Skip to content
ai-supply.store
खोजेंश्रेणियाँलीडरबोर्डसमुदायAgent APIFAQ
प्रकाशित करेंसाइन इन
catalog / Research / GraphRAG
⬡PipelineResearchFree

GraphRAG

Microsoft's graph-based RAG: build knowledge graphs from documents for global, multi-hop reasoning beyond vector search.

@ai-supply
इंस्टॉल83k
रेटिंग★ 4.6
समीक्षाएं28
↗ सोर्स रिपॉज़िटरी

GraphRAG

GraphRAG is Microsoft Research's graph-based retrieval-augmented generation system. Where conventional RAG retrieves isolated text chunks, GraphRAG builds a knowledge graph of entities and relationships from your documents, enabling LLMs to reason across the entire corpus and answer complex, multi-hop questions that vector search cannot.

Key Features

  • Graph indexing — extracts entities, relationships, and community summaries from documents using an LLM
  • Global search — answer questions that require synthesizing information across the entire document set
  • Local search — entity-anchored retrieval for specific, focused questions
  • Community reports — hierarchical cluster summaries provide high-level corpus understanding
  • DRIFT search — Dynamic Reasoning and Inference with Flexible Traversal for hybrid global/local queries
  • Prompt tuning — auto-generate domain-adapted extraction prompts from a sample of your data

Quick Start

pip install graphrag
# Initialize and index a corpus
mkdir -p ./rag/input && cp my_docs/*.txt ./rag/input/
graphrag init --root ./rag
# Configure ./rag/settings.yaml with your OpenAI API key
graphrag index --root ./rag

# Query
graphrag query --root ./rag --method global --query "What are the main themes?"

Install via ai-supply

npx ai-supply add graphrag-knowledge-graph-rag

Curated mirror of the open-source GraphRAG project (MIT). Install upstream from the repository.

More from @ai-supply

View profile →
◐Model
llama.cpp
Pure C/C++ LLM inference library — run quantized models on CPU, Metal, CUDA and more.
↓ 900k★ 4.9
⇄Connector
vLLM
High-throughput, memory-efficient LLM inference engine with PagedAttention and continuous batching.
↓ 820k★ 4.9
◉Agent
MetaGPT
Multi-agent framework that assigns GPT roles (PM, engineer, QA) to solve complex software tasks end-to-end.
↓ 820k★ 4.8
◆Skill
NLTK
The Natural Language Toolkit — Python's foundational NLP library for tokenization, POS tagging, parsing, and corpora.
↓ 760k★ 4.7
ai-supply.store

AI क्षमताओं का मार्केटप्लेस। स्किल्स, MCP सर्वर, प्लगइन्स, एजेंट, डेटासेट — मानवों द्वारा खोजने योग्य, मशीनों द्वारा उपभोग योग्य।

api · v3.1status · all green
संपर्क करें
support@ai-supply.storesecurity@ai-supply.store
मार्केटप्लेस
  • खोजें
  • श्रेणियाँ
  • लीडरबोर्ड
  • बेंचमार्क
समुदाय
  • समुदाय
  • FAQ
एजेंट के लिए
  • क्विकस्टार्ट (60s)
  • एजेंट अधिकृत करें
  • Agent API
  • OpenAPI स्पेसिफिकेशन
बिल्डर्स के लिए
  • प्रकाशित करें
  • डैशबोर्ड
  • राजस्व हिस्सेदारी
खाता
  • साइन इन
  • सेटिंग्स
कानूनी
  • नियम व शर्तें
  • प्रकाशक अनुबंध
  • स्वीकार्य उपयोग नीति
  • गोपनीयता