Generative Ai - Llm And Beyond - 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: Generative Ai - Llm And Beyond (/Thread-Generative-Ai-Llm-And-Beyond) |
Generative Ai - Llm And Beyond - BaDshaH - 08-11-2024 Published 8/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 5.98 GB | Duration: 11h 52m LLM Lifecycle, Prompt Engineering, LLM Properties, Fine-tuning, PEFT LORA, RLHF, RAG, PPO,DPO,ORPO, AI for Vision What you'll learn LLAMA 2 CHATGPT LARGE LANGUAGE MODEL PROMPT ENGINEERING LLM FINE TUNING RAG RLHF LLM USE CASES LLM BASICS LLM FOR EVERYONE LLM Based chatbot chatbot Instruction fine tuning in context learning few shot inference hallucination Reinforcement learning from human feedback Retrieval Augmentation Generation Tools for reasoning Agents Augmentation Automation Transformers GEN-AI GENERATIVE AI ARTIFICIAL INTELLIGENCE DATA SCIENCE MACHINE LEARNING DEEP LEARNING LANGCHAIN LAMMAINDEX Low-Rank Adaptation LORA METRICS PPO DPO ORPO PDF RAG CSV RAG Requirements PYTHON NLP MACHINE LEARNING BASICS Description Generative AI: From Fundamentals to Advanced ApplicationsThis comprehensive course is designed to equip learners with a deep understanding of Generative AI, particularly focusing on Large Language Models (LLMs) and their applications. You will delve into the core concepts, practical implementation techniques, and ethical considerations surrounding this transformative technology.What You Will Learn:Foundational Knowledge: Grasp the evolution of AI, understand the core principles of Generative AI, and explore its diverse use cases.LLM Architecture and Training: Gain insights into the architecture of LLMs, their training processes, and the factors influencing their performance.Prompt Engineering: Master the art of crafting effective prompts to maximize LLM capabilities and overcome limitations.Fine-Tuning and Optimization: Learn how to tailor LLMs to specific tasks through fine-tuning and explore techniques like PEFT and RLHF.RAG and Real-World Applications: Discover how to integrate LLMs with external knowledge sources using Retrieval Augmented Generation (RAG) and explore practical applications.Ethical Considerations: Understand the ethical implications of Generative AI and responsible AI practices.By the end of this course, you will be equipped to build and deploy robust Generative AI solutions, addressing real-world challenges while adhering to ethical guidelines. Whether you are a data scientist, developer, or business professional, this course will provide you with the necessary skills to thrive in the era of Generative AI.Course Structure:The course is structured into 12 sections, covering a wide range of topics from foundational concepts to advanced techniques. Each section includes multiple lectures, providing a comprehensive learning experience.Section 1: Introduction to Generative AISection 2: LLM Architecture and ResourcesSection 3: Generative AI LLM LifecycleSection 4: Prompt Engineering SetupSection 5: LLM PropertiesSection 6: Prompt Engineering Basic GuidelinesSection 7: Better Prompting TechniquesSection 8: Full Fine TuningSection 9: PEFT - LORASection 10: RLHFSection 11: RAGSection 12: Generative AI for Vision (Preview) Overview Section 1: Introduction Lecture 1 What is Generative AI Lecture 2 What was before GENAI Lecture 3 GEN AI TOOLS Lecture 4 Better use of GEN AI Lecture 5 GENAI USE CASE WRITING Lecture 6 GEN AI Reading use cases Lecture 7 gen AI Usecase chatting Lecture 8 How to get Better Results from LLM Lecture 9 Responsible AI Section 2: LLM Shape size Resources needs Lecture 10 Augmentation vs Automation Lecture 11 The Kalpan Paper Lecture 12 The Chinchilla Paper Lecture 13 Transformers Section 3: Generative AI LLM lifecycle Lecture 14 GEN AI LIFE CYCLE Lecture 15 RAG INTRO Lecture 16 Fine tuning model intuition Lecture 17 RLHF INTUTION Lecture 18 Tools & Agents Section 4: Prompt Engineering - set up and Prompt template Lecture 19 Prompt Engineering - Introduction Lecture 20 LLM configuration parameters Lecture 21 Lecture 2: Llama 2 vs Llama 2 chat Lecture 22 Set up using Lamma 2 Section 5: LLM Properties Lecture 23 Stateless LLMs Lecture 24 Base LLM VS Fine Tuned LLM Lecture 25 System Prompts Lecture 26 Quantized models Lecture 27 Quantized Models Notebook Lecture 28 AWQ SETUP and usage of notebook Section 6: Prompt Engineering Basic Guidelines Lecture 29 Check Conditions & assumptions Lecture 30 Clear Instructions & Delimiters Lecture 31 Specific Output Structure Lecture 32 Few Shot Prompting Lecture 33 Give time to think Lecture 34 Hallucination Section 7: Better Prompting Techniques Lecture 35 Iterative Prompting Lecture 36 Issues While summarizing Lecture 37 summarize Lecture 38 Inference Lecture 39 Transformation Lecture 40 Expanding Lecture 41 Prompt Tuning Section 8: Full Fine Tuning Lecture 42 LLM FINE TUNING Lecture 43 GLUE SUPER GLUE Lecture 44 HELM Lecture 45 LLM FINE TUNING Implementation Section 9: PEFT - LORA Lecture 46 PEFT Lecture 47 QLORA Lecture 48 PEFT Implementation Section 10: RLHF Lecture 49 PPO Lecture 50 DPO VS ORPO Section 11: RAG Lecture 51 Using Langchain with Ollama to perform RAG with PDFs Lecture 52 RAG With CSV File Section 12: GEN AI for Vision - up next Lecture 53 Image prompt engineering Lecture 54 Stable Diffusion Lecture 55 Stable diffusion model train methods Lecture 56 Stable Diffusion Resources Lecture 57 FORGE setup DATA SCIENTISTS,ML Practitioners Homepage |