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Quantum Phase Transitions
Quantum Phase Transitions

Nanowires for Quantum Optics - Leo Kouwenhoven
Nanowires for Quantum Optics - Leo Kouwenhoven

What is the computational cost of automating brilliance or serendipity?
What is the computational cost of automating brilliance or serendipity?

The relation between quantum mechanics and higher brain
The relation between quantum mechanics and higher brain

The Heisenberg Uncertainty derivations
The Heisenberg Uncertainty derivations

Introduction to quantum cryptography
Introduction to quantum cryptography

Quantum Mechanics: what is it and why is it interesting? Dr. Neil Shenvi
Quantum Mechanics: what is it and why is it interesting? Dr. Neil Shenvi

... Exactly two well-defined beams emerge from the magnet! ...
Secrets and Lies, Knowledge and Trust. (Modern cryptography.)
Secrets and Lies, Knowledge and Trust. (Modern cryptography.)

... Example 2: Factoring problem Given a number n, find two numbers p, q (neither of which is 1) such that n = p x q. Any suggestions how to solve it? Fact: This problem is believed to be hard. It is the basis of much of cryptography. (More next time.) ...
What is the computational cost of automating brilliance or serendipity? COS 116: 4/12/11
What is the computational cost of automating brilliance or serendipity? COS 116: 4/12/11

... Example 2: Factoring problem Given a number n, find two numbers p, q (neither of which is 1) such that n = p x q. Any suggestions how to solve it? Fact: This problem is believed to be hard. It is the basis of much of cryptography. (More next time.) ...
Entanglement, which-way measurements, and a quantum erasure Christian Ferrari Bernd Braunecker
Entanglement, which-way measurements, and a quantum erasure Christian Ferrari Bernd Braunecker

... One-particle quantum interference is one of the most important effects that illustrates the superposition principle and thus the major difference between quantum and classical physics.1,2 In this paper we propose a simple model based on the Mach–Zehnder interferometer. Our hope is to provide a simpl ...
TOPIC-3: ELECTRONS IN ATOMS(Summer course)
TOPIC-3: ELECTRONS IN ATOMS(Summer course)

... result of this rule, known as Hund’s rule an atom tends to have as many unpaired electrons as possible. The electrons do this by seeking out empty orbitals of similar energy in preference to pairing up with other electrons in half-filled orbitals. ...
Shor`s Algorithm and the Quantum Fourier Transform
Shor`s Algorithm and the Quantum Fourier Transform

... theory. It is generally believed that factorization of a number n is hard to do in a efficient way. That is, it cannot be done in a number of steps which is polynomial in the length of the integer we’re trying to factor1 . The RSA cryptosystem, among others, relies on the presumed difficulty of this ...
PPT
PPT

... The heart and soul of quantum mechanics is contained in the Hilbert spaces that represent the state-spaces of quantum mechanical systems. The internal relations among states and quantities, and everything this entails about the ways quantum mechanical systems behave, are all woven into the structure ...
Is a System`s Wave Function in One-to
Is a System`s Wave Function in One-to

Quantized quasi-two-dimensional Bose-Einstein condensates with spatially modulated nonlinearity Deng-Shan Wang, Xing-Hua Hu,
Quantized quasi-two-dimensional Bose-Einstein condensates with spatially modulated nonlinearity Deng-Shan Wang, Xing-Hua Hu,

... and magnitude of the s-wave scattering length. A prominent way to adjust scattering length is to tune an external magnetic field in the vicinity of a Feshbach resonance [4]. Alternatively, one can use a Feshbach resonance induced by an optical or electric field [5]. Since all quantities of interest ...
A quantum central limit theorem for sums of IID
A quantum central limit theorem for sums of IID

... for all bounded Borel functions f and g (see Theorem 2.2 in Chapter 3 of [Da]). In physical terms, this reflects the well known fact that two non-commuting observables cannot be measured simultaneously. As already mentioned, this note focuses on the most basic form of CLT: the asymptotic law of sums ...
The Quantum Mechanical Model of the Atom
The Quantum Mechanical Model of the Atom

Graph Coloring with Quantum Heuristics
Graph Coloring with Quantum Heuristics

QUANTUM CLAUSTROPHOBIA
QUANTUM CLAUSTROPHOBIA

Packard Poster-2 - Northwestern University Mesoscopic Physics
Packard Poster-2 - Northwestern University Mesoscopic Physics

... Cooper pairs of electrons are naturally created. Though the constituent electrons of these pairs form a single quantum object, they are spatially separated by a coherence length x which can extend several hundred nanometers. As this length scale is now easily accessible to modern nanolithographic te ...
Quantum Mechanics: Concepts and Applications, 2nd Edition
Quantum Mechanics: Concepts and Applications, 2nd Edition

... with the Copyright, Designs and Patents Act 1988. All rights reserved. No part of this publication may be reproduced, stored in a retrieval system, or transmitted, in any form or by any means, electronic, mechanical, photocopying, recording or otherwise, except as permitted by the UK Copyright, Desi ...
Quantum Computation with Neutral Atoms
Quantum Computation with Neutral Atoms

... Real world strategy “…If X is very hard it can be substituted with more of Y. Of course, in many cases both X and Y are beyond the present experimental state of the art …” ...
Davies Maps - Fernando Brandao
Davies Maps - Fernando Brandao

... • How about really local samplers? Connected to stability question of “Damped Davies” maps. • Can we prove in generality equivalence of spatial mixing vs temporal mixing? How about in 2D? (how to fix the boundary in the q. case?) ...
Quantum spin systems from the perspective of quantum information
Quantum spin systems from the perspective of quantum information

EJP_NewCurr_Kohnle - St Andrews Research Repository
EJP_NewCurr_Kohnle - St Andrews Research Repository

... immediately immerses students in inherently quantum mechanical aspects by focusing on experiments that have no classical explanation. It allows from the start a discussion of interpretive aspects of quantum mechanics and quantum information theory. This article gives an overview of the resources ava ...
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Quantum machine learning

Quantum machine learning is a newly emerging interdisciplinary research area between quantum physics and computer science that summarises efforts to combine quantum mechanics with methods of machine learning. Quantum machine learning models or algorithms intend to use the advantages of quantum information in order to improve classical methods of machine learning, for example by developing efficient implementations of expensive classical algorithms on a quantum computer. However, quantum machine learning also includes the vice versa approach, namely applying classical methods of machine learning to quantum information theory.Although yet in its infancy, quantum machine learning is met with high expectations of providing a solution for big data analysis using the ‘parallel’ power of quantum computation. This trend is underlined by recent investments of companies such as Google and Microsoft into quantum computing hardware and research. However, quantum machine learning is still in its infancy and requires more theoretical foundations as well as solid scientific results in order to mature to a full academic discipline.
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