Quantum bits, or qubits, may be considered representing knowledge on a sphere
Google DeepMind
Google DeepMind has developed an AI mannequin that might enhance the efficiency of quantum computer systems by correcting errors extra successfully than any present methodology, bringing these gadgets a step nearer to broader use.
Quantum computer systems carry out calculations on quantum bits, or qubits, that are items of data that may retailer a number of values on the identical time, in contrast to classical bits, which might maintain both a 0 or 1. These qubits, nonetheless, are fragile and liable to errors when disturbed by components like environmental warmth or a roving cosmic ray.
To appropriate these errors, researchers can group qubits collectively to type a so-called logical qubit, the place a few of the qubits are used for computation whereas others are reserved as error-detection instruments. The data from the latter qubits should be interpreted, typically by a classical computing algorithm, to work out find out how to then appropriate errors, in a course of referred to as decoding. This can be a tough job, however it’s carefully tied to the general error correction capability of a quantum laptop which, in flip, dictates its potential to run helpful real-world duties.
Now, Johannes Bausch at Google DeepMind and his colleagues have developed a man-made intelligence mannequin, referred to as AlphaQubit, that may decode these errors higher and extra shortly than any present algorithm.
“Designing a decoder for quantum error correction code is, if you’re interested in very, very high accuracy, highly non-trivial,” Bausch instructed journalists at a press briefing on 2 November. “AlphaQubit learns this high-accuracy decoding task without a human to actively design the algorithm for it.”
To coach AlphaQubit, Bausch and his workforce used a transformer neural community, the identical expertise that powers their Nobel prize-winning protein-prediction AI, AlphaFold, and enormous language fashions like ChatGPT, to find out how knowledge from error-detecting qubits corresponds to qubit errors. They first skilled the mannequin with knowledge from a simulation of what the errors would appear like, earlier than advantageous tuning it on real-world knowledge from Google’s Sycamore quantum computing chip.
In experiments on a small variety of qubits on the Sycamore chip, Bausch and his workforce discovered that AlphaQubit makes 6 per cent fewer errors than the next-best algorithm, referred to as a tensor community. However tensor networks additionally turn into more and more sluggish as quantum computer systems get greater, so can’t scale to future machines, whereas AlphaQubit seems to have the ability to run simply as shortly, in accordance with simulations, making it a promising instrument as these computer systems develop, says Bausch.
“It’s tremendously exciting,” says Scott Aaronson on the College of Texas at Austin. “It’s been clear for a while that decoding and correcting the errors quickly enough, in a fault-tolerant quantum computation, was going to push classical computing to the limit also. It’s also become clear that for just about anything classical computers do involving optimisation or uncertainty, you can now throw machine learning at it and they might do it better.”
Subjects: