talk-data.com talk-data.com

Elise Gonzales

Speaker

Elise Gonzales

2

talks

Staff Product Manager Databricks

Elise is a Product Manager on the Mosaic AI team at Databricks focused on building agents. Before Databricks, she ran the product team at Amperity, a Customer Data Platform, as well as working on HoloLens at Microsoft and Alexa at Amazon. She got her undergraduate degree in Computer Science at Carnegie Mellon.

Bio from: Data + AI Summit 2025

Filter by Event / Source

Talks & appearances

2 activities · Newest first

Search activities →
Building Tool-Calling Agents With Databricks Agent Framework and MCP

Want to create AI agents that can do more than just generate text? Join us to explore how combining Databricks' Mosaic AI Agent Framework with the Model Context Protocol (MCP) unlocks powerful tool-calling capabilities. We'll show you how MCP provides a standardized way for AI agents to interact with external tools, data and APIs, solving the headache of fragmented integration approaches. Learn to build agents that can retrieve both structured and unstructured data, execute custom code and tackle real enterprise challenges. Key takeaways: Implementing MCP-enabled tool-calling in your AI agents Prototyping in AI Playground and exporting for deployment Integrating Unity Catalog functions as agent tools Ensuring governance and security for enterprise deployments Whether you're building customer service bots or data analysis assistants, you'll leave with practical know-how to create powerful, governed AI agents.

Agent Bricks: Building Multi-Agent Systems for Structured and Unstructured Information

Learn how to build sophisticated systems that enable natural language interactions with both your structured databases and unstructured document collections. This session explores advanced techniques for creating unified and governed AI systems that can seamlessly interpret questions, retrieve relevant information and generate accurate answers across your entire data ecosystem. Key takeaways include: Strategies for combining vector search over unstructured documents with retrieval from structured databases Techniques for optimizing unstructured data processing through effective parsing, metadata enrichment and intelligent chunking Methods for integrating different retrieval mechanisms while ensuring consistent data governance and security Practical approaches for evaluating and improving KBQA system quality through automated and human feedback