Data Engineer II, Shopbop

Shopbop is Amazon's Fashion and Fitness subsidiary, focused on being the daily destination for style inspiration and discovery.
$118,900 - $205,600
Data
Mid-Level Software Engineer
Hybrid
3+ years of experience
E-Commerce · Fashion

Description For Data Engineer II, Shopbop

Join Shopbop, an Amazon Fashion subsidiary, as a Data Engineer where you'll tackle complex data challenges that drive our mission to be the daily destination for style inspiration and discovery. In this hybrid role based in New York, you'll be instrumental in building and optimizing data pipelines that power various aspects of our business - from marketing strategies to shipping optimization and financial analytics.

As part of our team, you'll work on migrating legacy Informatica systems to modern AWS-based platforms, collaborate with stakeholders across the business, and be an active participant in Amazon's data engineering community. You'll have the opportunity to work with industry-leading engineers and participate in learning series and operational reviews.

The role offers a unique blend of fashion industry exposure and technical challenges in e-commerce. You'll be expected to be in the New York office weekly, with flexibility to work virtually other days. The position includes occasional travel to Madison WI, New York NY, or Seattle WA (once per year).

Your impact will be significant as you build solutions that directly affect business outcomes. Whether you're optimizing marketing analysis, improving shipping speeds, or helping accounting teams track business metrics, your work will drive meaningful change. You'll be part of a collaborative environment where you can learn about both the technical and business aspects of fashion e-commerce.

The compensation package is competitive, ranging from $118,900 to $205,600 based on location and experience, plus comprehensive benefits including medical, financial, and employee discounts. This is an excellent opportunity for a data engineer looking to make an impact in a fashion-forward tech environment while working with cutting-edge AWS technologies and being part of Amazon's larger technical community.

Last updated 13 hours ago

Responsibilities For Data Engineer II, Shopbop

  • Build new data pipelines
  • Migrate pipelines from legacy Informatica system to AWS-based system
  • Refine existing pipelines to deliver more value
  • Partner with stakeholders to understand business domains
  • Participate in operational reviews and team improvements
  • Collaborate with colleagues across Shopbop

Requirements For Data Engineer II, Shopbop

  • 3+ years of data engineering experience
  • Experience with data modeling, warehousing and building ETL pipelines
  • Preferred: Experience with AWS technologies (Redshift, S3, AWS Glue, EMR, Kinesis, FireHose, Lambda)
  • Preferred: Experience with non-relational databases

Benefits For Data Engineer II, Shopbop

Medical Insurance
  • Employee discounts
  • Medical benefits
  • Financial benefits
  • Comprehensive benefits package

Interested in this job?

Jobs Related To Amazon Data Engineer II, Shopbop

Business Intelligence Engineer

Business Intelligence Engineer role at Amazon Security, focusing on data analysis, visualization, and security risk assessment with competitive compensation range of $89,600-$185,000.

Business Intelligence Engineer, Advertising Finance, Amazon Advertising

Business Intelligence Engineer role at Amazon Advertising, focusing on data infrastructure and analytics for worldwide Small and Medium Business Display Advertising.

Data Architect & Analytics, AWS Professional Services

AWS Professional Services seeks Data Architect to design and implement cloud solutions, requiring 3+ years in Hadoop/Spark implementations and strong AWS expertise.

Data Engineer, GTMO Product Tech

Data Engineer position at Amazon Business, building large-scale data integration services and driving business decisions through data solutions.

Data Engineer, WW Returns & ReComm Tech & Inn

Data Engineer position at Amazon Hyderabad, focusing on building and maintaining scalable data infrastructure for the Reverse Logistics Team.