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
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13
Index

Inputs, variables, outputs, and operations

Now we are returning from our journey into TensorFlow 1 and stepping back to TensorFlow 2. Let’s proceed to the most common elements that comprise a TensorFlow 2 program. If you read any of the millions of TensorFlow clients available on the internet, the TensorFlow-related code all falls into one of these buckets:

  • Inputs: Data used to train and test our algorithms
  • Variables: Mutable tensors, mostly defining the parameters of our algorithms
  • Outputs: Immutable tensors storing both terminal and intermediate outputs
  • Operations: Various transformations for inputs to produce the desired outputs

In our earlier sigmoid example, we can find instances of all these categories. We list the respective TensorFlow elements and the notation used in the sigmoid example in Table 2.1:

TensorFlow element

Value from example client

...