Book Image

Scala Machine Learning Projects

Book Image

Scala Machine Learning Projects

Overview of this book

Machine learning has had a huge impact on academia and industry by turning data into actionable information. Scala has seen a steady rise in adoption over the past few years, especially in the fields of data science and analytics. This book is for data scientists, data engineers, and deep learning enthusiasts who have a background in complex numerical computing and want to know more hands-on machine learning application development. If you're well versed in machine learning concepts and want to expand your knowledge by delving into the practical implementation of these concepts using the power of Scala, then this book is what you need! Through 11 end-to-end projects, you will be acquainted with popular machine learning libraries such as Spark ML, H2O, DeepLearning4j, and MXNet. At the end, you will be able to use numerical computing and functional programming to carry out complex numerical tasks to develop, build, and deploy research or commercial projects in a production-ready environment.
Table of Contents (17 chapters)
Title Page
Packt Upsell
Contributors
Preface
Index

Summary


In this chapter, we saw how to develop a machine learning (ML) project using H2O on a bank marketing dataset for predictive analytics. We were able to predict that the client would subscribe to a term deposit with an accuracy of 80%. Furthermore, we saw how to tune typical neural network hyperparameters. Considering the fact that this small-scale dataset, final improvement suggestion would be using Spark based Random Forest, Decision trees or gradient boosted trees for better accuracy.

In the next chapter, we will use a dataset having more than 284,807 instances of credit card use, where only 0.172% of transactions are fraudulent—that is, highly unbalanced data. So it would make sense to use autoencoders to pretrain a classification model and apply anomaly detection to predict possible fraud transaction—that is, we expect our fraud cases to be anomalies within the whole dataset.