大数据检索的高效优化策略

Jinfeng Dou, Lei Chu, Jiabao Cao, Yang Qiu, Baolin Zhao
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引用次数: 0

摘要

随着新信息技术的发展,数据量的积累呈爆炸式增长,大数据检索在大数据技术中发挥着越来越重要的作用。数据检索面临的挑战是提高检索精度和检索速度。针对大数据平台对高效数据检索的需求,提出了一种高效的优化策略。我们发现,当使用主键查询时,查询响应可以很快。但是,当使用非主键查询时,需要对缓存表进行全面扫描,并且可能导致较长的响应延迟。为了提高信息检索的准确性和用户体验的质量,本文提出了一种基于Solr的二级索引。然后,cache-heat评估算法根据访问频率对数据进行分类,减少查询延迟。此外,基于内存缓存的索引优化方法更新缓存,以节省空间和提高利用率。实验和仿真结果表明,该策略能够有效提高大数据检索的效率。
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Efficient Optimized Strategy of Big Data Retrieval
With the development of new information technologies, the accumulation of data volume has been exploding, and big data retrieval has played an increasingly important role in big data technology. The challenge of data retrieval are the improvement of retrieval accuracy and retrieval speed. Aiming at the demand of big data platform for efficient data retrieval, an efficient optimized strategy is proposed. We found when the primary key query is used, the query response can be quick. However, when using a non-primary key query, the cache table needs to be comprehensively scanned and the longer response delay may be induced. This paper proposes a secondary index based on Solr to increase the accuracy of information retrieval and the quality of user experience. Then a cache-heat evaluation algorithm categorizes data according to access frequency to reduce query latency. Moreover, an index optimization method based on memory cache updates the cache to save space and enhance utilization. The experiments and simulation demonstrate that the proposed strategy can effectively improves the big data retrieval.
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