Deep Learning and Modern Natural Language Processing (NLP)

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In this tutorial, we’ll cover the fundamental building blocks of neural network architectures and how they are utilized to tackle problems in modern natural language processing.

Topics covered will include an overview of language vector representations, text classification, named entity recognition, and sequence to sequence modeling approaches. An emphasis will be placed on the shape of these types of problems from the perspective of deep learning architectures. This will help to develop an intuition for identifying which neural network techniques are the most applicable to new problems that practitioners may encounter.

Getting Started with Natural Language Processing in Python
https://morioh.com/p/04a148fa2131

Deep Learning A-Z™: Hands-On Artificial Neural Networks
http://learnstartup.net/p/BkhKBKGFW

spaCy Cheat Sheet: Advanced NLP in Python
https://morioh.com/p/76d336a8df0f

Deep Learning vs. Conventional Machine Learning
https://morioh.com/p/fdeae5b3804b

Deep Learning With TensorFlow 2.0
https://morioh.com/p/d669c3deea75

This tutorial is targeted towards those interested in either natural language processing or deep learning. I’ll assume little experience with NLP or deep learning, and will try to build up an intuition from the ground up using a highly visual approach to describe neural networks.

This tutorial would be ideal for data scientists currently working or interested in NLP or deep learning, or analytic or business professionals interested in learning about what types of problems can be solved with modern NLP techniques.

#DeepLearning #NLP #Morioh

Originally published at https://www.youtube.com/watch?v=c2W_VqIpuF8

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