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Retrieval-Augmented Generation (RAG) applications, integrating information retrieval with language generation, are examined in this technical document. The paper explores methodologies for improving RAG performance, including iterative refinement and robust evaluation frameworks. Key challenges like context limitations and data quality issues are discussed alongside proposed solutions such as improved prompt engineering and effective data management. Finally, the document provides case studies illustrating RAG applications in various fields, along with a look toward the future directions of the technology.
Retrieval-Augmented Generation (RAG) applications, integrating information retrieval with language generation, are examined in this technical document. The paper explores methodologies for improving RAG performance, including iterative refinement and robust evaluation frameworks. Key challenges like context limitations and data quality issues are discussed alongside proposed solutions such as improved prompt engineering and effective data management. Finally, the document provides case studies illustrating RAG applications in various fields, along with a look toward the future directions of the technology.