Description
RAG, AI Agents & Generative AI with Python and OpenAI (2026 Edition)
Master Retrieval-Augmented Generation, AI Agents, and Generative AI with the most updated, practical, and industry-ready course for 2026.
Requirements
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Basic Python knowledge (loops, functions)
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Willingness to learn and practice hands-on projects
Latest Course Updates
November 2025
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Complete 2026 version released
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All code upgraded with the latest OpenAI Responses API and GPT-5
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New No-Code RAG with Flowise
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New Streamlit project added
June 2025
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Added: Image Generation with OpenAI
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Added: Reasoning Models Module
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MCP (Model Context Protocol) fully integrated
May 2025
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New Sections:
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RAG with OpenAI File Search
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RAGAS Evaluation
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Remade several videos for clarity
April 2025
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Rebuilt sections: Retrieval Fundamentals, Generative Fundamentals, Intro to RAG
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Added: Knowledge Graphs with LightRAG
December 2024
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Fine-Tuning with OpenAI GPT-4o
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Python Crash Course + Self-Assessment
November 2024
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CrewAI & Capstone Project released
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OpenAI API for Text & Images
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OpenAI API Capstone Project added
October 2024
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OpenAI Swarm released
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Agentic RAG Module
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Multimodal RAG Project
Course Overview
Unlock the full potential of RAG (Retrieval-Augmented Generation), AI Agents, and Generative AI using Python and OpenAI’s advanced technologies.
This course is ideal for anyone who wants to become highly skilled in real-world AI systems, intelligent automation, and next-generation LLM engineering.
Why This Course Is Different
✔ Full-Stack RAG System Design
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Retrieval → Augmentation → Grounded Generation
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Metadata, citations, guardrails, and validation
✔ OpenAI-First Approach
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GPT-5, Responses Endpoint, File Search
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Whisper, CLIP, Image Generation
✔ Both No-Code & Code Options
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Flowise (No-Code RAG)
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Python (FAISS, LangChain, Streamlit)
✔ Evaluation-Focused
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RAGAS metrics:
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Context precision & recall
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Response relevancy
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Factual correctness
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✔ Advanced Agentic Systems
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CrewAI, OpenAI Swarm
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Multi-agent orchestration
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Tool use, memory, conversation state
✔ Modern GenAI Workflows
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Reasoning models and verification
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Fine-tuning techniques
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MCP with approvals (safe API actions)
✔ Practical Business Applications
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AI copilots for customer support
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Knowledge-base assistants
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Policy/HR Q&A systems
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Analytics & research agents
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Finance and operations automation
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Content production & optimization
Meet Your Instructor
I’m Diogo, a data professional with a Master’s in Management (Analytics) from ESMT Berlin.
With experience across billion-euro operations, A/B testing, and global startup consulting, I teach AI with a strong emphasis on real-world impact and practical problem-solving.
You also receive direct instructor support, with responses within 24 hours for every question.
Real Hands-On Projects You Will Build
🔹 No-Code Projects
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Flowise RAG System (zero to production-ready answers with citations)
🔹 Python + OpenAI Projects
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File Search RAG + Streamlit App
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Unstructured Data RAG (PDF, Word, PPT, Excel, EPUB)
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Multimodal RAG (Whisper + CLIP + cosine search)
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Agentic Workflows (CrewAI + Swarm):
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Researcher
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Writer
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Counselor
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Product Strategist
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Reasoning Model Demos
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Image Generation & Batch Editing Pipelines
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Fine-tuned GPT Evaluation & Testing
What You Will Learn
RAG Foundations
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Retrieval pipelines
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Augmentation techniques
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Grounded generation with citations
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Metadata design
Embeddings & Vector Stores
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Semantic search and nearest neighbor retrieval
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FAISS, File Search vector stores
Chunking Techniques
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Fixed-size
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Semantic chunking
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Hierarchical
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LongRAG
Prompt Engineering
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System messages
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Temperature & Top-p
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Few-shot prompting
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Persona-based design
Reasoning Models
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Structured outputs
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Chain-of-thought control
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Verification frameworks
AI Agent Patterns
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Multi-agent communication
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Tool calling & planning
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Memory and state-handling
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Error recovery
MCP (Model Context Protocol)
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Safe external actions
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API integrations (fetch, Stripe, web queries)
Evaluation with RAGAS
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Context recall
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Precision
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Relevancy
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Factual accuracy
Deployment
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Streamlit apps
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Environment secrets
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Debugging workflows
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Production-ready optimization
Why Learn RAG and AI Agents in 2026?
The future of AI lies in augmented, grounded, and agentic systems—not standalone LLMs.
RAG is now essential for:
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Enterprise AI tools
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Knowledge retrieval
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Automation copilots
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AI-powered research systems
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Business intelligence
This course prepares you for the next generation of real-world AI engineering.
What You Get
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Lifetime Access
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All future updates (2026 and beyond)
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Hands-on projects and coding challenges
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Direct instructor support
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Completion certificate
Who This Course Is For
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Data Scientists & ML Engineers expanding into generative AI
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AI Researchers & Enthusiasts exploring RAG and agent systems
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Software Developers transitioning into AI engineering
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Technical Product Managers leading AI initiatives
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AI Consultants & Data Analysts adding LLM skills
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Entrepreneurs & Tech Leaders building AI-driven products
Take the Next Step
Stay ahead of the fast-moving world of AI.
Master RAG, AI Agents, and Generative AI with the most complete, updated, and practical course available.
Enroll now and transform your career with next-generation AI skills!
Please Note: Files will be included in this purchase only Full Course Video & Course Resources. You will get cloud storage download link with life time download access.






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