Quantum Metropolis Solver: a quantum walks approach to optimization problems
R Campos, PAM Casares… - Quantum Machine …, 2023 - Springer
Quantum Machine Intelligence, 2023•Springer
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, which 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 …
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, which 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 …
Abstract
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, which 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.
Springer
以上显示的是最相近的搜索结果。 查看全部搜索结果