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Mastering spaCy

Mastering spaCy - Second Edition

By : Déborah Mesquita, Duygu Altinok
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Mastering spaCy

Mastering spaCy

5 (1)
By: Déborah Mesquita, Duygu Altinok

Overview of this book

Mastering spaCy, Second Edition is your comprehensive guide to building sophisticated NLP applications using the spaCy ecosystem. This revised edition builds on the expertise of Duygu Altinok, a seasoned NLP engineer and spaCy contributor, and introduces new chapters by Déborah Mesquita, a data science educator and consultant known for making complex concepts accessible. This edition embraces the latest advancements in NLP, featuring chapters on large language models with spacy-llm, transformer integration, and end-to-end workflow management with Weasel. You’ll learn how to enhance NLP tasks using LLMs, streamline workflows using Weasel, and integrate spaCy with third-party libraries like Streamlit, FastAPI, and DVC. From training custom Named Entity Recognition (NER) pipelines to categorizing emotions in Reddit posts, this book covers advanced topics such as text classification and coreference resolution. Starting with the fundamentals—tokenization, NER, and dependency parsing—you’ll explore more advanced topics like creating custom components, training domain-specific models, and building scalable NLP workflows. Through practical examples, clear explanations, tips, and tricks, this book will equip you to build robust NLP pipelines and seamlessly integrate them into web applications for end-to-end solutions.
Table of Contents (17 chapters)
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Part 1: Getting Started with spaCy
4
Part 2: Advanced Linguistic and Semantic Analysis
9
Part 3: Customizing and Integrating NLP Workflows

Summary

In this chapter, you learned how to manage spaCy projects with Weasel. First, you cloned a project template from spaCy’s repository and ran it on your machine. Then, you used this same project structure to train a model for a dataset. After that, you saw how GitOps can address some data science and ML challenges and used DVC to register the model we’ve trained to share it with teammates or add a deploy setting to it. The goal of this chapter was to teach you how to manage NLP projects in a production setting.

In the next chapter, we will explore how to train a model for coreference resolution. This will involve understanding what coreference resolution is, why it is important in NLP, and how to implement it using spaCy.

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Mastering spaCy
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