HOME > Development > NLP-Natural Language Processing in Python(Theory Projects)

NLP-Natural Language Processing in Python(Theory Projects)

  • Development
  • Dec 04, 2024
SynopsisNLP-Natural Language Processing in Python(Theory & Projec...
NLP-Natural Language Processing in Python(Theory Projects)  No.1

NLP-Natural Language Processing in Python(Theory & Projects), available at $54.99, has an average rating of 4.35, with 259 lectures, based on 100 reviews, and has 1077 subscribers.

You will learn about ? The importance of Natural Language Processing (NLP) in Data Science. ? The reasons to move from classical sequence models to deep learning-based sequence models. ? The essential concepts from the absolute beginning with complete unraveling with examples in Python. ? Details of deep learning models for NLP with examples. ? A summary of the concepts of Deep Learning theory. ? Practical description and live coding with Python. ? Deep PyTorch (Deep learning framework by Facebook). ? The use and applications of state-of-the-art NLP models. ? Building your own applications for automatic text generation and language translators. ? And much more… This course is ideal for individuals who are ? Complete beginners to Natural Language Processing. or ? People who want to upgrade their Python programming skills for NLP. or ? Individuals who are passionate about data science and machine learning. or ? Data Scientists. or ? Data Analysts. or ? Machine Learning Practitioners. It is particularly useful for ? Complete beginners to Natural Language Processing. or ? People who want to upgrade their Python programming skills for NLP. or ? Individuals who are passionate about data science and machine learning. or ? Data Scientists. or ? Data Analysts. or ? Machine Learning Practitioners.

Enroll now: NLP-Natural Language Processing in Python(Theory & Projects)

Summary

Title: NLP-Natural Language Processing in Python(Theory & Projects)

Price: $54.99

Average Rating: 4.35

Number of Lectures: 259

Number of Published Lectures: 258

Number of Curriculum Items: 259

Number of Published Curriculum Objects: 258

Original Price: $199.99

Quality Status: approved

Status: Live

What You Will Learn

  • ? The importance of Natural Language Processing (NLP) in Data Science.
  • ? The reasons to move from classical sequence models to deep learning-based sequence models.
  • ? The essential concepts from the absolute beginning with complete unraveling with examples in Python.
  • ? Details of deep learning models for NLP with examples.
  • ? A summary of the concepts of Deep Learning theory.
  • ? Practical description and live coding with Python.
  • ? Deep PyTorch (Deep learning framework by Facebook).
  • ? The use and applications of state-of-the-art NLP models.
  • ? Building your own applications for automatic text generation and language translators.
  • ? And much more…
  • Who Should Attend

  • ? Complete beginners to Natural Language Processing.
  • ? People who want to upgrade their Python programming skills for NLP.
  • ? Individuals who are passionate about data science and machine learning.
  • ? Data Scientists.
  • ? Data Analysts.
  • ? Machine Learning Practitioners.
  • Target Audiences

  • ? Complete beginners to Natural Language Processing.
  • ? People who want to upgrade their Python programming skills for NLP.
  • ? Individuals who are passionate about data science and machine learning.
  • ? Data Scientists.
  • ? Data Analysts.
  • ? Machine Learning Practitioners.
  • Master Natural Language Processing (NLP): Unleash the Power of AI in Language Understanding and Text Analysis

    Are you ready to embark on an exciting journey into the world of Natural Language Processing (NLP)? This comprehensive course is your gateway to mastering the art of understanding human language and harnessing the incredible capabilities of AI for text analysis and language understanding. Whether you’re a novice or an aspiring NLP practitioner, this course offers an extensive exploration of NLP theory and hands-on practice using Python.

    Course Highlights:

    In this enlightening course, you will:

    1. Explore NLP Foundations: Gain a solid understanding of NLP concepts, its importance, and its applications in fields like speech recognition, sentiment analysis, language translation, and chatbots.

    2. Harness Python’s Power: Leverage Python’s extensive libraries and tools for text analysis, text preprocessing, and data extraction. Python’s versatility makes it the ideal language for NLP.

    3. Master Text Preprocessing: Dive into the nitty-gritty of text preprocessing, including regular expressions, text normalization, tokenization, and more. Learn how to prepare text data for analysis effectively.

    4. Decode Word Embeddings: Unlock the potential of word embeddings, from traditional methods like one-hot vectors to advanced techniques like Word2Vec, GloVe, and BERT. Understand how words are represented in vectors and their applications.

    5. Grasp Deep Learning for NLP: Explore neural networks, recurrent neural networks (RNNs), their types (one to one, one to many, many to one, many to many), bi-directional RNNs, deep RNNs, and more. Understand how deep learning is revolutionizing NLP.

    6. Real-World Projects: Apply your NLP skills to practical projects, including building a Neural Machine/Language Translator and developing a Chatbot. These projects will challenge you and reinforce your learning.

    7. Extensive Learning Material: Access high-quality video lectures, assessments, course notes, and handouts to enhance your understanding. We provide comprehensive resources to support your learning journey.

    8. Supportive Community: Reach out to our friendly team for prompt assistance with any course-related queries. We are here to help you succeed.

    Course Modules:

    Here’s a glimpse of what you’ll explore throughout this comprehensive course:

  • Introduction to NLP: Understand the essence of NLP, its significance, and its applications in various domains. Get an overview of essential software tools used in NLP.

  • Text Preprocessing: Dive into text preprocessing techniques, including regular expressions, text normalization, tokenization, and string matching. Learn how to clean and prepare text data for analysis.

  • Word Embeddings: Explore language models, vocabulary, N-Grams, one-hot vectors, and advanced word embeddings like Word2Vec, GloVe, and BERT. Understand the mathematical foundations and applications of word embeddings.

  • NLP with Deep Learning: Master neural networks, different RNN architectures (one to one, one to many, many to one, many to many), advanced RNN models for NLP (encoder-decoder models, attention mechanisms), and deep learning techniques. Discover how deep learning has transformed NLP.

  • Projects: Apply your newfound knowledge to real-world projects. Build a Neural Machine/Language Translator and create a Chatbot. These hands-on projects will allow you to demonstrate your skills and creativity in solving practical NLP problems.

  • Who Should Enroll:

    This course is designed to cater to a wide audience, making it suitable for:

  • Beginners who are eager to venture into the fascinating world of Natural Language Processing

  • Python enthusiasts looking to enhance their programming skills for NLP applications

  • Data Scientists, Data Analysts, and Machine Learning Practitioners aiming to add NLP expertise to their skill set

  • Upon successful completion of this course, you’ll be equipped with the knowledge and hands-on experience to confidently tackle NLP challenges, create AI-powered language understanding systems, and embark on exciting career opportunities in the field of Natural Language Processing.

    Unlock the Potential of NLP and Transform Your Skill Set. Enroll Now and Harness the Power of AI in Language Understanding and Text Analysis!

    Keywords:

  • Natural Language Processing (NLP)

  • Artificial Intelligence (AI)

  • Text Analysis

  • Language Understanding

  • Python Programming

  • Text Preprocessing

  • Word Embeddings

  • Word Vectors

  • Deep Learning for NLP

  • Neural Networks

  • Recurrent Neural Networks (RNNs)

  • Word2Vec

  • GloVe

  • BERT

  • Language Models

  • Chatbots

  • Sentiment Analysis

  • Speech Recognition

  • Machine Translation

  • Text Data Processing

  • Text Normalization

  • Tokenization

  • Regular Expressions

  • Data Extraction

  • Text Mining

  • NLP Applications

  • Natural Language Understanding

  • Language Processing Tools

  • NLP Projects

  • AI-powered Language Systems

  • Career Opportunities in NLP

  • NLP Certification

  • Master NLP with Python

  • Learn Text Analysis with NLP

  • Python for Natural Language Processing

  • Dive into Word Embeddings

  • Deep Learning Techniques for NLP

  • Hands-on NLP Projects

  • Build AI-driven Chatbots

  • Sentiment Analysis in Python

  • NLP Career Advancement

  • Language Understanding Systems

  • Natural Language Processing Course

  • NLP Training and Certification

  • AI in Text Data Analysis

  • Harnessing NLP in Python

  • Unlock the Power of NLP

  • Real-world NLP Applications

  • Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Introduction to Course

    Lecture 2: Introduction to Instructor

    Lecture 3: Introduction to Co-Instructor

    Lecture 4: Course Introduction

    Lecture 5: Request for Your Honest Review

    Lecture 6: Links for the Courses Materials and Codes

    Chapter 2: Introduction(Regular Expressions)

    Lecture 1: Links for the Courses Materials and Codes

    Lecture 2: What Is Regular Expression

    Lecture 3: Why Regular Expression

    Lecture 4: ELIZA Chatbot

    Lecture 5: Python Regular Expression Package

    Chapter 3: Meta Characters(Regular Expressions)

    Lecture 1: Links for the Courses Materials and Codes

    Lecture 2: Meta Characters

    Lecture 3: Meta Characters Bigbrackets Exercise

    Lecture 4: Meta Characters Bigbrackets Exercise Solution

    Lecture 5: Meta Characters Bigbrackets Exercise 2

    Lecture 6: Meta Characters Bigbrackets Exercise 2 Solution

    Lecture 7: Meta Characters Cap

    Lecture 8: Meta Characters Cap Exercise 3

    Lecture 9: Meta Characters Cap Exercise 3 Solution

    Lecture 10: Backslash

    Lecture 11: Backslash Continued

    Lecture 12: Backslash Continued 01

    Lecture 13: Backslash Squared Brackets Exercise

    Lecture 14: Backslash Squared Brackets Exercise Solution

    Lecture 15: Backslash Squared Brackets Exercise Another Solution

    Lecture 16: Backslash Exercise

    Lecture 17: Backslash Exercise Solution And Special Sequences Exercise

    Lecture 18: Solution And Special Sequences Exercise Solution

    Lecture 19: Meta Character Asterisk

    Lecture 20: Meta Character Asterisk Exercise

    Lecture 21: Meta Character Asterisk Exercise Solution

    Lecture 22: Meta Character Asterisk Homework

    Lecture 23: Meta Character Asterisk Greedymatching

    Lecture 24: Meta Character Plus And Questionmark

    Lecture 25: Meta Character Curly Brackets Exercise

    Lecture 26: Meta Character Curly Brackets Exercise Solution

    Chapter 4: Pattern Objects(Regular Expressions)

    Lecture 1: Links for the Courses Materials and Codes

    Lecture 2: Pattern Objects

    Lecture 3: Pattern Objects Match Method Exersize

    Lecture 4: Pattern Objects Match Method Exersize Solution

    Lecture 5: Pattern Objects Match Method Vs Search Method

    Lecture 6: Pattern Objects Finditer Method

    Lecture 7: Pattern Objects Finditer Method Exersize Solution

    Chapter 5: More Meta Characters(Regular Expressions)

    Lecture 1: Links for the Courses Materials and Codes

    Lecture 2: Meta Characters Logical Or

    Lecture 3: Meta Characters Beginning And End Patterns

    Lecture 4: Meta Characters Paranthesis

    Chapter 6: String Modification(Regular Expressions)

    Lecture 1: Links for the Courses Materials and Codes

    Lecture 2: String Modification

    Lecture 3: Word Tokenizer Using Split Method

    Lecture 4: Sub Method Exercise

    Lecture 5: Sub Method Exercise Solution

    Chapter 7: Words and Tokens(Text Preprocessing)

    Lecture 1: Links for the Courses Materials and Codes

    Lecture 2: What Is A Word

    Lecture 3: Definition Of Word Is Task Dependent

    Lecture 4: Vocabulary And Corpus

    Lecture 5: Tokens

    Lecture 6: Tokenization In Spacy

    Chapter 8: Sentiment Classification(Text Preprocessing)

    Lecture 1: Links for the Courses Materials and Codes

    Lecture 2: Yelp Reviews Classification Mini Project Introduction

    Lecture 3: Yelp Reviews Classification Mini Project Vocabulary Initialization

    Lecture 4: Yelp Reviews Classification Mini Project Adding Tokens To Vocabulary

    Lecture 5: Yelp Reviews Classification Mini Project Look Up Functions In Vocabulary

    Lecture 6: Yelp Reviews Classification Mini Project Building Vocabulary From Data

    Lecture 7: Yelp Reviews Classification Mini Project One Hot Encoding

    Lecture 8: Yelp Reviews Classification Mini Project One Hot Encoding Implementation

    Lecture 9: Yelp Reviews Classification Mini Project Encoding Documents

    Lecture 10: Yelp Reviews Classification Mini Project Encoding Documents Implementation

    Lecture 11: Yelp Reviews Classification Mini Project Train Test Splits

    Lecture 12: Yelp Reviews Classification Mini Project Featurecomputation

    Lecture 13: Yelp Reviews Classification Mini Project Classification

    Chapter 9: Language Independent Tokenization(Text Preprocessing)

    Lecture 1: Links for the Courses Materials and Codes

    Lecture 2: Tokenization In Detial Introduction

    Lecture 3: Tokenization Is Hard

    Lecture 4: Tokenization Byte Pair Encoding

    Lecture 5: Tokenization Byte Pair Encoding Example

    Lecture 6: Tokenization Byte Pair Encoding On Test Data

    Lecture 7: Tokenization Byte Pair Encoding Implementation Getpaircounts

    Lecture 8: Tokenization Byte Pair Encoding Implementation Mergeincorpus

    Lecture 9: Tokenization Byte Pair Encoding Implementation BFE Training

    Lecture 10: Tokenization Byte Pair Encoding Implementation BFE Encoding

    Lecture 11: Tokenization Byte Pair Encoding Implementation BFE Encoding One Pair

    Lecture 12: Tokenization Byte Pair Encoding Implementation BFE Encoding One Pair 1

    Chapter 10: Text Nomalization(Text Preprocessing)

    Lecture 1: Links for the Courses Materials and Codes

    Lecture 2: Word Normalization Case Folding

    Lecture 3: Word Normalization Lematization

    Lecture 4: Word Normalization Stemming

    Lecture 5: Word Normalization Sentence Segmentation

    Chapter 11: String Matching and Spelling Correction(Text Preprocessing)

    Instructors

  • NLP-Natural Language Processing in Python(Theory Projects)  No.2
    AI Sciences
    AI Experts & Data Scientists |4+ Rated | 168+ Countries
  • NLP-Natural Language Processing in Python(Theory Projects)  No.3
    AI Sciences Team
    Support Team AI Sciences
  • Rating Distribution

  • 1 stars: 4 votes
  • 2 stars: 3 votes
  • 3 stars: 11 votes
  • 4 stars: 23 votes
  • 5 stars: 59 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!