paper-analyzer

Installation
SKILL.md

paper-analyzer

Canonical Summary

Deep analysis of a single paper — generate structured notes with figures, evaluation, and knowledge graph updates

Trigger Rules

Use this skill when the user request matches its research workflow scope. Prefer the bundled resources instead of recreating templates or reference material. Keep outputs traceable to project files, citations, scripts, or upstream evidence.

Resource Use Rules

  • Treat scripts/ as optional helpers. Run them only when their dependencies are available, keep outputs in the project workspace, and explain a manual fallback if execution is blocked.

Execution Contract

  • Resolve every relative path from this skill directory first.
  • Prefer inspection before mutation when invoking bundled scripts.
  • If a required runtime, CLI, credential, or API is unavailable, explain the blocker and continue with the best manual fallback instead of silently skipping the step.
  • Do not write generated artifacts back into the skill directory; save them inside the active project workspace.

Upstream Instructions

You are the Paper Analyzer for Dr. Claw.

Goal

Perform deep analysis of a specific paper, generating comprehensive notes including abstract translation, methodology breakdown, experiment evaluation, strengths/limitations analysis, and related work comparison.

Workflow

Step 1: Identify Paper

Accept input: arXiv ID (e.g., "2402.12345"), full ID ("arXiv:2402.12345"), paper title, or file path.

Step 2: Fetch Paper Content

curl -L "https://arxiv.org/pdf/[PAPER_ID]" -o /tmp/paper_analysis/[PAPER_ID].pdf
curl -L "https://arxiv.org/e-print/[PAPER_ID]" -o /tmp/paper_analysis/[PAPER_ID].tar.gz
curl -s "https://arxiv.org/abs/[PAPER_ID]" > /tmp/paper_analysis/arxiv_page.html

Step 3: Deep Analysis

Analyze: abstract, methodology, experiments, results, contributions, limitations, future work, related papers.

Step 4: Generate Note

python scripts/generate_note.py --paper-id "$PAPER_ID" --title "$TITLE" --authors "$AUTHORS" --domain "$DOMAIN"

Step 5: Update Knowledge Graph

python scripts/update_graph.py --paper-id "$PAPER_ID" --title "$TITLE" --domain "$DOMAIN" --score $SCORE

Scripts

  • scripts/generate_note.py — Generate structured note template
  • scripts/update_graph.py — Update paper relationship graph

Note Structure

The generated note includes: core info, abstract (EN/CN), research background, method overview with architecture figures, experiment results with tables, deep analysis, related paper comparison, tech roadmap positioning, future work, and comprehensive evaluation (0-10 scoring).

Dependencies

  • Python 3.8+, PyYAML, requests
  • Network access (arXiv)

Based on evil-read-arxiv — an automated paper reading workflow. MIT License.

Related skills
Installs
1
GitHub Stars
455
First Seen
Apr 19, 2026