About The Position

Apple is seeking an experienced software engineer to join the Data Solutions team within Data Services, responsible for building and evolving the distributed data systems that power Apple's most critical consumer services — including Apple Music, TV, and Podcasts. You'll work on high-scale streaming and data processing platforms, solving hard problems around cross-datacenter replication and getting user data to the edge as fast as possible. Your work will directly impact hundreds of millions of Apple users and the teams that build experiences for them. Apple's Data Solutions team, within the broader ASE Data Services organization, builds and operates data infrastructure that is reliable, scalable, and low-latency. The team focuses on real-time data streaming, large-scale data processing, and optimizing cross-datacenter replication to bring user data to the edge with the smallest possible latency. Apache Kafka plays a central role in our streaming and replication infrastructure, and familiarity with its ecosystem is a meaningful advantage. Our systems sit at the heart of services like Apple Music, TV, and Podcasts, ensuring that data is available where and when it's needed — anywhere in the world. A key focus for this team is automating existing systems and integrating them into a centralized cloud platform — modernizing the infrastructure that underpins these services and building the tooling that lets us operate them at scale. Engineers on this team own their platforms end-to-end: from internals and protocol-level work to operational tooling, observability, and multi-region deployment.

Requirements

  • 3 years of relevant experience.
  • Proficiency in Java with strong understanding of concurrency, memory management, and performance.
  • Experience designing, building, and operating large-scale distributed systems.
  • Solid understanding of data structures, algorithms, fault tolerance, and system performance.
  • Experience with RESTful API design and service-oriented architectures.
  • Bachelor's degree in Computer Science or equivalent practical experience.

Nice To Haves

  • Experience with distributed data systems such as Cassandra, Redis, Kafka, or similar platforms.
  • Experience with Apache Kafka — including broker internals, producers/consumers, and ecosystem tooling.
  • Experience with multi-datacenter deployments, replication strategies, and consistency models.
  • Hands-on experience with cloud platforms and container orchestration (e.g. Kubernetes, AWS, GCP, or similar).
  • Exposure to observability practices including monitoring, alerting, and performance benchmarking.
  • Experience with fault injection, chaos engineering, or property-based testing methodologies.
  • Contributions to open-source projects, especially in the data infrastructure ecosystem.

Responsibilities

  • Building and evolving distributed data systems.
  • Working on high-scale streaming and data processing platforms.
  • Solving problems around cross-datacenter replication.
  • Optimizing data delivery to the edge with minimal latency.
  • Automating existing systems and integrating them into a centralized cloud platform.
  • Building tooling for operating systems at scale.
  • Owning platforms end-to-end, including internals, protocol-level work, operational tooling, observability, and multi-region deployment.
© 2026 Teal Labs, Inc
Privacy PolicyTerms of Service