AWS Announces Serverless MLflow Migration Path to Amazon SageMaker AI

Amazon AWS provides guidance on migrating self-managed MLflow tracking servers to serverless MLflow Apps on SageMaker AI with automatic scaling.

AWS Announces Serverless MLflow Migration Path to Amazon SageMaker AI

According to Amazon AWS, the company has published guidance on migrating self-managed MLflow tracking servers to a new serverless option called MLflow Apps on Amazon SageMaker AI.

The serverless MLflow tracking server on SageMaker AI automatically scales resources based on demand, according to the announcement. AWS states that the service removes server patching and storage management tasks and is offered at no additional cost beyond standard AWS infrastructure charges.

The migration process utilizes MLflow’s Export Import functionality, according to the source material. The post provides step-by-step instructions for organizations currently running their own MLflow tracking servers who want to transition to the managed service.

MLflow is an open-source platform for managing the machine learning lifecycle, including experiment tracking, model packaging, and deployment. A tracking server stores experiment data, metrics, and model artifacts. By offering a serverless version, AWS aims to reduce operational overhead for ML teams managing their own infrastructure.

The announcement represents AWS’s continued expansion of managed machine learning operations (MLOps) services within its SageMaker AI platform.