Optimization of Machine Learning Process Using Parallel Computing

The aim of this paper is to discuss the use of parallel computing in the supervised machine learning processes to reduce computation time. This way of computing has gained popularity because sequential computing is often not sufficient enough for large scale problems like complex simulations or real...

Full description

Bibliographic Details
Main Author: Michal Kazimierz Grzeszczyk
Format: Article
Language:English
Published: Society of Polish Mechanical Engineers and Technicians 2018-12-01
Series:Advances in Science and Technology Research Journal
Subjects:
Online Access:http://www.journalssystem.com/astrj/OPTIMIZATION-OF-MACHINE-LEARNING-PROCESS-USING-PARALLEL-COMPUTING,100341,0,2.html
Description
Summary:The aim of this paper is to discuss the use of parallel computing in the supervised machine learning processes to reduce computation time. This way of computing has gained popularity because sequential computing is often not sufficient enough for large scale problems like complex simulations or real time tasks. The author after presenting foundations of machine learning and neural network algorithms as well as three types of parallel models briefly characterized the development of the experiments carried out and the results obtained. Experiments on image recognition, run on five sets of empirical data, prove a significant reduction in calculation time compared to classical algorithms. At the end, possible directions of further research concerning parallel optimization of calculation time in the supervised perceptron learning processes were shortly outlined.
ISSN:2080-4075
2299-8624