🦅 Saqr-MCP
@ahmedhassan456
🦅 Saqr-MCP について
Saqr-MCP is a powerful Python application that implements the Model Context Protocol (MCP) to enable advanced AI assistant capabilities. It supports both local models through Ollama and cloud models through Groq, providing a flexible client-server architecture
基本情報
設定
以下の設定を使って、このサーバーを MCP 対応クライアントに追加してください。
{
"mcpServers": {
"Saqr-MCP": {
"command": "uv",
"args": [
"venv"
]
}
}
}ツール
ツールは検出されませんでした
ツールは README から自動的に抽出されます。メンテナーは ## Tools という見出しの下に記載することで、このタブに反映できます。
概要
What is 🦅 Saqr-MCP?
🦅 Saqr-MCP is a Python application that implements the Model Context Protocol (MCP) to enable advanced AI assistant capabilities. It supports both local models through Ollama and cloud models through Groq, providing a flexible client-server architecture with tools for web search, memory management, document generation, and advanced reasoning.
How to use 🦅 Saqr-MCP?
Install dependencies with UV, configure environment variables (API keys for Tavily, Groq, Mem0; Ollama model name), and run python main.py. Type queries in the interactive console; use quit to exit. To use Groq instead of Ollama, modify main.py to import from src.groq_client.
Key features of 🦅 Saqr-MCP
- Interactive chat interface for querying models
- Support for local models (Ollama) and cloud models (Groq)
- Advanced web search capabilities using Tavily API
- Word document generation from markdown content
- Comprehensive memory management system using mem0
- Advanced reasoning and thought process tracking
Use cases of 🦅 Saqr-MCP
- Perform real-time web searches to retrieve up-to-date information
- Create and manage persistent memories for context-aware interactions
- Generate formatted Word documents from markdown content
- Record and analyze reasoning processes during complex problem-solving
- Switch between local and cloud models depending on availability or cost
FAQ from 🦅 Saqr-MCP
What are the prerequisites for using 🦅 Saqr-MCP?
Python 3.11 or higher, Ollama installed for local model usage, and the UV package manager (recommended).
What API keys are required and where do I get them?
You need a Tavily API key from app.tavily.com, a Groq API key from console.groq.com, and a Mem0 API key from mem0.ai. Configure them in a .env file based on .env.example.
How do I switch between local and cloud models?
By default the app uses Ollama. To use Groq, edit main.py to import SaqrMCPClient from src.groq_client instead of src.ollama_client.
What tools are available on the server?
Tools include web_search, word_file_generator, add_memory, get_all_memories, search_memories, think, get_thoughts, clear_thoughts, and get_thought_stats.
What is the project structure?
The entry point is main.py. The src/ folder contains ollama_client.py, groq_client.py, server.py, and logger.py.
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