talk-data.com
Orchestrating Apache Airflow ML Workflows at Scale with SageMaker Unified Studio
Speakers
Vinod Jayendra
Enterprise Account Engineer, AWS - Orchestrating Apache Airflow ML Workflows using SageMaker Unified Studio
Sean Bjurstrom
AWS Technical Account Manager
Jonathan Lee
Jonathan Lee, Sr TAM, AWS
Anurag Srivastava
Sr. Cloud Support Engineer at AWS
Suba Palanisamy
Enterprise Support Lead TAM · AWS
Topics
Description
As organizations increasingly rely on data-driven applications, managing the diverse tools, data, and teams involved can create challenges. Amazon SageMaker Unified Studio addresses this by providing an integrated, governed platform to orchestrate end-to-end data and AI/ML workflows. In this workshop, we’ll explore how to leverage Amazon SageMaker Unified Studio to build and deploy scalable Apache Airflow workflows that span the data and AI/ML lifecycle. We’ll walk through real-world examples showcasing how this AWS service brings together familiar Airflow capabilities with SageMaker’s data processing, model training, and inference features - all within a unified, collaborative workspace. Key topics covered: Authoring and scheduling Airflow DAGs in SageMaker Unified Studio Understanding how Apache Airflow powers workflow orchestration under the hood Leveraging SageMaker capabilities like Notebooks, Data Wrangler, and Models Implementing centralized governance and workflow monitoring Enhancing productivity through unified development environments Join us to transform your ML workflow experience from complex and fragmented to streamlined and efficient.