Providing a Solution for Processing Heterogeneous Tasks in Cloud Computing Using Distributed Resource Allocation

سال انتشار: 1404
نوع سند: مقاله ژورنالی
زبان: انگلیسی
مشاهده: 44

فایل این مقاله در 14 صفحه با فرمت PDF قابل دریافت می باشد

استخراج به نرم افزارهای پژوهشی:

لینک ثابت به این مقاله:

شناسه ملی سند علمی:

JR_JRMDE-4-3_013

تاریخ نمایه سازی: 7 مهر 1404

چکیده مقاله:

In this study, a novel approach is presented for processing heterogeneous tasks in Cloud Computing environments by leveraging optimal distributed resource allocation. The primary objective is to enhance processing efficiency and achieve effective resource utilization in conditions where tasks have diverse characteristics, varying data volumes, and different computational requirements. The proposed method models tasks and resources as a directed acyclic graph and employs a multi-objective optimization algorithm to perform resource allocation in a way that not only reduces the overall processing time but also ensures load balancing among resources. This approach, by incorporating priority queues and execution time analysis for each subtask, enables the selection of the most appropriate resource for each task. The simulation results indicate that the proposed method achieves significant improvements over conventional algorithms in reducing the overall job completion time, increasing resource utilization rates, and enhancing the quality of service in heterogeneous task processing. In this study, a novel approach is presented for processing heterogeneous tasks in Cloud Computing environments by leveraging optimal distributed resource allocation. The primary objective is to enhance processing efficiency and achieve effective resource utilization in conditions where tasks have diverse characteristics, varying data volumes, and different computational requirements. The proposed method models tasks and resources as a directed acyclic graph and employs a multi-objective optimization algorithm to perform resource allocation in a way that not only reduces the overall processing time but also ensures load balancing among resources. This approach, by incorporating priority queues and execution time analysis for each subtask, enables the selection of the most appropriate resource for each task. The simulation results indicate that the proposed method achieves significant improvements over conventional algorithms in reducing the overall job completion time, increasing resource utilization rates, and enhancing the quality of service in heterogeneous task processing.

مراجع و منابع این مقاله:

لیست زیر مراجع و منابع استفاده شده در این مقاله را نمایش می دهد. این مراجع به صورت کاملا ماشینی و بر اساس هوش مصنوعی استخراج شده اند و لذا ممکن است دارای اشکالاتی باشند که به مرور زمان دقت استخراج این محتوا افزایش می یابد. مراجعی که مقالات مربوط به آنها در سیویلیکا نمایه شده و پیدا شده اند، به خود مقاله لینک شده اند :
  • Abrishami, S., Naghibzadeh, M., & Epema, D. H. (2013). Deadline-constrained ...
  • Alqatan, S., Alshirah, M., Baker, M. B., Khafajeh, H., & ...
  • Arabnejad, H., & Barbosa, J. G. (2014). List scheduling algorithm ...
  • Azami, M., Nader Shahi, M., & Hosseini, S. N. (2024). ...
  • Deb, K., & Jain, H. (2014). An evolutionary many-objective optimization ...
  • Doe, J., & Smith, A. (2024). Static resource allocation strategies ...
  • Doldi, A., Mozesi, A., & Gurji, M. B. (2023). Designing ...
  • Fard, H. M., Prodan, R., & Fahringer, T. (2012). Multi-objective ...
  • Hao, Y., Qiu, Z., Xu, Q., He, Q., Fang, X., ...
  • IBM Quantum Experience. (2023). Cloud-Based Quantum Computing. https://quantum-computing.ibm.com/ ...
  • Kaur, A., & Chana, I. (2014). Energy aware scheduling of ...
  • Khasawneh, D. N. A. S., Khasawneh, A. J., Khasawneh, D. ...
  • Khorsand, R., & Sharifi, M. (2014). A hybrid heuristic algorithm ...
  • Kim, H., & Lee, S. (2024). Reinforcement learning-based resource allocation ...
  • Kmaleh, A. I. M. (2023). The Impact of Using the ...
  • Lăzăroiu, G. (2023). Artificial Intelligence Algorithms and Cloud Computing Technologies ...
  • Li, K., Xu, G., Zhao, G., Dong, Y., & Wang, ...
  • Mell, P., & Grance, T. (2011). The NIST definition of ...
  • Panda, S. K., Jana, P. K., & Ghosh, S. (2016). ...
  • Pham, Q. V., & Huh, E. N. (2016). Towards task ...
  • Sharma, R. K. (2023). Thematic Analysis of Big Data in ...
  • Singh, K. D. (2024). Fog Cloud Computing and IoT Integration ...
  • Tsai, C. W., & Rodrigues, J. J. (2014). Metaheuristic scheduling ...
  • Wang, H., & Rahman, M. (2025). Intelligent resource allocation optimization ...
  • نمایش کامل مراجع