Embedding Tensor
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![[Chapter 8] Paper Replicating, position embedding · mrdbourke pytorch ...](https://user-images.githubusercontent.com/7630655/233136508-43fd415f-ecb7-4073-8876-97ba9028b7a5.png)






![[Tech With Tim] Tensorflow 2.0 Tutorial - What is an Embedding Layer ...](https://1.bp.blogspot.com/-kGu7ixft_0Y/XubLH2_7_HI/AAAAAAAAQg0/EORyLx12BKw1Y3rZSuCUIby1LOO4IbJpgCLcBGAsYHQ/s1600/1.jpg)





















![[Solved, Self Implementing] How to return sparse tensor from nn ...](https://discuss.pytorch.org/uploads/default/original/2X/e/eb188162034636bd147b76a90f4506f8b8a51e1b.jpeg)
























![[pytorch] Embedding, LSTM 입출력 텐서(Tensor) Shape 이해하고 모델링 하기 - YouTube](https://i.ytimg.com/vi/BbBCLPl0x_U/maxresdefault.jpg)









