4.7 Article

Real-time and dynamic fault-tolerant scheduling for scientific workflows in clouds

Journal

INFORMATION SCIENCES
Volume 568, Issue -, Pages 13-39

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2021.03.003

Keywords

Cloud computing; Fault-tolerant workflow scheduling; Replication; Checkpointing; Rescheduling; Delay execution

Funding

  1. National Natural Science Foundation of China [61802095, 61802167, 61572162]
  2. Zhejiang Provincial Key Science and Technology Project Foundation [2018C01012]
  3. Key Program of Research and Development of China [2016YFC0800803]
  4. VC Research [VCR 0000057]

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This paper proposes a real-time and dynamic fault-tolerant scheduling algorithm for executing scientific workflows in the cloud, which can simultaneously handle different types of failures and improve resource utilization.
Cloud computing has become a popular technology for executing scientific workflows. However, with a large number of hosts and virtual machines (VMs) being deployed, the cloud resource failures, such as the permanent failure of hosts (HPF), the transient failure of hosts (HTF), and the transient failure of VMs (VMTF), bring the service reliability problem. Therefore, fault tolerance for time-consuming scientific workflows is highly essential in the cloud. However, existing fault-tolerant (FT) approaches consider only one or two above failure types and easily neglect the others, especially for the HTF. This paper proposes a Real-time and dynamic Fault-tolerant Scheduling (ReadyFS) algorithm for scientific workflow execution in a cloud, which guarantees deadline constraints and improves resource utilization even in the presence of any resource failure. Specifically, we first introduce two FT mechanisms, i.e., the replication with delay execution (RDE) and the check pointing with delay execution (CDE), to cope with HPF and VMTF, simultaneously. Additionally, the rescheduling (ReSC) is devised to tackle the HTF that affects the resource availability of the entire cloud datacenter. Then, the resource adjustment (RA) strategy, including the resource scaling-up (RS-Up) and the resource scaling-down (RS-Down), is used to adjust resource demands and improve resource utilization dynamically. Finally, the ReadyFS algorithm is presented to schedule real-time scientific workflows by combining all the above FT mechanisms with RA strategy. We conduct the performance evaluation with real-world scientific workflows and compare ReadyFS with five vertical comparison algorithms and three horizontal comparison algorithms. Simulation results confirm that ReadyFS is indeed able to guarantee the fault tolerance of scientific workflow execution and improve cloud resource utilization. (c) 2021 Elsevier Inc. All rights reserved.

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