IFISC researchers propose a new protocol for data processing with Quantum
Reservoir Computing
Researchers at IFISC
(UIB-CSIC) propose a new protocol for processing sequential data using quantum
machine learning.The study proposes a
way to efficiently include quantum measurement while preserving the quantum
advantage that characterises these systems.
Researchers at the Institute for Cross-Disciplinary
Physics and Complex Systems, IFISC (UIB-CSIC), in Mallorca, propose the first
protocol that includes the effect of measurement in the processing of temporal
data sequences using quantum systems. Examples of these computational tasks are
handwriting recognition or the prediction of chaotic series. The advantage of
using quantum systems for these purposes lies in the large processing power
provided by the Hilbert space of quantum states, an exponential advantage over
classical systems. Moreover, it has now been shown that this advantage can be
achieved even in non-ideal situations, where the effect of quantum measurement
is taken into account.
The implementation of quantum reservoir computing as a
computational method for processing time series data has a lot of potential,
but faces several challenges. One of them, common to all quantum computing, is
that, due to its stochastic nature, it is necessary to repeat the processing of
the information several times and to calculate averages with the results
obtained in order to improve accuracy. The
other problem is that quantum systems are strongly affected by measurements,
i.e. the process of obtaining the processed information. In an implementation
of quantum reservoir computing this is especially relevant, as it can impair
the quality of the processing at different times. To prevent the next steps
from being affected by past measurements, the experiment would have to be
restarted by reintroducing the data into the system from the beginning, which
is clearly inefficient. In addition, it would be necessary to store the data in
an external memory. The researchers have analysed different protocols for time
series processing, including the rewinding and restarting protocols, and have
proposed an alternative based on weak measurements that allows continuous
online monitoring of the data without external storing, operating in real time.
This
online protocol proposed by the researchers, presented in the journal npj
Quantum Information, introduces the effect of the measurement on data
processing. Typically, weak measurements provide less information and are
noisier, but in this way of obtaining processing results the quantum system
does not "collapse" as a whole, making it possible to identify
situations in which effective data processing is achieved in both accuracy and
resources.
The study establishes
the advantage of quantum reservoirs in realistic scenarios and is expected to
pave the way for efficient experimental implementations involving continuous
time series processing with quantum systems. In addition, this research may
also contribute to the development of concrete applications such as quantum
time tomography, quantum recurrent neural networks or quantum neuromorphic
computing, among other advances.Image: Schematic of the protocol proposed by the
researchers. The measurements of the quantum reservoir that processes the time series are
weak, so the quantum system does not "collapse" in its entirety.Mujal, P.,
Martínez-Peña, R., Giorgi, G.L., Soriano, M.C., Zambrini, R., Time-series
quantum reservoir computing with weak and projective measurements. npj Quantum Inf 9, 16
(2023).
https://doi.org/10.1038/s41534-023-00682-zEl diari de la UIB
http://ifisc.uib-csic.es/en/news/ifisc-researchers-propose-new-protocol-dat…