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Practical Data Science with Python

You're reading from   Practical Data Science with Python Learn tools and techniques from hands-on examples to extract insights from data

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Product type Paperback
Published in Sep 2021
Publisher Packt
ISBN-13 9781801071970
Length 620 pages
Edition 1st Edition
Languages
Tools
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Author (1):
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Nathan George Nathan George
Author Profile Icon Nathan George
Nathan George
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Table of Contents (30) Chapters Close

Preface 1. Part I - An Introduction and the Basics
2. Introduction to Data Science FREE CHAPTER 3. Getting Started with Python 4. Part II - Dealing with Data
5. SQL and Built-in File Handling Modules in Python 6. Loading and Wrangling Data with Pandas and NumPy 7. Exploratory Data Analysis and Visualization 8. Data Wrangling Documents and Spreadsheets 9. Web Scraping 10. Part III - Statistics for Data Science
11. Probability, Distributions, and Sampling 12. Statistical Testing for Data Science 13. Part IV - Machine Learning
14. Preparing Data for Machine Learning: Feature Selection, Feature Engineering, and Dimensionality Reduction 15. Machine Learning for Classification 16. Evaluating Machine Learning Classification Models and Sampling for Classification 17. Machine Learning with Regression 18. Optimizing Models and Using AutoML 19. Tree-Based Machine Learning Models 20. Support Vector Machine (SVM) Machine Learning Models 21. Part V - Text Analysis and Reporting
22. Clustering with Machine Learning 23. Working with Text 24. Part VI - Wrapping Up
25. Data Storytelling and Automated Reporting/Dashboarding 26. Ethics and Privacy 27. Staying Up to Date and the Future of Data Science 28. Other Books You May Enjoy
29. Index

The ethics and legality of web scraping

The legality of web scraping has changed over the years. For example, a company called "Bidder's Edge" was scraping eBay in the late 1990s for their auction data. eBay took them to court and Bidder's Edge agreed to pay eBay a settlement in cash and stop scraping their data. However, in more recent times (2019), the company hiQ won a court ruling against LinkedIn, allowing hiQ to scrape LinkedIn's public-facing data. The legal precedent at this point seems to be that if the data is public-facing, it can be scraped. This means if we can access the data without logging in to an account (and without clicking any buttons agreeing to terms of service), then we are probably legally allowed to scrape the data. However, big companies have lots of resources and lawyers, so scraping their data and using it to create a business runs the risk of litigation, like in the case of hiQ.

Craigslist is an example of a site that is...

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