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Mastering Spark for Data Science

You're reading from   Mastering Spark for Data Science Lightning fast and scalable data science solutions

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Product type Paperback
Published in Mar 2017
Publisher Packt
ISBN-13 9781785882142
Length 560 pages
Edition 1st Edition
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Authors (5):
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David George David George
Author Profile Icon David George
David George
Matthew Hallett Matthew Hallett
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Matthew Hallett
Antoine Amend Antoine Amend
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Antoine Amend
Andrew Morgan Andrew Morgan
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Andrew Morgan
Albert Bifet Albert Bifet
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Albert Bifet
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Table of Contents (15) Chapters Close

Preface 1. The Big Data Science Ecosystem 2. Data Acquisition FREE CHAPTER 3. Input Formats and Schema 4. Exploratory Data Analysis 5. Spark for Geographic Analysis 6. Scraping Link-Based External Data 7. Building Communities 8. Building a Recommendation System 9. News Dictionary and Real-Time Tagging System 10. Story De-duplication and Mutation 11. Anomaly Detection on Sentiment Analysis 12. TrendCalculus 13. Secure Data 14. Scalable Algorithms

Gauging oil prices


Now that we have a substantial amount of data in our data store (we can always add more data using the preceding Spark job) we will proceed to query that data, using the GeoMesa API, to get the rows ready for application to our learning algorithm. We could of course use raw GDELT files, but the following method is a useful tool to have available.

Using the GeoMesa query API

The GeoMesa query API enables us to query for results based upon spatio-temporal attributes, whilst also leveraging the parallelization of the data store, in this case Accumulo with its iterators. We can use the API to build SimpleFeatureCollections, which we can then parse to realize GeoMesa SimpleFeatures and ultimately the raw data that matches our query.

At this stage we should build code that is generic, such that we can change it easily should we decide later that we have not used enough data, or perhaps if we need to change the output fields. Initially, we will extract a few fields; SQLDATE, Actor1Name...

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