talk-data.com talk-data.com

Topic

Databricks

big_data analytics spark

7

tagged

Activity Trend

515 peak/qtr
2020-Q1 2026-Q1

Activities

Showing filtered results

Filtering by: Kasey Uhlenhuth ×
Building and Scaling Production AI Systems With Mosaic AI

Ready to go beyond the basics of Mosaic AI? This session will walk you through how to architect and scale production-grade AI systems on the Databricks Data Intelligence Platform. We’ll cover practical techniques for building end-to-end AI pipelines — from processing structured and unstructured data to applying Mosaic AI tools and functions for model development, deployment and monitoring. You’ll learn how to integrate experiment tracking with MLflow, apply performance tuning and use built-in frameworks to manage the full AI lifecycle. By the end, you’ll be equipped to design, deploy and maintain AI systems that deliver measurable outcomes at enterprise scale.

keynote
by Jamie Dimon (JPMorgan Chase) , Kasey Uhlenhuth (Databricks) , Justin DeBrabant (Databricks) , Greg Ulrich (Mastercard) , Richard Masters (Virgin Atlantic Airways) , Ali Ghodsi (Databricks) , Reynold Xin (Databricks) , Nikita Shamgunov (Neon) , Dario Amodei (Anthropic) , Holly Smith (Databricks) , Hanlin Tang (Databricks)

Be first to witness the latest breakthroughs from Databricks and share the success of innovative data and AI companies.

Patrick Wendell, Co-founder and VP of Engineering on Building Production-Quality AI Systems

Speakers: Patrick Wendell, Co-founder and VP of Engineering, Databricks Kasey Uhlenhuth, Staff Product Manager, Databricks

At the Data and AI Summit, we announced several new capabilities that make Databricks Mosaic AI the best platform for building production-quality AI systems. These features are based on our experience working with thousands of companies to put AI-powered applications into production. Announcements include support for fine-tuning foundation models, an enterprise catalog for AI tools, a new SDK for building, deploying, and evaluating AI Agents, and a unified AI gateway for governing deployed AI services.

Sessions from Data + AI Summit are available on-demand at https://www.databricks.com/dataaisummit

Learn How to Reliably Monitor Your Data and Model Quality in the Lakehouse

Developing and upkeep of production data engineering and machine learning pipelines is a challenging process for many data teams. Even more challenging is monitoring the quality of your data and models once they go into production. Building upon untrustworthy data can cause many complications for data teams. Without a monitoring service, it is challenging to proactively discover when your ML models degrade over time, and the root causes behind it. Furthermore, with a lack of lineage tracking, it is even more painful to debug errors in your models and data. Databricks Lakehouse Monitoring offers a unified service to monitor the quality of all your data and ML assets.

In this session, you’ll learn how to:

  • Use one unified tool to monitor the quality of any data product: data or AI 
  • Quickly diagnose errors in your data products with root cause analysis
  • Set up a monitor with low friction, requiring only a button click or a single API call to start and automatically generate out-of-the-box metrics
  • Enable self-serve experiences for data analysts by providing reliability status for every data asset

Talk by: Kasey Uhlenhuth and Alkis Polyzotis

Connect with us: Website: https://databricks.com Twitter: https://twitter.com/databricks LinkedIn: https://www.linkedin.com/company/databricks Instagram: https://www.instagram.com/databricksinc Facebook: https://www.facebook.com/databricksinc

Data + AI Summit Keynote Wednesday
video
by Larry Feinsmith (JP Morgan Chase) , Kasey Uhlenhuth (Databricks) , Zaheera Valani (Databricks) , Wassym Bensaid (Rivian) , Satya Nadella (Microsoft) , Weston Hutchins (Databricks) , Ali Ghodsi (Databricks) , Reynold Xin (Databricks) , Sai Pradhan Ravuru (Jetblue) , Matei Zaharia (Databricks) , Caryl Yuhas (Databricks) , Patrick Wendell (Databricks) , Naveen Rao (Databricks)

0:00 Opener 01:18- Ali Ghodsi, Databricks 06:53 - Satya Nadella, Microsoft 15:50 Ali Ghodsi, Databricks 20:40 Larry Feinsmith, JP Morgan Chase 41:09 Ali Ghodsi, Databricks 45:07 Matei Zaharia, Databricks 52:31 Weston Hutchins, Databricks 58:36 Ali Ghodsi, Databricks 1:02:05 Naveen Rao, MosaicML 1:12:15 Patrick Wendell, Databricks 1:27:57 Kasey Uhlenhuth, Databricks 1:39:18 Sai Pradhan Ravuru, Jetblue 01:47 Ali Ghodsi, Databricks 1:49:20 Reynold Xin, Databricks 2:05:07 Ali Ghodsi, Databricks 2:09:26 Matei Zaharia, Databricks 2:17:24 Caryl Yuhas, Databricks 2:24:12 Zaheera Valani, Databricks 2:39:55 Wassym Bensaid, Rivian

OpeningProduction Machine Learning | Patrick WendellMLflow 2.0 | Kasey Uhlenhuth

Opening Production Machine Learning | Patrick Wendell MLflow 2.0 | Kasey Uhlenhuth | Keynotes Data + AI Summit 2022

Connect with us: Website: https://databricks.com Facebook: https://www.facebook.com/databricksinc Twitter: https://twitter.com/databricks LinkedIn: https://www.linkedin.com/company/data... Instagram: https://www.instagram.com/databricksinc/

Day 2 Morning Keynote |  Data + AI Summit 2022

Day 2 Morning Keynote | Data + AI Summit 2022 Production Machine Learning | Patrick Wendell MLflow 2.0 | Kasey Uhlenhuth Revolutionizing agriculture with AI: Delivering smart industrial solutions built upon a Lakehouse architecture | Ganesh Jayaram Intuit’s Data Journey to the Lakehouse: Developing Smart, Personalized Financial Products for 100M+ Consumers & Small Businesses | Alon Amit and Manish Amde Workflows | Stacy Kerkela Delta Live Tables | Michael Armbrust AI and creativity, and building data products where there's no quantitative metric for success, such as in games, or web-scale search, or content discovery | Hilary Mason What to Know about Data Science and Machine Learning in 2022 | Peter Norvig Data-centric AI development: From Big Data to Good Data | Andrew Ng

Connect with us: Website: https://databricks.com Facebook: https://www.facebook.com/databricksinc Twitter: https://twitter.com/databricks LinkedIn: https://www.linkedin.com/company/data... Instagram: https://www.instagram.com/databricksinc/