talk-data.com talk-data.com

Adam Gurary

Speaker

Adam Gurary

2

talks

Product Manager Databricks

Adam Gurary is a Product Manager at Databricks working on Vector Search and Document Parsing. Before joining Databricks, Adam was a Product Manager at C3 AI working on inference for LLMs and embedding models.

Bio from: Data + AI Summit 2025

Filter by Event / Source

Talks & appearances

2 activities · Newest first

Search activities →
Intelligent Document Processing: Building AI, BI, and Analytics Systems on Unstructured Data

Most enterprise data is trapped in unstructured formats — documents, PDFs, scanned images and tables — making it difficult to access, analyze and use. This session shows how to unlock that hidden value by building intelligent document processing workflows on the Databricks Data Intelligence Platform. You’ll learn how to ingest unstructured content using Lakeflow Connect, extract structured data with AI Parse — even from complex tables and scanned documents — and apply analytics or AI to this newly structured data. What you’ll learn: How to build scalable pipelines that transform unstructured documents into structured tables Techniques for automating document workflows with Databricks tools Strategies for maintaining quality and governance with Unity Catalog Real-world examples of AI applications built with intelligent document processing

Beyond Simple RAG: Unlocking Quality, Scale and Cost-Efficient Retrieval With Mosaic AI Vector Search

This session is repeated. Mosaic AI Vector Search is powering high-accuracy retrieval systems in production across a wide range of use cases — including RAG applications, entity resolution, recommendation systems and search. Fully integrated with the Databricks Data Intelligence Platform, it eliminates pipeline maintenance by automatically syncing data from source to index. Over the past year, customers have asked for greater scale, better quality out-of-the-box and cost-efficient performance. This session delivers on those needs — showcasing best practices for implementing high-quality retrieval systems and revealing major product advancements that improve scalability, efficiency and relevance. What you’ll learn: How to optimize Vector Search with hybrid retrieval and reranking for better out-of-the-box results Best practices for managing vector indexes with minimal operational overhead Real-world examples of how organizations have scaled and improved their search and recommendation systems