Web Scrapping using Beautifulsoup and scrapingdog API

In this post we are going to scrape dynamic websites that use JavaScript libraries like React.js, Vue.js, Angular.js, etc you have to put extra efforts. It is an easy but lengthy process if you are going to install all the libraries like Selenium, Puppeteer, and headerless browsers like Phantom.js. But, we have a tool that can handle all this load itself. That is Web Scraping Tool which offers APIs and Tools for web scraping.

Why this tool? This tool will help us to scrape dynamic websites using millions of rotating proxies so that we don’t get blocked. It also provides a captcha clearing facility. It uses headerless chrome to scrape dynamic websites.

What will we need?

Web scraping is divided into two simple parts —

  • Fetching data by making an HTTP request
  • Extracting important data by parsing the HTML DOM

We willScrapingDog be using python and Scrapingdog API :

  • Beautiful Soup is a Python library for pulling data out of HTML and XML files.
  • Requests allow you to send HTTP requests very easily.

Setup

Our setup is pretty simple. Just create a folder and install Beautiful Soup & requests. To create a folder and install libraries type below given commands. I am assuming that you have already installed Python 3.x.



mkdir scraper
pip install beautifulsoup4
pip install requests

Now, create a file inside that folder by any name you like. I am using scraping.py.

Firstly, you have to sign up for this web scraping tool. It will provide you with 1000 FREE credits. Then just import Beautiful Soup & requests in your file. like this.

filter_none

edit
close

play_arrow

link
brightness_4
code

from bs4 import BeautifulSoup
import requests

chevron_right


Scrape the dynamic content

Now, we are familiar with Scrapingdog and how it works. But for reference, you should read the documentation of this API. This will give you a clear idea of how this API works. Now, we will scrape amazon for python books title.

Python books on Amazon

Now we have 16 books on this page. We will extract HTML from Scrapingdog API and then we will use Beautifulsoup to generate JSON response. Now in a single line, we will be able to scrape Amazon. For requesting an API I will use requests.

filter_none

edit
close

play_arrow

link
brightness_4
code

r = requests.get("https://api.scrapingdog.com/scrape?api_key=<your-api-key>&url=https://www.amazon.com/s?k=python+books&ref=nb_sb_noss_2&dynamic=true").text

chevron_right


this will provide you with an HTML code of that target URL.

Now, you have to use BeautifulSoup to parse HTML.

filter_none

edit
close

play_arrow

link
brightness_4
code

soup = BeautifulSoup(r, ’html.parser’)

chevron_right


Every title has an attribute of “class” with the name “a-size-mini a-spacing-none a-color-base s-line-clamp-2” and tag “h2”. You can look at that in the below image.

First, we will find out all those tags using variable soup.

filter_none

edit
close

play_arrow

link
brightness_4
code

allbooks = soup.find_all(“h2”, {“class”:”a-size-mini a-spacing-none a-color-base s-line-clamp-2"})

chevron_right


Then we will start a loop to reach all the titles of each book on that page using the length of the variable “allbooks”.

filter_none

edit
close

play_arrow

link
brightness_4
code

l ={}
u = list()
for i in range(0, len(allbooks)):
    l[“title”]= allbooks[i].text.replace(“\n”, ””)
    u.append(l)
    l ={}
print({"Titles":u})

chevron_right


The list “u” has all the titles and we just need to print it. Now, after printing the list “u”out of the for loop we get a JSON response. Which looks like…

Output-

{
 “Titles”: [
 {
 “title”: “Python for Beginners: 2 Books in 1: Python Programming for Beginners, Python Workbook”
 },
 {
 “title”: “Python Tricks: A Buffet of Awesome Python Features”
 },
 {
 “title”: “Python Crash Course, 2nd Edition: A Hands-On, Project-Based Introduction to Programming”
 },
 {
 “title”: “Learning Python: Powerful Object-Oriented Programming”
 },
 {
 “title”: “Python: 4 Books in 1: Ultimate Beginner’s Guide, 7 Days Crash Course, Advanced Guide, and Data Science, Learn Computer Programming and Machine Learning with Step-by-Step Exercises”
 },
 {
 “title”: “Intro to Python for Computer Science and Data Science: Learning to Program with AI, Big Data and The Cloud”
 },
 {
 “title”: “Python for Data Analysis: Data Wrangling with Pandas, NumPy, and IPython”
 },
 {
 “title”: “Automate the Boring Stuff with Python: Practical Programming for Total Beginners”
 },
 {
 “title”: “Python: 2 Books in 1: The Crash Course for Beginners to Learn Python Programming, Data Science and Machine Learning + Practical Exercises Included. (Artifical Intelligence, Numpy, Pandas)”
 },
 {
 “title”: “Python for Beginners: 2 Books in 1: The Perfect Beginner’s Guide to Learning How to Program with Python with a Crash Course + Workbook”
 },
 {
 “title”: “Python: 2 Books in 1: The Crash Course for Beginners to Learn Python Programming, Data Science and Machine Learning + Practical Exercises Included. (Artifical Intelligence, Numpy, Pandas)”
 },
 {
 “title”: “The Warrior-Poet’s Guide to Python and Blender 2.80”
 },
 {
 “title”: “Python: 3 Manuscripts in 1 book: — Python Programming For Beginners — Python Programming For Intermediates — Python Programming for Advanced”
 },
 {
 “title”: “Python: 2 Books in 1: Basic Programming & Machine Learning — The Comprehensive Guide to Learn and Apply Python Programming Language Using Best Practices and Advanced Features.”
 },
 {
 “title”: “Learn Python 3 the Hard Way: A Very Simple Introduction to the Terrifyingly Beautiful World of Computers and Code (Zed Shaw’s Hard Way Series)”
 },
 {
 “title”: “Python Tricks: A Buffet of Awesome Python Features”
 },
 {
 “title”: “Python Pocket Reference: Python In Your Pocket (Pocket Reference (O’Reilly))”
 },
 {
 “title”: “Python Cookbook: Recipes for Mastering Python 3”
 },
 {
 “title”: “Python (2nd Edition): Learn Python in One Day and Learn It Well. Python for Beginners with Hands-on Project. (Learn Coding Fast with Hands-On Project Book 1)”
 },
 {
 “title”: “Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems”
 },
 {
 “title”: “Hands-On Deep Learning Architectures with Python: Create deep neural networks to solve computational problems using TensorFlow and Keras”
 },
 {
 “title”: “Machine Learning: 4 Books in 1: Basic Concepts + Artificial Intelligence + Python Programming + Python Machine Learning. A Comprehensive Guide to Build Intelligent Systems Using Python Libraries”
 }
 ]
}



My Personal Notes arrow_drop_up

Check out this Author's contributed articles.

If you like GeeksforGeeks and would like to contribute, you can also write an article using contribute.geeksforgeeks.org or mail your article to contribute@geeksforgeeks.org. See your article appearing on the GeeksforGeeks main page and help other Geeks.

Please Improve this article if you find anything incorrect by clicking on the "Improve Article" button below.


Article Tags :

Be the First to upvote.


Please write to us at contribute@geeksforgeeks.org to report any issue with the above content.