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Job Description
Weekly Hours: 40
Role Number: 200582450-0836
Summary
The Data Center Hardware Engineering team is responsible for designing and deploying Apple's next-generation compute infrastructure at scale. Our team works on projects from early design conception through mass production, focusing on cluster-level network architecture, data hall power distribution, rack-level electrical systems, and server hardware design. This is a highly cross-functional organization that collaborates closely with mechanical engineering, power systems, software and firmware teams, silicon design, hardware validation, and reliability engineering to deliver high-performance, energy-efficient compute solutions that power Apple's services and AI/ML workloads.
We are seeking experienced Systems Architects who can think holistically about infrastructure challenges—from the data center level down to individual components—and drive technical innovation through data-driven analysis and executive-level communication.
Come join us!
Description
The Network Cluster Architect will be responsible for owning and advancing critical investigations spanning cluster-level network topology, hall-level power distribution, rack-level electrical systems, and server hardware electronics design. This role involves coordinating with cross-functional teams including electrical validation, software engineering, and hardware test teams to aggregate validation results and verifying design assumptions.
Minimum Qualifications
Bachelor's degree in Electrical Engineering, Computer Engineering, or related technical field
8+ years of relevant industry experience in hardware architecture, electrical engineering, network architecture, or data center infrastructure design
Strong EE fundamentals, grounded in a solid understanding of electromagnetics and first principles
Deep understanding of cluster and data hall level infrastructure, including network topology, power distribution systems, PDUs, busways, and electrical safety standards
Working knowledge of design and validation requirements for common digital interfaces: I2C/SMBus, SPI, JTAG, USB, PCIe, Ethernet (QSFP, OSFP), DDR Memory, storage interfaces
Experience with high-speed board design and can guide SI/PI simulations
Preferred Qualifications
Master's degree or Ph.D. in Electrical Engineering, Computer Engineering, or related field with 10+ years of relevant industry experience
Functional experience defining and deploying datacenter cluster networking architectures over highly dense mesh networks and interconnected nodes for AI/ML workloads
Proven track record of deploying AI/ML experiences at scale in large-scale data centers with strong experience in modern ML architecture deployment
Strong technical breadth across computer subsystem technologies: CPU, xPU, storage, memory, power delivery, high-speed networking, I/O, thermal management
Exposure to hyperscale data center environments and experience designing for high volume, high power, highly reliable and available systems
Familiarity with network cluster topologies for AI/ML workloads
Proven ability to coordinate with cross-functional teams to aggregate validation results and drive technical consensus
Strong systems-level thinking with ability to understand dependencies across cluster, hall, rack, and server levels
High-speed PCB design experience with 10+ layer boards, including material selection and SI/PI simulation tools
Understanding of computer architecture and design tradeoffs, high-speed bus throughput and latency analysis, and interconnect fabric standards
Understanding of power efficiency optimization at scale and sustainability initiatives
Prior experience in mentoring engineers or leading technical teams in preferred
Superior written, verbal, and visual communication skills with demonstrated ability to present to executive leadership and influence strategic decisions
Apple is an equal opportunity employer that is committed to inclusion and diversity. We seek to promote equal opportunity for all applicants without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, Veteran status, or other legally protected characteristics. Learn more about your EEO rights as an applicant (https://www.eeoc.gov/sites/default/files/2023-06/22-088_EEOC_KnowYourRights6.12ScreenRdr.pdf) .
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