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In the last video, we looked at how you can convert text into numbers so that machine learning models can consume that text. In this video we are going to look at two of those approaches which is label encoding and one hot encoding. Now before we continue with the discussion, uh I would suggest that you follow some prerequisites because in the coming videos we will be doing some coding and you need to have basic knowledge on pandas. Now I have pandas tutorial playlist. Go to YouTube, search for codebasics pandas, you find my tutorial playlist very popular, uh and you need to follow first 6 or 7 videos just to get a basic understanding of pandas. After that, you need to know some machine learning fundamentals too. Again I have a very popular playlist on YouTube codebasics machine learning playlist. In this, follow first maybe 8 or 10 videos, and then you can resume this series. Weamp;#39;re going to talk about spam detection. So spam detection is a classical problem, uh for text classi