Quantum Metropolis Solver: A Quantum Walks Approach to Optimization Problems

07/13/2022
by   Roberto Campos, et al.
0

The efficient resolution of optimization problems is one of the key issues in today's industry. This task relies mainly on classical algorithms that present scalability problems and processing limitations. Quantum computing has emerged to challenge these types of problems. In this paper, we focus on the Metropolis-Hastings quantum algorithm that is based on quantum walks. We use this algorithm to build a quantum software tool called Quantum Metropolis Solver (QMS). We validate QMS with the N-Queen problem to show a potential quantum advantage in an example that can be easily extrapolated to an Artificial Intelligence domain. We carry out different simulations to validate the performance of QMS and its configuration.

READ FULL TEXT
research
01/25/2021

QFold: Quantum Walks and Deep Learning to Solve Protein Folding

We develop quantum computational tools to predict how proteins fold in 3...
research
06/26/2021

Quantum Computing for Artificial Intelligence Based Mobile Network Optimization

In this paper, we discuss how certain radio access network optimization ...
research
06/08/2020

The Snake Optimizer for Learning Quantum Processor Control Parameters

High performance quantum computing requires a calibration system that le...
research
09/28/2022

Quantum Subroutine Composition

An important tool in algorithm design is the ability to build algorithms...
research
02/21/2022

Geodesic Quantum Walks

We propose a new family of discrete-spacetime quantum walks capable to p...
research
02/12/2005

Decomposable Problems, Niching, and Scalability of Multiobjective Estimation of Distribution Algorithms

The paper analyzes the scalability of multiobjective estimation of distr...
research
07/03/2023

Reliable AI: Does the Next Generation Require Quantum Computing?

In this survey, we aim to explore the fundamental question of whether th...

Please sign up or login with your details

Forgot password? Click here to reset