Tags
Language
Tags
September 2025
Su Mo Tu We Th Fr Sa
31 1 2 3 4 5 6
7 8 9 10 11 12 13
14 15 16 17 18 19 20
21 22 23 24 25 26 27
28 29 30 1 2 3 4
    Attention❗ To save your time, in order to download anything on this site, you must be registered 👉 HERE. If you do not have a registration yet, it is better to do it right away. ✌

    ( • )( • ) ( ͡⚆ ͜ʖ ͡⚆ ) (‿ˠ‿)
    SpicyMags.xyz

    Master Natural Language Processing With Transformers

    Posted By: ELK1nG
    Master Natural Language Processing With Transformers

    Master Natural Language Processing With Transformers
    Published 11/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 1.58 GB | Duration: 5h 6m

    NLP with Transformers | GenAI | Hugging Face | Deep Learning

    What you'll learn

    Fundamental concepts and applications of Natural Language Processing (NLP)

    Learn what transformers are and how they revolutionized NLP tasks.

    Setting up a Python environment and working with VSCode for NLP projects

    Installing and using essential NLP libraries, such as NLTK, Hugging face, Pytroch

    Gain practical skills in fine-tuning pre-trained models on specific datasets for improved performance.

    Lean about Hugging Face transformer, dataset and tokenization libraries

    Explain Self-Attention, Multi-head Attention, Position encoding, encoder and decoder architecture

    Key text preprocessing techniques, including tokenization, stemming, lemmatization, stop words, and spelling correction, with practical coding examples

    Various text representation methods, including Bag of Words, n-grams, one-hot encoding, and TF-IDF

    An introduction to Word2Vec, along with practical implementations of CBOW and skip-gram models, and the use of pre-trained Word2Vec models

    Comprehensive understanding of transformer architectures.

    Detailed study of the BERT model and its application in sentiment classification, along with hands-on projects using Hugging Face libraries

    Fine-tune language classification models with BERT

    Overview and practical project involving the T5 model for text translation

    Fine-tuning Text translation model with T5

    Development of hands-on coding skills through practical projects and exercises

    An understanding of modern NLP tools and techniques used in the industry for building robust NLP applications.

    Requirements

    Strong knowledge of Python programming

    Basic understanding of machine learning concepts, such as model training, evaluation, and supervised learning.

    Familiarity with deep learning frameworks, especially PyTorch.

    Description

    Unlock the power of modern Natural Language Processing (NLP) and elevate your skills with this comprehensive course on NLP with a focus on Transformers. This course will guide you through the essentials of Transformer models, from understanding the attention mechanism to leveraging pre-trained models.  If so, then this course is for you what you need! We have divided this course into Chapters. In each chapter, you will be learning a new concept for Natural Language Processing with Transformers. These are some of the topics that we will be covering in this course:Starting from an introduction to NLP and setting up your Python environment, you'll gain hands-on experience with text preprocessing methods, including tokenization, stemming, lemmatization, and handling special characters. You will learn how to represent text data effectively through Bag of Words, n-grams, and TF-IDF, and explore the groundbreaking Word2Vec model with practical coding exercises.Dive deep into the workings of transformers, including self-attention, multi-head attention, and the role of position encoding. Understand the architecture of transformer encoders and decoders and learn how to train and use these powerful models for real-world applications.The course features projects using state-of-the-art pre-trained models from Hugging Face, such as BERT for sentiment analysis and T5 for text translation. With guided coding exercises and step-by-step project walkthroughs, you’ll solidify your understanding and build your confidence in applying these models to complex NLP tasks.By the end of this course, you’ll be equipped with practical skills to tackle NLP challenges, build robust solutions, and advance your career in data science or machine learning. If you’re ready to master NLP with modern tools and hands-on projects, this course is perfect for you.What You’ll Learn:- Comprehensive text preprocessing techniques with real coding examples- Text representation methods including Bag of Words, TF-IDF, and Word2Vec- In-depth understanding of transformer architecture and attention mechanisms- How to implement and use BERT for sentiment classification- How to build a text translation project using the T5 model- Practical experience with the Hugging Face ecosystemWho This Course Is For:- Intermediate to advanced NLP learners- Machine learning engineers and data scientists- Python developers interested in NLP applications- AI enthusiasts and researchersEmbark on this journey to mastering NLP with Transformers and build your expertise with hands-on projects and state-of-the-art tools.Feel Free to message me on the Udemy Ques and Ans board, if you have any queries about this Course. We'll give you the best reply as soon as possible.Thanks for checking the course Page, and I hope to see you in my course.

    Overview

    Section 1: Introduction

    Lecture 1 Introduction to Course

    Lecture 2 Introduction to NLP

    Lecture 3 Setting Up the Python Environment

    Lecture 4 Installing and Configuring VSCode

    Lecture 5 Installing Essential NLP Packages

    Section 2: Text Preprocessing

    Lecture 6 What is Lower Casing and and Implementation

    Lecture 7 Tokenization: Concepts and Coding

    Lecture 8 Handling Punctuation: Techniques and Code Examples

    Lecture 9 Processing Chat Words with Coding Examples

    Lecture 10 Handling Emojis: Strategies and Code Implementation

    Lecture 11 Stemming: Concepts and Coding

    Lecture 12 Lemmatization: Concepts and Coding

    Lecture 13 What is Stop Words and Coding

    Lecture 14 Spelling Correction and Coding

    Section 3: Text Representation

    Lecture 15 Bag of Words

    Lecture 16 n-grams

    Lecture 17 One Hot Encoding

    Lecture 18 Tf-Idf

    Lecture 19 word2vec Introduction

    Lecture 20 word2vec CBOW

    Lecture 21 word2vec CBOW Coding

    Lecture 22 Word2vec Skip gram

    Lecture 23 Pre-Trained Word2Vec Model

    Section 4: Transformers

    Lecture 24 Introduction to Transformers

    Lecture 25 Understanding Self-Attention Mechanism

    Lecture 26 Multi-Head Attention Explained

    Lecture 27 Position Encoding: Concept and Importance

    Lecture 28 Transformer Encoder Architecture

    Lecture 29 Transformer Decoder Part 1

    Lecture 30 Transformer Decoder Part 2

    Section 5: BERT Model - Sentiment Classification

    Lecture 31 Introduction to Hugging Face Ecosystem

    Lecture 32 Overview of the BERT Model Architecture

    Lecture 33 Project: Building a Sentiment Classification Model Using BERT

    Section 6: T5 - Text Translation

    Lecture 34 Overview of the T5 Model and Its Capabilities

    Lecture 35 Project: Training a Text Translation Model Using T5

    Section 7: Conclusion

    Lecture 36 Thank you

    NLP Enthusiasts and Researchers,Data Scientists and Machine Learning Practitioners,Intermediate to Advanced Learners in NLP,NLP Enthusiasts,Data scientists looking to expand their NLP knowledge,Students or professionals pursuing a career in NLP or AI.,Machine learning engineers interested in transformers and pre-trained models,AI enthusiasts eager to learn about the Hugging Face ecosystem