Agentic AI Masterclass: Build Autonomous AI Agents with Tool

Duration: 13h 47m | MP4 | Video: h264, 1280x720 | Audio: 44100 Hz | File Size: 5.11 GB | Language: English
What you'll learn
Understand the core concepts of Agentic AI and Autonomous Systems
Master the ReAct Framework (Reasoning + Acting Loop)
Implement Tool Calling and Function Calling with LLMs
Build AI agents with Short-Term and Long-Term Memory
Implement Retrieval Augmented Generation (RAG)
Work with Vector Databases for contextual AI
Design Multi-Agent Systems and orchestration patterns
Architect production-ready AI workflows
Avoid common mistakes in AI agent design
Prepare for advanced AI engineering interviews
Requirements
Knowledge of Basic Python
Basic Knowledge of AI
Description
Stop Building Prompt Bots. Start Building Autonomous AI Systems.
AI is evolving.
Simple prompt engineering is no longer enough.
The future belongs to Agentic AI — AI systems that can
Think
Act
Use tools
Remember context
Make decisions
Execute multi-step workflows
In this comprehensive Agentic AI Masterclass, you will go beyond ChatGPT-style prompts and learn how to build real autonomous AI agents used in enterprise-grade systems.
This course teaches concepts used in real enterprise AI systems — not just demo chatbots.
Why Agentic AI Matters for Your Career
Companies are moving from
Chatbots ➝ AI Assistants ➝ Autonomous Systems
High-paying AI roles now demand understanding of
Tool Calling
Memory Systems
Vector Databases
Agent Orchestration
LLM Architecture Design
If you master this, you are not just an AI user — you become an AI system designer.
By The End of This Course, You Will Be Able To
Design, build and deploy intelligent AI agents that
Perform multi-step reasoning
Call APIs
Retrieve knowledge
Maintain memory
Collaborate with other agents
Solve real-world enterprise problems
What Students Will Learn
Understand the core concepts of Agentic AI and Autonomous Systems
Master the ReAct Framework (Reasoning + Acting Loop)
Implement Tool Calling and Function Calling with LLMs
Build AI agents with Short-Term and Long-Term Memory
Implement Retrieval Augmented Generation (RAG)
Work with Vector Databases for contextual AI
Design Multi-Agent Systems and orchestration patterns
Architect production-ready AI workflows
Avoid common mistakes in AI agent design
Prepare for advanced AI engineering interviews
This course is for
Developers who want to move beyond prompt engineering
AI Engineers building real-world applications
Software Architects exploring AI system design
Data Scientists transitioning into Generative AI
Professionals preparing for AI Engineering roles
Tech enthusiasts who want to understand how autonomous AI works
Who this course is for
Developers who want to move beyond basic prompt engineering and build real AI agents
AI Engineers who want to understand autonomous AI system architecture
Software Architects exploring LLM-based system design
Data Scientists transitioning into Generative AI and Agentic AI
Python developers interested in AI automation and intelligent workflows
ProfeTech enthusiasts who want to understand how modern AI agents actually workssionals preparing for AI Engineer / LLM Engineer interviews
Quick check before we show the links
Helps us keep automated scrapers from hammering the filehosts.
