Technical requirementsExploring DL with Amazon SageMakerUsing SageMakerChoosing Amazon SageMaker for DL workloadsManaged compute and storage infrastructureManaged DL software stacksExploring SageMaker’s managed training stack Step 1 – configuring and creating a training jobStep 2 – provisioning the SageMaker training clusterStep 3 – SageMaker accesses the training dataStep 4 – SageMaker deploys the training containerStep 5 – SageMaker starts and monitors the training jobStep 6 – SageMaker persists the training artifactsUsing SageMaker’s managed hosting stackReal-time inference endpointsCreating and using your SageMaker endpointSageMaker asynchronous endpointsSageMaker Batch TransformIntegration with AWS servicesData storage servicesAmazon EFSAmazon FSx for LustreOrchestration servicesSecurity servicesMonitoring servicesSummary