tradingview-mcp and stock-mcp

tradingview-mcp
55
Established
stock-mcp
50
Established
Maintenance 6/25
Adoption 10/25
Maturity 15/25
Community 24/25
Maintenance 13/25
Adoption 9/25
Maturity 7/25
Community 21/25
Stars: 424
Forks: 117
Downloads:
Commits (30d): 0
Language: Python
License: MIT
Stars: 104
Forks: 34
Downloads:
Commits (30d): 0
Language: Python
License:
No Package No Dependents
No License No Package No Dependents

About tradingview-mcp

atilaahmettaner/tradingview-mcp

Advanced TradingView MCP Server for AI-powered market analysis. Real-time crypto & stock screening, technical indicators, Bollinger Band intelligence, and candlestick patterns. Works with Claude Desktop & AI assistants. Multi-exchange support (Binance, KuCoin, Bybit+). Open source trading toolkit.

Implements a multi-agent architecture with specialized technical, sentiment, and risk analysis agents that debate findings in real-time, backed by 30+ indicators and 6 backtestable strategies (RSI, Bollinger, MACD, EMA cross, Supertrend, Donchian) with institutional metrics like Sharpe ratio and maximum drawdown. Integrates Yahoo Finance for live quotes, Reddit/RSS for sentiment, and TradingView data across Binance, KuCoin, Bybit, NASDAQ, NYSE, and regional exchanges—all accessible via MCP's stdio transport without requiring external API keys.

About stock-mcp

huweihua123/stock-mcp

专业的金融市场数据 MCP 服务器 - 支持A股/美股/加密货币,原生 MCP 协议,AI Agent 友好

Implements dual-interface architecture with HTTP API and native MCP protocol, allowing seamless integration across AI agents (Claude Desktop, Cursor) and backend services. Provides standardized financial tools (RSI, MACD, K-line patterns, money flow analysis) with intelligent provider fallback across Tushare, Yahoo Finance, Finnhub, EDGAR, and CCXT, while Redis/Postgres caching and explicit proxy rules optimize data delivery for both domestic and international markets. Capability and provider plugin systems separate business logic from data sources, enabling modular scaling without monolithic adapter coupling.

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