MarkTechPost@AI 03月25日 12:05
This AI Paper from NVIDIA Introduces Cosmos-Reason1: A Multimodal Model for Physical Common Sense and Embodied Reasoning
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

NVIDIA的研究团队发布了Cosmos-Reason1,一款专为物理环境推理设计的视觉语言模型。该模型通过结合视觉和语言信息,增强了AI在空间关系、因果关系和时间推移等方面的理解能力,从而提高了其在机器人、自动驾驶等领域的应用潜力。Cosmos-Reason1采用了分层训练方法,包括预训练、监督微调和强化学习,并在多个基准测试中展现出优异性能,超越了现有模型。这项研究为构建更智能、更可靠的物理世界AI系统提供了新的思路。

💡 物理AI的核心挑战在于整合视觉和上下文信息进行推理。现有模型在处理时间顺序、空间连续性等方面表现不佳,导致在复杂场景下的决策不可靠。

🚀 NVIDIA的Cosmos-Reason1模型应运而生,该模型家族包含80亿和560亿参数两种版本,专门设计用于推理物理环境。

🛠️ Cosmos-Reason1采用混合Mamba-MLP-Transformer架构,通过定义物理常识本体、构建专业训练数据和设计全面的评估基准,实现了对物理世界更深入的理解。

📈 该模型通过多阶段训练,包括预训练、监督微调和强化学习,显著提升了在物理常识和具身推理任务中的表现,在多个基准测试中超越了现有模型,例如在物理常识基准测试中,Cosmos-Reason1-56B平均准确率达到60.2%。

🎯 研究表明,结构化微调和强化学习能够构建更符合现实世界物理逻辑和智能体行为的AI系统,为推动物理AI的发展提供了新思路。

Artificial intelligence systems designed for physical settings require more than just perceptual abilities—they must also reason about objects, actions, and consequences in dynamic, real-world environments. These systems must understand spatial arrangements, cause-and-effect relationships, and the progression of events over time. In applications like robotics, self-driving vehicles, or assistive technologies, AI must comprehend its surroundings’ physical constraints and affordances to make intelligent and safe decisions. This fusion of perception with structured reasoning about physical dynamics forms the backbone of Physical AI.

A core issue for such systems is their inability to conclude physical environments using integrated visual and contextual information. Although vision-language models have made significant progress, they still struggle to determine whether a task has been completed, what action should follow next, or whether a proposed action is feasible. The gap between perception and decision-making becomes especially critical when AI needs to operate independently and interpret tasks from complex visual scenarios. These systems remain unreliable in high-stakes or fast-changing environments without mechanisms to verify their reasoning.

Existing models such as LLaVA, GPT-4o, and Gemini 2.0 Flash are proficient in handling text and visual data but underperform physically grounded reasoning. Tasks like identifying temporal order, spatial continuity, or object permanence are rarely handled effectively. Popular benchmarks often fail to evaluate such scenarios, offering limited insight into a model’s ability to reason about physical events or agent actions. Moreover, current systems usually rely on textual cues rather than making decisions based on visual evidence, leading to inconsistent or incorrect conclusions when applied to the physical world.

Researchers from NVIDIA introduced Cosmos-Reason1, a family of vision-language models developed specifically for reasoning about physical environments. These models were released in two sizes: 8 billion and 56 billion parameters. The models were built with a structured approach that included defining ontologies for physical common sense, constructing specialized training data, and designing a comprehensive suite of evaluation benchmarks. These benchmarks test capabilities such as action prediction, task verification, and judgment of physical feasibility. The research team developed datasets including BridgeData V2, RoboVQA, RoboFail, AgiBot, HoloAssist, and AV to rigorously evaluate the models.

Cosmos-Reason1 uses a hybrid Mamba-MLP-Transformer architecture that integrates both vision and language components. The training process was conducted in multiple phases. Initially, a vision encoder and language model were pretrained and fine-tuned using general supervised data. Then, a physical AI-specific supervised fine-tuning (SFT) phase introduced datasets focused on space, time, and object interactions. The final reinforcement learning (RL) phase applied rule-based rewards to improve performance in areas like arrow of time detection, spatial puzzles, and object permanence. The RL setup used a modular framework that leveraged distributed computing to scale training efficiently. The model responses were structured using tags, allowing reward systems to evaluate both correctness and reasoning structure. Each question had up to nine model-generated responses, and RL training continued for 500 iterations using a global batch size of 128 questions.

Evaluation of Cosmos-Reason1 showed a substantial performance increase compared to other models. In the physical common sense benchmark, Cosmos-Reason1-56B achieved an average accuracy of 60.2%, outperforming OpenAI o1, which scored 59.9%. The 8B variant also improved, reaching 52.3%. Cosmos-Reason1-56B scored an average of 63.7% for embodied reasoning tasks, up from a 53.5% baseline. Benchmarks like RoboVQA and HoloAssist showed strong gains, with the 56B model scoring 80.0% and 57.8%, respectively. Cosmos-Reason1-8B improved to 68.7% on intuitive physics tasks, showing strong gains in object permanence and spatial puzzle reasoning. However, the model faced challenges on datasets like RoboFail due to a lack of sufficiently diverse training examples.

In conclusion, this research introduces a targeted and layered strategy to advance AI systems that reason about physical interactions. The researchers at NVIDIA created a scalable training method combined with a comprehensive evaluation to tackle long-standing gaps in embodied reasoning. Cosmos-Reason1 demonstrates how structured fine-tuning and reinforcement learning can build AI systems more aligned with real-world physical logic and agent behavior.


Check out the Paper and GitHub Page. All credit for this research goes to the researchers of this project. Also, feel free to follow us on Twitter and don’t forget to join our 85k+ ML SubReddit.

The post This AI Paper from NVIDIA Introduces Cosmos-Reason1: A Multimodal Model for Physical Common Sense and Embodied Reasoning appeared first on MarkTechPost.

Fish AI Reader

Fish AI Reader

AI辅助创作,多种专业模板,深度分析,高质量内容生成。从观点提取到深度思考,FishAI为您提供全方位的创作支持。新版本引入自定义参数,让您的创作更加个性化和精准。

FishAI

FishAI

鱼阅,AI 时代的下一个智能信息助手,助你摆脱信息焦虑

联系邮箱 441953276@qq.com

相关标签

Cosmos-Reason1 物理AI NVIDIA 具身推理 视觉语言模型
相关文章