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NUMERICAL METHODS AND ITS APPLICATIONS

Original price was: ₹550.00.Current price is: ₹500.00.

Authors: Dr. POOJA SINGH, Dr. P GANGAVATHI, Dr S NANDAKISHORE, Dr. SK ABZAL, Dr. M. BALA PRABHAKAR .

ISBN: 978-93-6096-512-9 Category:
Description
Additional information

Numerical methods have become indispensable tools in the fields
of science, engineering, and data analysis. They provide powerful
techniques for solving complex mathematical problems that are
often intractable by analytical means. This book, titled Numerical
Methods and Its Applications, is designed to offer a comprehensive
exploration of these techniques, from fundamental concepts to
advanced applications, making it a valuable resource for students,
researchers, and professionals.
The first chapter, “Fundamentals of Numerical Methods,”
introduces the significance of numerical methods in solving
mathematical problems. It provides a brief history and development
of these methods and underscores their importance in various
fields. The chapter also delves into numerical errors and their
impact on computations, covering types of errors, error analysis,
and practical applications through case studies with Python
implementations.
In the second chapter, “Algebraic Methods in Numerical Analysis,”
readers will find detailed explanations of key algebraic techniques
such as Gaussian elimination, the Gauss-Jordan method, and the
Gauss-Seidel method. The chapter further explores LU
decomposition and sparse matrix techniques for large-scale
problems, complemented by practical case studies implemented in
Python.
The third chapter, “Computational Techniques for Roots and
Optimization,” covers methods for finding roots and optimizing

functions. Techniques such as the bisection method, Newton-
Raphson method, secant method, Muller’s method, inverse

quadratic interpolation, and Brent’s method are discussed in depth,
providing a solid foundation for tackling these types of problems.
Chapter four, “Interpolation and Approximation,” focuses on
various interpolation techniques and approximation methods. It
includes Lagrange interpolation, Newton’s divided difference
interpolation, Newton’s forward and backward interpolations,
spline interpolation, least square approximation, and Chebyshev
approximation. These methods are crucial for constructing new
data points within the range of known data points.
The final chapter, “Advanced Topics and Modern Applications,”
addresses cutting-edge areas in numerical methods. It introduces
Monte Carlo methods, numerical methods in machine learning, and
parallel computing. Additionally, the chapter explores GPU

acceleration for numerical computations, including GPU-
accelerated Fast Fourier Transform (FFT), and the application of

numerical methods in big data analysis with a focus on stochastic
gradient descent (SGD).
This book aims to provide a thorough understanding of numerical
methods and their practical applications, equipping readers with the
knowledge and skills to apply these techniques to real-world
problems. The inclusion of Python implementations ensures that
readers can translate theoretical concepts into practical solutions,
making this book a valuable guide for anyone looking to master
numerical methods and their applications.

Format

Paperback

Language

English

No. of Pages

301