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hi my name is vincent and iamp;#39;m a machine learning engineer over at explosion in this video iamp;#39;m going to show you a trick that i like to call bulk labeling that can really speed up data annotation when youamp;#39;re just about to start with a text classification use case by the end of this video youamp;#39;ll know how to use the interactive interface that youamp;#39;re seeing here to quickly bootstrap interesting subsets for annotation the technique leverages pre-existing language models to help you discover clusters of text and this technique is also something that weamp;#39;ll discuss in this video finally i will also show you how i like to use this technique as part of my prodigy workflow but before we get to all of that letamp;#39;s first discuss a data set and a task just to make a very tangible starting point so letamp;#39;s talk about the data set and task that iamp;#39;ll be using in this video as you can see here in jupyter i am loading in a dataset.csv fi