At NVIDIA, we're not just building the future, we're generating it. Our Cosmos generative AI engineering team is pushing the boundaries of what’s possible across multimodal learning, video generation, synthetic data, intelligent simulation, and agentic systems. We are looking for exceptionally driven engineers and applied scientists with deep experience in generative modeling to help define the next era of AI computing.
What you'll be doing:
Design, post-train, and optimize foundation models (e.g., LLMs, diffusion video models, VLMs, VLAs) for real world applications.
Contribute to highly-collaborative development on large-scale training infrastructure, high-efficiency inference pipelines, and scalable data pipelines.
Work with teams in research, software, and product to bring world models from idea to deployment.
Collaborate on open-source and internal projects, author technical papers or patents, and mentor junior engineers.
Prototype and iterate rapidly on experiments across cutting-edge AI domains, including agentic systems, reinforcement learning, reasoning, and video generation.
Design and implement model distillation algorithms for size reduction and diffusion step optimization. Profile and benchmark training and inference pipelines to achieve production-ready performance requirements.
What we need to see:
We are looking for stellar experience building and deploying generative AI systems (minimum 8 years industry or 5+ years research/postdoc).
Proficiency in PyTorch, JAX, or other deep learning frameworks is a must!
We are working on a full range of foundation models. You should have expertise in one or more of: LLMs, coding agents, diffusion models, autoregressive models, VAE/GAN architectures, retrieval-augmented generation, neural rendering, or multi-agent systems.
Our models are predominantly built on the transformer architectures. You should be intimately familiar with all variants of the attention mechanisms.
Hands on experience with large scale training (e.g., ZeRO, DDP, FSDP, TP, CP) and data processing (e.g. Ray, Spark).
All we do is in Python and we open source our product, therefore production-quality software engineering skills is highly relevant.
MS or PhD or equivalent experience in Computer Science, Machine Learning, Applied Math, Physics, or a related field.
12+ years of relevant software development experience
Ways to stand out from the crowd:
Familiarity with high-performance computing and GPU acceleration.
Contributions to influential open-source libraries or influential conference publications (NeurIPS, ICML, CVPR, ICLR).
Experience working with multimodal data (e.g., vision-language, VLA, audio).
Prior work with NVIDIA GPU-based compute clusters or simulation environments.
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 on the planet working for us. If you're creative, passionate and self-motivated, we want to hear from you! NVIDIA is leading the way in groundbreaking developments in Artificial Intelligence, High-Performance Computing and Visualization. The GPU, our invention, serves as the visual cortex of modern computers and is at the heart of our products and services.
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 for Level 5, and 272,000 USD - 425,500 USD for Level 6.You will also be eligible for equity and benefits.
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