All Tutorials Python Tutorials

Python Web Scraping For Information Retrieval and Analytics

Python Webscraping For Information Retrieval and Analytics
Python Webscraping For Information Retrieval and Analytics

Python Web scraping For Information Retrieval and Analytics

Retrieve Information from Webpages Using Python and Google CoLab for Analytics and Insights

What you’ll learn

Python Web scraping For Information Retrieval and Analytics

  • Be Able To Use the Python Within Google CoLab For Practical Data Science
  • Webpage Basics
  • Scraping Common Wikipedia Pages For Information
  • Scaping Complicated Webpages For Information Using BeautifulSoup (A Common Python Library)
  • Basic Geocoding
  • Data Processing and Cleaning To Extract Information From The Scraped Data
  • Analyzing the Scraped and Cleaned Data For Actionable Insights
  • Data Visualization
  • Work With Practical Examples- (a) Geocoding London’s Boroughs (b) Obtain Apartment Prices For Mumbai (c) Extract Amazon Reviews


  • Be Able To Operate & Install Software On A Computer
  • A Gmail Account
  • Prior Exposure to the Python Will be Helpful
  • Prior Exposure to the Jupyter Notebook Ecosystem



  • Do you want to harness the power of the internet to inform your data-driven strategies?
  • Are you looking to gain an edge in the fields of retail, online selling, real estate, and geolocation services?
  • Do you want to turn unstructured data from articles and web pages into real insights?
  • Do you want to develop cutting-edge analytics and visualizations to take advantage of the World Wide Web?

Gaining proficiency in web scraping (and associated analytics) can help you harness the power of the freely available data and information on the world wide web and turn it into actionable insights

MY COURSE IS A HANDS-ON TRAINING WITH REAL WEB SCRAPING EXAMPLES- You will learn to use an important Python web scraping library BeautifulSoup and derive information and insights from different webpages

My course provides a foundation to carry out PRACTICAL, real-life web scraping. By taking this course, you are taking an important step forward in your data science journey to become an expert in harnessing the power of the world wide web for deriving insights.

Why Should You Take My Course?

I have an MPhil (Geography and Environment) from the University of Oxford, UK, also completed a data science intense Ph.D. at Cambridge University (Tropical Ecology and Conservation).

I have several years of experience in analyzing real-life data from different sources and producing publications for international peer-reviewed journals.

This course will help you gain fluency both in BeautifulSoup (for web scraping), web-data processing, and analytics using a powerful clouded based python environment called GoogleColab. Specifically, you will

  • Gain proficiency in setting up and using Google CoLab for Python Data Science tasks
  • Carry out common web scraping tasks on Wikipedia pages and extract relevant information
  • Work with complicated web pages and extract information
  • Process the extracted information in a usable form
  • Carry out basic geocoding
  • Carry out common analytics and visualization tasks

You will work on practical mini case studies relating to (a) geocoding London boroughs (b) quantifying the variation in Mumbai property prices (c) extracting financial statements among others

In addition to all the above, you’ll have MY CONTINUOUS SUPPORT to make sure you get the most value out of your investment!


Who this course is for:

  • People Wanting To Master The Python/Google Colab Environment For Data Science
  • People Interested in Scraping Information Of Simple and Standard Websites
  • Who People Interested In Learning About Scraping Relevant Information Off Complicated Websites
  • People Interested in Gaining Exposure to Basic Geocoding
  • People Interested in Deriving Insights From Web Scraped Data
  • Last updated 4/2021

Python Web scraping For Information Retrieval and Analytics

Content From:
Download Now Python + Data Science : Practical Guide [13 Hours]