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A novel multi-modal Federated Learning based thermal-aware job scheduling framework

Research Output: Contribution to journal Article Peer-review

Abstract

Cooling costs constitute more than half of the total data center energy expenditure. Thermal imbalance results in hotspot regions requiring additional cooling power. To reduce it, thermal aware job scheduling is a well-known software solution that is subject to predicting correct server temperatures. Existing solutions have not explored intelligent solutions and rely only on logic based algorithms to allocate tasks that work on predefined rules. Few deep learning based solutions that are proposed, have not explored its alternatives and existing data modalities in data centers, resulting in inefficient models. Existing literature only proposes solutions based on unimodal tabular data. Therefore, we propose a multimodal architecture that considers different underlying data modalities in data centers to increase the model's efficiency and predict correct server temperatures. The increasing production of data and the need for storage and processing units has led to the development of distributed data centers. Existing techniques are limited to individual data centers which fail to consider the data privacy restrictions that arise while dealing with distributed scenarios. Findings from our simulations affirm our proposed scheme in terms of the objectives mentioned above. We propose a federated learning architecture that efficiently deals with distributed data centers while ensuring privacy. Our simulation results show an overall increase in the efficiency of the model in comparison to an existing intelligent solution. Furthermore, we provide comparative results that show how our model performs better and achieves lower thermal imbalance as compared to an existing scheme.

Publication Information

Output type

Research Output: Contribution to journal Article Peer-review

Original language

English

Article number

110879

Journal (Volume, Issue Number)

Computer Networks (Volume 255)

Publication milestones

  • Accepted/In press - 23/10/2024
  • Published - 31/10/2024

Publication status

Published - 31/10/2024

ISSN

1389-1286

External Publication IDs

  • Scopus: 85208268854