skills/literature/metadata/crossref-event-data-api/SKILL.md
Track scholarly mentions across the web via Crossref Event Data
npx skillsauth add wentorai/research-plugins crossref-event-data-apiInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Crossref Event Data tracks where scholarly publications are discussed, shared, and referenced across the open web — Wikipedia citations, Twitter/X mentions, Reddit posts, blog references, policy document citations, and more. Unlike traditional citation counts, Event Data captures real-time online attention to research. Free, no authentication required.
https://api.eventdata.crossref.org/v1
# Get events for a specific DOI
curl "https://api.eventdata.crossref.org/v1/events?obj-id=10.1038/nature14539&rows=20"
# Filter by source
curl "https://api.eventdata.crossref.org/v1/events?\
obj-id=10.1038/nature14539&source=wikipedia"
# Filter by date range
curl "https://api.eventdata.crossref.org/v1/events?\
from-occurred-date=2024-01-01&until-occurred-date=2024-12-31&source=twitter&rows=100"
# Get events about a DOI prefix (publisher level)
curl "https://api.eventdata.crossref.org/v1/events?obj-id.prefix=10.1371&rows=50"
# Events from a specific source
curl "https://api.eventdata.crossref.org/v1/events?source=reddit&rows=50"
| Source | Description | What it tracks |
|--------|-------------|---------------|
| wikipedia | Wikipedia article references | DOIs cited in Wikipedia |
| twitter | Twitter/X posts | Tweets linking to DOIs |
| reddit | Reddit posts/comments | Reddit links to papers |
| hypothesis | Hypothesis annotations | Web annotations on papers |
| newsfeed | News articles | Media coverage of research |
| stackexchange | Stack Exchange Q&A | Technical discussions |
| web | General web pages | Blog posts, reports |
| wordpressdotcom | WordPress blogs | Blog references |
| datacite | DataCite DOIs | Dataset-paper linkages |
| crossref | Crossref metadata | Reference list updates |
| Parameter | Description | Example |
|-----------|-------------|---------|
| obj-id | DOI of the paper | obj-id=10.1038/nature14539 |
| obj-id.prefix | DOI prefix (publisher) | obj-id.prefix=10.1371 |
| source | Event source | source=wikipedia |
| from-occurred-date | Events from date | 2024-01-01 |
| until-occurred-date | Events until date | 2024-12-31 |
| rows | Results per page (max 10000) | rows=100 |
| cursor | Pagination cursor | Returned in response |
{
"status": "ok",
"message-type": "event-list",
"message": {
"total-results": 245,
"events": [
{
"obj_id": "https://doi.org/10.1038/nature14539",
"source_id": "wikipedia",
"subj_id": "https://en.wikipedia.org/wiki/Deep_learning",
"relation_type_id": "references",
"occurred_at": "2024-03-15T10:30:00Z",
"subj": {
"title": "Deep learning - Wikipedia",
"url": "https://en.wikipedia.org/wiki/Deep_learning"
}
}
],
"next-cursor": "abc123..."
}
}
import requests
from collections import Counter
BASE_URL = "https://api.eventdata.crossref.org/v1"
def get_events(doi: str, source: str = None,
rows: int = 100) -> list:
"""Get Event Data events for a DOI."""
params = {"obj-id": doi, "rows": rows}
if source:
params["source"] = source
resp = requests.get(f"{BASE_URL}/events", params=params)
resp.raise_for_status()
data = resp.json()
events = []
for ev in data.get("message", {}).get("events", []):
events.append({
"source": ev.get("source_id"),
"subject_url": ev.get("subj_id"),
"subject_title": ev.get("subj", {}).get("title", ""),
"relation": ev.get("relation_type_id"),
"date": ev.get("occurred_at", "")[:10],
})
return events
def get_attention_summary(doi: str) -> dict:
"""Summarize online attention for a paper."""
events = get_events(doi, rows=10000)
source_counts = Counter(e["source"] for e in events)
return {
"total_events": len(events),
"by_source": dict(source_counts),
"first_event": min((e["date"] for e in events), default=None),
"latest_event": max((e["date"] for e in events), default=None),
}
def find_wikipedia_citations(doi: str) -> list:
"""Find Wikipedia articles that cite a paper."""
events = get_events(doi, source="wikipedia")
return [
{"wikipedia_page": e["subject_title"],
"url": e["subject_url"],
"date": e["date"]}
for e in events
if e["relation"] == "references"
]
# Example: analyze online attention for a paper
doi = "10.1038/nature14539"
summary = get_attention_summary(doi)
print(f"Total events: {summary['total_events']}")
for source, count in sorted(summary["by_source"].items(),
key=lambda x: -x[1]):
print(f" {source}: {count}")
# Example: find Wikipedia coverage
wiki_refs = find_wikipedia_citations(doi)
for ref in wiki_refs:
print(f"Cited in: {ref['wikipedia_page']} ({ref['date']})")
tools
10 document processing skills. Trigger: extracting text from PDFs, parsing references, document Q&A. Design: parsing pipelines (GROBID, marker) and structured extraction tools.
documentation
Guide to tldraw for infinite canvas whiteboarding and diagram creation
testing
Create graphical abstracts, schematic diagrams, and scientific illustrations
documentation
Create UML diagrams and architecture visualizations with PlantUML