Cosmos

SPECIAL FEATURE: THE QUANTUM ORACLE

How to predict and avert failure before it happens.

- CATHAL O’CONNELL is a science writer, with a background in physics, based in Melbourne.

LED BY MICHAEL BIERCUK at the University of Sydney, they enlisted machine learning to “foresee” the future failure of a quantum bit, or qubit, and make the correction­s needed to stop it happening.

Quantum computing is a potentiall­y worldchang­ing technology with the potential to do in minutes what now take computers thousands of years. But achieving practical, large-scale quantum technologi­es still seems a long way off.

One of the major challenges is maintainin­g qubits in the delicate, zen-like state of superposit­ion they need to do their business.

Any tiny nudge from the environmen­t – such as the jiggly atom next door – knocks the qubit off balance.

So physicists go to great lengths to stabilise qubits, cooling them to more than 200 degrees below zero to reduce atomic jiggling. Still, superposit­ion typically lasts but a tiny fraction of a second, and this cuts quantum number-crunching time short.

Biercuk and his colleagues have found a new way of stabilisin­g qubits against noise in the environmen­t. As they reported in Nature

Communicat­ions, it works by predicting how a qubit will behave and act pre-emptively. In a quantum computer, the technique could make qubits twice as stable as before.

The team used control theory and machine learning (a kind of artificial intelligen­ce) to estimate how the future of a qubit would play out.

Control theory is the branch of engineerin­g that deals with feedback systems, such as the thermostat keeping your room temperatur­e constant. The thermostat reacts to changes in the environmen­t, initiating warm or cool air to pump into the room.

Meanwhile, new machine learning algorithms look at how the system behaved in the past and use

IMAGINE PREDICTING your car will break down and being able to replace the faulty part before it becomes a problem. Now Australian physicists have found a way to do this – albeit on a quantum scale.

this informatio­n to predict how it will react to future events.

First, Biercuk’s team made a qubit by trapping a single ion of ytterbium in a beam of laser light. To train their algorithm, they simulated noise, tweaking the light to disturb the atom in a controlled way. Their algorithm monitored how the qubit responded to these tweaks and made a prediction for how it would behave in future.

Next, they let events play out for the qubit to check their algorithm’s accuracy. The longer the algorithm watched the qubit, the more accurate its prediction­s became.

Finally, the team used the prediction­s to help the system self-correct. The qubit was twice as stable with the algorithm as without it.

While similar machine-learning algorithms have been used in other advanced feedback systems, such as those used to stabilise the interferom­eter that detected gravitatio­nal waves last year, this is their first use in a quantum technology.

Because the technique is software based, it could be easily adapted by other quantum technology efforts around the world. To help, the team is making the computer code available to other scientists.

“The quantum future is looking better all the time,” Biercuk says.

THE MORE TIME THE ALGORITHM WATCHED THE QUBIT, THE MORE ACCURATE PREDICTION­S BECAME.

 ??  ?? The breakthrou­gh comes from tweaking a qubit made a single ion of ytterbium.
The breakthrou­gh comes from tweaking a qubit made a single ion of ytterbium.
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 ??  ?? Learning from machines: ‘ The quantum future is looking better all the time,’ Michael Biercuk says. 01 Mark Garlick / Getty Images 02 Science Photo Library / Getty Images 03 Equinox Graphics / SPL / Getty Images 04 University of Sydney
Learning from machines: ‘ The quantum future is looking better all the time,’ Michael Biercuk says. 01 Mark Garlick / Getty Images 02 Science Photo Library / Getty Images 03 Equinox Graphics / SPL / Getty Images 04 University of Sydney

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