Learning quantum systems

V Gebhart, R Santagati, AA Gentile, EM Gauger… - Nature Reviews …, 2023 - nature.com
The future development of quantum technologies relies on creating and manipulating
quantum systems of increasing complexity, with key applications in computation, simulation …

Artificial intelligence and machine learning for quantum technologies

M Krenn, J Landgraf, T Foesel, F Marquardt - Physical Review A, 2023 - APS
In recent years the dramatic progress in machine learning has begun to impact many areas
of science and technology significantly. In the present perspective article, we explore how …

[HTML][HTML] Qulacs: a fast and versatile quantum circuit simulator for research purpose

Y Suzuki, Y Kawase, Y Masumura, Y Hiraga… - Quantum, 2021 - quantum-journal.org
To explore the possibilities of a near-term intermediate-scale quantum algorithm and long-
term fault-tolerant quantum computing, a fast and versatile quantum circuit simulator is …

Advances and new research opportunities in quantum computing technology by integrating it with other ICCT underlying technologies

PS Aithal - International Journal of Case Studies in Business, IT …, 2023 - papers.ssrn.com
Advances and New Research Opportunities in Quantum Computing Technology by Integrating it
with Other ICCT Underlying Technologie Page 1 1 Advances and New Research Opportunities …

Tequila: A platform for rapid development of quantum algorithms

JS Kottmann, S Alperin-Lea… - Quantum Science …, 2021 - iopscience.iop.org
Variational quantum algorithms are currently the most promising class of algorithms for
deployment on near-term quantum computers. In contrast to classical algorithms, there are …

A feasible approach for automatically differentiable unitary coupled-cluster on quantum computers

JS Kottmann, A Anand, A Aspuru-Guzik - Chemical science, 2021 - pubs.rsc.org
We develop computationally affordable and encoding independent gradient evaluation
procedures for unitary coupled-cluster type operators, applicable on quantum computers …

A comprehensive review of Quantum Machine Learning: from NISQ to Fault Tolerance

Y Wang, J Liu - Reports on Progress in Physics, 2024 - iopscience.iop.org
Quantum machine learning, which involves running machine learning algorithms on
quantum devices, has garnered significant attention in both academic and business circles …

Improving Hamiltonian encodings with the Gray code

O Di Matteo, A McCoy, P Gysbers, T Miyagi… - Physical Review A, 2021 - APS
Due to the limitations of present-day quantum hardware, it is especially critical to design
algorithms that make the best possible use of available resources. When simulating …

Molecular quantum circuit design: A graph-based approach

JS Kottmann - Quantum, 2023 - quantum-journal.org
Science is rich in abstract concepts that capture complex processes in astonishingly simple
ways. A prominent example is the reduction of molecules to simple graphs. This work …

Natural evolutionary strategies for variational quantum computation

A Anand, M Degroote… - … Learning: Science and …, 2021 - iopscience.iop.org
Natural evolutionary strategies (NES) are a family of gradient-free black-box optimization
algorithms. This study illustrates their use for the optimization of randomly initialized …