Hosted MLflow with managed tracking server, model registry, and deployment integration — open-source ML lifecycle tooling tightly coupled to Databricks Unity Catalog and Mosaic AI
Jurisdictional exposure
Sub-services (3)
Experiment Tracking
Run-level metrics, params, artefacts, and lineage to source notebook
Model Registry (UC)
Unity-Catalog-backed registry with stage transitions and signatures
Deployments
One-click registration to Mosaic AI Model Serving endpoints
Compliance & Certifications
This service is attested for the following frameworks. Always verify with the provider before relying on a specific compliance posture.
Where this runs
Sovereign regions (1)
- AWS GovCloud (US-West) · San Francisco Bay AreaDatabricks on AWS GovCloud (FedRAMP High)
Commercial regions (25)
Europe (7)
- EU (Frankfurt)
- Europe West 3 (Frankfurt)
- EU (Ireland)
- North Europe (Ireland)
- West Europe (Netherlands)
- EU (London)
- UK South (London)
North America (11)
- Canada (Central)
- Canada Central
- US East (N. Virginia)
- US East 4 (Virginia)
- East US (Virginia)
- East US 2 (Virginia)
- US East (Ohio)
- US Central 1 (Iowa)
- Central US (Iowa)
- US West (Oregon)
- West US 2 (Washington)
South America (1)
- South America (São Paulo)
Asia (4)
- Asia Pacific (Mumbai)
- Asia Pacific (Tokyo)
- Asia Pacific (Singapore)
- Southeast Asia (Singapore)
Oceania (2)
- Asia Pacific (Sydney)
- Australia East (Sydney)
Tags
Equivalent services on other platforms
Enterprise ML and AI platform covering PAI-Studio visual workflow builder, PAI-DSW Jupyter notebooks, PAI-EAS elastic inference serving, PAI-Blade inference optimisation, and integration with Alibaba's Qwen foundation models
Next-generation SageMaker (rebranded SageMaker AI) unifying data, analytics, and AI in one workspace — Studio notebooks, HyperPod for foundation-model training at scale, Lakehouse with QuickSight + S3 Tables integration, AutoPilot AutoML, managed training jobs, hosted inference endpoints, and Feature Store, with re:Invent 2024 introducing the unified SageMaker AI workspace and 2025 Summit additions extending it with lakehouse auto-onboarding
End-to-end platform for building and deploying ML models with automated ML, designer (drag-and-drop), managed compute clusters, MLflow tracking, and responsible AI dashboards
Unified platform to build, deploy, and scale ML models with AutoML, custom training on TPUs and GPUs, model registry, pipelines, feature store, and generative AI studio
End-to-end AI development platform with AutoML, data labelling, distributed training on Ascend and GPU clusters, and one-click deployment to cloud or edge