Home icon

The Weather Company enhances MLOps with Amazon SageMaker, AWS CloudFormation, and Amazon CloudWatch

Machine Learning Blog



The article summarizes how The Weather Company enhanced its machine learning operations (MLOps) platform using AWS services like Amazon SageMaker, AWS CloudFormation, and Amazon CloudWatch. The solution helped reduce infrastructure management time by 90% and model deployment time by 20%.

Specifically, the article covers:

  • The need for MLOps at The Weather Company to scale ML workflows and improve collaboration
  • The solution architecture involving training and inference pipelines using SageMaker, CloudWatch, CodePipeline, and other AWS services
  • The use of SageMaker Projects and Service Catalog to provision standardized infrastructure and templates for MLOps
  • The benefits achieved, including reduced infrastructure management time and faster model deployment


Go to article

The AWS News Feed is currently looking for gold sponsors. If you want to support the AWS community and reach a large audience of AWS professionals, consider sponsoring the AWS News Feed.

Related articles

Jun 12
2024
Use weather data to improve forecasts with Amazon SageMaker Canvas
Dec 10
2025
Building AI-powered weather forecasting tools with Open Data on AWS
May 27
2026
What if swapping your weather model was boring? How dynamical.org is making AI weather forecasting accessible on AWS
May 13
2025
Improving weather forecasting accuracy using Amazon AppStream 2.0 graphic-intensive instances

The AWS News Feed is currently looking for silver sponsors. If you want to support the AWS community and reach a large audience of AWS professionals, consider sponsoring the AWS News Feed.