π Local Job Near You
Staff/Sr. ML Compute Efficiency Engineer
Apple
π
Santa Clara, United States
Location
Santa Clara
Posted
May 27, 2026
Commute
Local Area
Local Opportunity Near You!
This job is in your area. Enjoy a short commute and work close to home.
Job Description
**Role Number:** 200619215-3760
**Summary**
Scaling machine learning workloads across thousands of GPUs and TPUs creates challenges that few engineers ever encounter. In Appleβs Machine Learning Platform Technologies organization, we build the infrastructure that powers large-scale ML training and inference workloads, bringing together expertise in distributed systems, machine learning infrastructure, and high-performance computing.
**Description**
As a performance engineer in the ML Compute Efficiency team, youβll tackle ambiguous systems challenges, identify inefficiencies and build solutions that maximize accelerator utilization, reduce idle and fragmented capacity, and minimize recovery periods. This includes analyzing accelerator performance, digging into various parallelism techniques, and refining workload scheduling and orchestration across the compute fleet.
**Minimum Qualifications**
+ Experience with large-scale distributed systems ...
**Summary**
Scaling machine learning workloads across thousands of GPUs and TPUs creates challenges that few engineers ever encounter. In Appleβs Machine Learning Platform Technologies organization, we build the infrastructure that powers large-scale ML training and inference workloads, bringing together expertise in distributed systems, machine learning infrastructure, and high-performance computing.
**Description**
As a performance engineer in the ML Compute Efficiency team, youβll tackle ambiguous systems challenges, identify inefficiencies and build solutions that maximize accelerator utilization, reduce idle and fragmented capacity, and minimize recovery periods. This includes analyzing accelerator performance, digging into various parallelism techniques, and refining workload scheduling and orchestration across the compute fleet.
**Minimum Qualifications**
+ Experience with large-scale distributed systems ...