The weights and architecture of Mixture-of-Experts model, Grok-1 (By xAI)
It is an open-source embedding database. Chroma makes it easy to build LLM apps by making knowledge, facts, and skills pluggable for LLMs. | It is a library for building stateful, multi-actor applications with LLMs, built on top of (and intended to be used with) LangChain. It extends the LangChain Expression Language with the ability to coordinate multiple chains (or actors) across multiple steps of computation in a cyclic manner. |
Fully-typed, fully-tested, fully-documented;
Dev, Test, Prod: the same API that runs in your Python notebook, scales to your cluster;
Feature-rich;
Free & open source | Build language agents as graphs;
Built on top of LangChain;
Inspired by Pregel and Apache Beam |
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GitHub Stars 24.2K | GitHub Stars 20.6K |
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