> research-refine-pipeline
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.
curl "https://skillshub.wtf/wanshuiyin/Auto-claude-code-research-in-sleep/research-refine-pipeline?format=md"Research Refine Pipeline: End-to-End Method and Experiment Planning
Refine and concretize: $ARGUMENTS
Overview
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:
- a problem-anchored, elegant final proposal
- the review history explaining why the method is focused
- a detailed experiment roadmap tied to the paper's claims
- a compact pipeline summary that says what to run next
This skill composes two existing workflows:
research-refinefor method refinementexperiment-planfor claim-driven validation planning
For stage-specific detail, read these sibling skills only when needed:
../research-refine/SKILL.md../experiment-plan/SKILL.md
Core Rule
Do not plan a large experiment suite on top of an unstable method. First stabilize the thesis. Then turn the stable thesis into experiments.
Default Outputs
refine-logs/FINAL_PROPOSAL.mdrefine-logs/REVIEW_SUMMARY.mdrefine-logs/REFINEMENT_REPORT.mdrefine-logs/EXPERIMENT_PLAN.mdrefine-logs/EXPERIMENT_TRACKER.mdrefine-logs/PIPELINE_SUMMARY.md
Workflow
Phase 0: Triage the Starting Point
- Extract the problem, rough approach, constraints, resources, and target venue.
- Check whether
refine-logs/FINAL_PROPOSAL.mdalready exists and still matches the current request. - If the proposal is missing, stale, or materially different from the current request, run the full
research-refinestage. - If the proposal is already strong and aligned, reuse it and jump to experiment planning.
- If in doubt, prefer re-running
research-refinerather than planning experiments for the wrong method.
Phase 1: Method Refinement Stage
Run the research-refine workflow and keep its V3 philosophy intact:
- preserve the Problem Anchor
- prefer the smallest adequate mechanism
- keep one dominant contribution
- modernize only when it improves the paper
Exit this stage only when these are explicit:
- the final method thesis
- the dominant contribution
- the complexity intentionally rejected
- the key claims and must-run ablations
- the remaining risks, if any
If the verdict is still REVISE, continue into experiment planning only if the remaining weaknesses are clearly documented.
Phase 2: Planning Gate
Before the experiment stage, write a short gate check:
- What is the final method thesis?
- What is the dominant contribution?
- What complexity was intentionally rejected?
- Which reviewer concerns still matter for validation?
- Is a frontier primitive central, optional, or absent?
If these answers are not crisp, tighten the final proposal first.
Phase 3: Experiment Planning Stage
Run the experiment-plan workflow grounded in:
refine-logs/FINAL_PROPOSAL.mdrefine-logs/REVIEW_SUMMARY.mdrefine-logs/REFINEMENT_REPORT.md
Ensure the experiment plan covers:
- the main anchor result
- novelty isolation
- a simplicity or deletion check
- a frontier necessity check if applicable
- run order, budget, and decision gates
Phase 4: Integration Summary
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`
Phase 5: Present a Brief Summary to the User
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-experiment
Key Rules
-
Large 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, andPIPELINE_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.
Composing with Other Skills
/research-refine-pipeline -> one-shot method + experiment planning
/research-refine -> method refinement only
/experiment-plan -> experiment planning only
/run-experiment -> execution
> related_skills --same-repo
> run-experiment
Deploy and run ML experiments on local or remote GPU servers. Use when user says "run experiment", "deploy to server", "跑实验", or needs to launch training jobs.
> research-review
Get a deep critical review of research from GPT via Codex MCP. Use when user says "review my research", "help me review", "get external review", or wants critical feedback on research ideas, papers, or experimental results.
> research-refine
Turn a vague research direction into a problem-anchored, elegant, frontier-aware, implementation-oriented method plan via iterative GPT-5.4 review. Use when the user says "refine my approach", "帮我细化方案", "decompose this problem", "打磨idea", "refine research plan", "细化研究方案", or wants a concrete research method that stays simple, focused, and top-venue ready instead of a vague or overbuilt idea.
> research-pipeline
Full research pipeline: Workflow 1 (idea discovery) → implementation → Workflow 2 (auto review loop). Goes from a broad research direction all the way to a submission-ready paper. Use when user says "全流程", "full pipeline", "从找idea到投稿", "end-to-end research", or wants the complete autonomous research lifecycle.