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From autoresearch-agent
Runs one AutoResearch experiment iteration: reviews history, edits target file per strategy, commits via git, evaluates metrics, keeps or discards changes.
How this skill is triggered — by the user, by Claude, or both
Slash command
/autoresearch-agent:runThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Run exactly ONE experiment iteration: review history, decide a change, edit, commit, evaluate.
Share bugs, ideas, or general feedback.
Run exactly ONE experiment iteration: review history, decide a change, edit, commit, evaluate.
/ar:run engineering/api-speed # Run one iteration
/ar:run # List experiments, let user pick
If no experiment specified, run python {skill_path}/scripts/setup_experiment.py --list and ask the user to pick.
# 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}
Review results.tsv:
Strategy escalation:
Edit only the target file specified in config.cfg. Change one thing. Keep it simple.
git add {target}
git commit -m "experiment: {short description of what changed}"
python {skill_path}/scripts/run_experiment.py \
--experiment {domain}/{name} --single
Read the script output. Tell the user:
After every 10th experiment (check results.tsv line count), update the Strategy section of program.md with patterns learned.
npx claudepluginhub stillquietlyloud/claude_skills --plugin autoresearch-agentRuns one AutoResearch experiment iteration: reviews history, edits target file per strategy, commits via git, evaluates metrics, keeps or discards changes.
Sets up autonomous experiment loops for code optimization targets. Gathers goal/metric/files, creates git branch/benchmark script/logging, runs baseline via subagent. For 'run autoresearch' or iterative experiments.
Guides interactive setup of optimization goals, metrics, and scope; runs autonomous git-committed experiment loops: code changes, testing, measurement, keep improvements or revert. For performance tuning in git repos.