I have a panda dataframe. There is one column, let's name it: 'col' Each entry of this column is a list of words. ['word1', 'word2', etc.]
How can I efficiently compute the lemma of all of those words using the nltk library?
import nltk nltk.stem.WordNetLemmatizer().lemmatize('word')
I want to be able to find a lemma for all words of all cells in one column of a pandas dataset.
My data looks similar to:
import pandas as pd data = [[['walked','am','stressed','Fruit']],[['going','gone','walking','riding','running']]] df = pd.DataFrame(data,columns=['col'])