DQSOps: Data Quality Scoring Operations Framework for Data-Driven Applications

Firas Bayram, Bestoun S. Ahmed, Erik Hallin, Anton Engman
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引用次数: 1

Abstract

Data quality assessment has become a prominent component in the successful execution of complex data-driven artificial intelligence (AI) software systems. In practice, real-world applications generate huge volumes of data at speeds. These data streams require analysis and preprocessing before being permanently stored or used in a learning task. Therefore, significant attention has been paid to the systematic management and construction of high-quality datasets. Nevertheless, managing voluminous and high-velocity data streams is usually performed manually (i.e. offline), making it an impractical strategy in production environments. To address this challenge, DataOps has emerged to achieve life-cycle automation of data processes using DevOps principles. However, determining the data quality based on a fitness scale constitutes a complex task within the framework of DataOps. This paper presents a novel Data Quality Scoring Operations (DQSOps) framework that yields a quality score for production data in DataOps workflows. The framework incorporates two scoring approaches, an ML prediction-based approach that predicts the data quality score and a standard-based approach that periodically produces the ground-truth scores based on assessing several data quality dimensions. We deploy the DQSOps framework in a real-world industrial use case. The results show that DQSOps achieves significant computational speedup rates compared to the conventional approach of data quality scoring while maintaining high prediction performance.
dqsop:数据驱动应用程序的数据质量评分操作框架
数据质量评估已成为成功执行复杂数据驱动的人工智能(AI)软件系统的重要组成部分。在实践中,现实世界的应用程序以极快的速度生成大量数据。这些数据流在永久存储或用于学习任务之前需要进行分析和预处理。因此,高质量数据集的系统化管理和建设受到了人们的高度重视。然而,管理大量高速数据流通常是手动执行的(即脱机),这使得它在生产环境中成为一种不切实际的策略。为了应对这一挑战,DataOps已经出现,使用DevOps原则实现数据过程的生命周期自动化。然而,在DataOps框架内,基于适应度尺度确定数据质量是一项复杂的任务。本文提出了一种新的数据质量评分操作(DQSOps)框架,该框架为DataOps工作流中的生产数据生成质量评分。该框架包含两种评分方法,一种是基于机器学习预测的方法,用于预测数据质量得分;另一种是基于标准的方法,基于评估几个数据质量维度,定期生成真实得分。我们在真实的工业用例中部署dqsop框架。结果表明,与传统的数据质量评分方法相比,dqsop在保持较高预测性能的同时获得了显著的计算加速率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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