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Parallel Window Decoding keynote at TQC 2023

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Parallel Window Decoding keynote at TQC 2023
Luka Skoric
24 July, 2023

Senior Quantum Scientist Luka Skoric presents Riverlane’s groundbreaking research on Parallel Window Decoding at the Theory of Quantum Computation, Communication and Cryptography (TQC) conference in Aveiro, Portugal on 24 July.  

The paper, last revised Feb 2023, is co-authored by Dan E. BrowneKenton M. BarnesNeil I. GillespieEarl T. Campbell

Parallel window decoding enables scalable fault tolerant quantum computation 

Large-scale quantum computers have the potential to hold computational capabilities beyond conventional computers for certain problems. However, the physical qubits within a quantum computer are prone to noise and decoherence, which must be corrected in order to perform reliable, fault-tolerant quantum computations. Quantum Error Correction (QEC) provides the path for realizing such computations. QEC continuously generates a continuous stream of data that decoders must process at the rate it is received, which can be as fast as 1 MHz in superconducting quantum computers. A little known fact of QEC is that if the decoder infrastructure cannot keep up, a data backlog problem is encountered and the quantum computer runs exponentially slower. Today's leading approaches to quantum error correction are not scalable as existing decoders typically run slower as the problem size is increased, inevitably hitting the backlog problem. That is: the current leading proposal for fault-tolerant quantum computation is not scalable. Here, we show how to parallelize decoding to achieve almost arbitrary speed, removing this roadblock to scalability. Our parallelization requires some classical feed forward decisions to be delayed, leading to a slow-down of the logical clock speed. However, the slow-down is now only polynomial in code size, averting the exponential slowdown. We numerically demonstrate our parallel decoder for the surface code, showing no noticeable reduction in logical fidelity compared to previous decoders and demonstrating the parallelization speedup.

Here's a link to the recording https://www.youtube.com/watch?v=qb0c4th9gTg 


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