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the first step in text vectorization is creating the vocabulary if you want to understand how vocabulary is created check out this video once we have our vocabulary we can apply a bag of words technique in this technique we start with the vocabulary and search each word inside the sentences or the document this is different than one hot encoding where we start with the sentence and search in the vocabulary so here we start with the first word in vocabulary and write down one because this word appears one time in the sentence or the document then we move on to the second word in vocabulary we search it in the sentence and write one similarly for is then the word bond appears twice so we write two and then the last two words donamp;#39;t appear in our sentence so we write zero congratulations the first sentence or the document in your data set is vectorized now we can repeat the same process for second and third sentence and the entire data set will be vectorized and because we