Agentic Systems and Evaluation with Databricks AI
Demo Type
Product Tutorial
Duration
self-paced
Related Links
What you’ll learn
Databricks lets you build and deploy your AI Agent System for any use case, leveraging foundation LLMs, PDF extraction, Vector Search, and Mosaic AI Agent Evaluation.
In this demo, you'll learn how to:
Build and deploy your first tools, and save them as a Unity Catalog function
Create your first agent, leveraging these tools through LangChain
Evaluate your agent and build an evaluation loop to ensure new versions perform better on your dataset
Leverage MLflow 3.0 tracing, feedback, and scorers, including evaluation dataset generation
Package and deploy your chatbot as a Databricks application
Scan and extract information using Databricks' built-in
document_ai_parse
functionMonitor your live, production agent behavior with Databricks Monitoring
To run the demo, get a free Databricks workspace and execute the following two commands in a Python notebook:
Disclaimer: This tutorial leverages features that are currently in private preview. Databricks Private Preview terms apply.
For more details, open the introduction notebook.