A Deep Dive Into The Future Tech Of Chatgpt And Llms - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: A Deep Dive Into The Future Tech Of Chatgpt And Llms (/Thread-A-Deep-Dive-Into-The-Future-Tech-Of-Chatgpt-And-Llms) |
A Deep Dive Into The Future Tech Of Chatgpt And Llms - Farid - 09-08-2023 A Deep Dive Into The Future Tech Of Chatgpt And Llms Published 9/2023 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 1.68 GB | Duration: 4h 39m From Zero to AI Hero: Dive Deep into ChatGPT, Large Language Models, LangChain, Pinecone, Flowise, Open-Source LLMs. What you'll learn Introduction to Large Language Models Fundamentals of Generative AI and ChatGPT Prompt Engineering for effective use of ChatGPT and LLMs Language Modeling Tools (LLM) and NLP Hugging Face: The GitHub of language models. Giving Superpowers to LLMs with LangChain Train ChatGPT with a customized knowledge base Langchain and Agents: Giving new capabilities to LLMs Working with Open-source models: ChatGPT4All Requirements ChatGPT Fundamentals Description Unlock the Future of Large Language Models and ChatGPT: Dive deep into the next-generation tech that's revolutionizing how we interact, write, and think. This immersive course offers an unparalleled insight into Large Language Models (LLMs), the underlying tech behind ChatGPT, and a landscape of open-source models. Why This Course?1. **Comprehensive Curriculum:** From the basics of Udemy, foundational concepts of LLMs, to advanced practical labs on GPT4ALL and LangChain - we've covered it all.2. **Hands-On Experience:** Engage in hands-on labs, learning how to integrate tools, manage inputs, and unlock the potential of LLMs.3. **Cutting Edge Content:** Understand the mechanics behind ChatGPT's evolution, dive into Generative AI, and discover the power of Prompt Engineering.4. **Industry Expertise:** Harness the capabilities of Hugging Face, hailed as the 'GitHub of language models', and explore groundbreaking tools for working with LLMs and NLPs.5. **Application Development:** Master no-code application development with Flowise, opening new doors to AI-powered solutions. Who's This For?- AI enthusiasts eager to learn about the next big thing.- Developers wanting to incorporate LLMs into their tools.- Entrepreneurs looking to leverage AI for innovative solutions.- Students, educators, and researchers in AI and NLP fields. Course Highlights:- Get acquainted with Udemy, ensuring you harness the full potential of this platform.- Understand Large Language Models, from their inception to their diverse types.- Dive into the world of Generative AI - exploring models based on Transformers, Variational Auto Encoders, and more.- Get a behind-the-scenes look at OpenAI, the genius behind ChatGPT.- Understand and implement Prompt Engineering techniques for better LLM results.- Explore tools like OpenAI API, Hugging Face, and LangChain in detail.- Navigate the open-source world of LLMs and the benefits they bring.- Practical Labs: Experience hands-on training with tools, integration, and application development.- Special focus on application development with ChatGPT without code using Flowise. By the end of this course, you'll be well-equipped with the knowledge and practical skills to navigate the rapidly evolving world of ChatGPT and LLMs. Whether you're a curious individual, a budding developer, or a forward-thinking entrepreneur, this course holds the keys to the future of communication.Don't wait. Enroll now and be at the forefront of the AI revolution! Overview Section 1: Introduction to the Udemy platform Lecture 1 Introduction to the Udemy platform Section 2: Sust_Introduction to Large Language Models Lecture 2 Introduction to Large Language Models Lecture 3 What are Large 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, MidJourney Lecture 6 Modelos discriminativos vs modelos generativos Lecture 7 Redes Generativas Adversariales (GAN) Lecture 8 Models based on Transformers Lecture 9 Variational Auto Encoders and latent space Lecture 10 Challenges of Generative AI Section 4: Fundamentos de ChatGPT Lecture 11 OpenAI: the company behind the ChatGPT algorithm Lecture 12 Laboratorio: Primeros pasos con ChatGPT Lecture 13 Limitations of ChatGPT Section 5: ChatGPT4 Lecture 14 GPT4 The evolution of ChatGPT Section 6: Prompt Engineering for effective use of ChatGPT and LLMs Lecture 15 What is Prompt Engineering Lecture 16 How to get better results with LLMs Lecture 17 Prompt Engineering Techniques for ChatGPT Section 7: Language Modeling Tools (LLM) and NLP Lecture 18 Tools for working with LLMs and NLPs Lecture 19 Open AI API Lecture 20 Hands-on Lab: OpenAI API Lecture 21 Hugging Face Fundamentals Lecture 22 Fundamentos de LangChain Lecture 23 Modelos LLM de código abierto Section 8: Sust_Hugging Face: The GitHub of language models. Lecture 24 Introduction to Hugging Face and its components Lecture 25 Hugging Face interface and model and dataset selection Lecture 26 Pipelines de Hugging Face Lecture 27 Tokenizer and Hugging Face Models Lecture 28 Datasets de Cara de abrazo Section 9: Open-source Large Language Models (LLMs) Lecture 29 Benefits of open-source LLM models Lecture 30 Different open-source LLM models and comparative analysis Section 10: Giving Superpowers to LLMs with LangChain Lecture 31 Introduction to LangChain Lecture 32 LangChain use cases and components Lecture 33 Different LangChain model types and requirements Lecture 34 LLM input management with LangChain's Prompts Module Lecture 35 Combination of LLM with other components through chains Lecture 36 Providing access to external data through LangChain Indexes Lecture 37 Giving the ability to memorize ChatGPT through Memor LangChain Lecture 38 Providing access to tools through LangChain's Agents module Section 11: Train ChatGPT with a customized knowledge base Lecture 39 Introduction to LangChain indexes Lecture 40 Practical Lab: ChatGPT training with PDF data Section 12: Langchain and Agents: Giving new capabilities to LLMs Lecture 41 LangChain Agents and Components Lecture 42 Hands-on Lab: Programming the Wikipedia agent, Google S Lecture 43 Hands-on Lab: Integration of agents in ChatGPT Section 13: Working with Open-source models: ChatGPT4All Lecture 44 ClosedAI y modelos LLM de código abierto Lecture 45 GPT4ALL Fundamentals Lecture 46 Hands-on Lab_First steps with GPT4ALL Lecture 47 Practical Lab_Data privacy with GPT4ALL Lecture 48 Practical Lab_ Chaining Prompts with GPT4ALL and LangChain e Lecture 49 Advanced Practical Laboratory_Integration of an external database Lecture 50 Lab Pr Ava_Generating a vector DB with Alpaca and LangChain eng Lecture 51 Lab Pract Ava_QnA with GPT4ALL and FAISS vector database AI enthusiasts eager to learn about the next big thing.,Developers wanting to incorporate LLMs into their tools,Entrepreneurs looking to leverage AI for innovative solutions,Students, educators, and researchers in AI and NLP fields A Deep Dive Into The Future Tech Of Chatgpt And Llms (1.68 GB) KatFile Link(s) RapidGator Link(s) |