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Role Number: 200639967-0836
Summary
Imagine what you could do here. At Apple, innovative ideas have a way of becoming extraordinary products, services, and customer experiences very quickly. Bring passion and dedication to your job and there's no telling what you could accomplish!
As part of Apple Cloud AI, we are building the next generation of ML infrastructure that powers AI capabilities across Apple's products and services. Our team tackles some of the most challenging problems in the industry - optimizing LLM inference at massive scale, building distributed training systems that push the boundaries of GPU and TPU utilization, and architecting model serving platforms that deliver sub-millisecond latency for real-time AI experiences.
You'll work with cutting-edge technologies including vLLM, Ray, TensorRT-LLM, TPU Infrastructure, and custom inference engines, while shaping how foundation models are trained, fine-tuned, and deployed across Apple's ecosystem.
As a Lead GenAI/ML Engineer, you will architect high-performance ML systems from the ground up - designing efficient KV-cache strategies, implementing speculative decoding, optimizing tensor parallelism across GPU and TPU clusters, and building the infrastructure that brings Apple's most ambitious AI capabilities to life.
Description
This role requires translating cutting-edge ML research into production-ready systems that meet the demanding requirements of Apple's ML workloads. You will work closely with research teams to productionize new model architectures and optimization techniques.
We are looking for candidates who thrive at the intersection of ML research and systems engineering - someone who can read a paper on FlashAttention or PagedAttention and implement a production-grade version, or who can profile a training job and identify opportunities to improve GPU utilization from 40% to 80%.
Minimum Qualifications
8+ years of experience in ML systems engineering, with at least 3 years focused on LLM/GenAI infrastructure
Deep expertise in LLM inference optimization: KV-cache management, batching strategies, quantization, speculative decoding
Strong proficiency in Python and C++/CUDA for performance-critical code
Hands-on experience with inference frameworks: vLLM, TensorRT-LLM, Triton Inference Server, or equivalent
Experience with distributed training at scale using frameworks like DeepSpeed, Megatron-LM, FSDP, or Ray Train
Solid understanding of transformer architectures and attention mechanisms at the implementation level
Experience optimizing ML workloads on NVIDIA GPUs (profiling, memory optimization, kernel tuning)
Track record of taking ML systems from research/prototype to production at scale
MS or PhD in Computer Science, Machine Learning, or equivalent practical experience
Preferred Qualifications
Experience with TPU infrastructure (JAX/XLA, TPU training/serving optimization)
Contributions to open-source ML infrastructure projects (vLLM, Ray, TensorRT-LLM, etc.)
Experience with custom CUDA kernel development or Triton (OpenAI)
Deep knowledge of model compression techniques: pruning, distillation, mixed-precision training
Experience with multi-node training orchestration and fault tolerance
Familiarity with emerging architectures: MoE models, linear attention variants, state-space models
Experience building ML platforms serving high QPS with strict latency requirements
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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