Cloud Workflow Task and Virtualized Resource Collaborative Adaptive Scheduling Algorithm Based on Distributed Deep Learning | IEEE Conference Publication | IEEE Xplore

Cloud Workflow Task and Virtualized Resource Collaborative Adaptive Scheduling Algorithm Based on Distributed Deep Learning


Abstract:

Cloud workflow task scheduling and resource allocation are core issues in cloud computing environment. Balancing the quality of user service and the revenue of service pr...Show More

Abstract:

Cloud workflow task scheduling and resource allocation are core issues in cloud computing environment. Balancing the quality of user service and the revenue of service providers is a challenge in cloud workflow task scheduling and resource allocation. Therefore, we propose a cloud workflow task and virtualized resource collaborative adaptive scheduling algorithm based on heterogeneous distributed deep learning. This solves the multi-queue multi-cluster workflow task scheduling and resource allocation problem by combining multiple heterogeneous deep neural networks as the scheduling model of the cloud system. An optimal scheduling strategy is generated by minimizing the workflow task delay and energy consumption. Results from extensive experiments show that the proposed framework can effectively solve the multi-objective optimization problem of cloud Workflow task scheduling and resource allocation, and provide a nearly optimal scheduling strategy.
Date of Conference: 25-27 August 2020
Date Added to IEEE Xplore: 06 October 2020
ISBN Information:
Conference Location: Dalian, China
Citations are not available for this document.

I. Introduction

The development of cloud computing has promoted the rapid development of the entire information industry. The computing power and storage capacity of the cloud computing platform can meet the needs of different users and provide high-quality customized services. The quality of a cloud platform's scheduling strategy determines its service quality and operating profit [1], so cloud Workflow task scheduling and resource allocation optimization have always been core issues.

Cites in Papers - |

Cites in Papers - IEEE (1)

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1.
Yifan Zhu, Bo Hu, "Smart-mDAG: An Intelligent Scheduling Method for Multi-DAG Jobs", 2021 International Conference on Information and Communication Technology Convergence (ICTC), pp.110-115, 2021.

Cites in Papers - Other Publishers (5)

1.
Rozin Majeed Abdullah, Lozan M. Abdulrahman, Nasiba M. Abdulkareem, Azar Abid Salih, "Modular Platforms based on Clouded Web Technology and Distributed Deep Learning Systems", Journal of Smart Internet of Things, vol.2023, no.2, pp.154, 2023.
2.
Nagresh Kumar, Sanjay Kumar Sharma, "A Cost-Effective and Scalable Processing of Heavy Workload with AWS Batch", International Journal of Electrical and Electronics Research, vol.10, no.2, pp.144, 2022.
3.
Mohammed Otair, Areej Alhmoud, Heming Jia, Maryam Altalhi, Ahmad MohdAziz Hussein, Laith Abualigah, "Optimized task scheduling in cloud computing using improved multi-verse optimizer", Cluster Computing, vol.25, no.6, pp.4221, 2022.
4.
Qirui Li, Zhiping Peng, Delong Cui, Jianpeng Lin, Jieguang He, "MHDNNL", International Journal of Information Technology and Web Engineering, vol.17, no.1, pp.1, 2022.
5.
Tianxing Xie, Chunlin Li, Na Hao, Youlong Luo, "Multi-objective optimization of data deployment and scheduling based on the minimum cost in geo-distributed cloud", Computer Communications, vol.185, pp.142, 2022.
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References

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