Python Machine Learning: How to learn Machine Learning with Python. The Complete Guide to Understand Python Machine Learning

This post was published 3 years ago. Download links are most likely obsolete. If that's the case, try asking the uploader to re-upload.

Python Machine Learning: How to learn Machine Learning with Python. The Complete Guide to Understand Python Machine Learning

English | 2019 | ASIN: B08163131T | 99 Pages | PDF/EPUB/KINDLE | 16.4 MB

If you have ever asked yourself questions about the basic or especially the complex predictions and conclusions machines are making these days, then your answer lies in Machine learning. Human beings have different ways in which they learn, some of the methods including experience or even having someone teach them. Therefore, to try to make machines even more useful to human beings, it is possible to teach machines to make decisions in several ways, and these can learn and have faster and more accurate output compared to how a human being would compete.

People usually understand the concept of how a machine will do something you have programmed it to do because people came to terms with that years ago. However, what still fascinates people is how a machine is able to make decisions independently by considering a situation and even making a prediction that turns out to be true.

Machine learning is at a very high-level today when you compare to a few years back, so that would make you wonder just how advanced machines will be in the next 20 to 30 years. It is highly likely that machines will become better versions of us, but we hope they will never get so independent and intelligent that they eventually decide to rule over us.

The objective of writing this book is to help a beginner to understand the basics of machine learning to the point of even training a machine to carry out some functions. This book also explains the advantages associated with using Python, since an individual does not necessarily have to be an expert coder to start using it.

Some of the main topics discussed in this book include:

The history of machine learning
Key machine learning definitions
Application of machine learning
Key elements of machine learning
Types of artificial intelligence learning
Mathematical notation for machine learning
Terminologies in use for machine learning
Roadmap for building machine-learning systems
Using python for machine learning (and understanding variables, essential operator, functions, conditional statements, and loop)
Types of artificial neural networks
Artificial neural network layers
Advantages and disadvantages of neural networks
Machine learning classification
Types of classifiers in python machine learning
Machine learning classification models
Metrics for evaluating machine learning classification models
Machine learning training model
Developing a machine learning model with python
Training simple machine learning algorithms for classification
Building good training sets

No comments have been posted yet. Please feel free to comment first!

    Load more replies

    Join the conversation!

    Log in or Sign up
    to post a comment.