Published 9/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 666.60 MB | Duration: 1h 42m
Master NLP and Large Language Models (LLM): Build and deploy your own ChatGPT-like chatbot with Python in record time.
What you'll learn
Understand how NLP & LLMs and their architecture work
Implement Sentiment Analysis models
Implement Named Entity Recognition (NER) models
Implement Question-Answering models
Learn how to provision your own space with a GPU
Learn how to create a chatbot interface
Learn how to create your own AI chatbot from scratch in just 2 hours
Learn how to use Open Source models like Llama 3.1, BERT, and others
Requirements
Basic Knowlegde of Python
Description
Master NLP and Large Language Models (LLM): Build and deploy your ChatGPT-like chatbot with Python in record time.Would you like to dive into artificial intelligence and create your own chatbot in just 2 hours? This is possible with our intensive course on NLP & LLM and Generative AI. We will teach you from scratch what a Large Language Model (LLM) is and how to leverage its power to develop innovative applications.What You'll Learn:Natural Language Processing (NLP) & Large Language Models (LLMs): Understand the architecture and inner workings of LLMs like GPT.Transformers Library: Harness pipelines for sentiment analysis and entity recognition—key skills in natural language processing.AutoClass Models: Get hands-on with AutoModel and AutoTokenizer to build question-answering systems.Advanced Environments: Set up GPU configurations and create authentication tokens to work with sophisticated AI models.Build a User Interface for the Chatbot: Create an intuitive chat-style interface to test your chatbot.Open Source Models: Learn how to choose the right model based on the specific task at hand.Chatbot Development: Build the chat logic, design an engaging user interface, and deploy your very own LLM-powered chatbot.What You Need:All you need is a basic knowledge of Python and a computer to start building your own chatbot.
Overview
Section 1: Introduction
Lecture 1 Introduction
Lecture 2 What is an LLM?
Lecture 3 LLM Architecture
Lecture 4 Type of Tasks for LLMs
Section 2: Transformers
Lecture 5 What is the Transformers library?
Lecture 6 Link of the Notebook: Sentiment Analysis
Lecture 7 Using Pipeline for Sentiment Analysis
Lecture 8 How to search and pick an NLP model
Lecture 9 Link of the Notebook: Named Entity Recognition
Lecture 10 Using Pipeline for NER
Lecture 11 Link of the Notebook: Question & Answer
Lecture 12 Using AutoModel and AutoTokenizer for QA
Lecture 13 Generate and process the response of Q&A model
Section 3: LLM Chatbot Implementation
Lecture 14 Select the model to implement the chatbot
Lecture 15 Provisiong an space with GPU
Lecture 16 Create the Authentication Token
Lecture 17 Setup Llama model
Lecture 18 Process and tokenize the inputs
Lecture 19 Define terminators and generate the output of the model
Lecture 20 Create the UI of the chatbot
Lecture 21 Deploy your LLM chatbot
Lecture 22 Repository of our Chatbot
Section 4: Course Farewell
Lecture 23 Course Farewell
Everyone with basic knowledge of Python
TO MAC USERS: If RAR password doesn't work, use this archive program:
RAR Expander 0.8.5 Beta 4 and extract password protected files without error.
TO WIN USERS: If RAR password doesn't work, use this archive program:
Latest Winrar and extract password protected files without error.