Volume 1 Issue 1 | 2024 | View PDF
Paper Id: IJMSM-V1I1P103
doi: 10.71141/30485037/V1I1P103
Advanced GDP Analysis Using Artificial Intelligence
Naveen K, Santhosh R, Jayalakshman A
Citation:
Naveen K, Santhosh R, Jayalakshman A, "Advanced GDP Analysis Using Artificial Intelligence" International Journal of Multidisciplinary on Science and Management, Vol. 1, No. 1, pp. 15-20, 2024.
Abstract:
By using datasets unique to each nation, the project uses artificial intelligence (AI) to predict GDP per capita and automate GDP analysis. The system will perform a thorough analysis of the state of the economy, using algorithms to find trends and connections between different variables and GDP. Giving users access to an intuitive platform for displaying insights is the aim in order to support data-driven decision-making. Data science is essential for transparently managing and deriving insights from economic data in a world when technology is everywhere. This research is in line with the increasing significance of data science in helping people and governments comprehend and navigate economic environments.
Keywords: Jupyter, Colab, Artificial Intelligence, Gross Domestic Product, Auto Regressive Integrated Moving Average Model.
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