Limit search to available items
1 result found. Sorted by relevance | date | title .
E-BOOK
Author Vo, Lam Thuy.

Title Mining social media [electronic resource] : Finding stories in internet data. Lam Thuy Vo.

Imprint 2019.
LOCATION CALL # NOTE STATUS
 Cottey Electronic Resources  AVAILABLE
 Crowder Electronic Book  AVAILABLE
 OCC Electronic Resource  AVAILABLE
 OTC Electronic Resources  AVAILABLE
 SBU BOL E-books  AVAILABLE
Text item location
Description 1 online resource
Summary BuzzFeed News Senior Reporter Lam Thuy Vo explains how to mine, process, and analyze data from the social web in meaningful ways with the Python programming language. Did fake Twitter accounts help sway a presidential election? What can Facebook and Reddit archives tell us about human behavior? In Mining Social Media , senior BuzzFeed reporter Lam Thuy Vo shows you how to use Python and key data analysis tools to find the stories buried in social media. Whether you're a professional journalist, an academic researcher, or a citizen investigator, you'll learn how to use technical tools to collect and analyze data from social media sources to build compelling, data-driven stories. Learn how to:    •   Write Python scripts and use APIs to gather data from the social web    •   Download data archives and dig through them for insights    •   Inspect HTML downloaded from websites for useful content    •   Format, aggregate, sort, and filter your collected data using Google Sheets    •   Create data visualizations to illustrate your discoveries    •   Perform advanced data analysis using Python, Jupyter Notebooks, and the pandas library    •   Apply what you've learned to research topics on your own Social media is filled with thousands of hidden stories just waiting to be told. Learn to use the data-sleuthing tools that professionals use to write your own data-driven stories.
Reproduction Electronic reproduction. New York : No Starch Press, 2019. Requires OverDrive Read (file size: N/A KB) or Adobe Digital Editions (file size: 23388 KB) or Kobo app or compatible Kobo device (file size: N/A KB) or Amazon Kindle (file size: N/A KB).
Related To Original 9781593279165
ISBN 9781593279172 (electronic bk)
OCLC # ODN0004715515