UiPath Inc. today announced a preview of its upcoming Agent Builder tool as it outlined its vision to combine its expertise in robotic process automation with generative artificial intelligence models ...
Researchers have developed a new robotic framework powered by artificial intelligence -- called RHyME (Retrieval for Hybrid Imitation under Mismatched Execution) -- that allows robots to learn tasks ...
Cornell University researchers have introduced a new AI-powered framework that makes robots better at learning tasks. It’s called RHyME, which stands for Retrieval for Hybrid Imitation under ...
“Robot utility models” sidestep the need to tweak the data used to train robots every time they try to do something in unfamiliar settings. It’s tricky to get robots to do things in environments ...
Inspired by large language models, researchers developed a training technique that pools diverse data to teach robots new skills. In the classic cartoon "The Jetsons," Rosie the robotic maid ...
Robots can be programmed to do a variety of tasks, like packing boxes and even performing surgery. But each individual movement or task requires its own specific training process, which makes it hard ...
AgiBot, a humanoid robotics company based in Shanghai, has engineered a way for two-armed robots to learn manufacturing tasks through human training and real-world practice on a factory production ...
Gen AI models aren’t just good for creating pictures—they can be fine-tuned to generate useful robot training data, too. Generative AI models can produce images in response to prompts within seconds, ...
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Have you ever wondered what it would take to train a robot to walk, grasp objects, or navigate a cluttered room with the same ease as a human? For many, the idea of teaching robots these complex tasks ...
Connecting the dots: AI has mostly been confined to the virtual world, but it is now learning from the physical mechanics of everyday life, driven by a global surge in data collection and annotation.