Academic Research Skill
This skill allows you to function as an academic researcher, finding and analyzing scholarly papers with a focus on impact and provenance.
Capabilities
- •Search Papers: Find papers by keyword, ensuring relevance.
- •Analyze Impact: Filter by citation count to identify seminal works.
- •Trace Provenance: (Optional) Find papers that cite a target paper to seeing how the field evolved.
- •Get Details: Retrieve abstracts and direct PDF links.
- •Velocity Metrics: See citations per year to identify "trending" papers.
- •BibTeX Export: Generate citations for your references.
Usage
Run the python script search_papers.py to perform searches.
Arguments
- •
query(required): The search term. - •
--limit(optional): Max results (default 5). - •
--year(optional): Year range (e.g., "2023-2025"). - •
--sort(optional): Sort by "relevance", "citationCount", or "velocity" (new!). - •
--open-access(optional): Only return open access papers. - •
--format(optional): Output "json" (default) or "bibtex".
Example
bash
# Find "hot" papers on LLMs (high velocity) python3 search_papers.py "Large Language Models" --sort velocity # Get BibTeX for a specific search python3 search_papers.py "Attention is All You Need" --format bibtex
Output Format
The script outputs a JSON object (or JSON-lines) containing:
- •
title - •
authors - •
year - •
citationCount - •
citationsPerYear: Velocity metric. - •
tldr: Semantic Scholar's generated summary (if available). - •
url - •
pdf_url(if available)
Tips for the Agent
- •TLDR vs Abstract: The
tldrfield is often shorter and easier to digest for quick summaries. - •Velocity: A paper from 2024 with 100 citations is often more relevant than a 2010 paper with 500 citations. Use sort="velocity".