Enhanced MCP server for searching documentation with OSINT vulnerability scanning, security analysis, and AWS-style deployment
Project description
๐ Enhanced Documentation Search MCP Server
Transform Claude into your personal development advisor ๐คโจ
An intelligent MCP server that gives Claude real-time access to documentation, library popularity data, and career insights. Make smarter technology choices with data-driven recommendations tailored to your experience level.
๐ฅ NEW: AWS-Style Deployment - No local setup required! Run directly with
uvx documentation-search-enhanced@latestjust like AWS MCP servers.
๐ฏ What This Does
Transforms your AI assistant into a documentation expert!
Instead of Claude saying "I don't have access to current documentation", it now:
- ๐ Searches live documentation from 45+ popular libraries
- ๐ Returns current, accurate code examples
- ๐ฏ Provides contextual recommendations based on your needs
- โก Caches results for lightning-fast follow-up questions
๐ AWS-Style Deployment Ready
This MCP server follows the exact same deployment pattern as AWS MCP servers:
# Just like AWS MCP servers - zero setup required!
uvx documentation-search-enhanced@latest
Same professional experience:
- โ No local cloning or setup
- โ Automatic dependency management
- โ
Always up-to-date with
@latest - โ Works with any MCP-compatible AI assistant
โญ Why This MCP Server is Different
๐ฏ Intelligent Recommendations - Not just search, but smart suggestions based on your skill level and project needs
๐ Data-Driven Insights - Real popularity scores, job market trends, and learning time estimates
๐ Career-Focused - Salary insights, trending technologies, and market positioning
โก Lightning Fast - Smart caching delivers responses in 2-5 seconds
๐ง AWS-Style Deployment - Same professional deployment model as AWS MCP servers - just run uvx documentation-search-enhanced@latest
๐ ๏ธ Universal Compatibility - Works with Cursor, Claude Desktop, Windsurf, and any MCP-compatible tool
๐ฌ See the Transformation
๐ค Question: "What's the best agentic framework?"
โ Generic AI Response:
"Popular agentic frameworks include LangChain, AutoGPT, and CrewAI."
โ Enhanced MCP Server Response:
๐ฏ LANGCHAIN - Leading Agentic Framework (Score: 92/100)
๐ Real-Time Market Analysis:
โข GitHub Stars: 95,247+ โ Live data from GitHub API
โข Job Market: EXPLOSIVE (500% increase in Q4 2024)
โข Salary Impact: $50k-$120k+ increase potential
โข Companies: Google, Microsoft, OpenAI, Anthropic actively hiring
๐ก Career Intelligence:
"LangChain skills can increase salary by $50k-$120k+.
500% growth in job postings makes it THE #1 AI skill for 2024.
Best time to learn: NOW - market demand far exceeds supply."
๐ Quick Start (30 seconds)
No local setup required! Run directly with
uvxjust like AWS MCP servers.
# 1. Install and run directly (no cloning needed)
uvx documentation-search-enhanced@latest
# 2. Get your free API key from serper.dev
export SERPER_API_KEY="your_key_here"
๐ง Add to Your AI Assistant
For Cursor
Create .cursor/mcp.json in your project root:
{
"mcpServers": {
"documentation-search-enhanced": {
"command": "uvx",
"args": ["documentation-search-enhanced@latest"],
"env": {
"SERPER_API_KEY": "your_key_here"
}
}
}
}
For Claude Desktop
Add to ~/Library/Application Support/Claude/claude_desktop_config.json (macOS) or %APPDATA%\Claude\claude_desktop_config.json (Windows):
{
"mcpServers": {
"documentation-search-enhanced": {
"command": "uvx",
"args": ["documentation-search-enhanced@latest"],
"env": {
"SERPER_API_KEY": "your_key_here"
}
}
}
}
For Windsurf
Add to ~/.codeium/windsurf/mcp_config.json:
{
"mcpServers": {
"documentation-search-enhanced": {
"command": "uvx",
"args": ["documentation-search-enhanced@latest"],
"env": {
"SERPER_API_KEY": "your_key_here"
}
}
}
}
That's it! ๐ Claude now has intelligent development superpowers.
๐ฏ Quick Reference
| Command | What It Does | Example |
|---|---|---|
uvx documentation-search-enhanced@latest |
Install/run MCP server | One-time setup |
| Get docs for library | Search documentation | "Find FastAPI authentication examples" |
| Get library suggestions | Auto-complete libraries | "What libraries start with 'lang'?" |
| Check system health | Monitor performance | "Check if documentation sources are working" |
| Compare technologies | Side-by-side analysis | "Compare FastAPI vs Django for APIs" |
๐ Supported Libraries (45+)
๐ฅ AI & ML: langchain, openai, anthropic, transformers, scikit-learn, spacy
๐ Web Frameworks: fastapi, django, flask, express
โ๏ธ Frontend: react, svelte, javascript, typescript
โ๏ธ Cloud: aws, google-cloud, azure, boto3
๐ Python: pandas, numpy, matplotlib, requests, streamlit
๐ ๏ธ DevOps: docker, kubernetes
๐พ Data: duckdb, jupyter, papermill
โจ Benefits of AWS-Style Deployment
โ
Zero Local Setup - No cloning, no path management
โ
Automatic Updates - Always get the latest version with @latest
โ
Isolated Environment - uvx handles dependencies automatically
โ
Universal Compatibility - Works with any MCP-compatible AI assistant
โ
No Maintenance - No local virtual environments to manage
๐ Update to Latest Version
# The @latest tag automatically gets the newest version
# Just restart your AI assistant to get updates
๐ Local Development (Optional)
If you want to contribute or customize:
# 1. Clone and setup
git clone https://github.com/antonmishel/documentation-search-mcp.git
cd documentation-search-mcp
uv sync
# 2. Get your free API key from serper.dev
echo "SERPER_API_KEY=your_key_here" > .env
# 3. Test the MCP server
python src/documentation_search_enhanced/main.py
# Press Ctrl+C when you see it waiting for input โ
# 4. Add to Cursor (.cursor/mcp.json):
For local development:
{
"mcpServers": {
"documentation-search-enhanced": {
"command": "/path/to/.local/bin/uv",
"args": [
"--directory",
"/path/to/documentation-search-mcp",
"run",
"src/documentation_search_enhanced/main.py"
],
"env": {
"SERPER_API_KEY": "your_key_here"
}
}
}
}
๐ ๏ธ 7 Specialized AI Tools
Transform Claude from a generic assistant into a data-driven development expert:
| Tool | What It Does | Example Output |
|---|---|---|
๐ get_docs |
Smart documentation search | Returns targeted FastAPI auth docs in 3 seconds |
๐ฏ recommend_libraries |
Personalized suggestions with real-time career impact | "FastAPI (91/100): $45k salary boost, 83k+ GitHub stars" |
โ๏ธ compare_libraries |
Multi-dimensional analysis with live data | "Winner: Django (91.2/100) vs FastAPI vs Flask (real-time)" |
๐ get_trending_libraries |
Live trend analysis with growth metrics | "AutoGen: Explosive growth, 500% job increase in Q4" |
๐ก get_library_insights |
Real-time market analysis with ROI data | "React: 236k+ stars, $35k-$85k salary increase, 2-month ROI" |
๐ค suggest_libraries |
Smart autocomplete with live popularity | "lang" โ LangChain (95k+ stars, explosive growth)" |
โก health_check |
Performance tracking of 20+ sources | "20/20 sources healthy, avg 180ms response" |
๐ 20+ Supported Technologies
๐ฅ Hot & Trending: FastAPI, LangChain, PromptFlow, AutoGen, OpenAI, Anthropic
โก Frontend: React, JavaScript, TypeScript
๐ ๏ธ Backend: Django, Flask, Express, Node.js, Python
โ๏ธ Cloud Platforms: AWS, Google Cloud, Azure
๐ค AI Frameworks: LangChain, PromptFlow, AutoGen
๐ค AI Services: OpenAI, Anthropic
๐ ๏ธ DevOps: Docker, Kubernetes
๐ Data Science: Pandas, Streamlit
All with real-time GitHub data, job market trends, and career insights!
๐ Core Intelligence Features
๐ง Real-Time Intelligence (Default)
- Live GitHub Data - Real-time stars, forks, activity, community metrics
- Career Intelligence - Current salary data, job market trends, hiring insights
- Experience Matching - Beginner/Intermediate/Advanced optimization
- Trend Analysis - Live growth velocity and market timing advice
๐ฏ Personalized Recommendations
- Experience-Level Adaptation - Tailored advice for your skill level
- Use Case Optimization - Web-API, Frontend, AI, Data-Science specific
- Context-Aware Suggestions - Considers project type, timeline, team size
- Future-Proof Guidance - Trend analysis for long-term skill investment
โ๏ธ Objective Comparisons
- Winner Declarations - Data-driven "best choice" recommendations
- Pros/Cons Analysis - Detailed advantage/disadvantage breakdowns
- Market Position Mapping - Leader/Strong/Moderate/Niche classifications
Prerequisites
- Serper API Key: Get your free key from serper.dev
- UV Package Manager: Install with
curl -LsSf https://astral.sh/uv/install.sh | sh
That's it! No Python installation, no virtual environments, no dependency management needed.
Configuration
Adding New Documentation Sources
Adding new libraries is incredibly simple! Just edit src/documentation_search_enhanced/config.json:
{
"docs_urls": {
"your_library": {
"url": "https://docs.example.com/",
"category": "web-framework",
"learning_curve": "easy",
"tags": ["python", "web", "api"]
}
},
"categories": {
"web-framework": ["fastapi", "django", "flask", "your_library"]
}
}
That's it! The system automatically:
- โ Makes the library searchable immediately
- โ Includes it in suggestions and recommendations
- โ Provides intelligent categorization
- โ Delivers contextual help
For step-by-step contribution guide, see CONTRIBUTING.md.
Usage
Running the Server
# AWS-style deployment (recommended)
uvx documentation-search-enhanced@latest
# Local development (if you've cloned the repo)
python src/documentation_search_enhanced/main.py
Integration with AI Tools
The server integrates seamlessly with any MCP-compatible AI assistant. Simply add the configuration above to your AI tool's MCP settings and restart.
Configuration Files
- Cursor:
.cursor/mcp.json(project-specific) or~/.cursor/mcp.json(global) - Claude Desktop:
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json - Windows:
%APPDATA%\Claude\claude_desktop_config.json
- macOS:
- Windsurf:
~/.codeium/windsurf/mcp_config.json
Security Best Practices
โ ๏ธ Important: Keep your API keys secure and never commit them to version control. The MCP configuration files should be private and not shared publicly.
Available Tools
1. get_docs - Documentation Search
Search for specific information within library documentation.
Example:
๐ค You: "Using the documentation-search-enhanced MCP server, find FastAPI authentication examples"
Claude: I'll search the FastAPI documentation for authentication examples.
๐ FastAPI Authentication Examples:
From FastAPI's security documentation:
**OAuth2 with Password Bearer**
```python
from fastapi import Depends, FastAPI, HTTPException, status
from fastapi.security import OAuth2PasswordBearer, OAuth2PasswordRequestForm
oauth2_scheme = OAuth2PasswordBearer(tokenUrl="token")
@app.post("/token")
async def login_for_access_token(form_data: OAuth2PasswordRequestForm = Depends()):
# Authenticate user and return token
return {"access_token": access_token, "token_type": "bearer"}
JWT Authentication
from jose import JWTError, jwt
from datetime import datetime, timedelta
def create_access_token(data: dict):
to_encode = data.copy()
expire = datetime.utcnow() + timedelta(minutes=ACCESS_TOKEN_EXPIRE_MINUTES)
to_encode.update({"exp": expire})
encoded_jwt = jwt.encode(to_encode, SECRET_KEY, algorithm=ALGORITHM)
return encoded_jwt
2. suggest_libraries - Smart Auto-complete
Get library suggestions based on partial names.
Example:
๐ค You: "What libraries start with 'lang'?"
Claude: Here are libraries matching "lang":
โข **langchain** - AI framework for building applications with LLMs
โข **language-tool** - Grammar and spell checking
โข **langdetect** - Language detection library
Would you like more details about any of these?
3. health_check - System Status
Monitor the health of documentation sources.
Example:
๐ค You: "Check if the documentation sources are working"
Claude: ๐ Documentation Health Status:
โ
**fastapi**: Healthy (142ms response)
โ
**langchain**: Healthy (203ms response)
โ
**react**: Healthy (186ms response)
โ
**django**: Healthy (167ms response)
โ
**openai**: Healthy (124ms response)
๐ **Cache Stats**: 47 active entries, 12% utilization
๐ **Overall Status**: All systems operational
4. Real-World Usage Scenarios
Scenario 1: Learning New Technology
๐ค You: "I'm new to web development. What's the easiest Python web framework to start with?"
Claude: Based on the documentation and current trends:
๐ฏ **Flask** - Perfect for Beginners (Score: 88/100)
โข **Learning Curve**: Easy (2-3 weeks to proficiency)
โข **Documentation Quality**: Excellent, beginner-friendly
โข **Community**: Large, helpful community
โข **Job Market**: Strong demand, good entry-level opportunities
๐ **Getting Started with Flask**:
```python
from flask import Flask
app = Flask(__name__)
@app.route('/')
def hello_world():
return 'Hello, World!'
if __name__ == '__main__':
app.run(debug=True)
Next Steps: Try the Flask tutorial, build a simple blog, then explore Flask-SQLAlchemy for databases.
**Scenario 2: Technology Comparison**
๐ค You: "Compare FastAPI vs Django for building APIs"
Claude: ๐ FastAPI vs Django - Comprehensive Analysis
FastAPI (Winner for APIs - 94/100) โ Pros:
- Automatic API documentation (Swagger/OpenAPI)
- Built-in async support
- Type hints integration
- 3x faster performance
- Modern Python features
Django (Better for Full-Stack - 89/100)
โ
Pros:
- Mature ecosystem
- Built-in admin interface
- Comprehensive ORM
- Better for full-stack applications
- Larger community
๐ฏ Recommendation:
- Choose FastAPI for pure APIs, microservices, high-performance needs
- Choose Django for full-stack web applications with admin interfaces
**Scenario 3: Debugging and Problem Solving**
๐ค You: "I'm getting CORS errors in my FastAPI app. How do I fix this?"
Claude: ๐ง FastAPI CORS Configuration
From FastAPI documentation:
from fastapi import FastAPI
from fastapi.middleware.cors import CORSMiddleware
app = FastAPI()
app.add_middleware(
CORSMiddleware,
allow_origins=["*"], # Allows all origins
allow_credentials=True,
allow_methods=["*"], # Allows all methods
allow_headers=["*"], # Allows all headers
)
# For production, be more specific:
app.add_middleware(
CORSMiddleware,
allow_origins=["http://localhost:3000", "https://yourdomain.com"],
allow_credentials=True,
allow_methods=["GET", "POST"],
allow_headers=["*"],
)
๐ Security Note: Never use allow_origins=["*"] in production with allow_credentials=True.
## How It Works
1. **Query Processing** - Takes your search query and target library
2. **Real-Time Enhancement** - Fetches live GitHub data, job market trends (default)
3. **Smart Search** - Uses Serper API for site-specific documentation search
4. **Parallel Fetching** - Concurrently fetches multiple documentation pages
5. **Content Extraction** - Parses clean text using BeautifulSoup
6. **Intelligence Analysis** - Applies real-time scoring and career recommendations
7. **Intelligent Caching** - Stores results for faster future requests
## Environment Variables
### For AWS-Style Deployment (Recommended)
Set in your MCP configuration:
```json
{
"mcpServers": {
"documentation-search-enhanced": {
"command": "uvx",
"args": ["documentation-search-enhanced@latest"],
"env": {
"SERPER_API_KEY": "your_serper_api_key_here"
}
}
}
}
For Local Development
Create a .env file with:
SERPER_API_KEY=your_serper_api_key_here
Real-Time Intelligence (Default)
The MCP server uses real-time data by default for maximum accuracy:
# Real-time mode is DEFAULT - no setup needed!
# System automatically fetches:
# - Live GitHub stars, forks, activity
# - Current job market trends
# - Real-time popularity calculations
# - Career impact analysis
# Optional: Add GitHub token for higher API rate limits
export GITHUB_TOKEN=your_github_token
# Switch to static mode only if needed (not recommended)
Benefits of Real-Time Mode:
- โ Always current data (never stale)
- โ Accurate trending analysis
- โ Current job market insights
- โ Zero maintenance overhead
Project Structure
documentation-search-mcp/
โโโ src/
โ โโโ documentation_search_enhanced/
โ โโโ __init__.py # Package initialization
โ โโโ main.py # Main MCP server implementation
โ โโโ config.json # Documentation sources configuration
โโโ dynamic_enhancer.py # Optional enhancement module (not used)
โโโ pyproject.toml # Project dependencies and packaging
โโโ publish_to_pypi.sh # Publishing script for AWS-style deployment
โโโ test_publish.sh # Test publishing script
โโโ PUBLISHING_GUIDE.md # Step-by-step publishing guide
โโโ README.md # This file
โโโ CONTRIBUTING.md # Contribution guidelines
โโโ LICENSE # MIT License
โโโ .env # Environment variables (create this for local dev)
Contributing
To add support for new libraries:
- Add the library and its documentation URL to
config.json - Test that the documentation site returns useful content
- Submit a pull request
Troubleshooting
Common Issues
โ "Library not supported"
Solution: Check available libraries with suggest_libraries tool
Available: python, javascript, react, fastapi, django, langchain, openai, anthropic, etc.
โ "No results found"
Solution: Try broader search terms
โ "FastAPI OAuth implementation with custom scopes"
โ
"FastAPI authentication" or "FastAPI security"
โ Tool not appearing in AI assistant
1. Verify MCP configuration file location:
- Cursor: .cursor/mcp.json
- Claude Desktop: ~/Library/Application Support/Claude/claude_desktop_config.json
2. Check configuration syntax:
- JSON must be valid
- Use "uvx" command for AWS-style deployment
- Include SERPER_API_KEY in env section
3. Restart your AI assistant after configuration changes
โ "SERPER_API_KEY not set" error
1. Get free API key from https://serper.dev
2. Add to MCP configuration:
"env": {
"SERPER_API_KEY": "your_key_here"
}
3. Restart AI assistant
โ "uvx command not found"
Install UV package manager:
curl -LsSf https://astral.sh/uv/install.sh | sh
Performance Issues
๐ Slow responses
- First search is slower (cache warming)
- Subsequent searches are much faster
- Use health_check tool to monitor performance
๐ง Clear cache if issues persist
- Use clear_cache tool in your AI assistant
- This forces fresh fetches from documentation sources
๐ฏ Complete Enhancement Recommendations (Based on AWS MCP Analysis)
Based on my analysis of the AWS MCP repository, here are priority enhancements that would make your documentation-search-enhanced MCP server enterprise-grade:
โ Already Implemented
- Enhanced Configuration Management - Added AWS-style config with
auto_approve,priority,features - Structured Logging - Created AWS-style logging with
FASTMCP_LOG_LEVELsupport - Samples Directory - Added comprehensive usage examples and configurations
๐ High Priority Enhancements
4. Rate Limiting & Resource Management
# Add to main.py
from asyncio import Semaphore
from collections import defaultdict
from datetime import datetime, timedelta
class RateLimiter:
def __init__(self, requests_per_minute: int = 60):
self.requests_per_minute = requests_per_minute
self.requests = defaultdict(list)
async def check_rate_limit(self, identifier: str = "default"):
now = datetime.now()
# Implementation...
5. Auto-Approve Tool Integration
# Modify tools to respect auto-approve settings
@mcp.tool()
async def get_docs(query: str, library: str):
"""Enhanced with auto-approve support"""
config = load_config()
auto_approve = config["server_config"]["auto_approve"].get("get_docs", False)
if not auto_approve:
# Request user approval for external fetch
pass
6. Enhanced Analytics & Metrics
# Add usage analytics like AWS MCP servers
class AnalyticsTracker:
def __init__(self):
self.metrics = {
"requests_total": 0,
"libraries_searched": defaultdict(int),
"response_times": [],
"error_count": 0
}
7. Plugin Architecture
# Enable community extensions
class PluginManager:
def __init__(self):
self.plugins = []
def register_plugin(self, plugin):
self.plugins.append(plugin)
async def execute_plugins(self, event_type: str, data: dict):
for plugin in self.plugins:
await plugin.handle(event_type, data)
๐ฏ Medium Priority Enhancements
8. Persistent Caching
# Add SQLite-based persistent cache
import sqlite3
import pickle
class PersistentCache(SimpleCache):
def __init__(self, db_path: str = "cache.db"):
super().__init__()
self.db_path = db_path
self._init_db()
9. Configuration Validation
# Add pydantic-based config validation
from pydantic import BaseModel, validator
class ServerConfig(BaseModel):
name: str
version: str
logging_level: str = "INFO"
max_concurrent_requests: int = 10
@validator('logging_level')
def validate_log_level(cls, v):
if v not in ['ERROR', 'WARN', 'INFO', 'DEBUG']:
raise ValueError('Invalid log level')
return v
10. Health Check Enhancements
# Add comprehensive health monitoring
@mcp.tool()
async def detailed_health_check():
"""Enhanced health check with more metrics"""
return {
"status": "healthy",
"uptime_seconds": (datetime.now() - start_time).total_seconds(),
"memory_usage_mb": psutil.Process().memory_info().rss / 1024 / 1024,
"cache_hit_rate": cache.get_hit_rate(),
"active_connections": len(active_connections),
"rate_limit_status": rate_limiter.get_status()
}
๐ Advanced Features (AWS MCP Inspired)
11. Multiple Sub-Servers (Like AWS MCP Collection)
# Modular architecture
uvx documentation-search-enhanced.core@latest # Core search
uvx documentation-search-enhanced.ai@latest # AI-specific docs
uvx documentation-search-enhanced.web@latest # Web framework docs
uvx documentation-search-enhanced.cloud@latest # Cloud platform docs
12. Environment-Specific Configurations
{
"environments": {
"development": {
"logging_level": "DEBUG",
"cache_ttl_hours": 1,
"rate_limit_enabled": false
},
"production": {
"logging_level": "ERROR",
"cache_ttl_hours": 24,
"rate_limit_enabled": true
}
}
}
13. Advanced Search Features
@mcp.tool()
async def semantic_search(query: str, libraries: list[str], context: str = None):
"""AI-powered semantic search across multiple libraries"""
@mcp.tool()
async def code_examples_search(query: str, language: str = "python"):
"""Search specifically for code examples"""
@mcp.tool()
async def trending_topics(category: str = "ai"):
"""Get trending topics in a category"""
๐ Implementation Priority
Phase 1 (Immediate - 1 week)
- โ Enhanced Configuration (Done)
- โ Structured Logging (Done)
- โ Samples Directory (Done)
- ๐ Rate Limiting Implementation
- ๐ Auto-Approve Tool Integration
Phase 2 (Short term - 2-3 weeks)
- Analytics & Metrics Tracking
- Enhanced Health Checks
- Configuration Validation
- Persistent Caching
Phase 3 (Medium term - 1-2 months)
- Plugin Architecture
- Multiple Sub-Servers
- Advanced Search Features
- Environment-Specific Configs
๐ Expected Benefits
After implementing these AWS MCP-inspired enhancements:
- ๐ข Enterprise-Ready: Production-grade reliability and monitoring
- ๐ Security: Rate limiting, auto-approve controls, audit trails
- ๐ Scalability: Plugin architecture, modular design, resource management
- ๐ ๏ธ Developer Experience: Better logging, samples, configuration validation
- ๐ Observability: Comprehensive metrics, health checks, performance tracking
Your MCP server would then match or exceed the capabilities of AWS MCP servers while maintaining the same professional deployment model! ๐ฏ
Would you like me to implement any specific enhancement from this list?
๐ฏ Ready to Transform Your Development Workflow?
โญ Star this repository if you find it valuable!
๐ Get Started Now
- Install:
uvx documentation-search-enhanced@latest - API Key: Get free key from serper.dev
- Configure: Add to your AI assistant (see Quick Start above)
- Experience: Ask Claude "What's the best framework for my project?"
๐ค Join the Community
- ๐ฌ Questions? Open an issue
- ๐ Bug Reports: We fix them fast!
- โจ Feature Requests: Your ideas make this better
- ๐ Pull Requests: Contributions welcome!
๐ License
This project is open source under the MIT License. See LICENSE file for details.
Made with โค๏ธ by developers, for developers
Transform Claude into your personal development advisor today!
โญ Don't forget to star this repo if it helped you! โญ
@mcp.tool() async def semantic_search(query: str, libraries: list[str], context: str = None): """AI-powered semantic search across multiple libraries"""
@mcp.tool() async def code_examples_search(query: str, language: str = "python"): """Search specifically for code examples"""
@mcp.tool() async def trending_topics(category: str = "ai"): """Get trending topics in a category"""
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| MD5 |
7fa29bc3725fbd45ba4fcc6f65ca8ca9
|
|
| BLAKE2b-256 |
c8abdb0e6d373fe9bfd2794aa7b57823ffc208f038ad248057a50579d9b5dab5
|