Member of Technical Staff, ML Kernels

netpreme· AI Systems
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📍 Santa Clara, CA or Boston, MAFullTime

About this role

About the Role

We are seeking a Member of Technical Staff, Machine Learning Kernels to design, optimize, and benchmark high-performance compute kernels for modern machine learning workloads. This role is for a deeply technical engineer who enjoys working close to hardware — writing CUDA kernels, investigating subtle performance artifacts, building benchmarks, and serving as a go-to expert on accelerator behavior.

You will act as a hands-on performance specialist, partnering closely with research, systems, and infrastructure teams to unlock efficiency gains across GPUs today and other accelerators (e.g., TPU, Trainium) as we expand our hardware partnerships.

This role will be performed onsite from one of our offices in Santa Clara, CA or Boston, MA.

Essential Duties & Responsibilities

  • Design, implement, and optimize high-performance ML kernels, primarily targeting GPUs (CUDA), with an emphasis on throughput, latency, and memory efficiency.

  • Profile, benchmark, and analyze performance across different hardware configurations, identifying bottlenecks and narrow artifacts.

  • Debug and reason about low-level performance issues involving memory hierarchy, scheduling, synchronization, and numerical formats.

  • Build and maintain benchmarking and evaluation tools to compare performance across GPUs and other accelerators.

  • Advise internal teams on GPU and accelerator performance characteristics, tradeoffs, and best practices.

  • Explore and prototype support for alternative accelerator platforms (e.g., TPU, Amazon Trainium) as partnerships and needs evolve.

  • Collaborate closely with ML researchers and systems engineers to translate algorithmic needs into efficient kernel implementations.

Qualifications

  • Strong experience writing and optimizing CUDA kernels or equivalent low-level accelerator code.

  • Deep understanding of GPU architecture, including memory systems, parallel execution, and performance tradeoffs.

  • Experience with performance profiling and benchmarking tools (e.g., Nsight Systems / Compute, nvprof, framework-level profilers).

  • Proficiency in C++ and low-level performance-oriented programming.

  • Ability to independently investigate ambiguous or poorly understood performance issues and drive them to resolution.

  • Comfortable switching between different hardware ecosystems and learning new accelerator stacks as needed.

Preferred Qualifications

  • Experience with ML framework internals (e.g., PyTorch, TensorFlow, XLA) and custom operator development.

  • Prior work with non-GPU accelerators such as TPU, Trainium, IPU, or similar.

  • Familiarity with mixed-precision and low-precision compute (e.g., FP16, BF16, FP8).

  • Contributions to open-source performance, systems, or ML infrastructure projects.

Compensation & Benefits

  • Competitive salary commensurate with experience including base salary, performance-based bonus, and early stage equity grant

  • Comprehensive benefits including health, dental, vision, and life insurance

  • Well-equipped, sunny offices in Santa Clara, CA and Boston, MA

  • Relocation assistance and visa sponsorship

  • Perks include a daily lunch stipend, 401k match, and more

  • A collaborative, continuous-learning work environment with smart, dedicated colleagues engaged in developing the next generation of architecture for high-performance computing

The Opportunity

  • Impact: We are tackling a fundamental challenge at the infrastructure layer: unlocking greater AI capability while dramatically improving efficiency. The work we do here compounds across state-of-the-art AI models, systems, and real-world applications.

  • Timing: Joining now means real ownership of the company and meaningful influence over product direction and execution. You’ll work from first principles, move quickly from insight to execution, and see your contributions directly reflected in what we build.

  • Culture: You’ll work alongside a group of people who care deeply about rigor, clarity, and impact. We value thoughtful disagreement, fast learning, and intellectual fearlessness. This is a place where strong ideas shine, curiosity is encouraged, and growth is a daily practice.

Frequently Asked Questions

Is the salary disclosed for the Member of Technical Staff, ML Kernels position at netpreme?
The salary for this Member of Technical Staff, ML Kernels role at netpreme is not publicly listed. Click "Apply Now" to learn more about the compensation package on their official careers page.
Where is the Member of Technical Staff, ML Kernels position at netpreme located?
This Member of Technical Staff, ML Kernels role at netpreme is based in Santa Clara, CA or Boston, MA. The position is listed as on-site or hybrid. Check the full job description or apply directly to confirm the work arrangement.
Is the Member of Technical Staff, ML Kernels role at netpreme full-time or part-time?
This is listed as a FullTime position. It is posted as a Member of Technical Staff, ML Kernels role in the AI Systems department at netpreme.
Which team or department does the Member of Technical Staff, ML Kernels at netpreme belong to?
This Member of Technical Staff, ML Kernels position is part of the AI Systems department at netpreme. See the full job description for more information about the team structure and responsibilities.
How do I apply for the Member of Technical Staff, ML Kernels position at netpreme?
Click the "Apply Now" button on this page. You will be redirected to netpreme's official application portal hosted on ashby where you can submit your application directly.
When was the Member of Technical Staff, ML Kernels job at netpreme posted?
This Member of Technical Staff, ML Kernels position at netpreme was posted on Feb 6, 2026. Apply as soon as possible — early applications are often reviewed first.
Member of Technical Staff, ML Kernels
netpreme
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