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GPU Software Architecture Engineer

Apple

Software and Technology Jobs

GPU Software Architecture Engineer

full-timePosted: Oct 27, 2025

Job Description

Apple Silicon GPU SW architecture team is seeking a senior/principal engineer to lead server-side ML acceleration and multi-node distribution initiatives. You will help define and shape our future GPU compute infrastructure on Private Cloud Compute that enables Apple Intelligence. In this role, you'll be at the forefront of architecting and building our next-generation distributed ML infrastructure, where you'll tackle the complex challenge of orchestrating massive network models across server clusters to power Apple Intelligence at unprecedented scale. It will involve designing sophisticated parallelization strategies that split models across many GPUs, optimizing every layer of the stack—from low-level memory access patterns to high-level distributed algorithms—to achieve maximum hardware utilization while minimizing latency for real-time user experiences. You'll work at the intersection of cutting-edge ML systems and hardware acceleration, collaborating directly with silicon architects to influence future GPU designs based on your deep understanding of inference workload characteristics, while simultaneously building the production systems that will serve billions of requests daily. This is a hands-on technical leadership position where you'll not only architect these systems but also dive deep into performance profiling, implement novel optimization techniques, and solve unprecedented scaling challenges as you help define the future of AI experiences delivered through Apple's secure cloud infrastructure.

Locations

  • Cupertino, California, United States 95014

Salary

Estimated Salary Rangemedium confidence

40,000,000 - 80,000,000 INR / yearly

Source: ai estimated

* This is an estimated range based on market data and may vary based on experience and qualifications.

Skills Required

  • architecting distributed ML infrastructureintermediate
  • designing parallelization strategiesintermediate
  • optimizing memory access patternsintermediate
  • developing distributed algorithmsintermediate
  • performance profilingintermediate
  • implementing optimization techniquesintermediate
  • solving scaling challengesintermediate
  • collaborating with silicon architectsintermediate
  • influencing GPU designsintermediate
  • understanding inference workload characteristicsintermediate
  • building production systemsintermediate
  • technical leadershipintermediate

Required Qualifications

  • Strong knowledge of GPU programming (CUDA, ROCm) and high-performance computing (experience)
  • Must have excellent system programming skills in C/C++, Python is a plus (experience)
  • Deep understanding of distributed systems and parallel computing architectures (experience)
  • Experience with inter-node communication technologies (InfiniBand, RDMA, NCCL) in the context of ML training/inference (experience)
  • Understand how tensor frameworks (PyTorch, JAX, TensorFlow) are used in distributed training/inference (experience)
  • Technical BS/MS degree (degree)

Preferred Qualifications

  • Familiar with model development lifecycle from trained model to large scale production inference deployment (experience)
  • Proven track record in ML infrastructure at scale (experience)

Responsibilities

  • In this role, you'll be at the forefront of architecting and building our next-generation distributed ML infrastructure, where you'll tackle the complex challenge of orchestrating massive network models across server clusters to power Apple Intelligence at unprecedented scale. It will involve designing sophisticated parallelization strategies that split models across many GPUs, optimizing every layer of the stack—from low-level memory access patterns to high-level distributed algorithms—to achieve maximum hardware utilization while minimizing latency for real-time user experiences. You'll work at the intersection of cutting-edge ML systems and hardware acceleration, collaborating directly with silicon architects to influence future GPU designs based on your deep understanding of inference workload characteristics, while simultaneously building the production systems that will serve billions of requests daily.
  • This is a hands-on technical leadership position where you'll not only architect these systems but also dive deep into performance profiling, implement novel optimization techniques, and solve unprecedented scaling challenges as you help define the future of AI experiences delivered through Apple's secure cloud infrastructure.
  • Design and implement tensor/data/expert parallelism strategies for large language model inference across distributed server cluster environments
  • Drive hardware and software roadmap decisions for ML acceleration
  • Expert in designing architectures that achieves peak compute utilizations and optimal memory throughput
  • Develop and optimize distributed inference systems with focus on latency, throughput, and resource efficiency across multiple nodes
  • Architect scalable ML serving infrastructure supporting dynamic model sharding, load balancing, and fault tolerance
  • Collaborate with hardware teams on next-generation accelerator requirements and software teams on framework integration
  • Lead performance analysis and optimization of ML workloads, identifying bottlenecks in compute, memory, and network subsystems
  • Drive adoption of advanced parallelization techniques including pipeline parallelism, expert parallelism, and various other emerging approaches

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Apple logo

GPU Software Architecture Engineer

Apple

Software and Technology Jobs

GPU Software Architecture Engineer

full-timePosted: Oct 27, 2025

Job Description

Apple Silicon GPU SW architecture team is seeking a senior/principal engineer to lead server-side ML acceleration and multi-node distribution initiatives. You will help define and shape our future GPU compute infrastructure on Private Cloud Compute that enables Apple Intelligence. In this role, you'll be at the forefront of architecting and building our next-generation distributed ML infrastructure, where you'll tackle the complex challenge of orchestrating massive network models across server clusters to power Apple Intelligence at unprecedented scale. It will involve designing sophisticated parallelization strategies that split models across many GPUs, optimizing every layer of the stack—from low-level memory access patterns to high-level distributed algorithms—to achieve maximum hardware utilization while minimizing latency for real-time user experiences. You'll work at the intersection of cutting-edge ML systems and hardware acceleration, collaborating directly with silicon architects to influence future GPU designs based on your deep understanding of inference workload characteristics, while simultaneously building the production systems that will serve billions of requests daily. This is a hands-on technical leadership position where you'll not only architect these systems but also dive deep into performance profiling, implement novel optimization techniques, and solve unprecedented scaling challenges as you help define the future of AI experiences delivered through Apple's secure cloud infrastructure.

Locations

  • Cupertino, California, United States 95014

Salary

Estimated Salary Rangemedium confidence

40,000,000 - 80,000,000 INR / yearly

Source: ai estimated

* This is an estimated range based on market data and may vary based on experience and qualifications.

Skills Required

  • architecting distributed ML infrastructureintermediate
  • designing parallelization strategiesintermediate
  • optimizing memory access patternsintermediate
  • developing distributed algorithmsintermediate
  • performance profilingintermediate
  • implementing optimization techniquesintermediate
  • solving scaling challengesintermediate
  • collaborating with silicon architectsintermediate
  • influencing GPU designsintermediate
  • understanding inference workload characteristicsintermediate
  • building production systemsintermediate
  • technical leadershipintermediate

Required Qualifications

  • Strong knowledge of GPU programming (CUDA, ROCm) and high-performance computing (experience)
  • Must have excellent system programming skills in C/C++, Python is a plus (experience)
  • Deep understanding of distributed systems and parallel computing architectures (experience)
  • Experience with inter-node communication technologies (InfiniBand, RDMA, NCCL) in the context of ML training/inference (experience)
  • Understand how tensor frameworks (PyTorch, JAX, TensorFlow) are used in distributed training/inference (experience)
  • Technical BS/MS degree (degree)

Preferred Qualifications

  • Familiar with model development lifecycle from trained model to large scale production inference deployment (experience)
  • Proven track record in ML infrastructure at scale (experience)

Responsibilities

  • In this role, you'll be at the forefront of architecting and building our next-generation distributed ML infrastructure, where you'll tackle the complex challenge of orchestrating massive network models across server clusters to power Apple Intelligence at unprecedented scale. It will involve designing sophisticated parallelization strategies that split models across many GPUs, optimizing every layer of the stack—from low-level memory access patterns to high-level distributed algorithms—to achieve maximum hardware utilization while minimizing latency for real-time user experiences. You'll work at the intersection of cutting-edge ML systems and hardware acceleration, collaborating directly with silicon architects to influence future GPU designs based on your deep understanding of inference workload characteristics, while simultaneously building the production systems that will serve billions of requests daily.
  • This is a hands-on technical leadership position where you'll not only architect these systems but also dive deep into performance profiling, implement novel optimization techniques, and solve unprecedented scaling challenges as you help define the future of AI experiences delivered through Apple's secure cloud infrastructure.
  • Design and implement tensor/data/expert parallelism strategies for large language model inference across distributed server cluster environments
  • Drive hardware and software roadmap decisions for ML acceleration
  • Expert in designing architectures that achieves peak compute utilizations and optimal memory throughput
  • Develop and optimize distributed inference systems with focus on latency, throughput, and resource efficiency across multiple nodes
  • Architect scalable ML serving infrastructure supporting dynamic model sharding, load balancing, and fault tolerance
  • Collaborate with hardware teams on next-generation accelerator requirements and software teams on framework integration
  • Lead performance analysis and optimization of ML workloads, identifying bottlenecks in compute, memory, and network subsystems
  • Drive adoption of advanced parallelization techniques including pipeline parallelism, expert parallelism, and various other emerging approaches

Target Your Resume for "GPU Software Architecture Engineer" , Apple

Get personalized recommendations to optimize your resume specifically for GPU Software Architecture Engineer. Takes only 15 seconds!

AI-powered keyword optimization
Skills matching & gap analysis
Experience alignment suggestions

Check Your ATS Score for "GPU Software Architecture Engineer" , Apple

Find out how well your resume matches this job's requirements. Get comprehensive analysis including ATS compatibility, keyword matching, skill gaps, and personalized recommendations.

ATS compatibility check
Keyword optimization analysis
Skill matching & gap identification
Format & readability score

Tags & Categories

Hardware

Answer 10 quick questions to check your fit for GPU Software Architecture Engineer @ Apple.

Quiz Challenge
10 Questions
~2 Minutes
Instant Score

Related Books and Jobs

No related jobs found at the moment.