Senior Performance Software Engineer, Deep Learning Libraries at NVIDIA

Santa Clara, California, United States

NVIDIA Logo
Not SpecifiedCompensation
Senior (5 to 8 years)Experience Level
Full TimeJob Type
UnknownVisa
Technology, Artificial Intelligence, SemiconductorsIndustries

Requirements

  • Masters or PhD degree or equivalent experience in Computer Science, Computer Engineering, Applied Math, or related field
  • 6+ years of relevant industry experience
  • Demonstrated strong C++ programming and software design skills, including debugging, performance analysis, and test design
  • Experience with performance-oriented parallel programming, even if it’s not on GPUs (e.g. with OpenMP or pthreads)
  • Solid understanding of computer architecture and some experience with assembly programming

Responsibilities

  • Writing highly tuned compute kernels, mostly in C++ CUDA, to perform core deep learning operations (e.g. matrix multiplies, convolutions, normalizations)
  • Following general software engineering best practices including support for regression testing and CI/CD flows
  • Collaborating with teams across NVIDIA: CUDA compiler team on generating optimal assembly code; Deep learning training and inference performance teams on which layers require optimization; Hardware and architecture teams on the programming model for new deep learning hardware features

Skills

Key technologies and capabilities for this role

C++CUDAcuDNNcuBLASTensorRTCUTLASSPerformance TuningParallel AlgorithmsMatrix MultiplyConvolutionsCI/CDRegression Testing

Questions & Answers

Common questions about this position

What is the salary for this Senior Performance Software Engineer role?

Your base salary will be determined based on your location, experience, and the pay of employees in similar positions.

Is this position remote or does it require working in an office?

This information is not specified in the job description.

What skills are required for this Senior Performance Software Engineer position?

Required skills include strong C++ programming and software design skills, experience with performance-oriented parallel programming (e.g., OpenMP or pthreads), and solid understanding of computer architecture with some assembly programming experience. A Masters or PhD in Computer Science, Computer Engineering, Applied Math, or related field, plus 6+ years of relevant industry experience are also needed.

What is the company culture like at NVIDIA for this team?

NVIDIA has some of the most forward-thinking and hard-working people, valuing creativity, autonomy, and a love for challenges. The Deep Learning Library team is proud to enable AI breakthroughs and strives for peak GPU efficiency.

What makes a candidate stand out for this role?

Candidates stand out with experience tuning BLAS or deep learning library kernel code, CUDA/OpenCL GPU programming, knowledge of numerical methods and linear algebra, or experience with LLVM, TVM tensor expressions, or TensorFlow MLIR.

NVIDIA

Designs GPUs and AI computing solutions

About NVIDIA

NVIDIA designs and manufactures graphics processing units (GPUs) and system on a chip units (SoCs) for various markets, including gaming, professional visualization, data centers, and automotive. Their products include GPUs tailored for gaming and professional use, as well as platforms for artificial intelligence (AI) and high-performance computing (HPC) that cater to developers, data scientists, and IT administrators. NVIDIA generates revenue through the sale of hardware, software solutions, and cloud-based services, such as NVIDIA CloudXR and NGC, which enhance experiences in AI, machine learning, and computer vision. What sets NVIDIA apart from competitors is its strong focus on research and development, allowing it to maintain a leadership position in a competitive market. The company's goal is to drive innovation and provide advanced solutions that meet the needs of a diverse clientele, including gamers, researchers, and enterprises.

Santa Clara, CaliforniaHeadquarters
1993Year Founded
$19.5MTotal Funding
IPOCompany Stage
Automotive & Transportation, Enterprise Software, AI & Machine Learning, GamingIndustries
10,001+Employees

Benefits

Company Equity
401(k) Company Match

Risks

Increased competition from AI startups like xAI could challenge NVIDIA's market position.
Serve Robotics' expansion may divert resources from NVIDIA's core GPU and AI businesses.
Integration of VinBrain may pose challenges and distract from NVIDIA's primary operations.

Differentiation

NVIDIA leads in AI and HPC solutions with cutting-edge GPU technology.
The company excels in diverse markets, including gaming, data centers, and autonomous vehicles.
NVIDIA's cloud services, like CloudXR, offer scalable solutions for AI and machine learning.

Upsides

Acquisition of VinBrain enhances NVIDIA's AI capabilities in the healthcare sector.
Investment in Nebius Group boosts NVIDIA's AI infrastructure and cloud platform offerings.
Serve Robotics' expansion, backed by NVIDIA, highlights growth in autonomous delivery services.

Land your dream remote job 3x faster with AI