April 4, 2024, 4:44 p.m. | MLOps.community

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// Abstract
This session talks about the pivotal role of retrieval evaluation in Language Model (LLM)-based applications like RAG, emphasizing its direct impact on the quality of responses generated. We explore the correlation between retrieval accuracy and answer quality, highlighting the significance of meticulous evaluation methodologies.

//Bio
Atita Arora is a seasoned and esteemed professional in information retrieval systems and has decoded complex business challenges, pioneering innovative information retrieval solutions in …

abstract accuracy applications brand correlation evaluation explore generated impact language language model llm partner pivotal production qdrant quality rag responses retrieval role session talks via

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