluator (optional) — Show built-in evaluators. Ask: "Use a built-in evaluator, or your own?"
- Scope — Ask: "Store in project (.autoresearch/) or user (~/.autoresearch/)?"
Then run setup_experiment.py with the collected parameters.
Listing
# Show existing experiments
python {skill_path}/scripts/setup_experiment.py --list
# Show available evaluators
python {skill_path}/scripts/setup_experiment.py --list-evaluators
Built-in Evaluators
| Name | 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_content | ctr_score (higher) | Headlines, titles, descriptions |
llm_judge_prompt | quality_score (higher) | System prompts, agent instructions |
llm_judge_copy | engagement_score (higher) | Social posts, ad copy, emails |
After Setup
Report to the user:
- Experiment path and branch name
- Whether the eval command worked and the baseline metric
- Suggest: "Run
/ar:run {domain}/{name}to start iterating, or/ar:loop {domain}/{name}for autonomous mode."
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/alirezarezvani/claude-skills/setup">View setup on skillZs</a>