In this tutorial we will use a technique called web scraping to extract data from a website.
We’ll be using Python 3.7 through a Jupyter Notebook on Anaconda and the Python libraries urllib, BeautifulSoup and Pandas.
(If you don’t have Anaconda or Jupyter Notebook installed on your Windows machine, check out our tutorial How Do I Install Anaconda On Windows? before getting started. If you’re on Linux or Mac OS X you’ll have to Google it. Bill Gates fanboy in the house.…)
What is Web Scraping?
Web scraping (also known as screen scraping, data scraping, web harvesting, web data extraction and a multitude of other aliases) is a method for extracting data from web pages.
I’ve done a quick primer on WTF Is…Web Scraping to get you up to speed on what it is and why we might use it. Have a quick read and re-join the tour group as soon as possible.
Step By Step Tutorial
OK. Now we know what web scraping is and why we might have to use it to get data out of a website.
How exactly do we get started scraping and harvesting all of that delicious data for our future perusal and use?
Standing on the shoulders of giants.
When I first tried screen scraping with Python I used an earlier version of it and worked through Sunil Ray’s Beginner’s Guide on the Analytics Vidhya blog.
Working with Python 3.7 now I had to change some libraries plus do a few further corrective steps for the data I’m looking to get hence not just pointing you straight to that article.
Which Python libraries will we be using for web scraping?
Urllib.request: As we are using Python 3.7, we will use urllib.request to fetch the HTML from the URL we specify that we want to scrape. Learn more about urllib.request.
BeautifulSoup: Once urllib.request has pulled in the content from the URL, we use the power of BeautifulSoup to extract and work with the data within it. BeautifulSoup4 has a multitude of functions at it’s disposal to make this incredibly easy for us. Learn more about Beautiful Soup.
Anything else we need to know before we kick this off?
Are you familiar with HTML? HTML (Hypertext Markup Language) is the standard markup langauge for creating web pages. It consists of a collection of tags which represent HTML elements. These elements combined tell your web browser what the structure of the web page looks like. In this tutorial we will mostly be concerned with the HTML table tags as our data is contained in a table. For more reading on HTML, check out W3Schools Introduction to HTML.
Right, let’s get into it.
1) Open a new Jupyter notebook. You do have it installed, don’t you? You didn’t just skip the advice at the top, did you? If so, go back and get that done then come back to this point.
2) Like our friend Sunil, we are going to scrape some data from a Wikipedia page. While he was interested in state capitals in India, I’ve decided to pick a season at random from the English Premier League, namely the 1999/2000 season.
When I went and looked at the page I instantly regretted picking this season (fellow Tottenham Hotspur fans will understand why when they see the manager and captain at the end but I’ll stick with it as some kind of sado-masochism if nothing else).
3) Firstly, we need to import the library we will be using to connect to the Wikipedia page and fetch the contents of that page:
# import the library we use to open URLs import urllib.request
Next we specify the URL of the Wikipedia page we are looking to scrape:
# specify which URL/web page we are going to be scraping url = "https://en.wikipedia.org/wiki/1999%E2%80%932000_FA_Premier_League"
Using the urllib.request library, we want to query the page and put the HTML data into a variable (which we have called ‘url’):
# open the url using urllib.request and put the HTML into the page variable page = urllib.request.urlopen(url)
4) Next we want to import the functions from Beautiful Soup which will let us parse and work with the HTML we fetched from our Wiki page:
# import the BeautifulSoup library so we can parse HTML and XML documents from bs4 import BeautifulSoup
Then we use Beautiful Soup to parse the HTML data we stored in our ‘url’ variable and store it in a new variable called ‘soup’ in the Beautiful Soup format. Jupyter Notebook prefers we specify a parser format so we use the “lxml” library option:
# parse the HTML from our URL into the BeautifulSoup parse tree format soup = BeautifulSoup(page, "lxml")
5) To get an idea of the structure of the underlying HTML in our web page, we can view the code in two ways: a) right click on the web page itself and click View Source or b) use Beautiful Soup’s prettify function and check it out right there in our Jupyter Notebook.
Let’s see what prettify() gives us:
6) By looking at our Wikipedia page for the 1999/2000 Premier League season, we can see there is a LOT of information in there. From a written synopsis of the season to specific managerial changes, we have a veritable treasure trove of data to mine.
What we are going to go for though is the table which shows the personnel and kits for each Premier League club. It’s already set up in nice rows and columns which should make our job a little easier as beginner web scrapers.
Let’s have a look for it in our prettifyed HTML:
And there it is.
Starting with an HTML <table> tag with a class identifier of “wikitable sortable”. We’ll make a note of that for further use later.
Scroll down a little to see how the table is made up and you’ll see the rows start and end with <tr> and </tr> tags.
The top row of headers has <th> tags while the data rows beneath for each club has <td> tags. It’s in these <td> tags that we will tell Python to extract our data from.
7) Before we get to that, let’s try out a few Beautiful Soup functions to illustrate how it captures and is able to return data to us from the HTML web page.
If we use the title function, Beautiful Soup will return the HTML tags for the title and the content between them. Specify the string element of ‘title’ and it gives us just the content string between the tags:
8) We can use this knowledge to start planning our attack on the HTML and homing in only on the table of personnel and kit information that we want to work with on the page.
We know the data resides within an HTML table so firstly we send Beautiful Soup off to retrieve all instances of the <table> tag within the page and add them to an array called all_tables:
# use the 'find_all' function to bring back all instances of the 'table' tag in the HTML and store in 'all_tables' variable all_tables=soup.find_all("table") all_tables
Looking through the output of “all_tables” we can again see that the class id of our chosen table is “wikitable sortable”. We can use this to get BS to only bring back the table data for this particular table and keep that in a variable called “right_table”:
right_table=soup.find('table', class_='wikitable sortable') right_table
9) Now it starts to get a little more technical. We know that the table is set up in rows (starting with <tr> tags) with the data sitting within <td> tags in each row. We aren’t too worried about the header row with the <th> elements as we know what each of the columns represent by looking at the table.
To step things up a notch we could have set BS to find the <th> tags and assigned the contents of each to a variable for future use.
We’ve got enough to get getting on with getting the actual data though so let’s crack on.
10) We know we have to start looping through the rows to get the data for every club in the table. The table is well structured with each club having it’s own defined row. This makes things somewhat easier.
There are five columns in our table that we want to scrape the data from so we will set up five empty lists (A, B, C, D and E) to store our data in.
To start with, we want to use the Beautiful Soup ‘find_all’ function again and set it to look for the string ‘tr’. We will then set up a FOR loop for each row within that array and set Python to loop through the rows, one by one.
Within the loop we are going to use ‘find_all’ again to search each row for <td> tags with the ‘td’ string. We will add all of these to a variable called ‘cells’ and then check to make sure that there are 5 items in our ‘cells’ array (i.e. one for each column).
If there are then we use the ‘find(text=True))’ option to extract the content string from within each <td> element in that row and add them to the A-E lists we created at the start of this step. Let’s have a look at the code:
A= B= C= D= E= for row in right_table.findAll('tr'): cells=row.findAll('td') if len(cells)==5: A.append(cells.find(text=True)) B.append(cells.find(text=True)) C.append(cells.find(text=True)) D.append(cells.find(text=True)) E.append(cells.find(text=True))
Still with me? Good. This all should work perfectly, shouldn’t it?
We’re looping through each row, picking out the <td> tags and plucking the contents from each into a list.
Bingo. This is an absolute gift. Makes you wonder why people make such a fuss about it, doesn’t it?
11) To see what our loop through the Personnel and Kits table has brought us back, we need to bring in another big hitter of the Python library family – Pandas. Pandas lets us convert lists into dataframes which are 2 dimensional data structures with rows and columns, very much like spreadsheets or SQL tables.
We’ll import pandas and create a dataframe with it, assigning each of the lists A-E into a column with the name of our source table columns i.e. Team, Manager, Captain, Kit_Manufacturer and Shirt_Sponsor.
import pandas as pd df=pd.DataFrame(A,columns=['Team']) df['Manager']=B df['Captain']=C df['Kit_manufacturer']=D df['Shirt_sponsor']=E df
Let’s run the Pandas code and see what our table looks like:
Hmmm. That’s not what we wanted. Where’s the Manager and Captain data? 🙁
Clearly something went wrong in those cells so we need to go back to our HTML to see what the problem is.
12) Looking at our HTML, there does indeed seem to be something a little different about the Manager and Captain data within the <td> tags. Wikipedia has (very helpfully/unhelpfully) added a little flag within <span> tags to help display the nationality of the Managers and Captains in question.
It sure looks nice on the Wiki page but it’s messing up my screen-scraping tutorial so I’m somewhat less than happy to have it in there.
Using the knowledge we’ve gained above, is there a simple way to workaround this problem and just lift out the Manager and Captain names as we planned?
This is how I decided to do it.
Looking at the HTML code, I can see that there are two sets of <a> tags i.e. hyperlinks within each cell for both the Manager and Captain data. The first is a link over the flag’s <img> tag and the second is a link on the Manager/Captain’s name.
If we can get the content string between the <a> and </a> tags on the SECOND of those, we have got the data we need.
I did a ‘find_all’ within the individual cells to look for the <a> tags and assign that to a variable (mlnk for Managers, clnk for Captains). I knew it was the second <a> tag’s content string that I needed to get the name of the Manager and the Captain so I appended the content of the second element in the mlnk/clnk array I had created to the specific list (list B for Managers, list C for Captains).
A= B= C= D= E= for row in right_table.findAll('tr'): cells=row.findAll('td') if len(cells)==5: A.append(cells.find(text=True)) mlnk=cells.findAll('a') B.append(mlnk.contents) clnk=cells.findAll('a') C.append(clnk.contents) D.append(cells.find(text=True)) E.append(cells.find(text=True))
Now run that and re-run our pandas code from before and “hopefully” we’ll fill in those blanks from the previous output:
We now have 20 rows for the 20 clubs with columns for Team Name, Manager, Captain, Kit Manufacturer and Shirt Sponsor. Just like we always wanted.
(I’ll ignore the names in the Manager and Captain columns for Tottenham, must research my examples better before getting started…)
And that brings us to the end of our Getting Started Web Scraping with Python tutorial. Hopefully it gives you enough to get working on to try some scraping out for yourself. We’ve introduced urllib.request to fetch the URL and HTML data, Beautiful Soup to parse the HTML and Pandas to transform the data into a dataframe for presentation.
We also saw that things don’t always work out just as easily as we hope for when working with web pages but it’s best to roll with the punches and come up with a plan to workaround it as simply as possible,
If you have any questions, please send me a mail (alan AT simpleanalytical DOT com). Happy scraping but if you get caught…we never met!