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Python Social Media Analytics

You're reading from   Python Social Media Analytics Analyze and visualize data from Twitter, YouTube, GitHub, and more

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Product type Paperback
Published in Jul 2017
Publisher Packt
ISBN-13 9781787121485
Length 312 pages
Edition 1st Edition
Languages
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Authors (3):
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Baihaqi Siregar Baihaqi Siregar
Author Profile Icon Baihaqi Siregar
Baihaqi Siregar
Siddhartha Chatterjee Siddhartha Chatterjee
Author Profile Icon Siddhartha Chatterjee
Siddhartha Chatterjee
Michal Krystyanczuk Michal Krystyanczuk
Author Profile Icon Michal Krystyanczuk
Michal Krystyanczuk
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Toc

Table of Contents (10) Chapters Close

Preface 1. Introduction to the Latest Social Media Landscape and Importance FREE CHAPTER 2. Harnessing Social Data - Connecting, Capturing, and Cleaning 3. Uncovering Brand Activity, Popularity, and Emotions on Facebook 4. Analyzing Twitter Using Sentiment Analysis and Entity Recognition 5. Campaigns and Consumer Reaction Analytics on YouTube – Structured and Unstructured 6. The Next Great Technology – Trends Mining on GitHub 7. Scraping and Extracting Conversational Topics on Internet Forums 8. Demystifying Pinterest through Network Analysis of Users Interests 9. Social Data Analytics at Scale – Spark and Amazon Web Services

Working environment

The choice of the right tools is decisive for the smooth execution of the process. There are some important parts of the environment which facilitate data manipulation and algorithm implementation, but above all, they make the data science reproducible. We have selected the main components, which are widely used by data scientists all over the world, related to programming language, integrated development environment, and version control system.

Defining Python

Python is one of the most common programming languages among data scientists, along with R. The main advantage of Python is its flexibility and simplicity. It makes the data analysis and manipulation easy by offering a lot of packages. It shows great performance in analyzing unstructured textual data and has a very good ecosystem of tools and packages for this purpose.

For the purposes of the book, we have chosen Python 3.5.2. It is the most up-to-date version, which implements many improvements compared to Python 2.7. The main advantage in text analysis is an automatic management of Unicode variables. Python 2.7 is still widely used by programmers and data scientists due to a big choice of external libraries, documentation, and online resources. However, the new version has already reached a sufficient level of compatibility with packages, and on top of it, offers multiple new features.

We will use the pip command tool for installation of all libraries and dependencies.

Selecting an IDE

The choice of IDE (Integrated Development Environment) is mostly a matter of personal preferences. The most common choices are PyCharm, Sublime Text, or Atom. PyCharm is a very complete development environment while Sublime Text is a lightweight text editor which allows us to install additional plugins. Its main advantage is the fact that the user can choose the tools that he needs for his development. Atom is the newest software of all three, similar to Sublime Text. It was developed by GitHub and integrates by default the git version control system. In the book, we will use Sublime Text as the simplest and the easiest solution to start data analysis and development.

Illustrating Git

A version control system is one of the main elements of programming process. It helps to manage different versions of the code over time and reverse the changes in case of errors or wrong approach. The most widespread and easy-to-use version control system is Git and we will use it in our examples.

You have been reading a chapter from
Python Social Media Analytics
Published in: Jul 2017
Publisher: Packt
ISBN-13: 9781787121485
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