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Overview
Mid-Level

Camera Hardware Data Engineer

Confirmed live in the last 24 hours

Apple

Apple

Cupertino
On-site
Posted April 1, 2026

Job Description

Summary

Apple delivers the most popular cameras in the world. Each product release provides breakthroughs in photography with stunning camera features that customers love. Our cameras deploy imaging complexity at the frontier of traditional camera engineering methods. Data volumes are growing to meet this need across camera simulations, performance calibrations, measurement results, and their correlations. Our team's task is to build a comprehensive aggregate data layer that enables efficient and flexible executive reporting, highly customized data applications, and powerful ML inference and analysis.

Description

In this role, you will work closely with data scientists, hardware engineers, hardware test, and manufacturing operations teams to build scalable data pipelines and solutions. As a camera hardware data engineer, you must effectively collaborate to bridge the gap between business needs, analytical solutions, and engineering requirements. Additionally, proactive collaboration with other data engineering teams is essential for scaling solutions across teams.

Minimum Qualifications

BS or higher in Computer Science, Data Engineering, Data Science, Math, or related fields Hands-on Experience using cloud data analytics platforms (i.e. Snowflake, Trino, BigQuery) Experience building data transformation pipelines using frameworks such as Data Built Tool (dbt) or Spark Experience in data modeling and data governance techniques (i.e. Row Access Policies, role-based access control (RBAC)

Preferred Qualifications

Experience with pipeline orchestration frameworks such as Airflow Experience using BI tools such as Tableau or app frameworks such as Streamlit or Superset to build shareable and easy-to-understand data visualizations Experience in the use of Python frameworks like FastAPI to build cloud-native data access tools Experience designing and building relational databases (i.e. PostgreSQL) and non-relational databases (i.e. Redis, MongoDB) Working knowledge of Kubernetes for deploying and monitoring cloud-native applications

data