Abstract

Two of the most promising computational models for quantum computing are the qubit-based model and the continuous variable model, which result in two different computational approaches, namely the qubit gate model and boson sampling. The qubit gate model is a universal form of quantum computation that relies heavily on the principles of superposition and entanglement to solve problems using qubits based on technologies ranging from magnetic fields created from superconducting materials to the spins of valence electrons in atoms. Boson sampling is a non-universal form of quantum computation that uses bosons as continuous-variable values for its computation. Both models show promising prospects for useful quantum advantages over classical computers, but these models are fundamentally different, not only on their technologies but on their applications. Each model excels in different sets of applications.

A direct comparison for solving a problem using qubit gate models and boson sampling allows one to better understand not only the individual technologies, but how to decide which model is better suited to solving a given problem and how to start development on solving the given problem. This thesis uses the maximum clique problem to examine the application development process in the qubit gate model and boson sampling as well as a comparison of other known algorithms to the maximum clique problem. The maximum clique problem is an NP-Hard problem concerned with finding the largest fully-connected subgraph. The qubit gate model algorithm to the maximum clique problem is a novel algorithm.

Library of Congress Subject Headings

Computer algorithms--Evaluation; Quantum computing

Publication Date

5-2021

Document Type

Thesis

Student Type

Graduate

Degree Name

Computer Engineering (MS)

Department, Program, or Center

Computer Engineering (KGCOE)

Advisor

Sonia Lopez Alarcon

Advisor/Committee Member

Amlan Ganguly

Advisor/Committee Member

Gregory Howland

Campus

RIT – Main Campus

Plan Codes

CMPE-MS

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