Zivkovic M, Zivkovic T, Venkatachalam K, Bacanin N (2021) Enhanced dragonfly algorithm adapted for wireless sensor network lifetime optimization. Īliyu M, Murali M, Zhang ZJ, Gital A, Boukari S, Huang Y, Yakubu IZ (2021) Management of cloud resources and social change in a multi-tier environment: a novel finite automata using ant colony optimization with spanning tree. Ghetas M (2021) A multi-objective Monarch Butterfly Algorithm for virtual machine placement in cloud computing. Hua H, Hao C, Qin Y (2020) Internet thinking for layered energy infrastructure. Lecture Notes in Electrical Engineering, vol 668, Springer, Singapore. In: Hura G, Singh A, Siong Hoe L (eds) Advances in communication and computational technology. Int J Disaster Risk Reduct 47:101642ĭutta A, Misra C, Barik RK, Mishra S (2021) Enhancing Mist Assisted Cloud Computing Toward Secure and Scalable Architecture for Smart Healthcare. Khan A, Gupta S, Gupta SK (2020) Multi-hazard disaster studies: monitoring, detection, recovery, and management, based on emerging technologies and optimal techniques. Machine intelligence and big data analytics for cybersecurity applications. Muheidat F (2021) Mobile and cloud computing security. Ma SD, Kirilenko AP, Stepchenkova S (2020) Special interest tourism is not so special after all: Big data evidence from the 2017 Great American Solar Eclipse. J Supercomput 76(12):9493–9532Ĭhen Y-h (2020) Intelligent algorithms for cold chain logistics distribution optimization based on big data cloud computing analysis. Tabrizchi H, Rafsanjani MK (2020) A survey on security challenges in cloud computing: issues, threats, and solutions. Sharma V, Nigam V, Sharma AK (2020) Cognitive analysis of deploying web applications on microsoft windows azure and amazon web services in global scenario. Gomez-Rodriguez MA, Sosa-Sosa VJ, Carretero J, Gonzalez JL (2020) CloudBench: an integrated evaluation of VM placement algorithms in clouds. Zolfaghari R, Sahafi A, Rahmani AM, Rezaei R (2021) Application of virtual machine consolidation in cloud computing systems. Kaur R, Laxmi V, Balkrishan, (2022) Performance evaluation of task scheduling algorithms in virtual cloud environment to minimize makespan. Sharma M, Kumar M, Samriya JK (2022) An optimistic approach for task scheduling in cloud computing. Pallavi GB, Jayarekha P (2022) Secure and efficient multi-tenant database management system for cloud computing environment. Song Ch (2022) A hybrid SEM and ANN approach to predict the individual cloud computing adoption based on the UTAUT2. Godhrawala H, Sridaran R (2022) A dynamic Stackelberg game based multi-objective approach for effective resource allocation in cloud computing. Consequently, to verify the proposed technique’s efficiency, the proposed method is compared with conventional techniques in terms of performance metrices the outcomes prove the enhancement of the cloud computing system. Moreover, the developed approach is implemented in the Python framework, and results show that the computation time has reduced the quantity of the tasks taken for the experimentation. Therefore the novel Whale-based Convolution Neural Framework (WbCNF) strategy can effectively improve the task allocation system and reduce the job execution time. Previously, several approaches were proposed to diminish the computation time, but those techniques only apply to a few tasks. Nevertheless, the main drawback of the cloud computing model is the higher computation time that causes the deadline of all work. Moreover, resource allocation and job scheduling are significant features in cloud computing. Consequently, different operating systems and virtual machines have validated the user’s requirements and necessitated effective scheduling techniques in the cloud environment. In that, cloud computing job scheduling is a problematic task. In contemporary technology, cloud computing is applicable in many fields like biomedical systems, transactions, data mining, etc.
0 Comments
Leave a Reply. |