Nebius AI Studio provides API access to a wide range of state-of-the-art large language models and embedding models for various use cases.
Installation and Setup
The Nebius integration can be installed via pip:api_key or set as the environment variable NEBIUS_API_KEY.
Available Models
The full list of supported models can be found in the Nebius AI Studio Documentation.Chat models
ChatNebius
TheChatNebius class allows you to interact with Nebius AI Studio’s chat models.
See a usage example.
Embedding models
NebiusEmbeddings
TheNebiusEmbeddings class allows you to generate vector embeddings using Nebius AI Studio’s embedding models.
See a usage example.
Retrievers
NebiusRetriever
TheNebiusRetriever enables efficient similarity search using embeddings from Nebius AI Studio. It leverages high-quality embedding models to enable semantic search over documents.
See a usage example.
Tools
NebiusRetrievalTool
TheNebiusRetrievalTool allows you to create a tool for agents based on the NebiusRetriever.
Connect these docs programmatically to Claude, VSCode, and more via MCP for real-time answers.