Offensive Security Researcher, SEAR
Apple's Security Engineering \& Architecture (SEAR) organization is responsible for the security of all Apple products. Passionate about safeguarding our users, we lead with offence proactively uncovering and eliminating vulnerabilities before attackers ever get the chance.\\\\n\\\\nAs AI systems become deeply integrated into operating systems, developer tools, and user experiences, they introduce entirely new attack surfaces vulnerable to prompt injection, agentic privilege escalation, data exfiltration, and AI-assisted exploitation at unprecedented scale.\\\\n\\\\nThink you have the creativity and determination to break these systems? Join us and help secure the next generation of intelligent platforms used by billions of people.
In this role, you will identify and exploit vulnerabilities in AI-powered features and agentic systems across Apple platforms. The AI systems themselves are the attack surface. You will help to build offensive capabilities against autonomous systems and anticipate how adversaries may exploit AI enabled systems in the wild.\\n\\nYou will join a team working with world-class offensive security researchers. The work is critical directly shapes the security posture of Apple.\\n\\nYou will conduct offensive research into AI-specific attack classes, including prompt injection, agentic data exfiltration and lateral movement, persistence mechanisms in AI workflows, AI-assisted vulnerability discovery and exploitation.
Solid grounding in common vulnerability classes (memory corruption, logic flaws, auth bypass)\\nProven experience in security research, vulnerability discovery, or offensive security (e.g., browsers, 0-click, messaging systems, distributed systems, or AI platforms)\\nStrong understanding of modern AI/LLM systems and their failure modes (e.g., prompt injection, data exfiltration, model misuse)\\nExperience applying AI/ML tools (e.g., LLMs, agents) to automate or augment security research workflows
Experience attacking or defending agentic systems (multi-step AI workflows, tool-using agents, MCP-style integrations)\\nFamiliarity with prompt injection techniques, obfuscation (e.g., encoding-based bypasses), and model manipulation strategies\\nExperience building or evaluating AI-driven vulnerability discovery pipelines\\nUnderstanding of browser-based AI integrations and risks (e.g., agentic browsing, data boundary violations)\\nKnowledge of capability-based security models or policy enforcement systems for AI agents\\nExperience with reverse engineering and low-level systems (IDA, Ghidra, LLDB)\\nProficiency in one or more: Python, C/C , Swift, Objective-C\\nFamiliarity with Apple platforms (iOS, macOS) and their security architecture