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The Keyword

AlphaQubit tackles one of quantum computing’s biggest challenges

Illustration of a qubit as a pink sphere with X, Y, Z axis planes, surrounded by blue qubits on a dark background
Diagram of a logical qubit's state checked over time, with data passed to a neural network to predict quantum errors

Here, we illustrate how nine physical qubits (small gray circles) in a qubit grid of side length 3 (code distance) form a logical qubit. At each step, 8 more qubits perform consistency checks (square and semicircle areas, blue and magenta when failing and gray otherwise) at each time step which inform the neural network decoder (AlphaQubit). At the end of the experiment, AlphaQubit determines what errors occurred.

Line chart comparing accuracy of three quantum decoders over distance, with AlphaQubit showing highest accuracy throughout

Decoding accuracies for small and large Sycamore experiments (distance 3 = 17 physical qubits, and distance 5 = 49 physical qubits). AlphaQubit is more accurate than the tensor network (TN, a method that is not expected to scale at large experiments) and correlated matching (an accurate decoder with the speed to scale).

Line chart showing accuracy of two decoders improving with distance, to virtually 100% at higher scales, with AlphaQubit best

Decoding accuracies for different scaling/simulated experiments, from distance 3 (17 qubits) to distance 11 (241 qubits). The Tensor Network decoder does not appear in this graph, as it is too slow to run at large distances. The accuracy of the other two decoders increases when increasing distance (that is, when using more physical qubits). At each distance, AlphaQubit is more accurate than correlated matching.

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