DERIVATIVE AND ITS APPLICATIONS

Bekzod Mamaraimov

Termez State University Academic Lyceum Teacher of Mathematics

A'zam Makhmudov

Termez State University Academic Lyceum Teacher of Mathematics

Ma'ruf Musurmonov

Termez State University Academic Lyceum Teacher of Mathematics

Keywords: Derivatives, Calculus, Optimization, Predictive Modeling


Abstract

Derivatives are fundamental concepts in calculus, representing the rate at which a function changes with respect to its variables. This article explores the mathematical foundation of derivatives and delves into their diverse applications across various fields such as physics, engineering, economics, and biology. Through a comprehensive literature review and analysis of real-world case studies, the study highlights how derivatives facilitate problem-solving, optimization, and predictive modeling. The findings underscore the versatility and indispensability of derivatives in both theoretical and applied contexts. The article concludes with a discussion on emerging trends and future directions in the study and application of derivatives.


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