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Try one of these tutorials to get started. You can import these notebooks to your Databricks workspace.
Tutorial | Description |
---|---|
Classic ML | End-to-end example of training a classic ML model in Databricks. |
scikit-learn | Use one of the most popular Python libraries for machine learning to train machine learning models. |
MLlib | Examples of how to use the Apache Spark machine learning library. |
Deep learning using PyTorch | End-to-end example of training a deep learning model in Databricks using PyTorch. |
TensorFlow | TensorFlow is an open-source framework that supports deep-learning and numerical computations on CPUs, GPUs, and clusters of GPUs. |
Mosaic AI Model Serving | Deploy and query a classic ML model using Mosaic AI Model Serving. |
Foundation model APIs | Foundation model APIs provide access to popular foundation models from endpoints that are available directly from the Databricks workspace. |
Agent framework quickstart | Use Mosaic AI Agent Framework to build an agent, add a tool to the agent, and deploy the agent to a Databricks model serving endpoint. |
Trace a GenAI app | Trace an app's execution flow with visibility into every step. |
Evaluate a GenAI app | Use MLflow 3 to create, trace, and evaluate a GenAI app. |
Human feedback quickstart | Collect end-user feedback and use that feedback to evaluate your GenAI app's quality. |
Build, evaluate, and deploy a retrieval agent | Build an AI agent that combines retrieval with tools. |
Query OpenAI models | Create an external model endpoint to query OpenAI models. |