Book Image

Big Data Analytics

By : Venkat Ankam
Book Image

Big Data Analytics

By: Venkat Ankam

Overview of this book

Big Data Analytics book aims at providing the fundamentals of Apache Spark and Hadoop. All Spark components – Spark Core, Spark SQL, DataFrames, Data sets, Conventional Streaming, Structured Streaming, MLlib, Graphx and Hadoop core components – HDFS, MapReduce and Yarn are explored in greater depth with implementation examples on Spark + Hadoop clusters. It is moving away from MapReduce to Spark. So, advantages of Spark over MapReduce are explained at great depth to reap benefits of in-memory speeds. DataFrames API, Data Sources API and new Data set API are explained for building Big Data analytical applications. Real-time data analytics using Spark Streaming with Apache Kafka and HBase is covered to help building streaming applications. New Structured streaming concept is explained with an IOT (Internet of Things) use case. Machine learning techniques are covered using MLLib, ML Pipelines and SparkR and Graph Analytics are covered with GraphX and GraphFrames components of Spark. Readers will also get an opportunity to get started with web based notebooks such as Jupyter, Apache Zeppelin and data flow tool Apache NiFi to analyze and visualize data.
Table of Contents (18 chapters)
Big Data Analytics
Credits
About the Author
Acknowledgement
About the Reviewers
www.PacktPub.com
Preface
Index

Architecture of Spark SQL


Spark SQL is a library on top of the Spark core execution engine, as shown in Figure 4.2. It exposes SQL interfaces using JDBC/ODBC for Data Warehousing applications or through a command-line console for interactively executing queries. So, any Business Intelligence (BI) tools can connect to Spark SQL to perform analytics at memory speeds. It also exposes a Dataset API and DataFrame API, which are supported in Java, Scala, Python, and R. Spark SQL users can use the Data Source API to read and write data from and to a variety of sources to create a DataFrame or a Dataset. Figure 4.2 also indicates the traditional way of creating and operating on RDDs from programming languages to the Spark core engine.

Figure 4.2: Spark SQL architecture

Spark SQL also extends the Dataset API, DataFrame API, and Data Sources API to be used across all other Spark libraries such as SparkR, Spark Streaming, Structured Streaming, Machine Learning Libraries, and GraphX as shown in Figure...