Abstract
The cloud architecture improves the memory capacity and optimizes bandwidth across the entire network architecture, facilitating the transmission and the reception of large amounts of multimedia data. The cloud system requires workflow computation and a scheduling algorithm to enhance the network performance. Therefore, this algorithm generates the priority of each multimedia data stream for effective transmission over the wireless network. In this research, a priority (PR) generation system is proposed for the efficient transmission of large multimedia videos over wireless networks through cloud architecture. This proposed system involves preprocessing video frames, computing features, and classifying them using the ANFIS-CNN classifier. This classifier is the integration of an adaptive neuro-fuzzy inference system (ANFIS) and the Convolutional Neural Network (CNN) classifier. The ANFIS-CNN based priority generation algorithm has been tested on two independent cloud platforms: Microsoft Azure and Amazon EC2. Experiment results from these cloud platforms have been compared with other existing algorithms for the priority generation process.
References
- Choudhary A, Govil MC, Singh G, Awasthi LK (2016) Workflow scheduling algorithms in cloud environment: a review, taxonomy, and challenges. In: 2016 fourth international conference on parallel, distributed and grid computing (PDGC), Waknaghat, IEEE, 2016 pp 617–624.
- S Mangalampalli, KS Pokkuluri, GN Satish, KV. Kumar, “An Effective Workflow Scheduling Algorithm in Cloud Computing Using Cat Swarm Optimization”, ECS Transactions, 107 (1) (2022), p. 2523.
- Gupta, I., Kumar, M.S. & Jana, P.K. Efficient Workflow Scheduling Algorithm for Cloud Computing System: A Dynamic Priority-Based Approach. Arab J Sci Eng 43, (2018). 7945–7960
- Rodriguez, Maria Alejandra, and Rajkumar Buyya. "Deadline based resource provisioningand scheduling algorithm for scientific workflows on clouds." IEEE transactions on cloud computing 2, no. 2 (2014): 222-235.
- Malawski, Maciej, Gideon Juve, Ewa Deelman, and Jarek Nabrzyski. "Algorithms for cost-and deadline-constrained provisioning for scientific workflow ensembles in IaaS clouds." Future Generation Computer Systems 48 (2015): 1-18.
- Vasile, Mihaela-Andreea, Florin Pop, Radu-Ioan Tutueanu, Valentin Cristea, and Joanna Kołodziej. "Resource-aware hybrid scheduling algorithm in heterogeneous distributed computing." Future Generation Computer Systems 51 (2015): 61-71.
- Li, Jiayin, Meikang Qiu, Zhong Ming, Gang Quan, Xiao Qin, and Zonghua Gu. "Online optimization for scheduling preemptable tasks on IaaS cloud systems." Journal of parallel and Distributed Computing 72, no. 5 (2012): 666-677.
- Sahu, Babuli, Sangram Keshari Swain, Sudheer Mangalampalli, and Satyasis Mishra. "Multiobjective Prioritized Workflow Scheduling in Cloud Computing Using Cuckoo Search Algorithm." Applied Bionics and Biomechanics 2023, no. 1 (2023): 4350615.
- Singh, Vishakha, Indrajeet Gupta, and Prasanta K. Jana. "An energy efficient algorithm for workflow scheduling in IAAS cloud." Journal of Grid Computing 18 (2020): 357-376.
- Gao, Yongqiang, Shuyun Zhang, and Jiantao Zhou. "A hybrid algorithm for multi-objective scientific workflow scheduling in IaaS cloud." IEEE Access 7 (2019): 125783-125795.
- Jain, Shubham, and Jasraj Meena. "Workflow scheduling algorithms in cloud computing: an analysis, analogy, and provocations." In Innovations in Computer Science and Engineering: Proceedings of the Sixth ICICSE 2018,. Springer Singapore, 2019. pp. 499-508
- Wu, Quanwang, Fuyuki Ishikawa, Qingsheng Zhu, Yunni Xia, and Junhao Wen. "Deadline-constrained cost optimization approaches for workflow scheduling in clouds." IEEE Transactions on Parallel and Distributed Systems 28, no. 12 (2017): 3401-3412.
