Scheduling algorithms for efficient execution of stream workflow applications in multicloud environments

Date

2022

Authors

Barika, M.
Garg, S.
Chan, A.
Calheiros, R.N.

Editors

Advisors

Journal Title

Journal ISSN

Volume Title

Type:

Journal article

Citation

IEEE Transactions on Services Computing, 2022; 15(2):860-875

Statement of Responsibility

Conference Name

Abstract

Big data processing applications are becoming more and more complex. They are no more monolithic in nature but instead they are composed of decoupled analytical processes in the form of a workflow. One type of such workflow applications is stream workflow application, which integrates multiple streaming big data applications to support decision making. Each analytical component of these applications runs continuously and processes data streams whose velocity will depend on several factors such as network bandwidth and processing rate of parent analytical component. As a consequence, the execution of these applications on cloud environments requires advanced scheduling techniques that adhere to end user's requirements in terms of data processing and deadline for decision making. In this paper, we propose two Multicloud scheduling and resource allocation techniques for efficient execution of stream workflow applications on Multicloud environments while adhering to workflow application and user performance requirements and reducing execution cost. Results showed that the proposed genetic algorithm is an adequate and effective for all experiments.

School/Discipline

Dissertation Note

Provenance

Description

Access Status

Rights

Copyright 2019 IEEE Access Condition Notes: Accepted manuscript available open access

License

Grant ID

Call number

Persistent link to this record