Data Engineer, Amazon Music

Amazon is a global technology company offering a wide range of products and services, including e-commerce, cloud computing, digital streaming, and artificial intelligence.
Data
Mid-Level Software Engineer
In-Person
5,000+ Employees
1+ year of experience
AI · Enterprise SaaS

Description For Data Engineer, Amazon Music

Join Amazon Music's Metrics and Data Platform team as a Data Engineer in a role that's crucial for enabling data-driven business decisions. You'll be part of a team that maintains a scalable data platform supporting Amazon Music's rapid growth, working with over 50 unique internal customers. Your work will directly impact leadership decisions on customer engagement, determine music label payments, and drive product improvements in search and personalization.

The role combines technical expertise with business impact, requiring strong SQL skills and data modeling knowledge. You'll build and maintain ETL pipelines, collaborate with product teams to understand customer pain points, and implement operational improvements. The position offers the opportunity to work with big data technologies and AWS services while contributing to Amazon Music's mission of deepening connections between fans, artists, and creators.

Amazon Music is an immersive audio entertainment service offering personalized music playlists, exclusive podcasts, concert livestreams, and artist merchandise. The platform serves different listener segments through various tiers, from Prime members to Amazon Music Unlimited subscribers, providing access to 100 million songs and high-quality audio formats.

This is an excellent opportunity for a detail-oriented data engineer who enjoys innovative thinking and technical problem-solving, while working in a collaborative environment where the best ideas are encouraged to surface. You'll be part of shaping how Amazon Music engages with its global audience of fans, artists, and creators.

Last updated 6 minutes ago

Responsibilities For Data Engineer, Amazon Music

  • Writing high quality code/SQL and reviewing code/SQL across the team
  • Ensuring timely delivery of assigned projects
  • Diagnosing and root causing bugs, bottlenecks, or inefficiencies
  • Collaborating with product managers and software engineers/managers
  • Clearly communicating project updates to stakeholders
  • Building extensible and intuitive datasets for internal customers
  • Implementing and owning operational improvements and solutions

Requirements For Data Engineer, Amazon Music

Python
Java
  • 1+ years of data engineering experience
  • Experience with data modeling, warehousing and building ETL pipelines
  • Experience with one or more query language (SQL, PL/SQL, DDL, MDX, HiveQL, SparkSQL, Scala)
  • Experience with one or more scripting language (Python, KornShell)
  • Experience with at least one modern language such as Java, Python, C++, or C# including object-oriented design

Interested in this job?

Jobs Related To Amazon Data Engineer, Amazon Music

Data Engineer, MIDAS Digital Intelligence

Data Engineer position at Amazon focusing on digital intelligence and analytics, requiring 3+ years of experience in data engineering, ETL, and SQL.

Data Engineer, Customer Experience and Business Trends

Data Engineer role at Amazon focused on building data pipelines and analytics infrastructure for Customer Experience & Business Trends team.

Business Intelligence Engineer, EU Hardlines Marketing

Business Intelligence Engineer role at Amazon focusing on developing automated marketing models and customer insights analytics for EU Hardlines, combining data engineering with marketing innovation.

Data Engineer II, Managed Operations Engineering & Data Science (MOEDS)

AWS Data Engineer II position focusing on building scalable data solutions and pipelines for operational improvements, requiring 3+ years experience and U.S. citizenship.

Data Engineer II, FinAuto, Accounts Receivable Data Engineering

Data Engineer role at Amazon's Finance Automation team focusing on building next-generation Financial data warehouse and modernizing data architecture.