RAG (Retrieval augmented generation)
RAG (Retrieval-Augmented Generation) refers to advanced AI techniques that enhance the performance of content generation systems by integrating information retrieval methods. This approach leverages a two-step process: first, retrieving relevant information from a vast dataset or knowledge base, and then generating accurate and contextually appropriate content based on that information. By combining these two processes, RAG models improve the precision and relevance of generated responses, making them more accurate and contextually appropriate. This technique is particularly useful in applications requiring detailed and reliable answers, such as question-answering systems and complex data-driven content creation. The synergy of retrieval and generation allows RAG systems to produce content that not only answers queries effectively but also aligns with the most current and relevant data available.