ml-paper-writing
NeurIPS、ICMLなどのトップAIおよびシステム会議向けに機械学習論文を執筆するための専門的なガイダンスを提供し、論文が出版基準を満たすことを保証します。
npx skills add zechenzhangagi/ai-research-skills --skill ml-paper-writingBefore / After 効果比較
1 组機械学習の論文を執筆する際、トップ会議の厳格な基準を満たすのは困難です。論文の構成、表現、実験デザインに不足があることがよくあります。
専門家レベルの指導を提供し、論文がトップAI会議の発表基準を満たすことを保証します。論文の質と採択機会を大幅に向上させます。
ml-paper-writing
ML Paper Writing for Top AI & Systems Conferences
Expert-level guidance for writing publication-ready papers targeting NeurIPS, ICML, ICLR, ACL, AAAI, COLM (ML/AI venues) and OSDI, NSDI, ASPLOS, SOSP (Systems venues). This skill combines writing philosophy from top researchers (Nanda, Farquhar, Karpathy, Lipton, Steinhardt) with practical tools: LaTeX templates, citation verification APIs, and conference checklists.
Core Philosophy: Collaborative Writing
Paper writing is collaborative, but Claude should be proactive in delivering drafts.
The typical workflow starts with a research repository containing code, results, and experimental artifacts. Claude's role is to:
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Understand the project by exploring the repo, results, and existing documentation
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Deliver a complete first draft when confident about the contribution
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Search literature using web search and APIs to find relevant citations
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Refine through feedback cycles when the scientist provides input
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Ask for clarification only when genuinely uncertain about key decisions
Key Principle: Be proactive. If the repo and results are clear, deliver a full draft. Don't block waiting for feedback on every section—scientists are busy. Produce something concrete they can react to, then iterate based on their response.
⚠️ CRITICAL: Never Hallucinate Citations
This is the most important rule in academic writing with AI assistance.
The Problem
AI-generated citations have a ~40% error rate. Hallucinated references—papers that don't exist, wrong authors, incorrect years, fabricated DOIs—are a serious form of academic misconduct that can result in desk rejection or retraction.
The Rule
NEVER generate BibTeX entries from memory. ALWAYS fetch programmatically.
Action ✅ Correct ❌ Wrong
Adding a citation Search API → verify → fetch BibTeX Write BibTeX from memory
Uncertain about a paper
Mark as [CITATION NEEDED]
Guess the reference
Can't find exact paper Note: "placeholder - verify" Invent similar-sounding paper
When You Can't Verify a Citation
If you cannot programmatically verify a citation, you MUST:
% EXPLICIT PLACEHOLDER - requires human verification
\cite{PLACEHOLDER_author2024_verify_this} % TODO: Verify this citation exists
Always tell the scientist: "I've marked [X] citations as placeholders that need verification. I could not confirm these papers exist."
Recommended: Install Exa MCP for Paper Search
For the best paper search experience, install Exa MCP which provides real-time academic search:
Claude Code:
claude mcp add exa -- npx -y mcp-remote "https://mcp.exa.ai/mcp"
Cursor / VS Code (add to MCP settings):
{
"mcpServers": {
"exa": {
"type": "http",
"url": "https://mcp.exa.ai/mcp"
}
}
}
Exa MCP enables searches like:
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"Find papers on RLHF for language models published after 2023"
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"Search for transformer architecture papers by Vaswani"
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"Get recent work on sparse autoencoders for interpretability"
Then verify results with Semantic Scholar API and fetch BibTeX via DOI.
Workflow 0: Starting from a Research Repository
When beginning paper writing, start by understanding the project:
Project Understanding:
- [ ] Step 1: Explore the repository structure
- [ ] Step 2: Read README, existing docs, and key results
- [ ] Step 3: Identify the main contribution with the scientist
- [ ] Step 4: Find papers already cited in the codebase
- [ ] Step 5: Search for additional relevant literature
- [ ] Step 6: Outline the paper structure together
- [ ] Step 7: Draft sections iteratively with feedback
Step 1: Explore the Repository
# Understand project structure
ls -la
find . -name "*.py" | head -20
find . -name "*.md" -o -name "*.txt" | xargs grep -l -i "result\|conclusion\|finding"
Look for:
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README.md- Project overview and claims -
results/,outputs/,experiments/- Key findings -
configs/- Experimental settings -
Existing
.bibfiles or citation references -
Any draft documents or notes
Step 2: Identify Existing Citations
Check for papers already referenced in the codebase:
# Find existing citations
grep -r "arxiv\|doi\|cite" --include="*.md" --include="*.bib" --include="*.py"
find . -name "*.bib"
These are high-signal starting points for Related Work—the scientist has already deemed them relevant.
Step 3: Clarify the Contribution
Before writing, explicitly confirm with the scientist:
"Based on my understanding of the repo, the main contribution appears to be [X]. The key results show [Y]. Is this the framing you want for the paper, or should we emphasize different aspects?"
Never assume the narrative—always verify with the human.
Step 4: Search for Additional Literature
Use web search to find relevant papers:
Search queries to try:
- "[main technique] + [application domain]"
- "[baseline method] comparison"
- "[problem name] state-of-the-art"
- Author names from existing citations
Then verify and retrieve BibTeX using the citation workflow below.
Step 5: Deliver a First Draft
Be proactive—deliver a complete draft rather than asking permission for each section.
If the repo provides clear results and the contribution is apparent:
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Write the full first draft end-to-end
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Present the complete draft for feedback
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Iterate based on scientist's response
If genuinely uncertain about framing or major claims:
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Draft what you can confidently
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Flag specific uncertainties: "I framed X as the main contribution—let me know if you'd prefer to emphasize Y instead"
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Continue with the draft rather than blocking
Questions to include with the draft (not before):
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"I emphasized X as the main contribution—adjust if needed"
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"I highlighted results A, B, C—let me know if others are more important"
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"Related work section includes [papers]—add any I missed"
When to Use This Skill
Use this skill when:
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Starting from a research repo to write a paper
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Drafting or revising specific sections
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Finding and verifying citations for related work
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Formatting for conference submission
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Resubmitting to a different venue (format conversion)
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Iterating on drafts with scientist feedback
Always remember: First drafts are starting points for discussion, not final outputs.
Balancing Proactivity and Collaboration
Default: Be proactive. Deliver drafts, then iterate.
Confidence Level Action
High (clear repo, obvious contribution) Write full draft, deliver, iterate on feedback
Medium (some ambiguity) Write draft with flagged uncertainties, continue
Low (major unknowns) Ask 1-2 targeted questions, then draft
Draft first, ask with the draft (not before):
Section Draft Autonomously Flag With Draft
Abstract Yes "Framed contribution as X—adjust if needed"
Introduction Yes "Emphasized problem Y—correct if wrong"
Methods Yes "Included details A, B, C—add missing pieces"
Experiments Yes "Highlighted results 1, 2, 3—reorder if needed"
Related Work Yes "Cited papers X, Y, Z—add any I missed"
Only block for input when:
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Target venue is unclear (affects page limits, framing)
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Multiple contradictory framings seem equally valid
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Results seem incomplete or inconsistent
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Explicit request to review before continuing
Don't block for:
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Word choice decisions
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Section ordering
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Which specific results to show (make a choice, flag it)
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Citation completeness (draft with what you find, note gaps)
The Narrative Principle
The single most critical insight: Your paper is not a collection of experiments—it's a story with one clear contribution supported by evidence.
Every successful ML paper centers on what Neel Nanda calls "the narrative": a short, rigorous, evidence-based technical story with a takeaway readers care about.
Three Pillars (must be crystal clear by end of introduction):
Pillar Description Example
The What 1-3 specific novel claims within cohesive theme "We prove that X achieves Y under condition Z"
The Why Rigorous empirical evidence supporting claims Strong baselines, experiments distinguishing hypotheses
The So What Why readers should care Connection to recognized community problems
If you cannot state your contribution in one sentence, you don't yet have a paper.
Paper Structure Workflow
Workflow 1: Writing a Complete Paper (Iterative)
Copy this checklist and track progress. Each step involves drafting → feedback → revision:
Paper Writing Progress:
- [ ] Step 1: Define the one-sentence contribution (with scientist)
- [ ] Step 2: Draft Figure 1 → get feedback → revise
- [ ] Step 3: Draft abstract → get feedback → revise
- [ ] Step 4: Draft introduction → get feedback → revise
- [ ] Step 5: Draft methods → get feedback → revise
- [ ] Step 6: Draft experiments → get feedback → revise
- [ ] Step 7: Draft related work → get feedback → revise
- [ ] Step 8: Draft limitations → get feedback → revise
- [ ] Step 9: Complete paper checklist (required)
- [ ] Step 10: Final review cycle and submission
Step 1: Define the One-Sentence Contribution
This step requires explicit confirmation from the scientist.
Before writing anything, articulate and verify:
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What is the single thing your paper contributes?
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What was not obvious or present before your work?
"I propose framing the contribution as: '[one sentence]'. Does this capture what you see as the main takeaway? Should we adjust the emphasis?"
Step 2: Draft Figure 1
Figure 1 deserves special attention—many readers skip directly to it.
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Convey core idea, approach, or most compelling result
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Use vector graphics (PDF/EPS for plots)
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Write captions that stand alone without main text
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Ensure readability in black-and-white (8% of men have color vision deficiency)
Step 3: Write Abstract (5-Sentence Formula)
From Sebastian Farquhar (DeepMind):
1. What you achieved: "We introduce...", "We prove...", "We demonstrate..."
2. Why this is hard and important
3. How you do it (with specialist keywords for discoverability)
4. What evidence you have
5. Your most remarkable number/result
Delete generic openings like "Large language models have achieved remarkable success..."
Step 4: Write Introduction (1-1.5 pages max)
Must include:
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2-4 bullet contribution list (max 1-2 lines each in two-column format)
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Clear problem statement
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Brief approach overview
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Methods should start by page 2-3 maximum
Step 5: Methods Section
Enable reimplementation:
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Conceptual outline or pseudocode
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All hyperparameters listed
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Architectural details sufficient for reproduction
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Present final design decisions; ablations go in experiments
Step 6: Experiments Section
For each experiment, explicitly state:
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What claim it supports
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How it connects to main contribution
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Experimental setting (details in appendix)
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What to observe: "the blue line shows X, which demonstrates Y"
Requirements:
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Error bars with methodology (standard deviation vs standard error)
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Hyperparameter search ranges
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Compute infrastructure (GPU type, total hours)
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Seed-setting methods
Step 7: Related Work
Organize methodologically, not paper-by-paper:
Good: "One line of work uses Floogledoodle's assumption [refs] whereas we use Doobersnoddle's assumption because..."
Bad: "Snap et al. introduced X while Crackle et al. introduced Y."
Cite generously—reviewers likely authored relevant papers.
Step 8: Limitations Section (REQUIRED)
All major conferences require this. Counter-intuitively, honesty helps:
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Reviewers are instructed not to penalize honest limitation acknowledgment
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Pre-empt criticisms by identifying weaknesses first
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Explain why limitations don't undermine core claims
Step 9: Paper Checklist
NeurIPS, ICML, and ICLR all require paper checklists. See references/checklists.md.
Writing Philosophy for Top ML Conferences
This section distills the most important writing principles from leading ML researchers. These aren't optional style suggestions—they're what separates accepted papers from rejected ones.
"A paper is a short, rigorous, evidence-based technical story with a takeaway readers care about." — Neel Nanda
The Sources Behind This Guidance
This skill synthesizes writing philosophy from researchers who have published extensively at top venues:
Source Key Contribution Link
Neel Nanda (Google DeepMind) The Narrative Principle, What/Why/So What framework How to Write ML Papers
Sebastian Farquhar (DeepMind) 5-sentence abstract formula How to Write ML Papers
Gopen & Swan 7 principles of reader expectations Science of Scientific Writing
Zachary Lipton Word choice, eliminating hedging Heuristics for Scientific Writing
Jacob Steinhardt (UC Berkeley) Precision, consistent terminology Writing Tips
Ethan Perez (Anthropic) Micro-level clarity tips Easy Paper Writing Tips
Andrej Karpathy Single contribution focus Various lectures
For deeper dives into any of these, see:
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references/writing-guide.md - Full explanations with examples
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references/sources.md - Complete bibliography
Time Allocation (From Neel Nanda)
Spend approximately equal time on each of:
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The abstract
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The introduction
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The figures
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Everything else combined
Why? Most reviewers form judgments before reaching your methods. Readers encounter your paper as: title → abstract → introduction → figures → maybe the rest.
Writing Style Guidelines
Sentence-Level Clarity (Gopen & Swan's 7 Principles)
These principles are based on how readers actually process prose. Violating them forces readers to spend cognitive effort on structure rather than content.
Principle Rule Example
Subject-verb proximity Keep subject and verb close ❌ "The model, which was trained on..., achieves" → ✅ "The model achieves... after training on..."
Stress position Place emphasis at sentence ends ❌ "Accuracy improves by 15% when using attention" → ✅
...
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