作者
Jitendra Kumar, Ashutosh Kumar Singh
发表日期
2018/4/1
期刊
Future Generation Computer Systems
卷号
81
页码范围
41-52
出版商
North-Holland
简介
Cloud computing has drastically transformed the means of computing in recent years. In spite of numerous benefits, it suffers from some challenges too. Major challenges of cloud computing include dynamic resource scaling and power consumption. These factors lead a cloud system to become inefficient and costly. The workload prediction is one of the variables by which the efficiency and operational cost of a cloud can be improved. Accuracy is the key component in workload prediction and the existing approaches lag in producing 100% accurate results. The researchers are also putting their consistent efforts for its improvement. In this paper, we present a workload prediction model using neural network and self adaptive differential evolution algorithm. The model is capable of learning the best suitable mutation strategy along with optimal crossover rate. The experiments were performed on the benchmark data …
引用总数
20182019202020212022202320246415346424627