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LLM Engineering: Master AI, Large Language Models & Agents

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Ligency Team

7:38:15

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  • 1 - Day 1 Mastering LLM Engineering From Basics to Outperforming GPT4 in 8 Weeks.mp4
    07:35
  • 2 - Day 1 Getting Started with Generative AI First Steps in LLM Project Setup.mp4
    05:25
  • 3 - Day 1 Building a Web Page Summarizer with OpenAI GPT4 Instant Gratification.mp4
    14:46
  • 4 - Day 1 Mastering OpenAI API Write Code for Frontier Models in Generative AI.mp4
    01:46
  • 5 - Day 2 Generative AI Course Structure 8 Weeks to LLM Mastery.mp4
    10:48
  • 6 - Day 2 Exploring Frontier LLMs ChatGPT Claude Gemini and more.mp4
    12:30
  • 7 - Day 3 Frontier LLMs Exploring Strengths and Weaknesses of Top Gen AI Models.mp4
    12:02
  • 8 - Day 3 ChatGPT vs Other LLMs Strengths Weaknesses and Complementary Models.mp4
    10:33
  • 9 - Day 3 Claude AI Exploring Capabilities and Limitations of the Frontier Model.mp4
    05:35
  • 10 - Day 3 Comparing Gemini AI to Other Frontier Models Strengths and Limitations.mp4
    04:59
  • 11 - Day 3 Comparing Frontier LLMs CommandR Plus Meta AI Perplexity AI Models.mp4
    07:04
  • 12 - Day 3 Comparing Top AI Models GPT4 Claude and Gemini in Leadership Battle.mp4
    07:35
  • 13 - Day 4 AI Leadership Battle Analyzing GPT4 Claude3 and Gemini15 Pitches.mp4
    03:50
  • 14 - Day 4 Gen AI Breakthroughs Transformer Models Emergent Intelligence.mp4
    11:32
  • 15 - Day 4 Tokenization in LLMs How GPT Processes Text for Natural Language Tasks.mp4
    19:17
  • 16 - Day 4 Understanding Context Windows Maximizing LLM Performance and Memory.mp4
    09:06
  • 17 - Day 5 Implementing OneShot Prompting with OpenAI for Business Applications.mp4
    03:40
  • 18 - Day 5 How to Use GPT4 for JSON Generation in Python AIPowered Web Scraping.mp4
    10:20
  • 19 - Day 5 Building a Full Business Solution with Generative AI and OpenAIs API.mp4
    12:26
  • 20 - Day 5 Extending Gen AI MultiShot Prompting Translation Techniques.mp4
    03:14
  • 21 - Day 1 Mastering Multiple AI APIs OpenAI Claude and Gemini for LLM Engineers.mp4
    04:50
  • 22 - Day 1 Streaming AI Responses Implementing RealTime LLM Output in Python.mp4
    16:14
  • 23 - Day 1 How to Create Adversarial AI Conversations Using OpenAI and Claude APIs.mp4
    11:18
  • 24 - Day 1 AI Tools Exploring Transformers Frontier LLMs for Developers.mp4
    01:20
  • 25 - Day 2 Building AI UIs with Gradio Quick Prototyping for LLM Engineers.mp4
    03:03
  • 26 - Day 2 Gradio Tutorial Create Interactive AI Interfaces for OpenAI GPT Models.mp4
    11:41
  • 27 - Day 2 Implementing Streaming Responses with GPT and Claude in Gradio UI.mp4
    05:58
  • 28 - Day 2 Building a MultiModel AI Chat Interface with Gradio GPT vs Claude.mp4
    08:22
  • 29 - Day 2 Building Advanced AI UIs From OpenAI API to Chat Interfaces with Gradio.mp4
    01:23
  • 30 - Day 3 Building AI Chatbots Mastering Gradio for Customer Support Assistants.mp4
    04:43
  • 31 - Day 3 Build a Conversational AI Chatbot with OpenAI Gradio StepbyStep.mp4
    12:36
  • 32 - Day 3 Enhancing Chatbots with MultiShot Prompting and Context Enrichment.mp4
    10:12
  • 33 - Day 3 Mastering AI Tools Empowering LLMs to Run Code on Your Machine.mp4
    02:35
  • 34 - Day 4 Using AI Tools with LLMs Enhancing Large Language Model Capabilities.mp4
    07:27
  • 35 - Day 4 Building an AI Airline Assistant Implementing Tools with OpenAI GPT4.mp4
    06:10
  • 36 - Day 4 How to Equip LLMs with Custom Tools OpenAI Function Calling Tutorial.mp4
    11:36
  • 37 - Day 4 Mastering AI Tools Building Advanced LLMPowered Assistants with APIs.mp4
    01:13
  • 38 - Day 5 Multimodal AI Assistants Integrating Image and Sound Generation.mp4
    05:01
  • 39 - Day 5 Multimodal AI Integrating DALLE 3 Image Generation in JupyterLab.mp4
    08:27
  • 40 - Day 5 Build a Multimodal AI Agent Integrating Audio Image Tools.mp4
    06:53
  • 41 - Day 5 How to Build a Multimodal AI Assistant Integrating Tools and Agents.mp4
    04:32
  • 42 - Day 1 Hugging Face Tutorial Exploring OpenSource AI Models and Datasets.mp4
    10:38
  • 43 - Day 1 Exploring HuggingFace Hub Models Datasets Spaces for AI Developers.mp4
    12:39
  • 44 - Day 1 Intro to Google Colab Cloud Jupyter Notebooks for Machine Learning.mp4
    03:16
  • 45 - Day 1 Hugging Face Integration with Google Colab Secrets and API Keys Setup.mp4
    10:35
  • 46 - Day 1 Mastering Google Colab Run OpenSource AI Models with Hugging Face.mp4
    01:58
  • 47 - Day 2 Hugging Face Transformers Using Pipelines for AI Tasks in Python.mp4
    04:07
  • 48 - Day 2 Hugging Face Pipelines Simplifying AI Tasks with Transformers Library.mp4
    13:11
  • 49 - Day 2 Mastering HuggingFace Pipelines Efficient AI Inference for ML Tasks.mp4
    01:41
  • 50 - Day 3 Exploring Tokenizers in OpenSource AI Llama Phi2 Qwen Starcoder.mp4
    05:12
  • 51 - Day 3 Tokenization Techniques in AI Using AutoTokenizer with LLAMA 31 Model.mp4
    11:00
  • 52 - Day 3 Comparing Tokenizers Llama PHI3 and QWEN2 for OpenSource AI Models.mp4
    11:35
  • 53 - Day 3 Hugging Face Tokenizers Preparing for Advanced AI Text Generation.mp4
    00:51
  • 54 - Day 4 Hugging Face Model Class Running Inference on OpenSource AI Models.mp4
    03:38
  • 55 - Day 4 Hugging Face Transformers Loading Quantizing LLMs with Bits Bytes.mp4
    14:52
  • 56 - Day 4 Hugging Face Transformers Generating Jokes with OpenSource AI Models.mp4
    10:44
  • 57 - Day 4 Mastering Hugging Face Transformers Models Pipelines and Tokenizers.mp4
    01:31
  • 58 - Day 5 Combining Frontier OpenSource Models for AudiotoText Summarization.mp4
    03:25
  • 59 - Day 5 Using Hugging Face OpenAI for AIPowered Meeting Minutes Generation.mp4
    12:56
  • 60 - Day 5 Build a Synthetic Test Data Generator OpenSource AI Model for Business.mp4
    04:49
  • Description


    Become an LLM Engineer in 8 weeks: Build and deploy 8 LLM apps, mastering Generative AI and key theoretical concepts.

    What You'll Learn?


    • Project 1: Make AI-powered brochure generator that scrapes and navigates company websites intelligently.
    • Project 2: Build Multi-modal customer support agent for an airline with UI and function-calling.
    • Project 3: Develop Tool that creates meeting minutes and action items from audio using both open- and closed-source models.
    • Project 4: Make AI that converts Python code to optimized C++, boosting performance by 60,000x!
    • Project 5: Build 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 – Execute Fine-tuned open-source model to compete with Frontier in price prediction.
    • Project 8: Capstone Part C – Build Autonomous multi agent system collaborating with models to spot deals and notify you of special bargains.
    • Design and develop a full solution to a given business problem by selecting, training and applying LLMs
    • Compare and contrast the latest techniques for improving the performance of your LLM solution, such as RAG, fine-tuning and agentic workflows
    • Weigh up the leading 10 frontier and 10 open-source LLMs, and be able to select the best choice for a given task

    Who is this for?


  • Aspiring AI engineers and data scientists eager to break into the field of Generative AI and LLMs.
  • Professionals looking to upskill and stay competitive in the rapidly evolving AI landscape.
  • Developers interested in building advanced AI applications with practical, hands-on experience.
  • What You Need to Know?


  • Familiarity with Python. This course will not cover Python basics and is completed in Python.
  • More details


    Description

    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.

    Who this course is for:

    • Aspiring AI engineers and data scientists eager to break into the field of Generative AI and LLMs.
    • Professionals looking to upskill and stay competitive in the rapidly evolving AI landscape.
    • Developers interested in building advanced AI applications with practical, hands-on experience.

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    Ligency Team
    Ligency Team
    Instructor's Courses
    Hi there,We are the Ligency PR and Marketing team. You will be hearing from us when new courses are released, when we publish new podcasts, blogs, share cheatsheets and more!We are here to help you stay on the cutting edge of Data Science and Technology.See you in class,Sincerely,The Real People at Ligency
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 60
    • duration 7:38:15
    • Release Date 2025/01/24

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