hey everyone welcome back it's been
quite a while hasn't it I'm back and I'm
really excited today to talk to you
about coding recurrent neural networks
or rnns
now this is going to be a follow-up or
an extension video to our theory behind
rnn's video which is linked at the top
of this notebook and also in the
description of this video it'll be super
helpful to have watched that before so
you can map all of the theory you know
to the code yo...
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