Book Image

Mastering Machine Learning with Spark 2.x

By : Michal Malohlava, Alex Tellez, Max Pumperla
Book Image

Mastering Machine Learning with Spark 2.x

By: Michal Malohlava, Alex Tellez, Max Pumperla

Overview of this book

The purpose of machine learning is to build systems that learn from data. Being able to understand trends and patterns in complex data is critical to success; it is one of the key strategies to unlock growth in the challenging contemporary marketplace today. With the meteoric rise of machine learning, developers are now keen on finding out how can they make their Spark applications smarter. This book gives you access to transform data into actionable knowledge. The book commences by defining machine learning primitives by the MLlib and H2O libraries. You will learn how to use Binary classification to detect the Higgs Boson particle in the huge amount of data produced by CERN particle collider and classify daily health activities using ensemble Methods for Multi-Class Classification. Next, you will solve a typical regression problem involving flight delay predictions and write sophisticated Spark pipelines. You will analyze Twitter data with help of the doc2vec algorithm and K-means clustering. Finally, you will build different pattern mining models using MLlib, perform complex manipulation of DataFrames using Spark and Spark SQL, and deploy your app in a Spark streaming environment.
Table of Contents (9 chapters)
3
Ensemble Methods for Multi-Class Classification

Summary

Many companies such as Google freely give pretrained word vectors (trained on a subset of Google News, incorporating the top three million words/phrases) for various vector dimensions: for example, 25d, 50d, 100d, 300d, and so on. You can find the code (and the resulting word vectors) here. In addition to Google News, there are other sources of trained word vectors, which use Wikipedia and various languages. One question you might have is that if companies such as Google freely provide pretrained word vectors, why bother building your own? The answer to the question is, of course, application-dependent; Google's pretrained dictionary has three different vectors for the word java based on capitalization (JAVA, Java, and java mean different things), but perhaps, your application is just about coffee, so only one version of java is all that is really needed.

Our goal...