Book Image

Natural Language Processing with TensorFlow - Second Edition

By : Thushan Ganegedara
2 (1)
Book Image

Natural Language Processing with TensorFlow - Second Edition

2 (1)
By: Thushan Ganegedara

Overview of this book

Learning how to solve natural language processing (NLP) problems is an important skill to master due to the explosive growth of data combined with the demand for machine learning solutions in production. Natural Language Processing with TensorFlow, Second Edition, will teach you how to solve common real-world NLP problems with a variety of deep learning model architectures. The book starts by getting readers familiar with NLP and the basics of TensorFlow. Then, it gradually teaches you different facets of TensorFlow 2.x. In the following chapters, you then learn how to generate powerful word vectors, classify text, generate new text, and generate image captions, among other exciting use-cases of real-world NLP. TensorFlow has evolved to be an ecosystem that supports a machine learning workflow through ingesting and transforming data, building models, monitoring, and productionization. We will then read text directly from files and perform the required transformations through a TensorFlow data pipeline. We will also see how to use a versatile visualization tool known as TensorBoard to visualize our models. By the end of this NLP book, you will be comfortable with using TensorFlow to build deep learning models with many different architectures, and efficiently ingest data using TensorFlow Additionally, you’ll be able to confidently use TensorFlow throughout your machine learning workflow.
Table of Contents (15 chapters)
12
Other Books You May Enjoy
13
Index

Summary

In this chapter, we looked at RNNs, which are different from conventional feed-forward neural networks and more powerful in terms of solving temporal tasks.

Specifically, we discussed how to arrive at an RNN from a feed-forward neural network type structure.

We assumed a sequence of inputs and outputs, and designed a computational graph that can represent the sequence of inputs and outputs.

This computational graph resulted in a series of copies of functions that we applied to each individual input-output tuple in the sequence. Then, by generalizing this model to any given single time step t in the sequence, we were able to arrive at the basic computational graph of an RNN. We discussed the exact equations and update rules used to calculate the hidden state and the output.

Next we discussed how RNNs are trained with data using BPTT. We examined how we can arrive at BPTT with standard backpropagation as well as why we can’t use standard backpropagation...