Site Reliability Engineering Manager (SRE) , Analytics

Apple Inc.
London
1 day ago
Create job alert

Site Reliability Engineering Manager (SRE), Analytics

The Apple Services Engineering team (ASE) 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. They do it at an extensive scale, meeting our high expectations with dedication to deliver a huge variety of entertainment in over 35 languages to more than 150 countries! These engineers build secure, end-to-end solutions, developing 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 includes a deep commitment to strengthening Apple’s privacy policy, one of our core values. Although services are a bigger part of Apple’s business than ever before, these teams remain small and multi-functional, offering greater exposure to the array of opportunities here.

Description

The Service Reliability Engineering (SRE) Manager role in Apple Services Engineering requires a mix of strategic engineering and design along with hands-on technical work. This SRE will configure, tune, and fix multi-tiered systems to achieve optimal application performance, stability, and availability. We manage jobs as well as applications on bare-metal and cloud computing platforms to deliver data processing for many of Apple’s global products. Our teams work with exabytes of data, petabytes of memory, and tens of thousands of jobs to enable predictable and performant data analytics for features in Apple Music, TV+, App Store, and other extraordinary products. If you love designing and running systems and infrastructure that will impact millions of users, then this is the place for you!

Minimum Qualifications

  • Experience with hiring and leading engineers
  • Demonstrable success leading engineering teams - ideally SRE or Production Engineering
  • Experience with large scale distributed systems
  • Deep understanding and experience in one or more of the following: Hadoop, Spark, Flink, Kubernetes, AWS
  • Experience working and leading geographically distributed teams and implementing high-level projects and migrations

Preferred Qualifications

  • BS degree in computer science or equivalent field with a number of years of experience
  • Years of professional experience in an engineering leadership position

J-18808-Ljbffr

Related Jobs

View all jobs

Site Reliability Engineering (SRE) Manager, iCloud

Market Data Engineer - Systematic Platform Execution & Exchange Data

C++ Engineer - Market Data Operations

Design & Development Engineer (Hardware)

Principal Frontend Engineer

Senior Manager, Site Quality Installation

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Machine Learning Leadership for Managers: Strategies to Motivate, Mentor, and Set Realistic Goals in Data-Driven Teams

Machine learning (ML) has become an indispensable force in the modern business world, influencing everything from targeted marketing campaigns to advanced medical diagnostics. As industries integrate predictive algorithms and data-driven decision-making into their core operations, the need for effective leadership in machine learning environments has never been greater. Whether you’re overseeing a small team of data scientists or spearheading an enterprise-scale ML project, your leadership style must accommodate rapid innovation, complex problem-solving, and diverse stakeholder expectations. This guide provides actionable insights into how you can motivate, mentor, and establish achievable goals for your machine learning teams—ensuring they thrive in data-driven environments.

Top 10 Books to Advance Your Machine Learning Career in the UK

Machine learning (ML) remains one of the fastest-growing fields within technology, reshaping industries across the UK from finance and healthcare to e-commerce, telecommunications, and beyond. With increasing demand for ML specialists, job seekers who continually update their knowledge and skills hold a significant advantage. In this article, we've curated ten essential books every machine learning professional or aspiring ML engineer in the UK should read. Covering foundational theory, practical implementations, advanced techniques, and industry trends, these resources will equip you to excel in your machine learning career.

Navigating Machine Learning Career Fairs Like a Pro: Preparing Your Pitch, Questions to Ask, and Follow-Up Strategies to Stand Out

Machine learning (ML) has swiftly become one of the most in-demand skill areas across industries, with companies leveraging predictive models and data-driven insights to solve challenges in healthcare, finance, retail, manufacturing, and beyond. Whether you’re an early-career data scientist aiming to break into ML, a seasoned engineer branching into deep learning, or a product manager exploring AI-driven solutions, machine learning career fairs offer a powerful route to connect with prospective employers face-to-face. Attending these events can help you: Network with hiring managers and technical leads who make direct recruitment decisions. Gain insider insights on the latest ML trends and tools. Learn about emerging job roles and new industry verticals adopting machine learning. Showcase your interpersonal and communication skills, both of which are increasingly important in collaborative AI/ML environments. However, with many applicants vying for attention in a bustling hall, standing out isn’t always easy. In this detailed guide, we’ll walk you through how to prepare meticulously, pitch yourself confidently, ask relevant questions, and follow up effectively to land the machine learning opportunity that aligns with your ambitions.