Search icon CANCEL
Subscription
0
Cart icon
Your Cart (0 item)
Close icon
You have no products in your basket yet
Arrow left icon
Explore Products
Best Sellers
New Releases
Books
Videos
Audiobooks
Learning Hub
Free Learning
Arrow right icon
Hands-On Python Natural Language Processing
Hands-On Python Natural Language Processing

Hands-On Python Natural Language Processing: Explore tools and techniques to analyze and process text with a view to building real-world NLP applications

eBook
₱579.99 ₱1796.99
Paperback
₱2245.99
Subscription
Free Trial

What do you get with Print?

Product feature icon Instant access to your digital eBook copy whilst your Print order is Shipped
Product feature icon Paperback book shipped to your preferred address
Product feature icon Download this book in EPUB and PDF formats
Product feature icon Access this title in our online reader with advanced features
Product feature icon DRM FREE - Read whenever, wherever and however you want
Product feature icon AI Assistant (beta) to help accelerate your learning
OR
Modal Close icon
Payment Processing...
tick Completed

Shipping Address

Billing Address

Shipping Methods
Table of content icon View table of contents Preview book icon Preview Book

Hands-On Python Natural Language Processing

Understanding the Basics of NLP

Natural Language Processing (NLP) is an interdisciplinary area of research aimed at making machines understand and process human languages. It is an evolving field, with a rapid increase in its acceptability and adoption in industry, and its growth is projected to continue. NLP-based applications are everywhere, and chances are that you already interact with an NLP-enabled application regularly (Alexa, Google Translate, chatbots, and so on). The objective of this book is to provide a hands-on learning experience and help you build NLP applications by understanding key NLP concepts. The book lays particular emphasis on Machine Learning (ML)- and Deep Learning (DL)-based applications and also delves into recent advances such as Bidirectional Encoder Representations from Transformers (BERT). We start this journey by providing a brief context of NLP and introduce you to some existing and evolving applications of NLP.

In this chapter, we'll cover the following topics:

  • Programming languages versus natural languages
  • Why should I learn NLP?
  • Current applications of NLP

Programming languages versus natural languages

Language has played a critical role in the evolution of our species and was arguably the key competitive advantage for our hunter-gatherer ancestors over other species. Naturally evolved languages, also called natural languages, allowed our ancestors to communicate more efficiently with their flock. The development of language scripts further accelerated their growth, as important information could now be documented and reproduced, obviating the need for memorizing. Needless to say, we humans have a deep affinity toward our languages, and we cherish the ability to communicate with fellow humans.

A new class of languages called programming languages surfaced around the mid-20th century, with the objective of communicating with machines to get the desired output. With the explosive growth of computers, gaining familiarity with programming languages assumed great significance in order to harness the computational power of these machines. You will come across various profiles on LinkedIn in which people refer to themselves as polyglots, implying that they are proficient in multiple programming languages. While there are similarities between natural languages and programming languages, in that they are used to communicate and have rules and syntax, there are some major differences. The most important difference is that natural languages are ambiguous, and therefore cannot be comprehended by machines. For example, refer to the following statement: Pick an integer and divide it by two; if the remainder is zero, then it is an even number.

For those who are presumably proficient in Math and English, the preceding statement may make complete sense. However, for someone who is new to deciphering human languages, it may refer to either the integer, two, or the remainder. Likewise, natural languages encompass many other elements, such as sarcasm, double negation, rhetorical expressions, and so on, which increases complexity and requires a monumental effort to code every inherent rule of the language for the machine to understand. These factors make natural languages unfit to be used as programming languages.

How, then, do we communicate with computers humanly?

Understanding NLP

Scientists have been working on this precise question since the turn of the last century and, as of today, we have attained reasonable success in this area. The research on how to make computers understand and manipulate natural languages draws from several fields, including computer science, math, linguistics, and neuroscience, and the resulting interdisciplinary area of research is called NLP. Take a look at the following diagram, which illustrates this:

NLP is categorized as a subfield of the broader Artificial Intelligence (AI) discipline, which delves into simulating human intelligence in machines. English scientist Alan Turing, who is considered one of the pioneers of AI, developed a set of criteria (called the Turing test), which tested whether a machine could display intelligent behavior indistinguishable from that of a human. The machine's ability to understand and process natural languages is a prominent criterion of the Turing test.

Most early research in the field of NLP relied on fixed complex rules and mapping-based systems. These systems, although moderately successful, were difficult to scale. Another issue with the rule-based approach is that it does not mimic human learning of language very well. For example, if you are from Asia and are traveling to the USA, you will come across people who greet you by saying, How's it going? or How are you doing? A fixed rule-based language processing system would signal that the person cares about you and is genuinely interested to know about your wellbeing. However, before you prepare to give your long-winded response of how you are actually doing, you will see that the person has already walked by. When you see this pattern reoccurring and observe how other people respond to the same question, your brain overwrites the pre-existing rule and replaces it with a new contextual understanding, which was derived by some form of data analysis.

This data-driven approach is the cornerstone of most modern-day NLP research. With the advent of ML algorithms and the data deluge propelled by the internet and significantly increased computational capacity, NLP solutions have become way more scalable and reliable. The most exciting thing about this NLP revolution is that most of this is driven by open source technology, meaning these solutions are freely available to anyone who wants to consume or contribute to these projects.

We have covered many of these algorithms and tools in this book, including the following:

  • ML algorithms (Naive Bayes; Support Vector Machine (SVM))
  • DL algorithms (Convolutional Neural Network (CNN); Recurrent Neural Network (RNN))
  • Similarity/dissimilarity measures
  • Long Short-Term Memory (LSTM) network; Gated Recurrent Unit (GRU)
  • BERT
  • Building chatbots; sentiment analyzer
  • Predictive analytics on text data
  • Machine translation system

We hope that by the end of this book, you will be able to build reasonably sophisticated NLP applications on your desktop PC.

Why should I learn NLP?

AI is rapidly penetrating various facets of our lives, from being our home assistant to fielding our queries as automated tech support. Various industry outlook reports project that AI will create millions of jobs (projection range between 200 and 500 million) worldwide by the year 2030. The majority of these jobs will require ML and NLP skills, and therefore it is imperative for engineers and technologists to upskill and prepare for the impending AI revolution and the rapidly evolving tech landscape.

NLP consistently features as the fastest-growing skill in demand by Upwork (largest freelancing platform), and the job listings with an NLP tag continue to feature prominently on various job boards. Since NLP is a subfield of ML, organizations typically hire candidates as ML engineers to work on NLP projects. You could be working on the most cutting-edge ideas in large technology firms or implementing NLP technology-based applications in banks, e-commerce organizations, and so on. The exact work performed by NLP engineers can vary from project to project. However, working with large volumes of unstructured data, preprocessing data, reading research papers on the new development in the field, tuning model parameters, continuous improvement, and so on are some of the tasks that are commonly performed. The authors, having worked on several NLP projects and having followed the latest industry trends closely, can safely state that it's a very exciting time to work in the field of NLP.

You can benefit from learning about NLP even if you are simply a tech enthusiast and not particularly looking for a job as an NLP engineer. You can expect to build reasonably sophisticated NLP applications and tools on your MacBook or PC, on a shoestring budget. It is not surprising, therefore, that there has been a surge of start-ups providing NLP-based solutions to enterprises and retail clients.

A few of the exciting start-ups in this area are listed as follows:

  • Luminance: Legal tech start-up aimed at analyzing legal documents
  • NetBase: Real-time social media feed analytics
  • Agolo: Summarizes large bodies of text at scale
  • Idibon: Converts unstructured data to structured data

This area is also witnessing brisk acquisition activities with larger tech companies acquiring start-ups (Samsung acquired Kngine; Reliance Communications acquired chatbot start-up Haptik; and so on). Given the low barriers for entry and easily accessible open source technologies, this trend is expected to continue.

Now that we have familiarized ourselves with NLP and the benefits of gaining proficiency in this area, we will discuss the current and evolving applications of NLP.

Current applications of NLP

NLP applications are everywhere, and it is highly unlikely that you have not interacted with any such application over the past few days. The current applications include virtual assistants (Alexa, Siri, Cortana, and so on), customer support tools (chatbots, email routers/classifiers, and so on), sentiment analyzers, translators, and document ranking systems. The adoption of these tools is quickly growing, since the speed and accuracy of these applications have increased manifold over the years. It should be noted that many popular NLP applications such as, Alexa and conversational bots, need to process audio data, which can be quantified by capturing the frequency of the underlying sound waves of the audio. For these applications, the data preprocessing steps are different from those for a text-based application, but the core principles of analyzing the data remain the same and will be discussed in detail in this book.

The following are examples of some widely used NLP tools. These tools could be web applications or desktop applications with which you can interact via the user interface. We will be covering the models powering these tools in detail in the subsequent chapters.

Chatbots

Chatbots are AI-based software that can conduct conversations with humans in natural languages. Chatbots are used extensively as the first point of customer support and have been very effective in resolving simple user queries. As per industry estimates, the size of the global chatbot market is expected to grow to $102 billion by 2025, compared to the market size of $17 billion in 2019 (source: https://www.mordorintelligence.com/industry-reports/chatbot-market). The significant savings generated by these chatbots for organizations is the major driver for the increase in the uptake of this technology.

Chatbots can be simple and rule-based, or highly sophisticated, depending on business requirements. Most chatbots deployed in the industry today are trained to direct users to the appropriate source of information or respond to queries pertaining to a specific subject. It is highly unlikely to have a generalist chatbot capable of fielding questions pertaining to a number of areas. This is because training a chatbot on a given topic requires a copious amount of data, and training on a number of topics could result in performance issues.

The next screenshots are from my conversation with one of the smartest chatbots available, named Mitsuku (https://www.pandorabots.com/mitsuku/). The Mitsuku chatbot was created by Steve Worswick and it has the distinction of winning the Loebner Prize multiple times due to it being adjudged the most human-like AI application.

The application was created using Artificial Intelligence Markup Language (AIML) and is mostly a rule-based application. Have a look at the following screenshots:

As you can see, this bot is able to hold simple conversations, just like a human. However, once you start asking technical questions or delve deeper into a topic, the quality of the responses deteriorates. This is expected, though, and we are still some time away from full human-like chatbots. You are encouraged to try engaging with Mitsuku in both simple and technical conversations and judge the accuracy yourself.

Sentiment analysis

Sentiment analysis is a set of algorithms and techniques used to detect the sentiment (positive, negative, or neutral) of a given text. This is a very powerful application of NLP and finds usage in a number of industries. Sentiment analysis has allowed entities to mine opinions from a much wider audience at significantly reduced costs. The traditional way of garnering feedback for companies has been through surveys, closed user group testing, and so on, which could be quite expensive. However, organizations can reduce costs by scraping data (from social media platforms or review-gathering sites) and using sentiment analysis to come up with an overall sentiment index of their products.

Here are some other examples of use cases of sentiment analysis:

  • A stock investor scanning news about a company to assess overall market sentiment
  • An individual scanning tweets about the launch of a new phone to decide the prevailing sentiment
  • A political party analyzing social media feeds to assess the sentiment regarding their candidate

Sentiment analyzing systems can be simple lexicon-based (akin to a dictionary lookup) or ML-/DL-based. The choice of the method is dictated by business requirements, the respective pros and cons of each approach, and other development constraints. We will be covering the ML/DL based methods in detail in this book.

A simple Google search will yield numerous online sentiment analyzing sources such as paralleldots.com (https://www.paralleldots.com/sentiment-analysis).

You are encouraged to try submitting sentences or paragraphs to the tool and analyze the response. These tools will most likely do a reasonably good analysis of simple sentences or articles. However, the output for sentences with complex structures (double negation, rhetorical questions, qualifiers, and so on) will likely not be accurate. It should also be noted that before using a prebuilt sentiment analyzer, it is very important to understand the methodology and training dataset used to build that analyzer. You do not want to use a sentiment analyzer trained on movie review data to predict the sentiment of text from a different area (such as financial news articles or restaurant reviews), as words that carry a positive or negative context for one area may have a neutral or opposite polarity context for another area. For example, some words signifying a positive sentiment in financial news articles are bullish, green, expansion, and growth. However, these words, if used in a movie review context, would not be polarity-influencing words. Therefore, it is important to use suitable training data in order to build a sentiment analyzer.

We will delve deeper into sentiment analysis in Chapter 7, Identifying Patterns in Text Using Machine Learning, and will build a sentiment analyzer using product review data.

Machine translation

Language translation was one of the early problems NLP techniques tried to solve. At the height of the Cold War, there was a pressing need for American researchers to translate Russian documents into English using AI techniques. In 1964, the US government even created a multidisciplinary committee of leading scientists, linguists, and researchers to explore the feasibility of machine translation, and called the committee the Automatic Language Processing Advisory Committee (ALPAC). However, ALPAC was unable to make any significant breakthrough, which caused major skepticism around the feasibility of AI technology, leading to massive funding cuts and a reduced interest in AI research throughout the 1970s. This period is often called the AI Winter due to the significant drop in research output pertaining to AI. Although the efforts of ALPAC did not yield promising results back then, today, we have translators with a very high level of accuracy.

The high market value of the translation industry in the present era of highly interconnected communities and global businesses is self-evident. Although businesses still rely mostly on human translators to translate important documents such as legal contracts, the use of NLP techniques to translate conversations has been increasing.

The modern NLP approach toward document translation is rooted in DL and pattern detection, which has significantly increased the accuracy of translations. Google Translate (https://translate.google.co.in/) supposedly uses an Artificial Neural Network (ANN)-based system that predicts the possible sequence of the translated words.

We wanted to conduct a quick test of Google Translate's accuracy in translating a text from English to Hindi.

Here is a screenshot, showing the result:

For readers who can read Hindi, the first sentence was translated perfectly. However, the second translated sentence is nonsensical. This could be because the usage of the word wonder in the sentence is not a wide one, and the training data possibly had all instances of wonder in a different context.

We thought it may be a good idea to see how other popular translators would translate the same sentence. The following screenshot shows the result derived from the Bing translator (https://www.bing.com/translator):

We found that the Bing translator's translation for our sentence was slightly inferior to that provided by Google Translate as, in addition to getting the context of the word wonder wrong, it was also unable to translate the word hire and simply transliterated it.

Finally, we tried the Babylon translator (https://translation.babylon-software.com/) with the same sentence. The following screenshot shows the result:

We found that the Babylon translator was unable to translate the sentence, as the output was gibberish.

It should be noted that the translation was instant in all three translators, meaning that the execution time for machine translation has greatly reduced. Based on our very unscientific testing, it is clear that while we have made huge strides in machine translation efficacy, there is still scope for improvement, and research in this area is still ongoing.

Named-entity recognition

When we read and process sentences, we tend to first identify the key players in the sentence (for example, people, places, and organizations). This classification helps us break down the sentence into entities and make sense of the semantics of the sentence. Named-entity recognition (NER) mimics the same behavior and is used to classify the named entities (or proper nouns) in a given text. The applications of this seemingly facile categorization are profound and are used extensively in the industry. Here are some real-world applications of NER:

  • Text summarization: Scanning text documents and summarizing them by identifying key entities in the document. A popular use case is resume categorization, wherein the NER processes a large number of resumes and highlights key entities such as name, institution, and skills, which facilitates quick evaluation.
  • Automatic indexing: Indexing is the method of organizing data for efficient retrieval. Using NER, documents are indexed based on underlying entities, which facilitates faster retrieval.
  • Information extraction: Extracting relevant information (entities) from a document for faster processing. A use case is customer feedback processing, wherein key entities from feedback, such as product name and location are extracted for further processing. Typically, customer feedback processing also involves a sentiment analyzer that detects the tone of the feedback (positive or negative), and the NER then identifies the product, location, and so on, which is covered in the feedback. Such systems allow organizations to quickly process large volumes of customer feedback data and gain precision insights.

Stanford Named Entity Tagger (https://nlp.stanford.edu/software/CRF-NER.html) is a popular open source NER tool that comes with a default trained model that classifies entities such as Person, Location, and Organization. However, users can train their own models on the Stanford NER tool using a labeled dataset. The application is built on a linear chain Conditional Random Field (CRF) sequence model, which is a class of statistical modeling methods often used for pattern recognition. The software is written in Java and is available to download for free.

In addition, the trained model can also be accessed through a web interface. The following screenshot shows a sample sentence being processed by the Stanford NER web interface:

In this example, the NER tool did a decent job and correctly categorized the two persons (Virat Kohli and Sachin Tendulkar) and one location (India) mentioned in the sentence. It should be noted that there are other entities as well in the sentence shown in the preceding screenshot (for example, number and profession). However, the Stanford NER tool only recognizes four entities. The choice of the number of entities to be recognized depends on the training data and the model design.

Now, let's look at some promising future applications of NLP as well.

Future applications of NLP

Although we have made huge strides in improving NLP technologies, ongoing research continues to strive for improved accuracy and more optimized algorithms (for reduced response time). The objective continues to be moving toward more human-like applications. Here are some examples of technological advances and potential future applications in the area of NLP:

  • BERT: BERT is a path-breaking technique for NLP research and development. It is being developed by Google and is a very clever amalgamation of a number of algorithms and techniques used in NLP (Transformer, ELMo, Semi-Supervised Sequence Learning, and so on). The paper, published by Google researchers, explaining this model can be accessed at https://arxiv.org/abs/1810.04805. At a high level, BERT tries to understand the context of a word by taking into account all surrounding words rather than an ordered sequence of words. For example, if the sentence Are you game for a cup of coffee? is analyzed by traditional NLP algorithms, they will analyze the word game by either looking at Are you game or at game for a cup of coffee. However, since BERT is bidirectional, it considers the entire sentence to decide the context of the word. BERT is open source and comes with rigorous pre trained models. BERT has significantly improved the efficiency and accuracy of building NLP models. We will get into the details of BERT in Chapter 11, State of the Art in NLP.
  • Legal tech: The possibility of applying NLP technology to the legal profession is a very promising and lucrative prospect, and a lot of research is being conducted in this area. Given the vast number of legal documents lawyers need to pore through in order to retrieve required information for a case or the repetitive nature of perusing through legal contracts to ensure that they are correct, NLP can play a significant role in this field. However, most solutions to date remain in the Proof of Concept (PoC) phase, and adoption is minimal. However, many legal, tech-focused start-ups are springing up, trying to get a piece of a very lucrative developing market.
  • Unstructured data: Most NLP tools rely on clean input data to be provided as input. However, the real world has a lot of unstructured data that needs analyzing. For example, a financial analyst may need to go through a company's annual financial filings, emails, call records, chat transcripts, news reports, complaint logs, and so on to prepare their report. Extracting relevant information from these unstructured data sources is a promising area of NLP application, and some exciting research in this area is ongoing.
  • Text summarization: Research is underway around building applications that have the ability to read through a document, understand the context, and present a summary in a coherent way.

Summary

In this chapter, we discussed the foundational aspects of NLP and highlighted the importance of this evolving field of research. We also introduced some existing and upcoming applications of NLP, which we will build upon in the subsequent chapters.

In the next chapter, we will discuss Python and how it is playing a pivotal role in the development of NLP. We will gain familiarity with key Python libraries used in NLP and also delve into web scraping.

Left arrow icon Right arrow icon
Download code icon Download Code

Key benefits

  • Perform various NLP tasks to build linguistic applications using Python libraries
  • Understand, analyze, and generate text to provide accurate results
  • Interpret human language using various NLP concepts, methodologies, and tools

Description

Natural Language Processing (NLP) is the subfield in computational linguistics that enables computers to understand, process, and analyze text. This book caters to the unmet demand for hands-on training of NLP concepts and provides exposure to real-world applications along with a solid theoretical grounding. This book starts by introducing you to the field of NLP and its applications, along with the modern Python libraries that you'll use to build your NLP-powered apps. With the help of practical examples, you’ll learn how to build reasonably sophisticated NLP applications, and cover various methodologies and challenges in deploying NLP applications in the real world. You'll cover key NLP tasks such as text classification, semantic embedding, sentiment analysis, machine translation, and developing a chatbot using machine learning and deep learning techniques. The book will also help you discover how machine learning techniques play a vital role in making your linguistic apps smart. Every chapter is accompanied by examples of real-world applications to help you build impressive NLP applications of your own. By the end of this NLP book, you’ll be able to work with language data, use machine learning to identify patterns in text, and get acquainted with the advancements in NLP.

Who is this book for?

This NLP Python book is for anyone looking to learn NLP’s theoretical and practical aspects alike. It starts with the basics and gradually covers advanced concepts to make it easy to follow for readers with varying levels of NLP proficiency. This comprehensive guide will help you develop a thorough understanding of the NLP methodologies for building linguistic applications; however, working knowledge of Python programming language and high school level mathematics is expected.

What you will learn

  • Understand how NLP powers modern applications
  • Explore key NLP techniques to build your natural language vocabulary
  • Transform text data into mathematical data structures and learn how to improve text mining models
  • Discover how various neural network architectures work with natural language data
  • Get the hang of building sophisticated text processing models using machine learning and deep learning
  • Check out state-of-the-art architectures that have revolutionized research in the NLP domain
Estimated delivery fee Deliver to Philippines

Standard delivery 10 - 13 business days

₱492.95

Premium delivery 5 - 8 business days

₱2548.95
(Includes tracking information)

Product Details

Country selected
Publication date, Length, Edition, Language, ISBN-13
Publication date : Jun 26, 2020
Length: 316 pages
Edition : 1st
Language : English
ISBN-13 : 9781838989590
Category :
Languages :
Tools :

What do you get with Print?

Product feature icon Instant access to your digital eBook copy whilst your Print order is Shipped
Product feature icon Paperback book shipped to your preferred address
Product feature icon Download this book in EPUB and PDF formats
Product feature icon Access this title in our online reader with advanced features
Product feature icon DRM FREE - Read whenever, wherever and however you want
Product feature icon AI Assistant (beta) to help accelerate your learning
OR
Modal Close icon
Payment Processing...
tick Completed

Shipping Address

Billing Address

Shipping Methods
Estimated delivery fee Deliver to Philippines

Standard delivery 10 - 13 business days

₱492.95

Premium delivery 5 - 8 business days

₱2548.95
(Includes tracking information)

Product Details

Publication date : Jun 26, 2020
Length: 316 pages
Edition : 1st
Language : English
ISBN-13 : 9781838989590
Category :
Languages :
Tools :

Packt Subscriptions

See our plans and pricing
Modal Close icon
$19.99 billed monthly
Feature tick icon Unlimited access to Packt's library of 7,000+ practical books and videos
Feature tick icon Constantly refreshed with 50+ new titles a month
Feature tick icon Exclusive Early access to books as they're written
Feature tick icon Solve problems while you work with advanced search and reference features
Feature tick icon Offline reading on the mobile app
Feature tick icon Simple pricing, no contract
$199.99 billed annually
Feature tick icon Unlimited access to Packt's library of 7,000+ practical books and videos
Feature tick icon Constantly refreshed with 50+ new titles a month
Feature tick icon Exclusive Early access to books as they're written
Feature tick icon Solve problems while you work with advanced search and reference features
Feature tick icon Offline reading on the mobile app
Feature tick icon Choose a DRM-free eBook or Video every month to keep
Feature tick icon PLUS own as many other DRM-free eBooks or Videos as you like for just ₱260 each
Feature tick icon Exclusive print discounts
$279.99 billed in 18 months
Feature tick icon Unlimited access to Packt's library of 7,000+ practical books and videos
Feature tick icon Constantly refreshed with 50+ new titles a month
Feature tick icon Exclusive Early access to books as they're written
Feature tick icon Solve problems while you work with advanced search and reference features
Feature tick icon Offline reading on the mobile app
Feature tick icon Choose a DRM-free eBook or Video every month to keep
Feature tick icon PLUS own as many other DRM-free eBooks or Videos as you like for just ₱260 each
Feature tick icon Exclusive print discounts

Frequently bought together


Stars icon
Total 7,298.97
Python Natural Language Processing Cookbook
₱2806.99
Hands-On Natural Language Processing with PyTorch 1.x
₱2245.99
Hands-On Python Natural Language Processing
₱2245.99
Total 7,298.97 Stars icon
Banner background image

Table of Contents

15 Chapters
Section 1: Introduction Chevron down icon Chevron up icon
Understanding the Basics of NLP Chevron down icon Chevron up icon
NLP Using Python Chevron down icon Chevron up icon
Section 2: Natural Language Representation and Mathematics Chevron down icon Chevron up icon
Building Your NLP Vocabulary Chevron down icon Chevron up icon
Transforming Text into Data Structures Chevron down icon Chevron up icon
Word Embeddings and Distance Measurements for Text Chevron down icon Chevron up icon
Exploring Sentence-, Document-, and Character-Level Embeddings Chevron down icon Chevron up icon
Section 3: NLP and Learning Chevron down icon Chevron up icon
Identifying Patterns in Text Using Machine Learning Chevron down icon Chevron up icon
From Human Neurons to Artificial Neurons for Understanding Text Chevron down icon Chevron up icon
Applying Convolutions to Text Chevron down icon Chevron up icon
Capturing Temporal Relationships in Text Chevron down icon Chevron up icon
State of the Art in NLP Chevron down icon Chevron up icon
Other Books You May Enjoy Chevron down icon Chevron up icon

Customer reviews

Rating distribution
Full star icon Full star icon Full star icon Full star icon Half star icon 4.5
(4 Ratings)
5 star 75%
4 star 0%
3 star 25%
2 star 0%
1 star 0%
S Apr 21, 2021
Full star icon Full star icon Full star icon Full star icon Full star icon 5
The book starts from the basics of NLP and reaches intermediate levels. I like the various concepts and topics (like CNN, Neural Network) covered in this book.A good balance between theory and practical knowledge.Get your Python caps on and enjoy.
Amazon Verified review Amazon
Hoi Nguyen Apr 17, 2021
Full star icon Full star icon Full star icon Full star icon Full star icon 5
this is a great book, highly recommended.
Amazon Verified review Amazon
Alessio Jun 20, 2022
Full star icon Full star icon Full star icon Full star icon Full star icon 5
interessante e semplice
Amazon Verified review Amazon
Amazon Customer May 23, 2023
Full star icon Full star icon Full star icon Empty star icon Empty star icon 3
Having learnt quite a bit of machine learning from great books like Hands-on Machine Learning by Aurelion Geron, I decided to pick up some NLP.This book teaches concepts and provides codes to demonstrate various aspects of NLP, which seemed ok, but after going through 40% of the book, there were no coherent case studies put forth. So I am left with knowledge of disparate pieces that I don't quite know how best to put together for a project.I am putting this book aside and practising with another book - Blueprints for Text Analytics with Python. Just started on that one, and it seems much more promising.
Amazon Verified review Amazon
Get free access to Packt library with over 7500+ books and video courses for 7 days!
Start Free Trial

FAQs

What is the delivery time and cost of print book? Chevron down icon Chevron up icon

Shipping Details

USA:

'

Economy: Delivery to most addresses in the US within 10-15 business days

Premium: Trackable Delivery to most addresses in the US within 3-8 business days

UK:

Economy: Delivery to most addresses in the U.K. within 7-9 business days.
Shipments are not trackable

Premium: Trackable delivery to most addresses in the U.K. within 3-4 business days!
Add one extra business day for deliveries to Northern Ireland and Scottish Highlands and islands

EU:

Premium: Trackable delivery to most EU destinations within 4-9 business days.

Australia:

Economy: Can deliver to P. O. Boxes and private residences.
Trackable service with delivery to addresses in Australia only.
Delivery time ranges from 7-9 business days for VIC and 8-10 business days for Interstate metro
Delivery time is up to 15 business days for remote areas of WA, NT & QLD.

Premium: Delivery to addresses in Australia only
Trackable delivery to most P. O. Boxes and private residences in Australia within 4-5 days based on the distance to a destination following dispatch.

India:

Premium: Delivery to most Indian addresses within 5-6 business days

Rest of the World:

Premium: Countries in the American continent: Trackable delivery to most countries within 4-7 business days

Asia:

Premium: Delivery to most Asian addresses within 5-9 business days

Disclaimer:
All orders received before 5 PM U.K time would start printing from the next business day. So the estimated delivery times start from the next day as well. Orders received after 5 PM U.K time (in our internal systems) on a business day or anytime on the weekend will begin printing the second to next business day. For example, an order placed at 11 AM today will begin printing tomorrow, whereas an order placed at 9 PM tonight will begin printing the day after tomorrow.


Unfortunately, due to several restrictions, we are unable to ship to the following countries:

  1. Afghanistan
  2. American Samoa
  3. Belarus
  4. Brunei Darussalam
  5. Central African Republic
  6. The Democratic Republic of Congo
  7. Eritrea
  8. Guinea-bissau
  9. Iran
  10. Lebanon
  11. Libiya Arab Jamahriya
  12. Somalia
  13. Sudan
  14. Russian Federation
  15. Syrian Arab Republic
  16. Ukraine
  17. Venezuela
What is custom duty/charge? Chevron down icon Chevron up icon

Customs duty are charges levied on goods when they cross international borders. It is a tax that is imposed on imported goods. These duties are charged by special authorities and bodies created by local governments and are meant to protect local industries, economies, and businesses.

Do I have to pay customs charges for the print book order? Chevron down icon Chevron up icon

The orders shipped to the countries that are listed under EU27 will not bear custom charges. They are paid by Packt as part of the order.

List of EU27 countries: www.gov.uk/eu-eea:

A custom duty or localized taxes may be applicable on the shipment and would be charged by the recipient country outside of the EU27 which should be paid by the customer and these duties are not included in the shipping charges been charged on the order.

How do I know my custom duty charges? Chevron down icon Chevron up icon

The amount of duty payable varies greatly depending on the imported goods, the country of origin and several other factors like the total invoice amount or dimensions like weight, and other such criteria applicable in your country.

For example:

  • If you live in Mexico, and the declared value of your ordered items is over $ 50, for you to receive a package, you will have to pay additional import tax of 19% which will be $ 9.50 to the courier service.
  • Whereas if you live in Turkey, and the declared value of your ordered items is over € 22, for you to receive a package, you will have to pay additional import tax of 18% which will be € 3.96 to the courier service.
How can I cancel my order? Chevron down icon Chevron up icon

Cancellation Policy for Published Printed Books:

You can cancel any order within 1 hour of placing the order. Simply contact customercare@packt.com with your order details or payment transaction id. If your order has already started the shipment process, we will do our best to stop it. However, if it is already on the way to you then when you receive it, you can contact us at customercare@packt.com using the returns and refund process.

Please understand that Packt Publishing cannot provide refunds or cancel any order except for the cases described in our Return Policy (i.e. Packt Publishing agrees to replace your printed book because it arrives damaged or material defect in book), Packt Publishing will not accept returns.

What is your returns and refunds policy? Chevron down icon Chevron up icon

Return Policy:

We want you to be happy with your purchase from Packtpub.com. We will not hassle you with returning print books to us. If the print book you receive from us is incorrect, damaged, doesn't work or is unacceptably late, please contact Customer Relations Team on customercare@packt.com with the order number and issue details as explained below:

  1. If you ordered (eBook, Video or Print Book) incorrectly or accidentally, please contact Customer Relations Team on customercare@packt.com within one hour of placing the order and we will replace/refund you the item cost.
  2. Sadly, if your eBook or Video file is faulty or a fault occurs during the eBook or Video being made available to you, i.e. during download then you should contact Customer Relations Team within 14 days of purchase on customercare@packt.com who will be able to resolve this issue for you.
  3. You will have a choice of replacement or refund of the problem items.(damaged, defective or incorrect)
  4. Once Customer Care Team confirms that you will be refunded, you should receive the refund within 10 to 12 working days.
  5. If you are only requesting a refund of one book from a multiple order, then we will refund you the appropriate single item.
  6. Where the items were shipped under a free shipping offer, there will be no shipping costs to refund.

On the off chance your printed book arrives damaged, with book material defect, contact our Customer Relation Team on customercare@packt.com within 14 days of receipt of the book with appropriate evidence of damage and we will work with you to secure a replacement copy, if necessary. Please note that each printed book you order from us is individually made by Packt's professional book-printing partner which is on a print-on-demand basis.

What tax is charged? Chevron down icon Chevron up icon

Currently, no tax is charged on the purchase of any print book (subject to change based on the laws and regulations). A localized VAT fee is charged only to our European and UK customers on eBooks, Video and subscriptions that they buy. GST is charged to Indian customers for eBooks and video purchases.

What payment methods can I use? Chevron down icon Chevron up icon

You can pay with the following card types:

  1. Visa Debit
  2. Visa Credit
  3. MasterCard
  4. PayPal
What is the delivery time and cost of print books? Chevron down icon Chevron up icon

Shipping Details

USA:

'

Economy: Delivery to most addresses in the US within 10-15 business days

Premium: Trackable Delivery to most addresses in the US within 3-8 business days

UK:

Economy: Delivery to most addresses in the U.K. within 7-9 business days.
Shipments are not trackable

Premium: Trackable delivery to most addresses in the U.K. within 3-4 business days!
Add one extra business day for deliveries to Northern Ireland and Scottish Highlands and islands

EU:

Premium: Trackable delivery to most EU destinations within 4-9 business days.

Australia:

Economy: Can deliver to P. O. Boxes and private residences.
Trackable service with delivery to addresses in Australia only.
Delivery time ranges from 7-9 business days for VIC and 8-10 business days for Interstate metro
Delivery time is up to 15 business days for remote areas of WA, NT & QLD.

Premium: Delivery to addresses in Australia only
Trackable delivery to most P. O. Boxes and private residences in Australia within 4-5 days based on the distance to a destination following dispatch.

India:

Premium: Delivery to most Indian addresses within 5-6 business days

Rest of the World:

Premium: Countries in the American continent: Trackable delivery to most countries within 4-7 business days

Asia:

Premium: Delivery to most Asian addresses within 5-9 business days

Disclaimer:
All orders received before 5 PM U.K time would start printing from the next business day. So the estimated delivery times start from the next day as well. Orders received after 5 PM U.K time (in our internal systems) on a business day or anytime on the weekend will begin printing the second to next business day. For example, an order placed at 11 AM today will begin printing tomorrow, whereas an order placed at 9 PM tonight will begin printing the day after tomorrow.


Unfortunately, due to several restrictions, we are unable to ship to the following countries:

  1. Afghanistan
  2. American Samoa
  3. Belarus
  4. Brunei Darussalam
  5. Central African Republic
  6. The Democratic Republic of Congo
  7. Eritrea
  8. Guinea-bissau
  9. Iran
  10. Lebanon
  11. Libiya Arab Jamahriya
  12. Somalia
  13. Sudan
  14. Russian Federation
  15. Syrian Arab Republic
  16. Ukraine
  17. Venezuela