🔥From LLMs to AI Agents: Complete Practical Path
🚀 Build Real AI Agents in 2026 (Not Just Demos)
From RAG → Multi-Agent Systems → LangGraph → OpenAI Agents → LLM Fine-tuning
👉 This is a complete Agentic AI journey.
🤖 1. 2026 Deep Agent – Multi-Agent RAG with Gemini & LangChain
Build advanced, production-ready multi-agent AI systems.

What you’ll learn:
- LangChain v1 AI Agents
- Multi-Agent RAG architectures
- Google Gemini 3 integration
- Multimodal RAG (PDFs, tables, images)
- Qdrant vector DB, hybrid search
- MCP tools, memory & cost optimization
- Docker-based deployments
🎯 Best for: Advanced GenAI & RAG developers
💡 Outcome: Enterprise-grade multi-agent AI systems
🔐 2. Agentic AI – Private Agentic RAG with LangGraph & Ollama
Build private, offline, secure RAG systems.

What you’ll learn:
- LangGraph v1 from scratch
- Private & local RAG using Ollama
- Corrective RAG (CRAG), Self-RAG, Adaptive RAG
- Page-level PDF ingestion (Docling)
- Metadata filtering & re-ranking
- MySQL-based AI agents
🎯 Best for: Privacy-focused & enterprise AI use cases
💡 Outcome: Fully private Agentic RAG systems
🧠 3. Master LangChain v1 & Ollama – Chatbots, RAG & AI Agents
Your foundation course for LangChain v1.

What you’ll learn:
- LangChain v1 core concepts
- Ollama with local LLMs
- Qwen3, Gemma3, DeepSeek, LLaMA
- Build chatbots with memory & streaming
- RAG pipelines
- Deploy AI apps on AWS
- Text-to-MySQL agents
🎯 Best for: Beginners to intermediate GenAI learners
💡 Outcome: Strong LangChain + RAG fundamentals
🕸️ 4. Master LangGraph v1 & Ollama – Build GenAI Agents
Design complex agent workflows using graphs.

What you’ll learn:
- LangGraph states, nodes & edges
- Conditional routing & reducers
- Nested graphs & orchestration
- Tool-using agents (ReAct)
- Local & cloud LLM agents
- End-to-end GenAI agent systems
🎯 Best for: Developers moving from chains to agents
💡 Outcome: Scalable, controllable AI agents
🧩 5. Master OpenAI Agent Builder – Deploy Chatbots to Your Website
Build and deploy AI agents with low-code tools.

What you’ll learn:
- OpenAI Agent Builder (no-code / low-code)
- ChatKit & MCP connectors
- RAG-powered AI assistants
- MySQL, AWS & RDS integrations
- Production deployment with guardrails
- Real business use cases (support, ecommerce)
🎯 Best for: Rapid AI product builders
💡 Outcome: Deployed AI assistants on websites
🧬 6. Fine-Tuning LLMs with Hugging Face Transformers
Train and fine-tune your own LLMs.

What you’ll learn:
- Transformers architecture
- BERT, Phi-2, LLaMA variants
- Dataset preparation & evaluation
- Fine-tuning for classification & QA
- Text summarization & inference
- Model distillation techniques
🎯 Best for: NLP & model-level AI engineers
💡 Outcome: Custom fine-tuned LLMs
🔗 7. MCP Mastery – Build AI Apps with Claude, LangChain & Ollama
Learn Model Context Protocol (MCP) and build real AI apps that connect tools, data, and LLMs.

What you’ll learn:
- MCP fundamentals (servers & clients)
- Build custom MCP servers in Python
- Connect real-world tools, APIs & resources
- Integrate MCP with Claude Desktop
- Use MCP with LangChain v1 & LangGraph v1
- Build RAG systems using vector databases
- ChromaDB + Ollama integration
- Secure, test & deploy production-ready MCP servers
- Build Streamlit-based AI apps
🎯 Best for:
GenAI developers, LangChain/LangGraph users, AI engineers
💡 Outcome:
You’ll be able to build tool-connected AI apps using MCP — the same protocol used by modern AI agents.
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