VLR MCP
MCP server for accessing VLR.gg VALORANT esports data
VLR Stats MCP
A Model Context Protocol (MCP) server that provides Claude with access to VLR.gg VALORANT esports data. Built with FastMCP for easy integration with Claude Desktop.
Sample Response
Player Profile: aspas
Timespan: ALL
Current Team: MIBR
Team Page: https://www.vlr.gg/team/7386/mibr
Profile: https://www.vlr.gg/player/8480/aspas
--- Agent Statistics (ALL) ---
1. Jett - (226) 51%
Rating: 1.26 | ACS: 249.8 | K:D: 1.45
Rounds: 4749 | ADR: 158.8 | KAST: 75%
KPR: 0.91 | APR: 0.15 | FK/FD: 0.19/0.11
Kills: 4303 | Deaths: 2977
2. Raze - (112) 26%
Rating: 1.19 | ACS: 247.0 | K:D: 1.25
Rounds: 2332 | ADR: 164.2 | KAST: 76%
KPR: 0.87 | APR: 0.20 | FK/FD: 0.16/0.11
Kills: 2018 | Deaths: 1614
Features
This MCP server provides the following tools to access VALORANT esports data:
General Information:
- get_upcoming_matches - Get upcoming VALORANT matches with team names, events, and timing
- get_match_results - View recent match results with scores and events
- get_team_rankings - Access current team rankings (top 20 by region)
- get_events - Browse ongoing, upcoming, and completed VALORANT tournaments
Team-Specific:
- get_team_matches - Get recent or upcoming matches for a specific team
- search_team - Search for specific teams and get their information
Player-Specific:
- get_player_stats - Get detailed player profile with agent statistics and performance metrics (supports time filtering: 30d, 60d, 90d, all)
Quick Start
Installation
- Clone this repository:
git clone <your-repo-url>
cd vlr-stats-mcp
- Install dependencies with uv:
uv venv
source .venv/bin/activate # On Windows: .venv\Scripts\activate
uv pip install -e .
Don't have uv? Install it:
pip install uv
- Test the server:
python src/vlr_mcp.py
Claude Desktop Integration
Add the MCP server to your Claude Desktop configuration:
Configuration file location:
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json - Windows:
%APPDATA%\Claude\claude_desktop_config.json - Linux:
~/.config/Claude/claude_desktop_config.json
Quick config example:
{
"mcpServers": {
"vlr-stats": {
"command": "python",
"args": ["/absolute/path/to/vlr-stats-mcp/src/vlr_mcp.py"]
}
}
}
For detailed setup instructions including WSL, Windows, and macOS configurations, see SETUP.md
After adding the configuration, restart Claude Desktop completely and the VLR Stats tools will be available!
Example Usage
Once integrated, you can ask Claude:
General Queries:
- "What are the upcoming VALORANT matches?"
- "Show me recent match results"
- "What are the current team rankings?"
- "What VALORANT events are happening now?"
Team-Specific Queries:
- "What are G2 Esports' last 5 games?"
- "When does Paper Rex play next?"
- "Show me Sentinels' recent matches"
Player-Specific Queries:
- "What's aspas's most used agent in the last 90 days?"
- "Show me TenZ's agent statistics for all time"
- "Which agent does Demon1 have the best K:D with?"
- "What are Less's stats in the last 30 days?"
- "Show me Chronicle's performance across all agents"
Tools Reference
| Tool | Description |
|---|---|
get_upcoming_matches(limit) | Returns upcoming VALORANT matches |
get_match_results(limit) | Returns recent match results with scores |
get_team_rankings(region) | Returns top 20 ranked teams by region |
get_team_matches(team_name, limit, match_type) | Returns team-specific matches (recent/upcoming) |
search_team(team_name) | Search for a specific team |
get_events(status) | Returns VALORANT tournaments and events |
get_player_stats(player_name, timespan) | Returns player profile with detailed agent statistics (timespan: 30d, 60d, 90d, all) |
Player Stats Details
The get_player_stats tool provides comprehensive agent performance data including:
- Most used agent - Primary agent pick with usage percentage
- Best K:D agent - Agent with highest kill/death ratio
- Highest ACS agent - Agent with highest average combat score
- Per-agent statistics: Rating, ACS, K:D, ADR, KAST, KPR, APR, FK/FD ratios
- Time filtering: View stats for last 30/60/90 days or all time
Testing
Run the comprehensive test suite to verify all tools:
python test_tools.py
This will test:
- MCP server initialization
- All 7 data scraping tools
- Connection to VLR.gg
Project Structure
src/
vlr_mcp.py # Main MCP server (composes tool modules)
config.py # Shared configuration (base URL, headers, timeouts)
tools/
matches.py # get_upcoming_matches, get_match_results
teams.py # get_team_rankings, search_team, get_team_matches
players.py # get_player_stats
events.py # get_events
test_tools.py # Comprehensive test suite
Development
Built with:
- FastMCP - Simplified MCP server framework
- httpx - Async HTTP client for fetching VLR.gg data
- BeautifulSoup4 - HTML parsing for extracting match and team data
Contributing
Contributions are welcome! Feel free to open issues or submit pull requests.
License
See LICENSE file for details.
Disclaimer
This is an unofficial tool and is not affiliated with VLR.gg or Riot Games. Please respect VLR.gg's terms of service and rate limits.
เซิร์ฟเวอร์ที่เกี่ยวข้อง
Bright Data
ผู้สนับสนุนDiscover, extract, and interact with the web - one interface powering automated access across the public internet.
Browserless
Scrape and automate any webpage using headless browsers, captcha solving, and advanced stealth features, in an optimized infrastructure that works in seconds.
Safari MCP
Native Safari browser automation for AI agents — 80 tools via AppleScript, zero Chrome overhead, keeps logins. macOS only.
Mozilla Readability Parser
Extracts and transforms webpage content into clean, LLM-optimized Markdown using Mozilla's Readability algorithm.
Yahoo Finance
Interact with Yahoo Finance to get stock data, market news, and financial information using the yfinance Python library.
Airbnb MCP Server
Search for Airbnb listings and retrieve detailed information without an API key.
WebScraping.AI
Interact with WebScraping.AI for web data extraction and scraping.
Outscraper
Extract data from Google Maps, including places and reviews, using the Outscraper API.
YouTube Transcript MCP
Download transcripts directly from YouTube videos.
MCP Browser Console Capture Service
A browser automation service for capturing console output, useful for tasks like public sentiment analysis.
Novada-MCP
Search, extract, crawl, map, and research the web — from any AI agent or terminal.