• Share :

The PyTorch Team @ NVIDIA is hiring passionate parallel programmers. Join us to design and build the tools used by millions of AI practitioners deploying AI applications scalable to thousands of GPUs. Our team is responsible for the continual delivery of best in class experience on NVIDIA's hardware with PyTorch. Join our team and collaborate with many multi-disciplinary engineering teams within NVIDIA and internationally in the PyTorch open source community to deliver our customers the best of NVIDIA software.

In this position you will learn innovative techniques from NVIDIA's domain experts for efficiently programming the world's most sophisticated computer systems. Build these techniques into NVIDIA/Fuser (commonly known as "nvFuser") ( applying our groundbreaking Parallel Programming Theory, allowing these optimization techniques to be applied to algorithms broadly, automatically, and safely to algorithms written in Numpy and PyTorch. Beyond building nvFuser influence and improve the entire software stack all the way from users to the CUDA compiler, to the Lightning-Thunder Graph Compiler ( , as well as influence the future design of NVIDIA's hardware platform. Join our ambitious and diverse team who strive to lead the best in AI programming.

What you will be doing:

Crafting a code generation system to accelerate portions of a graph collected from a machine learning framework.

Partnering with NVIDIA's hardware and software teams to improve GPU performance in PyTorch.

Design, build and support production AI solutions used by enterprise customers and partners.

Optimize the performance of influential, modern Deep Learning models coming out of academic and industry research, for NVIDIA GPUs and systems.

Collaborating with internal applied researchers to improve their AI tools.

Advise design of new hardware generations.

What we need to see:

MS or PhD Computer Science, Computer Engineering, Electrical Engineering or a related field (or equivalent experience).

Parallel programming experience with writing optimized kernels in the NVIDIA CUDA Programming Language or similar parallel languages

4+ years of experience with C++ programming.

Demonstrated experience developing large software projects.

We require excellent verbal and written communication skills.

Ways to stand out from the crowd:

Proven technical foundation in CPU and GPU architectures, numeric libraries, modular software design.

A background in deep learning compilers or compiler infrastructure

Expertise with optimized distributed parallelism techniques and it's a bonus if that includes parallelizing Large Language Models!

Knowledge of heuristic generation that employs cost models, machine learning, or auto-tuning.

Contributions to PyTorch, Numpy, JAX, TensorFlow, OpenAI-Triton, Lightning Thunder, TVM, Halide or similar system.

The base salary range is 180,000 USD - 276,000 USD. Your base salary will be determined based on your location, experience, and the pay of employees in similar positions.

You will also be eligible for equity and benefits ( . NVIDIA accepts applications on an ongoing basis.

NVIDIA is committed to fostering a diverse work environment and proud to be an equal opportunity employer. As we highly value diversity in our current and future employees, we do not discriminate (including in our hiring and promotion practices) on the basis of race, religion, color, national origin, gender, gender expression, sexual orientation, age, marital status, veteran status, disability status or any other characteristic protected by law.

Read the full job description and apply online on the recuiter's web-site

Find Jobs Hiring Now Near You!

Get Jobilize Mobile App

Get Jobilize Job Search Mobile App Now

Receive real-time job alerts and never miss the right job again

Get it on Google Play Download on the App Store
Senior Performance Engineer - Deep Learning

NVIDIA

  • US - US

  • December 12, 2024


We are seeking senior engineers with a passion for performance analysis and optimization to join our team in advancing ground breaking technologies for deep learning compilers and automated kernel generation. At NVIDIA, you will collaborate across the full hardware/software stack-from GPU...


Senior Platform Software Engineer, PCIe

NVIDIA

  • US - US

  • December 15, 2024


NVIDIA's invention of the GPU in 1999 sparked the growth of the PC gaming market, redefined modern computer graphics, and revolutionized parallel computing. More recently, GPU deep learning ignited modern deep learning - the next era of computing - with the GPU acting as the brain of computers,...


Senior Cloud Platform Software Engineer

NVIDIA

  • US - US

  • December 19, 2024


NVIDIA is on the journey to build the best cloud offering for AI workloads and to bring its latest GPU technology to our clients as a set of managed services under the DGX Cloud umbrella. We want to be able to innovate on behalf of our clients and provide an easy, no-hassle way of using the latest...


Senior Tegra System Performance Architect

NVIDIA

  • US - US

  • November 26, 2024


We are now looking for a Senior Tegra System Performance Architect! • Do you want to be a part of the Artificial Intelligence Revolution? Would you like to work with world-class systems architects and deep learning experts to define the next generation SoCs? • NVIDIA is developing...


Senior Software Engineer - Automated Parallel Programming

NVIDIA

  • US - US

  • December 12, 2024


The PyTorch Team @ NVIDIA is hiring passionate parallel programmers. Join us to design and build the tools used by millions of AI practitioners deploying AI applications scalable to thousands of GPUs. Our team is responsible for the continual delivery of best in class experience on NVIDIA's hardware...


Senior System Level Product Engineer

Nvidia


NVIDIA's GPUs and SOCs are the world leaders in performance and efficiency, and we are continually innovating in creative and unique ways to improve our ability to deliver extraordinary solutions in a wide range of sectors. We are seeking post-silicon Senior System Level Product Engineer who is...