GPU Systems Engineer (CUDA)

Bright Vision TechnologiesEdison, NJ
Remote

About The Position

Bright Vision Technologies is a forward-thinking software development company dedicated to building innovative solutions that help businesses automate and optimize their operations. We leverage cutting-edge technologies to create scalable, secure, and user-friendly applications. As we continue to grow, we’re looking for a skilled GPU Systems Engineer (CUDA) to join our dynamic team and contribute to our mission of transforming business processes through technology. This is a fantastic opportunity to join an established and well-respected organization offering tremendous career growth potential.

Requirements

  • Bachelor’s or Master’s degree in Computer Science, Computer Engineering, or a related field.
  • Six or more years of experience in GPU programming and performance engineering.
  • Deep expertise in CUDA C/C++ and GPU programming models.
  • Strong understanding of modern GPU architectures, memory hierarchies, and execution models.
  • Hands-on experience profiling and optimizing GPU workloads in production.
  • Familiarity with NCCL, MPI, and high-performance interconnect technologies.
  • Experience integrating custom kernels into ML frameworks.
  • Strong C++ skills and familiarity with modern systems programming practices.
  • Solid grounding in linear algebra and numerical methods.
  • Strong communication and collaboration skills with research and engineering teams.

Nice To Haves

  • Experience with Triton, CUTLASS, or other GPU kernel authoring frameworks.
  • Familiarity with TensorRT, FasterTransformer, or vLLM internals.
  • Exposure to compiler infrastructure such as LLVM or MLIR.
  • Open-source contributions to GPU or ML performance libraries.
  • Experience with large-scale distributed training infrastructure.

Responsibilities

  • Design and implement high-performance CUDA kernels for compute-intensive workloads across AI and HPC use cases.
  • Profile and optimize GPU code using tools such as Nsight Systems, Nsight Compute, and CUDA profilers.
  • Tune memory access patterns, occupancy, register usage, and shared memory utilization for peak performance.
  • Develop highly optimized libraries for linear algebra, attention, and other ML primitives.
  • Optimize multi-GPU and multi-node training using NCCL, RDMA, and high-performance networking.
  • Implement custom operators and fused kernels in PyTorch, JAX, or Triton.
  • Collaborate with ML engineers to identify performance bottlenecks in training and inference pipelines.
  • Develop benchmarks and regression tests to safeguard performance over time.
  • Evaluate new GPU architectures and feature sets, and advise on adoption strategy.
  • Contribute to compiler-level optimizations for tensor programs where appropriate, working at the boundary between ML frameworks and underlying accelerator codegen to unlock performance not reachable through framework-level tuning alone.
  • Optimize memory hierarchy usage across HBM, L2, shared memory, and registers.
  • Implement mixed-precision and quantized compute paths that maximize accelerator throughput while preserving numerical fidelity within bounds acceptable for the target workloads.
  • Document performance characteristics, design decisions, and tuning playbooks for internal teams.
  • Stay current with GPU architecture, CUDA evolution, and emerging accelerator technologies.

Benefits

  • Competitive base salary commensurate with experience, plus benefits.
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