![Use Python SQLAlchemy ORM to interact with an Amazon Aurora database from a serverless application | AWS Database Blog Use Python SQLAlchemy ORM to interact with an Amazon Aurora database from a serverless application | AWS Database Blog](https://d2908q01vomqb2.cloudfront.net/887309d048beef83ad3eabf2a79a64a389ab1c9f/2021/05/21/dbblog_1131_01.png)
Use Python SQLAlchemy ORM to interact with an Amazon Aurora database from a serverless application | AWS Database Blog
![Running on-demand, serverless Apache Spark data processing jobs using Amazon SageMaker managed Spark containers and the Amazon SageMaker SDK | AWS Machine Learning Blog Running on-demand, serverless Apache Spark data processing jobs using Amazon SageMaker managed Spark containers and the Amazon SageMaker SDK | AWS Machine Learning Blog](https://d2908q01vomqb2.cloudfront.net/f1f836cb4ea6efb2a0b1b99f41ad8b103eff4b59/2020/09/25/1-Flowchart-4.jpg)
Running on-demand, serverless Apache Spark data processing jobs using Amazon SageMaker managed Spark containers and the Amazon SageMaker SDK | AWS Machine Learning Blog
![Bring your own deep learning framework to Amazon SageMaker with Model Server for Apache MXNet | AWS Machine Learning Blog Bring your own deep learning framework to Amazon SageMaker with Model Server for Apache MXNet | AWS Machine Learning Blog](https://d2908q01vomqb2.cloudfront.net/f1f836cb4ea6efb2a0b1b99f41ad8b103eff4b59/2019/07/01/BYO-MMS-Diagram.gif)
Bring your own deep learning framework to Amazon SageMaker with Model Server for Apache MXNet | AWS Machine Learning Blog
![Building, automating, managing, and scaling ML workflows using Amazon SageMaker Pipelines | AWS Machine Learning Blog Building, automating, managing, and scaling ML workflows using Amazon SageMaker Pipelines | AWS Machine Learning Blog](https://d2908q01vomqb2.cloudfront.net/f1f836cb4ea6efb2a0b1b99f41ad8b103eff4b59/2021/01/12/SageMaker-Pipelines-Architecture.jpg)