Session + Live Q&A
Unified MLOps: Feature Stores and Model Deployment
If you’ve brought two or more ML models into production, you know the struggle that comes from managing multiple data sets, feature engineering pipelines, and models. This talk will propose a whole new approach to MLOps that allows you to successfully scale your models, without increasing latency, by merging a database, a feature store, and machine learning.
Speaker

Monte Zweben
CEO and co-founder of Splice Machine @splicemachine
Monte Zweben is the CEO and co-founder of Splice Machine, a provider of real-time machine learning and AI solutions, where he leads the team in their mission to make operational, real-time AI possible for their customers. A technology industry veteran, Monte’s early career was spent...
Read moreFind Monte Zweben at:
From the same track
MLOps: The Most Important Piece in the Enterprise AI Puzzle
Wednesday May 26 / 11:10AM EDT
Machine Learning Operations (MLOps) is a set of principles and practices that increase the efficiency of machine learning workflows and solutions. In this session, Dr. Francesca Lazzeri will provide an overview of the latest MLOps technologies and principles that data scientists and ML engineers...

Francesca Lazzeri
Principal Data Scientist Manager @Microsoft
Developing and Deploying ML Across Teams with MLOps Automation Tool
Wednesday May 26 / 09:10AM EDT
We developed an MLOps automation tool in order to prevent ML engineers working on different projects from continuously repeating the same devops tasks manually. We standardized the management of cloud resources using infrastructure as code as well as model training and deployment workflows using...

Fabio Grätz, Ph.D.
Senior Machine Intelligence Engineer @Merantix

Thomas Wollmann
VP Engineering @Merantix
Iterating on Models on Operating ML
Wednesday May 26 / 12:10PM EDT
What big challenges do we see nowadays in ML?What do we assume to see in the future?How can you sort all your ML models and operate them?Join the discussion with experts actively working on addressing current challenges in building, maintaining, and operating machine learning models.

Monte Zweben
CEO and co-founder of Splice Machine @splicemachine

Roland Meertens
Product Manager @annotell