skills/43-wentorai-research-plugins/skills/literature/search/eric-education-api/SKILL.md
Search 2M+ education research records via the ERIC database API
npx skillsauth add brycewang-stanford/Awesome-Agent-Skills-for-Empirical-Research eric-education-apiInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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ERIC is the world's largest digital library of education research, sponsored by the U.S. Institute of Education Sciences (IES). It indexes 2M+ records including journal articles, reports, conference papers, and dissertations covering all aspects of education. The API provides free, unauthenticated access to metadata and links to full text where available.
https://api.ies.ed.gov/eric/
# Basic keyword search
curl "https://api.ies.ed.gov/eric/?search=online+learning&format=json&rows=20"
# Search in specific fields
curl "https://api.ies.ed.gov/eric/?search=title:\"blended learning\"&format=json"
# Filter by publication date
curl "https://api.ies.ed.gov/eric/?search=STEM+education&start=0&rows=25&\
publicationdatestart=2023-01-01&publicationdateend=2026-12-31&format=json"
# Filter by publication type
curl "https://api.ies.ed.gov/eric/?search=formative+assessment&\
publicationtype=Journal+Articles&format=json"
# Filter by descriptor (ERIC thesaurus term)
curl "https://api.ies.ed.gov/eric/?search=descriptor:\"Higher Education\"&format=json"
# Peer-reviewed only
curl "https://api.ies.ed.gov/eric/?search=metacognition&peerreviewed=true&format=json"
| Parameter | Description | Example |
|-----------|-------------|---------|
| search | Free-text or field search | search=adaptive+learning |
| format | Response format | json or xml |
| rows | Results per page (max 200) | rows=50 |
| start | Pagination offset | start=50 |
| publicationtype | Document type | Journal Articles, Reports, Dissertations/Theses |
| publicationdatestart | From date | 2024-01-01 |
| publicationdateend | To date | 2026-12-31 |
| peerreviewed | Peer-reviewed filter | true or false |
| descriptor | ERIC thesaurus term | descriptor:"Distance Education" |
| educationlevel | Education level | Higher Education, Elementary Education |
| subject | Subject area | subject:"Mathematics Education" |
| Field | Description |
|-------|-------------|
| title | Article title |
| author | Author name |
| descriptor | ERIC controlled vocabulary term |
| source | Journal/source name |
| abstract | Abstract text |
| id | ERIC document ID (e.g., EJ1234567) |
| Type | Description |
|------|-------------|
| Journal Articles | Peer-reviewed journal articles |
| Reports - Research | Research reports |
| Reports - Descriptive | Descriptive reports |
| Reports - Evaluative | Program evaluations |
| Dissertations/Theses | Graduate research |
| Speeches/Meeting Papers | Conference presentations |
| Books | Books and book chapters |
{
"response": {
"numFound": 8450,
"start": 0,
"docs": [
{
"id": "EJ1389012",
"title": "Effects of AI Tutoring on Student Learning Outcomes",
"author": ["Smith, John", "Chen, Wei"],
"source": "Journal of Educational Technology",
"publicationdateyear": 2024,
"description": "This study examines the impact of AI-powered tutoring...",
"descriptor": ["Artificial Intelligence", "Tutoring", "Academic Achievement"],
"educationlevel": ["Higher Education"],
"peerreviewed": "T",
"url": "https://eric.ed.gov/?id=EJ1389012",
"publicationtype": "Journal Articles",
"issn": "1234-5678"
}
]
}
}
import requests
BASE_URL = "https://api.ies.ed.gov/eric/"
def search_eric(query: str, rows: int = 25,
peer_reviewed: bool = True,
pub_type: str = None,
from_year: int = None) -> list:
"""Search the ERIC education research database."""
params = {
"search": query,
"format": "json",
"rows": rows,
}
if peer_reviewed:
params["peerreviewed"] = "true"
if pub_type:
params["publicationtype"] = pub_type
if from_year:
params["publicationdatestart"] = f"{from_year}-01-01"
resp = requests.get(BASE_URL, params=params)
resp.raise_for_status()
data = resp.json()
results = []
for doc in data.get("response", {}).get("docs", []):
results.append({
"id": doc.get("id"),
"title": doc.get("title"),
"authors": doc.get("author", []),
"source": doc.get("source"),
"year": doc.get("publicationdateyear"),
"abstract": doc.get("description", "")[:300],
"descriptors": doc.get("descriptor", []),
"level": doc.get("educationlevel", []),
"url": doc.get("url"),
})
return results
def search_by_descriptor(descriptor: str, rows: int = 50) -> list:
"""Search using ERIC thesaurus controlled vocabulary."""
return search_eric(f'descriptor:"{descriptor}"', rows=rows)
# Example: find recent AI in education research
papers = search_eric("artificial intelligence classroom",
from_year=2023, rows=10)
for p in papers:
print(f"[{p['year']}] {p['title']}")
print(f" Descriptors: {', '.join(p['descriptors'][:5])}")
# Example: search by ERIC descriptor
papers = search_by_descriptor("Gamification")
for p in papers:
print(f"{p['id']}: {p['title']} — {p['source']}")
ERIC uses a controlled vocabulary of 12,000+ descriptors for consistent indexing. Key descriptors include:
| Descriptor | Coverage |
|------------|----------|
| Distance Education | Online/remote learning |
| Educational Technology | EdTech tools and methods |
| Higher Education | University-level education |
| STEM Education | Science, technology, engineering, math |
| Teacher Education | Teacher training and development |
| Assessment | Testing and evaluation |
| Curriculum Development | Curriculum design |
| Special Education | Inclusive education |
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