A five-level static cache architecture for web search engines

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摘要

Caching is a crucial performance component of large-scale web search engines, as it greatly helps reducing average query response times and query processing workloads on backend search clusters. In this paper, we describe a multi-level static cache architecture that stores five different item types: query results, precomputed scores, posting lists, precomputed intersections of posting lists, and documents. Moreover, we propose a greedy heuristic to prioritize items for caching, based on gains computed by using items’ past access frequencies, estimated computational costs, and storage overheads. This heuristic takes into account the inter-dependency between individual items when making its caching decisions, i.e., after a particular item is cached, gains of all items that are affected by this decision are updated. Our simulations under realistic assumptions reveal that the proposed heuristic performs better than dividing the entire cache space among particular item types at fixed proportions.

论文关键词:Web search engines,Static caching,Query processing

论文评审过程:Received 11 February 2010, Revised 9 December 2010, Accepted 20 December 2010, Available online 1 February 2011.

论文官网地址:https://doi.org/10.1016/j.ipm.2010.12.007