Features | AWS | GCP | Azure | Databricks |
Data pipeline | Data Pipeline | Dataflow | Data Factory | Spark |
Feature Store | Sagemaker Feature Store | --- | --- | --- |
Model Monitoring | Model Monitor | AI Platform | Azure Monitor | --- |
Experiment Management | SageMaker Experiments | MLFlow Tracking (Manual) | Azure ML Python SDK - MLFlow Tracking | MLFlow Tracking |
Model versioning | Production Variants | Versions | Model registration | MLflow Model Registry |
A/B Testing | Sagemaker | --- | Controlled Rollout (Preview) | --- |
Model Serving | Sagemaker | AI Platform | Azure Machine Learning | MLFlow Model Serving |
AutoML | Autopilot | Cloud AutoML | AutomatedML | --- |
Notebooks | Sagemaker Notebooks | AI Platform Notebooks | Microsoft Azure Notebooks | Notebooks |
Labelling | Sagemaker Ground Truth | AI Platform Labelling Pre-GA | Azure Machine Learning | --- |
Forked from AshHimself/machine-learning-platforms-compared.md
Last active
December 10, 2020 13:46
-
-
Save mariopaonessa/4b13da7642d25df9911e4c7ea85f660a to your computer and use it in GitHub Desktop.
Sign up for free
to join this conversation on GitHub.
Already have an account?
Sign in to comment