A Quantum Optical Recurrent Neural Network for Online Processing of
Quantum Times Series
- URL: http://arxiv.org/abs/2306.00134v1
- Date: Wed, 31 May 2023 19:19:25 GMT
- Title: A Quantum Optical Recurrent Neural Network for Online Processing of
Quantum Times Series
- Authors: Robbe De Prins, Guy Van der Sande, and Peter Bienstman
- Abstract summary: We show that a quantum optical recurrent neural network (QORNN) can enhance the transmission rate of quantum channels.
We also show that our model can counteract similar memory effects if they are unwanted.
We run a small-scale version of this last task on the photonic processor Borealis.
- Score: 0.7087237546722617
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Over the last decade, researchers have studied the synergy between quantum
computing (QC) and classical machine learning (ML) algorithms. However,
measurements in QC often disturb or destroy quantum states, requiring multiple
repetitions of data processing to estimate observable values. In particular,
this prevents online (i.e., real-time, single-shot) processing of temporal data
as measurements are commonly performed during intermediate stages. Recently, it
was proposed to sidestep this issue by focusing on tasks with quantum output,
thereby removing the need for detectors. Inspired by reservoir computers, a
model was proposed where only a subset of the internal parameters are optimized
while keeping the others fixed at random values. Here, we also process quantum
time series, but we do so using a quantum optical recurrent neural network
(QORNN) of which all internal interactions can be trained. As expected, this
approach yields higher performance, as long as training the QORNN is feasible.
We further show that our model can enhance the transmission rate of quantum
channels that experience certain memory effects. Moreover, it can counteract
similar memory effects if they are unwanted, a task that could previously only
be solved when redundantly encoded input signals were available. Finally, we
run a small-scale version of this last task on the photonic processor Borealis,
demonstrating that our QORNN can be constructed using currently existing
hardware.
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