NVIDIA Logo

NVIDIA

Senior Software Engineer, DGX Cloud AI Infrastructure

Posted 2 Days Ago
Be an Early Applicant
In-Office or Remote
2 Locations
184K-357K Annually
Senior level
In-Office or Remote
2 Locations
184K-357K Annually
Senior level
Lead the optimization and performance analysis of distributed training and inference workloads on NVIDIA GPU platforms, with responsibilities including debugging, benchmarking, and ensuring reliability of large-scale AI systems.
The summary above was generated by AI

NVIDIA is at the forefront of the generative AI revolution, building the software and systems that power the world’s most advanced large language model workloads. We are looking for a Senior Software Engineer to lead the bring-up, triage, benchmarking, analysis, and optimization of distributed training and inference workloads across NVIDIA GPU platforms at the largest scales we run.

In this role you will set technical direction across communication libraries, model frameworks, and inference/training stacks to ensure state-of-the-art LLM workloads run efficiently and reliably at scale. You will lead deep performance and reliability investigations on multi-GPU and multi-node deployments, define how we benchmark and qualify new platforms, and build the resilience and failure-attribution capabilities that keep large clusters productive. This is a hands-on senior individual-contributor role for an engineer who operates at the intersection of deep learning systems, GPU performance, distributed computing, and large-scale operations — and who raises the bar for the engineers around them.

What you’ll be doing:

  • Lead bring-up, validation, and debugging of large-scale AI clusters, infrastructure, and end-to-end workloads, setting the standard for how the team operates.

  • Bring up, tune, and benchmark AI pre-training, post-training, and inference workloads using PyTorch, NeMo / Megatron, TensorRT-LLM, and adjacent NVIDIA AI software stacks.

  • Profile and optimize end-to-end workload performance across compute, memory, networking, and communication layers using tools such as Nsight Systems, NCCL tests, and custom microbenchmarks.

  • Analyze scaling efficiency for distributed LLM workloads using data, tensor, pipeline, and expert parallelism across modern GPU clusters, and translate findings into concrete tuning guidance.

  • Own root-cause analysis of complex failures — hangs, performance regressions, topology sensitivity  in large distributed environments.

  • Define and build the resilience and failure-attribution stack: detecting, triaging, and attributing node, fabric, and workload failures across the cluster at scale.

  • Build repeatable benchmark suites, automation, acceptance criteria, and qualification workflows on new platforms.

  • Tune runtime settings, communication parameters, and deployment configurations in close partnership with framework, systems, and platform teams.

  • Deliver actionable, data-driven recommendations based on profiling, benchmark results, and cluster characterization.

  • Mentor engineers, drive technical standards, and act as a force multiplier across the broader performance and infrastructure organization.

What we need to see:

  • Bachelor’s or Master’s in Computer Science or a related technical field (or equivalent experience).

  • 8+ years of experience developing software infrastructure for large-scale AI or HPC systems, including a track record of technical leadership.

  • Expertise debugging and triaging AI applications across the full stack — from the application layer down to the hardware.

  • Deep hands-on experience with NCCL, CUDA-aware distributed execution, and debugging multi-GPU and multi-node workloads at scale.

  • Proven track record of architecting, debugging, and scaling large-scale distributed systems.

  • Expert-level Python and C/C++ programming skills.

  • Experience operating workloads in scheduled, containerized cluster environments.

  • Excellent analytical, debugging, and communication skills, with the ability to influence across teams.

Ways to stand out from the crowd:

  • Demonstrated experience debugging and optimizing AI workloads at large scale.

  • Deep familiarity with the RDMA software stack (NCCL, IB verbs, UCX, libfabric).

  • Strong knowledge of GPU cluster fabrics and topology, including NVLink, NVSwitch, PCIe, RoCE, and InfiniBand.

  • Experience building acceptance tests, benchmark harnesses, regression gates, or cluster qualification tooling for AI platforms.

  • Experience building resilience, fault-detection, or failure-attribution systems for datacenter-scale infrastructure.

NVIDIA is widely considered to be one of the technology world’s most desirable employers. We have some of the most forward-thinking and hardworking people in the world working for us. If you’re creative, autonomous, and love a challenge, we want to hear from you.

Your base salary will be determined based on your location, experience, and the pay of employees in similar positions. The base salary range is 184,000 USD - 287,500 USD for Level 4, and 224,000 USD - 356,500 USD for Level 5.

You will also be eligible for equity and benefits.

Applications for this job will be accepted at least until June 8, 2026.

This posting is for an existing vacancy. 

NVIDIA uses AI tools in its recruiting processes.

NVIDIA is committed to fostering an inclusive 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.

Similar Jobs

8 Days Ago
In-Office or Remote
2 Locations
184K-357K Annually
Senior level
184K-357K Annually
Senior level
Artificial Intelligence • Computer Vision • Hardware • Robotics • Metaverse
The role involves developing and optimizing AI infrastructure for large-scale training and inference, ensuring system reliability and efficiency through software engineering practices.
Top Skills: C/C++ElkIb VerbsJaxLibfabricsLokiNcclPrometheusPythonPyTorchRdmaTensorFlowUcx
4 Minutes Ago
Remote or Hybrid
Chicago, IL, USA
77K-202K Annually
Senior level
77K-202K Annually
Senior level
Artificial Intelligence • Professional Services • Business Intelligence • Consulting • Cybersecurity • Generative AI
Design, build, and deploy scalable AI and GenAI solutions by wrangling data, developing ML models, and maintaining data infrastructure. Collaborate with clients, perform complex analyses, apply NLP and deep learning techniques, and mentor junior team members to deliver production-ready AI systems.
Top Skills: AWSC++DatabricksGCPAzureNatural Language ProcessingNeural NetworksPythonReinforcement LearningScikit-LearnSnowflakeTensorFlow
4 Minutes Ago
Remote or Hybrid
Chicago, IL, USA
99K-232K Annually
Senior level
99K-232K Annually
Senior level
Artificial Intelligence • Professional Services • Business Intelligence • Consulting • Cybersecurity • Generative AI
Lead design and delivery of AI/GenAI solutions: build and deploy scalable ML models, manage data pipelines and infrastructure, mentor teams, ensure data quality and compliance, and collaborate with stakeholders to drive AI-driven business outcomes.
Top Skills: AWSDatabricksDeep LearningGCPJavaMachine Learning LibrariesAzureNatural Language ProcessingNeural NetworksPythonSnowflake

What you need to know about the Chicago Tech Scene

With vibrant neighborhoods, great food and more affordable housing than either coast, Chicago might be the most liveable major tech hub. It is the birthplace of modern commodities and futures trading, a national hub for logistics and commerce, and home to the American Medical Association and the American Bar Association. This diverse blend of industry influences has helped Chicago emerge as a major player in verticals like fintech, biotechnology, legal tech, e-commerce and logistics technology. It’s also a major hiring center for tech companies on both coasts.

Key Facts About Chicago Tech

  • Number of Tech Workers: 245,800; 5.2% of overall workforce (2024 CompTIA survey)
  • Major Tech Employers: McDonald’s, John Deere, Boeing, Morningstar
  • Key Industries: Artificial intelligence, biotechnology, fintech, software, logistics technology
  • Funding Landscape: $2.5 billion in venture capital funding in 2024 (Pitchbook)
  • Notable Investors: Pritzker Group Venture Capital, Arch Venture Partners, MATH Venture Partners, Jump Capital, Hyde Park Venture Partners
  • Research Centers and Universities: Northwestern University, University of Chicago, University of Illinois Urbana-Champaign, Illinois Institute of Technology, Argonne National Laboratory, Fermi National Accelerator Laboratory

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account