Stochastic models for time complexity of computing tasks: II. Description of interaction with databases
- Autores: Borisov A.1, Ivanov A.1
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Afiliações:
- Computer Science and Control Federal Research Center of Russian Academy of Sciences
- Edição: Nº 2 (2024)
- Páginas: 25-42
- Seção: INFORMATION PROCESSING AND IDENTIFICATION
- URL: https://journals.rcsi.science/0002-3388/article/view/264489
- DOI: https://doi.org/10.31857/S0002338824020032
- EDN: https://elibrary.ru/VOQZTV
- ID: 264489
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Resumo
The paper contains the second part of an investigation devoted to the design of the mathematical models for the execution time of user tasks carried out on the virtual calculating nodes. We provide the performance of the proposed model for the description of the data processing fulfilled in the databases. As a testbed for stress testing, we choose a prototype of the anonymization system of the passengers’ personal data. There are stochastic models describing two types of user tasks: personal data anonymization procedure and calculation of the sample statistical characteristics. The paper contains a detailed description of the stress test planning and fulfillment for both models. The obtained mathematical models developed by the real data demonstrate high performance.
Sobre autores
A. Borisov
Computer Science and Control Federal Research Center of Russian Academy of Sciences
Autor responsável pela correspondência
Email: ABorisov@frccsc.ru
Rússia, Moscow
A. Ivanov
Computer Science and Control Federal Research Center of Russian Academy of Sciences
Email: AIvanov@frccsc.ru
Rússia, Moscow
Bibliografia
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