MLOps Community
+00:00 GMT
Sign in or Join the community to continue

Scaling MLOps for Computer Vision

Posted Dec 06, 2023 | Views 639
# Scaling MLOps
# Computer Vision
# Union
Share
speakers
avatar
David Espejo
Open Source Developer Advocate @ Union

Engineer with 14+ years of experience working on software infrastructure. From UNIX SCO mainframes to Kubernetes. David believes in open-source and the power of a healthy community.

+ Read More
avatar
Fabio Grätz
Senior Software Engineer @ Recogni

Fabio is a Senior Software Engineer in the DevOps/MLOps team at Recogni. The team provides an internal developer platform (IDP) for Recogni's ML- and Software Engineering teams. Fabio is a core contributor and member of the technical steering committee of Flyte. Previously, Fabio lead the MLOps team at Merantix Momentum and worked as a Deep Learning engineer.

Originally, he has a background in physics and holds a Ph.D. in theoretical astrophysics on the dynamics of planetary ring systems.

+ Read More
avatar
Arno Hollosi
CTO @ Blackshark.ai

Arno Hollosi is CTO at Blackshark.ai, a company that seeks to unlock planetary insights by building geospatial intelligence solutions and a planet-scale semantic 3D digital twin. Previously, he was a professor at FH CAMPUS 02 in Graz, worked for a German e-commerce startup, as well as for Siemens and the Austrian government where he co-invented the Austrian digital citizen card. He wrote and co-authored four books as well as two patents. In his free time, he runs one of the oldest wikis worldwide.

+ Read More
avatar
Ben Epstein
Founding Software Engineer @ Galileo

Ben was the machine learning lead for Splice Machine, leading the development of their MLOps platform and Feature Store. He is now a founding software engineer at Galileo (rungalileo.io) focused on building data discovery and data quality tooling for machine learning teams. Ben also works as an adjunct professor at Washington University in St. Louis teaching concepts in cloud computing and big data analytics.

+ Read More
SUMMARY

Flyte: A Platform for the Agile Development of AI Products The development of traditional apps differs from how AI products are built, primarily due to distinctions in inputs (program vs data) and process structure (sequential vs iterative). However, ML/Data Science teams could benefit from adopting established Software Engineering patterns; bridging the gap that frequently impedes the transition of ML applications to production. In this talk, David will introduce Flyte, an open-source platform that empowers ML/DS teams to collaborate effectively and expedite the delivery of production-grade AI applications.

Flyte at Recogni Recogni develops high compute, low power, and low latency neural network inference processors with unmatched performance amongst automotive inference processing systems. Fabio will share how ML engineers and researchers at Recogni leverage Flyte as part of their internal developer platform to speed up machine learning experiments for Recogni’s ML-silicon co-design, to develop a state-of-the-art automotive perception stack, and to compress and mathematically convert these models for deployment.

Lessons Learned from Running AI Models at Scale Blackshark.ai is analyzing satellite imagery of the whole planet with AI. In this talk we explore the lessons learned from training and executing AI models at scale. It touches upon challenges such as managing large datasets, ensuring model reliability, and maintaining system performance. We will also discuss the importance of efficient workflows, robust infrastructure, and the need for continuous monitoring and optimization.

+ Read More

Watch More

26:41
Synthetic Data for Computer Vision
Posted Jun 03, 2024 | Views 1.9K
# Synthetic Data
# MLOps
# Rowden Technologies
Overcoming Bias in Computer Vision and Voice Recognition
Posted Aug 08, 2024 | Views 180
# Bias
# Computer Vision
# AI Models