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Nvidia Senior Solutions Architect HPC AI 
United Kingdom, England, Southampton 
264563990

10.11.2025
UK, Remote
Poland, Remote
Spain, Remote
Switzerland, Remote
Germany, Remote
time type
Full time
posted on
Posted 5 Days Ago
job requisition id
What You’ll Be Doing
  • Collaborating with NVIDIA’s training framework developers and product teams to stay ahead of the latest features and help partners to adopt them effectively.

  • Assisting with deployment, debugging, and improving the efficiency of AI workloads on extensive NVIDIA platforms.

  • Benchmarking new framework features, analyzing performance, and sharing actionable insights with both customers and internal teams.

  • Working directly with external customers to solve cluster performance and stability issues, identify bottlenecks, and implement effective solutions.

  • Build expertise and guide customers in scaling workloads efficiently and reliably on the latest generation of NVIDIA GPUs.

  • Contributing to Europe’s Sovereign AI initiative by helping customers implement advanced resiliency features within AI training pipelines.

What We Need To See
  • BS, MS, PhD or equivalent experience in Computer Science, Electrical/Computer Engineering, Physics, Mathematics, or a related engineering field—or equivalent practical experience.

  • 8+ years of experience in accelerated computing technologies at cluster scale, ideally including work with NVIDIA platforms.

  • Strong programming skills in at least one of the following languages: C, C++, or Python.

  • Practical experience identifying and resolving bottlenecks in large-scale training workloads or parallel applications.

  • Hands-on experienced in profiling and debugging large parallel applications.

  • Solid understanding of CPU and GPU architectures, CUDA, parallel filesystems, and high-speed interconnects.

  • Experienced in working with large compute clusters with an understanding of their internal scheduling and resource management mechanisms (e.g. SLURM or Cloud based clusters).

  • Proficient knowledge of training pipelines and frameworks, encompassing their internal operations and performance attributes.

Ways To Stand Out From The Crowd
  • Experience in debugging training pipelines running on thousands of GPUs in production environment.

  • Hands-on experience with performance profiling and optimizations using tools like Nsight Systems, Nsight Compute and good understanding of NCCL, MPI and low-level communication libraries.

  • Ability to debug stability issues across the entire stack: parallel application, training frameworks, runtime libraries, schedulers, and hardware.

  • Solid understanding of the internal workings of LLM frameworks such as PyTorch, Megatron-LM, or NeMo, and how they affect compute layers like CPUs, GPUs, network and storage or understanding of inference tools such as vLLM, Dynamo, TensorRT-LLM, RedHat Inference Server or SGLang.