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Natural Language Processing-Concept along with Case Study

  • Development
  • May 10, 2025
SynopsisNatural Language Processing:Concept along with Case Study, av...
Natural Language Processing-Concept along with Case Study  No.1

Natural Language Processing:Concept along with Case Study, available at Free, has an average rating of 4.35, with 19 lectures, based on 142 reviews, and has 7470 subscribers.

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You will learn about What are various text processing techniques and their implementation in python. Case Study: Role of Hashing in Spam Filter compared to Countvectorizer. This course is ideal for individuals who are People willing to learn NLP and looking forward to build career in Machine Learning. It is particularly useful for People willing to learn NLP and looking forward to build career in Machine Learning.

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Summary

Title: Natural Language Processing:Concept along with Case Study

Price: Free

Average Rating: 4.35

Number of Lectures: 19

Number of Published Lectures: 19

Number of Curriculum Items: 19

Number of Published Curriculum Objects: 19

Original Price: Free

Quality Status: approved

Status: Live

What You Will Learn

  • What are various text processing techniques and their implementation in python.
  • Case Study: Role of Hashing in Spam Filter compared to Countvectorizer.
  • Who Should Attend

  • People willing to learn NLP and looking forward to build career in Machine Learning.
  • Target Audiences

  • People willing to learn NLP and looking forward to build career in Machine Learning.
  • This course provides a basic understanding of NLP. Anyone can opt for this course. No prior understanding of NLP is required.  Text Processing like Tokenization, Stop Words Removal, Stemming, different types of Vectorizers, WSD, etc are explained in detail with python code. Also difference between CountVectorizer and Hashing in Spam Filter.

    Course Curriculum

    Chapter 1: Introduction to Natural Language Processing

    Lecture 1: What is Natural Language Processing (NLP)

    Lecture 2: Tokenization

    Lecture 3: Stop Words Removal

    Lecture 4: N-Grams

    Lecture 5: Stemming

    Lecture 6: Word Sense Disambiguation

    Lecture 7: Count Vectorizer

    Lecture 8: TF-IDF Vectorizer

    Lecture 9: Hashing Vectorizer

    Chapter 2: Text Preprocessing – Python Code

    Lecture 1: Tokenization – Python

    Lecture 2: Stop Word Removal – Python

    Lecture 3: N-Grams – Python

    Lecture 4: Stemming – Python

    Lecture 5: Word Sense Disambiguation – Python

    Lecture 6: Count Vectorizer – Python

    Lecture 7: TF-IDF Vectorizer – Python

    Lecture 8: Hashing Vectorizer – Python

    Chapter 3: Case Study: Spam Filter

    Lecture 1: Spam Filter using CountVectorizer

    Lecture 2: Spam Filter using Hashing

    Instructors

  • Natural Language Processing-Concept along with Case Study  No.2
    Rishi Bansal
    Senior Developer
  • Rating Distribution

  • 1 stars: 3 votes
  • 2 stars: 5 votes
  • 3 stars: 40 votes
  • 4 stars: 47 votes
  • 5 stars: 47 votes
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