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Data Analysis with Python

You're reading from   Data Analysis with Python A Modern Approach

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Product type Paperback
Published in Dec 2018
Publisher Packt
ISBN-13 9781789950069
Length 490 pages
Edition 1st Edition
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Author (1):
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David Taieb David Taieb
Author Profile Icon David Taieb
David Taieb
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Table of Contents (14) Chapters Close

Preface 1. Programming and Data Science – A New Toolset FREE CHAPTER 2. Python and Jupyter Notebooks to Power your Data Analysis 3. Accelerate your Data Analysis with Python Libraries 4. Publish your Data Analysis to the Web - the PixieApp Tool 5. Python and PixieDust Best Practices and Advanced Concepts 6. Analytics Study: AI and Image Recognition with TensorFlow 7. Analytics Study: NLP and Big Data with Twitter Sentiment Analysis 8. Analytics Study: Prediction - Financial Time Series Analysis and Forecasting 9. Analytics Study: Graph Algorithms - US Domestic Flight Data Analysis 10. The Future of Data Analysis and Where to Develop your Skills A. PixieApp Quick-Reference Other Books You May Enjoy Index

Wrangling data with pixiedust_rosie

Working in a controlled experiment is, most of the time, not the same as working in the real world. By this I mean that, during development, we usually pick (or I should say manufacture) a sample dataset that is designed to behave; it has the right format, it complies with the schema specification, no data is missing, and so on. The goal is to focus on verifying the hypotheses and build the algorithms, and not so much on data cleansing, which can be very painful and time-consuming. However, there is an undeniable benefit to get data that is as close to the real thing as early as possible in the development process. To help with this task, I worked with two IBM colleagues, Jamie Jennings and Terry Antony, who volunteered to build an extension to PixieDust called pixiedust_rosie.

This Python package implements a simple wrangle_data() method to automate the cleansing of raw data. The pixiedust_rosie package currently supports CSV and JSON, but more formats...

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