TorchQC -- A framework for efficiently integrating machine and deep learning methods in quantum dynamics and control
Dimitris Koutromanos, Dionisis Stefanatos, Emmanuel Paspalakis

TL;DR
TorchQC is a Python library that integrates quantum dynamics simulations with deep learning models using PyTorch, enabling efficient quantum control research and development.
Contribution
It introduces TorchQC, a novel framework that combines quantum simulation and deep learning in PyTorch, facilitating faster quantum control computations.
Findings
TorchQC allows GPU-accelerated quantum simulations within deep learning workflows.
It bridges the gap between quantum physics and machine learning platforms.
The framework enhances efficiency in quantum control applications.
Abstract
Machine learning has been revolutionizing our world over the last few years and is also increasingly exploited in several areas of physics, including quantum dynamics and control.The need for a framework that brings together machine learning models and quantum simulation methods has been quite high within the quantum control field, with the ultimate goal of exploiting these powerful computational methods for the efficient implementation of modern quantum technologies. The existing frameworks for quantum system simulations, such as QuTip and QuantumOptics.jl, even though they are very successful in simulating quantum dynamics, cannot be easily incorporated into the platforms used for the development of machine learning models, like for example PyTorch. The TorchQC framework introduced in the present work comes exactly to fill this gap. It is a new library written entirely in Python and…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture
