This job is closed
We regret to inform you that the job you were interested in has been closed. Although this specific position is no longer available, we encourage you to continue exploring other opportunities on our job board.
Are you passionate about standardizing data platforms and automating data engineering to drive analytics and reporting? Do you excel in dynamic, fast-paced environments and find joy in converting data into actionable insights? Are you adept at implementing data governance practices and defining data access and quality standards? If you thrive in innovation and can deliver scalable Data Engineering Solutions, then the Worldwide Operations Finance Standardization & Automation (SnA) team has an exciting opportunity for you! We are seeking a customer-centric Data Engineering Manager to lead the establishment of a reliable and accessible data platform, ensuring Operations Finance customers have complete trust in the data, technology, and tools to make data-driven business decisions. As a Data Engineering Manager in WWSNA, you will be responsible for managing one of the world's largest and most complex data warehouse environments, all while navigating a high level of ambiguity. Your role will involve designing, implementing, and supporting scalable data infrastructure solutions, as well as implementing complex data models for Amazon Inbound & Outbound Transportation business. You should have excellent business and communication skills to collaborate with business owners, Product teams, and Tech leaders to gather infrastructure requirements, design data infrastructure, and build data pipelines and datasets to meet business needs. Your responsibilities will include designing and delivering a data service platform using Python, Airflow, and SQL to build various ETL, analytics, and data quality components. You'll also be in charge of automating deployments using AWS CodeDeploy, AWS CodePipeline, AWS Cloud Development Kit (CDK), and AWS CloudFormation. In addition, you will work closely with AWS services like Redshift, Glue, S3, IAM, CloudWatch, and more to ensure the success of data engineering initiatives.
A Smarter and Faster Way to Build Your Resume