explore-run
Rigor Improve / Rigor Explore run leaf skill for bounded exploratory evidence in deep learning research repositories. Use when the researcher explicitly authorizes exploratory runs such as small-subset validation, short-cycle guess-and-check, batch sweeps, idle-GPU search, or quick transfer-learning trials, with fair-comparison caveats and no-overclaim summaries in `explore_outputs/`. Do not use for end-to-end exploration orchestration on top of `current_research`, trusted baseline execution, conservative training verification, default routing, verified SOTA claims, or implicit experimentation.
How do I install this agent skill?
npx skills add https://github.com/lllllllama/rigorpilot-skills --skill explore-runIs this agent skill safe to install?
- Gen Agent Trust Hubwarn
The skill performs dynamic code execution by loading a module from a directory outside its own package and ingests external JSON data which creates a surface for indirect prompt injection.
- Socketpass
No alerts
- Snykpass
Risk: LOW · No issues
What does this agent skill do?
explore-run
Use this as the Rigor Improve / Rigor Explore run leaf skill. The installed slug
remains explore-run for compatibility.
Use the shared operating principles in
../../references/agent-operating-principles.md; this skill should guide
candidate run planning while preserving model judgment about the active repo.
When to apply
- When the researcher explicitly authorizes exploratory runs.
- When the task is a small-subset validation, short-cycle training probe, batch sweep, idle-GPU search, or quick transfer-learning trial.
- When the output should rank candidate runs rather than certify trusted success.
When not to apply
- When the user wants trusted training execution or conservative verification.
- When there is no explicit exploratory authorization.
- When the task is repository setup, intake, or debugging.
Clear boundaries
- This skill owns exploratory execution planning and summary only.
- Use
ai-research-exploreinstead when the task spans both current_research coordination and exploratory code changes. - It may hand off actual command execution to
minimal-run-and-auditorrun-train. - It should keep experiment state isolated from the trusted baseline.
- It should prefer small-subset and short-cycle checks before heavier exploratory runs.
- It should label run results as bounded evidence and explain when a comparison is not directly fair.
Ranking Semantics
- Pre-execution candidate selection uses three factors:
cost,success_rate, andexpected_gain. - Default weights should stay conservative unless the researcher explicitly provides
selection_weights. - Budget pruning still applies after scoring through
max_variantsandmax_short_cycle_runs. - If runs are executed later, downstream ranking should switch to real execution evidence, not stay purely heuristic.
Variant Spec Hints
- Use
variant_axesto define the candidate dimension grid. - Use
subset_sizesandshort_run_stepsto express exploratory run scale. - Use
selection_weightsto rebalancecost,success_rate, andexpected_gain. - Use
primary_metricandmetric_goalso downstream ranking can order executed candidates consistently.
Output expectations
explore_outputs/CHANGESET.mdexplore_outputs/SCIENTIFIC_CHANGELOG.mdexplore_outputs/COMPARABILITY_REPORT.mdexplore_outputs/TOP_RUNS.mdexplore_outputs/status.json
Notes
Use references/execution-policy.md, ../../references/explore-variant-spec.md, ../../references/deep-learning-experiment-principles.md, scripts/plan_variants.py, and scripts/write_outputs.py.
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/lllllllama/rigorpilot-skills/explore-run">View explore-run on skillZs</a>