In the name of of Allah the Merciful

Python Machine Learning Workbook for Beginners: 10 Machine Learning Projects Explained from Scratch

1734790172, 978-1734790177, 9781734790177, B08QJMNVCX

80,000 Toman
The desired product is not available.

English | 2020 | EPUB, MOBI, PDF | 50 MB | 279 Pages

  • {{value}}
کمی صبر کنید...

Machine Learning (ML) is the lifeblood  of businesses worldwide. ML tools empower organizations to identify  profitable opportunities fast and help them to understand potential  risks better. The ever-expanding data, cost-effective data storage, and  competitively priced powerful processing continue to drive the growth of  ML.

This is the best time you could enter  the exciting machine learning universe. Industries are reinventing  themselves constantly by developing more advanced data analysis models.  These models analyze larger and more complex data than ever while  delivering instantaneous and more accurate results on enormous scales.

In this backdrop, it is evident that  hands-on practice is everything in machine learning. Tons of theory will  amount to nothing if you don’t have enough hands-on practice. Textbooks  and online classes mislead you into a false sense of mastery. The easy  availability of learning resources tricks you, and you become  overconfident. But when you try to apply the theoretical concepts you  learned, you realize it’s not that simple.

This is where projects play a crucial  role in your learning journey. Projects are doubtless the best  investment of your time. You’ll not only enjoy learning, but you’ll also  make quick progress. And unlike studying boring theoretical concepts,  you’ll find that working on projects is easier to stay motivated.

The 10 projects in this book cover 10  different interesting topics. Each project will help you refine your ML  skills and apply them in the real world. These projects also present you  with an opportunity to enrich your portfolio, making it simpler to find  a great job, explore interesting career paths, and even negotiate a  higher pay package. Overall, this learning by doing book will help you  accomplish your machine learning career goals faster.

How Is This Book Different?

This book presents you with a hands-on experience in ML. It is divided into two sections and follows a very simple approach.

The first section consists of two  chapters. Chapter 1 provides a roadmap for step by step learning  approach to data science and machine learning. The process for  environment setup, including the software needed to run scripts in this  book, is also explained in this chapter. Chapter 2 contains a crash  course on Python for beginners.

The second section consists of 10  compelling machine learning and data science-based projects. In each  project, a brief explanation of the theoretical concepts is given,  followed by practical examples. The Python notebook for each project is  provided in the Source Codes folder in the GitHub and SharePoint  repositories.

The datasets used in this book are  easily accessible. You can download them at runtime. Alternatively, you  can access them via the Datasets folder in the GitHub and SharePoint  repositories.

The projects covered include:

  1. House Price Prediction Using Linear Regression
  2. Filtering Spam Email Messages Using Naïve Bayes Algorithm
  3. Predicting Used Car Sale Price Using Feedforward Artificial Neural Networks
  4. Predicting Stock Market Trends with RNN (LSTM)
  5. Language Translation using Seq2Seq Encoder-Decoder LSTM
  6. Classifying Cats and Dogs Images Using Convolutional Neural Networks
  7. Movie Recommender System Using Item-Based Collaborative Filtering
  8. Face Detection with OpenCV in Python
  9. Handwritten English Character Recognition with CNN
  10. Customer Segmentation Based on Income and Spending

The scripts, images, and graphs are  clear and provide visuals to the text description. If you’re new to ML  and self-study is your only option, then this book is a must.