Product Marketing Customer Analytics Engineer
Apple · Cupertino, CA · Corporate Functions
About this role
Apple is hiring a mid-level Marketing Manager based in Cupertino, CA. The posting calls out experience with Kubernetes, Docker, Snowflake, Spark.
- Role
- Marketing Manager
- Function
- marketing
- Level
- mid
- Track
- Individual contributor
- Location
- Cupertino, CA
- Department
- Corporate Functions
- Posted
- Jul 8, 2026
Job description
from Apple careersImagine what you could do here. At Apple, new ideas have a way of becoming great products, services, and customer experiences very quickly. Bring passion and dedication to your job and there's no telling what you could accomplish. The Product Marketing Customer Analytics team is seeking a engineer to support customer analytics with advanced, scalable and robust architecture, tools, data products, and critical data pipelines that are optimized for rapid business intelligence, data analysis, and data science.
Develop and automate large scale, high-performance, scalable platform (batch and/or streaming) to drive faster analytics
Ability to design large-scale, complex applications and frameworks with excellent run-time characteristics such as low-latency, fault-tolerance and availability
Experience in building and maintaining custom frameworks to support engineering/analytics needs
Knowledge of continuous integration, testing methodologies, TDD and agile development methodologies.
Partner with analytic consumers and data scientists to build and improve new/existing constructs and solve data engineering problems at scale.
Experience in building data pipelines in Spark, Trino, lakehouse or similar distributed platforms & Snowflake.
Deploy inclusive data quality checks to ensure high quality of data.
Evangelize high quality software engineering practices towards building data infrastructure and pipelines at scale.
Structured thinking with ability to easily break down ambiguous problems and propose impactful solutions.
Applying Generative AI and Retrieval Augmented Generation (RAG) techniques to enhance data analytics capabilities
Communication Strong documentation and technical writing skills.
Attention to detail and effective verbal/written communication skills.
<h3>Minimum Qualifications</h3>3+ years of relevant Engineering experience
Undergraduate degree in Computer Science, MIS, Engineering, Mathematics or other quantitative discipline required.
<h3>Preferred Qualifications</h3>3+ years of experience in data engineering and ETL pipeline development
2+ years of experience in Big Data Technologies (Spark,Lakehouse,Trino)
Experience on Kubernetes, Docker preferred.
Familiarity with Retrieval Augmented Generation (RAG) techniques working in conjunction with LLMs
Experience with creating and consuming Model Context Protocol (MCP) services
Snowflake knowledge