Lecture 9: Machine Translation and Advanced Recurrent LSTMs and GRUs

  Рет қаралды 90,412

Stanford University School of Engineering

Stanford University School of Engineering

7 жыл бұрын

Lecture 9 recaps the most important concepts and equations covered so far followed by machine translation and fancy RNN models tackling MT.
Key phrases: Language Models. RNN. Bi-directional RNN. Deep RNN. GRU. LSTM.
-------------------------------------------------------------------------------
Natural Language Processing with Deep Learning
Instructors:
- Chris Manning
- Richard Socher
Natural language processing (NLP) deals with the key artificial intelligence technology of understanding complex human language communication. This lecture series provides a thorough introduction to the cutting-edge research in deep learning applied to NLP, an approach that has recently obtained very high performance across many different NLP tasks including question answering and machine translation. It emphasizes how to implement, train, debug, visualize, and design neural network models, covering the main technologies of word vectors, feed-forward models, recurrent neural networks, recursive neural networks, convolutional neural networks, and recent models involving a memory component.
For additional learning opportunities please visit:
stanfordonline.stanford.edu/

Пікірлер
Review Session: Midterm Review
1:25:02
Stanford University School of Engineering
Рет қаралды 20 М.
Lecture 18: Tackling the Limits of Deep Learning for NLP
1:20:42
Stanford University School of Engineering
Рет қаралды 23 М.
MEU IRMÃO FICOU FAMOSO
00:52
Matheus Kriwat
Рет қаралды 42 МЛН
Vivaan  Tanya once again pranked Papa 🤣😇🤣
00:10
seema lamba
Рет қаралды 29 МЛН
Lecture 4: Word Window Classification and Neural Networks
1:16:43
Stanford University School of Engineering
Рет қаралды 109 М.
Reflections on Machine Translation // Douglas R. Hofstadter
1:05:19
UniversitaetzuKoeln
Рет қаралды 9 М.
What are Transformer Models and how do they work?
44:26
Serrano.Academy
Рет қаралды 103 М.
Deep Learning Basics: Introduction and Overview
1:08:06
Lex Fridman
Рет қаралды 2,3 МЛН
Illustrated Guide to LSTM's and GRU's: A step by step explanation
11:18
Prof. Yoshua Bengio - Recurrent Neural Networks (RNNs)
1:25:48
The Artificial Intelligence Channel
Рет қаралды 14 М.
Lecture 1 | The Theoretical Minimum
1:46:33
Stanford
Рет қаралды 832 М.
MIT 6.S191 (2023): Recurrent Neural Networks, Transformers, and Attention
1:02:50
1$ vs 500$ ВИРТУАЛЬНАЯ РЕАЛЬНОСТЬ !
23:20
GoldenBurst
Рет қаралды 1,5 МЛН
Урна с айфонами!
0:30
По ту сторону Гугла
Рет қаралды 8 МЛН