home / skills / microck / ordinary-claude-skills / openalex-database
This skill helps you search, analyze, and track scholarly literature using OpenAlex to accelerate bibliometric research and discovery.
npx playbooks add skill microck/ordinary-claude-skills --skill openalex-databaseReview the files below or copy the command above to add this skill to your agents.
---
name: openalex-database
description: Query and analyze scholarly literature using the OpenAlex database. This skill should be used when searching for academic papers, analyzing research trends, finding works by authors or institutions, tracking citations, discovering open access publications, or conducting bibliometric analysis across 240M+ scholarly works. Use for literature searches, research output analysis, citation analysis, and academic database queries.
---
# OpenAlex Database
## Overview
OpenAlex is a comprehensive open catalog of 240M+ scholarly works, authors, institutions, topics, sources, publishers, and funders. This skill provides tools and workflows for querying the OpenAlex API to search literature, analyze research output, track citations, and conduct bibliometric studies.
## Quick Start
### Basic Setup
Always initialize the client with an email address to access the polite pool (10x rate limit boost):
```python
from scripts.openalex_client import OpenAlexClient
client = OpenAlexClient(email="[email protected]")
```
### Installation Requirements
Install required package using uv:
```bash
uv pip install requests
```
No API key required - OpenAlex is completely open.
## Core Capabilities
### 1. Search for Papers
**Use for**: Finding papers by title, abstract, or topic
```python
# Simple search
results = client.search_works(
search="machine learning",
per_page=100
)
# Search with filters
results = client.search_works(
search="CRISPR gene editing",
filter_params={
"publication_year": ">2020",
"is_oa": "true"
},
sort="cited_by_count:desc"
)
```
### 2. Find Works by Author
**Use for**: Getting all publications by a specific researcher
Use the two-step pattern (entity name → ID → works):
```python
from scripts.query_helpers import find_author_works
works = find_author_works(
author_name="Jennifer Doudna",
client=client,
limit=100
)
```
**Manual two-step approach**:
```python
# Step 1: Get author ID
author_response = client._make_request(
'/authors',
params={'search': 'Jennifer Doudna', 'per-page': 1}
)
author_id = author_response['results'][0]['id'].split('/')[-1]
# Step 2: Get works
works = client.search_works(
filter_params={"authorships.author.id": author_id}
)
```
### 3. Find Works from Institution
**Use for**: Analyzing research output from universities or organizations
```python
from scripts.query_helpers import find_institution_works
works = find_institution_works(
institution_name="Stanford University",
client=client,
limit=200
)
```
### 4. Highly Cited Papers
**Use for**: Finding influential papers in a field
```python
from scripts.query_helpers import find_highly_cited_recent_papers
papers = find_highly_cited_recent_papers(
topic="quantum computing",
years=">2020",
client=client,
limit=100
)
```
### 5. Open Access Papers
**Use for**: Finding freely available research
```python
from scripts.query_helpers import get_open_access_papers
papers = get_open_access_papers(
search_term="climate change",
client=client,
oa_status="any", # or "gold", "green", "hybrid", "bronze"
limit=200
)
```
### 6. Publication Trends Analysis
**Use for**: Tracking research output over time
```python
from scripts.query_helpers import get_publication_trends
trends = get_publication_trends(
search_term="artificial intelligence",
filter_params={"is_oa": "true"},
client=client
)
# Sort and display
for trend in sorted(trends, key=lambda x: x['key'])[-10:]:
print(f"{trend['key']}: {trend['count']} publications")
```
### 7. Research Output Analysis
**Use for**: Comprehensive analysis of author or institution research
```python
from scripts.query_helpers import analyze_research_output
analysis = analyze_research_output(
entity_type='institution', # or 'author'
entity_name='MIT',
client=client,
years='>2020'
)
print(f"Total works: {analysis['total_works']}")
print(f"Open access: {analysis['open_access_percentage']}%")
print(f"Top topics: {analysis['top_topics'][:5]}")
```
### 8. Batch Lookups
**Use for**: Getting information for multiple DOIs, ORCIDs, or IDs efficiently
```python
dois = [
"https://doi.org/10.1038/s41586-021-03819-2",
"https://doi.org/10.1126/science.abc1234",
# ... up to 50 DOIs
]
works = client.batch_lookup(
entity_type='works',
ids=dois,
id_field='doi'
)
```
### 9. Random Sampling
**Use for**: Getting representative samples for analysis
```python
# Small sample
works = client.sample_works(
sample_size=100,
seed=42, # For reproducibility
filter_params={"publication_year": "2023"}
)
# Large sample (>10k) - automatically handles multiple requests
works = client.sample_works(
sample_size=25000,
seed=42,
filter_params={"is_oa": "true"}
)
```
### 10. Citation Analysis
**Use for**: Finding papers that cite a specific work
```python
# Get the work
work = client.get_entity('works', 'https://doi.org/10.1038/s41586-021-03819-2')
# Get citing papers using cited_by_api_url
import requests
citing_response = requests.get(
work['cited_by_api_url'],
params={'mailto': client.email, 'per-page': 200}
)
citing_works = citing_response.json()['results']
```
### 11. Topic and Subject Analysis
**Use for**: Understanding research focus areas
```python
# Get top topics for an institution
topics = client.group_by(
entity_type='works',
group_field='topics.id',
filter_params={
"authorships.institutions.id": "I136199984", # MIT
"publication_year": ">2020"
}
)
for topic in topics[:10]:
print(f"{topic['key_display_name']}: {topic['count']} works")
```
### 12. Large-Scale Data Extraction
**Use for**: Downloading large datasets for analysis
```python
# Paginate through all results
all_papers = client.paginate_all(
endpoint='/works',
params={
'search': 'synthetic biology',
'filter': 'publication_year:2020-2024'
},
max_results=10000
)
# Export to CSV
import csv
with open('papers.csv', 'w', newline='', encoding='utf-8') as f:
writer = csv.writer(f)
writer.writerow(['Title', 'Year', 'Citations', 'DOI', 'OA Status'])
for paper in all_papers:
writer.writerow([
paper.get('title', 'N/A'),
paper.get('publication_year', 'N/A'),
paper.get('cited_by_count', 0),
paper.get('doi', 'N/A'),
paper.get('open_access', {}).get('oa_status', 'closed')
])
```
## Critical Best Practices
### Always Use Email for Polite Pool
Add email to get 10x rate limit (1 req/sec → 10 req/sec):
```python
client = OpenAlexClient(email="[email protected]")
```
### Use Two-Step Pattern for Entity Lookups
Never filter by entity names directly - always get ID first:
```python
# ✅ Correct
# 1. Search for entity → get ID
# 2. Filter by ID
# ❌ Wrong
# filter=author_name:Einstein # This doesn't work!
```
### Use Maximum Page Size
Always use `per-page=200` for efficient data retrieval:
```python
results = client.search_works(search="topic", per_page=200)
```
### Batch Multiple IDs
Use batch_lookup() for multiple IDs instead of individual requests:
```python
# ✅ Correct - 1 request for 50 DOIs
works = client.batch_lookup('works', doi_list, 'doi')
# ❌ Wrong - 50 separate requests
for doi in doi_list:
work = client.get_entity('works', doi)
```
### Use Sample Parameter for Random Data
Use `sample_works()` with seed for reproducible random sampling:
```python
# ✅ Correct
works = client.sample_works(sample_size=100, seed=42)
# ❌ Wrong - random page numbers bias results
# Using random page numbers doesn't give true random sample
```
### Select Only Needed Fields
Reduce response size by selecting specific fields:
```python
results = client.search_works(
search="topic",
select=['id', 'title', 'publication_year', 'cited_by_count']
)
```
## Common Filter Patterns
### Date Ranges
```python
# Single year
filter_params={"publication_year": "2023"}
# After year
filter_params={"publication_year": ">2020"}
# Range
filter_params={"publication_year": "2020-2024"}
```
### Multiple Filters (AND)
```python
# All conditions must match
filter_params={
"publication_year": ">2020",
"is_oa": "true",
"cited_by_count": ">100"
}
```
### Multiple Values (OR)
```python
# Any institution matches
filter_params={
"authorships.institutions.id": "I136199984|I27837315" # MIT or Harvard
}
```
### Collaboration (AND within attribute)
```python
# Papers with authors from BOTH institutions
filter_params={
"authorships.institutions.id": "I136199984+I27837315" # MIT AND Harvard
}
```
### Negation
```python
# Exclude type
filter_params={
"type": "!paratext"
}
```
## Entity Types
OpenAlex provides these entity types:
- **works** - Scholarly documents (articles, books, datasets)
- **authors** - Researchers with disambiguated identities
- **institutions** - Universities and research organizations
- **sources** - Journals, repositories, conferences
- **topics** - Subject classifications
- **publishers** - Publishing organizations
- **funders** - Funding agencies
Access any entity type using consistent patterns:
```python
client.search_works(...)
client.get_entity('authors', author_id)
client.group_by('works', 'topics.id', filter_params={...})
```
## External IDs
Use external identifiers directly:
```python
# DOI for works
work = client.get_entity('works', 'https://doi.org/10.7717/peerj.4375')
# ORCID for authors
author = client.get_entity('authors', 'https://orcid.org/0000-0003-1613-5981')
# ROR for institutions
institution = client.get_entity('institutions', 'https://ror.org/02y3ad647')
# ISSN for sources
source = client.get_entity('sources', 'issn:0028-0836')
```
## Reference Documentation
### Detailed API Reference
See `references/api_guide.md` for:
- Complete filter syntax
- All available endpoints
- Response structures
- Error handling
- Performance optimization
- Rate limiting details
### Common Query Examples
See `references/common_queries.md` for:
- Complete working examples
- Real-world use cases
- Complex query patterns
- Data export workflows
- Multi-step analysis procedures
## Scripts
### openalex_client.py
Main API client with:
- Automatic rate limiting
- Exponential backoff retry logic
- Pagination support
- Batch operations
- Error handling
Use for direct API access with full control.
### query_helpers.py
High-level helper functions for common operations:
- `find_author_works()` - Get papers by author
- `find_institution_works()` - Get papers from institution
- `find_highly_cited_recent_papers()` - Get influential papers
- `get_open_access_papers()` - Find OA publications
- `get_publication_trends()` - Analyze trends over time
- `analyze_research_output()` - Comprehensive analysis
Use for common research queries with simplified interfaces.
## Troubleshooting
### Rate Limiting
If encountering 403 errors:
1. Ensure email is added to requests
2. Verify not exceeding 10 req/sec
3. Client automatically implements exponential backoff
### Empty Results
If searches return no results:
1. Check filter syntax (see `references/api_guide.md`)
2. Use two-step pattern for entity lookups (don't filter by names)
3. Verify entity IDs are correct format
### Timeout Errors
For large queries:
1. Use pagination with `per-page=200`
2. Use `select=` to limit returned fields
3. Break into smaller queries if needed
## Rate Limits
- **Default**: 1 request/second, 100k requests/day
- **Polite pool (with email)**: 10 requests/second, 100k requests/day
Always use polite pool for production workflows by providing email to client.
## Notes
- No authentication required
- All data is open and free
- Rate limits apply globally, not per IP
- Use LitLLM with OpenRouter if LLM-based analysis is needed (don't use Perplexity API directly)
- Client handles pagination, retries, and rate limiting automatically
This skill lets you query and analyze scholarly literature using the OpenAlex open catalog of 240M+ works, authors, institutions, topics, and more. It provides a Python client and helper scripts for literature search, citation tracking, open access discovery, trend analysis, and large-scale bibliometric extraction. Designed for reproducible research queries and efficient data retrieval.
Initialize the client with an email to use the polite pool (higher rate limit) and call client methods or helper functions to perform searches, grouped queries, batch lookups, sampling, and pagination. Common patterns: search entity → get canonical ID → filter by ID, use per-page=200 for efficiency, and select only needed fields to reduce payload. The client handles rate limiting, retries, pagination, and batch operations.
Do I need an API key to use OpenAlex with this client?
No. OpenAlex is open and requires no API key. Provide an email to benefit from the polite pool rate limit.
How do I avoid hitting rate limits for large extractions?
Use the polite pool by setting email, paginate with per-page=200, use batch_lookup where possible, and rely on the client’s automatic backoff and retry logic.