A State-of-the-Art Review in Big Data Management Engineering: Real-Life Case Studies, Challenges, and Future Research Directions

Eng Pub Date : 2024-07-03 DOI:10.3390/eng5030068
Leonidas Theodorakopoulos, Alexandra Theodoropoulou, Y. Stamatiou
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引用次数: 0

Abstract

The explosion of data volume in the digital age has completely changed the corporate and industrial environments. In-depth analysis of large datasets to support strategic decision-making and innovation is the main focus of this paper’s exploration of big data management engineering. A thorough examination of the basic elements and approaches necessary for efficient big data use—data collecting, storage, processing, analysis, and visualization—is given in this paper. With real-life case studies from several sectors to complement our exploration of cutting-edge methods in big data management, we present useful applications and results. This document lists the difficulties in handling big data, such as guaranteeing scalability, governance, and data quality. It also describes possible future study paths to deal with these issues and promote ongoing creativity. The results stress the need to combine cutting-edge technology with industry standards to improve decision-making based on data. Through an analysis of approaches such as machine learning, real-time data processing, and predictive analytics, this paper offers insightful information to companies hoping to use big data as a strategic advantage. Lastly, this paper presents real-life use cases in different sectors and discusses future trends such as the utilization of big data by emerging technologies.
大数据管理工程的最新进展回顾:真实案例研究、挑战与未来研究方向
数字时代数据量的爆炸式增长彻底改变了企业和工业环境。深入分析大型数据集以支持战略决策和创新,是本文探索大数据管理工程的重点。本文全面探讨了高效使用大数据所需的基本要素和方法--数据收集、存储、处理、分析和可视化。作为对大数据管理前沿方法探索的补充,我们通过来自多个行业的真实案例研究,介绍了有用的应用和结果。本文列举了处理大数据的难点,如保证可扩展性、治理和数据质量。它还描述了未来可能的研究路径,以解决这些问题并促进持续的创造力。研究结果强调,需要将尖端技术与行业标准相结合,以改进基于数据的决策。通过对机器学习、实时数据处理和预测分析等方法的分析,本文为希望利用大数据作为战略优势的公司提供了具有洞察力的信息。最后,本文介绍了不同行业的真实使用案例,并讨论了未来趋势,如新兴技术对大数据的利用。
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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来源期刊
Eng
Eng
CiteScore
2.10
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0.00%
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