基于遗传算法的云计算多媒体数据分配

Surendra Yadav, Manpreet Kaur
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引用次数: 0

摘要

最近使用云计算的物联网(IoT)应用的增长是惊人的。其中一个进步是异构云计算,这使得将云用于包括多媒体大数据在内的一系列基础设施解决方案成为可能。内部异构内存的优化一直是过去几项研究的主题。然而,硬件分布和操作技术带来的性能和财务限制对异构云内存施加了限制。将数据作业分布在不同容量的分散内存中是一个NP-hard组合问题。为了提供高性能的基于云的异构内存服务产品,本研究着重于这个问题,并提出了一个独特的解决方案,称为成本感知异构云内存模型。它通过遗传编程将数据分配到基于云的内存中。在我们建议的方法中,我们考虑了许多重要因素,这些因素对通信费用、数据传输运营成本、能源性能和时间限制都在云存储的运行方式中发挥作用有重大影响。最后,我们通过实验评估来检验我们建议的范式。试验结果证明了我们的技术作为一种注重成本的基于云的解决方案的可行性和可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic Algorithm-Based Data Allocation in Multi Media Using Cloud Computing
The recent growth of Internet-of-Things (IoT) applications using cloud computing has been amazing. One of the advancements is heterogeneous cloud computing, which has made it possible to use the cloud for a range of infrastructure solutions, including multimedia big data. The optimizations of on-premise heterogeneous memory have been the subject of several past studies. However, the performance and financial limits brought on by hardware distributions and manipulative techniques are placing restrictions on the heterogeneous cloud memory. It is an NP-hard combinatorial issue to distribute data jobs across dispersed memory with different capacities. In order to provide high performance cloud-based heterogeneous memory service offerings, this study focuses on this problem and suggests a unique solution called Cost-Aware Heterogeneous Cloud Memory Model. It allocates data to the cloud-based memory via genetic programming. In our suggested method, we take into account a number of important elements that have a significant influence on how well Communication expenses, data transfer operating costs, energy performance, and time constraints all play a role in how cloud memories operate. Finally, we put our suggested paradigm to the test via experimental assessments. The trial findings have demonstrated the viability and scalability of our technique as a cost-conscious cloud-based solution.
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