Master AI Agents from Scratch β Free Comprehensive Tutorial π
Learn everything you need to know about AI agents with this free, beginner-friendly guide. No prior experience required! Start building AI agents today: https://kode.wiki/3Wh4DZ6

KodeKloud
59.1K views β’ Oct 21, 2025

About this video
π§ͺAI Agents Labs for Free: https://kode.wiki/3Wh4DZ6
Learn everything about AI agents from scratch in this comprehensive tutorial. No prior knowledge required. We'll take you from zero to building production-ready AI systems with hands-on labs.
π― What You'll Learn:
β’ AI Fundamentals - LLMs, tokens, embeddings, and context windows
β’ LangChain - Simplify AI development with pre-built components
β’ Prompt Engineering - Zero-shot, few-shot, and chain-of-thought techniques
β’ Vector Databases - Semantic search with ChromaDB and Pinecone
β’ RAG (Retrieval Augmented Generation) - Build intelligent document search
β’ LangGraph - Create multi-step AI workflows and agents
β’ MCP (Model Context Protocol) - Connect AI to external tools
π§ Hands-On Labs Include:
β Making your first OpenAI API calls
β Building semantic search engines
β Creating RAG systems for document retrieval
β Developing multi-agent workflows
β Integrating external tools with MCP
Perfect for developers, data scientists, and anyone wanting to understand modern AI development. Follow along with free labs and build a real-world AI assistant that searches 500GB of documents in under 30 seconds.
π¨Start Your AI Journey with KodeKloud: https://kode.wiki/41NLyks
β° TIMESTAMPS:
00:00 - Introduction to AI Agents
00:40 - How LLMs work in real time?
04:56 - Embeddings & Vector Representations
05:56 - How LangChain works?
10:12 - Practice Labs - Your First AI API Call
14:57 - Practice Labs - LangChain
17:57 - Prompt Engineering Techniques
21:21 - Practice Labs - Master Prompt Engineering
24:46 - Vector Databases Deep Dive
31:27 - Practice Labs - Build Semantic Search Engine
35:15 - RAG (Retrieval Augmented Generation)
38:14 - Practice Labs - RAG Implementation
42:14 - LangGraph for AI Workflows
45:51 - Practice Labs - Build Stateful AI Workflow
48:51 - Model Context Protocol (MCP)
51:56 - Practice Labs - Advanced MCP Concepts
55:21 - Conclusion
π Subscribe to KodeKloud for more AI development tools and tutorials!
#AiAgents #AI #Aifundamentals #LangChain #MCP #LLMs #RAG #Langgraph #vectordb #promptengineering #VectorDatabases #Tutorial #kodekloud
Learn everything about AI agents from scratch in this comprehensive tutorial. No prior knowledge required. We'll take you from zero to building production-ready AI systems with hands-on labs.
π― What You'll Learn:
β’ AI Fundamentals - LLMs, tokens, embeddings, and context windows
β’ LangChain - Simplify AI development with pre-built components
β’ Prompt Engineering - Zero-shot, few-shot, and chain-of-thought techniques
β’ Vector Databases - Semantic search with ChromaDB and Pinecone
β’ RAG (Retrieval Augmented Generation) - Build intelligent document search
β’ LangGraph - Create multi-step AI workflows and agents
β’ MCP (Model Context Protocol) - Connect AI to external tools
π§ Hands-On Labs Include:
β Making your first OpenAI API calls
β Building semantic search engines
β Creating RAG systems for document retrieval
β Developing multi-agent workflows
β Integrating external tools with MCP
Perfect for developers, data scientists, and anyone wanting to understand modern AI development. Follow along with free labs and build a real-world AI assistant that searches 500GB of documents in under 30 seconds.
π¨Start Your AI Journey with KodeKloud: https://kode.wiki/41NLyks
β° TIMESTAMPS:
00:00 - Introduction to AI Agents
00:40 - How LLMs work in real time?
04:56 - Embeddings & Vector Representations
05:56 - How LangChain works?
10:12 - Practice Labs - Your First AI API Call
14:57 - Practice Labs - LangChain
17:57 - Prompt Engineering Techniques
21:21 - Practice Labs - Master Prompt Engineering
24:46 - Vector Databases Deep Dive
31:27 - Practice Labs - Build Semantic Search Engine
35:15 - RAG (Retrieval Augmented Generation)
38:14 - Practice Labs - RAG Implementation
42:14 - LangGraph for AI Workflows
45:51 - Practice Labs - Build Stateful AI Workflow
48:51 - Model Context Protocol (MCP)
51:56 - Practice Labs - Advanced MCP Concepts
55:21 - Conclusion
π Subscribe to KodeKloud for more AI development tools and tutorials!
#AiAgents #AI #Aifundamentals #LangChain #MCP #LLMs #RAG #Langgraph #vectordb #promptengineering #VectorDatabases #Tutorial #kodekloud
Tags and Topics
Browse our collection to discover more content in these categories.
Video Information
Views
59.1K
Likes
2.0K
Duration
56:40
Published
Oct 21, 2025
User Reviews
4.7
(11) Related Trending Topics
LIVE TRENDSRelated trending topics. Click any trend to explore more videos.
No specific trending topics match this video yet.
Explore All Trends