Creating a complete TensorFlow 2 workflow in Amazon SageMaker

Favorite Managing the complete lifecycle of a deep learning project can be challenging, especially if you use multiple separate tools and services. For example, you may use different tools for data preprocessing, prototyping training and inference code, full-scale model training and tuning, model deployments, and workflow automation to orchestrate all

Read More
Shared by AWS Machine Learning May 27, 2020