NVIDIA Corporation

Senior Deep Learning Engineer - Autonomous Vehicles

NVIDIA Corporation$224K — $356K *
Consumer Technology
11 - 15 years of experience
Job Overview by Ladders

Qualifications

  • BS, MS, or PhD in Computer Science, Electrical/Computer Engineering, or equivalent experience
  • 12+ years in building high-performance distributed systems, preferably in ML or HPC
  • Extensive experience with deep learning frameworks, particularly PyTorch
  • Strong knowledge of datacenter networking and parallel filesystems
  • Proficiency in Python and C++, with production-level library experience

Responsibilities

  • Craft deep learning infrastructure libraries and frameworks for GPU clusters
  • Improve efficiency of the entire training stack, including data loaders and scheduling
  • Build training pipelines for handling massive video datasets
  • Collaborate with cross-functional teams to enhance system efficiency
  • Own core infrastructure components like orchestration libraries and distributed training frameworks

Benefits

  • Eligible for equity and benefits
  • Opportunity to work on cutting-edge autonomous vehicle technology
  • Collaborative work environment with research and platform teams
  • Focus on innovative, impactful projects in deep learning
  • Access to advanced GPU resources for development
Full Job Description
We are in search of a Senior Deep Learning Systems Engineer to propel NVIDIA's Autonomous Vehicles project forward. In this role, you will build and scale training libraries and infrastructure that make end-to-end autonomous driving models possible. By enabling training on thousands of GPUs and massive datasets, you will accelerate iteration speed and improve safety, working closely with research and platform teams across NVIDIA. What you'll be doing: • Crafting, scaling, and hardening deep learning infrastructure libraries and frameworks for training on multi-thousand GPU clusters. • Improving efficiency throughout the training stack: data loaders, distributed training, scheduling, and performance monitoring. • Building robust training pipelines and libraries to handle massive video datasets and enable rapid experimentation. • Collaborating with researchers, model engineers, and internal platform teams to enhance efficiency, minimize stalls, and improve training availability. • Owning core infrastructure components such as orchestration libraries, distributed training frameworks, and fault-resilient training systems. • Partnering with leadership to ensure infrastructure scales with growing GPU capacity and dataset size while maintaining developer efficiency and stability. What we need to see: • BS, MS, or PhD in Computer Science, Electrical/Computer Engineering, or a related field, or equivalent experience. • 12+ years of professional experience building and scaling high-performance distributed systems, ideally in ML, HPC, or large-scale data infrastructure. • Extensive knowledge in deep learning frameworks (PyTorch is preferred), large scale training (DDP/FSDP, NCCL, tensor/pipeline parallelism), and performance profiling. • Strong systems background: datacenter networking (RoCE, IB), parallel filesystems (Lustre), storage systems, schedulers (Slurm, Kubernetes, etc.). • Proficiency in Python and C++, with experience writing production-grade libraries, orchestration layers, and automation tools. • Ability to work closely with multi-functional teams (ML researchers, infra engineers, product leads) and translate requirements into robust systems. Ways to stand out from the crowd: • Shown experience scaling large GPU training clusters with >1,000 GPUs. • Contributions to open-source ML systems libraries (e.g., PyTorch, NCCL, FSDP, schedulers, storage clients). • Expertise in fault resilience and high availability, including elastic training and large-scale observability. • Tried leadership skills as a hands-on technical authority, encouraging others and establishing guidelines for ML systems engineering. • Familiarity with reinforcement learning (RL) at scale, particularly in the context of simulation-heavy workloads. Your base salary will be determined based on your location, experience, and the pay of employees in similar positions. The base salary range is 224,000 USD - 356,500 USD. You will also be eligible for equity and benefits. Applications for this job will be accepted at least until July 3, 2026. This posting is for an existing vacancy. NVIDIA uses AI tools in its recruiting processes. #deeplearning

About NVIDIA Corporation

Nvidia, a global leader in graphics, gaming, and AI technology, offers Nvidia careers and internship opportunities for those passionate about driving innovation in the tech industry. you'll find a company committed to growth, teamwork, and leadership in computer science and machine learning domains.

About Nvidia

A Pioneer in Technology and Innovation

Nvidia has cemented its reputation as a powerhouse in developing advanced graphics processing units (GPUs) and has significantly contributed to the gaming industry's evolution. Moreover, its foray into AI and machine learning has opened new frontiers in technology, making Nvidia a beacon of innovation and a desirable workplace for ambitious tech professionals.

Job Opportunities

Diverse Positions in a Dynamic Field

Nvidia is continuously on the lookout for talented individuals across various domains, including hardware and software engineering, product design, marketing, and sales. Employment opportunities at Nvidia are vast, catering to a wide range of expertise and career aspirations.

Employment in Hardware and Graphics

For those fascinated by the intricacies of hardware and graphics technology, Nvidia offers positions that sit at the forefront of gaming and computing advancements.

Growth in Machine Learning and AI

Nvidia's leadership in AI and machine learning has created numerous vacancies for specialists eager to contribute to groundbreaking projects.

Recruitment in Computer Science

With the constant demand for innovation, Nvidia's recruitment efforts focus on computer science experts capable of pushing the boundaries of what's possible.

Internship Program

Opening Doors to Future Innovators

Nvidia's internship program is designed to nurture the next generation of technology leaders, offering hands-on experience in a culture that celebrates creativity and teamwork.

Benefits and Culture

Interns at Nvidia enjoy a plethora of benefits, from competitive stipends to mentorship opportunities, all within an environment that values growth and learning.

Opportunities for Students

Whether you're an undergraduate, a master's student, or a Ph.D. candidate, Nvidia's internships provide a real-world glimpse into the tech industry, offering valuable experience in various technology fields.

Pathways to Full-Time Employment

Many interns have transitioned into full-time positions, marking the start of successful careers at Nvidia. The internship program is more than a stepping stone into the company; it’s an investment in the professional development of interns. The goal is to ensure that interns are well-equipped for future challenges.

Nvidia Careers: More Than Just a Job

Nvidia offers more than just a job to its employees; it provides a front-row seat on the journey into the future of technology. Nvidia stands as a pillar of innovation with its vast opportunities in hardware, graphics, gaming, machine learning, and computer science. Nvidia careers serve as a launching pad for talented workers who aim to redefine the technological landscape. Whether through full-time positions or internships, joining Nvidia means contributing to a legacy of breakthroughs and becoming part of a global community dedicated to pushing the boundaries of what's possible.
Learn more about NVIDIA Corporation
Size
22,473 employees
Market Cap
$350.4 billion
Industry
Net Income
$4.3 billion
Founded
1993
5 Year Trend
+31.3%
Revenue
$16.6 billion
NASDAQ

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