NVIDIA
Artificial Intelligence, High Performance Computing, Visualization
SeniorHPCPerformanceEngineer
Neural analysis suggests this role is
optimal for Senior candidates.
“Senior HPC Performance Engineer at NVIDIA. Skills: HPC, Performance Engineering, GPU Communication Libraries, Parallel Programming, System Architecture. Conduct in-depth performance characterization and analysis on large multi-GPU and multi-node clusters. Study the interaction of our libraries with all HW (GPU, CPU, Networking) and SW components in the stack”
What You'll Achieve.
influence the roadmap of our communication libraries; help realize NVIDIA's vision
Industry & Context.
Triage and root-cause performance issues; Ability to debug performance issues across the entire HW/SW stack
What They're Looking For.
Must Have
M.S. (or equivalent experience) or PHD in Computer Science, or related field with relevant performance engineering and HPC experience, 3+ yrs of experience with parallel programming, at least one communication runtime (MPI, NCCL, UCX, NVSHMEM), Experience conducting performance benchmarking and triage on large scale HPC clusters, Good understanding of computer system architecture, HW-SW interactions and operating systems principles (aka systems software fundamentals), Implement micro-benchmarks in C/C++, Ability to debug performance issues across the entire HW/SW stack, Proficient in a scripting language, preferably Python, Familiar with containers, cloud provisioning and scheduling tools (Kubernetes, SLURM, Ansible, Docker)
Nice to Have
Practical experience with Infiniband/Ethernet networks in areas like RDMA, topologies, congestion control, Experience debugging network issues in large scale deployments, Familiarity with CUDA programming and/or GPUs, Experience with Deep Learning Frameworks such PyTorch, TensorFlow
What You'll Do.
Conduct in-depth performance characterization and analysis on large multi-GPU and multi-node clusters
Study the interaction of our libraries with all HW (GPU
Networking) and SW components in the stack
Evaluate proof-of-concepts
conduct trade-off analysis when multiple solutions are available
Triage and root-cause performance issues reported by our customers
Collect a lot of performance build tools and infrastructure to visualize and analyze the information
How You'll Work.
Team & Collaboration
Collaborate with a very dynamic team across multiple time zones; communicate effectively across different teams and timezones
Communication Scope
communicate effectively across different teams and timezones
Full Job Description
NVIDIA is leading the way in groundbreaking developments in Artificial Intelligence, High Performance Computing and Visualization. The GPU, our invention, serves as the visual cortex of modern computers and is at the heart of our products and services. Our work opens up new universes to explore, enables amazing creativity and discovery, and powers what were once science fiction inventions from artificial intelligence to autonomous cars. Come work for the team that brought to you NCCL, NVSHMEM & GPUDirect. Our GPU communication libraries are crucial for scaling Deep Learning and HPC applications! We are looking for a motivated Performance engineer to influence the roadmap of our communication libraries. The DL and HPC applications of today have a huge compute demand and run on scales which go up to tens of thousands of GPUs. The GPUs are connected with high-speed interconnects (eg. NVLink, PCIe) within a node and with high-speed networking (eg. Infiniband, Ethernet) across the nodes. Communication performance between the GPUs has a direct impact on the end-to-end application performance; and the stakes are even higher at huge scales! This is an outstanding opportunity for someone with HPC and performance background to advance the state of the art in this space. Are you ready for to contribute to the development of innovative technologies and help realize NVIDIA's vision? ## **What you will be doing:** * Conduct in-depth performance characterization and analysis on large multi-GPU and multi-node clusters. * Study the interaction of our libraries with all HW (GPU, CPU, Networking) and SW components in the stack * Evaluate proof-of-concepts, conduct trade-off analysis when multiple solutions are available * Triage and root-cause performance issues reported by our customers * Collect a lot of performance data; build tools and infrastructure to visualize and analyze the information * Collaborate with a very dynamic team across multiple time zones ## **What we need to see:
Applying for this Senior HPC Performance Engineer role?
Most applicants get filtered before a human reads their resume. See if yours makes the cut.
How to Apply on Workday
- Workday has a multi-step form — save your progress after every section.
- "Apply With LinkedIn" can fail or lose data; manual entry is more reliable.
- Watch for the "Submit for Review" final step — hitting "Save" alone does not submit.
- Job requisition numbers are useful when following up with HR by email.
ANONYMOUS · UNFILTERED
What do employees actually say about NVIDIA?
Real rants from real employees. Read before you apply.