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Long Shortterm Memory Networks With Python Develop Sequence Prediction Models With Deep Learning V10 Jason Brownlee

  • SKU: BELL-11132476
Long Shortterm Memory Networks With Python Develop Sequence Prediction Models With Deep Learning V10 Jason Brownlee
$ 31.00 $ 45.00 (-31%)

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Long Shortterm Memory Networks With Python Develop Sequence Prediction Models With Deep Learning V10 Jason Brownlee instant download after payment.

Publisher: Machine Learning Mastery
File Extension: PDF
File size: 6.78 MB
Pages: 246
Author: Jason Brownlee
Language: English
Year: 2017
Edition: v1.0

Product desciption

Long Shortterm Memory Networks With Python Develop Sequence Prediction Models With Deep Learning V10 Jason Brownlee by Jason Brownlee instant download after payment.

Preface
This book was born out of one thought:
If I had to get a machine learning practitioner proficient with LSTMs in two weeks (e.g. capable
of applying LSTMs to their own sequence prediction projects), what would I teach?
I had been researching and applying LSTMs for some time and wanted to write something on
the topic, but struggled for months on how exactly to present it. The above question crystallized
it for me and this whole book came together.
The above motivating question for this book is clarifying. It means that the lessons that I
teach are focused only on the topics that you need to know in order to understand (1) what
LSTMs are, (2) why we need LSTMs and (3) how to develop LSTM

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