Requirements
- Proven experience improving performance in production systems with tight constraints (latency, memory, bandwidth, power/thermal, or cost)
- Strong proficiency with at least one relevant stack/toolchain (e.g. TensorRT, CUDA, Qualcomm QNN, Triton, OpenCL) and confidence learning adjacent frameworks quickly
- Comfort operating at multiple levels of abstraction — from high‑level model behaviour down to low‑level kernel/runtime execution
- Strong software engineering fundamentals (debugging, profiling, testing, and maintainable code)
- Clear communicator and collaborative teammate; able to align multiple stakeholders on performance trade‑offs and priorities
- (Desirable) Exposure to embedded or edge deployment of ML models, including benchmarking on real devices and handling system‑level constraints
- (Desirable) Experience with NVIDIA and/or Qualcomm SoCs and performance tooling
- (Desirable) Python and C++ proficiency
- (Desirable) Experience mentoring others and/or driving technical direction in a small, fast‑moving team
- We understand that everyone has a unique set of skills and experiences and that not everyone will meet all of the requirements listed above. If you’re passionate about self‑driving cars and think you have what it takes to make a positive impact on the world, we encourage you to apply
What the job involves
- As a Staff ML Performance Engineer, you’ll play a key role in high‑impact projects, optimising ML inference for edge accelerators and GPUs
- The focus of this team is to run large transformer‑based models efficiently on low‑cost, low‑power edge devices to enable Wayve’s first driving product
- You’ll help set the technical direction for turning these models into production systems that run reliably on in‑vehicle compute
- This is a hands‑on role working across ML systems, compilers, runtimes, kernels, and embedded deployment, contributing to several early‑stage, high‑impact projects at Wayve
- Profile and pinpoint bottlenecks across the full inference stack (model graph, compiler/runtime, kernel execution, memory movement) and deliver measurable improvements
- Implement and validate optimisations in compilers, runtimes, and/or kernels (e.g. operator fusion, scheduling, quantisation‑aware performance, custom kernels)
- Build robust benchmarking and regression testing to ensure performance improvements hold across models, devices, and software releases
- Optimise for multiple targets (e.g. NVIDIA Orin/Thor, Qualcomm) and work with teams to support these in a maintainable way
- Collaborate with model developers to influence architecture and training/deployment decisions that affect on‑device performance
- Contribute to technical roadmaps and tooling and help raise the standard of performance engineering across the team
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