Productionizing ML with ML Ops and Cloud AI
Offered By: Linux Foundation via YouTube
Course Description
Overview
Explore the world of Machine Learning Operations (MLOps) and Cloud AI in this insightful 43-minute conference talk by Google's Kaz Sato. Delve into the challenges of productionizing machine learning models and discover solutions for continuous deployment, performance optimization, and technical support. Learn about data validation techniques through a live demo, understand freshness requirements, and gain valuable insights into ML lifecycle management. Equip yourself with the knowledge to become an ML superhero and effectively tackle the complexities of implementing machine learning in production environments.
Syllabus
Introduction
What is ML Ops
ML Superhero
Problems
Deep Running Continuous
Performance
Technical Support
Data Validation
Data Validation Demo
Freshness Requirements
ML Lifecycle Management
Summary
Taught by
Linux Foundation
Tags
Related Courses
Developing a Tabular Data ModelMicrosoft via edX Data Science in Action - Building a Predictive Churn Model
SAP Learning Serverless Machine Learning with Tensorflow on Google Cloud Platform 日本語版
Google Cloud via Coursera Intro to TensorFlow em Português Brasileiro
Google Cloud via Coursera Serverless Machine Learning con TensorFlow en GCP
Google Cloud via Coursera