DevOps for data science: Operationalising machine learning

July 2, 2020
Organisations are recognising the importance of cross-functional expertise and efficient tooling when bringing AI-driven products to market. In this session, learn how to build an end-to-end pipeline for continuous delivery of ML models. Also learn how to automate MLOps with Amazon SageMaker and serverless workflows to build, deploy, and monitor models at scale to maximise the business value to your organisation. AWS Summit Online 2020
Previous Video
AWS DeepRacer: Train, evaluate and tune your reinforcement learning model
AWS DeepRacer: Train, evaluate and tune your reinforcement learning model

In this session, we introduce the basics of reinforcement learning and show you how to apply it to train yo...

Next Video
Building an ML organisation
Building an ML organisation

The advent of AI/ML is reshaping the enterprise and opening new challenges and opportunities. Building an M...