


Why Does BeautifulSoup Throw a KeyError When Retrieving Elements by Class and How Can I Fix It?
Error Handling: Retrieving Elements by Class using BeautifulSoup
When parsing HTML elements with the "class" attribute using Beautifulsoup, an error may occur. This error arises when attempting to retrieve the "class" attribute using the ["class"] syntax. For instance, the code below demonstrates this:
import BeautifulSoup sdata = '...' soup = BeautifulSoup(sdata) mydivs = soup.findAll('div') for div in mydivs: if (div["class"] == "stylelistrow"): print div
Upon execution, the script may terminate with an error similar to:
File "./beautifulcoding.py", line 130, in getlanguage if (div["class"] == "stylelistrow"): File "/usr/local/lib/python2.6/dist-packages/BeautifulSoup.py", line 599, in __getitem__ return self._getAttrMap()[key] KeyError: 'class'
Solution: Using find_all
To resolve this error, the code can be modified to utilize the find_all method of BeautifulSoup to refine the search for elements with a specific class. The following revised code snippet demonstrates this:
mydivs = soup.find_all("div", {"class": "stylelistrow"})
By using the find_all method and specifying a dictionary containing the "class" attribute as key and the desired class value as value, the script can accurately retrieve the elements with the specified class. This solution effectively addresses the error and enables the retrieval of elements with a desired class attribute.
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