Run an end-to-end workflow that chains `research-refine` and `experiment-plan`. Use when the user wants a one-shot pipeline from vague research direction to focused final proposal plus detailed experiment roadmap, or asks to "串起来", build a pipeline, do it end-to-end, or generate both the method and experiment plan together.
94
92%
Does it follow best practices?
Impact
Pending
No eval scenarios have been run
Advisory
Suggest reviewing before use
Refine and concretize: $ARGUMENTS
Use this skill when the user does not want to stop at a refined method. The goal is to produce a coherent package that includes:
This skill composes two existing workflows:
research-refine for method refinementexperiment-plan for claim-driven validation planningFor stage-specific detail, read these sibling skills only when needed:
../research-refine/SKILL.md../experiment-plan/SKILL.mdDo not plan a large experiment suite on top of an unstable method. First stabilize the thesis. Then turn the stable thesis into experiments.
refine-logs/FINAL_PROPOSAL.mdrefine-logs/REVIEW_SUMMARY.mdrefine-logs/REFINEMENT_REPORT.mdrefine-logs/EXPERIMENT_PLAN.mdrefine-logs/EXPERIMENT_TRACKER.mdrefine-logs/PIPELINE_SUMMARY.mdrefine-logs/FINAL_PROPOSAL.md already exists and still matches the current request.research-refine stage.research-refine rather than planning experiments for the wrong method.Run the research-refine workflow and keep its V3 philosophy intact:
Exit this stage only when these are explicit:
If the verdict is still REVISE, continue into experiment planning only if the remaining weaknesses are clearly documented.
Before the experiment stage, write a short gate check:
If these answers are not crisp, tighten the final proposal first.
Run the experiment-plan workflow grounded in:
refine-logs/FINAL_PROPOSAL.mdrefine-logs/REVIEW_SUMMARY.mdrefine-logs/REFINEMENT_REPORT.mdEnsure the experiment plan covers:
Write refine-logs/PIPELINE_SUMMARY.md:
# Pipeline Summary
**Problem**: [problem]
**Final Method Thesis**: [one sentence]
**Final Verdict**: [READY / REVISE / RETHINK]
**Date**: [today]
## Final Deliverables
- Proposal: `refine-logs/FINAL_PROPOSAL.md`
- Review summary: `refine-logs/REVIEW_SUMMARY.md`
- Experiment plan: `refine-logs/EXPERIMENT_PLAN.md`
- Experiment tracker: `refine-logs/EXPERIMENT_TRACKER.md`
## Contribution Snapshot
- Dominant contribution:
- Optional supporting contribution:
- Explicitly rejected complexity:
## Must-Prove Claims
- [Claim 1]
- [Claim 2]
## First Runs to Launch
1. [Run]
2. [Run]
3. [Run]
## Main Risks
- [Risk]:
- [Mitigation]:
## Next Action
- Proceed to `/run-experiment`Pipeline complete.
Method output:
- refine-logs/FINAL_PROPOSAL.md
Experiment output:
- refine-logs/EXPERIMENT_PLAN.md
- refine-logs/EXPERIMENT_TRACKER.md
Pipeline summary:
- refine-logs/PIPELINE_SUMMARY.md
Best next step:
- /run-experimentLarge file handling: If the Write tool fails due to file size, immediately retry using Bash (cat << 'EOF' > file) to write in chunks. Do NOT ask the user for permission — just do it silently.
Do not let the experiment plan override the Problem Anchor.
Do not widen the paper story after method refinement unless a missing validation block is truly necessary.
Reuse the same claims across FINAL_PROPOSAL.md, EXPERIMENT_PLAN.md, and PIPELINE_SUMMARY.md.
Keep the main paper story compact.
If the method is intentionally simple, defend that simplicity in the experiment plan rather than adding new components.
If the method uses a modern LLM / VLM / Diffusion / RL primitive, make its necessity test explicit.
If the method does not need a frontier primitive, say that clearly and avoid forcing one.
Prefer the staged skills when the user only needs one stage; use this skill for the integrated flow.
/research-refine-pipeline -> one-shot method + experiment planning
/research-refine -> method refinement only
/experiment-plan -> experiment planning only
/run-experiment -> executiondc00dfb
If you maintain this skill, you can claim it as your own. Once claimed, you can manage eval scenarios, bundle related skills, attach documentation or rules, and ensure cross-agent compatibility.