paper-summarize-academic
v1.0.1Academic paper summarization with dynamic SOP selection based on paper topic classification. Supports method, dataset, multimodal, and other paper types with rigorous analysis templates.
Installation
Please help me install the skill `paper-summarize-academic` from SkillHub official store.
npx skills add nomorecoding/paper-summarize-academic
Paper Summarize Skill
This skill provides academic-grade paper summarization with dynamic Standard Operating Procedure (SOP) selection based on paper topic classification.
Capabilities
- Dynamic SOP Selection: Automatically selects appropriate analysis template based on paper type (method, dataset, multimodal, etc.)
- Rigorous Analysis: Follows top-tier conference review criteria (NeurIPS/ICML/ICLR/ACL)
- Structured Output: Generates comprehensive summaries with methodology critique, experimental assessment, strengths/weaknesses
- Local File Storage: Saves summaries to organized directory structure with proper naming
- Prompt Tracking: Maintains record of actual prompts used for reproducibility
- Dataset Focus: Explicit attention to training/evaluation datasets used in experiments
Supported Paper Types
method: Algorithm/architecture papersdataset: Dataset/benchmark papersmultimodal: Cross-modal learning paperstech_report: System/model release papersapplication: Applied AI paperssurvey: Survey/review papersrl_alignment: RL/Alignment/Safety papersspeech_audio: Speech/audio processing papersbenchmark: Evaluation/benchmark papersanalysis: Empirical analysis papers
Usage
Input Requirements
- Paper title, authors, abstract
- Topic classification (one of supported types)
- Research context (keywords, subtopics)
Output Format
- Local file:
{paper_title}.mdinresearch/{domain}/ai_summaries/ - Content structure:
- Paper information (title, authors, venue, links)
- Core contribution summary
- Methodology critique (2000+ words)
- Experimental assessment (1000+ words, with dataset focus)
- Strengths and weaknesses
- Critical questions for authors
- Impact assessment
Quality Standards
- Methodology Critique: 2000+ characters, deep technical analysis including pipeline, novelty, mathematical principles, assumptions, prior art comparison, computational cost, and failure modes
- Experimental Assessment: 1000+ characters, rigorous evaluation with explicit focus on datasets used for training and testing, protocol rigor, baseline fairness, ablation completeness, and statistical significance
- Overall Analysis: 3000+ characters, critical perspective
- Technical Precision: Correct terminology, specific method names, exact metrics
Workflow Integration
This skill integrates with the broader research workflow:
- Paper Discovery: Works with arXiv search results
- Quality Filtering: Processes papers that pass relevance screening
- Batch Processing: Can be called repeatedly for multiple papers
- Report Generation: Outputs feed into final research report
Configuration
SOP templates are defined in:
- src/lib/agents/topic-sops.ts (primary location)
- summarization_prompt.ts (backup/reference)
Both files contain identical SOP definitions with shared output format requirements.
Examples
# Summarize a method paper
paper_summarize --title "SongEcho: Cover Song Generation" --topic "method" --abstract "..." --authors "..."
# Summarize a dataset paper
paper_summarize --title "MusicSem: Language-Audio Dataset" --topic "dataset" --abstract "..." --authors "..."
Files Created
research/{domain}/ai_summaries/{paper_title}.mdresearch/{domain}/prompts/{paper_title}_prompt.txt- Directory structure automatically created if missing