LLM Engineering: Master AI, Large Language Models & Agents
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- أقسام الدرس
- رأي
Mastering Generative AI and LLMs: An 8-Week Hands-On Journey
Accelerate your career in AI with practical, real-world projects led by industry veteran Ed Donner. Build advanced Generative AI products, experiment with over 20 groundbreaking models, and master state-of-the-art techniques like RAG, QLoRA, and Agents.
What you’ll learn
• Build advanced Generative AI products using cutting-edge models and frameworks.
• Experiment with over 20 groundbreaking AI models, including Frontier and Open-Source models.
• Develop proficiency with platforms like HuggingFace, LangChain, and Gradio.
• Implement state-of-the-art techniques such as RAG (Retrieval-Augmented Generation), QLoRA fine-tuning, and Agents.
• Create real-world AI applications, including:
• A multi-modal customer support assistant that interacts with text, sound, and images.
• An AI knowledge worker that can answer any question about a company based on its shared drive.
• An AI programmer that optimizes software, achieving performance improvements of over 60,000 times.
• An ecommerce application that accurately predicts prices of unseen products.
• Transition from inference to training, fine-tuning both Frontier and Open-Source models.
• Deploy AI products to production with polished user interfaces and advanced capabilities.
• Level up your AI and LLM engineering skills to be at the forefront of the industry.
About the Instructor
I’m Ed Donner, an entrepreneur and leader in AI and technology with over 20 years of experience. I’ve co-founded and sold my own AI startup, started a second one, and led teams in top-tier financial institutions and startups around the world. I’m passionate about bringing others into this exciting field and helping them become experts at the forefront of the industry.
Projects:
Project 1: AI-powered brochure generator that scrapes and navigates company websites intelligently.
Project 2: Multi-modal customer support agent for an airline with UI and function-calling.
Project 3: Tool that creates meeting minutes and action items from audio using both open- and closed-source models.
Project 4: AI that converts Python code to optimized C++, boosting performance by 60,000x!
Project 5: AI knowledge-worker using RAG to become an expert on all company-related matters.
Project 6: Capstone Part A – Predict product prices from short descriptions using Frontier models.
Project 7: Capstone Part B – Fine-tuned open-source model to compete with Frontier in price prediction.
Project 8: Capstone Part C – Autonomous agent system collaborating with models to spot deals and notify you of special bargains.
Why This Course?
• Hands-On Learning: The best way to learn is by doing. You’ll engage in practical exercises, building real-world AI applications that deliver stunning results.
• Cutting-Edge Techniques: Stay ahead of the curve by learning the latest frameworks and techniques, including RAG, QLoRA, and Agents.
• Accessible Content: Designed for learners at all levels. Step-by-step instructions, practical exercises, cheat sheets, and plenty of resources are provided.
• No Advanced Math Required: The course focuses on practical application. No calculus or linear algebra is needed to master LLM engineering.
Course Structure
Week 1: Foundations and First Projects
• Dive into the fundamentals of Transformers.
• Experiment with six leading Frontier Models.
• Build your first business Gen AI product that scrapes the web, makes decisions, and creates formatted sales brochures.
Week 2: Frontier APIs and Customer Service Chatbots
• Explore Frontier APIs and interact with three leading models.
• Develop a customer service chatbot with a sharp UI that can interact with text, images, audio, and utilize tools or agents.
Week 3: Embracing Open-Source Models
• Discover the world of Open-Source models using HuggingFace.
• Tackle 10 common Gen AI use cases, from translation to image generation.
• Build a product to generate meeting minutes and action items from recordings.
Week 4: LLM Selection and Code Generation
• Understand the differences between LLMs and how to select the best one for your business tasks.
• Use LLMs to generate code and build a product that translates code from Python to C++, achieving performance improvements of over 60,000 times.
Week 5: Retrieval-Augmented Generation (RAG)
• Master RAG to improve the accuracy of your solutions.
• Become proficient with vector embeddings and explore vectors in popular open-source vector datastores.
• Build a full business solution similar to real products on the market today.
Week 6: Transitioning to Training
• Move from inference to training.
• Fine-tune a Frontier model to solve a real business problem.
• Build your own specialized model, marking a significant milestone in your AI journey.
Week 7: Advanced Training Techniques
• Dive into advanced training techniques like QLoRA fine-tuning.
• Train an open-source model to outperform Frontier models for specific tasks.
• Tackle challenging projects that push your skills to the next level.
Week 8: Deployment and Finalization
• Deploy your commercial product to production with a polished UI.
• Enhance capabilities using Agents.
• Deliver your first productionized, agentized, fine-tuned LLM model.
• Celebrate your mastery of AI and LLM engineering, ready for a new phase in your career.
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1Day 1 - Cold Open: Jumping Right into LLM Engineeringدرس فيديو
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2Day 1 - Setting Up Ollama for Local LLM Deployment on Windows and Macدرس فيديو
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3Day 1 - Unleashing the Power of Local LLMs: Build Spanish Tutor Using Ollamaدرس فيديو
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4Day 1 - LLM Engineering Roadmap: From Beginner to Master in 8 Weeksدرس فيديو
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5Day 1 - Building LLM Applications: Chatbots, RAG, and Agentic AI Projectsدرس فيديو
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6Day 1 - From Wall Street to AI: Ed Donner's Path to Becoming an LLM Engineerدرس فيديو
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7Day 1 - Setting Up Your LLM Development Environment: Tools and Best Practicesدرس فيديو
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8Day 1 - Mac Setup Guide: Jupyter Lab and Conda for LLM Projectsدرس فيديو
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9Day 1 - Setting Up Anaconda for LLM Engineering: Windows Installation Guideدرس فيديو
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10Day 1 - Alternative Python Setup for LLM Projects: Virtualenv vs. Anaconda Guideدرس فيديو
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11Day 1- Setting Up OpenAI API for LLM Development: Keys, Pricing & Best Practicesدرس فيديو
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12Day 1 - Creating a .env File for Storing API Keys Safelyدرس فيديو
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13Day 1- Instant Gratification Project: Creating an AI-Powered Web Page Summarizerدرس فيديو
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14Day 1 - Implementing Text Summarization Using OpenAI's GPT-4 and Beautiful Soupدرس فيديو
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15Day 1 - Wrapping Up Day 1: Key Takeaways and Next Steps in LLM Engineeringدرس فيديو
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16Day 2 - Mastering LLM Engineering: Key Skills and Tools for AI Developmentدرس فيديو
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17Day 2 - Understanding Frontier Models: GPT, Claude, and Open Source LLMsدرس فيديو
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18Day 2 - How to Use Ollama for Local LLM Inference: Python Tutorial with Jupyterدرس فيديو
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19Day 2 - Hands-On LLM Task: Comparing OpenAI and Ollama for Text Summarizationدرس فيديو
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20Day 3 - Frontier AI Models: Comparing GPT-4, Claude, Gemini, and LLAMAدرس فيديو
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21Day 3 - Comparing Leading LLMs: Strengths and Business Applicationsدرس فيديو
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22Day 3 - Exploring GPT-4o vs O1 Preview: Key Differences in Performanceدرس فيديو
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23Day 3 - Creativity and Coding: Leveraging GPT-4o’s Canvas Featureدرس فيديو
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24Day 3 - Claude 3.5’s Alignment and Artifact Creation: A Deep Diveدرس فيديو
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25Day 3 - AI Model Comparison: Gemini vs Cohere for Whimsical and Analytical Tasksدرس فيديو
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26Day 3 - Evaluating Meta AI and Perplexity: Nuances of Model Outputsدرس فيديو
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27Day 3 - LLM Leadership Challenge: Evaluating AI Models Through Creative Promptsدرس فيديو
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28Day 4 - Revealing the Leadership Winner: A Fun LLM Challengeدرس فيديو
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29Day 4 - Exploring the Journey of AI: From Early Models to Transformersدرس فيديو
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30Day 4 - Understanding LLM Parameters: From GPT-1 to Trillion-Weight Modelsدرس فيديو
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31Day 4 - GPT Tokenization Explained: How Large Language Models Process Text Inputدرس فيديو
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32Day 4 - How Context Windows Impact AI Language Models: Token Limits Explainedدرس فيديو
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33Day 4 - Navigating AI Model Costs: API Pricing vs. Chat Interface Subscriptionsدرس فيديو
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34Day 4 - Comparing LLM Context Windows: GPT-4 vs Claude vs Gemini 1.5 Flashدرس فيديو
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35Day 4 - Wrapping Up Day 4: Key Takeaways and Practical Insightsدرس فيديو
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36Day 5 - Building AI-Powered Marketing Brochures with OpenAI API and Pythonدرس فيديو
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37Day 5 - JupyterLab Tutorial: Web Scraping for AI-Powered Company Brochuresدرس فيديو
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38Day 5 - Structured Outputs in LLMs: Optimizing JSON Responses for AI Projectsدرس فيديو
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39Day 5 - Creating and Formatting Responses for Brochure Contentدرس فيديو
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40Day 5 - Final Adjustments: Optimizing Markdown and Streaming in JupyterLabدرس فيديو
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41Day 5 - Mastering Multi-Shot Prompting: Enhancing LLM Reliability in AI Projectsدرس فيديو
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42Day 5 - Assignment: Developing Your Customized LLM-Based Tutorدرس فيديو
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43Day 5 - Wrapping Up Week 1: Achievements and Next Stepsدرس فيديو
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44Day 1 - Mastering Multiple AI APIs: OpenAI, Claude, and Gemini for LLM Engineersدرس فيديو
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45Day 1 - Streaming AI Responses: Implementing Real-Time LLM Output in Pythonدرس فيديو
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46Day 1 - How to Create Adversarial AI Conversations Using OpenAI and Claude APIsدرس فيديو
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47Day 1 - AI Tools: Exploring Transformers & Frontier LLMs for Developersدرس فيديو
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48Day 2 - Building AI UIs with Gradio: Quick Prototyping for LLM Engineersدرس فيديو
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49Day 2 - Gradio Tutorial: Create Interactive AI Interfaces for OpenAI GPT Modelsدرس فيديو
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50Day 2 - Implementing Streaming Responses with GPT and Claude in Gradio UIدرس فيديو
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51Day 2 - Building a Multi-Model AI Chat Interface with Gradio: GPT vs Claudeدرس فيديو
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52Day 2 - Building Advanced AI UIs: From OpenAI API to Chat Interfaces with Gradioدرس فيديو
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53Day 3 - Building AI Chatbots: Mastering Gradio for Customer Support Assistantsدرس فيديو
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54Day 3 - Build a Conversational AI Chatbot with OpenAI & Gradio: Step-by-Stepدرس فيديو
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55Day 3 - Enhancing Chatbots with Multi-Shot Prompting and Context Enrichmentدرس فيديو
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56Day 3 - Mastering AI Tools: Empowering LLMs to Run Code on Your Machineدرس فيديو
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57Day 4 - Using AI Tools with LLMs: Enhancing Large Language Model Capabilitiesدرس فيديو
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58Day 4 - Building an AI Airline Assistant: Implementing Tools with OpenAI GPT-4درس فيديو
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59Day 4 - How to Equip LLMs with Custom Tools: OpenAI Function Calling Tutorialدرس فيديو
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60Day 4 - Mastering AI Tools: Building Advanced LLM-Powered Assistants with APIsدرس فيديو
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61Day 5 - Multimodal AI Assistants: Integrating Image and Sound Generationدرس فيديو
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62Day 5 - Multimodal AI: Integrating DALL-E 3 Image Generation in JupyterLabدرس فيديو
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63Day 5 - Build a Multimodal AI Agent: Integrating Audio & Image Toolsدرس فيديو
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64Day 5 - How to Build a Multimodal AI Assistant: Integrating Tools and Agentsدرس فيديو
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65Day 1 - Hugging Face Tutorial: Exploring Open-Source AI Models and Datasetsدرس فيديو
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66Day 1 - Exploring HuggingFace Hub: Models, Datasets & Spaces for AI Developersدرس فيديو
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67Day 1 - Intro to Google Colab: Cloud Jupyter Notebooks for Machine Learningدرس فيديو
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68Day 1 - Hugging Face Integration with Google Colab: Secrets and API Keys Setupدرس فيديو
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69Day 1 - Mastering Google Colab: Run Open-Source AI Models with Hugging Faceدرس فيديو
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70Day 2 - Hugging Face Transformers: Using Pipelines for AI Tasks in Pythonدرس فيديو
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71Day 2 - Hugging Face Pipelines: Simplifying AI Tasks with Transformers Libraryدرس فيديو
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72Day 2 - Mastering HuggingFace Pipelines: Efficient AI Inference for ML Tasksدرس فيديو
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73Day 3 - Exploring Tokenizers in Open-Source AI: Llama, Phi-2, Qwen, & Starcoderدرس فيديو
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74Day 3 - Tokenization Techniques in AI: Using AutoTokenizer with LLAMA 3.1 Modelدرس فيديو
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75Day 3 - Comparing Tokenizers: Llama, PHI-3, and QWEN2 for Open-Source AI Modelsدرس فيديو
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76Day 3 - Hugging Face Tokenizers: Preparing for Advanced AI Text Generationدرس فيديو
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77Day 4 - Hugging Face Model Class: Running Inference on Open-Source AI Modelsدرس فيديو
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78Day 4 - Hugging Face Transformers: Loading & Quantizing LLMs with Bits & Bytesدرس فيديو
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79Day 4 - Hugging Face Transformers: Generating Jokes with Open-Source AI Modelsدرس فيديو
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80Day 4 - Mastering Hugging Face Transformers: Models, Pipelines, and Tokenizersدرس فيديو
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81Day 5 - Combining Frontier & Open-Source Models for Audio-to-Text Summarizationدرس فيديو
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82Day 5 - Using Hugging Face & OpenAI for AI-Powered Meeting Minutes Generationدرس فيديو
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83Day 5 - Build a Synthetic Test Data Generator: Open-Source AI Model for Businessدرس فيديو
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84Day 1 - How to Choose the Right LLM: Comparing Open and Closed Source Modelsدرس فيديو
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85Day 1 - Chinchilla Scaling Law: Optimizing LLM Parameters and Training Data Sizeدرس فيديو
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86Day 1 - Limitations of LLM Benchmarks: Overfitting and Training Data Leakageدرس فيديو
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87Day 1 - Evaluating Large Language Models: 6 Next-Level Benchmarks Unveiledدرس فيديو
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88Day 1 - HuggingFace OpenLLM Leaderboard: Comparing Open-Source Language Modelsدرس فيديو
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89Day 1 - Master LLM Leaderboards: Comparing Open Source and Closed Source Modelsدرس فيديو
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90Day 2 - Comparing LLMs: Top 6 Leaderboards for Evaluating Language Modelsدرس فيديو
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91Day 2 - Specialized LLM Leaderboards: Finding the Best Model for Your Use Caseدرس فيديو
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92Day 2 - LLAMA vs GPT-4: Benchmarking Large Language Models for Code Generationدرس فيديو
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93Day 2 - Human-Rated Language Models: Understanding the LM Sys Chatbot Arenaدرس فيديو
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94Day 2 - Commercial Applications of Large Language Models: From Law to Educationدرس فيديو
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95Day 2 - Comparing Frontier and Open-Source LLMs for Code Conversion Projectsدرس فيديو
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96Day 3 - Leveraging Frontier Models for High-Performance Code Generation in C++درس فيديو
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97Day 3 - Comparing Top LLMs for Code Generation: GPT-4 vs Claude 3.5 Sonnetدرس فيديو
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98Day 3 - Optimizing Python Code with Large Language Models: GPT-4 vs Claude 3.5درس فيديو
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99Day 3 - Code Generation Pitfalls: When Large Language Models Produce Errorsدرس فيديو
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100Day 3 - Blazing Fast Code Generation: How Claude Outperforms Python by 13,000xدرس فيديو
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101Day 3 - Building a Gradio UI for Code Generation with Large Language Modelsدرس فيديو
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102Day 3 - Optimizing C++ Code Generation: Comparing GPT and Claude Performanceدرس فيديو
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103Day 3 - Comparing GPT-4 and Claude for Code Generation: Performance Benchmarksدرس فيديو
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104Day 4 - Open Source LLMs for Code Generation: Hugging Face Endpoints Exploredدرس فيديو
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105Day 4 - How to Use HuggingFace Inference Endpoints for Code Generation Modelsدرس فيديو
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106Day 4 - Integrating Open-Source Models with Frontier LLMs for Code Generationدرس فيديو
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107Day 4 - Comparing Code Generation: GPT-4, Claude, and CodeQuen LLMsدرس فيديو
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108Day 4 - Mastering Code Generation with LLMs: Techniques and Model Selectionدرس فيديو
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109Day 5 - Evaluating LLM Performance: Model-Centric vs Business-Centric Metricsدرس فيديو
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110Day 5 - Mastering LLM Code Generation: Advanced Challenges for Python Developersدرس فيديو
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111Day 1 - RAG Fundamentals: Leveraging External Data to Improve LLM Responsesدرس فيديو
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112Day 1 - Building a DIY RAG System: Implementing Retrieval-Augmented Generationدرس فيديو
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113Day 1 - Understanding Vector Embeddings: The Key to RAG and LLM Retrievalدرس فيديو
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114Day 2 - Unveiling LangChain: Simplify RAG Implementation for LLM Applicationsدرس فيديو
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115Day 2 - LangChain Text Splitter Tutorial: Optimizing Chunks for RAG Systemsدرس فيديو
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116Day 2 - Preparing for Vector Databases: OpenAI Embeddings and Chroma in RAGدرس فيديو
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117Day 3 - Mastering Vector Embeddings: OpenAI and Chroma for LLM Engineeringدرس فيديو
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118Day 3 - Visualizing Embeddings: Exploring Multi-Dimensional Space with t-SNEدرس فيديو
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119Day 3 - Building RAG Pipelines: From Vectors to Embeddings with LangChainدرس فيديو
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120Day 4 - Implementing RAG Pipeline: LLM, Retriever, and Memory in LangChainدرس فيديو
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121Day 4 - Mastering Retrieval-Augmented Generation: Hands-On LLM Integrationدرس فيديو
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122Day 4 - Master RAG Pipeline: Building Efficient RAG Systemsدرس فيديو
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123Day 5 - Optimizing RAG Systems: Troubleshooting and Fixing Common Problemsدرس فيديو
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124Day 5 - Switching Vector Stores: FAISS vs Chroma in LangChain RAG Pipelinesدرس فيديو
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125Day 5 - Demystifying LangChain: Behind-the-Scenes of RAG Pipeline Constructionدرس فيديو
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126Day 5 - Debugging RAG: Optimizing Context Retrieval in LangChainدرس فيديو
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127Day 5 - Build Your Personal AI Knowledge Worker: RAG for Productivity Boostدرس فيديو
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128Day 1 - Fine-Tuning Large Language Models: From Inference to Trainingدرس فيديو
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129Day 1 - Finding and Crafting Datasets for LLM Fine-Tuning: Sources & Techniquesدرس فيديو
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130Day 1 - Data Curation Techniques for Fine-Tuning LLMs on Product Descriptionsدرس فيديو
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131Day 1 - Optimizing Training Data: Scrubbing Techniques for LLM Fine-Tuningدرس فيديو
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132Day 1 - Evaluating LLM Performance: Model-Centric vs Business-Centric Metricsدرس فيديو
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133Day 2 - LLM Deployment Pipeline: From Business Problem to Production Solutionدرس فيديو
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134Day 2 - Prompting, RAG, and Fine-Tuning: When to Use Each Approachدرس فيديو
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135Day 2 - Productionizing LLMs: Best Practices for Deploying AI Models at Scaleدرس فيديو
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136Day 2 - Optimizing Large Datasets for Model Training: Data Curation Strategiesدرس فيديو
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137Day 2 - How to Create a Balanced Dataset for LLM Training: Curation Techniquesدرس فيديو
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138Day 2 - Finalizing Dataset Curation: Analyzing Price-Description Correlationsدرس فيديو
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139Day 2 - How to Create and Upload a High-Quality Dataset on HuggingFaceدرس فيديو
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140Day 3 - Feature Engineering and Bag of Words: Building ML Baselines for NLPدرس فيديو
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141Day 3 - Baseline Models in ML: Implementing Simple Prediction Functionsدرس فيديو
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142Day 3: Feature Engineering Techniques for Amazon Product Price Prediction Modelsدرس فيديو
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143Day 3 - Optimizing LLM Performance: Advanced Feature Engineering Strategiesدرس فيديو
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144Day 3 - Linear Regression for LLM Fine-Tuning: Baseline Model Comparisonدرس فيديو
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145Day 3 - Bag of Words NLP: Implementing Count Vectorizer for Text Analysis in MLدرس فيديو
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146Day 3 - Support Vector Regression vs Random Forest: Machine Learning Face-Offدرس فيديو
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147Day 3 - Comparing Traditional ML Models: From Random to Random Forestدرس فيديو
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148Day 4 - Evaluating Frontier Models: Comparing Performance to Baseline Frameworksدرس فيديو
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149Day 4 - Human vs AI: Evaluating Price Prediction Performance in Frontier Modelsدرس فيديو
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150Day 4 - GPT-4o Mini: Frontier AI Model Evaluation for Price Estimation Tasksدرس فيديو
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151Day 4 - Comparing GPT-4 and Claude: Model Performance in Price Prediction Tasksدرس فيديو
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152Day 4 - Frontier AI Capabilities: LLMs Outperforming Traditional ML Modelsدرس فيديو
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153Day 5 - Fine-Tuning LLMs with OpenAI: Preparing Data, Training, and Evaluationدرس فيديو
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154Day 5 - How to Prepare JSONL Files for Fine-Tuning Large Language Models (LLMs)درس فيديو
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155Day 5 - Step-by-Step Guide: Launching GPT Fine-Tuning Jobs with OpenAI APIدرس فيديو
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156Day 5 - Fine-Tuning LLMs: Track Training Loss & Progress with Weights & Biasesدرس فيديو
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157Day 5 - Evaluating Fine-Tuned LLMs Metrics: Analyzing Training & Validation Lossدرس فيديو
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158Day 5 - LLM Fine-Tuning Challenges: When Model Performance Doesn't Improveدرس فيديو
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159Day 5 - Fine-Tuning Frontier LLMs: Challenges & Best Practices for Optimizationدرس فيديو
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160Day 1 - Mastering Parameter-Efficient Fine-Tuning: LoRa, QLoRA & Hyperparametersدرس فيديو
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161Day 1 - Introduction to LoRA Adaptors: Low-Rank Adaptation Explainedدرس فيديو
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162Day 1 - QLoRA: Quantization for Efficient Fine-Tuning of Large Language Modelsدرس فيديو
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163Day 1 - Optimizing LLMs: R, Alpha, and Target Modules in QLoRA Fine-Tuningدرس فيديو
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164Day 1 - Parameter-Efficient Fine-Tuning: PEFT for LLMs with Hugging Faceدرس فيديو
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165Day 1 - How to Quantize LLMs: Reducing Model Size with 8-bit Precisionدرس فيديو
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166Day 1: Double Quantization & NF4: Advanced Techniques for 4-Bit LLM Optimizationدرس فيديو
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167Day 1 - Exploring PEFT Models: The Role of LoRA Adapters in LLM Fine-Tuningدرس فيديو
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168Day 1 - Model Size Summary: Comparing Quantized and Fine-Tuned Modelsدرس فيديو
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169Day 2 - How to Choose the Best Base Model for Fine-Tuning Large Language Modelsدرس فيديو
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170Day 2 - Selecting the Best Base Model: Analyzing HuggingFace's LLM Leaderboardدرس فيديو
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171Day 2 - Exploring Tokenizers: Comparing LLAMA, QWEN, and Other LLM Modelsدرس فيديو
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172Day 2 - Optimizing LLM Performance: Loading and Tokenizing Llama 3.1 Base Modelدرس فيديو
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173Day 2 - Quantization Impact on LLMs: Analyzing Performance Metrics and Errorsدرس فيديو
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174Day 2 - Comparing LLMs: GPT-4 vs LLAMA 3.1 in Parameter-Efficient Tuningدرس فيديو
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175Day 3 - QLoRA Hyperparameters: Mastering Fine-Tuning for Large Language Modelsدرس فيديو
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176Day 3 - Understanding Epochs and Batch Sizes in Model Trainingدرس فيديو
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177Day 3 - Learning Rate, Gradient Accumulation, and Optimizers Explainedدرس فيديو
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178Day 3 - Setting Up the Training Process for Fine-Tuningدرس فيديو
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179Day 3 - Configuring SFTTrainer for 4-Bit Quantized LoRA Fine-Tuning of LLMsدرس فيديو
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180Day 3 - Fine-Tuning LLMs: Launching the Training Process with QLoRAدرس فيديو
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181Day 3 - Monitoring and Managing Training with Weights & Biasesدرس فيديو
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182Day 4 - Keeping Training Costs Low: Efficient Fine-Tuning Strategiesدرس فيديو
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183Day 4 - Efficient Fine-Tuning: Using Smaller Datasets for QLoRA Trainingدرس فيديو
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184Day 4 - Visualizing LLM Fine-Tuning Progress with Weights and Biases Chartsدرس فيديو
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185Day 4 - Advanced Weights & Biases Tools and Model Saving on Hugging Faceدرس فيديو
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186Day 4 - End-to-End LLM Fine-Tuning: From Problem Definition to Trained Modelدرس فيديو
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187Day 5 - The Four Steps in LLM Training: From Forward Pass to Optimizationدرس فيديو
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188Day 5 - QLoRA Training Process: Forward Pass, Backward Pass and Loss Calculationدرس فيديو
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189Day 5 - Understanding Softmax and Cross-Entropy Loss in Model Trainingدرس فيديو
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190Day 5 - Monitoring Fine-Tuning: Weights & Biases for LLM Training Analysisدرس فيديو
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191Day 5 - Revisiting the Podium: Comparing Model Performance Metricsدرس فيديو
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192Day 5 - Evaluation of our Proprietary, Fine-Tuned LLM against Business Metricsدرس فيديو
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193Day 5 - Visualization of Results: Did We Beat GPT-4?درس فيديو
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194Day 5 - Hyperparameter Tuning for LLMs: Improving Model Accuracy with PEFTدرس فيديو
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195Day 1 - From Fine-Tuning to Multi-Agent Systems: Next-Level LLM Engineeringدرس فيديو
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196Day 1: Building a Multi-Agent AI Architecture for Automated Deal Finding Systemsدرس فيديو
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197Day 1 - Unveiling Modal: Deploying Serverless Models to the Cloudدرس فيديو
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198Day 1 - LLAMA on the Cloud: Running Large Models Efficientlyدرس فيديو
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199Day 1 - Building a Serverless AI Pricing API: Step-by-Step Guide with Modalدرس فيديو
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200Day 1 - Multiple Production Models Ahead: Preparing for Advanced RAG Solutionsدرس فيديو
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201Day 2 - Implementing Agentic Workflows: Frontier Models and Vector Stores in RAGدرس فيديو
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202Day 2 - Building a Massive Chroma Vector Datastore for Advanced RAG Pipelinesدرس فيديو
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203Day 2 - Visualizing Vector Spaces: Advanced RAG Techniques for Data Explorationدرس فيديو
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204Day 2 - 3D Visualization Techniques for RAG: Exploring Vector Embeddingsدرس فيديو
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205Day 2 - Finding Similar Products: Building a RAG Pipeline without LangChainدرس فيديو
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206Day 2 - RAG Pipeline Implementation: Enhancing LLMs with Retrieval Techniquesدرس فيديو
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207Day 2 - Random Forest Regression: Using Transformers & ML for Price Predictionدرس فيديو
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208Day 2 - Building an Ensemble Model: Combining LLM, RAG, and Random Forestدرس فيديو
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209Day 2 - Wrap-Up: Finalizing Multi-Agent Systems and RAG Integrationدرس فيديو
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210Day 3 - Enhancing AI Agents with Structured Outputs: Pydantic & BaseModel Guideدرس فيديو
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211Day 3 - Scraping RSS Feeds: Building an AI-Powered Deal Selection Systemدرس فيديو
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212Day 3 - Structured Outputs in AI: Implementing GPT-4 for Detailed Deal Selectionدرس فيديو
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213Day 3 - Optimizing AI Workflows: Refining Prompts for Accurate Price Recognitionدرس فيديو
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214Day 3 - Mastering Autonomous Agents: Designing Multi-Agent AI Workflowsدرس فيديو
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215Day 4 - The 5 Hallmarks of Agentic AI: Autonomy, Planning, and Memoryدرس فيديو
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216Day 4 - Building an Agentic AI System: Integrating Pushover for Notificationsدرس فيديو
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217Day 4 Implementing Agentic AI: Creating a Planning Agent for Automated Workflowsدرس فيديو
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218Day 4 - Building an Agent Framework: Connecting LLMs and Python Codeدرس فيديو
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219Day 4 - Completing Agentic Workflows: Scaling for Business Applicationsدرس فيديو
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220Day 5 - Autonomous AI Agents: Building Intelligent Systems Without Human Inputدرس فيديو
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221Day 5 - AI Agents with Gradio: Advanced UI Techniques for Autonomous Systemsدرس فيديو
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222Day 5 - Finalizing the Gradio UI for Our Agentic AI Solutionدرس فيديو
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223Day 5 Enhancing AI Agent UI: Gradio Integration for Real-Time Log Visualizationدرس فيديو
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224Day 5 - Analyzing Results: Monitoring Agent Framework Performanceدرس فيديو
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225Day 5 - AI Project Retrospective: 8-Week Journey to Becoming an LLM Engineerدرس فيديو