AI beats people for the primary time in bodily talent recreation

AI’s ability to beat human players in games like chess and GO is no longer surprising. After all, artificial intelligence has proved it can outperform its animate creators in certain tasks, especially when it comes to processing and analysing information. But physical skill has remained a human prerogative — until now.

Researchers at ETH Zurich have created an AI robot with the task to learn how to play the popular labyrinth maze game. The goal of the game is simple: using two knobs, you have to steer a marble ball from a start to an end point without it falling into the holes across the board.

But if you’ve ever played it, you know it’s actually quite challenging. The scientific explanation behind its difficulty is that it requires acute motor skills, spatial reasoning abilities — and a lot of practice.

The robot, named CyberRunner, is equipped with two motors (its hands), a camera (its eyes), and a computer (its brain), allowing it to play the game just like a person would.

The CyberRunner robot. Credit: ETH Zurich

Much like a human, CyberRunner learns through experience by leveraging recent advances in model-based reinforcement learning, which enables the AI to make decisions and choose potential successful behaviours by predicting the outcomes of different courses of action.

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While playing the game, CyberRunner makes observations of the labyrinth and receives rewards based on its performance. It keeps a memory of the collected experience, which the algorithm uses to learn how the system behaves. Based on this knowledge, it’s able to recognise the most promising behaviours. As a result, the robot’s use of the two motors continuously improves and CyberRunner keeps getting better while the algorithm runs every time it plays.

AI robot CyberRunner beats humans in labyrinth maze game Illustration of CyberRunner’s learning process. Credit: ETH Zurich

The robot received 6.06 hours of practice. Impressively, it beat the previous world record set by Lars Göran Danielsson, a player since 1988, who set a time of 15.41 seconds in 2022. CyberRunner completed the game in 14.48 seconds — faster by over 6% compared to the human record holder.

Notably, during the learning process, the robot discovered shortcuts and found ways to cheat — a behaviour that research is studying as an innate human trait. Project lead researchers, Thomas Bi and Prof. Raffaello D’Andrea, had to step in and instruct CyberRunner to not skip parts of the maze.

A preprint of the research paper is already available on www.CyberRunner.ai, while Bi and D’Andrea will also open source the project on the website.

“We believe that this is the ideal testbed for research in real-world machine learning and AI. Prior to CyberRunner, only organisations with large budgets and custom-made experimental infrastructure could perform research in this area. Now, for less than 200 dollars, anyone can engage in cutting-edge AI research,” said D’Andrea.

“Furthermore, once thousands of CyberRunners are out in the real-world, it will be possible to engage in large-scale experiments, where learning happens in parallel, on a global scale. The ultimate in Citizen Science!”

You can watch the robot in action in the video below:

 

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