革新基于云的任务调度:当代网络系统中优化资源分配和效率的新型混合算法

Punit Mittal, Satender Kumar, Swati Sharma
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引用次数: 0

摘要

:在当代网络系统时代,对云计算的需求与日俱增,推动了对资源优化分配和数据处理的追求。在交通系统等安全性取决于计算性能的重要领域,云计算势在必行。即使在对云计算中的资源管理进行了大量研究之后,寻找能最大限度地完成任务、最小化成本和最大化资源消耗的算法仍然是重中之重。然而,现有技术已显示出局限性,这就需要新的方法。我们的工作展示了一种新颖的混合方法,它有可能彻底改变游戏规则。神经网络任务分类(N2TC)是神经网络与遗传算法相结合的产物。这种开创性的方法巧妙地将遗传算法任务分配(GATA)应用于资源分配,同时利用神经网络进行任务分类。值得注意的是,我们的算法仔细考虑了执行时间、响应时间、成本和系统效率,以促进公平性,从而抵御资源稀缺。我们的方法显著降低了 13.3% 的成本,响应时间增加了 12.1%,执行时间增加了 3.2%。这些强有力的指标就像一记警钟,宣告了我们的混合算法在改变基于云的任务调度模式方面的强大力量和革命性潜力。这项工作代表了云计算的一个转折点,它展示了一种创新的算法组合,不仅克服了当前的制约因素,还开创了一个效能和效率的新时代,在交通系统领域之外产生了深远影响。
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Revolutionizing Cloud-Based Task Scheduling: A Novel Hybrid Algorithm for Optimal Resource Allocation and Efficiency in Contemporary Networked Systems
: The need for cloud computing has increased in the age of contemporary networked systems, driving the pursuit of optimal resource allocation and data processing. It is imperative in essential fields where security, such as transportation systems, depends on computing performance. Even after much research has been done on managing resources in cloud computing, finding algorithms that maximize job completion, minimize costs, and maximize resource consumption has remained a top priority. However, existing techniques have shown limitations, which calls for new ways. Our work shows the novel hybrid approach that has the potential to change the game completely. The Neural Network Task Classification (N2TC) is the result of merging neural networks with genetic algorithms. This ground-breaking method skillfully applies the Genetic Algorithm Task Assignment (GATA) for resource allocation while utilizing neural networks for task categorization. Notably, our algorithm carefully considers execution time, response time, costs, and system e ffi ciency to promote fairness, a defense against resource scarcity. Our method achieves a remarkable 13.3% cost reduction, a stunning 12.1% increase in response time, and a 3.2% increase in execution time. These strong indicators act as a wake-up call, announcing our hybrid algorithm’s power and revolutionary potential in transforming the paradigms around cloud-based task scheduling. This work represents a turning point in cloud computing, demonstrating an innovative combination of algorithms that not only overcomes current constraints but also ushers in a new era of e ffi cacy and e ffi ciency with far-reaching implications outside the domain of transportation systems
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来源期刊
International Journal of Computing and Digital Systems
International Journal of Computing and Digital Systems Business, Management and Accounting-Management of Technology and Innovation
CiteScore
1.70
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0.00%
发文量
111
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