Presentation: Michelangelo - Machine Learning @Uber
This presentation is now available to view on InfoQ.com
Watch video with transcriptAbstract
Michelangelo is the Machine Learning Platform that powers most of the machine learning solutions at Uber. The early goal of Michelangelo was to enable teams around Uber to deploy and operate ML solutions at Uber scale. Now that the system has matured, our focus has shifted towards developer velocity and empowering the individual model owners to be fully self-sufficient from early prototyping through full production deployment and operationalization. For data science users, we are making the operational side self-service so that they don’t need to engage engineering teams to deploy and operate the models and feature pipelines. For engineering users, we are making the modeling work easier and more automatic so that engineers can do more alone, without formal data science assistance.
Similar Talks
Machine Learning on Mobile and Edge Devices With TensorFlow Lite
Developer Advocate for TensorFlow Lite @Google and Co-Author of TinyML
Daniel Situnayake
Self-Driving Cars as Edge Computing Devices
Sr. Staff Engineer @UberATG
Matt Ranney
CI/CD for Machine Learning
Program Manager on the Azure DevOps Engineering Team @Microsoft
Sasha Rosenbaum
ML's Hidden Tasks: A Checklist for Developers When Building ML Systems
Senior Machine Learning Engineer @teamretrorabbit
Jade Abbott
From POC to Production in Minimal Time - Avoiding Pain in ML Projects
Chief Science Officer @StoryStreamAI
Janet Bastiman
ML in the Browser: Interactive Experiences with Tensorflow.js
Research Engineer in Machine Learning @cloudera
Victor Dibia
Scaling Patterns for Netflix's Edge
Playback Edge Engineering @Netflix
Justin Ryan
Machine Learning 101
Data Scientist @IBM
Grishma Jena
ML/AI Panel
Staff Developer Relations Engineer @Google Cloud Platform