Description
The Senior iCloud Efficiency Engineer will play a critical role in advancing Apple’s next generation of intelligent infrastructure operations through applied GenAI and agentic technologies. This role focuses on building practical, high-impact AI systems that improve engineering workflows and infrastructure decision-making. You will identify high-leverage operational problems, set architecture direction, design agentic solutions, and guide teams from prototype to production adoption. The goal is combining LLM reasoning, system context, automation frameworks, and engineering safeguards to improve speed, reliability, and efficiency. Success in this role will be measured by concrete outcomes: adoption of shared patterns and tools by multiple teams, measurable toil reduction, validated cost or capacity savings. You will help define how AI can safely and effectively augment engineering teams—from capacity optimization and deployment analysis to incident response, forecasting, and infrastructure planning.
Minimum Qualifications
5+ years of experience in software engineering, infrastructure engineering, or large-scale cloud services environments Proven experience designing, building, or technically leading production GenAI, ML platform, developer productivity, infrastructure automation, or tooling systems Hands-on experience with GenAI technologies, LLM application architecture, including retrieval, context engineering, tool use, workflow orchestration, agentic workflows, evaluation, observability, and failure handling Demonstrated technical leadership across teams, including architecture reviews, roadmap influence, mentoring, and driving adoption of shared engineering practices Strong understanding of cloud infrastructure operations, observability, deployment systems, and operational safety principles Proven ability to translate ambiguous operational challenges into practical engineering solutions with measurable business impact Strong software development skills in Python, Java, or similar languages Exceptional analytical, systems thinking, and cross-functional communication skills Bachelor’s or Master’s degree in Computer Science, Engineering, or related technical field
Preferred Qualifications
Experience applying GenAI to infrastructure operations, SRE workflows, capacity planning, or engineering productivity systems Experience building AI systems with operational guardrails, governance models, and safe deployment patterns for enterprise environments Strong understanding of capacity forecasting, cost optimization, and infrastructure efficiency modeling at hyperscale Background working in private cloud environments, large-scale storage systems, or global distributed infrastructure PhD or advanced degree in Computer Science, Machine Learning, Distributed Systems, or related field
Learn more about this Employer on their Career Site
