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