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JOURNALS // Proceedings of the Institute for System Programming of the RAS // Archive

Proceedings of ISP RAS, 2019 Volume 31, Issue 2, Pages 21–32 (Mi tisp406)

This article is cited in 3 papers

Virtual Savant for the knapsack problem: learning for automatic resource allocation

R. Massobrioab, B. Dorronsoro Díaza, S. E. Nesmachnow Cánovasb

a Universidad de Cádiz
b Universidad de la República

Abstract: This article presents the application of Virtual Savant to solve resource allocation problems, a widely-studied area with several real-world applications. Virtual Savant is a novel soft computing method that uses machine learning techniques to compute solutions to a given optimization problem. Virtual Savant aims at learning how to solve a given problem from the solutions computed by a reference algorithm, and its design allows taking advantage of modern parallel computing infrastructures. The proposed approach is evaluated to solve the Knapsack Problem, which models different variant of resource allocation problems, considering a set of instances with varying size and difficulty. The experimental analysis is performed on an Intel Xeon Phi many-core server. Results indicate that Virtual Savant is able to compute accurate solutions while showing good scalability properties when increasing the number of computing resources used.

Keywords: virtual savant, machine learning, parallel computing, resource allocation, knapsack problem, many-core.

Language: English

DOI: 10.15514/ISPRAS-2019-31(2)-2



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