Innovative technological advancements in solving real quadratic equations: Pioneering the frontier of mathematical innovation
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https://doi.org/10.58414/SCIENTIFICTEMPER.2024.15.3.08Keywords:
computational mathematics, quadratic equations, symbolic computation, numerical methods, interdisciplinary collaboration, technological advancementsDimensions Badge
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The advancement of computational methodologies in solving real quadratic equations has emerged as a focal point in contemporary mathematical research. This study explores the efficacy of innovative technological tools and interdisciplinary collaboration in revolutionizing quadratic equation solutions. By integrating symbolic computation systems such as Mathematica and MATLAB with numerical libraries like NumPy and SciPy, alongside specialized software frameworks, researchers have unlocked new avenues for precise and efficient quadratic equation solving. Symbolic manipulation techniques, including factoring, completing the square, and utilizing the quadratic formula, provide closed-form solutions, offering a direct approach to solving quadratic equations. Numerical root-finding algorithms, such as Newton's method and the bisection method, along with iterative techniques like fixed-point iteration, contribute to approximating solutions iteratively, enhancing solution accuracy and convergence rates. Real-world quadratic equations from diverse domains, including physics, engineering, economics, and optimization problems, serve as test cases to evaluate the performance of computational methodologies. Performance evaluation criteria encompass accuracy, convergence rate, computational efficiency, and robustness, ensuring the reliability of computational solutions. Statistical analysis and validation techniques validate the accuracy and reliability of solutions against analytical solutions and established mathematical software packages. Interdisciplinary collaboration between mathematics and computer science drives innovation, pushing the frontier of quadratic equation solving.Abstract
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