Ready to make AI systems work with your organization's unique knowledge and data? Most AI implementations hit a wall because they can't effectively access, process, and utilize enterprise information, leaving vast potential untapped and organizations frustrated with generic responses.
This course transforms you into an expert data engineer who can build sophisticated RAG (Retrieval-Augmented Generation) systems that seamlessly bridge AI models with your organization's knowledge assets. You'll master advanced data processing pipelines that transform raw documents into AI-ready formats, architect high-performance vector databases for semantic search, and implement intelligent retrieval strategies that deliver contextually perfect responses. Through comprehensive hands-on labs, you'll build enterprise-grade RAG systems with adaptive orchestration, context-aware personalization, and production-ready monitoring. This course is designed for technical professionals working at the intersection of data and AI. Ideal participants include data engineers transitioning into AI workflows, ML engineers focused on robust data pipelines, software engineers developing intelligent systems, and AI/ML specialists implementing Retrieval-Augmented Generation (RAG) architectures. The curriculum speaks directly to those building or maintaining production-grade systems where data integrity, contextual awareness, and performance are critical. To get the most out of this course, learners should have a strong foundation in Python programming, along with familiarity in working with databases and data processing workflows. A solid understanding of machine learning principles is essential, as is experience with APIs and web services. Exposure to cloud-based infrastructure and tools will also be highly beneficial for the hands-on implementation of RAG systems and data pipelines. By the end of this course, learners will be able to build enterprise-grade data pipelines with robust validation, transformation, and AI-ready formatting. They will gain practical experience in implementing advanced RAG architectures using vector databases, embeddings, and dynamic context management. The course also delves into powerful optimization strategies such as reranking, metadata filtering, and adaptive context handling. These capabilities will culminate in the design and deployment of specialized, context-aware customer support systems that deliver scalable, personalized, and measurable performance.