Search Relevance is a science and engineering practice that refers to designing and evaluating algorithms and systems that aim to deliver users the most pertinent and valuable information based on their queries. It involves understanding the user's intent, context, and preferences and then ranking the results to maximize the likelihood of the user finding what they need. This field combines information retrieval, machine learning, natural language processing, and human-computer interaction to enhance the user experience by providing relevant and valuable results.
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This article explores NDCG — Normalized Discounted Cumulative Gain, a rank-aware metric for evaluating recommendation system models.
This pull request adds initial support for reranking to libllama, llama-embeddings, and llama-server using two models: BAAI/bge-reranker-v2-m3 and jinaai/jina-reranker-v1-tiny-en. The reranking is implemented as a classification head added to the model graph. Testing and benchmarking were performed with server integration.
This page provides documentation for the rerank API, including endpoints, request parameters, and response formats.
Maximize search relevancy and RAG accuracy with Jina Reranker. Features include multilingual retrieval, code search, and a 6x speedup over the previous version.
"On May 5th, I received an email from an anonymous source claiming to have access to a massive leak of API documentation from inside Google’s Search division. The documents were confirmed as authentic by ex-Google employees and contained extraordinary claims about Google’s search operations."
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