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this is ritesh srinivasan and welcome to my channel in this video lets look at what is zero short text classification let us look at what is textual entailment task in nlp we will also see a hugging phase zero shot classification demo right and well see how that model works lets get started so what is zero shot learning traditionally zero shot learning most often it is referred to as fairly specific type of task which is to learn a classifier on one set of labels and then evaluate on a different set of labels than the classifier that the classifier has never seen before so the idea is you will train a classifier on a set of labels on a data set now you are going to give to this model a new data set along with new labels and it should still be able to do classification ok for example it could be a text classification right where we have trained sentiment analysis on certain text right and now you are going to give some new text with some different labels and the model should be stil