Amazon SageMaker Automatic Model Tuning now supports up to 10x faster tuning and enables exploring up to 20X more models - devamazonaws.blogspot.com

Amazon SageMaker Automatic Model Tuning enables you to find the best version of a model by finding the optimal set of hyperparameter configuration for your dataset. Starting today, SageMaker Automatic Model Tuning now supports running up to 100 parallel training jobs for hyperparameter tuning, which gives you a 10X increase of parallel training jobs so you can complete your tuning faster. Additionally, for “Random” search strategy, SageMaker Automatic Model Tuning now supports exploring up to 10,000 hyperparameter configurations, a 20x increase over previous limit of 500, enabling you to improve coverage of search space leading to potentially better predictive performance of your model.

Post Updated on May 07, 2021 at 10:52PM https://ift.tt/31Uzw8n

Comments

Popular posts from this blog

Scenarios capability now generally available for Amazon Q in QuickSight - devamazonaws.blogspot.com

[MS] Introducing Pull Request Annotation for CodeQL and Dependency Scanning in GitHub Advanced Security for Azure DevOps - devamazonaws.blogspot.com

AWS Console Mobile Application adds support for Amazon Lightsail - devamazonaws.blogspot.com