The post NVIDIA Jetson Thor Enhances Real-Time AI Capabilities in Robotics appeared on BitcoinEthereumNews.com. Jessie A Ellis Aug 25, 2025 12:02 NVIDIA unveils Jetson Thor, a powerful AI module for robotics, offering significant advancements in real-time reasoning and sensor processing, according to NVIDIA. The latest innovation in robotics and AI from NVIDIA, the Jetson Thor, is set to revolutionize real-time reasoning for robotic systems. Designed to meet the demands of millions of robotic developers, Jetson Thor delivers an impressive 2,070 FP4 teraflops, tackling complex applications such as agentic AI and high-speed sensor processing, according to NVIDIA. Advancements in AI Compute and Memory NVIDIA has announced that Jetson Thor provides a substantial leap in performance compared to its predecessor, the Jetson Orin. It offers 7.5 times more AI compute, 3.1 times more CPU performance, and double the memory, enabling the processing of high-speed sensor data and visual reasoning at the edge. This advancement is crucial for multimodal AI applications, including humanoid robotics. Industry Adoption and Applications Companies like Agility Robotics and Boston Dynamics are already integrating Jetson Thor into their systems. Agility Robotics plans to enhance its humanoid robot, Digit, with Jetson Thor, boosting its real-time perception and decision-making capabilities. Similarly, Boston Dynamics is incorporating Jetson Thor into its humanoid robot, Atlas, to leverage server-level compute capabilities directly on the device. Jetson Thor’s capabilities extend beyond humanoid robots, accelerating applications such as surgical assistants, delivery robots, and industrial manipulators. The platform supports real-time inference for larger, more complex AI models, making it a versatile tool in the robotics field. Support for Generative Reasoning Models Jetson Thor is optimized for generative reasoning models, enabling the next generation of physical AI agents to operate in real-time at the edge. It supports popular generative AI frameworks and reasoning models, including Cosmos Reason, DeepSeek, and Llama, among others. This optimization ensures… The post NVIDIA Jetson Thor Enhances Real-Time AI Capabilities in Robotics appeared on BitcoinEthereumNews.com. Jessie A Ellis Aug 25, 2025 12:02 NVIDIA unveils Jetson Thor, a powerful AI module for robotics, offering significant advancements in real-time reasoning and sensor processing, according to NVIDIA. The latest innovation in robotics and AI from NVIDIA, the Jetson Thor, is set to revolutionize real-time reasoning for robotic systems. Designed to meet the demands of millions of robotic developers, Jetson Thor delivers an impressive 2,070 FP4 teraflops, tackling complex applications such as agentic AI and high-speed sensor processing, according to NVIDIA. Advancements in AI Compute and Memory NVIDIA has announced that Jetson Thor provides a substantial leap in performance compared to its predecessor, the Jetson Orin. It offers 7.5 times more AI compute, 3.1 times more CPU performance, and double the memory, enabling the processing of high-speed sensor data and visual reasoning at the edge. This advancement is crucial for multimodal AI applications, including humanoid robotics. Industry Adoption and Applications Companies like Agility Robotics and Boston Dynamics are already integrating Jetson Thor into their systems. Agility Robotics plans to enhance its humanoid robot, Digit, with Jetson Thor, boosting its real-time perception and decision-making capabilities. Similarly, Boston Dynamics is incorporating Jetson Thor into its humanoid robot, Atlas, to leverage server-level compute capabilities directly on the device. Jetson Thor’s capabilities extend beyond humanoid robots, accelerating applications such as surgical assistants, delivery robots, and industrial manipulators. The platform supports real-time inference for larger, more complex AI models, making it a versatile tool in the robotics field. Support for Generative Reasoning Models Jetson Thor is optimized for generative reasoning models, enabling the next generation of physical AI agents to operate in real-time at the edge. It supports popular generative AI frameworks and reasoning models, including Cosmos Reason, DeepSeek, and Llama, among others. This optimization ensures…

NVIDIA Jetson Thor Enhances Real-Time AI Capabilities in Robotics

2025/08/26 12:27


Jessie A Ellis
Aug 25, 2025 12:02

NVIDIA unveils Jetson Thor, a powerful AI module for robotics, offering significant advancements in real-time reasoning and sensor processing, according to NVIDIA.





The latest innovation in robotics and AI from NVIDIA, the Jetson Thor, is set to revolutionize real-time reasoning for robotic systems. Designed to meet the demands of millions of robotic developers, Jetson Thor delivers an impressive 2,070 FP4 teraflops, tackling complex applications such as agentic AI and high-speed sensor processing, according to NVIDIA.

Advancements in AI Compute and Memory

NVIDIA has announced that Jetson Thor provides a substantial leap in performance compared to its predecessor, the Jetson Orin. It offers 7.5 times more AI compute, 3.1 times more CPU performance, and double the memory, enabling the processing of high-speed sensor data and visual reasoning at the edge. This advancement is crucial for multimodal AI applications, including humanoid robotics.

Industry Adoption and Applications

Companies like Agility Robotics and Boston Dynamics are already integrating Jetson Thor into their systems. Agility Robotics plans to enhance its humanoid robot, Digit, with Jetson Thor, boosting its real-time perception and decision-making capabilities. Similarly, Boston Dynamics is incorporating Jetson Thor into its humanoid robot, Atlas, to leverage server-level compute capabilities directly on the device.

Jetson Thor’s capabilities extend beyond humanoid robots, accelerating applications such as surgical assistants, delivery robots, and industrial manipulators. The platform supports real-time inference for larger, more complex AI models, making it a versatile tool in the robotics field.

Support for Generative Reasoning Models

Jetson Thor is optimized for generative reasoning models, enabling the next generation of physical AI agents to operate in real-time at the edge. It supports popular generative AI frameworks and reasoning models, including Cosmos Reason, DeepSeek, and Llama, among others. This optimization ensures low latency and high performance in real-world applications.

Research and Development Impact

Research institutions like Stanford University, Carnegie Mellon University, and the University of Zurich are utilizing Jetson Thor to advance perception, planning, and navigation models. At Carnegie Mellon, the Robotics Institute is using Jetson Thor to power autonomous robots for medical triage and search and rescue missions.

With the Jetson AGX Thor developer kit, researchers anticipate improvements in AI model performance and sensor-fusion capabilities, enhancing their ability to experiment with robot fleets and complex environments.

Product Availability and Ecosystem

The Jetson Thor family includes a developer kit and production modules, with the developer kit priced at $3,499. The modules are available starting at $2,999 for orders of 1,000 units. NVIDIA’s Jetson ecosystem supports a variety of application requirements, ensuring quick time-to-market for developers.

As NVIDIA continues to innovate in the field of robotics and AI, Jetson Thor stands out as a powerful tool for developers seeking to push the boundaries of real-time reasoning and AI applications in robotics.

Image source: Shutterstock


Source: https://blockchain.news/news/nvidia-jetson-thor-enhances-ai-capabilities-robotics

Sorumluluk Reddi: Bu sitede yeniden yayınlanan makaleler, halka açık platformlardan alınmıştır ve yalnızca bilgilendirme amaçlıdır. MEXC'nin görüşlerini yansıtmayabilir. Tüm hakları telif sahiplerine aittir. Herhangi bir içeriğin üçüncü taraf haklarını ihlal ettiğini düşünüyorsanız, kaldırılması için lütfen service@support.mexc.com ile iletişime geçin. MEXC, içeriğin doğruluğu, eksiksizliği veya güncelliği konusunda hiçbir garanti vermez ve sağlanan bilgilere dayalı olarak alınan herhangi bir eylemden sorumlu değildir. İçerik, finansal, yasal veya diğer profesyonel tavsiye niteliğinde değildir ve MEXC tarafından bir tavsiye veya onay olarak değerlendirilmemelidir.

Ayrıca Şunları da Beğenebilirsiniz

Ripple CEO Confirms Privacy as Next Stage for XRP’s Institutional Expansion

Ripple CEO Confirms Privacy as Next Stage for XRP’s Institutional Expansion

Ripple advances XRP privacy to attract major institutional blockchain adoption. Confidential transactions and smart contracts set to reshape XRP Ledger. New privacy features aim to balance compliance with institutional confidentiality. The XRP community witnessed a significant revelation after Ripple CEO Brad Garlinghouse confirmed that privacy will drive the next phase of XRP’s institutional adoption. According to Vet, the discussion between him and Garlinghouse centered on strengthening privacy within the XRP ecosystem. This development aligns with the broader goal of creating a compliant yet confidential environment for institutional transactions. Ripple has progressively built the XRP Ledger into a robust infrastructure for real-world use cases. It has introduced decentralized identifiers, on-chain credentials, and permissioned domains to ensure compliance and security. Moreover, the network now features multipurpose tokens that simplify tokenization while its native decentralized exchange merges AMM liquidity with a traditional order book. Despite these advancements, one crucial element remains—privacy. Also Read: Swift Exec Mocks XRP as “Fax Machine,” Sparks Furious Clash with Crypto Fans Developers and Ripple Leadership Target Privacy Layer for Institutional Use Developers and Ripple executives agree that privacy will complete the ecosystem’s institutional framework. The upcoming privacy layer includes functions under proposal XLS-66, allowing institutions to lend and borrow assets using tokenized collateral. This system leverages zero-knowledge proofs to conceal sensitive balance and transaction data while maintaining compliance visibility for regulators. Hence, institutions can protect competitive data without compromising transparency. Ripple’s Senior Director of Engineering, Ayo Akinyele, emphasized the scale of this transformation. He stated that trillions in institutional assets will likely transition on-chain over the next decade. To achieve this, his team is developing confidential multipurpose tokens scheduled for launch in the first quarter of 2026. These tokens will enable private collateral management and secure asset handling across financial platforms. Smart Contracts and Privacy Bridge to Institutional Era Smart escrows proposed under XLS-100 and upcoming smart contracts in XLS-101 are expected to support these privacy-driven functions. Together, they will form the foundation for private institutional transactions within the XRP Ledger. This strategic focus marks a defining step toward positioning XRP as a trusted infrastructure for large-scale financial institutions. As privacy becomes the bridge connecting compliance with confidentiality, Ripple’s roadmap signals its readiness to lead blockchain adoption in traditional finance. Also Read: Shiba Inu Approaches Critical Price Zone as Bulls and Bears Battle for Control The post Ripple CEO Confirms Privacy as Next Stage for XRP’s Institutional Expansion appeared first on 36Crypto.
Paylaş
Coinstats2025/10/05 22:14