A new machine learning approach that draws inspiration from the way the human brain seems to model and learn about the world has proven capable of mastering a number of simple video games with impressive efficiency.
The new system, called Axiom, offers an alternative to the artificial neural networks that are dominant in modern AI. Axiom, developed by a software company called Verses AI, is equipped with prior knowledge about the way objects physically interact with each other in the game world. It then uses an algorithm to model how it expects the game to act in response to input, which is updated based on what it observesâa process dubbed active inference.
The approach draws inspiration from the free energy principle, a theory that seeks to explain intelligence using principles drawn from math, physics, and information theory as well as biology. The free energy principle was developed by Karl Friston, a renowned neuroscientist who is chief scientist at âcognitive computingâ company Verses.
Friston told me over video from his home in London that the approach may be especially important for building AI agents. âThey have to support the kind of cognition that we see in real brains,â he said. âThat requires a consideration, not just of the ability to learn stuff but actually to learn how you act in the world.â
The conventional approach to learning to play games involves training neural networks through what is known as deep reinforcement learning, which involves experimenting and tweaking their parameters in response to either positive or negative feedback. The approach can produce superhuman game-playing algorithms but it requires a great deal of experimentation to work. Axiom masters various simplified versions of popular video games called drive, bounce, hunt, and jump using far fewer examples and less computation power.
âThe general goals of the approach and some of its key features track with what I see as the most important problems to focus on to get to AGI,â says François Chollet, an AI researcher who developed ARC 3, a benchmark designed to test the capabilities of modern AI algorithms. Chollet is also exploring novel approaches to machine learning, and is using his benchmark to test modelsâ abilities to learn how to solve unfamiliar problems rather than simply mimic previous examples.
âThe work strikes me as very original, which is great,â he says. âWe need more people trying out new ideas away from the beaten path of large language models and reasoning language models.â
Modern AI relies on artificial neural networks that are roughly inspired by the wiring of the brain but work in a fundamentally different way. Over the past decade and a bit, deep learning, an approach that uses neural networks, has enabled computers to do all sorts of impressive things including transcribe speech, recognize faces, and generate images. Most recently, of course, deep learning has led to the large language models that power garrulous and increasingly capable chatbots.
Axiom, in theory, promises a more efficient approach to building AI from scratch. It might be especially effective for creating agents that need to learn efficiently from experience, says Gabe RenĂ©, the CEO of Verses. RenĂ© says one finance company has begun experimenting with the companyâs Tech as a way of modeling the market. âIt is a new architecture for AI agents that can learn in real time and is more accurate, more efficient, and much smaller,â RenĂ© says. âThey are literally designed like a digital brain.â
Somewhat ironically, given that Axiom offers an alternative to modern AI and deep learning, the free energy principle was originally influenced by the work of British Canadian computer scientist Geoffrey Hinton, who was awarded both the Turing award and the Nobel Prize for his pioneering work on deep learning. Hinton was a colleague of Fristonâs at University College London for years.
For more on Friston and the free energy principle, I highly recommend this 2018 WIRED feature article. Fristonâs work also influenced an exciting new theory of consciousness, described in a book WIRED reviewed in 2021.
In your inbox: WIRED's most ambitious, future-defining stories
Thereâs a very simple pattern to Elon Muskâs broken promises
Big Story: The epic rise and fall of a dark-web psychedelics kingpin
Rejoice! Carmakers are embracing physical buttons again
Special Edition: Youâre not ready for whatâs coming next
More From WIRED
Reviews and Guides
© 2025 Condé Nast. All rights reserved. WIRED may earn a portion of sales from products that are purchased through our site as part of our Affiliate Partnerships with retailers. The material on this site may not be reproduced, distributed, transmitted, cached or otherwise used, except with the prior written permission of Condé Nast. Ad Choices