Systems and Means of Informatics
2020, Volume 30, Issue 2, pp 56-67
ARCHITECTURE OF THE PLATFORM FOR MANAGING HYPOTHESES-DRIVEN VIRTUAL EXPERIMENTS
- D. Y. Kovalev
- E.A. Tarasov
- V. N. Zakharov
- N. M. Filimonov
Abstract
The problem of carrying out virtual experiments driven by hypotheses is considered. The analysis of methods for managing virtual experiments in existing systems for working with experiments is carried out. According to the results of the analysis, a life cycle of a virtual experiment is formed. Basic operations of managing virtual experiments are presented for the stages of an experiment life cycle, as well as the main stages of the expert's work with the platform for executing a virtual experiment. The program architecture of the platform for managing virtual experiments and hypotheses is proposed with a description of the main components of the platform and their functions that implement the basic operations of the life cycle.
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[+] About this article
Title
ARCHITECTURE OF THE PLATFORM FOR MANAGING HYPOTHESES-DRIVEN VIRTUAL EXPERIMENTS
Journal
Systems and Means of Informatics
Volume 30, Issue 2, pp 56-67
Cover Date
2020-06-30
DOI
10.14357/08696527200206
Print ISSN
0869-6527
Publisher
Institute of Informatics Problems, Russian Academy of Sciences
Additional Links
Key words
virtual experiment life cycle; hypotheses; data intensive research
Authors
D. Y. Kovalev , E.A. Tarasov , V. N. Zakharov , and N. M. Filimonov
Author Affiliations
Institute of Informatics Problems, Federal Research Center "Computer Science
and Control", Russian Academy of Sciences, 44-2 Vavilov Str., Moscow 119333, Russian Federation
Institute of Automatics and Computer Engineering, National Research University "Moscow Power Engineering Institute," 14 Krasnokazarmennaya Str., Moscow 111250, Russian Federation
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