skills/literature/metadata/orkg-api/SKILL.md
Query the Open Research Knowledge Graph for structured research data
npx skillsauth add wentorai/research-plugins orkg-apiInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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The Open Research Knowledge Graph (ORKG) transforms unstructured scholarly articles into structured, machine-readable research contributions. Unlike traditional databases that store metadata (title, authors, DOI), ORKG captures the semantic content — research problems, methods, results, and their relationships. The REST API enables querying, creating, and comparing research contributions programmatically. Free, no authentication required for read operations.
https://orkg.org/api/
# Search papers in ORKG
curl "https://orkg.org/api/papers?q=climate+change+adaptation&size=20"
# Get paper details by ID
curl "https://orkg.org/api/papers/R12345"
# Search any resource (papers, predicates, comparisons)
curl "https://orkg.org/api/resources?q=machine+learning&size=20"
# Filter by class
curl "https://orkg.org/api/resources?q=BERT&exact=false&classes=Paper"
ORKG's unique feature — structured side-by-side comparison of papers:
# List comparisons
curl "https://orkg.org/api/comparisons?size=10"
# Get a specific comparison
curl "https://orkg.org/api/comparisons/R54321"
# Search comparisons
curl "https://orkg.org/api/comparisons?q=sentiment+analysis"
# Get contributions of a paper
curl "https://orkg.org/api/papers/R12345/contributions"
# A contribution describes what a paper contributes:
# - Research problem addressed
# - Method used
# - Results achieved
# - Materials/datasets used
import requests
BASE_URL = "https://orkg.org/api"
def search_orkg_papers(query: str, size: int = 20) -> list:
"""Search papers in the Open Research Knowledge Graph."""
resp = requests.get(f"{BASE_URL}/papers", params={"q": query, "size": size})
resp.raise_for_status()
data = resp.json()
papers = []
for item in data.get("content", []):
papers.append({
"id": item.get("id"),
"title": item.get("title"),
"created": item.get("created_at"),
"contributions": item.get("contributions", [])
})
return papers
def get_paper_contributions(paper_id: str) -> dict:
"""Get structured research contributions for a paper."""
resp = requests.get(f"{BASE_URL}/papers/{paper_id}/contributions")
resp.raise_for_status()
return resp.json()
def search_comparisons(topic: str) -> list:
"""Find structured paper comparisons on a topic."""
resp = requests.get(f"{BASE_URL}/comparisons", params={"q": topic, "size": 10})
resp.raise_for_status()
return resp.json().get("content", [])
# Example usage
papers = search_orkg_papers("transfer learning NLP")
for p in papers:
print(f"[{p['id']}] {p['title']}")
comparisons = search_comparisons("named entity recognition")
for c in comparisons:
print(f"Comparison: {c.get('title')} ({len(c.get('contributions', []))} papers)")
| Concept | Description | Example | |---------|-------------|---------| | Paper | A scholarly article with metadata | "Attention Is All You Need" | | Contribution | What a paper contributes to knowledge | "Proposes self-attention mechanism" | | Research Problem | The problem a contribution addresses | "Machine translation quality" | | Predicate | A relationship type | "has_method", "has_result", "uses_dataset" | | Comparison | Side-by-side structured comparison | "Transformer variants comparison" | | Resource | Any entity in the knowledge graph | A method, dataset, metric, or concept |
| Feature | Traditional (S2, Crossref) | ORKG | |---------|---------------------------|------| | Content | Metadata (title, DOI, citations) | Semantic content (methods, results) | | Structure | Flat records | Knowledge graph with relationships | | Comparison | Manual (read each paper) | Automated structured comparisons | | Machine-readable | Bibliographic metadata only | Research contributions structured | | Coverage | Broad (200M+ papers) | Deep but narrower (~50K papers) |
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