Applied Machine Learning Engineer - Security

Apple
Paris, France
7 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English

Job location

Paris, France

Tech stack

Apple Products
C Sharp (Programming Language)
Static Program Analysis
Dynamic Program Analysis
Firmware
Fuzz Testing
Python
Machine Learning
Raw Data
Reverse Engineering
Software Engineering
Rust
Large Language Models
Swift
Objective C++

Job description

Apple's Security Engineering & Architecture organization is responsible for the security of all Apple products. Passionate about safeguarding users, we believe that the best defense requires a great offense. When it comes to securing more than a billion devices running the world's most sophisticated operating systems, that means finding vulnerabilities first.\\n\\nOur mission is to discover, understand, and exploit vulnerabilities across all layers of Apple's platforms, and we believe that ML techniques significantly enhance our ability to do so. We are seeking an Applied Machine Learning Engineer who will help us invent and deliver these new methods and techniques.\\n\\nThis position provides rare exposure to a full-stack view of security along with direct access to expert knowledge, unique datasets, and cross-domain experience. Your contributions will materially raise the security of products used by billions and strengthen Apple's ability to defend against adversaries.\\n\\nCan you make a difference on this scale? Join our extraordinary group of security researchers, tool developers, and machine learning experts, and help protect all Apple users.

In this role, you will integrate deeply with security research teams to understand the challenges of analyzing large, complex systems across Apple's full stack - from custom silicon and microarchitectural elements to boot ROMs, firmware, kernels, system frameworks, web browser and user applications.\n\nYou will design and develop ML-enhanced systems - using large language models, generative modeling, agentic workflows and other approaches - that complement other analysis methods such as fuzzing, static & dynamic analysis, and manual inspection. Your work will leverage raw data and expert behavior to create practical, scalable approaches to help researchers navigate vast codebases, reason about intricate attack surfaces, and identify subtle weaknesses that are challenging to detect manually. You will also collaborate regularly with security researchers to validate and challenge your innovations during real-world security evaluations, ensuring that your work will directly affect meaningful impact.

Expertise in ML, especially large language models and generative modeling\n\nExperience with and/or strong enthusiasm for security, especially offensive security\n\nFluency with software engineering using languages such as C, C , Python, Swift, Objective-C, Rust\n\nCollaborative and effective problem-solving and analytical skills

Familiarity with software-analysis techniques such as fuzzing, static analysis, code-analysis tooling, reverse engineering, binary-analysis\n\nFamiliarity with security mitigations in modern operating systems

Requirements

Engineering, C#, Objective-C, Python, Security, Machine

About the company

Apple's Security Engineering \& Architecture organization is responsible for the security of all Apple products. Passionate about safeguarding users, we believe that the best defense requires a great offense. When it comes to securing more than a billion devices running the world's most sophisticated operating systems, that means finding vulnerabilities first.\\\\n\\\\nOur mission is to discover, understand, and exploit vulnerabilities across all layers of Apple's platforms, and we believe that ML techniques significantly enhance our ability to do so. We are seeking an Applied Machine Learning Engineer who will help us invent and deliver these new methods and techniques.\\\\n\\\\nThis position provides rare exposure to a full-stack view of security along with direct access to expert knowledge, unique datasets, and cross-domain experience. Your contributions will materially raise the security of products used by billions and strengthen Apple's ability to defend against adversaries.\\\\n\\\\nCan you make a difference on this scale? Join our extraordinary group of security researchers, tool developers, and machine learning experts, and help protect all Apple users. In this role, you will integrate deeply with security research teams to understand the challenges of analyzing large, complex systems across Apple's full stack - from custom silicon and microarchitectural elements to boot ROMs, firmware, kernels, system frameworks, web browser and user applications.\\n\\nYou will design and develop ML-enhanced systems - using large language models, generative modeling, agentic workflows and other approaches - that complement other analysis methods such as fuzzing, static \& dynamic analysis, and manual inspection. Your work will leverage raw data and expert behavior to create practical, scalable approaches to help researchers navigate vast codebases, reason about intricate attack surfaces, and identify subtle weaknesses that are challenging to detect manually. You will also collaborate regularly with security researchers to validate and challenge your innovations during real-world security evaluations, ensuring that your work will directly affect meaningful impact.

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