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Computers that use heat instead of electricity could run efficient AI

Devices in which heat is a necessary part of the computation process rather than a nuisance could lead to more energy-efficient machines
Heat instead of electricity could power more efficient computers
Yurchanka Siarhei/Shutterstock

A computer that uses heat instead of electricity could run algorithms that power neural networks and artificial intelligence 鈥 and tamp down their energy budgets.

鈥淲e have things like ChatGPT which can learn very complicated things about language, but it consumes an amount of energy that is absolutely crazy,鈥 says at the University of Geneva in Switzerland. put ChatGPT鈥檚 daily energy consumption on par with more than 30,000 households in the US.

Most modern AI technology uses neural networks that consist of many interconnected artificial neurons, counted in billions for programs like ChatGPT, to imitate the function of the brain. The thing they don鈥檛 mimic, says Brunner, is the relatively low energy consumption of the brain.

Instead of simulating these neural connections digitally, Brunner and his colleagues developed a mathematical model for a device that would physically mimic them using qubits, or quantum bits, and heat.

They modelled how a few interacting qubits would act as neurons when connected to several thermal reservoirs that can have variable temperatures. To run calculations, you would input information not with a keyboard but by turning up the temperature on some of these reservoirs. This would make heat flow through the device, changing the quantum states and energies of the qubits, until the whole device reached a steady state. These 鈥渉eat currents鈥 act like electricity does in conventional computers. To read the computer鈥檚 output, you would check the temperature of a thermal reservoir designated to play the role of a computer monitor.

The team realised that this type of computer works similarly to a type of machine learning algorithm called a perceptron, which is the simplest neural network that can decide whether an object, like a picture of an animal, belongs to some class, such as a cat or a dog.

鈥淚f you simulate a perceptron using a conventional computer, you鈥檙e going in a roundabout way. It is very conceptually interesting and unusual to build a perceptron purely with these thermal flows,鈥 says at the Austrian Academy of Sciences in Vienna.

He says that because the laws of physics, and specifically thermodynamics, dictate that any operation by a computer must 鈥渃ost鈥 some heat and entropy, building a device where heat is part of the computation process rather than a nuisance could lead to more energy-efficient machines.

at , a start-up focused on creating 鈥渢hermodynamic AI鈥, says that the researchers鈥 conceptual framework could translate into small-scale laboratory experiments, but using it as a basis for devices that can be mass-produced may be a challenge. If heat-based perceptrons can be adapted for manufacturing with existing methods, like being made on chips, the resulting computers could be useful for generative AI and tasks like derivative pricing in finance, he says.

Reference:

arXiv

Topics: AI / Computing