Book Image

Advanced Natural Language Processing with TensorFlow 2

By : Ashish Bansal, Tony Mullen
Book Image

Advanced Natural Language Processing with TensorFlow 2

By: Ashish Bansal, Tony Mullen

Overview of this book

Recently, there have been tremendous advances in NLP, and we are now moving from research labs into practical applications. This book comes with a perfect blend of both the theoretical and practical aspects of trending and complex NLP techniques. The book is focused on innovative applications in the field of NLP, language generation, and dialogue systems. It helps you apply the concepts of pre-processing text using techniques such as tokenization, parts of speech tagging, and lemmatization using popular libraries such as Stanford NLP and SpaCy. You will build Named Entity Recognition (NER) from scratch using Conditional Random Fields and Viterbi Decoding on top of RNNs. The book covers key emerging areas such as generating text for use in sentence completion and text summarization, bridging images and text by generating captions for images, and managing dialogue aspects of chatbots. You will learn how to apply transfer learning and fine-tuning using TensorFlow 2. Further, it covers practical techniques that can simplify the labelling of textual data. The book also has a working code that is adaptable to your use cases for each tech piece. By the end of the book, you will have an advanced knowledge of the tools, techniques and deep learning architecture used to solve complex NLP problems.
Table of Contents (13 chapters)
Other Books You May Enjoy

Chapter 8 installation instructions

Snorkel needs to be installed. At the time of writing, the version of Snorkel installed was 0.9.5. Note that this version of Snorkel uses older versions of pandas and TensorBoard. You should be able to safely ignore any warnings about mismatched versions for the purposes of the code in this book. However, if you continue to face conflicts in your environment, then I suggest creating a separate Snorkel-specific conda environment.

Run the labeling functions in that environment and store the outputs as a separate CSV file. TensorFlow training can be run by switching back to the tf24nlp environment and loading the labeled data in:

(tf24nlp) $ pip install snorkel==0.9.5

We'll also use BeautifulSoup for parsing HTML tags out of the text:

(tf24nlp) $ conda install beautifulsoup4==4.9

There is an optional section in the chapter that involves plotting word clouds. This requires the following package to be installed: