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1
Intro
2
RNN cell
3
Training
4
Replication
5
Multiple layers
6
Recurrent neural networks
7
Recurrent cell architectures
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Language model
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Shakespeare
10
Perspective
11
Embed encode
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Embed encode properties
13
Classification
14
Bidirectional networks
15
Building a toxicity detector
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Embedding
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Encoding
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Bidirectional
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Toxicity
20
Google Translate
21
Adding attention
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Embedding words
23
Demonstration
24
Sequence to Sequence API
Description:
Explore the latest advancements in deep learning and neural network architectures in this comprehensive conference talk. Delve into cutting-edge developments in image recognition, natural language processing, and reinforcement learning. Learn about RNN cells, training replication, multiple layers, and recurrent neural networks. Discover various recurrent cell architectures and their applications in language modeling. Examine the properties of embed-encode techniques and their use in classification tasks. Investigate bidirectional networks and their implementation in toxicity detection. Gain insights into Google Translate's architecture and the role of attention mechanisms. Explore embedding words and the Sequence to Sequence API. Acquire practical tips, engineering best practices, and guidance for applying these advanced techniques in your own projects, all presented in an accessible manner that doesn't require a PhD.

Tensorflow, Deep Learning and Modern RNN Architectures - Without a PhD

Devoxx
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