Staff ML Performance Engineer (Training Efficiency)
We are looking for a Staff ML Performance Engineer to join our Training Tech team working on optimizing large scale ML jobs to enable scaling our models to the next order of magnitude. A successful candidate will increase efficiency of training and inference workloads in order to allow Wayve to train larger models faster.
Key responsibilities:
Profile ML workloads to identify their bottlenecks, e.g. using NVIDIA Nsight Systems
Design and implement efficiency improvements to maximize MFU and throughput, e.g. parallelism, model compilation, mixed precision
Design and implement observability tools to identify bottlenecks and drive performance improvements, e.g. to track MFU, throughput, latency, etc
Design and implement benchmarking tools, e.g. to track efficiency gains or regressions
Collaborate closely with Research teams to integrate training efficiency improvements and create a culture of performance optimization
In order to set you up for success in this role, we’re looking for the following skills and experience.
10+ years of industry experience driving performance engineering across ML systems, GPU compute infrastructure, distributed platforms or similar field.
Experience optimizing large scale jobs on GPU compute clusters.
Experience in working in platform teams and working with research teams.
Experience in writing, reporting, and tracking performance benchmarks in an open and accessible way.
Ability to write high quality, well-structured and tested Python code
BS or MS in Machine Learning, Computer Science, Engineering, or a related technical discipline or equivalent experience
Experience working with concurrent, parallel and distributed computing.
Experience using NVIDIA NSight Systems or other system profilers.
Experience implementing GPU kernels (CUDA, Triton, etc).
Knowledge of computing fundamentals - what makes code fast, secure and reliable.
This role is a full-time role based in Sunnyvale, CA (hybrid) and the reasonably estimated salary for this role ranges from $336,400 to $359,000, plus a competitive equity package. Actual compensation is based on the candidate's skills, qualifications, and experience.
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- How much does the Staff ML Performance Engineer (Training Efficiency) at Wayve pay?
- The posting lists a range of $336K–$359K per year. Ranges reflect what Wayve publicly declared on the source posting.
- Where is this Staff ML Performance Engineer (Training Efficiency) role based?
- The role is based in Sunnyvale, California USA.
- What experience does Wayve expect for this role?
- The posting is tagged as a lead-level role, typically 7+ years of experience. Check the requirements section for specifics.
- Where is Wayve headquartered?
- Wayve is headquartered in London, UK.
- How was this posting sourced?
- This role was pulled directly from Wayve's Ashby careers site. Apply links open in the employer's own ATS — no reposts or aggregator middleware.
Apply links open in the employer's official ATS. Always verify recruitment messages on the company's careers page before sharing personal information.