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Hands-on Question Answering Systems with BERT Navin Sabharwal

Hands-on Question Answering Systems with BERT By Navin Sabharwal

Hands-on Question Answering Systems with BERT by Navin Sabharwal


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Summary

Get hands-on knowledge of how BERT (Bidirectional Encoder Representations from Transformers) can be used to develop question answering (QA) systems by using natural language processing (NLP) and deep learning.

The book begins with an overview of the technology landscape behind BERT.

Hands-on Question Answering Systems with BERT Summary

Hands-on Question Answering Systems with BERT: Applications in Neural Networks and Natural Language Processing by Navin Sabharwal

Get hands-on knowledge of how BERT (Bidirectional Encoder Representations from Transformers) can be used to develop question answering (QA) systems by using natural language processing (NLP) and deep learning.

The book begins with an overview of the technology landscape behind BERT. It takes you through the basics of NLP, including natural language understanding with tokenization, stemming, and lemmatization, and bag of words. Next, you'll look at neural networks for NLP starting with its variants such as recurrent neural networks, encoders and decoders, bi-directional encoders and decoders, and transformer models. Along the way, you'll cover word embedding and their types along with the basics of BERT.

After this solid foundation, you'll be ready to take a deep dive into BERT algorithms such as masked language models and next sentence prediction. You'll see different BERT variations followed by a hands-on example of a question answering system.

Hands-on Question Answering Systems with BERT is a good starting point for developers and data scientists who want to develop and design NLP systems using BERT. It provides step-by-step guidance for using BERT.

What You Will Learn

  • Examine the fundamentals of word embeddings
  • Apply neural networks and BERT for various NLP tasks
  • Develop a question-answering system from scratch
  • Train question-answering systems for your own data
  • Who This Book Is For

    AI and machine learning developers and natural language processing developers.


    About Navin Sabharwal

    Navin is the chief architect for HCL DryICE Autonomics. He is an innovator, thought leader, author, and consultant in the areas of AI, machine learning, cloud computing, big data analytics, and software product development. He is responsible for IP development and service delivery in the areas of AI and machine learning, automation, AIOPS, public cloud GCP, AWS, and Microsoft Azure. Navin has authored 15+ books in the areas of cloud computing , cognitive virtual agents, IBM Watson, GCP, containers, and microservices.

    Amit Agrawal is a senior data scientist and researcher delivering solutions in the fields of AI and machine learning. He is responsible for designing end-to-end solutions and architecture for enterprise products. He has also authored and reviewed books in the area of cognitive virtual assistants.

    Table of Contents

    Chapter 1: Introduction to Natural Language ProcessingChapter Goal: To introduce basics of natural language processing1.1 What is natural language processing1.2 What is natural language understanding1.3 Natural language processing tasks1.3.1 Tokenization1.3.2 Stemming and lemmatization1.3.3 Bag of words1.3.4 Word / Sentence vectorization
    Chapter 2: Introduction to Word Embeddings
    Chapter Goal: To introduce the basics of word embeddings3.1 What is word embeddings3.2 Different methods of word embeddings3.2.1 Word2vec3.2.2 Glove3.2.3 Elmo3.2.4 Universal sentence encoders3.2.5 BERT3.3 Bidirectional Encoder Representations from Transformers (BERT)3.3.1 BERT - base3.3.2 BERT - large
    Chapter 3: BERT Algorithms ExplainedChapter Goal: Details on BERT model algorithms4.1 Masked language model4.2 Next sentence prediction (NSP) 4.3 Text classification using BERT4.4 Various types of BERT based models4.4.1 ALBERT4.4.2 ROBERT4.4.3 DistilBERT
    Chapter 4: BERT Model Applications - Question Answering SystemChapter Goal: Details on question answering system5.1 Introduction5.2 Types of QA systems5.3 QA system design using BERT5.4 DrQA system5.5 DeepPavlov QA system
    Chapter 5: BERT Model Applications - Other tasksChapter Goal: Details on NLP tasks performed by BERT.6.1 Introduction6.2 Other NLP Tasks: 6.2.1 Sentiment analysis 6.2.2. Named entity recognition 6.2.3 Tag generation 6.2.4 Classification 6.2.5 Text summarization 6.2.6 Language translation
    Chapter 6: Future of BERT modelsChapter Goal: Provides an introduction to the new advances in the areas NLP using BERT7.1 BERT - Future capabilities




    Additional information

    NLS9781484266632
    9781484266632
    1484266633
    Hands-on Question Answering Systems with BERT: Applications in Neural Networks and Natural Language Processing by Navin Sabharwal
    New
    Paperback
    APress
    2021-01-13
    184
    N/A
    Book picture is for illustrative purposes only, actual binding, cover or edition may vary.
    This is a new book - be the first to read this copy. With untouched pages and a perfect binding, your brand new copy is ready to be opened for the first time

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