Affiliation:
1. Department of Computer Science, Prince Sultan University, Riyadh 11586, Saudi Arabia
Abstract
Efficient resource allocation is crucial in clusters with frugal Single-Board Computers (SBCs) possessing limited computational resources. These clusters are increasingly being deployed in edge computing environments in resource-constrained settings where energy efficiency and cost-effectiveness are paramount. A major challenge in Hadoop scheduling is load balancing, as frugal nodes within the cluster can become overwhelmed, resulting in degraded performance and frequent occurrences of out-of-memory errors, ultimately leading to job failures. In this study, we introduce an Adaptive Multi-criteria Selection for Efficient Resource Allocation (AMS-ERA) in Frugal Heterogeneous Hadoop Clusters. Our criterion considers CPU, memory, and disk requirements for jobs and aligns the requirements with available resources in the cluster for optimal resource allocation. To validate our approach, we deploy a heterogeneous SBC-based cluster consisting of 11 SBC nodes and conduct several experiments to evaluate the performance using Hadoop wordcount and terasort benchmark for various workload settings. The results are compared to the Hadoop-Fair, FOG, and IDaPS scheduling strategies. Our results demonstrate a significant improvement in performance with the proposed AMS-ERA, reducing execution time by 27.2%, 17.4%, and 7.6%, respectively, using terasort and wordcount benchmarks.
Reference45 articles.
1. Awaysheh, F.M., Tommasini, R., and Awad, A. (2023, January 2–8). Big Data Analytics from the Rich Cloud to the Frugal Edge. Proceedings of the 2023 IEEE International Conference on Edge Computing and Communications (EDGE), Chicago, IL, USA.
2. How to Unleash Frugal Innovation through Internet of Things and Artificial Intelligence: Moderating Role of Entrepreneurial Knowledge and Future Challenges;Qin;Technol. Forecast. Soc. Chang.,2024
3. The Development of a Low-Cost Big Data Cluster Using Apache Hadoop and Raspberry Pi. A Complete Guide;Neto;Comput. Electr. Eng.,2022
4. Vanderbauwhede, W. (2023). Frugal Computing—On the Need for Low-Carbon and Sustainable Computing and the Path towards Zero-Carbon Computing. arXiv.
5. Integrated Data, Task and Resource Management to Speed Up Processing Small Files in Hadoop Cluster;Chandramouli;Int. J. Intell. Eng. Syst.,2024