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Udemy

LLM Engineering, RAG, & AI Agents Masterclass [2026]

via Udemy

Overview

Master Large Language Models, Retrieval Augmented Generation, LangGraph, MCP, CrewAI, AutoGen, N8N, & OpenAI Agents SDK

What you'll learn:
  • Understand the foundations of Large Language Models (LLMs) and Agentic AI, including how LLMs are trained, fine-tuned, and deployed.
  • Create and deploy intelligent autonomous AI agents using cutting-edge frameworks like AutoGen, OpenAI Agents SDK, LangGraph, n8n, and MCP.
  • Explore and benchmark open-source LLMs such as LLama, DeepSeek, Qwen, Phi, and Gemma using Hugging Face and LM Studio.
  • Develop real-world applications using API access to OpenAI, Gemini, and Claude for text generation and vision tasks.
  • Apply a proven 5-step framework to select the right AI model for your business: maximizing cost-efficiency, minimizing latency, & accelerating time to market.
  • Evaluate LLMs using leaderboards like Vellum and Chat Arena, and conduct blind tests to objectively assess AI model performance.
  • Design Retrieval-Augmented Generation (RAG) pipelines using LangChain, OpenAI embeddings, & ChromaDB for efficient document retrieval & question answering.
  • Build an interactive, transparent AI-powered Q&A system with a Gradio interface that displays answers along with source citations for enhanced user trust.
  • Master data validation & structured output generation using the Pydantic library, including BaseModel, type hints, & parsed output creation from OpenAI models.
  • Build an AI-powered resume editor that analyzes gaps between a resume & job description & automatically tailors resumes/cover letters for targeted applications.
  • Learn how to fine-tune pre-trained open-source LLMs using parameter-efficient methods like LoRA and tools such as Hugging Face’s TRL and SFTTrainer.
  • Master dataset preparation and model evaluation techniques, including calculating accuracy, precision, recall, and F1-score using scikit-learn.
  • Apply key components in Hugging Face Transformers library such as pipeline( ), AutoTokenizer( ), and AutoModelForCausalLM( ).
  • Gain practical experience working with open-source datasets/models on Hugging Face, & apply quantization techniques like bitsandbytes to optimize Performance.
  • Master advanced prompt engineering techniques such as zero-shot, few-shot, and chain-of-thought prompting.
  • Deploy multi-model AI agents using AutoGen, integrating LLMs from OpenAI, Gemini, & Claude, enabling agent collaboration & human-in-the-loop oversight.
  • Develop and deploy agentic AI workflows using LangGraph, mastering concepts like states, edges, conditional logic, and multi-stage nodes.
  • Design & build AI-powered booking agents using LangGraph, enabling automated search & recommendation of flights & hotels through integration with external APIs.
  • Build a data science agent team using CrewAI, creating specialized agents for workflow planning, data analysis, model building, and predictive analytics.
  • Design and automate end-to-end Agentic AI workflows using n8n, integrating services like Gmail, Google Sheets, Google Calendar, and OpenAI.
  • Build an advanced AI tutor system using Model-Context-Protocol (MCP) and OpenAI Agents SDK, enabling dynamic tool interoperability.
  • Apply classical ML models (linear regression, random forest, XGBoost) within agent workflows, including dataset loading and inspection.

The AI revolution is accelerating at an unimaginable pace, and those who master Large Language Models (LLMs) and Agentic AI will define the future of technology.


The "Large Language Models (LLMs) & AI Agents Masterclass" is an intensive hands-on program designed to equip professionals and enthusiasts with the skills needed to build real-world AI applications. Whether you’re a developer, data scientist, researcher, or technology leader, this bootcamp provides the tools and knowledge to navigate and innovate in this fast-evolving space confidently.

You will begin by exploring the foundations of LLMs and agent frameworks, including how to benchmark models using LM Studio. The course then guides you through working with powerful closed-source APIs from providers like OpenAI, Gemini, and Claude. You will learn how to structure system and user messages, understand tokenization, and control outputs to build projects such as AI-powered text generators and vision-enabled calorie trackers.

As you advance, you’ll dive into the world of open-source LLMs. You will fine-tune models on Hugging Face using state-of-the-art techniques like LoRA and Parameter-Efficient Fine-Tuning (PEFT). Alongside this, you’ll gain experience designing AI-powered web applications using Gradio, creating interactive streaming apps, and building intelligent AI tutors.

A core component of the bootcamp focuses on mastering prompt engineering, including zero-shot, few-shot, and chain-of-thought prompting techniques to achieve consistent and controlled outputs. You'll also explore advanced capabilities such as building Retrieval-Augmented Generation (RAG) pipelines and working with embeddings for semantic search and knowledge retrieval.

The program concludes with the development of next-generation AI agents. You will use frameworks like AutoGen, OpenAI Agents SDK, LangGraph, n8n, and MCP to create autonomous agents capable of interacting with external systems, APIs, and other digital tools. Each module emphasizes building practical, working projects that reinforce the learning objectives and prepare you for real-world deployment.

This bootcamp is led by Dr. Ryan Ahmed, a highly experienced AI professor and educator who has taught over half a million learners globally. It is ideal for software engineers, data scientists, AI researchers, and technology professionals who want to break into the LLM and AI agent development space.

The format of the program emphasizes project-based learning with step-by-step guidance, community interaction, and access to mentorship and continuous feedback. From Day 1, you’ll be building real-world applications, positioning yourself at the forefront of this transformative field.

Enroll today, and Ilook forward to seeing you inside!


Syllabus

  • Welcome to the Bootcamp!
  • -------PART A: CLOSED-SOURCE LLMs, GRADIO, & BENCHMARKING-------
  • Day 1: Develop a Character AI Chatbot Using OpenAI API
  • Day 2: Build an AI Calorie Tracker Using OpenAI API (Vision GPTs)
  • Day 3: Build an Adaptive LLM/AI Tutor with Gradio for Multi-level Learning
  • Day 4: Build Websites with Claude, Gemini, & OpenAI & LLMs Leaderboards
  • -------PART B: OPEN-SOURCE LLMs, HUGGING FACE, RAG & FINE-TUNING-------
  • Day 5: Hugging Face Open-Source Models
  • Day 6: Reasoning Open-Source LLMs on Hugging Face & Model Leaderboards
  • Day 7: Build Retrieval Augmented Generation (RAG) Pipelines in LangChain
  • Day 8: Build a Resume & Cover Letter AI Assistant with OpenAI & Pydantic
  • Day 9: Fine-Tuning of Large Language Models with LORA, SFTTrainer, PEFT, & TRL
  • -------PART C: AI AGENTS WITH LANGGRAPH, AUTOGEN, CREWAI, N8N, & MCP-------
  • Day 10: Build Multi-Model AI Agent Teams Using AutoGen
  • Day 11: Building AI Agentic Workflows in LangGraph
  • Day 12: Build A Team of Data Science AI Agents Using CrewAI
  • Day 13: Build Agentic AI Workflows in n8n
  • Day 14: Build AI Agents with Model Context Protocol (MCP) & OpenAI Agents SDK
  • Congratulations and Thank You!
  • Labs (Beta)

Taught by

Prof. Ryan Ahmed, Ph.D., MBA | 500,000+ Students | Best-Selling Instructor and Stemplicity Inc.

Reviews

4.6 rating at Udemy based on 613 ratings

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