Book Image

Go Machine Learning Projects

By : Xuanyi Chew
Book Image

Go Machine Learning Projects

By: Xuanyi Chew

Overview of this book

Go is the perfect language for machine learning; it helps to clearly describe complex algorithms, and also helps developers to understand how to run efficient optimized code. This book will teach you how to implement machine learning in Go to make programs that are easy to deploy and code that is not only easy to understand and debug, but also to have its performance measured. The book begins by guiding you through setting up your machine learning environment with Go libraries and capabilities. You will then plunge into regression analysis of a real-life house pricing dataset and build a classification model in Go to classify emails as spam or ham. Using Gonum, Gorgonia, and STL, you will explore time series analysis along with decomposition and clean up your personal Twitter timeline by clustering tweets. In addition to this, you will learn how to recognize handwriting using neural networks and convolutional neural networks. Lastly, you'll learn how to choose the most appropriate machine learning algorithms to use for your projects with the help of a facial detection project. By the end of this book, you will have developed a solid machine learning mindset, a strong hold on the powerful Go toolkit, and a sound understanding of the practical implementations of machine learning algorithms in real-world projects.
Table of Contents (12 chapters)

Summary

In this chapter, we have learned how to explore data (with some awkwardness) using Go. We plotted some charts and used them as a guiding rod to select variables for the regression. Following that, we implemented a regression model that came with reporting of errors which enabled us to compare models. Lastly, to ensure we were not over fitting, we used a RMSE score to cross-validate our model and came out with a fairly decent score.

This is just a taste of what is to come. The ideas in abstract are repeated over the next chapters—we will be cleaning data, then writing the machine learning model, which will be cross-validated. The only difference will generally be the data, and the models.

In the next chapter, we'll learn a simple way to determine if an email is spam or not.