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Natural Language Preprocessing Using spaCy

  • Development
  • Apr 16, 2025
SynopsisNatural Language Preprocessing Using spaCy, available at $19....
Natural Language Preprocessing Using spaCy  No.1

Natural Language Preprocessing Using spaCy, available at $19.99, with 37 lectures, and has 252 subscribers.

You will learn about Introduction to NLP and Spacy Working with Text Data Tokenization and Part-of-Speech Tagging How to use spaCy models Rule-based matching This course is ideal for individuals who are Students interested in NLP It is particularly useful for Students interested in NLP.

Enroll now: Natural Language Preprocessing Using spaCy

Summary

Title: Natural Language Preprocessing Using spaCy

Price: $19.99

Number of Lectures: 37

Number of Published Lectures: 37

Number of Curriculum Items: 37

Number of Published Curriculum Objects: 37

Original Price: $109.99

Quality Status: approved

Status: Live

What You Will Learn

  • Introduction to NLP and Spacy
  • Working with Text Data
  • Tokenization and Part-of-Speech Tagging
  • How to use spaCy models
  • Rule-based matching
  • Who Should Attend

  • Students interested in NLP
  • Target Audiences

  • Students interested in NLP
  •                                                               <<WE WILL ADD MANY NEW TOPICS TO THIS COURSE>>

    Unlocking Linguistic Insights with spaCy

    Welcome to the world of linguistic analysis with our comprehensive Udemy course on using spaCy! If you’ve ever been curious about the underlying structure of language, fascinated by natural language processing (NLP), or eager to extract valuable information from text, this course is your gateway to the exciting field of computational linguistics.

    Linguistic analysis plays a pivotal role in applications ranging from sentiment analysis to chatbots, and spaCy is a leading library that empowers you to explore and manipulate language data with ease. Whether you’re a beginner or an experienced developer, our course provides a step-by-step journey through the core concepts, tools, and techniques of spaCy.

    In this course, you will:

  • Gain a solid understanding of linguistic concepts.

  • Explore tokenization, part-of-speech tagging, and named entity recognition.

  • Dive into dependency parsing and text classification.

  • Build practical NLP applications using spaCy.

  • By the end of the course, you’ll be equipped with the skills and knowledge to apply spaCy to real-world linguistic challenges. Join us today and start unraveling the secrets hidden within text!

    Who Should Take This Course:

  • Aspiring data scientists and machine learning engineers interested in NLP.

  • Software developers keen on integrating NLP capabilities into their applications.

  • Analysts and researchers aiming to leverage NLP for data analysis and insights.

  • Course Curriculum

    Chapter 1: Linguistic Features with spacy

    Lecture 1: Introduction

    Lecture 2: How to do Pos tagging? python code

    Lecture 3: What are adjuctives and how to find them using spaCy? python code

    Lecture 4: What are Preposition and postposition and how to find them using spaCy?

    Lecture 5: What are adverbs and how to find them using spaCy? python code

    Lecture 6: What Is an Auxiliary Verb and how to find it using spaCy? python code

    Lecture 7: What Are Determiners and how to find them using spaCy? python code

    Lecture 8: What is an Interjection and how to find them using spaCy? python code

    Lecture 9: What is a Noun and how to find it using spaCy? python code

    Lecture 10: What is a Coordinating Conjunction and how to find it the spaCy? python code

    Lecture 11: What is a Numeral and how to find it using spaCy ? python code

    Lecture 12: What are Particles and how to find them using spaCy? python code

    Lecture 13: What are a Pronoun and how to find it using spaCy ? python code

    Lecture 14: What are subordinating conjunctions ?

    Lecture 15: What are Symbol , Verb , X tags ?

    Lecture 16: what is inside Tags attribute ?python code

    Lecture 17: What is the dependency parsing ??

    Lecture 18: what is morphology ? python code

    Lecture 19: rule based lemmatizer vs lookup lemmatizer

    Lecture 20: what is lookups class and how to use it ? python code

    Lecture 21: load vs blank function python code

    Lecture 22: Named Entity Recognition part1 python code

    Lecture 23: Named Entity Recognition part2 python code

    Lecture 24: tokenizaion

    Lecture 25: How to Customize spaCy’s Tokenizer Class for Enhanced Text Processing????

    Lecture 26: Modifying existing rule sets

    Lecture 27: Hooking a custom tokenizer into the pipeline

    Lecture 28: Training with custom tokenization

    Lecture 29: Using pre-tokenized text

    Lecture 30: How to merge the tokens ?

    Lecture 31: How to split the tokens ?

    Lecture 32: Updating Custom Token Attributes

    Lecture 33: How to Segment Sentences ?

    Lecture 34: Mappings & Exceptions

    Lecture 35: Word vectors and semantic similarity

    Chapter 2: Rule-based matching

    Lecture 1: Token-based matching part1

    Lecture 2: Token-based matching part2

    Instructors

  • Natural Language Preprocessing Using spaCy  No.2
    Riad Almadani
    Machine Learning Engineer
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  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!