Memory layer for AI Agents. Replace complex RAG pipelines with a serverless, single-file memory layer. Give your agents instant retrieval and long-term memory.
-
Updated
Mar 16, 2026 - Rust
Memory layer for AI Agents. Replace complex RAG pipelines with a serverless, single-file memory layer. Give your agents instant retrieval and long-term memory.
A polyglot document intelligence framework with a Rust core. Extract text, metadata, images, and structured information from PDFs, Office documents, images, and 91+ formats. Available for Rust, Python, Ruby, Java, Go, PHP, Elixir, C#, R, C, TypeScript (Node/Bun/Wasm/Deno)- or use via CLI, REST API, or MCP server.
Data transformation framework for AI. Ultra performant, with incremental processing. 🌟 Star if you like it!
Postgres with GPUs for ML/AI apps.
HelixDB is an open-source graph-vector database built from scratch in Rust.
AI Agent that handles engineering tasks end-to-end: integrates with developers’ tools, plans, executes, and iterates until it achieves a successful result.
All-in-one platform for search, recommendations, RAG, and analytics offered via API
Fast and efficient unstructured data extraction. Written in Rust with bindings for many languages.
High-performance GraphRAG inspired from LightRag written in Rust
Korvus is a search SDK that unifies the entire RAG pipeline in a single database query. Built on top of Postgres with bindings for Python, JavaScript, Rust and C.
Highly Performant, Modular, Memory Safe and Production-ready Inference, Ingestion and Indexing built in Rust 🦀
Database APIs for AI agents
Rust library for vector embeddings and reranking.
The all-in-one RWKV runtime box with embed, RAG, AI agents, and more.
The fastest PDF library for Python and Rust. Text extraction, image extraction, markdown conversion, PDF creation & editing. 0.8ms mean, 5× faster than industry leaders, 100% pass rate on 3,830 PDFs. MIT/Apache-2.0.
Fast, local-first web content extraction for LLMs. Scrape, crawl, extract structured data — all from Rust. CLI, REST API, and MCP server.
Semantic code searcher and codebase utility
Add a description, image, and links to the rag topic page so that developers can more easily learn about it.
To associate your repository with the rag topic, visit your repo's landing page and select "manage topics."