Agentic Ai Fundamentals: Creating Autonomous Agents
Published 9/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 549.59 MB | Duration: 2h 4m
Published 9/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 549.59 MB | Duration: 2h 4m
Learn to design, orchestrate, and automate AI agents with Python and Autogen frameworks
What you'll learn
Understand the core principles of Agentic AI
Implement multi-agent communication and orchestration
Manage agent workflows with state management and termination logic
Integrate human-in-the-loop for safer AI decisions
Requirements
Basic Python knowledge (variables, functions, loops)
Familiarity with APIs (making simple requests) is helpful but not mandatory
A computer (Windows/Mac/Linux) with internet access
Description
Step into the future of Artificial Intelligence with Agentic AI Fundamentals. This course teaches you how to design, build, and deploy autonomous AI agents using Python, AutoGen, multimodal models, and modern agent orchestration techniques. From async programming to browser automation with Playwright MCP, you’ll gain the hands-on skills to create scalable AI systems with human-in-the-loop controls, advanced state management, and multi-agent collaboration.Whether you’re a developer, QA engineer, AI enthusiast, or automation architect, this course gives you the tools and practical knowledge to master next-generation AI agent design.Understand the core principles of Agentic AIBuild text and multimodal AI assistants using AutoGenImplement multi-agent communication and orchestrationManage agent workflows with state management and termination logicIntegrate human-in-the-loop for safer AI decisionsExtend AI capabilities with MCP tools and browser automationWho This Course Is ForDevelopers exploring AI agent developmentQA/Test Automation Engineers expanding into AI-powered testingAI enthusiasts wanting to build practical autonomous agentsSolution Architects & Tech Leads adopting multi-agent frameworksCourse ContentModule 1: Foundations of Generative & Agentic AIIntroduction to Generative AIFundamentals of Agentic AIAsync Programming in PythonModule 2: Building Smart AI AgentsCreating a Text AI Assistant using AutoGenDesigning a Multimodal AI AssistantMulti-Agent Collaboration with RoundRobin Group ChatModule 3: Control & Orchestration of AgentsSetting Termination Conditions for AgentsHuman-in-the-Loop InteractionManaging Agent State EffectivelySelectorGroupChat for Intelligent RoutingModule 4: Extending Agents with ToolsAdding MCP Tool in AI AgentsBrowser Automation with Playwright MCP
Overview
Section 1: Intro & Key Characteristics of Agentic AI
Lecture 1 Key Characteristics of Agentic AI
Section 2: Introduction to Generative AI
Lecture 2 GenAI vs Traditional AI
Lecture 3 Core Idea Behind Generative AI
Lecture 4 How GenAI Works
Section 3: AI Agent Browser Automation with Playwright MCP
Lecture 5 Part 1-AI Agent Browser Automation with Playwright MCP
Lecture 6 Part 2-AI Agent Browser Automation with Playwright MCP
Section 4: Basics Of Autogen
Lecture 7 Agentic AI: Async Programming In Python
Lecture 8 Agentic AI: Building a Multimodal Assistant
Lecture 9 Agentic AI: Multi AI Agent with RoundRobin Group Chat
Lecture 10 Agentic AI: Text AI Assistant Using AutoGen
Lecture 11 Agentic AI: Termination Condition
Lecture 12 Agentic AI : Human-in-the-Loop
Lecture 13 Agentic AI : Managing State
Lecture 14 Agentic AI :SelectorGroupChat
Section 5: Adding MCP Tool in AI Agents
Lecture 15 Part1_Adding MCP Tool in AI Agents
Lecture 16 Part2_Adding MCP Tool in AI Agents
Section 6: Code For Students
Lecture 17 Important Installation Links
Lecture 18 Code
Section 7: When AI Agents Become a QA Team: Playwright MCP in Action
Lecture 19 When AI Agents Become a QA Team: Playwright MCP in Action
Developers exploring AI agent development,QA/Test Automation Engineers expanding into AI-powered testing,AI enthusiasts wanting to build practical autonomous agents,Solution Architects & Tech Leads adopting multi-agent frameworks