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uh hello community today i want to talk to you about why esport sentence embedding is not birth sentence vector embedding to make it absolutely clear im going to show you the difference between the s part model versus the bird sentence vector model so here we go if you have not seen my video on bird word vector and bird sentence vector a very short summary in one minute what is bert birch is based on a transformer but it just uses the encoder of the transformer and it is an encoder stack as you can see here on the left size we have 12 encoder stacked on top of each other and give them an input its coming from the bottom and we have a sentence of course sentence is how are you and you know since its bird we have a specific word piece tokenization we have a classification at the very beginning of each and every sentence this is the cls then we have an embedding layer where all our words are compared or translated to a numerical representation in our vocabulary and then we