Solutions Architect, Data Processing - New College Grad 2026

NVIDIA NVIDIA · Semiconductors · Santa Clara, CA +1 · Remote

This role focuses on researching and developing techniques to GPU-accelerate high-performance database, ETL, and data analytics applications. The goal is to optimize the performance of data-intensive workloads on modern computer architectures, influencing the design of next-generation hardware and software. While the company uses AI, this specific role is about optimizing data processing for AI/ML applications rather than directly building AI models.

What you'd actually do

  1. In this role, you will research and develop techniques to GPU-accelerate high performance database, ETL and data analytics applications.
  2. Work directly with other technical experts in their fields (industry and academia) to perform in-depth analysis and optimization of complex data intensive workloads to ensure the best possible performance of current GPU architectures.
  3. Influence the design of next-generation hardware architectures, software, and programming models in collaboration with research, hardware, system software, libraries, and tools teams at NVIDIA
  4. Influence partners (industry and academia) to push the bounds of data processing with NVIDIA’s full product line

Skills

Required

  • Masters or PhD in Computer Science, Computer Engineering, or related computationally focused science degree or equivalent experience
  • Programming fluency in C/C++
  • Deep understanding of algorithms and software design
  • Low-level parallel programming
  • CPU/GPU architecture fundamentals
  • Memory subsystem expertise
  • High performance databases
  • ETL
  • Data analytics
  • Vector database

Nice to have

  • CUDA
  • OpenACC
  • OpenMP
  • MPI
  • pthreads
  • TBB
  • Optimizing/implementing database operators or query planner
  • Parallel or distributed frameworks
  • Optimizing vector database index build and/or search
  • Profiling and optimizing CUDA kernels
  • Compression
  • Storage systems
  • Networking
  • Distributed computer architectures

What the JD emphasized

  • Masters or PhD in Computer Science, Computer Engineering, or related computationally focused science degree or equivalent experience.
  • Programming fluency in C/C++ with a deep understanding of algorithms and software design.
  • Hands-on experience with low-level parallel programming, e.g. CUDA (preferred), OpenACC, OpenMP, MPI, pthreads, TBB, etc.
  • In-depth expertise with CPU/GPU architecture fundamentals, especially memory subsystem.
  • Domain expertise in high performance databases, ETL, data analytics and/or vector database.