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Big Data Analytics with R

You're reading from   Big Data Analytics with R Leverage R Programming to uncover hidden patterns in your Big Data

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Product type Paperback
Published in Jul 2016
Publisher Packt
ISBN-13 9781786466457
Length 506 pages
Edition 1st Edition
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Author (1):
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Simon Walkowiak Simon Walkowiak
Author Profile Icon Simon Walkowiak
Simon Walkowiak
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Table of Contents (10) Chapters Close

Preface 1. The Era of Big Data FREE CHAPTER 2. Introduction to R Programming Language and Statistical Environment 3. Unleashing the Power of R from Within 4. Hadoop and MapReduce Framework for R 5. R with Relational Database Management Systems (RDBMSs) 6. R with Non-Relational (NoSQL) Databases 7. Faster than Hadoop - Spark with R 8. Machine Learning Methods for Big Data in R 9. The Future of R - Big, Fast, and Smart Data

To the memory limits and beyond

We will start off by introducing you to three very useful and versatile packages which facilitate out-of-memory data processing: ff, ffbase, and ffbase2.

Data transformations and aggregations with the ff and ffbase packages

Although the ff package authored by Adler, Glaser, Nenadic, Ochlschlagel, and Zucchini, is several years old it still proves to be a popular solution to large data processing with R. The title of the package Memory-efficient storage of large data on disk and fast access functions roughly explains what it does. It chunks the dataset, and stores it on a hard drive, while the ff data structure (or ffdf data frame), which is held in RAM, like the other R data structures, provides mapping to the partitioned dataset. The chunks of raw data are simply binary flat files in native encoding, whereas the ff objects keep the metadata, which describe and link to the created binary files. Creating ff structures and binary files from the raw data does...

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