main| new issue| archive| editorial board| for the authors| publishing house|
Πσρρκθι
Main page
New issue
Archive of articles
Editorial board
For the authors
Publishing house

 

 


ABSTRACTS OF ARTICLES OF THE JOURNAL "INFORMATION TECHNOLOGIES".
No. 11. Vol. 31. 2025

DOI: 10.17587/it.31.587-595

A. V. Vishnekov, Dr. Sc., Professor, E. M. Ivanova, PhD, Associate Professor, A. ΐ . Ladovir, Master Student,
A. V. Tsydypov, Master Student,
National Research University Higher School of Economics, Moscow, Russian Federation

Integrated Load Balancing Algorithm in Distributed Information Systems Based on Decision Making Theory Methods

Received on 19.05.2025
Accepted on 30.05.2025

The paper considers the possibility of applying decision theory methods to solve the problem of load balancing in distributed information systems. A review and analysis of methods for evaluating and comparing multi-criteria alternatives is carried out, their advantages and disadvantages are shown in the context of the problem being solved. The most effective methods have been selected. Authors proposed a method for solving the balancing problem based on the integration of decision-making and machine learning methods. An example of using the proposed methodology is considered.
Keywords: load balancing, decision making methods, distributed systems

P. 587-595

Full text on eLIBRARY

 

References

  1. Bershadsky A. M., Kurilov L. S., Finogeev A. G. Research of load balancing strategies in distributed data processing systems, Izvestiya vuzov. The Volga region. Technical sciences, 2009, no. 4.
  2. Khaing M. T., Lupin S. A., Thu A. Evaluation of the effectiveness of load balancing methods in distributed computing systems, International Journal of Open Information Technologies, 2021, no. 11.
  3. Ponomarenko D. N. Review of load balancing algorithms in cloud computing systems, Young scientist, 2024, no. 12 (511), pp. 21—30.
  4. Kuzmina P. O., Legenkova N. M. The Evolution of Banking Business Products: From Traditional Solutions to Digital Innovations, Trends and prospects of the banking system development in modern economic conditions: materials of the VI All-Russian Scientific and Practical Conference with international participation (Bryansk, December 26, 2024), vol. 1, Bryansk, 2025, 272 p.
  5. Arkhiptsev E. D., Mokretsov N. S. Load balancing methods in information systems, News of higher educational institutions. Instrument engineering, 2024, vol. 67, no. 4, pp. 345—351, DOI: 10.17586/0021-3454-2024-67-4-345-351
  6. Semko A. E., Gavrilova Yu. S. Overview of server load balancing algorithms for a pipeline automation project, Proceedings of the XVII International Scientific and Practical Conference "Development of Science and Practice in a globally changing world at risk", March 2023, pp. 345—349.
  7. Metel V. E., Kosukhina K. M. Methods of resource management in distributed computing systems, Concepts of development and effective use of scientific potential of society: collection of articles of the International Scientific and Practical Conference (March 15, 2025), Ufa, Aeterna, 2025, p. 5, available at: https://aeterna-ufa.ru/sbornik/NK-659.pdf#page=5 (accessed: 05/03/2025).
  8. Lyashov E. I. Resource-efficient load balancing algorithms in distributed microservice architectures, Bulletin of Science, 2025, vol. 1, no. 2 (83), pp. 629—647.
  9. Kudabaev T. K. Dynamic load balancing methods for distributed systems, Internauka: electron. scientific Journal, 2021, no. 19(195).
  10. Lamanovskiy M. N., Lavrov D. N. Load balancing of cloud computing, Mathematical Structures and modeling, 2024, no. 2 (70), pp. 87—99.
  11. Garcia-Valls M., Palomar-Cosin E. An Evaluation Process for IoT Platforms in Time-Sensitive Domains, Sensors (Basel), 2022, Vol. 22, No. 23, p. 9501.
  12. Halang W. A., Gumzej R., Colnaric M., Druzovec M. Measuring the Performance of Real-Time Systems, Real-Time Systems, 2000, vol. 18, no. 1, pp. 59—68.
  13. Lobanov A. A. Preference method as a decision support tool, Prospects of Science and Education, 2015, no. 2 (14), pp. 36—43.
  14. Metlova A. V., Astakhova T. S., Sysoev A. N. The place and role of lexicographic support in information search using hierarchical classifications, NTI. Ser. 2. INFORM. PROCESSES AND SYSTEMS, 2022, no. 3, pp. 23—30, DOI: 10.36535/0548­0027-2022-03-3
  15. Sadjadi S. J., Habibian M., Khaledi V. A multi-objective decision making approach for solving quadratic multiple response surface problems, Intern. J. Contemp. Math. Sci., 2008, vol. 3, no. 32, pp. 1595—1606.
  16. Batishchev D. I., Shaposhnikov D. E. Multicriteria selection based on individual preferences, Nizhny Novgorod, IPF RAS, 1994, 92 p.
  17. Song Yu, Xiaoli He, Binsack Ralf V., Zhihan Lv. A Probability Based Load Balancing Algorithm Applicable to MANET, Intern. J. of Systemics, Cybernetics and Informatics, 2013, vol. 17, no. 5.
  18. Kochkina M. V., Karamyshev A. N., Makhmutov I. I., Isavnin A. G., Rozentsvaig A. K. Analysis of multi-criteria methods of managerial decision-making (on the example of the problem of choosing suppliers of material and technical resources), Naberezhnye Chelny, Publishing and Printing Center NCI K(P) FU, 2017, 31 p.

To the contents