Agno Agentic Ai With Mcp
Published 5/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.79 GB | Duration: 4h 53m
Published 5/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.79 GB | Duration: 4h 53m
Agentic AI with Agno and MCP Crash Course Crash Course
What you'll learn
Learn how to use the MCP (Message, Chain, Plan) protocol to build structured, intelligent agents.
Gain hands-on experience developing financial agents that can analyze data and automate real-world tasks.
Understand how to integrate memory into your agents so they can recall past interactions and make informed decisions.
Using the Agno Playground, you’ll simulate and visualize agent workflows in an interactive environment.
Create multi-agent systems where agents collaborate, delegate tasks, and solve problems together.
Requirements
Python basic
Description
Unlock the power of Agentic AI with this focused, hands-on course designed to teach you how to build intelligent financial agents using the Agno Agentic Framework and the MCP (Message, Chain, Plan) Protocol. Whether you're an AI enthusiast, developer, or a financial tech innovator, this course will help you grasp the next evolution of AI workflows through practical projects.You’ll dive into how Agno simplifies the development of autonomous, goal-driven agents using structured planning and communication patterns. Learn to design financial agents that can analyze market data, execute tasks, and retain knowledge using Memory Agents. Explore the Agno Playground, a visual environment to test and simulate agents with dynamic prompts and task flows.The course emphasizes multi-agent collaboration where agents communicate and coordinate as teams to solve complex problems. Using real-world financial use cases, you’ll create agents that not only act independently but also plan, reflect, and delegate in multi-agent environments.What you'll build:A smart Financial Analyst Agent using Agno & MCPA Memory-augmented agent capable of recall and reasoningA Multi-Agent system where agents collaborate on financial tasksUse of Agno Playground to simulate and visualize workflowsNo prior experience in agent frameworks is required—just a basic understanding of Python and AI concepts.Start your journey into the world of Agentic AI today and build systems that think, plan, and act—autonomously.
Overview
Section 1: Introduction
Lecture 1 Agent Introduction
Lecture 2 Agno Agent Framework Introduction
Lecture 3 Open AI API Key
Lecture 4 Visual studio code install
Lecture 5 Project Setup with UV
Lecture 6 UV installation
Lecture 7 Run Program with UV
Lecture 8 All Code Resources
Section 2: Project Agno Financial assistant
Lecture 9 Agno Financial assistant
Section 3: Agno memory Agent
Lecture 10 Memory Agent Overview
Lecture 11 VectorDB Chunking
Lecture 12 Agno memory Agent
Lecture 13 Agno Memory Agent Demo
Section 4: Agno Multi Agent
Lecture 14 Agno Multi Agent Intro
Lecture 15 Yahoo Finance and Web Agent
Lecture 16 Demo Yahoo Finance Agent
Lecture 17 Demo Web Agent
Section 5: Agno Playground
Lecture 18 Agno Playground intro
Lecture 19 Playground Finance and Web Agent
Lecture 20 PlayGround Demo Finance Agent
Lecture 21 Playground Demo Web Agent
Section 6: MCP Protocol Overview
Lecture 22 MCP Protocol Intro
Lecture 23 MCP vs Non MCP
Lecture 24 MCP Communication between components
Section 7: Project: Agno Agent with MCP
Lecture 25 MCP Architecture Intro
Lecture 26 Agno MCP server Intro
Lecture 27 Agno MCP server code
Lecture 28 Agno MCP Client Code
Lecture 29 Demo Agno MCP
Section 8: Appendix- Python
Lecture 30 Internal Working of Python
Lecture 31 Data Type Number
Lecture 32 Data Type String
Lecture 33 Data Type Boolean
Lecture 34 Operator Python
Lecture 35 Collection List
Lecture 36 Collection Tuple
Lecture 37 Collection Set
Lecture 38 Dictionary
Lecture 39 If Else Condition
Lecture 40 While Loop
Lecture 41 For Loop
Lecture 42 Function Intro
Lecture 43 Function Code
Lecture 44 Lambda Function
Lecture 45 Array Function
Lecture 46 Class Introduction
Lecture 47 Class Init
Lecture 48 Class str
Lecture 49 Class and Function
Lecture 50 Inheritance Intro
Lecture 51 Inheritance with Init
Lecture 52 Iterator
Lecture 53 Polymorphism
Lecture 54 Scope Python
Lecture 55 Modules Python
Lecture 56 dates python
Lecture 57 math modules
Lecture 58 regular expression
Lecture 59 json object
Lecture 60 Pip package
Lecture 61 Exception handling
Lecture 62 User Input
Lecture 63 String format
Lecture 64 File read
Lecture 65 File write
Agentic AI