Optimized Deep Learning Schemes for Secured Resource Allocation and Task Scheduling in Cloud Computing - A Survey

Main Article Content

Thirumalai Selvan Chenni Chetty, Martin Margala, Siva Shankar Subramanian, Prasun Chakrabarti

Abstract

Scheduling involves allocating shared resources gradually so that tasks can be completed within a predetermined time frame. In Task Scheduling (TS) and Resource Allocation (RA), the phrase is used independently for tasks and resources. Scheduling is widely used for Cloud Computing (CC), computer science, and operational management. Effective scheduling ensures that systems operate efficiently, decisions are made effectively, resources are used efficiently, costs are kept to a minimum, and productivity is increased. High energy consumption, lower CPU utilization, time consumption, and low robustness are the most frequent problems in TS and RA in CC. In this survey, RA and TS based on deep learning (DL) and machine learning (ML) were discussed. Additionally, look into the methods employed by DL-based RA and TS-based CC. Additionally, the benefits, drawbacks, advantages, disadvantages, and merits are explored. The work's primary contribution is an analysis and assessment of DL-based RA and TS methodologies that pinpoint problems with cloud computing.

Article Details

How to Cite
Thirumalai Selvan Chenni Chetty, et al. (2023). Optimized Deep Learning Schemes for Secured Resource Allocation and Task Scheduling in Cloud Computing - A Survey. International Journal on Recent and Innovation Trends in Computing and Communication, 11(10), 1863–1866. https://doi.org/10.17762/ijritcc.v11i10.8763
Section
Articles
Author Biography

Thirumalai Selvan Chenni Chetty, Martin Margala, Siva Shankar Subramanian, Prasun Chakrabarti

Thirumalai Selvan Chenni Chetty

Department of Computer Science and Engineering, GITAM school of technology, GITAM University,

Bengaluru, India-561203.

Martin Margala

School of Computing and Informatics, 

University of Louisiana at Lafayette,

 USA.

Siva Shankar Subramanian

Department of Computer Science    and Engineering,

KG Reddy College of Engineering and Technology

 RR district- 501504, Telangana, India.

Prasun Chakrabarti

Department of Computer Science and Engineering,

 ITM (SLS) Baroda University, 

Vadodara- 391510, Gujarat, lndia.