Numerical Methods Using Java: For Data Science, Analysis, and Engineering

Book Cover
Average Rating
Author
Publisher
Apress
Publication Date
[2022]
Language
English

Description

Implement numerical algorithms in Java using NM Dev, an object-oriented and high-performance programming library for mathematics. You'll see how it can help you easily create a solution for your complex engineering problem by quickly putting together classes. Numerical Methods Using Java covers a wide range of topics, including chapters on linear algebra, root finding, curve fitting, differentiation and integration, solving differential equations, random numbers and simulation, a whole suite of unconstrained and constrained optimization algorithms, statistics, regression and time series analysis. The mathematical concepts behind the algorithms are clearly explained, with plenty of code examples and illustrations to help even beginners get started. What You Will Learn Program in Java using a high-performance numerical library Learn the mathematics for a wide range of numerical computing algorithms Convert ideas and equations into code Put together algorithms and classes to build your own engineering solution Build solvers for industrial optimization problems Do data analysis using basic and advanced statistics Who This Book Is For Programmers, data scientists, and analysts with prior experience with programming in any language, especially Java.

More Details

ISBN
9781484267974

Table of Contents

From the eBook

1: Introduction to Numerical Methods in Java
2: Linear Algebra
3: Finding Roots of Equations
4: Finding Roots of Systems of Equations
5: Curve Fitting and Interpolation
6: Numerical Differentiation and Integration
7: Ordinary Differential Equations
8: Partial Differential Equations
9: Unconstrained Optimization
10: Constrained Optimization
11: Heuristics
12: Basic Statistics
13: Random Numbers and Simulation
14: Linear Regression
15: Time Series Analysis
References.

Discover More

Reviews from GoodReads

Loading GoodReads Reviews.

Staff View

Loading Staff View.