We're sunsetting PodQuest on 2025-07-28. Thank you for your support!
Export Podcast Subscriptions
cover of episode NVIDIA’s Ming-Yu Liu on How World Foundation Models Will Advance Physical AI - Episode 240

NVIDIA’s Ming-Yu Liu on How World Foundation Models Will Advance Physical AI - Episode 240

2025/1/7
logo of podcast The AI Podcast

The AI Podcast

AI Deep Dive AI Insights AI Chapters Transcript
People
M
Mingyu Liu
Topics
Mingyu Liu: 世界基础模型是基于深度学习的时空视觉模拟器,能够模拟未来,预测人们的意图和活动,帮助我们做出更好的决策。它可以根据文本、图像、视频和动作提示生成虚拟世界,并针对不同的物理AI设置进行定制。世界模型与大型语言模型(LLM)不同,LLM专注于生成文本描述,而世界模型专注于生成模拟,最常见的形式是视频。 世界基础模型对于物理AI开发者至关重要,因为物理AI系统与环境交互并可能造成实际损害。世界模型可以用于训练物理AI系统的验证,通过在模拟中测试不同的检查点,减少在真实环境中部署的风险和时间成本。它还可以预测未来,帮助理解实现目标所需的行动,从而改进策略模型的训练,并在决策前提供“数据交换”。 目前世界模型的准确性评估仍处于早期阶段,需要考虑物理定律、物体持久性等多个方面。研究界需要制定合适的基准来推动该领域的发展。 NVIDIA Cosmos是一个面向开发者的世界模型开发平台,提供预训练的世界基础模型(基于扩散模型和自回归模型)、分词器和微调脚本等工具,旨在帮助物理AI开发者更容易地构建和使用世界模型。扩散模型生成质量更好,自回归模型速度更快,两者各有优缺点,适用于不同的需求。 世界基础模型可以用于生成合成数据、评估策略以及在决策前提供“数据交换”,从而改进物理AI系统。自动驾驶汽车和人形机器人行业将从世界模型的发展中获益最多。NVIDIA与多家公司合作开发世界基础模型,通过与合作伙伴合作,了解他们的挑战,从而构建更有益于他们的世界模型平台。 世界基础模型技术仍处于早期阶段,未来需要改进物理模拟的准确性和鲁棒性,并研究如何更好地将世界模型集成到物理AI系统中。 Noah Kravitz: 作为主持人,Noah Kravitz主要负责引导访谈,提出问题,并对Mingyu Liu的回答进行总结和引导,推动访谈的进行。他并没有提出自己的观点,而是通过提问来帮助听众更好地理解世界基础模型的概念、应用和未来发展。

Deep Dive

Key Insights

What is a World Foundation Model and how does it function?

A World Foundation Model is a deep learning-based space-time visual simulator that predicts future scenarios by simulating environments, human intentions, and activities. It acts as a data exchange for AI, enabling the generation of virtual worlds based on text, image, video, or action prompts. These models are customizable for different physical AI setups, such as varying camera configurations, to simulate and predict outcomes in real-world environments.

How does a World Foundation Model differ from a Large Language Model (LLM) or a generative AI video model?

A World Foundation Model differs from an LLM, which generates text descriptions, by focusing on simulating environments and generating videos. While video foundation models create videos for various use cases, World Foundation Models specifically generate simulations based on current observations and actor intentions, predicting future scenarios. They emphasize physics-based accuracy and object permanence in 3D environments.

Why are World Foundation Models important for physical AI development?

World Foundation Models are crucial for physical AI developers because they enable simulation-based training and verification of AI systems before real-world deployment. This reduces the risk of physical harm or damage caused by AI systems interacting with the environment. They also help in policy evaluation, synthetic data generation, and predicting future actions, making physical AI deployment safer and more efficient.

What are the key use cases for World Foundation Models in physical AI?

The key use cases include: 1) Simulating and verifying AI policies before real-world deployment to avoid damage, 2) Predicting future scenarios to guide AI actions, and 3) Serving as a policy initialization tool, reducing the amount of training data required. These models act as a 'data exchange' for decision-making, enabling AI systems to simulate outcomes and choose optimal actions.

What is NVIDIA Cosmos, and how does it support World Foundation Model development?

NVIDIA Cosmos is a developer-first platform for World Foundation Models, announced at CES. It includes pre-trained models (diffusion and autoregressive), tokenizers for video compression, post-training scripts for fine-tuning, and a video curation toolkit. The platform is open-weight, allowing developers to customize models for specific physical AI setups, such as self-driving cars or robotics, and accelerate development in the field.

What industries are expected to benefit most from World Foundation Models?

The self-driving car and humanoid robot industries are expected to benefit significantly from World Foundation Models. These models enable simulation of complex environments that are difficult to replicate in the real world, ensuring AI agents behave effectively. NVIDIA is already collaborating with companies like 1X, Wabi, D'Auto, and S10 to integrate these models into their systems.

What challenges remain in the development of World Foundation Models?

World Foundation Models are still in their infancy, with challenges in achieving robust and accurate physics-based simulations. Current models can simulate physics to some extent but lack the robustness needed for widespread application. The research community is working on establishing benchmarks to measure performance and improve the integration of these models into physical AI systems.

What is the difference between diffusion models and autoregressive models in World Foundation Models?

Autoregressive models predict tokens one at a time, making them faster due to optimizations like those in GPT. Diffusion models predict a set of tokens together, iteratively removing noise, which results in higher coherence and generation quality. Both are useful for physical AI: autoregressive models for speed and diffusion models for accuracy. NVIDIA Cosmos offers both to cater to different developer needs.

Shownotes Transcript

As AI continues to evolve rapidly, it is becoming more important to create models that can effectively simulate and predict outcomes in real-world environments. World foundation models are powerful neural networks that can simulate physical environments, enabling teams to enhance AI workflows and development. Ming-Yu Liu, vice president of research at NVIDIA and an IEEE Fellow, joined the NVIDIA AI Podcast to talk about world foundation models and how it will impact various industries. https://blogs.nvidia.com/blog/world-foundation-models-advance-physical-ai/ https://www.nvidia.com/cosmos/