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The Data Wrangling Workshop

You're reading from   The Data Wrangling Workshop Create your own actionable insights using data from multiple raw sources

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Product type Paperback
Published in Jul 2020
Publisher Packt
ISBN-13 9781839215001
Length 576 pages
Edition 2nd Edition
Languages
Tools
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Authors (3):
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Dr. Tirthajyoti Sarkar Dr. Tirthajyoti Sarkar
Author Profile Icon Dr. Tirthajyoti Sarkar
Dr. Tirthajyoti Sarkar
Shubhadeep Roychowdhury Shubhadeep Roychowdhury
Author Profile Icon Shubhadeep Roychowdhury
Shubhadeep Roychowdhury
Brian Lipp Brian Lipp
Author Profile Icon Brian Lipp
Brian Lipp
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Table of Contents (11) Chapters Close

Preface
1. Introduction to Data Wrangling with Python 2. Advanced Operations on Built-In Data Structures FREE CHAPTER 3. Introduction to NumPy, Pandas, and Matplotlib 4. A Deep Dive into Data Wrangling with Python 5. Getting Comfortable with Different Kinds of Data Sources 6. Learning the Hidden Secrets of Data Wrangling 7. Advanced Web Scraping and Data Gathering 8. RDBMS and SQL 9. Applications in Business Use Cases and Conclusion of the Course Appendix

Python for Data Wrangling

There is always a debate regarding whether to perform the wrangling process using an enterprise tool or a programming language and its associated frameworks. There are many commercial, enterprise-level tools for data formatting and preprocessing that do not involve much coding on the user's part. Some of these examples include the following:

  • General-purpose data analysis platforms, such as Microsoft Excel (with add-ins)
  • Statistical discovery package, such as JMP (from SAS)
  • Modeling platforms, such as RapidMiner
  • Analytics platforms from niche players that focus on data wrangling, such as Trifacta, Paxata, and Alteryx

However, programming languages such as Python and R provide more flexibility, control, and power compared to these off-the-shelf tools. This also explains their tremendous popularity in the data science domain:

Figure 1.2: Google trends worldwide over the last 5 years

Figure 1.2: Google trends worldwide over the last 5 years

Furthermore, as the volume, velocity, and variety (the three Vs of big data) of data undergo rapid changes, it is always a good idea to develop and nurture a significant amount of in-house expertise in data wrangling using fundamental programming frameworks so that an organization is not beholden to the whims and fancies of any particular enterprise platform for as basic a task as data wrangling.

A few of the obvious advantages of using an open source, free programming paradigm for data wrangling are as follows:

  • A general-purpose open-source paradigm puts no restrictions on any of the methods you can develop for the specific problem at hand.
  • There's a great ecosystem of fast, optimized, open-source libraries, focused on data analytics.
  • There's also growing support for connecting Python to every conceivable data source type.
  • There's an easy interface to basic statistical testing and quick visualization libraries to check data quality.
  • And there's a seamless interface of the data wrangling output with advanced machine learning models.

Python is the most popular language for machine learning and artificial intelligence these days. Let's take a look at a few data structures in Python.

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