The weights and architecture of Mixture-of-Experts model, Grok-1 (By xAI)
It is an open-source library designed to help developers build conversational streaming user interfaces in JavaScript and TypeScript. The SDK supports React/Next.js, Svelte/SvelteKit, and Vue/Nuxt as well as Node.js, Serverless, and the Edge Runtime. | It is an open-source embedding database. Chroma makes it easy to build LLM apps by making knowledge, facts, and skills pluggable for LLMs. |
SWR-powered React, Svelte, and Vue helpers for streaming text responses and building chat and completion UIs;
First-class support for LangChain, OpenAI, Anthropic, and HuggingFace;
Edge runtime compatibility;
Callbacks for saving completed streaming responses to a database (in the same request) | 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 |
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