manning / Cs224n
Random stuff related to CS224N that I'm making public. Not the main repository.
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CS224N
Random stuff related to CS224N that I'm making public. Not the main repository.
Here are in-development assignments for the 2019 class, which uses Python and PyTorch.
Here are the videos from 2017 and the corresponding class website with slides.
Homework 1
Homework 1 is an IPython notebook. It doesn't require PyTorch. But you do need a few common Python (NLP) packages (numpy, scipy, matplotlib, scikit-learn, gensim, nltk). It relates to material covered in lectures 2 and 3 in the 2017 course.
Homework 2
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