idea-creator
Generate and rank research ideas given a broad direction. Use when user says "找idea", "brainstorm ideas", "generate research ideas", "what can we work on", or wants to explore a research area for publishable directions.
Packaged view
This page reorganizes the original catalog entry around fit, installability, and workflow context first. The original raw source lives below.
Install command
npx @skill-hub/cli install wanshuiyin-auto-claude-code-research-in-sleep-idea-creator
Repository
Skill path: skills/idea-creator
Generate and rank research ideas given a broad direction. Use when user says "找idea", "brainstorm ideas", "generate research ideas", "what can we work on", or wants to explore a research area for publishable directions.
Open repositoryBest for
Primary workflow: Research & Ops.
Technical facets: Full Stack.
Target audience: everyone.
License: Unknown.
Original source
Catalog source: SkillHub Club.
Repository owner: wanshuiyin.
This is still a mirrored public skill entry. Review the repository before installing into production workflows.
What it helps with
- Install idea-creator into Claude Code, Codex CLI, Gemini CLI, or OpenCode workflows
- Review https://github.com/wanshuiyin/Auto-claude-code-research-in-sleep before adding idea-creator to shared team environments
- Use idea-creator for development workflows
Works across
Favorites: 0.
Sub-skills: 0.
Aggregator: No.
Original source / Raw SKILL.md
---
name: idea-creator
description: Generate and rank research ideas given a broad direction. Use when user says "找idea", "brainstorm ideas", "generate research ideas", "what can we work on", or wants to explore a research area for publishable directions.
argument-hint: [research-direction]
allowed-tools: Bash(*), Read, Write, Grep, Glob, WebSearch, WebFetch, Agent, mcp__codex__codex, mcp__codex__codex-reply
---
# Research Idea Creator
Generate publishable research ideas for: $ARGUMENTS
## Overview
Given a broad research direction from the user, systematically generate, validate, and rank concrete research ideas. This skill composes with `/research-lit`, `/novelty-check`, and `/research-review` to form a complete idea discovery pipeline.
## Constants
- **PILOT_MAX_HOURS = 2** — Skip any pilot estimated to take > 2 hours per GPU. Flag as "needs manual pilot".
- **PILOT_TIMEOUT_HOURS = 3** — Hard timeout: kill pilots exceeding 3 hours. Collect partial results if available.
- **MAX_PILOT_IDEAS = 3** — Pilot at most 3 ideas in parallel. Additional ideas are validated on paper only.
- **MAX_TOTAL_GPU_HOURS = 8** — Total GPU budget for all pilots combined.
- **REVIEWER_MODEL = `gpt-5.4`** — Model used via Codex MCP for brainstorming and review. Must be an OpenAI model (e.g., `gpt-5.4`, `o3`, `gpt-4o`).
> 💡 Override via argument, e.g., `/idea-creator "topic" — pilot budget: 4h per idea, 20h total`.
## Workflow
### Phase 1: Landscape Survey (5-10 min)
Map the research area to understand what exists and where the gaps are.
1. **Scan local paper library first**: Check `papers/` and `literature/` in the project directory for existing PDFs. Read first 3 pages of relevant papers to build a baseline understanding before searching online. This avoids re-discovering what the user already knows.
2. **Search recent literature** using WebSearch:
- Top venues in the last 2 years (NeurIPS, ICML, ICLR, ACL, EMNLP, etc.)
- Recent arXiv preprints (last 6 months)
- Use 5+ different query formulations
- Read abstracts and introductions of the top 10-15 papers
2. **Build a landscape map**:
- Group papers by sub-direction / approach
- Identify what has been tried and what hasn't
- Note recurring limitations mentioned in "Future Work" sections
- Flag any open problems explicitly stated by multiple papers
3. **Identify structural gaps**:
- Methods that work in domain A but haven't been tried in domain B
- Contradictory findings between papers (opportunity for resolution)
- Assumptions that everyone makes but nobody has tested
- Scaling regimes that haven't been explored
- Diagnostic questions that nobody has asked
### Phase 2: Idea Generation (brainstorm with external LLM)
Use the external LLM via Codex MCP for divergent thinking:
```
mcp__codex__codex:
model: REVIEWER_MODEL
config: {"model_reasoning_effort": "xhigh"}
prompt: |
You are a senior ML researcher brainstorming research ideas.
Research direction: [user's direction]
Here is the current landscape:
[paste landscape map from Phase 1]
Key gaps identified:
[paste gaps from Phase 1]
Generate 8-12 concrete research ideas. For each idea:
1. One-sentence summary
2. Core hypothesis (what you expect to find and why)
3. Minimum viable experiment (what's the cheapest way to test this?)
4. Expected contribution type: empirical finding / new method / theoretical result / diagnostic
5. Risk level: LOW (likely works) / MEDIUM (50-50) / HIGH (speculative)
6. Estimated effort: days / weeks / months
Prioritize ideas that are:
- Testable with moderate compute (8x RTX 3090 or less)
- Likely to produce a clear positive OR negative result (both are publishable)
- Not "apply X to Y" unless the application reveals genuinely surprising insights
- Differentiated from the 10-15 papers above
Be creative but grounded. A great idea is one where the answer matters regardless of which way it goes.
```
Save the threadId for follow-up.
### Phase 3: First-Pass Filtering
For each generated idea, quickly evaluate:
1. **Feasibility check**: Can we actually run this experiment with available resources?
- Compute requirements (estimate GPU-hours)
- Data availability
- Implementation complexity
- Skip ideas requiring > 1 week of GPU time or unavailable datasets
2. **Novelty quick-check**: For each idea, do 2-3 targeted searches to see if it's already been done. Full `/novelty-check` comes later for survivors.
3. **Impact estimation**: Would a reviewer care about the result?
- "So what?" test: if the experiment succeeds, does it change how people think?
- Is the finding actionable or just interesting?
Eliminate ideas that fail any of these. Typically 8-12 ideas reduce to 4-6.
### Phase 4: Deep Validation (for top ideas)
For each surviving idea, run a deeper evaluation:
1. **Novelty check**: Use the `/novelty-check` workflow (multi-source search + GPT-5.4 cross-verification) for each idea
2. **Critical review**: Use GPT-5.4 via `mcp__codex__codex-reply` (same thread):
```
Here are our top ideas after filtering:
[paste surviving ideas with novelty check results]
For each, play devil's advocate:
- What's the strongest objection a reviewer would raise?
- What's the most likely failure mode?
- How would you rank these for a top venue submission?
- Which 2-3 would you actually work on?
```
3. **Combine rankings**: Merge your assessment with GPT-5.4's ranking. Select top 2-3 ideas for pilot experiments.
### Phase 5: Parallel Pilot Experiments (for top 2-3 ideas)
Before committing to a full research effort, run cheap pilot experiments to get empirical signal. This is the key differentiator from paper-only validation.
1. **Design pilots**: For each top idea, define the minimal experiment that would give a positive or negative signal:
- Single seed, small scale (e.g., small dataset subset, fewer epochs)
- Target: 30 min - PILOT_MAX_HOURS per pilot on 1 GPU
- **Estimate GPU-hours BEFORE launching.** If estimated time > PILOT_MAX_HOURS, reduce scale (fewer epochs, smaller subset) or flag as "needs manual pilot"
- Clear success metric defined upfront (e.g., "if metric improves by > 1%, signal is positive")
2. **Deploy in parallel**: Use `/run-experiment` to launch pilots on different GPUs simultaneously:
```
GPU 0: Pilot for Idea 1
GPU 1: Pilot for Idea 2
GPU 2: Pilot for Idea 3
```
Use `run_in_background: true` to launch all at once.
3. **Collect results**: Use `/monitor-experiment` to check progress. If any pilot exceeds PILOT_TIMEOUT_HOURS, kill it and collect partial results. Once all pilots complete (or timeout), compare:
- Which ideas showed positive signal?
- Which showed null/negative results? (eliminate or deprioritize)
- Any surprising findings that suggest a pivot?
- Total GPU-hours consumed (track against MAX_TOTAL_GPU_HOURS budget)
4. **Re-rank based on empirical evidence**: Update the idea ranking using pilot results. An idea with strong pilot signal jumps ahead of a theoretically appealing but untested idea.
Note: Skip this phase if the ideas are purely theoretical or if no GPU is available. Flag skipped ideas as "needs pilot validation" in the report.
### Phase 6: Output — Ranked Idea Report
Write a structured report to `IDEA_REPORT.md` in the project root:
```markdown
# Research Idea Report
**Direction**: [user's research direction]
**Generated**: [date]
**Ideas evaluated**: X generated → Y survived filtering → Z piloted → W recommended
## Landscape Summary
[3-5 paragraphs on the current state of the field]
## Recommended Ideas (ranked)
### Idea 1: [title]
- **Hypothesis**: [one sentence]
- **Minimum experiment**: [concrete description]
- **Expected outcome**: [what success/failure looks like]
- **Novelty**: X/10 — closest work: [paper]
- **Feasibility**: [compute, data, implementation estimates]
- **Risk**: LOW/MEDIUM/HIGH
- **Contribution type**: empirical / method / theory / diagnostic
- **Pilot result**: [POSITIVE: metric +X% / NEGATIVE: no signal / SKIPPED: needs GPU]
- **Reviewer's likely objection**: [strongest counterargument]
- **Why we should do this**: [1-2 sentences]
### Idea 2: [title]
...
## Eliminated Ideas (for reference)
| Idea | Reason eliminated |
|------|-------------------|
| ... | Already done by [paper] |
| ... | Requires > 1 week GPU time |
| ... | Result wouldn't be interesting either way |
## Pilot Experiment Results
| Idea | GPU | Time | Key Metric | Signal |
|------|-----|------|------------|--------|
| Idea 1 | GPU 0 | 45 min | +2.3% CE | POSITIVE |
| Idea 2 | GPU 1 | 30 min | -0.1% CE | NEGATIVE |
| Idea 3 | GPU 2 | 1.5 hr | +0.8% CE | WEAK POSITIVE |
## Suggested Execution Order
1. Start with Idea 1 (positive pilot signal, lowest risk)
2. Idea 3 as backup (weak signal, may need larger scale to confirm)
3. Idea 2 eliminated by pilot — negative result documented
## Next Steps
- [ ] Scale up Idea 1 to full experiment (multi-seed, full dataset)
- [ ] If confirmed, invoke /auto-review-loop for full iteration
```
## Key Rules
- The user provides a DIRECTION, not an idea. Your job is to generate the ideas.
- Quantity first, quality second: brainstorm broadly, then filter ruthlessly.
- A good negative result is just as publishable as a positive one. Prioritize ideas where the answer matters regardless of direction.
- Don't fall in love with any idea before validating it. Be willing to kill ideas.
- Always estimate compute cost. An idea that needs 1000 GPU-hours is not actionable for most researchers.
- "Apply X to Y" is the lowest form of research idea. Push for deeper questions.
- Include eliminated ideas in the report — they save future time by documenting dead ends.
- If the user's direction is too broad, ask them to narrow it before proceeding.
## Composing with Other Skills
After this skill produces the ranked report:
```
/idea-creator "direction" → ranked ideas
/novelty-check "top idea" → deep novelty verification (already done in Phase 4, but user can re-run)
/research-review "top idea" → external critical feedback
implement → write code
/run-experiment → deploy to GPU
/auto-review-loop → iterate until submission-ready
```