Book Image

Python Web Scraping Cookbook

By : Michael Heydt
Book Image

Python Web Scraping Cookbook

By: Michael Heydt

Overview of this book

Python Web Scraping Cookbook is a solution-focused book that will teach you techniques to develop high-performance scrapers and deal with crawlers, sitemaps, forms automation, Ajax-based sites, caches, and more. You'll explore a number of real-world scenarios where every part of the development/product life cycle will be fully covered. You will not only develop the skills needed to design and develop reliable performance data flows, but also deploy your codebase to AWS. If you are involved in software engineering, product development, or data mining (or are interested in building data-driven products), you will find this book useful as each recipe has a clear purpose and objective. Right from extracting data from the websites to writing a sophisticated web crawler, the book's independent recipes will be a godsend. This book covers Python libraries, requests, and BeautifulSoup. You will learn about crawling, web spidering, working with Ajax websites, paginated items, and more. You will also learn to tackle problems such as 403 errors, working with proxy, scraping images, and LXML. By the end of this book, you will be able to scrape websites more efficiently and able to deploy and operate your scraper in the cloud.
Table of Contents (13 chapters)

Determining and removing stop words

Stop words are common words that, in a natural language processing situation, do not provide much contextual meaning. These words are often the most common words in a language. These tend to, at least in English, be articles and pronouns, such as I, me, the, is, which, who, at, among others. Processing of meaning in documents can often be facilitated by removal of these words before processing, and hence many tools support this ability. NLTK is one of these, and comes with support for stop word removal for roughly 22 languages.

How to do it

Proceed with the recipe as follows (code is available in 07/06_freq_dist.py):

  1. The following demonstrates stop word removal using NLTK. First,...