Keywords:-

Keywords: Bollinger Bands, Relative Strength Index, Technical Analysis, Stock Trading, Buy-Sell Signals, Volatility, Momentum.

Article Content:-

Abstract

It is more important than ever to find intelligent trading strategies as financial markets get more complex. This paper offers a thorough investigation into the use of moving averages in Python programming for the creation of intelligent trading algorithms. This study explores the complex relationship between data analysis and profitable decision-making, providing a sophisticated viewpoint on the use of moving averages in financial planning. An overview of the Python programming language as a flexible tool for algorithmic trading and quantitative analysis opens the investigation. The discussion then turns to the use of moving averages, a key instrument in technical analysis, in the context of trading strategies. We highlight Python's flexibility by showcasing how moving averages can be easily incorporated into the trading process to improve decision support.

To sum up, this paper provides an invaluable resource for traders, scholars, and algorithmic enthusiasts who want to learn more about the relationship between moving averages and Python programming. The framework that is being presented not only broadens the range of tools available for algorithmic trading, but it also emphasises how important data-driven decision-making is in turning information into profits.

References:-

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Shalinigayathri, D. D., & kumari, D. D. (2024). Gain Profitable Insights by Focusing on Moving Averages for Intelligent Trading Solutions. International Journal Of Mathematics And Computer Research, 12(4), 4155-4161. https://doi.org/10.47191/ijmcr/v12i4.07