paper-review
OpenJudgeの多段階パイプラインを用いて、PDFやLaTeX形式の論文を対象に、正確性、品質、新規性などを10分野に渡って評価・レビューし、参考文献のチェックやBibTeXファイルの検証なども行うSkill。
📜 元の英語説明(参考)
Review academic papers for correctness, quality, and novelty using OpenJudge's multi-stage pipeline. Supports PDF files and LaTeX source packages (.tar.gz/.zip). Covers 10 disciplines: cs, medicine, physics, chemistry, biology, economics, psychology, environmental_science, mathematics, social_sciences. Use when the user asks to review, evaluate, critique, or assess a research paper, check references, or verify a BibTeX file.
🇯🇵 日本人クリエイター向け解説
OpenJudgeの多段階パイプラインを用いて、PDFやLaTeX形式の論文を対象に、正確性、品質、新規性などを10分野に渡って評価・レビューし、参考文献のチェックやBibTeXファイルの検証なども行うSkill。
※ jpskill.com 編集部が日本のビジネス現場向けに補足した解説です。Skill本体の挙動とは独立した参考情報です。
下記のコマンドをコピーしてターミナル(Mac/Linux)または PowerShell(Windows)に貼り付けてください。 ダウンロード → 解凍 → 配置まで全自動。
mkdir -p ~/.claude/skills && cd ~/.claude/skills && curl -L -o paper-review.zip https://jpskill.com/download/10341.zip && unzip -o paper-review.zip && rm paper-review.zip
$d = "$env:USERPROFILE\.claude\skills"; ni -Force -ItemType Directory $d | Out-Null; iwr https://jpskill.com/download/10341.zip -OutFile "$d\paper-review.zip"; Expand-Archive "$d\paper-review.zip" -DestinationPath $d -Force; ri "$d\paper-review.zip"
完了後、Claude Code を再起動 → 普通に「動画プロンプト作って」のように話しかけるだけで自動発動します。
💾 手動でダウンロードしたい(コマンドが難しい人向け)
- 1. 下の青いボタンを押して
paper-review.zipをダウンロード - 2. ZIPファイルをダブルクリックで解凍 →
paper-reviewフォルダができる - 3. そのフォルダを
C:\Users\あなたの名前\.claude\skills\(Win)または~/.claude/skills/(Mac)へ移動 - 4. Claude Code を再起動
⚠️ ダウンロード・利用は自己責任でお願いします。当サイトは内容・動作・安全性について責任を負いません。
🎯 このSkillでできること
下記の説明文を読むと、このSkillがあなたに何をしてくれるかが分かります。Claudeにこの分野の依頼をすると、自動で発動します。
📦 インストール方法 (3ステップ)
- 1. 上の「ダウンロード」ボタンを押して .skill ファイルを取得
- 2. ファイル名の拡張子を .skill から .zip に変えて展開(macは自動展開可)
- 3. 展開してできたフォルダを、ホームフォルダの
.claude/skills/に置く- · macOS / Linux:
~/.claude/skills/ - · Windows:
%USERPROFILE%\.claude\skills\
- · macOS / Linux:
Claude Code を再起動すれば完了。「このSkillを使って…」と話しかけなくても、関連する依頼で自動的に呼び出されます。
詳しい使い方ガイドを見る →- 最終更新
- 2026-05-18
- 取得日時
- 2026-05-18
- 同梱ファイル
- 1
📖 Skill本文(日本語訳)
※ 原文(英語/中国語)を Gemini で日本語化したものです。Claude 自身は原文を読みます。誤訳がある場合は原文をご確認ください。
Paper Review Skill
OpenJudge の PaperReviewPipeline を使用した、多段階の学術論文レビュー:
- Safety check — jailbreak detection + format validation
- Correctness — objective errors (math, logic, data inconsistencies)
- Review — quality, novelty, significance (score 1–6)
- Criticality — severity of correctness issues
- BibTeX verification — cross-checks references against CrossRef/arXiv/DBLP
Prerequisites
# Install OpenJudge
pip install py-openjudge
# Extra dependency for paper_review
pip install litellm
pip install pypdfium2 # only if using vision mode (use_vision_for_pdf=True)
Gather from user before running
| Info | Required? | Notes |
|---|---|---|
| Paper file path | Yes | PDF or .tar.gz/.zip TeX package |
| API key | Yes | Env var preferred: OPENAI_API_KEY, ANTHROPIC_API_KEY, etc. |
| Model name | No | gpt-5.2, anthropic/claude-opus-4-6, dashscope/qwen-vl-plus. See Model selection below |
| Discipline | No | If not given, uses general CS/ML-oriented prompts |
| Venue | No | e.g. "NeurIPS 2025", "The Lancet" |
| Instructions | No | Free-form reviewer guidance, e.g. "Focus on experimental design" |
| Language | No | "en" (default) or "zh" for Simplified Chinese output |
| BibTeX file | No | Required only for reference verification |
| CrossRef email | No | Improves API rate limits for BibTeX verification |
Quick start
File type is auto-detected: .pdf → PDF review, .tar.gz/.zip → TeX review, .bib → BibTeX verification.
# Basic PDF review
python -m cookbooks.paper_review paper.pdf
# With discipline and venue
python -m cookbooks.paper_review paper.pdf \
--discipline cs --venue "NeurIPS 2025"
# Chinese output
python -m cookbooks.paper_review paper.pdf --language zh
# Custom reviewer instructions
python -m cookbooks.paper_review paper.pdf \
--instructions "Focus on experimental design and reproducibility"
# PDF + BibTeX verification
python -m cookbooks.paper_review paper.pdf \
--bib references.bib --email your@email.com
# Vision mode (for models that prefer images over text extraction)
python -m cookbooks.paper_review paper.pdf \
--vision --vision_max_pages 30 --format_vision_max_pages 10
# TeX source package
python -m cookbooks.paper_review paper_source.tar.gz \
--discipline biology --email your@email.com
# TeX source package with Chinese output and custom instructions
python -m cookbooks.paper_review paper_source.tar.gz \
--language zh --instructions "This is a short paper, be concise"
# Verify a standalone BibTeX file
python -m cookbooks.paper_review --bib_only references.bib --email your@email.com
All options
| Flag | Default | Description |
|---|---|---|
input (positional) |
— | Path to PDF, TeX package, or .bib file |
--bib_only |
— | Path to .bib file for standalone verification (no review) |
--model |
gpt-4o |
Model name |
--api_key |
env var | API key |
--base_url |
— | Custom API endpoint — must end at /v1, not /v1/chat/completions (litellm appends the path automatically) |
--discipline |
— | Academic discipline |
--venue |
— | Target conference/journal |
--instructions |
— | Free-form reviewer guidance |
--language |
en |
Output language: en or zh |
--bib |
— | Path to .bib file (for PDF review + reference verification) |
--email |
— | CrossRef mailto for BibTeX check |
--paper_name |
filename stem | Paper title in report |
--output |
auto | Output .md report path |
--no_safety |
off | Skip safety checks |
--no_correctness |
off | Skip correctness check |
--no_criticality |
off | Skip criticality verification |
--no_bib |
off | Skip BibTeX verification |
--vision |
on | Use vision mode (requires pypdfium2); enabled by default |
--vision_max_pages |
30 |
Max pages in vision mode (0 = all) |
--format_vision_max_pages |
10 |
Max pages for format check (0 = use --vision_max_pages) |
--timeout |
7500 |
API timeout in seconds |
Interpreting results
Review score (1–6):
- 1–2: Reject (major flaws or well-known results)
- 3: Borderline reject
- 4: Borderline accept
- 5–6: Accept / Strong accept
Correctness score (1–3):
- 1: No objective errors
- 2: Minor errors (notation, arithmetic in non-critical parts)
- 3: Major errors (wrong proofs, core algorithm flaws)
BibTeX verification:
verified: found in CrossRef/arXiv/DBLPsuspect: title/author mismatch or not found — manual check recommended
Model selection
このパイプラインは、モデル呼び出しに litellm を使用します。 プロバイダーのプレフィックスはパイプラインによって自動的に処理されます。以下の表を参照してください。
重要:モデルはマルチモーダル(ビジョン)入力をサポートしている必要があります。 PDFレビューでは、ページを画像としてレンダリングするためにビジョンモード(--vision)を使用します。これには、ビジョン対応モデルが必要です。テキストのみのモデルは失敗するか、空のレビューを生成します。
--model の値は provider/model-name という規則を使用しているため、パイプラインは呼び出す API エンドポイントを認識できます。以下の表に、渡す正確な文字列を示します。
| Provider | --model value |
Env var | Notes |
|---|---|---|---|
| OpenAI | gpt-5.2, gpt-5-mini, … |
OPENAI_API_KEY |
No prefix needed; gpt-5.2 is the current flagship vision model; check OpenAI models for the latest |
| Anthropic | anthropic/claude-opus-4-6, anthropic/claude-sonnet-4-6, … |
ANTHROPIC_API_KEY |
Use anthropic/ prefix; claude-opus-4-6 is the current flagship; check Anthropic models for the latest |
| DashScope (Qwen) | dashscope/qwen-vl-plus, dashscope/qwen-vl-max, … |
DASHSCOPE_API_KEY |
Use dashscope/ prefix; the pipeline auto-routes to DashScope’s OpenAI-compatible endpoint |
| Custom endpoint | bare model name | --api_key + --base_url |
Use the model name your |
📜 原文 SKILL.md(Claudeが読む英語/中国語)を展開
Paper Review Skill
Multi-stage academic paper review using the OpenJudge PaperReviewPipeline:
- Safety check — jailbreak detection + format validation
- Correctness — objective errors (math, logic, data inconsistencies)
- Review — quality, novelty, significance (score 1–6)
- Criticality — severity of correctness issues
- BibTeX verification — cross-checks references against CrossRef/arXiv/DBLP
Prerequisites
# Install OpenJudge
pip install py-openjudge
# Extra dependency for paper_review
pip install litellm
pip install pypdfium2 # only if using vision mode (use_vision_for_pdf=True)
Gather from user before running
| Info | Required? | Notes |
|---|---|---|
| Paper file path | Yes | PDF or .tar.gz/.zip TeX package |
| API key | Yes | Env var preferred: OPENAI_API_KEY, ANTHROPIC_API_KEY, etc. |
| Model name | No | gpt-5.2, anthropic/claude-opus-4-6, dashscope/qwen-vl-plus. See Model selection below |
| Discipline | No | If not given, uses general CS/ML-oriented prompts |
| Venue | No | e.g. "NeurIPS 2025", "The Lancet" |
| Instructions | No | Free-form reviewer guidance, e.g. "Focus on experimental design" |
| Language | No | "en" (default) or "zh" for Simplified Chinese output |
| BibTeX file | No | Required only for reference verification |
| CrossRef email | No | Improves API rate limits for BibTeX verification |
Quick start
File type is auto-detected: .pdf → PDF review, .tar.gz/.zip → TeX review, .bib → BibTeX verification.
# Basic PDF review
python -m cookbooks.paper_review paper.pdf
# With discipline and venue
python -m cookbooks.paper_review paper.pdf \
--discipline cs --venue "NeurIPS 2025"
# Chinese output
python -m cookbooks.paper_review paper.pdf --language zh
# Custom reviewer instructions
python -m cookbooks.paper_review paper.pdf \
--instructions "Focus on experimental design and reproducibility"
# PDF + BibTeX verification
python -m cookbooks.paper_review paper.pdf \
--bib references.bib --email your@email.com
# Vision mode (for models that prefer images over text extraction)
python -m cookbooks.paper_review paper.pdf \
--vision --vision_max_pages 30 --format_vision_max_pages 10
# TeX source package
python -m cookbooks.paper_review paper_source.tar.gz \
--discipline biology --email your@email.com
# TeX source package with Chinese output and custom instructions
python -m cookbooks.paper_review paper_source.tar.gz \
--language zh --instructions "This is a short paper, be concise"
# Verify a standalone BibTeX file
python -m cookbooks.paper_review --bib_only references.bib --email your@email.com
All options
| Flag | Default | Description |
|---|---|---|
input (positional) |
— | Path to PDF, TeX package, or .bib file |
--bib_only |
— | Path to .bib file for standalone verification (no review) |
--model |
gpt-4o |
Model name |
--api_key |
env var | API key |
--base_url |
— | Custom API endpoint — must end at /v1, not /v1/chat/completions (litellm appends the path automatically) |
--discipline |
— | Academic discipline |
--venue |
— | Target conference/journal |
--instructions |
— | Free-form reviewer guidance |
--language |
en |
Output language: en or zh |
--bib |
— | Path to .bib file (for PDF review + reference verification) |
--email |
— | CrossRef mailto for BibTeX check |
--paper_name |
filename stem | Paper title in report |
--output |
auto | Output .md report path |
--no_safety |
off | Skip safety checks |
--no_correctness |
off | Skip correctness check |
--no_criticality |
off | Skip criticality verification |
--no_bib |
off | Skip BibTeX verification |
--vision |
on | Use vision mode (requires pypdfium2); enabled by default |
--vision_max_pages |
30 |
Max pages in vision mode (0 = all) |
--format_vision_max_pages |
10 |
Max pages for format check (0 = use --vision_max_pages) |
--timeout |
7500 |
API timeout in seconds |
Interpreting results
Review score (1–6):
- 1–2: Reject (major flaws or well-known results)
- 3: Borderline reject
- 4: Borderline accept
- 5–6: Accept / Strong accept
Correctness score (1–3):
- 1: No objective errors
- 2: Minor errors (notation, arithmetic in non-critical parts)
- 3: Major errors (wrong proofs, core algorithm flaws)
BibTeX verification:
verified: found in CrossRef/arXiv/DBLPsuspect: title/author mismatch or not found — manual check recommended
Model selection
This pipeline uses litellm for model calls. Provider prefixes are handled automatically by the pipeline — see the table below.
IMPORTANT: The model MUST support multimodal (vision) input. PDF review uses vision mode
(--vision) to render pages as images, which requires a vision-capable model. Text-only models
will fail or produce empty reviews.
The --model value uses a provider/model-name convention so the pipeline knows
which API endpoint to call. The table below shows the exact string to pass:
| Provider | --model value |
Env var | Notes |
|---|---|---|---|
| OpenAI | gpt-5.2, gpt-5-mini, … |
OPENAI_API_KEY |
No prefix needed; gpt-5.2 is the current flagship vision model; check OpenAI models for the latest |
| Anthropic | anthropic/claude-opus-4-6, anthropic/claude-sonnet-4-6, … |
ANTHROPIC_API_KEY |
Use anthropic/ prefix; claude-opus-4-6 is the current flagship; check Anthropic models for the latest |
| DashScope (Qwen) | dashscope/qwen-vl-plus, dashscope/qwen-vl-max, … |
DASHSCOPE_API_KEY |
Use dashscope/ prefix; the pipeline auto-routes to DashScope’s OpenAI-compatible endpoint |
| Custom endpoint | bare model name | --api_key + --base_url |
Use the model name your endpoint expects; no prefix needed when --base_url is set |
Note on prefixes: The
dashscope/andanthropic/prefixes are interpreted by the pipeline itself — do not add them to the actual API key or base URL. For OpenAI models the bare model name (e.g.gpt-5.2) is sufficient.
If the user does not specify a model, choose one based on available API keys:
DASHSCOPE_API_KEYset → usedashscope/qwen-vl-plus(vision-capable)OPENAI_API_KEYset → search web for the latest vision-capable OpenAI model and use it (currentlygpt-5.2)ANTHROPIC_API_KEYset → search web for the latest vision-capable Anthropic model and use it withanthropic/prefix (currentlyanthropic/claude-opus-4-6)
Vision mode is enabled by default for PDF review. Pages are rendered as images, which
preserves formatting, figures, and tables. To disable, pass --no_vision (not recommended).
The model must support multimodal (vision) input.
Additional resources
- Full
PipelineConfigoptions: reference.md - Discipline details and venues: reference.md
Troubleshooting API errors
CRITICAL: When the pipeline fails with an API error, you MUST diagnose and fix the root cause. Do NOT fall back to reading the PDF as plain text yourself and calling the API manually — this bypasses the entire review pipeline and produces incorrect, incomplete results.
Diagnose by reading the full error message, then follow the checklist below:
AuthenticationError / 401
- The API key is wrong or not set.
- Check the correct env var for the provider (see Model selection table).
- For DashScope:
echo $DASHSCOPE_API_KEY— must be non-empty. - Fix: export the correct key and re-run.
NotFoundError / 404 — model not found
- The model name string is wrong.
- Search the web for the provider's current model list and use the exact API ID.
- Common mistakes: using a ChatGPT UI name instead of the API ID, outdated snapshot suffix.
- Fix: correct
--modeland re-run.
BadRequestError / 400
- Often caused by
--base_urlending with/v1/chat/completionsinstead of/v1. litellm appends the path automatically — strip everything after/v1. - May also indicate the model does not support vision/image input.
Use a vision-capable model (see Model selection) or omit
--vision. - Fix: correct
--base_urlor switch to a vision-capable model and re-run.
Connection error / endpoint not reachable
--base_urlpoints to the wrong host or port.- Test the endpoint first:
curl <base_url>/models -H "Authorization: Bearer <key>" - Fix: correct
--base_urlto the reachable endpoint and re-run.
Timeout
- The model is taking too long (common for long PDFs with vision mode).
- Fix: increase
--timeout(default 7500 s) or reduce--vision_max_pages.
After fixing, always re-run the full pipeline command.
Never summarise or interpret the paper yourself as a substitute for a failed pipeline run.