SpringerNLP/Chapter3
Chapter 3: Text and Speech Basics
This is a learning resource for understanding fundamental concepts in text and speech processing, such as how computers understand human language. It provides practical examples and tools that demonstrate basic workflows in natural language processing (NLP) and speech recognition. It's designed for students, researchers, or anyone new to the field of AI interested in the basics of human language technology.
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Use this if you are studying or teaching the foundational principles of how text and speech are processed by machines, especially if you are following the 'Deep Learning for NLP and Speech Recognition' book.
Not ideal if you are looking for a ready-to-use application or a production-grade library for advanced NLP or speech recognition tasks.
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Jul 23, 2019
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