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Job Description
Role Number: 200643254-3543
Summary
Apple's privacy engineering team is responsible for designing and enforcing the controls that keep user data protected across every Apple platform. As generative AI and intelligent features reshape how people interact with technology, the expectations for privacy engineering are evolving rapidly. We are looking for exceptional systems engineers who want to define how privacy works in an AI-driven world -- ensuring that powerful new capabilities never come at the cost of user trust.
Description
You will design, implement, and debug production systems in C, Objective-C, and Swift that power privacy controls across Apple platforms (iOS, iPadOS, macOS, watchOS, visionOS, Apple TV, and HomePod). Your work will span architecting permission frameworks, strengthening privacy architecture against evolving threat vectors, and building foundational components that operate across operating systems.
A critical part of this role is tackling the new privacy challenges introduced by generative AI technologies. You will work on problems like controlling how on-device models and intelligent features access sensitive user data; designing permission and consent frameworks for AI-driven workflows; enforcing data minimization and sandboxing for on-device AI models; and building privacy-preserving on-device inference into our systems from the ground up. These are emerging challenges at the forefront of the industry.
Minimum Qualifications
Proficiency in C, Objective-C, C++, or Swift
Experience designing system-level APIs and background daemons
Strong Unix-like systems programming knowledge
Experience building reliable daemons with robust lifecycle management
Experience designing fault-tolerant error handling for long-running system daemons
Clear technical communication skills
Preferred Qualifications
5+ years professional software engineering experience
- System architecture design experience for privacy or security software
- Cross-functional technical leadership experience
- macOS or Unix systems programming background
Full software development lifecycle experience
Relational database and local storage design familiarity
Practical experience using generative AI tools in an engineering workflow (e.g., AI-assisted code generation, LLM-powered debugging)
Ability to reason about the privacy and data-access implications of machine learning systems at the systems level
Experience with responsible AI development practices, including AI safety, privacy-preserving machine learning, or designing guardrails and safety mechanisms for intelligent features
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