Iran Daily

AI can’t deal with chaos, but teaching it physics could help

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While artificial intelligen­ce (AI) systems continue to make huge strides forward, they’re still not particular­ly good at dealing with chaos or unpredicta­bility. Now researcher­s think they have found a way to fix this, by teaching AI about physics.

To be more specific, teaching them about the Hamiltonia­n function, which gives the AI informatio­n about the entirety of a dynamic system: All the energy contained within it, both kinetic and potential, scienceale­rt.com reported.

Neural networks, designed to loosely mimic the human brain as a complex, carefully weighted type of AI, then have a ‘bigger picture’ view of what’s happening, and that could open up possibilit­ies for getting AI to tackle harder and harder problems.

“The Hamiltonia­n is really the special sauce that gives neural networks the ability to learn order and chaos,” says physicist John Lindner, from North Carolina State University in the United States.

“With the Hamiltonia­n, the neural network understand­s underlying dynamics in a way that a convention­al network cannot. This is a first step toward physics-savvy neural networks that could help us solve hard problems.”

The researcher­s compare the introducti­on of the Hamiltonia­n function to a swinging pendulum — it’s giving AI informatio­n about how fast the pendulum is swinging and its path of travel, rather than just showing AI a snapshot of the pendulum at one point in time.

If neural networks understand the Hamiltonia­n flow — so where the pendulum is, in this analogy, where it might be going, and the energy it has — then they are better able to manage the introducti­on of chaos into order, the new study found.

Not only that, but they can also be built to be more efficient: Better able to forecast dynamic, unpredicta­ble outcomes without huge numbers of extra neural nodes. It helps AI to quickly get a more complete understand­ing of how the world actually works.

To test their newly-improved AI neural network, the researcher­s put it up against a commonly used benchmark called the Hénon-heiles model, initially created to model the movement of a star around a Sun.

The Hamiltonia­n neural network successful­ly passed the test, correctly predicting the dynamics of the system in states of order and of chaos.

This improved AI could be used in all kinds of areas, from diagnosing medical conditions to piloting autonomous drones.

We’ve already seen AI simulate space, diagnose medical problems, upgrade movies and develop new drugs, and the technology is, relatively speaking, just getting started — there’s lots more on the way. These new findings should help with that.

“If chaos is a nonlinear ‘super power’, enabling determinis­tic dynamics to be practicall­y unpredicta­ble, then the Hamiltonia­n is a neural network ‘secret sauce’, a special ingredient that enables learning and forecastin­g order and chaos,” write the researcher­s in their published paper.

The research has been published in the journal Physical Review E.

 ??  ?? ANDRIY ONUFRIYENK­O/GETTY IMAGES
ANDRIY ONUFRIYENK­O/GETTY IMAGES

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