Machine learning and quantum devices

These brief lecture notes cover the basics of neural networks and deep learning as well as their applications in the quantum domain, for physicists without prior knowledge. In the first part, we describe training using backpropagation, image classification, convolutional networks and autoencoders...

Full description

Bibliographic Details
Main Author: Florian Marquardt
Format: Article
Language:English
Published: SciPost 2021-05-01
Series:SciPost Physics Lecture Notes
Online Access:https://scipost.org/SciPostPhysLectNotes.29
id doaj-834fde0ad3a1477798a245cabc64550e
record_format Article
spelling doaj-834fde0ad3a1477798a245cabc64550e2021-05-31T13:02:24ZengSciPostSciPost Physics Lecture Notes2590-19902021-05-012910.21468/SciPostPhysLectNotes.29Machine learning and quantum devicesFlorian MarquardtThese brief lecture notes cover the basics of neural networks and deep learning as well as their applications in the quantum domain, for physicists without prior knowledge. In the first part, we describe training using backpropagation, image classification, convolutional networks and autoencoders. The second part is about advanced techniques like reinforcement learning (for discovering control strategies), recurrent neural networks (for analyzing time traces), and Boltzmann machines (for learning probability distributions). In the third lecture, we discuss first recent applications to quantum physics, with an emphasis on quantum information processing machines. Finally, the fourth lecture is devoted to the promise of using quantum effects to accelerate machine learning.https://scipost.org/SciPostPhysLectNotes.29
collection DOAJ
language English
format Article
sources DOAJ
author Florian Marquardt
spellingShingle Florian Marquardt
Machine learning and quantum devices
SciPost Physics Lecture Notes
author_facet Florian Marquardt
author_sort Florian Marquardt
title Machine learning and quantum devices
title_short Machine learning and quantum devices
title_full Machine learning and quantum devices
title_fullStr Machine learning and quantum devices
title_full_unstemmed Machine learning and quantum devices
title_sort machine learning and quantum devices
publisher SciPost
series SciPost Physics Lecture Notes
issn 2590-1990
publishDate 2021-05-01
description These brief lecture notes cover the basics of neural networks and deep learning as well as their applications in the quantum domain, for physicists without prior knowledge. In the first part, we describe training using backpropagation, image classification, convolutional networks and autoencoders. The second part is about advanced techniques like reinforcement learning (for discovering control strategies), recurrent neural networks (for analyzing time traces), and Boltzmann machines (for learning probability distributions). In the third lecture, we discuss first recent applications to quantum physics, with an emphasis on quantum information processing machines. Finally, the fourth lecture is devoted to the promise of using quantum effects to accelerate machine learning.
url https://scipost.org/SciPostPhysLectNotes.29
work_keys_str_mv AT florianmarquardt machinelearningandquantumdevices
_version_ 1721419059350732800