Accelerate your ML journey with Amazon SageMaker low-code tools

The machine learning (ML) journey requires continuous experimentation and rapid prototyping to be successful. These processes are traditionally time consuming and expensive. Amazon SageMaker offers low-code options for each step of the ML lifecycle so you can build, train, and deploy high-quality models faster. In this session, learn how low-code tools, including Amazon SageMaker Data Wrangler, Amazon SageMaker Autopilot, and Amazon SageMaker JumpStart, make it easier to experiment faster so you can focus more on refining predictions and less on low-level code.

Previous Video
Building, training, and deploying a movie recommendation engine
Building, training, and deploying a movie recommendation engine

In this session, learn how startup Vale partnered with ClearScale to use modern AI/ML technology to create ...

Next Video
Productionize ML workloads using Amazon SageMaker MLOps
Productionize ML workloads using Amazon SageMaker MLOps

In this session, explore Amazon SageMaker machine learning operations (MLOps) features and learn how to inc...