Jump to ratings and reviews
Rate this book

Python Machine Learning: Machine Learning and Deep Learning with Python, scikit-learn and Tensorflow

Rate this book
You are interested in becoming a machine learning expert but don't know where to start from? Don't worry you don't need a big boring and expensive Textbook. This book is the best guide for you.
Get your copy NOW!!

Why this guide?

Here are the reasons:

The author has explored everything about machine learning and deep learning right from the basics.
A simple language has been used. Many examples have been given, both theoretically and programmatically. Screenshots showing program outputs have been added.
The book is written chronologically, in a step-by-step manner.

Book Objectives:

The Aims and Objectives of the Book:

To help you understand the basics of machine learning and deep learning. Understand the various categories of machine learning algorithms. To help you understand how different machine learning algorithms work. You will learn how to implement various machine learning algorithms programmatically in Python. To help you learn how to use Scikit-Learn and TensorFlow Libraries in Python. To help you know how to analyze data programmatically to extract patterns, trends, and relationships between variables.

Who this Book is for?

Here are the target readers for this book:

Anybody who is a complete beginner to machine learning in Python. Anybody who needs to advance their programming skills in Python for machine learning programming and deep learning. Professionals in data science. Professors, lecturers or tutors who are looking to find better ways to explain machine learning to their students in the simplest and easiest way. Students and academicians, especially those focusing on neural networks, machine learning, and deep learning.

What do you need for this Book?

You are required to have installed the following on your computer:
Python 3.X Numpy Pandas Matplotlib

The Author guides you on how to install the rest of the Python libraries that are required for machine learning and deep learning.



What is inside the book:

Getting Started Environment Setup Using Scikit-Learn Linear Regression with Scikit-Learn k-Nearest Neighbors Algorithm K-Means Clustering Support Vector Machines Neural Networks with Scikit-learn Random Forest Algorithm Using TensorFlow Recurrent Neural Networks with TensorFlow Linear Classifier

This book will teach you machine learning classifiers using scikit-learn and tenserflow . The book provides a great overview of functions you can use to build a support vector machine, decision tree, perceptron, and k-nearest neighbors. Thanks of this book you will be able to set up a learning pipeline that handles input and output data, pre-processes it, selects meaningful features, and applies a classifier on it.

178 pages, Kindle Edition

Published April 18, 2019

49 people are currently reading
16 people want to read

About the author

Samuel Burns

12 books2 followers

Ratings & Reviews

What do you think?
Rate this book

Friends & Following

Create a free account to discover what your friends think of this book!

Community Reviews

5 stars
5 (35%)
4 stars
0 (0%)
3 stars
4 (28%)
2 stars
4 (28%)
1 star
1 (7%)
Displaying 1 of 1 review
1 review
February 9, 2020
This needs proof reading before going to print, the spelling and grammar mistakes are distracting. I also found the book tells me what code snippets are doing rather than why you want to do it and the code itself tells me that much. I think the examples were nice but the instructional content could've been far better, it read a bit like the instructions for Ikea furniture, it tells you to put a in b before c but not why you want to or why the order matters.
Displaying 1 of 1 review

Can't find what you're looking for?

Get help and learn more about the design.