Rating
Votes
0
score
Downloads
4.9K
total
Price
Free
No login needed
Works With
About
txtai is an all-in-one AI framework for semantic search, LLM orchestration, and language model workflows. Build embedding databases, RAG pipelines, and AI-powered search in Python.
Combines embeddings, search, and LLM orchestration in a single package. Supports local and cloud models.
Install via pip. Open-source with extensive documentation.
Don't lose this
Three weeks from now, you'll want txtai again. Will you remember where to find it?
Save it to your library and the next time you need txtai, it’s one tap away — from any AI app you use. Group it into a bench with the rest of the team for that kind of task and you can pull the whole stack at once.
⚡ Pro tip for geeks: add a-gnt 🤵🏻♂️ as a custom connector in Claude or a custom GPT in ChatGPT — one click and your library is right there in the chat. Or, if you’re in an editor, install the a-gnt MCP server and say “use my [bench name]” in Claude Code, Cursor, VS Code, or Windsurf.
a-gnt's Take
Our honest review
All-in-one embeddings database and RAG framework. Best for anyone looking to make their AI assistant more capable in ai models. It's backed by an active open-source community and verified by the creator. This one just landed in the catalog — worth trying while it's fresh.
Tips for getting started
Tap "Get" above, pick your AI app, and follow the steps. Most installs take under 30 seconds.
What's New
Initial release
Ratings & Reviews
4.6
out of 5
11 ratings
No reviews yet. Be the first to share your experience.
From the Community
In the Weeds: Automating Content Pipelines with Apify + Neon
A technical guide to building automated content collection, processing, and enrichment pipelines using Apify for web scraping and Neon serverless Postgres for storage — the infrastructure behind a-gnt's catalog.
In the Weeds: Building a Flight Price Tracker with Kiwi MCP
A technical guide to building an automated flight price monitoring system using Kiwi Flights MCP — track prices across flexible dates, get alerts on drops, and find deals that manual searching would miss.
In the Weeds: Semantic Search at Scale with Supabase + pgvector
A production-grade guide to building semantic search with Supabase and pgvector — from initial setup through indexing strategies, query optimization, and the hybrid search patterns that actually work at scale.
You Might Also Like
Spotlight
From the Community
In the Weeds: Building a Knowledge Graph with txtai
A deep technical guide to building a semantic knowledge graph using txtai — from embedding your documents to traversing relationships that traditional search would never surface.
In the Weeds: RAG from Scratch with txtai
A technical walkthrough of building a Retrieval-Augmented Generation pipeline with txtai — from document ingestion to query-time generation.
In the Weeds: Self-Hosting AI Models with LocalAI
A hands-on technical guide to running open-source language models on your own hardware with LocalAI — no cloud APIs, no usage fees, no data leaving your network.