skillZs
LIVE SKILL TAGS
>>> LIVE SKILLS INDEX <<<
* OPEN SOURCE *
NO LOGIN, NO TRACKING
REAL INSTALL DATA
← back to all skills
alirezarezvani/claude-skills1.5k installs

run

Run a single experiment iteration. Edit the target file, evaluate, keep or discard. Use when the user runs /ar:run or asks for one manual autoresearch iteration.

How do I install this agent skill?

npx skills add https://github.com/alirezarezvani/claude-skills --skill run
view source ↗

Is this agent skill safe to install?

  • Gen Agent Trust Hubwarn

    This skill automates experiment iterations by reading configurations, modifying code, and executing evaluation scripts. It presents risks of command injection and path traversal due to unsanitized variables in shell commands, as well as vulnerability to indirect prompt injection from the local files it processes to guide its logic.

  • Socketpass

    No alerts

  • Snykpass

    Risk: LOW · No issues

  • Runlayerpass

    1/1 file flagged

  • ZeroLeakspass

    Score: 93/100 · 2 sections analyzed

What does this agent skill do?

/ar:run — Single Experiment Iteration

Run exactly ONE experiment iteration: review history, decide a change, edit, commit, evaluate.

Usage

/ar:run engineering/api-speed              # Run one iteration
/ar:run                                     # List experiments, let user pick

What It Does

Step 1: Resolve experiment

If no experiment specified, run python {skill_path}/scripts/setup_experiment.py --list and ask the user to pick.

Step 2: Load context

# Read experiment config
cat .autoresearch/{domain}/{name}/config.cfg

# Read strategy and constraints
cat .autoresearch/{domain}/{name}/program.md

# Read experiment history
cat .autoresearch/{domain}/{name}/results.tsv

# Checkout the experiment branch
git checkout autoresearch/{domain}/{name}

Step 3: Decide what to try

Review results.tsv:

  • What changes were kept? What pattern do they share?
  • What was discarded? Avoid repeating those approaches.
  • What crashed? Understand why.
  • How many runs so far? (Escalate strategy accordingly)

Strategy escalation:

  • Runs 1-5: Low-hanging fruit (obvious improvements)
  • Runs 6-15: Systematic exploration (vary one parameter)
  • Runs 16-30: Structural changes (algorithm swaps)
  • Runs 30+: Radical experiments (completely different approaches)

Step 4: Make ONE change

Edit only the target file specified in config.cfg. Change one thing. Keep it simple.

Step 5: Commit and evaluate

git add {target}
git commit -m "experiment: {short description of what changed}"

python {skill_path}/scripts/run_experiment.py \
  --experiment {domain}/{name} --single

Step 6: Report result

Read the script output. Tell the user:

  • KEEP: "Improvement! {metric}: {value} ({delta} from previous best)"
  • DISCARD: "No improvement. {metric}: {value} vs best {best}. Reverted."
  • CRASH: "Evaluation failed: {reason}. Reverted."

Step 7: Self-improvement check

After every 10th experiment (check results.tsv line count), update the Strategy section of program.md with patterns learned.

Rules

  • ONE change per iteration. Don't change 5 things at once.
  • NEVER modify the evaluator (evaluate.py). It's ground truth.
  • Simplicity wins. Equal performance with simpler code is an improvement.
  • No new dependencies.

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/run">View run on skillZs</a>