A
AIML - Staff ML Infrastructure Engineer, ML Platform & Technology - Pre-training Infrastructure
Apple
Onsite (California)
Senior Level
Posted 4 days ago
Skills
Machine Learning
Distributed Systems
Cloud Computing
Kubernetes
Python
Go
JAX
PyTorch
CUDA
MLOps
Performance Optimization
Networking Technologies
Technical Project Management
Mentoring
Collaboration
Innovation
About the Role
Apple is where individual imaginations gather together, committing to the values that lead to great work. Every new product we build, service we create, or Apple Store experience we deliver is the result of us making each other’s ideas stronger. That happens because every one of us shares a belief that we can make something wonderful and share it with the world, changing lives for the better. It’s the diversity of our people and their thinking that inspires the innovation that runs through everything we do. When we bring everybody in, we can do the best work of our lives. Here, you’ll do more than join something — you’ll add something!
As an engineer on ML Compute team, your work will include: - Drive large-scale pre-training initiatives to support cutting-edge foundation models, focusing on resiliency, efficiency, scalability, and resource optimization. - Enhance distributed training techniques for foundation models. - Research and implement new patterns and technologies to improve system performance, maintainability, and design. - Optimize execution and performance of workloads built with JAX, PyTorch, XLA and CUDA on large distributed systems. - Leverage high-performance networking technologies such as NCCL for GPU collectives and TPU interconnect (ICI/Fabric) for large-scale distributed training. - Architect a robust MLOps platform to streamline and automate pretraining operations. - Operationalize large-scale ML workloads on Kubernetes, ensuring distributed trainings are robust, efficient, and fault-tolerant. - Lead complex technical projects, defining requirements and tracking progress with team members. - Collaborate with cross-functional engineers to solve large-scale ML training challenges. - Mentor engineers in areas of your expertise, fostering skill growth and knowledge sharing. - Cultivate a team centered on collaboration, technical excellence, and innovation.
Bachelors in Computer Science, engineering, or a related field 6+ years of hands-on experience in building scalable backend systems for training and evaluation of machine learning models Proficient in relevant programming languages, like Python or Go Strong expertise in distributed systems, reliability and scalability, containerization, and cloud platforms Proficient in cloud computing infrastructure and tools: Kubernetes, Ray, PySpark Ability to clearly and concisely communicate technical and architectural problems, while working with partners to iteratively find
Advance degrees in Computer Science, engineering, or a related field Proficient in working with and debugging accelerators, like: GPU, TPU, AWS Trainium Proficient in ML training and deployment frameworks, like: JAX, Tensorflow, PyTorch, TensorRT, vLLM
Description
As an engineer on ML Compute team, your work will include: - Drive large-scale pre-training initiatives to support cutting-edge foundation models, focusing on resiliency, efficiency, scalability, and resource optimization. - Enhance distributed training techniques for foundation models. - Research and implement new patterns and technologies to improve system performance, maintainability, and design. - Optimize execution and performance of workloads built with JAX, PyTorch, XLA and CUDA on large distributed systems. - Leverage high-performance networking technologies such as NCCL for GPU collectives and TPU interconnect (ICI/Fabric) for large-scale distributed training. - Architect a robust MLOps platform to streamline and automate pretraining operations. - Operationalize large-scale ML workloads on Kubernetes, ensuring distributed trainings are robust, efficient, and fault-tolerant. - Lead complex technical projects, defining requirements and tracking progress with team members. - Collaborate with cross-functional engineers to solve large-scale ML training challenges. - Mentor engineers in areas of your expertise, fostering skill growth and knowledge sharing. - Cultivate a team centered on collaboration, technical excellence, and innovation.
Minimum Qualifications
Bachelors in Computer Science, engineering, or a related field 6+ years of hands-on experience in building scalable backend systems for training and evaluation of machine learning models Proficient in relevant programming languages, like Python or Go Strong expertise in distributed systems, reliability and scalability, containerization, and cloud platforms Proficient in cloud computing infrastructure and tools: Kubernetes, Ray, PySpark Ability to clearly and concisely communicate technical and architectural problems, while working with partners to iteratively find
Preferred Qualifications
Advance degrees in Computer Science, engineering, or a related field Proficient in working with and debugging accelerators, like: GPU, TPU, AWS Trainium Proficient in ML training and deployment frameworks, like: JAX, Tensorflow, PyTorch, TensorRT, vLLM
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