skills/literature/fulltext/core-api-guide/SKILL.md
Search and retrieve open access research papers via CORE aggregator
npx skillsauth add wentorai/research-plugins core-api-guideInstall 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.
CORE (COnnecting REpositories) is the world's largest aggregator of open access research papers, providing access to over 130 million articles harvested from thousands of data providers worldwide. The CORE API enables programmatic search, retrieval, and analysis of scholarly full-text content across repositories, journals, and preprint servers.
The API is particularly valuable for researchers conducting systematic reviews, bibliometric analyses, and literature mining tasks. Unlike many scholarly APIs that only provide metadata, CORE specializes in delivering full-text content, making it essential for text mining and natural language processing workflows in academic research.
CORE's v3 API provides a RESTful interface with JSON responses, supporting complex search queries with Boolean operators, field-specific filtering, and batch operations. It is free for non-commercial academic use, though an API key is required to access the service.
CORE requires a free API key for all requests. Register at https://core.ac.uk/services/api to obtain one.
Always store your API key in an environment variable and reference it in requests:
export CORE_API_KEY=$CORE_API_KEY
Pass the key via the Authorization header:
curl -H "Authorization: Bearer $CORE_API_KEY" \
"https://api.core.ac.uk/v3/search/works?q=machine+learning"
Search across the entire CORE corpus with full-text and metadata queries.
GET https://api.core.ac.uk/v3/search/works?q={query}&limit={n}&offset={n}
Parameters:
q (required): Search query string, supports Boolean operators (AND, OR, NOT)limit: Number of results (default 10, max 100)offset: Pagination offsetentity_type: Filter by type (e.g., journal-article, preprint)Example: Search for climate change papers with full text:
curl -s -H "Authorization: Bearer $CORE_API_KEY" \
"https://api.core.ac.uk/v3/search/works?q=climate+change+adaptation&limit=5" \
| python3 -m json.tool
Python example:
import requests
import os
headers = {"Authorization": f"Bearer {os.environ['CORE_API_KEY']}"}
params = {
"q": "deep learning AND medical imaging",
"limit": 20,
"offset": 0
}
resp = requests.get("https://api.core.ac.uk/v3/search/works", headers=headers, params=params)
data = resp.json()
for result in data.get("results", []):
print(f"Title: {result.get('title')}")
print(f"DOI: {result.get('doi')}")
print(f"Year: {result.get('yearPublished')}")
print(f"Full text length: {len(result.get('fullText', ''))}")
print("---")
Retrieve a specific paper by its CORE ID or DOI.
GET https://api.core.ac.uk/v3/works/{core_id}
curl -s -H "Authorization: Bearer $CORE_API_KEY" \
"https://api.core.ac.uk/v3/works/doi:10.1234/example.doi" \
| python3 -m json.tool
Retrieve multiple works in a single request using POST with a list of IDs.
curl -s -X POST -H "Authorization: Bearer $CORE_API_KEY" \
-H "Content-Type: application/json" \
-d '[12345, 67890, 11111]' \
"https://api.core.ac.uk/v3/works"
List or search CORE's data providers (repositories, journals).
GET https://api.core.ac.uk/v3/data-providers?q={query}
Systematic Literature Review: Use Boolean queries to replicate a search strategy across the full-text corpus. Combine with date filters to identify papers within a specific time window, then export results for screening in tools like Rayyan or Covidence.
Full-Text Mining: Retrieve full-text content programmatically for NLP pipelines. Extract named entities, key phrases, or citation contexts at scale across thousands of papers.
Repository Coverage Analysis: Query data providers to understand which institutional repositories contribute to a specific field, useful for bibliometric and open-access policy research.
Trend Detection: Run time-series queries for specific terms and track publication volume over years to identify emerging research fronts.
offset and limit for large result sets; do not fetch all results in one calltools
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