+7 925 966 4690, 9am6pm (GMT+3), Monday – Friday
ИД «Финансы и кредит»

JOURNALS

  

FOR AUTHORS

  

SUBSCRIBE

    
National Interests: Priorities and Security
 

Analysis of the impact of high-performance computing on the national economy: Evidence from Brazil

ISSUE 3, MARCH 2026

PDF  Article PDF Version

Received: 20 October 2025

Accepted: 12 January 2026

Available online: 30 March 2026

Subject Heading: SUSTAINABLE DEVELOPMENT OF ECONOMY

JEL Classification: F02, F22, F59

Pages: 129-144

https://doi.org/10.24891/wbaott

Matvei R. UTKIN Russian Customs Academy, Lyubertsy, Moscow Oblast, Russian Federation
ytkinmatvei1999@mail.ru

https://orcid.org/0009-0004-3565-7923

Subject. This article discusses the impact of high-performance computing development on the economy of Brazil.
Objectives. The study aims to analyze Brazil'ss micro- and macroeconomic indicators, identify the most developed sectors of the country's economy, and to assess the effect of increasing high-performance computing in advanced sectors of the economy.
Methods. For the study, I used the methods of analysis, synthesis, classification, abstraction, formalization, the Cost-Output model, and case study analysis.
Results. Increasing high-performance computing in advanced sectors of Brazil's economy can directly impact cost reduction, increase productivity and efficiency, which will have an effect on other areas of the country's economy.
Conclusions. Enhancing high-performance computing can have a colossal impact on the country's economy, reduce the cost of goods and services produced, which can help improve the competitiveness of the country's exports and positively influence household consumption.

Keywords: Brazil's economy, high-performance computing, economic impact of high-performance computing development, input-output model

References:

  1. Doré N.I., Teixeira A.A.C. The role of human capital, structural change, and institutional quality on Brazil's economic growth over the last two hundred years (1822–2019). Structural Change and Economic Dynamics, 2023, no. 66. DOI: 10.1016/j.strueco.2023.04.003
  2. Nizhegorodtsev R.M., Khakimov Z.R. [Modeling inflationary processes and the Phillips curve in the Brazilian economy]. Vestnik Yuzhno-Rossiiskogo gosudarstvennogo tekhnicheskogo universiteta (NPI). Seriya: Sotsial'no-ekonomicheskie nauki, 2012, no. 3, pp. 18–28. EDN: OZOBTB
  3. Joia L.A., Proença R. The social representation of FinTech from the perspective of traditional financial sector professionals: Evidence from Brazil. Financial Innovation, 2022, vol. 8, iss. 1. DOI: 10.1186/s40854-022-00409-7
  4. Silva D., Alves V.K., Souza E.S. Machine learning for particle size prediction in iron ore grinding process. Peer Review, 2024, no. 6, pp. 157–177. DOI: 10.53660/PRW-2563-4602
  5. Feng S., Du J. Design of quantitative trading system based on data mining method under software and high‐performance computing. Mathematical Problems in Engineering, 2022, no. 1. DOI: 10.1155/2022/6540928
  6. Li Y., Xu Q., Liu B. et al. Genetic algorithms application for pricing optimization in commodity markets. Mathematics, 2024, vol. 12, iss. 9. DOI: 10.3390/math12091289
  7. Shafa H. Integration of machine learning and advanced computing for optimizing retail customer analytics. International Journal of Business and Economics Insights, 2022, no. 2, pp. 1–46. DOI: 10.63125/P87SV224
  8. Liu S., Yan L., Wang Y. et al. A parallel logistic network simulation method and system to improve logistics efficiency. IEEE Journal of Radio Frequency Identification, 2024, no. 99. DOI: 10.1109/JRFID.2024.3392943
  9. Usman S., Katib I., Mehmood R. et al. Data locality in high performance computing, big data, and converged systems: An analysis of the cutting edge and a future system architecture. Electronics, 2022. DOI: 10.20944/preprints202211.0161.v1
  10. Wang F.Z., Animasaun I.L., Muhammad T. et al. Recent advancements in fluid dynamics: Drag reduction, lift generation, computational fluid dynamics, turbulence modelling, and multiphase flow. Arabian Journal for Science and Engineering, 2024, no. 49, pp. 10237–10249. DOI: 10.1007/s13369-024-08945-3
  11. Aghimien E.I., Aghimien L.M., Aghimien D. et al. High-performance computing for computational modelling in built environment-related studies – A scientometric review. Journal of Engineering, Design and Technology, 2020. DOI: 10.1108/JEDT-07-2020-0294

View all articles of issue

 

ISSN 2311-875X (Online)
ISSN 2073-2872 (Print)

Journal current issue

ISSUE 3
MARCH 2026

Archive

Видите ошибку в отчестве? Отключите перевод, это английская версия сайта!