Member of Technical Staff, Hardware, Kernel Engineer (Custom Silicon)

River AI Inc.

$200K — $420K *
Consumer Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • Bachelor's degree in Computer Engineering, Computer Science, Electrical Engineering, or related field and 5+ years of experience in low-level performance programming.
  • Deep understanding of hardware programming models like CUDA and custom accelerator assembly, with a track record of delivering optimized kernels.
  • Advanced knowledge of Computer Architecture, including vector units and memory hierarchies.
  • Proficiency in modern C++ for developing code-generation frameworks.
  • Strong mathematical foundation in linear algebra and deep learning primitives.
  • Collaborative mindset for effective co-design with hardware and compiler teams.

Responsibilities

  • Design and build C++ code-generation frameworks that emit optimized assembly code.
  • Author and optimize deep learning primitives targeted at custom hardware.
  • Automate instruction scheduling and register allocation to optimize compute execution.
  • Design data-movement strategies for memory hierarchy management.
  • Collaborate with hardware and architecture teams to evaluate hardware simulations and feedback on ISA.
  • Benchmark assembly code against hardware simulators to ensure performance and correctness.

Benefits

  • Generous health, dental, and vision benefits.
  • Unlimited PTO for a flexible work-life balance.
  • Relocation support available as needed.
Full Job Description
About the Role

We are looking for exceptional performance and kernel generation engineers to build the foundational compute engine for our high-performance custom silicon. In this role, you will design and implement robust kernel generators that programmatically emit optimized low-level assembly code for our greenfield hardware architecture.

You will bridge the gap between high-level compilation and raw hardware capability, pushing our custom architecture to its absolute theoretical limits for critical deep learning operations (including GEMMs, FlashAttention, and custom activations). You will collaborate closely up and down the stack with compiler engineers, silicon architects, and deep learning researchers to unlock maximum compute efficiency.
What You'll Do
  • Kernel Generator Development: Design and build C++ code-generation frameworks and meta-programming toolchains that automatically emit optimized custom ISA assembly code.
  • Low-Level Compute Optimization: Author and optimize core deep learning primitives (GEMM/MatMul, Attention mechanisms, Convolutions, and element-wise layers) directly targeted at our custom hardware.
  • Microarchitectural Tuning: Hand-craft and automate instruction scheduling, register allocation, and software pipelining to maximize ALU utilization and hide execution latency on our silicon.
  • Memory Hierarchy Management: Design sophisticated tiling, double-buffering, and data-movement strategies to optimize on-chip SRAM utilization and minimize memory bandwidth bottlenecks.
  • HW/SW Co-Design: Partner with the RTL and architecture teams to evaluate hardware simulations, provide feedback on the ISA, and influence the design of future compute units based on kernel execution profiles.
  • Performance Profiling & Validation: Benchmark generated assembly against hardware simulators and silicon, utilizing hardware performance counters to eliminate performance gaps and ensure mathematical correctness.

Minimum Qualifications:
  • Bachelor's degree in Computer Engineering, Computer Science, Electrical Engineering, or a related field, and 5+ years of practical industry experience in low-level performance programming.
  • Deep understanding of hardware programming models (e.g., CUDA, Triton, CUTLASS, or custom accelerator assembly) and a proven track record of shipping highly optimized kernels.
  • Advanced knowledge of Computer Architecture, including vector units, execution pipelines, register files, and complex memory hierarchies (caches, SRAM, HBM/DRAM).
  • Proficiency in modern C++ for building robust, scalable meta-programming and code-generation frameworks.
  • Strong mathematical foundation in linear algebra operations and deep learning primitives.
  • A highly collaborative mindset to push boundaries and co-design effectively with hardware and compiler teams.

Preferred Qualifications: (We encourage you to apply even if you don't meet all of these)
  • Deep familiarity with implementing microarchitectural optimizations for Tensor Cores, matrix multiply-accumulate units, or custom vector extensions.
  • Experience utilizing advanced C++ template metaprogramming or code-generation techniques to automate the creation of heavily parameterized kernel variants.
  • Advanced experience with low-level hardware profiling tools, execution tracing, and utilizing performance counters to identify cache misses, pipeline stalls, and ALU bubbles.

Logistics
  • Location: This role is based in Austin, Texas or Palo Alto, California.
  • Compensation: Depending on background, skills, experience, and location, the expected annual salary range for this position is $200,000 - $420,000 USD.
  • Visa Sponsorship: We sponsor visas. We can't guarantee success for every candidate or role, but if you're the right fit, we're committed to working through the visa process.
  • Benefits: River AI offers generous health, dental, and vision benefits, unlimited PTO, and relocation support as needed.

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