Normal view MARC view ISBD view

Applied mathematics with open-source software : operational research problems with Python and R

By: Knight, Vincent.
Contributor(s): Palmer, Geraint.
Series: Chapman & Hall/CRC series in operations research.Publisher: 2022 CRC Press, Boca RatonDescription: ix, 142 p. ; ill., 26 cm.ISBN: 9780367339982.Subject(s): Mathematics Data processing | Axelrod | Boids | CBC MILP Solver | Differential equation | Dynamical systems | Emergent behaviour | Enler method | Fire station location problem | Green vehicle routing problem | Linear programming | Markov chain | Matrix equation | Nash equilibrium | Operational research | Probability | Random seed | Simplex method | Travelling salesman problem | HeuristicsDDC classification: 658.40340285 Summary: Applied Mathematics with Open-source Software: Operational Research Problems with Python and R is aimed at a broad segment of readers who wish to learn how to use open-source software to solve problems in applied mathematics. The book has an innovative structure with 4 sections of two chapters covering a large range of applied mathematical techniques: probabilistic modelling, dynamical systems, emergent behaviour and optimisation. The pairs of chapters in each section demonstrate different families of solution approaches. Each chapter starts with a problem, gives an overview of the relevant theory, shows a solution approach in R and in Python, and finally gives wider context by including a number of published references. This structure will allow for maximum accessibility, with minimal prerequisites in mathematics or programming as well as giving the right opportunities for a reader wanting to delve deeper into a particular topic. An excellent resource for scholars of applied mathematics and operational research, and indeed any academics who want to learn how to use open-source software. Offers more general and accessible treatment of the subject than other texts, both in terms of programming language but also in terms of the subjects considered. The R and Python sections purposefully mirror each other so that a reader can read only the section that interests them.
Tags from this library: No tags from this library for this title. Log in to add tags.

Includes bibliographical references and index.

Applied Mathematics with Open-source Software: Operational Research Problems with Python and R is aimed at a broad segment of readers who wish to learn how to use open-source software to solve problems in applied mathematics. The book has an innovative structure with 4 sections of two chapters covering a large range of applied mathematical techniques: probabilistic modelling, dynamical systems, emergent behaviour and optimisation. The pairs of chapters in each section demonstrate different families of solution approaches. Each chapter starts with a problem, gives an overview of the relevant theory, shows a solution approach in R and in Python, and finally gives wider context by including a number of published references. This structure will allow for maximum accessibility, with minimal prerequisites in mathematics or programming as well as giving the right opportunities for a reader wanting to delve deeper into a particular topic. An excellent resource for scholars of applied mathematics and operational research, and indeed any academics who want to learn how to use open-source software. Offers more general and accessible treatment of the subject than other texts, both in terms of programming language but also in terms of the subjects considered. The R and Python sections purposefully mirror each other so that a reader can read only the section that interests them.

There are no comments for this item.

Log in to your account to post a comment.

Powered by Koha