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Mastering spaCy

You're reading from   Mastering spaCy Build structured NLP solutions with custom components and models powered by spacy-llm

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Product type Paperback
Published in Feb 2025
Publisher Packt
ISBN-13 9781835880463
Length 238 pages
Edition 2nd Edition
Languages
Tools
Concepts
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Authors (2):
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Déborah Mesquita Déborah Mesquita
Author Profile Icon Déborah Mesquita
Déborah Mesquita
Duygu Altınok Duygu Altınok
Author Profile Icon Duygu Altınok
Duygu Altınok
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Toc

Table of Contents (17) Chapters Close

Preface 1. Part 1: Getting Started with spaCy
2. Chapter 1: Getting Started with spaCy FREE CHAPTER 3. Chapter 2: Core Operations with spaCy 4. Part 2: Advanced Linguistic and Semantic Analysis
5. Chapter 3: Extracting Linguistic Features 6. Chapter 4: Mastering Rule-Based Matching 7. Chapter 5: Extracting Semantic Representations with spaCy Pipelines 8. Chapter 6: Utilizing spaCy with Transformers 9. Part 3: Customizing and Integrating NLP Workflows
10. Chapter 7: Enhancing NLP Tasks Using LLMs with spacy-llm 11. Chapter 8: Training an NER Component with Your Own Data 12. Chapter 9: Creating End-to-End spaCy Workflows with Weasel 13. Chapter 10: Training an Entity Linker Model with spaCy 14. Chapter 11: Integrating spaCy with Third-Party Libraries 15. Index 16. Other Books You May Enjoy

LLMs and prompt engineering basics

As we saw in Chapter 6, language modeling is the task of predicting the next token given the sequence of previous tokens. The example we used was that given the sequence of words Yesterday I visited a, a language model can predict the next token to be something such as church, hospital, school, and so on. Conventional language models are usually trained in a supervised manner to perform a specific task. Pre-trained language models (PLM) are trained in a self-supervised manner, with the aim of learning a generic representation of the language. These PLM models are then fine-tuned to perform a specific downstream task. This self-supervised pre-training made PLM models much more powerful than regular language models.

The LLMs are an evolution of PLMs that have many more model parameters and larger training datasets. The GPT-3 model, for example, has 175B parameters. Its successor, GPT3.5, was the base for the ChatGPT model released in November 2022...

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