Natural Language Processing with Python and NLTK
Natural Language Processing with Python and NLTK, available at $49.99, has an average rating of 4.25, with 28 lectures, based on 59 reviews, and has 5565 subscribers.
You will learn about Learn Python NLTK Library Learn Applications of NLP Learn Text Pre-processing Learn Stemming, Lemmatization, Part of Speech Tagging Learn to Build A Topic Modeling Application Learn to Build A Text Summarization Application Learn to Build A Sentiment Analysis Application And Much More…. This course is ideal for individuals who are Anyone interested in NLP and text mining. It is particularly useful for Anyone interested in NLP and text mining.
Enroll now: Natural Language Processing with Python and NLTK
Summary
Title: Natural Language Processing with Python and NLTK
Price: $49.99
Average Rating: 4.25
Number of Lectures: 28
Number of Published Lectures: 28
Number of Curriculum Items: 28
Number of Published Curriculum Objects: 28
Original Price: $19.99
Quality Status: approved
Status: Live
What You Will Learn
- Learn Python NLTK Library
- Learn Applications of NLP
- Learn Text Pre-processing
- Learn Stemming, Lemmatization, Part of Speech Tagging
- Learn to Build A Topic Modeling Application
- Learn to Build A Text Summarization Application
- Learn to Build A Sentiment Analysis Application
- And Much More….
Who Should Attend
- Anyone interested in NLP and text mining.
Target Audiences
- Anyone interested in NLP and text mining.
Text mining and Natural Language Processing (NLP) are among the most active research areas. Pre-processing your text data before feeding it to an algorithm is a crucial part of NLP. In this course, you will learn NLP using natural language toolkit (NLTK), which is part of the Python. You will learn pre-processing of data to make it ready for any NLP application.
We go through text cleaning, stemming, lemmatization, part of speech tagging, and stop words removal. The difference between this course and others is that this course dives deep into the NLTK, instead of teaching everything in a fast pace.
This course has 3 sections. In the first section, you will learn the definition of NLP and its applications. Additionally, you will learn how to install NLTK and learn about its components.
In the second section, you will learn the core functions of NLTK and its methods and techniques. We examine different available algorithms for pre-processing text data.
In the last section, we will build 3 NLP applications using the methods we learnt in the previous section.
Specifically, we will go through developing a topic modeling application to identify topics in a large text. We will identify main topics discussed in a large corpus.
Then, we will build a text summarization application. We will teach the computer to summarize the large text and to summarize the important points.
The last application is about sentiment analysis. Sentiment analysis in Python is a very popular application that can be used on variety of text data. One of its applications is Twitter sentiment analysis. Since tweets are short piece of text, they are ideal for sentiment analysis. We will go through building a sentiment analysis system in the last example.
Finally, we compare NLTK with SpaCy, which is another popular NLP library in Python. It’s going to be a very exciting course. Let’s start learning.
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction
Lecture 2: Course Overview
Lecture 3: Before You Start This Course
Lecture 4: What is NLP?
Lecture 5: Applications of NLP
Lecture 6: Basic Python – List
Lecture 7: Basic Python – String
Lecture 8: Basic Python – Functions
Lecture 9: Installing NLTK
Chapter 2: Text Wrangling and Cleansing
Lecture 1: What is Text Wrangling?
Lecture 2: Text Cleansing
Lecture 3: Sentence Tokenization
Lecture 4: Word Tokenization
Lecture 5: Stemming
Lecture 6: Lemmatization
Lecture 7: Stemming vs. Lemmatization
Lecture 8: Stop Words Removal
Chapter 3: Part of Speech Tagging
Lecture 1: What is Part of Speech Tagging?
Lecture 2: NLTK POS Tagger
Lecture 3: Sequential Tagger – Part 1
Lecture 4: Sequential Tagger – Part 2
Lecture 5: Named Entity Recognition (NER)
Lecture 6: Practice
Chapter 4: Building NLP Applications
Lecture 1: Topic Modeling
Lecture 2: Text Summarization
Lecture 3: Sentiment Analysis
Chapter 5: Conclusion
Lecture 1: NLTK vs. SpaCy
Lecture 2: Resources
Instructors
-
Dr. Ali Feizollah
Research Scholar in Computer Science
Rating Distribution
- 1 stars: 1 votes
- 2 stars: 3 votes
- 3 stars: 9 votes
- 4 stars: 21 votes
- 5 stars: 25 votes
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!
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