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प्रोजेक्टहमारे बारे मेंहम रैंकिंग कैसे करते हैंप्रेसMCP सर्वर
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7 रिपॉजिटरी

Awesome GitHub RepositoriesModel Context Protocol Servers

Servers that expose structured data and graph entities to AI agents via the Model Context Protocol.

Distinct from Graph Data Models: Focuses on the MCP protocol implementation for graph data exposure, distinct from general graph data models.

Explore 7 awesome GitHub repositories matching data & databases · Model Context Protocol Servers. Refine with filters or upvote what's useful.

Awesome Model Context Protocol Servers GitHub Repositories

AI के साथ बेहतरीन रिपॉजिटरी खोजें।हम AI का उपयोग करके सबसे सटीक रिपॉजिटरी खोजेंगे।
  • colbymchenry/codegraphcolbymchenry का अवतार

    colbymchenry/codegraph

    50,154GitHub पर देखें↗

    Codegraph is a local codebase indexer and static analysis graph database that serves as a context provider for AI agents. It parses multiple programming languages into a searchable knowledge graph of symbols and dependencies, exposing these relationships to AI tools through the Model Context Protocol. The project distinguishes itself by aggregating relevant code snippets and symbol flows to reduce token usage for large language models. It automates the configuration of server settings and steering instructions across various AI agent platforms and command line editors to enable automatic code

    Acts as an MCP server that exposes a structured graph of code flows and symbols to AI agents.

    TypeScript
    GitHub पर देखें↗50,154
  • getzep/graphitigetzep का अवतार

    getzep/graphiti

    22,936GitHub पर देखें↗

    Graphiti is a backend framework and memory server designed to provide artificial intelligence agents with persistent, time-aware knowledge graph storage. It functions as a memory layer that enables agents to maintain context across long-term interactions by recording and evolving structured data over time. The system distinguishes itself through a specialized temporal graph database that tracks how entities and relationships change using validity windows. By combining semantic vector similarity, keyword matching, and graph topology traversal, the engine performs hybrid retrieval to locate rel

    Exposes graph entities and relationships via the Model Context Protocol for real-time agent access.

    Pythonagentsgraphllms
    GitHub पर देखें↗22,936
  • zipstack/unstractZipstack का अवतार

    Zipstack/unstract

    6,669GitHub पर देखें↗

    Unstract is an unstructured data extraction system and ETL pipeline orchestrator that uses large language models to convert documents, images, and scans into structured JSON. It provides a document extraction API for integrating these capabilities into external automation tools and includes a Model Context Protocol server to connect AI agents to structured information retrieval. The system ensures data accuracy through a verification tool featuring dual-model verification and human-in-the-loop review with coordinate-based document highlighting. It utilizes natural language extraction schemas

    Implements a Model Context Protocol server that allows AI agents to process documents and receive structured results.

    Pythonai-agentsdata-engineeringdocument-ai
    GitHub पर देखें↗6,669
  • materializeinc/materializeMaterializeInc का अवतार

    MaterializeInc/materialize

    6,314GitHub पर देखें↗

    Materialize is a streaming SQL database that continuously ingests live data from sources such as Kafka, Redpanda, PostgreSQL, and MySQL, and incrementally maintains materialized views. It provides a PostgreSQL-compatible query engine that accepts standard SQL over the PostgreSQL wire protocol, enabling any existing SQL client or BI tool to query real-time data. The system also includes a Model Context Protocol (MCP) server that exposes live materialized view data to AI agents, providing fresh context without polling. Materialize distinguishes itself through its ability to offer configurable c

    Ships an MCP server that exposes live materialized view data to AI agents for real-time context.

    Rust
    GitHub पर देखें↗6,314
  • maiot-io/zenmlmaiot-io का अवतार

    maiot-io/zenml

    5,452GitHub पर देखें↗

    ZenML is an extensible machine learning orchestration framework designed to manage the end-to-end lifecycle of data pipelines and AI agent workflows. It functions as a durable orchestrator that executes machine learning tasks as directed acyclic graphs, ensuring that every step is containerized for consistent performance across local, cloud, and hybrid infrastructure. By decoupling pipeline code from underlying compute and storage backends, the platform allows developers to define infrastructure-agnostic stacks that remain portable across diverse environments. The project distinguishes itself

    Provides a Model Context Protocol server that allows AI assistants to query and manage machine learning executions and project context.

    Python
    GitHub पर देखें↗5,452
  • modelcontextprotocol/go-sdkmodelcontextprotocol का अवतार

    modelcontextprotocol/go-sdk

    4,716GitHub पर देखें↗

    यह Go में Model Context Protocol को लागू करने के लिए एक सॉफ्टवेयर डेवलपमेंट किट (SDK) और फ्रेमवर्क है। यह सर्वर्स और क्लाइंट्स बनाने के लिए एक स्टैंडर्ड सिस्टम प्रदान करता है जो लार्ज लैंग्वेज मॉडल्स (LLM) के लिए संदर्भ (context) प्रदान करने हेतु बाहरी संसाधन, प्रोप्राइटरी डेटा और एग्जीक्यूटेबल टूल्स का आदान-प्रदान करते हैं। इस SDK में एक JSON-RPC कम्युनिकेशन लाइब्रेरी और AI मॉडल्स के लिए लोकल डेटा, प्रॉम्प्ट टेम्पलेट्स और टाइप्ड फंक्शन्स को एक्सपोज़ करने के लिए एक इंटीग्रेशन फ्रेमवर्क शामिल है। यह प्रोटोकॉल सर्वर्स (जो बाहरी संदर्भ प्रदान करते हैं) और क्लाइंट्स (जो इन रिमोट टूल्स और संसाधनों का उपयोग करते हैं) दोनों के विकास को सक्षम बनाता है। यह प्रोजेक्ट इंटरऑपरेबिलिटी सुनिश्चित करने के लिए कनेक्शन लाइफसाइकिल मैनेजमेंट और प्रोटोकॉल वर्जन नेगोशिएशन को कवर करता है। यह रिसोर्स मैपिंग और सेशन मैनेजमेंट के साथ-साथ स्टैंडर्ड इनपुट/आउटपुट या HTTP के माध्यम से मैसेज एक्सचेंज के लिए ट्रांसपोर्ट एब्स्ट्रैक्शन प्रदान करता है। सुरक्षा और ऑब्जर्वेबिलिटी फीचर्स में OAuth आइडेंटिटी इंटीग्रेशन, सर्वर्स के लिए डायरेक्टरी एक्सेस रिस्ट्रिक्शंस, और ट्रैफिक इंस्पेक्शन और क्षमता सत्यापन के लिए टूल्स शामिल हैं।

    Enables providing local data and tools to AI models through a standardized communication protocol.

    Gogomcp
    GitHub पर देखें↗4,716
  • chatmcp/mcp-server-chatsumchatmcp का अवतार

    chatmcp/mcp-server-chatsum

    1,028GitHub पर देखें↗

    This project is a Model Context Protocol server that bridges messaging platforms with AI assistants. It functions as middleware to facilitate the secure exchange of chat data, enabling external AI agents to access, search, and analyze historical conversation logs through a standardized interface. The server distinguishes itself by automating the ingestion and archiving of messaging streams into a local relational database. It supports secure, non-manual session authentication using QR codes, allowing for persistent data collection without continuous human oversight. Once archived, the system

    Exposes local data and processing capabilities to external AI agents through a standardized protocol interface.

    TypeScriptchatbotchatsummcp-server
    GitHub पर देखें↗1,028
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  2. Data & Databases
  3. Graph Data Models
  4. Model Context Protocol Servers

सब-टैग एक्सप्लोर करें

  • Local Tool ExposureExposing local data and executable functions to AI models via a standardized protocol. **Distinct from Model Context Protocol Servers:** Focuses on the exposure of both data and local tools, not just graph-based data entities.