Ebook: Introduction to Computational Models with Python
Author: Jose M. Garrido
- Tags: Python Programming Languages Computers Technology Mathematics Applied Geometry Topology History Infinity Mathematical Analysis Matrices Number Systems Popular Elementary Pure Reference Research Study Teaching Transformations Trigonometry Science Math Computer Algorithms Artificial Intelligence Database Storage Design Graphics Visualization Networking Object Oriented Software Operating Engineering New Used Rental Textbooks Specialty Boutique Algebra Calculus Statistics
- Series: Chapman & Hall/CRC Computational Science
- Year: 2015
- Publisher: Chapman and Hall/CRC
- Language: English
- pdf
Introduction to Computational Models with Python explains how to implement computational models using the flexible and easy-to-use Python programming language. The book uses the Python programming language interpreter and several packages from the huge Python Library that improve the performance of numerical computing, such as the Numpy and Scipy modules. The Python source code and data files are available on the author’s website.
The book’s five sections present:
- An overview of problem solving and simple Python programs, introducing the basic models and techniques for designing and implementing problem solutions, independent of software and hardware tools
- Programming principles with the Python programming language, covering basic programming concepts, data definitions, programming structures with flowcharts and pseudo-code, solving problems, and algorithms
- Python lists, arrays, basic data structures, object orientation, linked lists, recursion, and running programs under Linux
- Implementation of computational models with Python using Numpy, with examples and case studies
- The modeling of linear optimization problems, from problem formulation to implementation of computational models
This book introduces the principles of computational modeling as well as the approaches of multi- and interdisciplinary computing to beginners in the field. It provides the foundation for more advanced studies in scientific computing, including parallel computing using MPI, grid computing, and other methods and techniques used in high-performance computing.