I have some data in which column 'X' contains strings. I am writing a function, using pyspark, where a search_word is passed and all rows which do not contain the substring search_word within the column 'X' string are filtered out. The function must also allow for misspellings of the word, i.e. fuzzy matching. I have loaded the data into a pyspark dataframe and written a function using the NLTK and fuzzywuzzy python libraries to return True or False if the string contains the search_word.
My problem is that I cannot map the function to the dataframe correctly. Am I approaching this problem incorrectly? Should I be trying to do the fuzzy match through some kind of SQL query, or using an RDD perhaps?
I am new to pyspark so I feel like this question must have been answered before but I cannot find the answer anywhere. I have never done any NLP with SQL and I have never heard of SQL being capable of fuzzy matching a substring.
The function looks like:
wf = WordFinder(search_word='some_substring') result1 = wf.find_word_in_string(string_to_search='string containing some_substring or misspelled some_sibstrung') result2 = wf.find_word_in_string(string_to_search='string not containing the substring')
result1 is True
result2 is False