A survey on the complexity of learning quantum states
A Anshu, S Arunachalam - Nature Reviews Physics, 2024 - nature.com
Quantum learning theory is a new and very active area of research at the intersection of
quantum computing and machine learning. Important breakthroughs in the past two years …
quantum computing and machine learning. Important breakthroughs in the past two years …
Quantum variational algorithms are swamped with traps
ER Anschuetz, BT Kiani - Nature Communications, 2022 - nature.com
One of the most important properties of classical neural networks is how surprisingly
trainable they are, though their training algorithms typically rely on optimizing complicated …
trainable they are, though their training algorithms typically rely on optimizing complicated …
Synergistic pretraining of parametrized quantum circuits via tensor networks
Parametrized quantum circuits (PQCs) represent a promising framework for using present-
day quantum hardware to solve diverse problems in materials science, quantum chemistry …
day quantum hardware to solve diverse problems in materials science, quantum chemistry …
Generation of high-resolution handwritten digits with an ion-trap quantum computer
Generating high-quality data (eg, images or video) is one of the most exciting and
challenging frontiers in unsupervised machine learning. Utilizing quantum computers in …
challenging frontiers in unsupervised machine learning. Utilizing quantum computers in …
Equivariant quantum graph circuits
P Mernyei, K Meichanetzidis… - … Conference on Machine …, 2022 - proceedings.mlr.press
We investigate quantum circuits for graph representation learning, and propose equivariant
quantum graph circuits (EQGCs), as a class of parameterized quantum circuits with strong …
quantum graph circuits (EQGCs), as a class of parameterized quantum circuits with strong …
Synergy between quantum circuits and tensor networks: Short-cutting the race to practical quantum advantage
While recent breakthroughs have proven the ability of noisy intermediate-scale quantum
(NISQ) devices to achieve quantum advantage in classically-intractable sampling tasks, the …
(NISQ) devices to achieve quantum advantage in classically-intractable sampling tasks, the …
Deep learning of many-body observables and quantum information scrambling
Abstract Machine learning has shown significant breakthroughs in quantum science, where
in particular deep neural networks exhibited remarkable power in modeling quantum many …
in particular deep neural networks exhibited remarkable power in modeling quantum many …
Alternating layered variational quantum circuits can be classically optimized efficiently using classical shadows
Variational quantum algorithms (VQAs) are the quantum analog of classical neural networks
(NNs). A VQA consists of a parameterized quantum circuit (PQC) which is composed of …
(NNs). A VQA consists of a parameterized quantum circuit (PQC) which is composed of …
Learning classical readout quantum PUFs based on single-qubit gates
Physical unclonable functions (PUFs) have been proposed as a way to identify and
authenticate electronic devices. Recently, several ideas have been presented to that aim to …
authenticate electronic devices. Recently, several ideas have been presented to that aim to …
Quantum deep generative prior with programmable quantum circuits
Exploiting the utility of near-term quantum devices is a long-standing challenge whereas
hybrid quantum machine learning emerges as a promising candidate. Here we propose a …
hybrid quantum machine learning emerges as a promising candidate. Here we propose a …