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11 Repos

Awesome GitHub RepositoriesKnowledge Graph Indexing Engines

Processors that extract entities and relationships to build hierarchical data representations.

Distinguishing note: Focuses on the indexing engine component of knowledge graph systems.

Explore 11 awesome GitHub repositories matching data & databases · Knowledge Graph Indexing Engines. Refine with filters or upvote what's useful.

Awesome Knowledge Graph Indexing Engines GitHub Repositories

Finde die besten Repos mit KI.Wir suchen mit KI nach den am besten passenden Repositories.
  • colbymchenry/codegraphAvatar von colbymchenry

    colbymchenry/codegraph

    50,154Auf GitHub ansehen↗

    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

    Exposes a local index of source code symbols and relationships to AI agents via the Model Context Protocol.

    TypeScript
    Auf GitHub ansehen↗50,154
  • microsoft/graphragAvatar von microsoft

    microsoft/graphrag

    33,792Auf GitHub ansehen↗

    GraphRAG is a data processing pipeline and retrieval engine designed to transform unstructured text into interconnected knowledge graphs. By utilizing language models to extract entities and relationships, it builds structured representations of information that enable context-aware retrieval for downstream applications. The system distinguishes itself through hierarchical graph clustering and large-scale data synthesis, which organize massive document corpora into multi-level structures. This approach allows for both vector-based semantic searches and graph-based traversals, providing a comp

    Extracts entities and relationships from large text corpora to build hierarchical representations of complex information.

    Pythongptgpt-4gpt4
    Auf GitHub ansehen↗33,792
  • chopratejas/headroomAvatar von chopratejas

    chopratejas/headroom

    29,537Auf GitHub ansehen↗

    Headroom is an AI gateway proxy and token optimizer designed to reduce the cost and latency of large language model interactions. It functions as an intermediary that intercepts traffic between clients and providers to apply context compression, request routing, and format translation. The system differentiates itself through a Model Context Protocol server implementation that delivers compression and retrieval tools to compatible AI hosts. It employs a content-aware compression pipeline and tiered importance scoring to trim redundant data from logs and tool outputs while preserving essential

    Maintains a live index of the code graph based on file changes for structural AST-based compression.

    Pythonagentaianthropic
    Auf GitHub ansehen↗29,537
  • garrytan/gbrainAvatar von garrytan

    garrytan/gbrain

    23,848Auf GitHub ansehen↗

    gbrain is an agent framework and retrieval-augmented generation system that combines a durable task queue, a git-synced vector store, and a knowledge graph engine. It provides a foundation for building AI agents that interact with structured knowledge bases using the Model Context Protocol. The system synchronizes markdown files from a git repository into a database for high-performance semantic retrieval and creates typed edges between data pages by extracting entity references and wikilinks. It uses a database-backed queue to execute persistent background jobs and tool loops, ensuring relia

    Provides an engine that extracts entity references and wikilinks from markdown to build a typed knowledge graph.

    TypeScript
    Auf GitHub ansehen↗23,848
  • github/codeqlAvatar von github

    github/codeql

    9,252Auf GitHub ansehen↗

    CodeQL is a semantic code analysis engine and vulnerability scanning tool that treats source code as data. It utilizes a static analysis query language to define complex patterns and security vulnerabilities within a code graph database. The system represents source code as a relational database, enabling the execution of structural queries and data flow analysis. This approach allows for the detection of security flaws and coding errors across large-scale repositories. The tool provides capabilities for automated code auditing, static analysis security testing, and custom vulnerability dete

    Builds a graph-based index of source code symbols and relationships to enable deep semantic analysis.

    CodeQLcodeqlgithub-advanced-securitygithub-security-lab
    Auf GitHub ansehen↗9,252
  • openspg/kagAvatar von OpenSPG

    OpenSPG/KAG

    8,548Auf GitHub ansehen↗

    KAG is a graph-augmented retrieval augmented generation system and knowledge graph engine. It functions as a framework that integrates large language models with graph retrieval and numerical calculation to resolve natural language queries. The system creates unified knowledge representations by aligning unstructured data and expert rules through semantic mapping. It maintains mutual indexing between graph structures and original text blocks to ensure that reasoning processes remain linked to verifiable source data. The project provides capabilities for semantic information integration, grap

    Provides a knowledge graph engine that integrates unstructured data and expert rules into semantic graphs.

    Pythonknowledge-graphlarge-language-modellogical-reasoning
    Auf GitHub ansehen↗8,548
  • sciphi-ai/r2rAvatar von SciPhi-AI

    SciPhi-AI/R2R

    7,891Auf GitHub ansehen↗

    R2R is an agentic retrieval-augmented generation platform that uses reasoning agents to perform multi-step data fetching for context-aware answering. It functions as a multimodal vector database manager and knowledge graph engine designed to ground artificial intelligence responses in verified factual knowledge. The platform distinguishes itself by combining reasoning agents for complex research automation with a knowledge graph that maps entity relationships. This allows the system to perform structured data traversal alongside unstructured vector search to resolve complex questions from int

    Extracts entities and relationships from unstructured data to build connected knowledge graph representations.

    Python
    Auf GitHub ansehen↗7,891
  • crytic/slitherAvatar von crytic

    crytic/slither

    6,141Auf GitHub ansehen↗

    Transforms source code into a graph structure that powers LLM skills for security analysis.

    Pythonethereumsoliditystatic-analysis
    Auf GitHub ansehen↗6,141
  • qodo-ai/qodo-coverAvatar von qodo-ai

    qodo-ai/qodo-cover

    5,444Auf GitHub ansehen↗

    Qodo Cover ist eine Engineering-Governance-Plattform und ein KI-gestützter Assistent für automatisierte Code-Reviews und Unit-Test-Generierung. Es nutzt einen Wissensgraphen auf Basis des abstrakten Syntaxbaums (AST), um Abhängigkeiten und architektonische Beziehungen abzubilden, wodurch Pull Requests analysiert und organisatorische Coding-Standards durchgesetzt werden können. Das System zeichnet sich durch eine Multi-Agenten-Analyse-Pipeline aus, die architektonische Schlussfolgerungen zieht und Fehler identifiziert, die über das unmittelbare Diff hinausgehen. Es verfügt über einen Model-Context-Protocol-Server, um Codebase-Intelligenz für externe Tools verfügbar zu machen, und kann Durchsetzungsregeln automatisch weiterentwickeln, indem es aus historischen Pull-Request-Entscheidungen lernt. Die Plattform bietet umfassende Funktionen für das Wissensmanagement der Codebase, einschließlich Deep-Research-Ausführung, semantischer Abfragen und System-Abhängigkeits-Mapping. Sie enthält zudem Werkzeuge zur iterativen Unit-Test-Generierung zur Erhöhung der Code-Abdeckung sowie automatisierte Remediation zur direkten Anwendung von Fixes auf Pull Requests. Bereitstellungsoptionen umfassen Multi-Tenant-SaaS, Single-Tenant oder vollständig On-Premises-Installationen.

    Builds graph-based indexes that represent source code symbols and their architectural relationships for global context.

    Pythonagentsaitest-automation
    Auf GitHub ansehen↗5,444
  • potpie-ai/potpieAvatar von potpie-ai

    potpie-ai/potpie

    5,161Auf GitHub ansehen↗

    Potpie is an LLM codebase analysis platform and multi-agent orchestration framework designed to act as an AI software engineer. It parses repositories into a structured code knowledge graph, enabling AI agents to perform multi-hop reasoning, dependency tracing, and grounded technical analysis across large codebases. The system distinguishes itself through a spec-driven development framework where agents generate detailed technical specifications and architecture plans before implementing multi-file code changes. It utilizes a durable execution engine to coordinate specialized AI personas for

    Parses repositories into a structured code knowledge graph to enable multi-hop reasoning and dependency tracing.

    Pythonagentsai-agentsai-agents-framework
    Auf GitHub ansehen↗5,161
  • shashankss1205/codegraphcontextAvatar von Shashankss1205

    Shashankss1205/CodeGraphContext

    3,748Auf GitHub ansehen↗

    CodeGraphContext is a code graph indexer and visualization tool that analyzes source code to build graphs of functions, classes, and inheritance relationships. It functions as a Model Context Protocol server, providing a structured codebase index to AI assistants for context retrieval and natural language querying. The project features an interactive web interface that uses force-directed layouts to visualize code dependencies and symbols. To accelerate the setup of large projects, it supports the import of pre-calculated knowledge bundles for popular repositories. The system provides capabi

    Analyzes source code to build a graph of functions, classes, and inheritance relationships for codebase navigation.

    Python
    Auf GitHub ansehen↗3,748
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Unter-Tags erkunden

  • Code Knowledge Graphs2 Sub-TagsGraph-based indexes specifically designed to represent source code symbols and their architectural relationships. **Distinct from Knowledge Graph Indexing Engines:** Specializes in code symbols/relationships rather than general entities or triples from raw data.