Genetic Algorithms

Genetic Algorithms Tutorial

Nonfiction, Computers, Advanced Computing, Artificial Intelligence, Computer Science, General Computing
Cover of the book Genetic Algorithms by Thanh X.Tran, Thanh X.Tran
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: Thanh X.Tran ISBN: 1230003023914
Publisher: Thanh X.Tran Publication: January 8, 2019
Imprint: Language: English
Author: Thanh X.Tran
ISBN: 1230003023914
Publisher: Thanh X.Tran
Publication: January 8, 2019
Imprint:
Language: English

This tutorial covers the topic of Genetic Algorithms. From this tutorial, you will be able to understand the basic concepts and terminology involved in Genetic Algorithms. We will also discuss the various crossover and mutation operators, survivor selection, and other components as well.

Also, there will be other advanced topics that deal with topics like Schema Theorem, GAs in Machine Learning, etc. which are also covered in this tutorial.

After going through this tutorial, the reader is expected to gain sufficient knowledge to come up with his/her own genetic algorithms for a given problem.

This tutorial is prepared for the students and researchers at the undergraduate/graduate level who wish to get “good solutions” for optimization problems “fast enough” which cannot be solved using the traditional algorithmic approaches.

Genetic Algorithms is an advanced topic. Even though the content has been prepared keeping in mind the requirements of a beginner, the reader should be familiar with the fundamentals of Programming and Basic Algorithms before starting with this tutorial.

View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

This tutorial covers the topic of Genetic Algorithms. From this tutorial, you will be able to understand the basic concepts and terminology involved in Genetic Algorithms. We will also discuss the various crossover and mutation operators, survivor selection, and other components as well.

Also, there will be other advanced topics that deal with topics like Schema Theorem, GAs in Machine Learning, etc. which are also covered in this tutorial.

After going through this tutorial, the reader is expected to gain sufficient knowledge to come up with his/her own genetic algorithms for a given problem.

This tutorial is prepared for the students and researchers at the undergraduate/graduate level who wish to get “good solutions” for optimization problems “fast enough” which cannot be solved using the traditional algorithmic approaches.

Genetic Algorithms is an advanced topic. Even though the content has been prepared keeping in mind the requirements of a beginner, the reader should be familiar with the fundamentals of Programming and Basic Algorithms before starting with this tutorial.

More books from Thanh X.Tran

Cover of the book SAP: Enterprise applications in terms of software by Thanh X.Tran
Cover of the book Xamarin: Mobile Application Development for Android by Thanh X.Tran
Cover of the book Amazon Marketplace by Thanh X.Tran
Cover of the book C Plus Plus Programming: Full by Thanh X.Tran
Cover of the book Social Media Marketing by Thanh X.Tran
Cover of the book Artificial Intelligence by Thanh X.Tran
Cover of the book Electronic Circuits by Thanh X.Tran
Cover of the book Assertiveness by Thanh X.Tran
Cover of the book C# Programming Basics: Learn C# Coding for Beginners by Thanh X.Tran
Cover of the book NumPy: Step-by-Step guide to Mumpy by Thanh X.Tran
Cover of the book Antenna Theory by Thanh X.Tran
Cover of the book PL/SQL Programming: Quick Guides by Thanh X.Tran
Cover of the book SOLIDWORKS for Designers by Thanh X.Tran
Cover of the book Facebook Marketing by Thanh X.Tran
Cover of the book Javascript: Step-by-Step Guide to JavaScript by Thanh X.Tran
We use our own "cookies" and third party cookies to improve services and to see statistical information. By using this website, you agree to our Privacy Policy