Retrieval-Augmented Generation @ Workday
Description
The provided sources, primarily a Workday Engineering blog post, alongside articles and industry analyses from various tech platforms, furnish a comprehensive look at Retrieval-Augmented Generation (RAG). They explain how this approach enhances Large Language Models by incorporating external knowledge for more accurate and context-aware text generation, contrasting it with methods like fine-tuning. The texts outline the architecture of RAG systems, their strategic importance, diverse applications across industries, and the challenges associated with their implementation. Furthermore, they explore future trends and ongoing research aimed at improving RAG's capabilities and addressing its limitations, highlighting its transformative potential in AI and NLP.























