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Linkdump #15
October 28, 2016 10:29 am
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Markus Konrad
R
Election 2016: Tracking Emotions with R and Python
Plotting individual observations and group means with ggplot2
Python
PyData DC 2016 Conference Videos
Data Journalist David Eads on Sustainable scrapers
Bullet Proofing Django Models
mechanize – Stateful programmatic web browsing in Python
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