Machine Learning for Beginners: An Introduction for Beginners, Why Machine Learning Matters Today and How Machine Learning Networks, Algorithms, Concepts and Neural Networks Really Work
4.5/5
()
Machine Learning
Artificial Intelligence
Deep Learning
Neural Networks
Data Analysis
Technological Singularity
Advanced Technology
Language Barrier
Ai Takeover
Future Society
Robot Rebellion
Frankenstein's Monster
Predicting the Future
Advanced Tech
Pinocchio Syndrome
Supervised Learning
Reinforcement Learning
Unsupervised Learning
Clustering
Natural Language Processing
About this ebook
If you are looking for a complete beginners guide to learn machine learning with examples, in just a few hours, then you need to continue reading.
Machine learning is an incredibly dense topic. It's hard to imagine condensing it into an easily readable and digestible format. However, this book aims to do exactly that.
★★ Grab your copy today and learn ★★
♦ The different types of learning algorithm that you can expect to encounter
♦ The numerous applications of machine learning
♦ The different types of machine learning and how they differ
♦ The best practices for picking up machine learning
♦ What languages and libraries to work with
♦ The future of machine learning
♦ The various problems that you can solve with machine learning algorithms
♦ And much more...
Starting from nothing, we slowly work our way through all the concepts that are central to machine learning. By the end of this book, you're going to feel as though you have an extremely firm understanding of what machine learning is, how it can be used, and most importantly, how it can change the world. You're also going to have an understanding of the logic behind the algorithms and what they aim to accomplish.
Don't waste your time working with a book that's only going to make an already complicated topic even more complicated. Scroll up and click the buy now button to learn everything you need to know about Machine Learning!
Steven Cooper
Steven Cooper is a freelance writer, video producer, and the author of four previous novels. A former television reporter, he has received multiple Emmy awards and nominations, a National Edward R. Murrow Award, and Associated Press awards. He taught writing at Rollins College (Winter Park, FL) from 2007 to 2012.
Read more from Steven Cooper
Data Science from Scratch: The #1 Data Science Guide for Everything A Data Scientist Needs to Know: Python, Linear Algebra, Statistics, Coding, Applications, Neural Networks, and Decision Trees Rating: 4 out of 5 stars4/5Neural Networks: A Practical Guide for Understanding and Programming Neural Networks and Useful Insights for Inspiring Reinvention Rating: 0 out of 5 stars0 ratingsValley of Shadows Rating: 0 out of 5 stars0 ratingsDesert Remains: A Gus Parker and Alex Mills Novel Rating: 0 out of 5 stars0 ratingsDig Your Grave: A Gus Parker and Alex Mills Novel Rating: 0 out of 5 stars0 ratingsSteven Moffat’s Doctor Who 2014-2015: The Critical Fan’s Guide to Peter Capaldi’s Doctor (Unauthorized) Rating: 0 out of 5 stars0 ratings
Related to Machine Learning for Beginners
Related ebooks
Python Machine Learning By Example Rating: 4 out of 5 stars4/5Artificial Intelligence: The Complete Beginner’s Guide to the Future of A.I. Rating: 4 out of 5 stars4/5Artificial Intelligence Programming with Python: From Zero to Hero Rating: 4 out of 5 stars4/5Machine Learning in Python: Hands on Machine Learning with Python Tools, Concepts and Techniques Rating: 5 out of 5 stars5/5Machine Learning in Python: Hands on Machine Learning with Python Tools, Concepts and Techniques Rating: 5 out of 5 stars5/5Machine Learning with Tensorflow: A Deeper Look at Machine Learning with TensorFlow Rating: 0 out of 5 stars0 ratingsAdvanced Machine Learning with Python Rating: 0 out of 5 stars0 ratingsDeep Learning For Dummies Rating: 0 out of 5 stars0 ratingsMachine Learning - A Comprehensive, Step-by-Step Guide to Intermediate Concepts and Techniques in Machine Learning: 2 Rating: 0 out of 5 stars0 ratingsMachine Learning with R Rating: 4 out of 5 stars4/5Introduction to Artificial Intelligence Rating: 0 out of 5 stars0 ratingsPython Machine Learning Projects: Learn how to build Machine Learning projects from scratch (English Edition) Rating: 0 out of 5 stars0 ratingsTensorFlow in 1 Day: Make your own Neural Network Rating: 4 out of 5 stars4/5Python Machine Learning Illustrated Guide For Beginners & Intermediates:The Future Is Here! Rating: 5 out of 5 stars5/5Machine Learning: Adaptive Behaviour Through Experience: Thinking Machines Rating: 4 out of 5 stars4/5Artificial Intelligence with Python Rating: 4 out of 5 stars4/5Python Machine Learning Rating: 4 out of 5 stars4/5Machine Learning For Dummies Rating: 3 out of 5 stars3/5
Computers For You
Elon Musk Rating: 4 out of 5 stars4/5Deep Search: How to Explore the Internet More Effectively Rating: 5 out of 5 stars5/5Mastering ChatGPT: 21 Prompts Templates for Effortless Writing Rating: 4 out of 5 stars4/5Slenderman: Online Obsession, Mental Illness, and the Violent Crime of Two Midwestern Girls Rating: 4 out of 5 stars4/5The ChatGPT Millionaire Handbook: Make Money Online With the Power of AI Technology Rating: 4 out of 5 stars4/5CompTIA Security+ Get Certified Get Ahead: SY0-701 Study Guide Rating: 5 out of 5 stars5/5The Professional Voiceover Handbook: Voiceover training, #1 Rating: 5 out of 5 stars5/5The Technological Republic: Hard Power, Soft Belief, and the Future of the West Rating: 0 out of 5 stars0 ratingsHow to Create Cpn Numbers the Right way: A Step by Step Guide to Creating cpn Numbers Legally Rating: 4 out of 5 stars4/5The Self-Taught Computer Scientist: The Beginner's Guide to Data Structures & Algorithms Rating: 0 out of 5 stars0 ratingsSome Future Day: How AI Is Going to Change Everything Rating: 0 out of 5 stars0 ratingsAlan Turing: The Enigma: The Book That Inspired the Film The Imitation Game - Updated Edition Rating: 4 out of 5 stars4/5Everybody Lies: Big Data, New Data, and What the Internet Can Tell Us About Who We Really Are Rating: 4 out of 5 stars4/5The Innovators: How a Group of Hackers, Geniuses, and Geeks Created the Digital Revolution Rating: 4 out of 5 stars4/5Standard Deviations: Flawed Assumptions, Tortured Data, and Other Ways to Lie with Statistics Rating: 4 out of 5 stars4/5SQL QuickStart Guide: The Simplified Beginner's Guide to Managing, Analyzing, and Manipulating Data With SQL Rating: 4 out of 5 stars4/5Excel 101: A Beginner's & Intermediate's Guide for Mastering the Quintessence of Microsoft Excel (2010-2019 & 365) in no time! Rating: 0 out of 5 stars0 ratingsLearning the Chess Openings Rating: 5 out of 5 stars5/5Procreate for Beginners: Introduction to Procreate for Drawing and Illustrating on the iPad Rating: 5 out of 5 stars5/5The Insider's Guide to Technical Writing Rating: 0 out of 5 stars0 ratingsCompTIA IT Fundamentals (ITF+) Study Guide: Exam FC0-U61 Rating: 0 out of 5 stars0 ratingsA Brief History of Artificial Intelligence: What It Is, Where We Are, and Where We Are Going Rating: 4 out of 5 stars4/5Creating Online Courses with ChatGPT | A Step-by-Step Guide with Prompt Templates Rating: 4 out of 5 stars4/5Going Text: Mastering the Command Line Rating: 4 out of 5 stars4/5Mindhacker: 60 Tips, Tricks, and Games to Take Your Mind to the Next Level Rating: 4 out of 5 stars4/5User Friendly: How the Hidden Rules of Design Are Changing the Way We Live, Work, and Play Rating: 4 out of 5 stars4/5
Reviews for Machine Learning for Beginners
11 ratings2 reviews
- Rating: 5 out of 5 stars5/5
Jul 25, 2020
This was a good straight forward introduction to Machine Learning. - Rating: 1 out of 5 stars1/5
May 6, 2021
Not very technical because it tries to be high level. Unfortunately it ends up being just 'hand waving' so you don't really learn anything.2 people found this helpful
Book preview
Machine Learning for Beginners - Steven Cooper
Author
Copyright 2018 © Steven Cooper
All rights reserved.
No part of this guide may be reproduced in any form without permission in writing from the publisher except in the case of review.
Legal & Disclaimer
The following document is reproduced below with the goal of providing information that is as accurate and reliable as possible.
This declaration is deemed fair and valid by both the American Bar Association and the Committee of Publishers Association and is legally binding throughout the United States.
Furthermore, the transmission, duplication or reproduction of any of the following work including specific information will be considered an illegal act irrespective of if it is done electronically or in print. This extends to creating a secondary or tertiary copy of the work or a recorded copy and is only allowed with an express written consent from the Publisher. All additional right reserved.
The information in the following pages is broadly considered to be a truthful and accurate account of facts, and as such any inattention, use or misuse of the information in question by the reader will render any resulting actions solely under their purview. There are no scenarios in which the publisher or the original author of this work can be in any fashion deemed liable for any hardship or damages that may befall them after undertaking information described herein.
Additionally, the information in the following pages is intended only for informational purposes and should thus be thought of as universal. As befitting its nature, it is presented without assurance regarding its prolonged validity or interim quality. Trademarks that are mentioned are done without written consent and can in no way be considered an endorsement from the trademark holder.
Preface
The main goal of this book is to help people take the best actionable steps possible towards a career in data science. The need for data scientists is growing exponentially as the internet, and online services continue to expand.
Book Objectives
This book will help you:
Know more about the fundamental principles of machine learning and what you need to become a skilled data scientist.
Have an elementary grasp of machine learning concepts and tools that will make this work easier to do.
Have achieved a technical background in machine learning and appreciate its power.
Target Users
The book is designed for a variety of target audiences. The most suitable users would include:
Newbies in computer science techniques
Professionals in software applications development and social sciences
Professors, lecturers or tutors who are looking to find better ways to explain the content to their students in the simplest and easiest way
Students and academicians, especially those focusing on machine learning and software development
Is this book for me?
This book is for those who are interested in machine learning. There are a lot of skills that a data scientist needs, such as coding, intellectual mindset, eagerness to make new discoveries, and much more.
It’s important that you are interested in this because you are obsessed with this kind of work. Your driving force should not be money. If it is, then this book is not for you.
Introduction
There is absolutely no question about it: artificial intelligence is the future. However, artificial intelligence is also the present. It’s one of the faster-growing tech fields and, as I’m sure you’re aware, the future is only going to see more and more demand for capable artificial intelligence programmers.
I’m not certain why you’re reading this book. Perhaps you’re already on the path to studying artificial intelligence and machine learning in college or a university, and you’re wanting a book that will put you on an excellent path forward and help you figure out the context and rationale behind your lessons as you push on. Perhaps you’re wanting to switch fields and take advantage of the massive wave of demand that’s hitting for artificial intelligence, data analysis, and machine learning as we speak. Or perhaps you’re just a hobbyist interested in learning exactly what this machine learning that everybody’s talking about is.
Regardless of your ultimate machine, you’re reading the right book. This book is intended to break down machine learning and the many, many concepts which build it up.
The book will begin by looking at machine learning and what it is, as well as why one would benefit from looking into machine learning and learning the nuances of this specific area of artificial intelligence. This will give you a clear sense of purpose as you go through the rest of the book and start thinking of ways to apply this in a day-to-day sense.
Afterward, it’s going to start breaking the concept of machine learning down into bite-sized chunks. We’re going to start with the biggest and most nebulous concepts, and then slowly work our way down to things at the smallest and most intricate levels. We’ll be studying the numerous different paradigms for machine learning and how they can be programmed and implemented within your own code, as well as getting a feel for the algorithms which build them up. Throughout all of this, the goal is simply to foster an appreciation for the immense and difficult topic that is machine learning.
The goal at this point is to build a very intimate knowledge of the inner workings of machine learning so that by the time you’re finished with all the finer details and the algorithms, you’ll be able to go into a deeper level on any of the topics in this book and start to have an idea of how they all work at a more strenuous and taxing level. As such, we’re going to be spending a lot of time at the algorithmic level and breaking every type of machine learning down into its various disciplines, as well as discussing the primary terms used within the context of machine learning and what they mean.
After all of that, we’re going to start looking at the applications of machine learning. This will help you to get a much better feel for machine learning and how it works, which can be a great boon for your understanding of how these many concepts that we’re covering can be reasonably applied. This will run the gamut from discussions of anti-spam measures implemented by email providers, to the use of machine learning algorithms in applications like the development of smarter robotics.
This book is being written for the simple reason that I am passionate about machine learning and artificial intelligence. I want to help you to spur your own passion and build a genuine love for these extremely interesting topics. That’s why this book is designed with the reader in mind,