06-01-2023, 06:57 AM
Published 6/2023
Created by Navid Shirzadi
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 38 Lectures ( 4h 35m ) | Size: 1,61 GB
Learn how to implement genetic algorithm from scratch to solve real world optimization problems
[b]What you'll learn[/b]
Introduction to Genetic Algorithm Concepts
Development of Genetic Algorithm from scratch
Essential genetic operators used in genetic algorithms
Genetic Algorithm Library in Python
[b]Requirements[/b]
No programming experience needed, you will learn everything you need to know!
[b]Description[/b]
The "Optimization with Genetic Algorithms: Hands-on Python" course is a comprehensive and practical guide to understanding and implementing genetic algorithms for solving various optimization problems. Genetic algorithms, inspired by the principles of natural evolution, are powerful techniques for finding optimal solutions in multiple domains.In this course, you will learn the fundamental concepts of genetic algorithms and their applications in optimization. Starting from the basics, you will explore the principles of selection, crossover, and mutation that drive the evolution process. You will understand how to represent problem solutions as chromosomes, apply genetic operators to generate offspring, and evaluate the fitness of individuals.With a hands-on approach, you will dive into implementing genetic algorithms using Python programming language. Through a real-world problem project, you will gain proficiency in designing and optimizing genetic algorithms for real-world scenarios. You will learn how to define appropriate fitness functions, set up population structures, control algorithm parameters, and handle constraints in optimization problems.Throughout the course, you will explore different variations of genetic algorithms, including elitism, to enhance the optimization process. By the end of the course, you will have a strong foundation in genetic algorithms and be equipped with the skills to apply them to a wide range of optimization problems. You will be able to implement efficient and effective genetic algorithms in Python, analyze their performance, and make informed decisions for parameter tuning and problem-specific customization.Whether you are a student, programmer, researcher, or professional seeking advanced optimization techniques, this course will empower you to solve complex problems using genetic algorithms and unleash the power of optimization in your projects and applications.
Who this course is for
Students pursuing degrees in computer science, engineering, mathematics, or related fields
Programmers and software developers who are interested in learning new algorithms and problem-solving techniques
Researchers in the fields of optimization, artificial intelligence, and evolutionary computation
Data scientists who work on optimization problems or seek alternative approaches to traditional optimization methods
Engineers and professionals working in domains such as manufacturing, logistics, finance, and operations
Individuals with a general interest in algorithms, optimization, and problem-solving
Homepage
Download From Rapidgator
Download From DDownload
Download From Nitroflare