Build a custom portal with embedded Amazon SageMaker AI MLflow Apps | Amazon Web Services

https://d2908q01vomqb2.cloudfront.net/f1f836cb4ea6efb2a0b1b99f41ad8b103eff4b59/2026/05/28/20734.png

As ML teams grow, embedding Amazon SageMaker AI MLflow Apps into a custom portal requires a scalable approach to access management. Distributing presigned URLs doesn’t scale for teams with dozens of data scientists, and granting individual AWS Management Console access adds operational overhead for administrators managing access controls. Teams who rely on SSO-integrated internal portals need their MLflow experiment tracking accessible alongside other internal applications through a single bookmarkable URL. With a custom portal, you reduce onboarding time for new team members, simplify access management, and give data scientists a consistent experience across your internal tools.

With this solution, you give your machine learning (ML) teams a persistent, bookmarkable URL to the full MLflow web UI without presigned URLs or AWS Management Console access. You can embed the MLflow experiment tracking UI directly into your organization’s SSO-integrated internal portal or custom dashboard, so users authenticate once and access experiment tracking...

Copyright of this story solely belongs to amazon.com. To see the full text click HERE