[
1. Singh, M. An Overview of Grid Computing. – In: Proc. of International Conference on Computing, Communication, and Intelligent Systems (ICCCIS’19), 2019.10.1109/ICCCIS48478.2019.8974490
]Search in Google Scholar
[
2. Sungkar, A., T. Kogoya. A Review of Grid Computing. – Computer Science & IT Research Journal, Vol. 1, 2020.10.51594/csitrj.v1i1.128
]Search in Google Scholar
[
3. Dakkak, O., S. A. Nor, S. Arif, Y. Fazea. Improving QoS for Non-Trivial Applications in Grid Computing. – In: Proc. of International Conference of Reliable Information and Communication Technology, 2019.10.1007/978-3-030-33582-3_52
]Search in Google Scholar
[
4. Foster, I., C. Kesselman. Translating the Grid: How a Translational Approach Shaped the Development of Grid Computing. – Journal of Computational Science, Vol. 52, 2021.10.1016/j.jocs.2020.101214
]Search in Google Scholar
[
5. Aswal, M. S. VM Consolidation Plan for Improving the Energy Efficiency of Cloud. – Cybernetics and Information Technologies, Vol. 21, 2021, No 3, pp. 145-159.10.2478/cait-2021-0035
]Search in Google Scholar
[
6. Dhingra, S., P. Bansal. Employing Divergent Machine Learning Classifiers to Upgrade the Preciseness of Image Retrieval Systems. – Cybernetics and Information Technologies, Vol. 20, 2020, No 3.10.2478/cait-2020-0029
]Search in Google Scholar
[
7. Kara, N., H. G. Kocken. A Fuzzy Approach to Multi-Objective Solid Transportation Problem with Mixed Constraints Using Hyperbolic Membership Function. – Cybernetics and Information Technologies, Vol. 21, 2021, No 4, pp. 158-167.10.2478/cait-2021-0049
]Search in Google Scholar
[
8. Kouadri, A., M. Hajji, M. F. Harkat, K. Abodayeh, M. Mansouri, H. Nounou, M. Nounou. Hidden Markov Model Based Principal Component Analysis for Intelligent Fault Diagnosis of Wind Energy Converter Systems. – Renewable Energy, Vol. 150, 2020.10.1016/j.renene.2020.01.010
]Search in Google Scholar
[
9. Goh, C. Y., J. Dauwels, N. Mitrovic, M. T. Asif, A. Oran, P. Jaillet. Online Map-Matching Based on Hidden Markov Model for Real-Time Traffic Sensing Applications. – In: Proc. of 15th International IEEE Conference on Intelligent Transportation Systems, 2012.10.1109/ITSC.2012.6338627
]Search in Google Scholar
[
10. Mor, B., S. Garhwal, A. Kumar. A Systematic Review of Hidden Markov Models and Their Applications. – Archives of Computational Methods in Engineering, Vol. 28, 2021.10.1007/s11831-020-09422-4
]Search in Google Scholar
[
11. Deli, I., S. Broumi. Neutrosophic Soft Matrices and NSM-Decision Making. – Journal of Intelligent & Fuzzy Systems, Vol. 28, 2015.10.3233/IFS-141505
]Search in Google Scholar
[
12. Kokoç, M., S. Ersoz. New Ranking Functions for Interval-Valued Intuitionistic Fuzzy Sets and Their Application to Multi-Criteria Decision-Making Problem. – Cybernetics and Information Technologies, Vol. 21, 2021, No 1, pp. 3-18.10.2478/cait-2021-0001
]Search in Google Scholar
[
13. Deli, I., S. Eraslan, N. Çagman. IVNPIV-Neutrosophic Soft Sets and Their Decision Making Based on Similarity Measure. – Neural Computing and Applications, Vol. 29, 2018.10.1007/s00521-016-2428-z
]Search in Google Scholar
[
14. Ali, M., L. H. Son, I. Deli, N. D. Tien. Bipolar Neutrosophic Soft Sets and Applications in Decision Making. – Journal of Intelligent & Fuzzy Systems, Vol. 33, 2017.10.3233/JIFS-17999
]Search in Google Scholar
[
15. Deli, I., S. Broumi. Neutrosophic Soft Relations and Some Properties. – Annals of Fuzzy Mathematics and Informatics, Vol. 9, 2015.
]Search in Google Scholar
[
16. Singh, S., S. Lalotra, A. H. Ganie. On Some Knowledge Measures of Intuitionistic Fuzzy Sets of Type-Two with Application to MCDM. – Cybernetics and Information Technologies, Vol. 20, 2020, No 1, pp. 3-20.10.2478/cait-2020-0001
]Search in Google Scholar
[
17. Naeem, K., M. Riaz, D. Afzal. Fuzzy Neutrosophic Soft σ-Algebra and Fuzzy Neutrosophic Soft Measure with Applications. – Journal of Intelligent & Fuzzy Systems, Vol. 39, 2020.10.3233/JIFS-191062
]Search in Google Scholar
[
18. Fan, J., Z. Wang, Y. Xie, Z. Yang. A Theoretical Analysis of Deep Q-Learning. – In: Learning for Dynamics and Control, 2020.
]Search in Google Scholar
[
19. Samma, H., J. Mohamad-Saleh, S. A. Suandi, B. Lahasan. Q-Learning-Based Simulated Annealing Algorithm for Constrained Engineering Design Problems. – Neural Computing and Applications, Vol. 32, 2020, pp. 5147-5161.10.1007/s00521-019-04008-z
]Search in Google Scholar
[
20. Wang, Y., Y. Liu, W. Chen, Z. M. Ma, T. Y. Liu. Target Transfer Q-Learning and Its Convergence Analysis. – Neurocomputing, Vol. 392, 2020.10.1016/j.neucom.2020.02.117
]Search in Google Scholar
[
21. Jeong, G., H. Y. Kim. Improving Financial Trading Decisions Using Deep Q-Learning: Predicting the Number of Shares, Action Strategies, and Transfer Learning. – Expert Systems with Applications, Vol. 117, 2019.10.1016/j.eswa.2018.09.036
]Search in Google Scholar
[
22. Khan, S., B. Nazir, I. A. Khan, S. Shamshirband, A. T. Chronopoulos. Load Balancing in Grid Computing: Taxonomy, Trends and Opportunities. – Journal of Network and Computer Applications, Vol. 88, 2017.10.1016/j.jnca.2017.02.013
]Search in Google Scholar
[
23. Wenjie, T., Y. Yiping, Z. Feng, L. Tianlin, S. Xiao. A Work-Stealing Based Dynamic Load Balancing Algorithm for Conservative Parallel Discrete Event Simulation. – In: Proc. of Winter Simulation Conference (WSC’17), 2017.10.1109/WSC.2017.8247833
]Search in Google Scholar
[
24. Wu, J., X. Xu, P. Zhang, C. Liu. A Novel Multi-Agent Reinforcement Learning Approach for Job Scheduling in Grid Computing. – Future Generation Computer Systems, Vol. 27, 2011.10.1016/j.future.2010.10.009
]Search in Google Scholar
[
25. Hajoui, Y., O. Bouattane, M. Youssfi, E. Illoussamen. Q-Learning Applied to the Problem of Scheduling on Heterogeneous Architectures. – International Journal of Computer Science and Network Security, Vol. 18, 2018.
]Search in Google Scholar
[
26. Garcia-Galan, S., R. P. Prado, J. M. Expósito. Fuzzy Scheduling with Swarm Intelligence-Based Knowledge Acquisition for Grid Computing. – Engineering Applications of Artificial Intelligence, Vol. 25, 2012.10.1016/j.engappai.2011.11.002
]Search in Google Scholar
[
27. Tang, K., W. Jiang, R. Cui, Y. Wu. A Memory-Based Task Scheduling Algorithm for Grid Computing Based on Heterogeneous Platform and Homogeneous Tasks. – International Journal of Web and Grid Services, Vol. 16, 2020.10.1504/IJWGS.2020.109473
]Search in Google Scholar
[
28. Patni, J. C. Centralized Approach of Load Balancing in Homogenous Grid Computing Environment. – In: Proc. of 3rd International Conference on Computers in Management and Business, 2020, pp. 151-156.10.1145/3383845.3383877
]Search in Google Scholar
[
29. Ali, W., F. Bouakkaz. Agent Based Load Balancing in Grid Computing. – In: Proc. of Multi-Agent Systems-Theory, Implementation and Applications. IntechOpen, 2020.10.5772/intechopen.94219
]Search in Google Scholar
[
30. Liu, F., D. Janssens, J. Cui, G. Wets, M. Cools. Characterizing Activity Sequences Using Profile Hidden Markov Models. – Expert Systems with Applications, Vol. 42, 2015.10.1016/j.eswa.2015.02.057
]Search in Google Scholar
[
31. Walker, C. R., A. Scally, N. De Maio, N. Goldman. Short-Range Template Switching in Great Ape Genomes Explored Using Pair Hidden Markov Models. – PloS Genetics, Vol. 17, 2021.10.1371/journal.pgen.1009221795435633651813
]Search in Google Scholar
[
32. Braun, T. D., et al. A Comparison of Eleven Static Heuristics for Mapping a Class of Independent Tasks onto Heterogeneous Distributed Computing Systems. – J. Parallel Distrib. Comput., Vol. 61, 2001, No 6, pp. 810-837.10.1006/jpdc.2000.1714
]Search in Google Scholar
[
33. Lebre, A., A. Legrand, F. Suter, P. Veyre. Adding Storage Simulation Capacities to the Simgrid Toolkit: Concepts, Models, and Api. – In: Proc. of 15th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing, 2015, pp. 251-260.10.1109/CCGrid.2015.134
]Search in Google Scholar
[
34. Cordery, J. L., D. Morrison, B. M. Wright, T. D. Wall. The Impact of Autonomy and Task Uncertainty on Team Performance: A Longitudinal Field Study. – Journal of Organizational Behavior, Vol. 31, 2010.10.1002/job.657
]Search in Google Scholar
[
35. Real, R., A. Yamin, L. da Silva, G. Frainer, I. Augustin, J. Barbosa, C. Geyer. Resource Scheduling on Grid: Handling Uncertainty. – In: Proc. of 1st Latin American Web Congress, 2003.
]Search in Google Scholar