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Nvidia Deep Learning Architect Physical AI 
China, Beijing, Beijing 
322184881

Today
China, Beijing
China, Shanghai
time type
Full time
posted on
Posted 3 Days Ago
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As a deep learning architect focused on generative models for Physical AI, you'll be at the forefront of developing next-generation algorithms that bridge the gap between virtual and physical realms. You'll highly collaborate with COSMOS research team, work with state-of-the-art technology and have access to massive computational resources to bring your ideas to life.

What you'll be doing:

  • Pioneer revolutionary generative AI algorithms for physical AI applications, with a focus on advanced video generative models and video-language models

  • Architect and implement sophisticated data processing pipelines that produce premium-quality training data for Generative AI and Physical AI systems

  • Design and develop cutting-edge physics simulation algorithms that enhance Physical AI training

  • Scale and optimize large-scale training systems to efficiently harness the power of 20,000+ GPUs for training foundation models

  • Author influential research papers to share your groundbreaking discoveries with the global AI community

  • Drive innovation through close collaboration with research teams, diverse internal product groups, and external researchers

  • Build lasting impact by facilitating technology transfer and contributing to open-source initiatives

What we need to see:

  • PhD in Computer Science, Computer Engineering, Electrical Engineering, or related field.

  • 3+ years of experience.

  • Deep expertise in PyTorch and related libraries for Generative AI and Physical AI development

  • Strong foundation in diffusion models and their applications

  • Strong foundation in vision language models and their applications

  • Strong foundation in reasoning models and their applications.

  • Proven experience with reinforcement learning algorithms and implementations

  • Robust knowledge of physics simulation and its integration with AI systems

  • Demonstrated proficiency in 3D generative models and their applications

Ways to stand out from the crowd:

  • Publications or contributions to major AI conferences (ICLR, NeurIPS, ICML, CVPR, ECCV, SIGGRAPH, ICCV, etc.)

  • Experience with large-scale distributed training systems

  • Background in robotics or physical systems

  • Open-source contributions to prominent AI projects

  • History of successful research-to-product transitions