explore-run
explore-run
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
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