MQRLD: A Multimodal Data Retrieval Platform with Query-aware Feature Representation and Learned Index Based on Data Lake

Ming Sheng, Shuliang Wang, Yong Zhang, Kaige Wang, Jingyi Wang, Yi Luo, Rui Hao
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Abstract

Multimodal data has become a crucial element in the realm of big data analytics, driving advancements in data exploration, data mining, and empowering artificial intelligence applications. To support high-quality retrieval for these cutting-edge applications, a robust data retrieval platform should meet the requirements for transparent data storage, rich hybrid queries, effective feature representation, and high query efficiency. However, among the existing platforms, traditional schema-on-write systems, multi-model databases, vector databases, and data lakes, which are the primary options for multimodal data retrieval, are difficult to fulfill these requirements simultaneously. Therefore, there is an urgent need to develop a more versatile multimodal data retrieval platform to address these issues. In this paper, we introduce a Multimodal Data Retrieval Platform with Query-aware Feature Representation and Learned Index based on Data Lake (MQRLD). It leverages the transparent storage capabilities of data lakes, integrates the multimodal open API to provide a unified interface that supports rich hybrid queries, introduces a query-aware multimodal data feature representation strategy to obtain effective features, and offers high-dimensional learned indexes to optimize data query. We conduct a comparative analysis of the query performance of MQRLD against other methods for rich hybrid queries. Our results underscore the superior efficiency of MQRLD in handling multimodal data retrieval tasks, demonstrating its potential to significantly improve retrieval performance in complex environments. We also clarify some potential concerns in the discussion.
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MQRLD:基于数据湖的具有查询感知特征表示和学习索引的多模态数据检索平台
多模态数据已成为大数据分析领域的关键要素,推动着数据探索、数据挖掘和人工智能应用的进步。为了支持这些前沿应用的高质量检索,强大的数据检索平台应满足透明数据存储、丰富的混合查询、有效的特征表示和高查询效率等要求。然而,在现有的平台中,传统的写模式系统、多模型数据库、矢量数据库和数据湖等作为多模态数据检索的主要选择,很难同时满足这些要求。本文介绍了一种基于数据湖(Data Lake)的多模态数据检索平台(Multimodal Data Retrieval Platform withQuery-aware Feature Representation and Learned Index,MQRLD)。它利用数据湖的透明存储能力,集成多模态开放应用程序接口(API)以提供支持丰富混合查询的统一接口,引入查询感知多模态数据特征表示策略以获取有效特征,并提供高维学习索引以优化数据查询。我们对 MQRLD 的查询性能与其他富混合查询方法进行了比较分析。我们的研究结果表明,MQRLD 在处理多模态数据检索任务时具有卓越的效率,证明了它在复杂环境中显著提高检索性能的潜力。我们还在讨论中澄清了一些潜在的问题。
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