评估边缘计算与无服务器架构的整合,以提高基于云的大数据管理的可扩展性和可持续性

Favour Amarachi Ezeugwa
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引用次数: 0

摘要

本研究评估了边缘计算与无服务器架构的整合,以提高基于云的大数据管理系统的可扩展性和可持续性。随着来自互联网连接设备的数据呈指数级增长,传统云计算在可扩展性、成本效益和环境影响方面面临挑战。本研究利用模拟环境,在智慧城市应用的典型条件下,比较了传统云设置与集成边缘和无服务器架构。模拟重点关注四个关键性能指标:延迟、运营成本、能耗和吞吐量。结果表明,延迟大幅降低,高峰时段从 149.73 毫秒降至 88.94 毫秒,增强了对时间敏感型应用至关重要的实时数据处理能力。由于无服务器架构的动态资源分配减少了资金浪费,运营成本大幅降低了约 30%。此外,集成还显著降低了能耗和碳排放,凸显了这些技术为环境可持续发展做出积极贡献的潜力。最后,集成系统的可扩展性明显增强,吞吐量提高了 50%,证明了其在高效处理大量数据和用户请求方面的有效性。研究结果表明,边缘计算和无服务器架构的协同使用可以彻底改变各行各业的大数据管理,从而提高性能、成本效益和环境可持续性。
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Evaluating the Integration of Edge Computing and Serverless Architectures for Enhancing Scalability and Sustainability in Cloud-based Big Data Management
This study evaluates the integration of edge computing and serverless architectures to enhance scalability and sustainability in cloud-based big data management systems. With the exponential increase in data from internet-connected devices, traditional cloud computing faces challenges in scalability, cost-efficiency, and environmental impact. This research utilized a simulated environment to compare traditional cloud setups with integrated edge and serverless architectures under conditions typical for smart city applications. The simulation focused on four key performance metrics: latency, operational costs, energy consumption, and throughput. Results indicated a substantial decrease in latency, with a reduction from 149.73 ms to 88.94 ms during peak hours, enhancing real-time data processing capabilities essential for time-sensitive applications. Operational costs were significantly lowered by approximately 30%, attributed to the dynamic resource allocation of serverless architectures that reduce financial waste. Additionally, the integration showed a notable reduction in energy consumption and carbon emissions, highlighting the potential for these technologies to contribute positively to environmental sustainability. Lastly, the enhanced scalability of the integrated system was evident, with throughput increasing by 50%, proving its effectiveness in handling large volumes of data and user requests efficiently. The findings suggest that the synergistic use of edge computing and serverless architectures could revolutionize big data management across various sectors, offering improvements in performance, cost-efficiency, and environmental sustainability.
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