Дослідження алгоритмів паралельного опрацювання інформації в базах даних

2021;
: 51-62
1
Lviv Polytechnic National University
2
Lviv Polytechnic National University, Lviv, Ukraine
3
Lviv Polytechnic National University
4
Lviv Polytechnik National University

The paper has been devoted to the problem of reducing the time of information processing in databases.
It is suggested to use distributed databases for quick search and analysis of queries. In them the
information is distributed and stored on several devices. For the interconnection of all data and quick
search, it is proposed to use the method of column indexes, which takes into account the similarity of
data and provides the ability to find information by key, even if it is distributed on different devices. This
approach simplifies the problem of finding large amounts of information in databases

  1. F. Ortega, and A. González-Prieto, “Recommender systems and collaborative filtering”, Appl. Sci., vol. 10, 7050, 2020.
  2. Z. Wang, H. Wu, Z. Jiang, P. Ju, J. Yang, Z. Zhou, and X. Chen, “Singular value decomposition-based load indexes for load profiles clustering”, Transmission Distribution IET Generation, vol. 14, issue 19, pp. 4164– 4172, 2020.
  3. M. Khan, Y. Jin, M. Li, Y. Xiang, and C. Jiang, “Hadoop performance modeling for job estimation and resource provisioning”, IEEE Transactions on Parallel and Distributed Systems, no. 27, issue 2, pp. 441–454, 2016.
  4. V. Yeromenko, and O. Kochan, “The conditional least squares method for thermocouples error modeling”, in Proc. IEEE Conference IDAACS 2013. Berlin, Germany, 2013, pp. 157–163.
  5. K. Sridharan, G. Komarasamy, and S. D. M. Raja, “Hadoop framework for efficient sentiment classification using trees”, IET Networks, vol. 9, issue 5, pp. 223–228, 2020.
  6. Z. Hu, D. Li, and D. Guo, “Balance resource allocation for spark jobs based on prediction of the optimal resource”, Tsinghua Science and Technology, vol. 25, issue 4, pp. 487–497, 2020.
  7. V. Iannino, C. Mocci, M. Vannocci, V. Colla, A. Caputo, and F. Ferraris, “An event-driven agent-based simulation model for industrial processes”, Appl. Sci., vol. 10, pp. 4343, 2020.
  8. T. Zhao, and Z. Ding, “Distributed agent consensus-based optimal resource management for microgrids”, IEEE Transactions on Sustainable Energy, no. 9, issue 1, pp. 443–452, 2018.
  9. M. Beshley, N. Kryvinska, M. Seliuchenko, H. Beshley, E. M. Shakshuki, and A.-U.-H. Yasar, “End-to-End QoS “smart queue” management algorithms and traffic prioritization mechanisms for narrow-band internet of things services in 4g/5g networks”, Sensors, vol. 20, pp. 2324, 2020.
  10. M. Klymash, M. Beshley, and B. Stryhaluk, “System for increasing quality of service of multimedia data in convergent networks” , in Proc. Problems of Infocommunications Science and Technology, Kharkiv, Ukraine, 2014, pp. 63–66.
  11. V. Romanchuk, M. Beshley, A. Polishuk, and M. Seliuchenko, “Method for processing multiservice traffic in network node based on adaptive management of buffer resource”, in Proc. TCSET-2018, Slavske, Ukraine, 2018; pp. 1118–1122.
  12. S. Jun, K. Przystupa, M. Beshley, O. Kochan, H. Beshley, M. Klymash, J. Wang, and D. Pieniak, A costefficient software based router and traffic generator for simulation and testing of IP network. Electronics, vol. 9, pp. 40, 2020.