RAG & Fine Tuning

RAG & Fine Tuning

Unlock the full potential of large language models with our comprehensive RAG & Fine-Tuning course designed for professionals and businesses looking to build intelligent, context-aware AI applications. This hands-on programme covers Retrieval-Augmented Generation (RAG) architectures, vector databases, embedding strategies, and prompt engineering techniques that enable AI systems to deliver accurate, grounded responses using your own proprietary data. Whether you are building enterprise chatbots, knowledge management systems, or automated research tools, you will gain the practical skills needed to design, deploy, and optimise production-ready RAG pipelines.

Master the art and science of fine-tuning foundation models to meet your organisation's unique requirements. Learn how to prepare high-quality training datasets, apply parameter-efficient fine-tuning methods such as LoRA and QLoRA, evaluate model performance with industry-standard benchmarks, and deploy fine-tuned models at scale. By the end of this course, you will have the expertise to customise large language models for domain-specific tasks, reduce hallucinations, improve response quality, and deliver measurable business value through applied AI solutions.

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  • Pydantic for Structured Data Validation in LLM Workflows

    Master the art of building reliable, production-ready LLM applications with Pydantic for structured data validation. This hands-on course teaches you how to move beyond free-form AI text outputs and implement robust validation schemas that ensure every response from large language models is accurate, complete, and ready for downstream processing. Learn to design structured output schemas, parse and validate JSON resp....
    ₵2,000.00

    before funding and GST

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