
Wednesday, 28 March 2018
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Published in
Data,
R,
Code,
Analytics,
Exploratory Data Science,
Data Science,
Data Visualization,
R Shiny
Introduction In Part 1, we built an application to geographically explore the 500 Cities Project dataset from the CDC. In this post, we will demonstrate other exploratory data analysis (EDA) techniques for exploring a new dataset. The analysis will be done with R packages data.table, ggplot2 and highcharter.
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