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QA Engineer - Analytics & Data Engineering - ASE

Apple
London
10 months ago
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Summary:
The Apple Services Engineering (ASE) team is one of the most exciting examples of Apple’s long-held passion for combining art and technology. These are the people who power the App Store, Apple TV, Apple Music, Apple Podcasts, and Apple Books. And they do it on a massive scale, meeting Apple’s high expectations with commitment to deliver a huge variety of entertainment in over 35 languages to more than 150 countries. These engineers build secure, end-to-end solutions. They develop the custom software used to process all the creative work, the tools that providers use to deliver that media, all the server-side systems, and the APIs for many Apple services. Thanks to Apple’s unique integration of hardware, software, and services, engineers here partner to get behind a single unified vision. That vision always includes a deep commitment to strengthening Apple’s privacy policy, one of Apple’s core values. Although services are a bigger part of Apple’s business than ever before, these teams remain small, flexible, and multi-functional, offering greater exposure to the array of opportunities here.
Key Qualifications:
Description:
The Apple Services Analytics Engineering QA team is responsible for ensuring the Quality and integrity of the data collected and reported on customer experience data. We are seeking Mid-level Data Test Automation Engineers who are interested in AMP products, want to make a difference to them and to Apple as a whole, improving the data quality, and learn ASE ground breaking tools and technologies. This role involves developing automated testing tools to test and validate near real-time (NRT) and batch data pipeline systems.
Additional Requirements:

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National AI Awards 2025

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