Modelling Non-Markovian Quantum Systems Using Tensor Networks Modelling Non-Markovian Quantum Systems Using Tensor Networks

Modelling Non-Markovian Quantum Systems Using Tensor Networks

    • $154.99
    • $154.99

Publisher Description

This thesis presents a revolutionary technique for modelling the dynamics of a quantum system that is strongly coupled to its immediate environment. This is a challenging but timely problem. In particular it is relevant for modelling decoherence in devices such as quantum information processors, and how quantum information moves between spatially separated parts of a quantum system.
The key feature of this work is a novel way to represent the dynamics of general open quantum systems as tensor networks, a result which has connections with the Feynman operator calculus and process tensor approaches to quantum mechanics. The tensor network methodology developed here has proven to be extremely powerful: For many situations it may be the most efficient way of calculating open quantum dynamics. This work is abounds with new ideas and invention, and is likely to have a very significant impact on future generations of physicists.

GENRE
Science & Nature
RELEASED
2020
31 August
LANGUAGE
EN
English
LENGTH
118
Pages
PUBLISHER
Springer International Publishing
SELLER
Springer Nature B.V.
SIZE
6.7
MB

More Books Like This

Theoretical Foundations of Quantum Information Processing and Communication Theoretical Foundations of Quantum Information Processing and Communication
2009
An Advanced Course in Computational Nuclear Physics An Advanced Course in Computational Nuclear Physics
2017
Computational Many-Particle Physics Computational Many-Particle Physics
2007
Disorder-Free Localization Disorder-Free Localization
2019
Quantum Foundations And Open Quantum Systems: Lecture Notes Of The Advanced School Quantum Foundations And Open Quantum Systems: Lecture Notes Of The Advanced School
2014
Mathematical Physics in Theoretical Chemistry (Enhanced Edition) Mathematical Physics in Theoretical Chemistry (Enhanced Edition)
2018