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You're reading from  Hands-On Mathematics for Deep Learning

Product typeBook
Published inJun 2020
Reading LevelIntermediate
PublisherPackt
ISBN-139781838647292
Edition1st Edition
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Author (1)
Jay Dawani
Jay Dawani
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Jay Dawani

Jay Dawani is a former professional swimmer turned mathematician and computer scientist. He is also a Forbes 30 Under 30 Fellow. At present, he is the Director of Artificial Intelligence at Geometric Energy Corporation (NATO CAGE) and the CEO of Lemurian Labs - a startup he founded that is developing the next generation of autonomy, intelligent process automation, and driver intelligence. Previously he has also been the technology and R&D advisor to Spacebit Capital. He has spent the last three years researching at the frontiers of AI with a focus on reinforcement learning, open-ended learning, deep learning, quantum machine learning, human-machine interaction, multi-agent and complex systems, and artificial general intelligence.
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Long short-term memory

As we saw earlier, the standard RNN does have some limitations; in particular, they suffer from the vanishing gradient problem. The LSTM architecture was proposed by Jürgen Schmidhuber (ftp://ftp.idsia.ch/pub/juergen/lstm.pdf) as a solution to the long-term dependency problem that RNNs face.

LSTM cells differ from vanilla RNN cells in a few ways. Firstly, they contain what we call a memory block, which is basically a set of recurrently connected subnets. Secondly, each of the memory blocks contains not only self-connected memory cells but also three multiplicative units that represent the input, output, and forget gates.

Let's take a look at what a single LSTM cell looks like, then we will dive into the nitty-gritty of it to gain a better understanding. In the following diagram, you can see what an LSTM block looks like and the operations that...

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Hands-On Mathematics for Deep Learning
Published in: Jun 2020Publisher: PacktISBN-13: 9781838647292

Author (1)

author image
Jay Dawani

Jay Dawani is a former professional swimmer turned mathematician and computer scientist. He is also a Forbes 30 Under 30 Fellow. At present, he is the Director of Artificial Intelligence at Geometric Energy Corporation (NATO CAGE) and the CEO of Lemurian Labs - a startup he founded that is developing the next generation of autonomy, intelligent process automation, and driver intelligence. Previously he has also been the technology and R&D advisor to Spacebit Capital. He has spent the last three years researching at the frontiers of AI with a focus on reinforcement learning, open-ended learning, deep learning, quantum machine learning, human-machine interaction, multi-agent and complex systems, and artificial general intelligence.
Read more about Jay Dawani