利用混合机器学习模型在边缘设备和云设备之间同时执行多任务,优化会计信息化

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Xiaofeng Yang
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引用次数: 0

摘要

会计信息化是企业信息化的重要组成部分,对会计和财务工作的运作效率有重大影响。信息技术的进步引入了自动化技术,可以经济高效地加速会计信息处理。整合人工智能、云计算和边缘计算对简化和优化这些流程至关重要。传统上,会计信息化依赖系统服务器和本地存储进行数据处理。然而,大数据时代要求向云计算框架转变,以实现高效的数据存储和处理。尽管云存储具有诸多优势,但数据安全性以及云和源设备之间的大量数据交易问题仍令人担忧。为了应对这些挑战,本研究提出了一种新型算法--异构分布式深度学习与数据卸载(DDLO)算法。DDLO 利用边缘设备和云计算之间的协同作用来增强数据处理能力。边缘计算可在数据收集地点或附近快速处理大量数据,优化企业的日常运营。此外,边缘设备上的机器学习算法还能提高数据处理效率,增强计算环境的整体性能。所提出的 DDLO 算法是一种混合机器学习方法,用于计算会计信息化中的联合任务和多任务。它实现了动态资源分配,允许将选定的数据或模型更新卸载到云端,以完成复杂任务。该算法的性能通过计算时间、卸载时间、准确性和成本水平等关键指标进行了严格评估。通过充分利用边缘计算、云计算和人工智能的优势,DDLO 算法有效地解决了会计信息化的难题。它使企业能够高效、安全地处理海量会计数据,同时提高整体运营效率。在时间方面,在使用 DDLO 进行任务卸载时,使用 terasort 所消耗的时间比其他技术少 33 毫秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing Accounting Informatization through Simultaneous Multi-Tasking across Edge and Cloud Devices using Hybrid Machine Learning Models

Accounting informatization is a crucial component of enterprise informatization, significantly impacting operational efficiency in accounting and finance. Advances in information technology have introduced automation techniques that accelerate the processing of accounting information cost-effectively. Integrating artificial intelligence, cloud computing, and edge computing is pivotal in streamlining and optimizing these processes. Traditionally, accounting informatization relied on system servers and local storage for data processing. However, the era of big data necessitates a shift to cloud computing frameworks for efficient data storage and processing. Despite the advantages of cloud storage, concerns arise regarding data security and the substantial data transactions between the cloud and source devices. To address these challenges, this research proposes a novel algorithm, Heterogeneous Distributed Deep Learning with Data Offloading (DDLO) algorithm. DDLO leverages the synergy between edge devices and cloud computing to enhance data processes. Edge computing enables rapid processing of large volumes of data at or near the data collection sites, optimizing day-to-day operations for enterprises. Furthermore, machine learning algorithms at edge devices enhance data processing efficiency, augmenting the computing environment's overall performance. The proposed DDLO algorithm fosters a hybrid machine learning approach for computing joint tasks and multi-tasking in accounting informatization. It enables dynamic resource allocation, allowing selected data or model updates to be offloaded to the cloud for complex tasks. The algorithm's performance is rigorously evaluated using key metrics, including computing time, offloading time, accuracy, and cost levels. By capitalizing on the strengths of edge computing, cloud computing, and artificial intelligence, the DDLO algorithm effectively addresses accounting informatization challenges. It empowers enterprises to process vast amounts of accounting data efficiently and securely while improving overall operational efficiency. Regarding time, using terasort in tasks offloading using DDLO consumes less milliseconds 0t 33 ms which is lesser than other techniques.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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