Langchain Guide: Next-Gen Chatgpt & Llms Apps With Langchain
Published 7/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.23 GB | Duration: 3h 20m
Published 7/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.23 GB | Duration: 3h 20m
From Zero to Hero. Build Real-World Next-Gen LLM App with LangChain, open-source LLMs, Hugging Face, FAISS and Pinecone
What you'll learn
Foundations of Language Models
Generative AI
Tool-box of Language Models (LLM) and NLP
Open-source Large Language Models (LLMs)
How to supercharge LLMs with LangChain
Training ChatGPT with a personalized knowledge base with LangChain
A deep dive into vector databases: FAISS, PINECONE, etc
Understanding multi-step reasoning
Langchain and Agents in enhancing LLM capabilities
Requirements
Python
Description
The Artificial Intelligence revolution is upon us, bringing a new wave of groundbreaking tools. One of these tools is LangChain, an innovative technology that helps AI professionals ramp up the capabilities of Language Models. In our LangChain course, we guide you to unleash the full potential of these tools, catapulting your AI skills to new heights.This course is not just about the basics of Generative Artificial Intelligence and Natural Language Processing. It's about using LangChain to supercharge the performance and efficiency of your Language Models. We'll arm you with the skills and insights to tweak and tailor language models to your specific requirements, opening up a wider array of AI challenges and opportunities for you to tackle.Imagine having the ability to train ChatGPT with your own custom knowledge base, and that's just the start. We'll delve into what vector databases are, get to grips with multi-step reasoning, and show you how LangChain can unlock new possibilities with your LLMs.In this course, we're going to cover:Getting to know Language ModelsThe nuts and bolts of Generative AIThe tool-box of Language Models (LLM) and NLPWorking with open-source Large Language Models (LLMs)How to supercharge LLMs with LangChainTraining ChatGPT with a personalized knowledge base with LangChainA deep dive into vector databasesUnderstanding multi-step reasoningThe role of Langchain and Agents in enhancing LLM capabilitiesSo, dive into the captivating world of Language Models with LangChain. Extend the capabilities of your LLM models, develop language models that cater to your needs, and explore a whole new world of possibilities with LLMs through LangChain.
Overview
Section 1: Introduction
Lecture 1 Introduction
Section 2: Introduction to Language Models
Lecture 2 Introduction to Language Models
Lecture 3 What are Language Models
Lecture 4 Types of Language Models
Section 3: Fundamentals of Generative AI
Lecture 5 Introduction to Generative AI and its applications ChatGPT, DALLE
Lecture 6 Discriminative vs. generative models
Lecture 7 GANs Generative Adversarial Networks
Lecture 8 Models based on Transformers
Lecture 9 Variational Auto Encoders and latent space
Lecture 10 Challenges of Generative AI
Section 4: Language Modeling Tools (LLM) and NLP
Lecture 11 Tools for working with LLMs and NLP
Lecture 12 Open AI API
Lecture 13 Hugging Face Fundamentals
Lecture 14 LangChain Fundamentals
Lecture 15 Open source LLM models
Section 5: Open-source Large Language Models (LLMs)
Lecture 16 Benefits of open-source LLM models
Lecture 17 Different open-source LLM models and comparative analysis
Lecture 18 Fundamentals of the Llama model
Lecture 19 Alpaca model fundamentals
Lecture 20 Fundamentals of the Vicuña model
Lecture 21 Koala model fundamentals
Section 6: Giving Superpowers to LLMs with LangChain
Lecture 22 Introduction to LangChain
Lecture 23 Different LangChain model types and requirements
Lecture 24 LLM input management with LangChain's Prompts Module
Lecture 25 Combination of LLM with other components through chains
Lecture 26 Providing access to external data through LangChain Indexes
Lecture 27 Giving the ability to memorize ChatGPT through Memor LangChain
Lecture 28 Providing access to tools through LangChain's Agents module
Section 7: Train ChatGPT with a customized knowledge base
Lecture 29 Introduction to LangChain indexes
Lecture 30 Practical Lab: ChatGPT training with complete inforPDF
Section 8: Vector Databases
Lecture 31 Introduction to vector databases and importance for LLMs
Lecture 32 Characteristics of vector databases
Lecture 33 Vector Databases, Plugins and Vector Libraries
Lecture 34 Vector search strategies and similarity metrics
Section 9: Multi-stage reasoning
Lecture 35 Programming WorkFlows in LangChain
Lecture 36 Linking multiple LLMs with LangChain
Lecture 37 Practical Lab: Chaining of Prompts with LangChain Chains
Lecture 38 Practical Lab (II): Chaining Prompts with LangCha Chains
Section 10: Langchain and Agents: Giving new capabilities to LLMs
Lecture 39 Introduction to LangChain agents
Lecture 40 Hands-on Lab: Programming the Wikipedia, Google, and Google agent
Lecture 41 Practical Lab: Integration of agents in ChatGPT
AI Enthusiasts keen to expand their understanding of Language Models and Generative AI.,Anyone interested in Large Language Models,Python Developers interested in integrating advanced AI techniques into their applications.,Data Scientists aiming to broaden their skill set in the field of Natural Language Processing.,Tech Professionals seeking to stay ahead in the rapidly evolving landscape of AI,Researchers in AI and Machine Learning looking for practical application of theoretical knowledge