About This Book
- Implement Scala in your data analysis using features from Spark, Breeze, and Zeppelin
- Scale up your data anlytics infrastructure with practical recipes for Scala machine learning
- Recipes for every stage of the data analysis process, from reading and collecting data to distributed analytics
Who This Book Is For
This book shows data scientists and analysts how to leverage their existing knowledge of Scala for quality and scalable data analysis.
Table of Contents1: GETTING STARTED WITH BREEZE
2: GETTING STARTED WITH APACHE SPARK DATAFRAMES
3: LOADING AND PREPARING DATA – DATAFRAME
4: DATA VISUALIZATION
5: LEARNING FROM DATA
6: SCALING UP
7: GOING FURTHER
What You Will Learn
- Familiarize and set up the Breeze and Spark libraries and use data structures
- Import data from a host of possible sources and create dataframes from CSV
- Clean, validate and transform data using Scala to pre-process numerical and string data
- Integrate quintessential machine learning algorithms using Scala stack
- Bundle and scale up Spark jobs by deploying them into a variety of cluster managers
- Run streaming and graph analytics in Spark to visualize data, enabling exploratory analysis
In Detail
This book will introduce you to the most popular Scala tools, libraries, and frameworks through practical recipes around loading, manipulating, and preparing your data. It will also help you explore and make sense of your data using stunning and insightfulvisualizations, and machine learning toolkits.
Starting with introductory recipes on utilizing the Breeze and Spark libraries, get to grips withhow to import data from a host of possible sources and how to pre-process numerical, string, and date data. Next, you’ll get an understanding of concepts that will help you visualize data using the Apache Zeppelin and Bokeh bindings in Scala, enabling exploratory data analysis. iscover how to program quintessential machine learning algorithms using Spark ML library. Work through steps to scale your machine learning models and deploy them into a standalone cluster, EC2, YARN, and Mesos. Finally dip into the powerful options presented by Spark Streaming, and machine learning for streaming data, as well as utilizing Spark GraphX.
AuthorsArun Manivannan
Arun Manivannan has been an engineer in various multinational companies, tier-1 financial institutions, and start-ups, primarily focusing on developing distributed applications that manage and mine data. His languages of choice are Scala and Java, but he also meddles around with various others for kicks. He blogs at http://rerun.me.
Arun holds a master's degree in software engineering from the National University of Singapore.
He also holds degrees in commerce, computer applications, and HR management. His interests and education could probably be a good dataset for clustering.