MIT Technology Review » Artificial Intelligence 01月03日
Fast-learning robots: 10 Breakthrough Technologies 2025
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

生成式AI正在引发机器人训练方式的巨大变革。通过结合多种数据源,如传感器数据、远程操作数据以及互联网图像和视频,研究人员能够训练出更智能、更灵活的机器人。这种新型的AI模型使机器人能够更好地理解任务,并在真实世界中进行即兴发挥。目前,仓库等商业场所的机器人已开始采用这种先进的训练方法,未来有望应用于家庭服务机器人,彻底改变我们与机器人的互动方式。

🤖 生成式AI通过结合多种数据源,包括传感器数据、远程操作数据以及互联网图像和视频,为机器人训练提供了新的途径。这种方法使机器人能够从不同的角度学习和理解任务。

💡 通过将不同来源的数据整合到一个AI模型中,机器人能够获得更全面的任务理解。例如,通过观看洗碗的视频、分析人类洗碗时的传感器数据以及机器人远程操作数据,机器人能够学习洗碗的不同方法,并根据实际情况进行调整。

🚀 这种训练方式使机器人能够更好地即兴发挥和适应真实世界。当机器人面对新的情况或挑战时,它可以通过分析已有的数据和经验,自主做出决策,从而更高效地完成任务。

WHO

Agility, Amazon, Covariant, Robust, Toyota Research Institute

WHEN

Now

Generative AI is causing a paradigm shift in how robots are trained. It’s now clear how we might finally build the sort of truly capable robots that have for decades remained the stuff of science fiction. 

Robotics researchers are no strangers to artificial intelligence—it has for years helped robots detect objects in their path, for example. But a few years ago, roboticists began marveling at the progress being made in large language models. Makers of those models could feed them massive amounts of text—books, poems, manuals—and then fine-tune them to generate text based on prompts. 

The idea of doing the same for robotics was tantalizing—but incredibly complicated. It’s one thing to use AI to create sentences on a screen, but another thing entirely to use it to coach a physical robot in how to move about and do useful things.

Now, roboticists have made major breakthroughs in that pursuit. One was figuring out how to combine different sorts of data and then make it all useful and legible to a robot. Take washing dishes as an example. You can collect data from someone washing dishes while wearing sensors. Then you can combine that with teleoperation data from a human doing the same task with robotic arms. On top of all that, you can also scrape the internet for images and videos of people doing dishes.

By merging these data sources properly into a new AI model, it’s possible to train a robot that, though not perfect, has a massive head start over those trained with more manual methods. Seeing so many ways that a single task can be done makes it easier for AI models to improvise, and to surmise what a robot’s next move should be in the real world. 

It’s a breakthrough that’s set to redefine how robots learn. Robots that work in commercial spaces like warehouses are already using such advanced training methods, and the lessons we learn from those experiments could lay the groundwork for smart robots that help out at home. 

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

生成式AI 机器人训练 数据融合 AI模型 智能机器人
相关文章