riversongs Posted November 24, 2024 Report Share Posted November 24, 2024 Free Download Generative AI Architectures with LLM Prompt RAG Vector DBPublished 11/2024MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHzLanguage: English | Size: 2.04 GB | Duration: 5h 27mDesign and Integrate AI-Powered S/LLMs into Enterprise Apps using Prompt Engineering, RAG, Fine-Tuning and Vector DBsWhat you'll learnGenerative AI Model Architectures (Types of Generative AI Models)Transformer Architecture: Attention is All you NeedLarge Language Models (LLMs) ArchitecturesCapabilities of LLMs: Text Generation, Summarization, Q&A, Classification, Sentiment Analysis, Embedding Semantic Search, Code GenerationGenerate Text with ChatGPT: Understand Capabilities and Limitations of LLMs (Hands-on)Function Calling and Structured Outputs in Large Language Models (LLMs)LLM Providers: OpenAI, Meta AI, Anthropic, Hugging Face, Microsoft, Google and Mistral AILLM Models: OpenAI ChatGPT, Meta Llama, Anthropic Claude, Google Gemini, Mistral Mixral, xAI GrokSLM Models: OpenAI ChatGPT 4o mini, Meta Llama 3.2 mini, Google Gemma, Microsoft Phi 3.5How to Choose LLM Models: Quality, Speed, Price, Latency and Context WindowInteracting Different LLMs with Chat UI: ChatGPT, LLama, Mixtral, Phi3Installing and Running Llama and Gemma Models Using OllamaModernizing Enterprise Apps with AI-Powered LLM CapabilitiesDesigning the 'EShop Support App' with AI-Powered LLM CapabilitiesAdvanced Prompting Techniques: Zero-shot, One-shot, Few-shot, COTDesign Advanced Prompts for Ticket Detail Page in EShop Support App w/ Q&A Chat and RAGThe RAG Architecture: Ingestion with Embeddings and Vector SearchE2E Workflow of a Retrieval-Augmented Generation (RAG) - The RAG WorkflowEnd-to-End RAG Example for EShop Customer Support using OpenAI PlaygroundFine-Tuning Methods: Full, Parameter-Efficient Fine-Tuning (PEFT), LoRA, TransferEnd-to-End Fine-Tuning a LLM for EShop Customer Support using OpenAI PlaygroundChoosing the Right Optimization - Prompt Engineering, RAG, and Fine-TuningRequirementsBasics of Software ArchitecturesDescriptionIn this course, you'll learn how to Design Generative AI Architectures with integrating AI-Powered S/LLMs into EShop Support Enterprise Applications using Prompt Engineering, RAG, Fine-tuning and Vector DBs.We will design Generative AI Architectures with below components;Small and Large Language Models (S/LLMs)Prompt EngineeringRetrieval Augmented Generation (RAG)Fine-TuningVector DatabasesWe start with the basics and progressively dive deeper into each topic. We'll also follow LLM Augmentation Flow is a powerful framework that augments LLM results following the Prompt Engineering, RAG and Fine-Tuning.Large Language Models (LLMs) module;How Large Language Models (LLMs) works?Capabilities of LLMs: Text Generation, Summarization, Q&A, Classification, Sentiment Analysis, Embedding Semantic Search, Code GenerationGenerate Text with ChatGPT: Understand Capabilities and Limitations of LLMs (Hands-on)Function Calling and Structured Output in Large Language Models (LLMs)LLM Models: OpenAI ChatGPT, Meta Llama, Anthropic Claude, Google Gemini, Mistral Mixral, xAI GrokSLM Models: OpenAI ChatGPT 4o mini, Meta Llama 3.2 mini, Google Gemma, Microsoft Phi 3.5Interacting Different LLMs with Chat UI: ChatGPT, LLama, Mixtral, Phi3Interacting OpenAI Chat Completions Endpoint with CodingInstalling and Running Llama and Gemma Models Using Ollama to run LLMs locallyModernizing and Design EShop Support Enterprise Apps with AI-Powered LLM CapabilitiesPrompt Engineering module;Steps of Designing Effective Prompts: Iterate, Evaluate and TemplatizeAdvanced Prompting Techniques: Zero-shot, One-shot, Few-shot, Chain-of-Thought, Instruction and Role-basedDesign Advanced Prompts for EShop Support - Classification, Sentiment Analysis, Summarization, Q&A Chat, and Response Text Generation Design Advanced Prompts for Ticket Detail Page in EShop Support App w/ Q&A Chat and RAGRetrieval-Augmented Generation (RAG) module;The RAG Architecture Part 1: Ingestion with Embeddings and Vector SearchThe RAG Architecture Part 2: Retrieval with Reranking and Context Query PromptsThe RAG Architecture Part 3: Generation with Generator and OutputE2E Workflow of a Retrieval-Augmented Generation (RAG) - The RAG WorkflowDesign EShop Customer Support using RAGEnd-to-End RAG Example for EShop Customer Support using OpenAI PlaygroundFine-Tuning module;Fine-Tuning WorkflowFine-Tuning Methods: Full, Parameter-Efficient Fine-Tuning (PEFT), LoRA, TransferDesign EShop Customer Support Using Fine-TuningEnd-to-End Fine-Tuning a LLM for EShop Customer Support using OpenAI PlaygroundLastly, we will discussChoosing the Right Optimization - Prompt Engineering, RAG, and Fine-TuningThis course is more than just learning Generative AI, it's a deep dive into the world of how to design Advanced AI solutions by integrating LLM architectures into Enterprise applications. You'll get hands-on experience designing a complete EShop Customer Support application, including LLM capabilities like Summarization, Q&A, Classification, Sentiment Analysis, Embedding Semantic Search, Code Generation.OverviewSection 1: IntroductionLecture 1 IntroductionLecture 2 Tools and Resources for the Course - Course SlidesLecture 3 Course Project: EShop Customer Support with AI-Powered Capabilities using LLMsSection 2: What is Generative AI ?Lecture 4 Evolution of AI: AI, Machine Learning, Deep Learning and Generative AILecture 5 What is Generative AI ?Lecture 6 How Generative AI works ?Lecture 7 Generative AI Model Architectures (Types of Generative AI Models)Lecture 8 Transformer Architecture: Attention is All you NeedSection 3: What are Large Language Models (LLMs) ?Lecture 9 What are Large Language Models (LLMs) ?Lecture 10 How Large Language Models (LLMs) works?Lecture 11 What is Token And Tokenization ?Lecture 12 How LLMs Use TokensLecture 13 Capabilities of LLMs: Text Generation, Summarization, Q&A, ClassificationLecture 14 LLM Use Cases and Real-World ApplicationsLecture 15 Limitations of Large Language Models (LLMs)Lecture 16 Generate Text with ChatGPT: Understand Capabilities and Limitations of LLMsLecture 17 LLM Settings: Temperature, Max Tokens, Stop sequences, Top P, Frequency PenaltyLecture 18 Function Calling in Large Language Models (LLMs)Lecture 19 Structured Output in Large Language Models (LLMs)Lecture 20 What are Small Language Models (SLMs) ? Use Cases / How / Why / WhenSection 4: Exploring and Running Different LLMs w/ HuggingFace and OllamaLecture 21 LLM Providers: OpenAI, Meta AI, Anthropic, Hugging Face, Microsoft, GoogleLecture 22 LLM Models: OpenAI ChatGPT, Meta Llama, Anthropic Claude, Google Gemini, MistralLecture 23 SLM Models: OpenAI ChatGPT 4o mini, Meta Llama 3.2 mini, Gemma, Phi-3Lecture 24 How to Choose LLM Models: Quality, Speed, Price, Latency and Context WindowLecture 25 Open Source vs Proprietary ModelsLecture 26 Hugging Face - The GitHub of Machine Learning ModelsLecture 27 LLM Interaction Types: No-Code (ChatUI) or With-Code (API Keys)Lecture 28 Interacting Different LLMs with Chat UI: ChatGPT, LLama, Mixtral, Phi3Lecture 29 Interacting OpenAI Chat Completions Endpoint with CodingLecture 30 Ollama - Run LLMs LocallyLecture 31 Installing and Running Llama and Gemma Models Using OllamaLecture 32 Ollama integration using Semantic Kernel and C# with codingLecture 33 Modernizing Enterprise Apps with AI-Powered LLM CapabilitiesLecture 34 Designing the 'EShop Support App' with AI-Powered LLM CapabilitiesLecture 35 LLMs Augmentation Flow: Prompt Engineering -> RAG -> Fine tunning -> TrainedSection 5: Prompt EngineeringLecture 36 What is Prompt ?Lecture 37 Elements and Roles of a PromptLecture 38 What is Prompt Engineering ?Lecture 39 Steps of Designing Effective Prompts: Iterate, Evaluate and TemplatizeLecture 40 Advanced Prompting TechniquesLecture 41 Zero-Shot PromptingLecture 42 One-shot PromptingLecture 43 Few-shot PromptingLecture 44 Chain-of-Thought PromptingLecture 45 Instruction-based and Role-based PromptingLecture 46 Design Advanced Prompts for EShop Support - Classification, Sentiment AnalysisLecture 47 Design Advanced Prompts for Ticket Detail Page in EShop Support App w/ Q&A ChatLecture 48 Test Prompts for Eshop Support Customer Ticket w/ PlaygroundSection 6: Retrieval-Augmented Generation (RAG)Lecture 49 What is Retrieval-Augmented Generation (RAG) ?Lecture 50 Why Need Retrieval-Augmented Generation (RAG) ? Why is RAG Important?Lecture 51 How Does Retrieval-Augmented Generation (RAG) Work?Lecture 52 The RAG Architecture Part 1: Ingestion with Embeddings and Vector SearchLecture 53 The RAG Architecture Part 2: Retrieval with Reranking and Context Query PromptsLecture 54 The RAG Architecture Part 3: Generation with Generator and OutputLecture 55 E2E Workflow of a Retrieval-Augmented Generation (RAG) - The RAG WorkflowLecture 56 Applications Use Cases of RAGLecture 57 Challenges and Key Considerations of Using RAG -- Retrieval-Augmented GenerationLecture 58 Design EShop Customer Support using RAGLecture 59 End-to-End RAG Example for EShop Customer Support using OpenAI PlaygroundSection 7: Fine-Tuning LLMsLecture 60 What is Fine-Tuning ?Lecture 61 Why Need Fine-Tuning ?Lecture 62 When to Use Fine-Tuning ?Lecture 63 How Does Fine-Tuning Work?Lecture 64 Fine-Tuning Methods: Full, Parameter-Efficient Fine-Tuning (PEFT), LoRALecture 65 Applications & Use Cases of Fine-TuningLecture 66 Challenges and Key Considerations of Fine-TuningLecture 67 Design EShop Customer Support Using Fine-TuningLecture 68 End-to-End Fine-Tuning a LLM for EShop Customer Support using OpenAI PlaygroundSection 8: Choosing the Right Optimization - Prompt Engineering, RAG, and Fine-TuningLecture 69 Comparison of Prompt Engineering, RAG, and Fine-TuningLecture 70 Choosing the Right Optimization - Prompt Engineering, RAG, and Fine-TuningLecture 71 Training Own Model for LLM OptimizationLecture 72 ThanksBeginner to integrate AI-Powered LLMs into Enterprise AppsHomepagehttps://www.udemy.com/course/generative-ai-architectures-with-llm-prompt-rag-vector-db/Download ( Rapidgator )https://rg.to/file/86795910489bcbeb5a918f73b256a642/znigo.Generative.AI.Architectures.with.LLM.Prompt.RAG.Vector.DB.part1.rar.htmlhttps://rg.to/file/ee4299e995f41906cf2cf7576abc9688/znigo.Generative.AI.Architectures.with.LLM.Prompt.RAG.Vector.DB.part3.rar.htmlhttps://rg.to/file/f05802bcfafffb585dcdab050f1de062/znigo.Generative.AI.Architectures.with.LLM.Prompt.RAG.Vector.DB.part2.rar.htmlFikperhttps://fikper.com/25sjPtZWuk/znigo.Generative.AI.Architectures.with.LLM.Prompt.RAG.Vector.DB.part3.rar.htmlhttps://fikper.com/EmugMisB2Y/znigo.Generative.AI.Architectures.with.LLM.Prompt.RAG.Vector.DB.part2.rar.htmlhttps://fikper.com/OKMsOP62NQ/znigo.Generative.AI.Architectures.with.LLM.Prompt.RAG.Vector.DB.part1.rar.htmlNo Password - Links are Interchangeable Link to comment Share on other sites More sharing options...
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