Book Image

Learning Spark SQL

By : Aurobindo Sarkar
Book Image

Learning Spark SQL

By: Aurobindo Sarkar

Overview of this book

In the past year, Apache Spark has been increasingly adopted for the development of distributed applications. Spark SQL APIs provide an optimized interface that helps developers build such applications quickly and easily. However, designing web-scale production applications using Spark SQL APIs can be a complex task. Hence, understanding the design and implementation best practices before you start your project will help you avoid these problems. This book gives an insight into the engineering practices used to design and build real-world, Spark-based applications. The book's hands-on examples will give you the required confidence to work on any future projects you encounter in Spark SQL. It starts by familiarizing you with data exploration and data munging tasks using Spark SQL and Scala. Extensive code examples will help you understand the methods used to implement typical use-cases for various types of applications. You will get a walkthrough of the key concepts and terms that are common to streaming, machine learning, and graph applications. You will also learn key performance-tuning details including Cost Based Optimization (Spark 2.2) in Spark SQL applications. Finally, you will move on to learning how such systems are architected and deployed for a successful delivery of your project.
Table of Contents (19 chapters)
Title Page
Credits
About the Author
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface

Using deep neural networks for language processing


As discussed in Chapter 9, Developing Applications with Spark SQL, the standard approach to statistical modeling of language is typically based on counting the frequency of the occurrences of n-grams. This usually requires very large training corpora in most real-world use cases. Additionally, n-grams treat each word as an independent unit, so they cannot generalize across semantically sequences of words. In contrast, neural language models associate each word with a vector of real-value features and therefore semantically-related words end up close to each other in that vector space. Learning word vectors also works very well when the word sequences come from a large corpus of real text. These word vectors are composed of learned features that are automatically discovered by the neural network.

Vector representations of words learned from text are now very widely used in natural-language applications. In the next section, we will explore...