| name | ai-research-explore |
| description | Rigor Explore compatible skill slug for meaningful and potentially novel deep learning research candidates. Use when the researcher has chosen the task family, dataset, benchmark, evaluation method, provided SOTA references, and wants candidate-only exploration on top of `current_research` with auditable repo understanding, idea gating, fair comparison, and governed experiments written to `explore_outputs/`. Do not use for README-first trusted reproduction, open-ended direction finding, narrow code-only or run-only exploration, passive repo analysis, verified novelty claims, or implicit experimentation. |
ai-research-explore
Purpose
Use this as the Rigor Explore compatible skill slug after the researcher
explicitly authorizes candidate-only work on top of a durable
current_research anchor. The installed slug remains ai-research-explore for
compatibility. Rigor Explore is for meaningful and potentially novel deep
learning research candidates while preserving scientific rigor, comparability,
reproducibility, and auditable collaboration. Novelty and significance remain
hypotheses before literature contrast, ablation evidence, and fair comparison.
The skill does not promise autonomous discovery, global benchmark completeness,
novelty proof, or trusted reproduction success.
Start from the shared operating principles in
../../references/agent-operating-principles.md, then load
../../references/research-rigor-principles.md for research claims and
../../references/deep-learning-experiment-principles.md when experiment
details affect comparability or reproducibility.
Fit
Use this skill only when the request has both:
- Explicit exploration authorization such as candidate-only work, isolated
branch or worktree, sweep, several variants, or exploratory ranking.
- A durable
current_research context such as a branch, commit, checkpoint,
run record, or already-trained local model state.
Keep narrow code-only requests on explore-code. Keep narrow run-only requests
on explore-run. Keep passive repository analysis on analyze-project. Keep
README-first reproduction on ai-research-reproduction.
Research Rhythm
Use a two-loop rhythm:
- Outer loop: understand the repository, freeze task/dataset/evaluation/budget,
preserve user ideas, map sources, gate ideas, and decide whether the next
experiment is worth running.
- Inner loop: make one bounded candidate change or run, smoke-check it, collect
evidence, rank it against the current anchor, and either stop or return to the
outer loop with the new evidence.
This rhythm is a guide, not a rigid autonomous loop. Stop at explicit blockers,
unclear scientific meaning, exhausted budget, missing anchor/evaluation, or a
human checkpoint.
Workflow
- Confirm
current_research and explicit explore-lane authorization.
- Accept either legacy
variant_spec or higher-level research_campaign.
- In campaign mode, freeze the task, dataset, benchmark, evaluation source,
SOTA reference, and budget before candidate work.
- Build only the repo-understanding artifacts needed for the current campaign,
usually through
analyze-project.
- Run bounded, cache-first source lookup when source support matters; prefer
local curated literature such as Zotero if available, then seed sources,
repo-local locators, public locators, or optional web lookup. Treat lookup as
source resolution, not an open-ended literature search.
- Preserve researcher-provided ideas, optionally add a small bounded set of
single-variable seed ideas, and rank ideas with explicit gates and score
breakdowns.
- Prefer one clear candidate at a time. Use
explore-code for bounded code
adaptation and explore-run for short-cycle trials or sweeps.
- Use
minimal-run-and-audit or run-train only when the exploratory plan
requires real execution evidence.
- Write candidate-only outputs to
analysis_outputs/, sources/, and
explore_outputs/ as appropriate; never present exploratory gains as trusted
reproduction success. Include SCIENTIFIC_CHANGELOG.md and
COMPARABILITY_REPORT.md for candidate scientific meaning and comparison
boundaries.
Ranking and Evidence
- Before execution, prioritize candidates by expected gain, cost, success
likelihood, patch surface, dependency drag, evaluation risk, and rollback
ease.
- After execution, rank by real evidence first: command status, observed
metrics, artifacts, changed paths, smoke results, and reproducibility notes.
- Keep researcher-provided
evaluation_source and sota_reference frozen for
the campaign; do not claim they are globally complete.
- If the top ideas are too close or the implementation cannot be decomposed into
auditable units, stop for a checkpoint instead of silently choosing.
Campaign Inputs
research_campaign is preferred for Rigor Explore campaigns, but it should
stay minimal. The durable core is:
current_research
task_family
dataset
benchmark
evaluation_source
sota_reference
compute_budget
Use candidate_ideas, variant_spec, research_lookup, idea_policy,
idea_generation, source_constraints, feasibility_policy, baseline_gate,
and execution_policy as optional guidance, not as fields the agent must fill
for every campaign. See references/research-campaign-spec.md for the advanced
schema and artifact expectations.
Reference Loading
- Load
references/ai-research-explore-policy.md for lane safety and candidate
semantics.
- Load
references/research-campaign-spec.md only when a campaign file is
present or the user asks for Rigor Explore campaign governance.
- Load
../../references/explore-variant-spec.md for run-level variant matrix
details.
- Load
../../references/research-rigor-principles.md before making novelty,
contribution, SOTA, or comparability statements.
- Load
../../references/deep-learning-experiment-principles.md when training,
evaluation, baseline, ablation, metric, checkpoint, or dataset details matter.
- Use
scripts/orchestrate_explore.py and scripts/write_outputs.py for the
existing deterministic artifact workflow.