Book Image

Java: Data Science Made Easy

By : Richard M. Reese, Jennifer L. Reese, Alexey Grigorev
Book Image

Java: Data Science Made Easy

By: Richard M. Reese, Jennifer L. Reese, Alexey Grigorev

Overview of this book

Data science is concerned with extracting knowledge and insights from a wide variety of data sources to analyse patterns or predict future behaviour. It draws from a wide array of disciplines including statistics, computer science, mathematics, machine learning, and data mining. In this course, we cover the basic as well as advanced data science concepts and how they are implemented using the popular Java tools and libraries.The course starts with an introduction of data science, followed by the basic data science tasks of data collection, data cleaning, data analysis, and data visualization. This is followed by a discussion of statistical techniques and more advanced topics including machine learning, neural networks, and deep learning. You will examine the major categories of data analysis including text, visual, and audio data, followed by a discussion of resources that support parallel implementation. Throughout this course, the chapters will illustrate a challenging data science problem, and then go on to present a comprehensive, Java-based solution to tackle that problem. You will cover a wide range of topics – from classification and regression, to dimensionality reduction and clustering, deep learning and working with Big Data. Finally, you will see the different ways to deploy the model and evaluate it in production settings. By the end of this course, you will be up and running with various facets of data science using Java, in no time at all. This course contains premium content from two of our recently published popular titles: - Java for Data Science - Mastering Java for Data Science
Table of Contents (29 chapters)
Title Page
Credits
Preface
Free Chapter
1
Module 1
15
Module 2
26
Bibliography

Online evaluation


When we do cross-validation, we perform offline evaluation of our model, we train the model on the past data, and then hold out some of it and use it only for testing. It is very important, but often not enough, to know if the model will perform well on actual users. This is why we need to constantly monitor the performance of our models online--when the users actually use it. It can happen that a model, which is very good during offline testing, does not actually perform very well during online evaluation. There could be many reasons for that--overfitting, poor cross-validation, using the test set too often for checking the performance, and so on.

Thus, when we come up with a new model, we cannot just assume it will be better because its offline performance is better, so we need to test it on real users.

For testing models online we usually need to come up with a sensible way of measuring performance. There are a lot of metrics we can capture, including simple ones such...