CHALLENGES OF INFLUENCE DYNAMIC AND INTERACTIVE EVENTS ON RESOURCE DISCOVERY FUNCTIONALITY OUTSIDE OF DISTRIBUTED EXASCALE SYSTEMS

Volume 3 (2), December 2020, Pages 164-180

Shakiba Rezaei1, Ehsan Mousavi Khaneghah1, Araz R. Aliev2


1Department of Computer Engineering, Faculty Engineering, Shahed University, Tehran, Iran, This email address is being protected from spambots. You need JavaScript enabled to view it., This email address is being protected from spambots. You need JavaScript enabled to view it.;

2High Performance Computing Research Advance Center, Department of General and Applied Mathematics, Azerbaijan State Oil and Industry University, Baku, Azerbaijan, This email address is being protected from spambots. You need JavaScript enabled to view it.


Abstract

The resource discovery in Exascale systems should support the occurrence of dynamic nature in each stakeholder's elements in the resource discovery process. The occurrence of dynamic and interactive nature in the accountable computational element creates challenges in executing the activities related to resource discovery, such as the continuation of the response to the request, granting access rights, and the resource allocation to the process. In the case of a lack of management and dynamic and interactive event control in the accountable computational element, the process of activities related to the resource discovery will fail. In this paper, we first examine the concept function of resource discovery in the accountable computational element. Then, to analyze the effects of occurrence, dynamic, and interactive event effects on resource discovery function in the accountable computational element are discussed. The purpose of this paper is to analyze the use of the traditional resource discovery in the Exascale distributed systems and investigate the factors that should be considered in the function of resource discovery management to have the possibility of application in the Exascale distributed system.

Keywords:

Resource Discovery, Dynamic and Interactive Events, Response Computing Unit, Functionality, Out of Systems.

DOI: https://doi.org/10.32010/26166127.2020.3.2.164.180

 

 

Reference 

Adibi, E., & Khaneghah, E. M. (2018). Challenges of resource discovery to support distributed exascale computing environment. Azerbaijan J. High Pefrom. Comput., 1(2), 168-178.

Adibi, E., & Khaneghah, E. M. (2020). ExaRD: introducing a framework for empowerment of resource discovery to support distributed exascale computing systems with high consistency. Cluster Computing, 23, 3349-3369.

Alzboon, M. S., Arif, A. S., & Mahmuddin, M. (2016). Towards self-resource discovery and selection models in grid computing. ARPN J. Eng. Appl. Sci, 11(10), 6269-6274.

Alzboon, M. S., Mahmuddin, M., & Arif, S. (2019, September). Resource Discovery Mechanisms in Shared Computing Infrastructure: A Survey. In International Conference of Reliable Information and Communication Technology (pp. 545-556). Springer, Cham.

Anderson, D. P. (2019). Boinc: A platform for volunteer computing. Journal of Grid Computing, 1-24.

Bharti, M., Kumar, R., & Saxena, S. (2018). Clustering‐based resource discovery on Internet‐of‐Things. International Journal of Communication Systems, 31(5), e3501.

Bhattacharyya, S., Conradie, L., & Arezki, R. (2017). Resource discovery and the politics of fiscal decentralization. Journal of Comparative Economics, 45(2), 366-382.

Bidhendi, Z.E., Pouria F., Khaneghah E.M. (2019) Challenges of Using Unstructured P2P Systems to Support Distributed Exascale Computing. Azerbaijan Journal of High Performance Computing. 2 (1), 3-6.

Gharb, H., Khaneghah, E. M., et al. (2019) Challenges of Execution Trend in Distributed Exascale System. Journal of Distributed Computing and Systems, 2 (1), 140-151.

Jamal, A. A., & Teahan, W. J. (2017). Alpha multipliers breadth-first search technique for resource discovery in unstructured peer-to-peer networks. Int. J. Adv. Sci. Eng. Inf. Technol, 7(4), 1403-1412.

Kaur, M., & Kadam, S. S. (2017). Discovery of resources using MADM approaches for parallel and distributed computing. Engineering Science and Technology, An International Journal, 20(3), 1013-1024.

Kaur, M., & Kadam, S. S. (2017). Discovery of resources using MADM approaches for parallel and distributed computing. Engineering Science and Technology, An International Journal, 20(3), 1013-1024.

Khaneghah, E. M., & Sharifi, M. (2014). AMRC: an algebraic model for reconfiguration of high performance cluster computing systems at runtime. The Journal of Supercomputing, 67(1), 1-30.

Khaneghah, E. M., Aliev, A. R., Bakhishoff, U., & Adibi, E. (2018). The influence of exascale on resource discovery and defining an indicator. Azerbaijan J. High Peform. Comput., 1(1), 3-19.

Luppi, E. (2020). Introduction to Distributed Computing. TORUS 1–Toward an Open Resource Using Services: Cloud Computing for Environmental Data, 163-177.

Mengistu, T. M., & Che, D. (2019). Survey and taxonomy of volunteer computing. ACM Computing Surveys (CSUR), 52(3), 1-35.

Nickbakhsh, N., & Aghaei, M. R. S. (2017). Resource discovery algorithm based on hierarchical model and Conscious search in Grid computing system. Journal of Soft Computing and Applications, 2017(1), 24-43.

Prabhakaran, S., Doshi, K. A., & Bernat, F. G. (2019). U.S. Patent Application No. 16/241,891.

Singh, M. (2019, October). An Overview of Grid Computing. In 2019 International Conference on Computing, Communication, and Intelligent Systems (ICCCIS) (pp. 194-198). IEEE.

Zarrin, J., Aguiar, R. L., & Barraca, J. P. (2018). Resource discovery for distributed computing systems: A comprehensive survey. Journal of Parallel and Distributed Computing, 113, 127-166.