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
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