The Certified Generative AI Architect with Knowledge Graphs program is a comprehensive, advanced-level certification designed to equip professionals with the tools, frameworks, and hands-on experience to architect cutting-edge Generative AI (GenAI) systems that are intelligent, explainable, and scalable. This course combines the power of Large Language Models (LLMs), Knowledge Graphs, Retrieval-Augmented Generation (RAG), and agent-based orchestration to help you build production-grade AI solutions that go beyond simple prompt engineering.
You’ll begin by mastering the foundations of GenAI architecture, including the capabilities of modern LLMs, the rise of agentic AI systems, and how memory, context, and reasoning enhance performance. You'll explore the anatomy of RAG pipelines, dive into context-aware generation, and set the stage for knowledge-enhanced AI applications.
From there, we’ll delve deep into semantic technologies. You’ll learn to design and build ontologies using tools like Protégé and TopBraid Composer, construct and query graph databases using RDF, OWL, SPARQL, and Cypher, and manage the lifecycle of enterprise-grade knowledge systems. This enables you to drive semantic search, entity disambiguation, and structured reasoning in real-world deployments.
The course also covers how to build hybrid retrieval systems by integrating vector databases like FAISS, Weaviate, and Pinecone with graph-based reasoning. You'll implement advanced RAG pipelines that combine semantic filtering, graph traversal, and vector similarity to improve contextual relevance and reduce hallucinations in LLM outputs.
In the advanced sections, you’ll orchestrate multi-agent GenAI systems using frameworks like LangGraph, CrewAI, and AutoGen. These agents will collaborate across planning, retrieval, reasoning, and summarization tasks—enabling intelligent workflows that are modular, traceable, and extensible.
You’ll also learn cloud-native deployment strategies across AWS, Azure, and GCP, mastering containerization, Kubernetes, and serverless architectures for scalable GenAI APIs. Monitoring, observability, and secure rollout patterns are all covered, ensuring your solutions are enterprise-ready.
To bring it all together, you’ll engage in a capstone project where you define a business problem, create an ontology, build a knowledge graph-enabled RAG pipeline, deploy a multi-agent application to the cloud, and present your solution with full documentation and executive-ready architecture blueprints.
This course is ideal for AI architects, ML engineers, semantic web practitioners, and cloud-native developers seeking to lead the next wave of intelligent, knowledge-aware AI systems.
Whether you’re building AI for healthcare, legal tech, finance, or retail—this certification will help you deliver impactful, explainable, and future-proof GenAI systems powered by knowledge graphs.