Vyoma GmbH

Provides space traffic management (STM) and domain awareness services: satellite-based/on-demand tracking sensors, conjunction assessment, collision avoidance automation; SaaS platform for operators (real-time insights, maneuver optimization, risk mitigation); supports constellation management, safe operations in congested orbits; partners with ESA for SSA enhancements.

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Vyoma GmbH
RobotToday Initiative

Robotics needs a service framework.

RSF defines a common language for robot service capability, lifecycle operations, certification pathways, and service-provider networks.

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The Rise of Force Sensing Technology in China's Robotics Industry

The Rise of Force Sensing Technology in China's Robotics Industry

Recent trends in the robotics industry indicate a shift from mere mobility to operational intelligence, particularly in humanoid robots. Companies are now focusing on practical applications such as tool handling and assembly, highlighting the importance of force sensing technology. As robots engage in physical tasks, understanding the force exerted becomes crucial for effective operation. This transition underscores the growing significance of six-dimensional force sensors, which are evolving from optional components in industrial robots to essential infrastructure for next-generation intelligent robots. The recent funding rounds exceeding 100 million yuan reflect a broader interest from both traditional investors and state-owned enterprises, signaling a pivotal moment in the industry's development. Looking ahead, the demand for comprehensive sensing, control, and manufacturing infrastructure will likely increase as the humanoid robotics sector matures. The complexity of enabling robots to perform sustained tasks, such as assembly and material handling, will challenge developers to innovate beyond flashy capabilities and focus on the intricate details that drive commercialization.

Humanoid Robots Force Sensing Technology Industrial Automation Robotics Innovation
MoSense Secures Angel Funding for Comprehensive Robotic Tactile System Development

MoSense Secures Angel Funding for Comprehensive Robotic Tactile System Development

MoSense, a company specializing in multimodal tactile solutions for robotics, has successfully completed an angel funding round worth several million yuan. Investors include Sequoia China, Hillhouse Capital, and Zhiyuan Robotics. The funds will primarily accelerate research and development, team expansion, computational power investment, and production testing system establishment. Founded in May 2026 and headquartered in Shanghai, with a research center in Shenzhen, MoSense focuses on developing a comprehensive multimodal tactile perception system for robots. The company aims to enhance robots' environmental perception capabilities, which are crucial for their deployment in complex real-world scenarios such as industrial manufacturing and logistics. Looking ahead, MoSense plans to commercialize its multimodal tactile solutions across various industries beyond humanoid robotics. The company is developing a tactile feedback system that integrates multiple sensory modalities, which is essential for improving robots' interaction with their environments. No further timeline was disclosed at the time of publication.

Exotec's Managing Director Discusses Key Warehouse Automation Trends for 2026

Exotec's Managing Director Discusses Key Warehouse Automation Trends for 2026

Thomas Genestar, managing director of western Europe at Exotec, emphasizes the necessity of automation and AI in logistics due to the e-commerce boom. He identifies resilience, reliability, and operational continuity as critical pillars influencing supply chain strategies for 2026 and beyond. Genestar highlights the growing adoption of Goods-to-Person (G2P) solutions, which enhance warehouse efficiency by delivering items directly to operators. This innovation reduces unnecessary movement, increases task consistency, and minimizes physical strain on workers, addressing the significant costs associated with non-automated warehouses. Additionally, he notes the shift from traditional forecasting to AI/ML models that allow for dynamic demand sensing, enabling organizations to better align production with demand. This evolution supports more sustainable and resilient supply chain practices, including improved reverse logistics inspired by e-commerce return models. No further timeline was disclosed at the time of publication.

Features Logistics ai automation circular logistics demand sensing
Robbyant Launches Upgraded LingBot-VLA 2.0 AI Model for Advanced Robotics

Robbyant Launches Upgraded LingBot-VLA 2.0 AI Model for Advanced Robotics

Robbyant, a company specializing in embodied AI under Ant Group, has unveiled the upgraded LingBot-VLA 2.0 model. This next-generation vision-language-action model enhances morphological generalization, degrees of freedom support, and deployment efficiency, addressing a critical gap in the embodied AI industry. The significance of LingBot-VLA 2.0 lies in its extensive pre-training on 60,000 hours of real-world data, which includes interactions from 20 different robot morphologies. This upgrade allows for improved whole-body control and dual-arm manipulation, achieving leading scores on benchmarks, thus demonstrating its effectiveness in industrial-scale deployment. Looking ahead, the introduction of a version optimized for efficient post-training and a threefold increase in inference efficiency positions LingBot-VLA 2.0 as a strong contender for real-time commercial applications. No further timeline was disclosed at the time of publication.

Computing Robot simulation artificial intelligence dual-arm robots embodied ai humanoid robots
Noetra Initiates Development of Japan's Multimodal AI Foundation Model for Robotics

Noetra Initiates Development of Japan's Multimodal AI Foundation Model for Robotics

Noetra, in collaboration with key partners including Sony, SoftBank, NEC, and Honda Motor, has launched extensive R&D for a multimodal foundation model aimed at enhancing AI-enabled robotics in Japan. This initiative is part of a broader effort to develop sovereign AI technologies within the country, supported by investments from 44 companies across various sectors, primarily manufacturing. The significance of this development lies in its potential to position Japan as a leader in physical AI. By creating a robust multimodal foundation model, Noetra aims to improve industrial competitiveness and address societal challenges through advanced AI capabilities, including natural language processing and multimodal data understanding. Looking ahead, Noetra plans to construct AI computing infrastructure with Nvidia's advanced GPUs, with operations expected to commence in June 2028. The phased development will culminate in a comprehensive omni-modal foundation model by fiscal 2028, ultimately striving for a “Real-world Native AI” by fiscal 2030, which will be capable of understanding physical properties in real-world applications.

Artificial Intelligence News Robot simulation ai agents AI infrastructure artificial intelligence
WeRide Launches WITT: A Physical AI Foundation Model for Multimodal Scene Understanding

WeRide Launches WITT: A Physical AI Foundation Model for Multimodal Scene Understanding

WeRide has introduced WITT, a groundbreaking physical AI foundation model designed to enhance multimodal scene understanding. This model utilizes minimal physical fact units, which are crucial for applications in autonomous driving and robotics. The launch of WITT is significant as it aims to streamline the integration of various data types, improving the efficiency and effectiveness of AI systems in interpreting complex environments. This advancement could lead to more reliable autonomous systems that can better navigate real-world scenarios. Looking ahead, the implications of WITT's capabilities in the fields of autonomous driving and robotics will be closely monitored. No further timeline was disclosed at the time of publication.

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Qianjue Robotics Launches X-TouchMind V1 and TacVerse 1k for Enhanced Robot Interaction

Qianjue Robotics Launches X-TouchMind V1 and TacVerse 1k for Enhanced Robot Interaction

On July 16, Qianjue Robotics unveiled its first embodied tactile model, X-TouchMind V1, alongside the TacVerse 1k multimodal dataset. This development addresses the limitations of traditional visual models in robotic operations, particularly in precision assembly and handling delicate objects, where failures often occur after contact. The new model integrates visual, linguistic, tactile, and robotic state data to enhance physical interaction capabilities. The significance of this release lies in Qianjue's comprehensive approach, which encompasses tactile perception hardware, self-developed multimodal data collection devices, and the new tactile model. Unlike previous attempts that merely supplemented tactile signals to visual data, the VTLA embodied tactile model establishes a closed-loop system that fundamentally redefines the perception boundaries of robotic models. This innovation allows robots to understand and respond to physical interactions more effectively. Looking ahead, Qianjue Robotics will demonstrate the capabilities of the VTLA model at the WAIC 2026 exhibition, showcasing real-world applications such as autonomous box stacking and precise assembly of headphones. The focus will be on how the model can dynamically adjust actions based on tactile feedback, marking a significant advancement in robotic interaction technology. No further timeline was disclosed at the time of publication.

Tactile Intelligence Robotic Interaction Precision Assembly Multimodal Data AI Robotics
AI Agent Autonomy's Impact on Robotics Safety and Control Mechanisms

AI Agent Autonomy's Impact on Robotics Safety and Control Mechanisms

Robotic systems are increasingly capable of perceiving, choosing, and altering their behavior autonomously, without human intervention. This shift towards autonomy enhances adaptability in various environments such as warehouses and labs, but it also raises significant concerns regarding safety and control. Traditional safety measures, including physical barriers and emergency buttons, may no longer suffice as robots undertake more complex tasks. The implications of this autonomy are profound, as organizations must now assess the quality of decisions made by autonomous systems, the reliability of their software, and the protocols for monitoring their actions. Unlike conventional robots that follow fixed commands, autonomous robots can evaluate multiple scenarios and make decisions based on real-time conditions, which complicates safety protocols. Ensuring that these systems operate safely requires a reevaluation of existing safety standards that focus on speed and force. Looking ahead, it is crucial for operators to have adequate information to respond effectively to unexpected robot behavior. Autonomous robots utilize various sensors to interpret their environment, but factors like dust and poor lighting can affect input quality. Organizations should prioritize the definition and testing of triggers for human intervention to maintain a balance between autonomy and safety. No further timeline was disclosed at the time of publication.

AI agents Infrastructure AI agent autonomy ai agents ai safety automation
The Rise of Enterprise AI Agents: Is Your Infrastructure Prepared for the Shift?

The Rise of Enterprise AI Agents: Is Your Infrastructure Prepared for the Shift?

Enterprise AI agents are transitioning from laboratory environments to corporate systems, enabling them to track workflows, generate reports, and make decisions across various applications. This shift enhances operational speed and service quality but also places significant demands on existing technical infrastructures. The importance of robust AI agent infrastructure cannot be overstated, as it must accommodate fluctuating workloads, ensure secure access, and maintain data integrity. Without a solid foundation, AI agents may excel in pilot programs but struggle with reliability when integrated into live systems with larger datasets and user bases. Looking ahead, organizations must prioritize capacity planning guided by reporting and internal deadlines. As AI agents require organized and accurate data access to function effectively, businesses must establish clear rules for data retrieval and management. No further timeline was disclosed at the time of publication.

AI agents Infrastructure agentic ai ai agents AI infrastructure API integration
Benchmarking Your Development System for Effective Robotics Simulations

Benchmarking Your Development System for Effective Robotics Simulations

The development of robotics begins long before physical assembly, relying heavily on simulations to validate designs and refine algorithms. These simulations demand significant computational resources, making system benchmarking crucial to identify hardware limitations early in the process. By measuring workstation performance under demanding workloads, engineers can establish a performance baseline that aids in spotting potential bottlenecks. Understanding how different hardware components affect simulation performance is essential for robotics development. Whether using macOS, Windows, or Linux, benchmarking helps determine if slowdowns are due to software changes or hardware limitations. Key components such as the processor, graphics card, memory, and storage play varying roles in performance, and the weakest link can dictate the overall experience. As robotics projects grow in complexity, the need for robust hardware becomes increasingly important. Engineers should focus on comprehensive benchmarking to ensure their systems can handle the demands of their simulations. No further timeline was disclosed at the time of publication.

Components Robot simulation ABB RobotStudio automation cpu delmia