Zoom: SSD-based Vector Search for Optimizing Accuracy, Latency and Memory

11 Sep 2018Minjia ZhangYuxiong He

With the advancement of machine learning and deep learning, vector search becomes instrumental to many information retrieval systems, to search and find best matches to user queries based on their semantic similarities.These online services require the search architecture to be both effective with high accuracy and efficient with low latency and memory footprint, which existing work fails to offer. We develop, Zoom, a new vector search solution that collaboratively optimizes accuracy, latency and memory based on a multiview approach... (read more)

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