skills/43-wentorai-research-plugins/skills/literature/discovery/rss-paper-feeds/SKILL.md
Set up RSS feeds and alerts to track new publications in your research area
npx skillsauth add brycewang-stanford/Awesome-Agent-Skills-for-Empirical-Research rss-paper-feedsInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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A skill for configuring automated literature monitoring using RSS feeds, email alerts, and citation notifications. Stay current with new publications in your research area without manual searching.
Most major publishers provide RSS feeds for their journals:
| Publisher | Feed URL Pattern | Example |
|-----------|-----------------|---------|
| Nature | https://www.nature.com/[journal].rss | nature.com/nature.rss |
| Science | https://www.science.org/action/showFeed?type=etoc&feed=rss&jc=[code] | jc=science |
| Elsevier | https://rss.sciencedirect.com/publication/science/[ISSN] | ISSN 0004-3702 for AI |
| Springer | https://link.springer.com/search.rss?search-within=Journal&facet-journal-id=[id] | id=10994 |
| IEEE | https://ieeexplore.ieee.org/rss/TOC[journal_number].XML | |
| arXiv | https://rss.arxiv.org/rss/[category] | cs.AI, stat.ML |
import feedparser
from datetime import datetime
def fetch_arxiv_feed(categories: list[str], max_results: int = 50) -> list[dict]:
"""
Fetch recent papers from arXiv RSS feeds.
Args:
categories: List of arXiv categories (e.g., ['cs.AI', 'cs.CL', 'stat.ML'])
max_results: Maximum number of papers to return
"""
all_papers = []
for category in categories:
feed_url = f"https://rss.arxiv.org/rss/{category}"
feed = feedparser.parse(feed_url)
for entry in feed.entries[:max_results]:
all_papers.append({
'title': entry.title.strip(),
'authors': entry.get('author', 'Unknown'),
'abstract': entry.get('summary', '')[:500],
'link': entry.link,
'category': category,
'published': entry.get('published', ''),
'arxiv_id': entry.link.split('/')[-1] if entry.link else ''
})
# Deduplicate (papers may appear in multiple categories)
seen = set()
unique = []
for p in all_papers:
if p['arxiv_id'] not in seen:
seen.add(p['arxiv_id'])
unique.append(p)
return unique[:max_results]
# Example: monitor AI and NLP papers
papers = fetch_arxiv_feed(['cs.AI', 'cs.CL', 'cs.LG'], max_results=30)
for p in papers[:5]:
print(f"[{p['category']}] {p['title']}")
print(f" {p['link']}\n")
Setup:
1. Search for your key reference papers on Google Scholar
2. Click the "Cited by N" link under each paper
3. Click the envelope icon ("Create alert") at the top of results
4. Enter your email address
5. You will receive notifications when new papers cite that work
Recommended: Set alerts for:
- Your own publications (track who cites you)
- 5-10 foundational papers in your field
- Key competitor or collaborator publications
import requests
def track_citations_openalex(work_id: str) -> dict:
"""
Monitor citations for a specific paper via OpenAlex.
Args:
work_id: OpenAlex work ID (e.g., 'W2741809807') or DOI
"""
headers = {"User-Agent": "ResearchPlugins/1.0 (https://wentor.ai)"}
response = requests.get(
f"https://api.openalex.org/works/{work_id}",
headers=headers
)
data = response.json()
# Get recent citing works
citing_resp = requests.get(
"https://api.openalex.org/works",
params={"filter": f"cites:{work_id}", "sort": "publication_date:desc", "per_page": 10},
headers=headers
)
citing = citing_resp.json().get("results", [])
return {
'paper': data.get('title', ''),
'current_citations': data.get('cited_by_count', 0),
'recent_citing_works': [
{'title': c.get('title'), 'year': c.get('publication_year')}
for c in citing
],
'status': 'configured'
}
| Reader | Platform | Features | Cost | |--------|----------|----------|------| | Feedly | Web/mobile | AI summaries, boards, teams | Free tier + Pro $8/mo | | Inoreader | Web/mobile | Rules, filters, monitoring | Free tier + Pro $5/mo | | Zotero RSS | Desktop | Integrated with reference manager | Free | | Thunderbird | Desktop | Email + RSS in one client | Free | | Miniflux | Self-hosted | Minimal, fast, API | Free (self-hosted) |
feed_organization:
folders:
core_journals:
description: "Top journals in my primary field"
feeds: 5-8
check_frequency: "daily"
broad_monitoring:
description: "Adjacent fields and high-impact general journals"
feeds: 10-15
check_frequency: "weekly"
preprints:
description: "arXiv categories and SSRN feeds"
feeds: 3-5
check_frequency: "daily"
citation_alerts:
description: "New citations of key papers"
feeds: 10-20
check_frequency: "weekly"
workflow:
daily: "Scan titles in core_journals and preprints (10 min)"
weekly: "Review broad_monitoring and citation_alerts (30 min)"
monthly: "Audit feed list, remove low-value feeds, add new ones"
def filter_papers(papers: list[dict], keywords: list[str],
title_weight: float = 3.0,
abstract_weight: float = 1.0,
threshold: float = 2.0) -> list[dict]:
"""
Score and filter papers by relevance to your research keywords.
Args:
papers: List of paper dicts with 'title' and 'abstract'
keywords: Your research keywords
title_weight: Weight multiplier for title matches
abstract_weight: Weight multiplier for abstract matches
threshold: Minimum relevance score to include
"""
scored = []
for paper in papers:
score = 0
title_lower = paper.get('title', '').lower()
abstract_lower = paper.get('abstract', '').lower()
for kw in keywords:
kw_lower = kw.lower()
if kw_lower in title_lower:
score += title_weight
if kw_lower in abstract_lower:
score += abstract_weight
if score >= threshold:
paper['relevance_score'] = score
scored.append(paper)
return sorted(scored, key=lambda x: x['relevance_score'], reverse=True)
Configure your RSS reader to send relevant papers directly to your reference manager (Zotero, Mendeley, or EndNote). Most readers support "Save to Zotero" browser extensions or IFTTT/Zapier integrations for automated workflows. This creates a seamless pipeline from discovery to organized storage.
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