HomeRoboticsShengShu Know-how launches Vidar multi-view bodily AI coaching mannequin

ShengShu Know-how launches Vidar multi-view bodily AI coaching mannequin


ShengShu Know-how launches Vidar multi-view bodily AI coaching mannequin

The Vidar embodied AI mannequin from ShengShu makes use of simulated worlds as a substitute of bodily coaching knowledge. Supply: Adobe Inventory, Vectorhub by ice

ShengShu Know-how Co. yesterday launched its multi-view bodily AI coaching mannequin, Vidar — which stands for for “video diffusion for motion reasoning.” Utilizing Vidu’s capabilities in semantic and video understanding, Vidar makes use of a restricted set of bodily knowledge to simulate a robotic’s decision-making in real-world environments, mentioned the corporate.

“Vidar affords a radically totally different method to coaching embodied AI fashions,” said ShengShu Know-how. “Simply as Tesla focuses on vision-based coaching and Waymo leans into lidar, the {industry} is exploring divergent paths to bodily AI.”

Based in March 2023, ShengShu Know-how specializes within the growth of multimodal giant language fashions (LLMs). The Beijing-based firm mentioned it delivers mobility-as-a-service (MaaS) and software-as-a-service (SaaS) merchandise for smarter, quicker, and extra scalable content material creation.

With its flagship video-generation platform Vidu, ShengShu mentioned it has reached customers in additional than 200 nations and areas all over the world, spanning fields together with interactive leisure, promoting, movie, animation, cultural tourism, and extra.

Vidar simulated coaching to speed up robotic growth

“Whereas some corporations prepare bodily AI by embedding fashions into real-world robots and gathering knowledge by way of the bodily interactions that their robots encounter, it’s a technique that’s expensive, hardware-dependent, and troublesome to scale,” mentioned ShengShu Know-how. “Others depend on purely simulated coaching, however this usually lacks the variability and edge-case knowledge wanted for real-world deployment.”

Vidar takes a unique method, the corporate claimed. It combines restricted bodily coaching knowledge with generative video to make predictions and generate new hypothetical situations, making a multi-view simulation that includes lifelike coaching environments, all inside a digital house. This enables for extra sturdy, scalable coaching with out the time, price, or limitations of physical-world knowledge assortment, defined ShengShu.

Constructed on prime of the Vidu generative video mannequin, Vidar can carry out dual-arm manipulation duties with multi-view video prediction and even reply to natural-language voice instructions after fine-tuning. The mannequin successfully serves as a digital mind for real-world motion, mentioned the corporate.

Utilizing Vidu’s generative video engine, Vidar generates large-scale simulations to cut back dependency on bodily knowledge, whereas sustaining the complexity and richness wanted to coach real-world-capable AI brokers. ShengShu mentioned Vidar can extrapolate a generalized sequence of robotic actions and duties from solely 20 minutes of coaching knowledge. The corporate asserted that’s between 1/80 and 1/1,200 of the information wanted to coach industry-leading fashions together with RDT and π0.5.

ShengShu mentioned Vidar’s core innovation lies in its modular two-stage studying structure. In contrast to conventional strategies that merge notion and management, Vidar decouples them into two distinct levels for larger flexibility and scalability.

Within the upstream stage, large-scale common video knowledge and moderate-scale embodied video knowledge are used to coach Vidu’s mannequin for perceptual understanding.

Within the second downstream stage, a task-agnostic mannequin referred to as AnyPos turns that visible understanding into actionable motor instructions for robots. This separation makes it considerably simpler and quicker to coach and deploy AI throughout several types of robots, whereas decreasing prices and growing scalability.

Vidar can reduce the amount of training data needed to train AI models, says ShengShu Technology.

Vidar is designed to cut back the quantity of coaching knowledge wanted to coach AI fashions. Supply: ShengShu Know-how.

Vidar a framework for scalable embodied intelligence

Vidar follows a scalable coaching framework impressed by language and picture basis fashions of the previous decade of AI breakthroughs. ShengShu mentioned its three-tiered knowledge pyramid, spanning large-scale generic video, embodied video knowledge, and robot-specific examples, makes for a extra versatile system, decreasing conventional knowledge bottleneck.

Constructed on the U-ViT structure, which explores the fusion of diffusion fashions and transformer architectures for a large assortment of multimodal era duties, Vidar harnesses long-term temporal modeling and multi-angle video consistency to energy bodily grounded decision-making.

This design helps speedy switch from simulation to real-world deployment, which ShengShu mentioned is essential for robotics in dynamic environments. It additionally minimizes engineering complexity, in line with the corporate,

ShengShu mentioned Vidar can facilitate robotics adoption throughout a number of sectors. From residence assistants and eldercare to sensible manufacturing and medical robotics, the mannequin permits quick adaptation to new environments and multi-task situations, all with minimal knowledge, it added.

Vidar creates an AI-native path for robotics growth that’s environment friendly, scalable, and cost-effective, ShengShu claimed. By remodeling common video into actionable robotic intelligence, the corporate mentioned its mannequin can bridge the hole between visible understanding and embodied company.

Vidar has a modular learning architecture, according to ShengShu Technology.

Vidar has a modular studying structure. Supply: ShengShu Know-how

ShengShu marks milestones in multimodal AI

Vidar builds on the speedy momentum of the Vidu video basis mannequin, mentioned ShengShu. The corporate listed statistics since its debut:

  • Vidu reached 1 million customers inside one month
  • Surpassed 10 million customers in simply three months
  • Generated over 100 million movies by Month 4
  • Reference-to-video era exceeded 100 million by Month 8
  • Complete generated movies now prime 300 million

ShengShu continues to increase the frontiers of multimodal AI, Vidar represents the subsequent frontier—bringing generalization, generativity, and embodiment into one unified system.

Editor’s word: RoboBusiness 2025, which shall be on Oct. 15 and 16 in Santa Clara, Calif., will embody tracks on bodily AI and humanoid robots. Registration is now open.



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