Otwarty dostęp

Research on Computational Load Balancing for Massively Parallel Tasks Based on Adaptive Iterative Algorithm

,  oraz   
29 wrz 2025

Zacytuj
Pobierz okładkę

Chen, R., Shi, J., Chen, Y., Zang, B., Guan, H., & Chen, H. (2019). Powerlyra: Differentiated graph computation and partitioning on skewed graphs. ACM Transactions on Parallel Computing (TOPC), 5(3), 1-39. ChenR., ShiJ., ChenY., ZangB., GuanH. & ChenH. (2019). Powerlyra: Differentiated graph computation and partitioning on skewed graphs. ACM Transactions on Parallel Computing (TOPC), 5(3), 1-39.Search in Google Scholar

Liu, C., Chen, H., Wang, S., Liu, Q., Jiang, Y. G., Zhang, D. W., ... & Zhou, P. (2020). Two-dimensional materials for next-generation computing technologies. Nature Nanotechnology, 15(7), 545-557. LiuC., ChenH., WangS., LiuQ., JiangY. G., ZhangD. W. ... & ZhouP. (2020). Two-dimensional materials for next-generation computing technologies. Nature Nanotechnology, 15(7), 545-557.Search in Google Scholar

Cui, J., Lu, Q., Zhong, H., Tian, M., & Liu, L. (2018). A load-balancing mechanism for distributed SDN control plane using response time. IEEE transactions on network and service management, 15(4), 1197-1206. CuiJ., LuQ., ZhongH., TianM. & LiuL. (2018). A load-balancing mechanism for distributed SDN control plane using response time. IEEE transactions on network and service management, 15(4), 1197-1206.Search in Google Scholar

Zhang, W., Gao, B., Tang, J., Yao, P., Yu, S., Chang, M. F., ... & Wu, H. (2020). Neuro-inspired computing chips. Nature electronics, 3(7), 371-382. ZhangW., GaoB., TangJ., YaoP., YuS., ChangM. F. ... & WuH. (2020). Neuro-inspired computing chips. Nature electronics, 3(7), 371-382.Search in Google Scholar

Chen, J., Li, K., Bilal, K., Li, K., & Philip, S. Y. (2018). A bi-layered parallel training architecture for large-scale convolutional neural networks. IEEE transactions on parallel and distributed systems, 30(5), 965-976. ChenJ., LiK., BilalK., LiK. & PhilipS. Y. (2018). A bi-layered parallel training architecture for large-scale convolutional neural networks. IEEE transactions on parallel and distributed systems, 30(5), 965-976.Search in Google Scholar

Chen, X., Zhang, H., Wu, C., Mao, S., Ji, Y., & Bennis, M. (2018). Optimized computation offloading performance in virtual edge computing systems via deep reinforcement learning. IEEE Internet of Things Journal, 6(3), 4005-4018. ChenX., ZhangH., WuC., MaoS., JiY. & BennisM. (2018). Optimized computation offloading performance in virtual edge computing systems via deep reinforcement learning. IEEE Internet of Things Journal, 6(3), 4005-4018.Search in Google Scholar

Juarez, F., Ejarque, J., & Badia, R. M. (2018). Dynamic energy-aware scheduling for parallel task-based application in cloud computing. Future Generation Computer Systems, 78, 257-271. JuarezF., EjarqueJ. & BadiaR. M. (2018). Dynamic energy-aware scheduling for parallel task-based application in cloud computing. Future Generation Computer Systems, 78, 257-271.Search in Google Scholar

Xu, J., Chen, L., & Zhou, P. (2018, April). Joint service caching and task offloading for mobile edge computing in dense networks. In IEEE INFOCOM 2018-IEEE Conference on Computer Communications (pp. 207-215). IEEE. XuJ., ChenL. & ZhouP. (2018, April). Joint service caching and task offloading for mobile edge computing in dense networks. In IEEE INFOCOM 2018-IEEE Conference on Computer Communications (pp. 207-215). IEEE.Search in Google Scholar

Jena, U. K., Das, P. K., & Kabat, M. R. (2022). Hybridization of meta-heuristic algorithm for load balancing in cloud computing environment. Journal of King Saud University-Computer and Information Sciences, 34(6), 2332-2342. JenaU. K., DasP. K. & KabatM. R. (2022). Hybridization of meta-heuristic algorithm for load balancing in cloud computing environment. Journal of King Saud University-Computer and Information Sciences, 34(6), 2332-2342.Search in Google Scholar

Wang, X., Han, Y., Wang, C., Zhao, Q., Chen, X., & Chen, M. (2019). In-edge ai: Intelligentizing mobile edge computing, caching and communication by federated learning. Ieee Network, 33(5), 156-165. WangX., HanY., WangC., ZhaoQ., ChenX. & ChenM. (2019). In-edge ai: Intelligentizing mobile edge computing, caching and communication by federated learning. Ieee Network, 33(5), 156-165.Search in Google Scholar

Rashid, Z. N., Zebari, S. R., Sharif, K. H., & Jacksi, K. (2018, October). Distributed cloud computing and distributed parallel computing: A review. In 2018 International Conference on Advanced Science and Engineering (ICOASE) (pp. 167-172). IEEE. RashidZ. N., ZebariS. R., SharifK. H. & JacksiK. (2018, October). Distributed cloud computing and distributed parallel computing: A review. In 2018 International Conference on Advanced Science and Engineering (ICOASE) (pp. 167-172). IEEE.Search in Google Scholar

Mishra, K., & Majhi, S. (2020). A state-of-art on cloud load balancing algorithms. International Journal of computing and digital systems, 9(2), 201-220. MishraK. & MajhiS. (2020). A state-of-art on cloud load balancing algorithms. International Journal of computing and digital systems, 9(2), 201-220.Search in Google Scholar

Kumar, P., & Kumar, R. (2019). Issues and challenges of load balancing techniques in cloud computing: A survey. ACM computing surveys (CSUR), 51(6), 1-35. KumarP. & KumarR. (2019). Issues and challenges of load balancing techniques in cloud computing: A survey. ACM computing surveys (CSUR), 51(6), 1-35.Search in Google Scholar

Ebadifard, F., & Babamir, S. M. (2018). A PSO-based task scheduling algorithm improved using a load-balancing technique for the cloud computing environment. Concurrency and Computation: Practice and Experience, 30(12), e4368. EbadifardF. & BabamirS. M. (2018). A PSO-based task scheduling algorithm improved using a load-balancing technique for the cloud computing environment. Concurrency and Computation: Practice and Experience, 30(12), e4368.Search in Google Scholar

Joshi, S., & Kumari, U. (2016, December). Load balancing in cloud computing: Challenges & issues. In 2016 2nd International Conference on Contemporary Computing and Informatics (IC3I) (pp. 120-125). IEEE. JoshiS. & KumariU. (2016, December). Load balancing in cloud computing: Challenges & issues. In 2016 2nd International Conference on Contemporary Computing and Informatics (IC3I) (pp. 120-125). IEEE.Search in Google Scholar

Devaraj, A. F. S., Elhoseny, M., Dhanasekaran, S., Lydia, E. L., & Shankar, K. (2020). Hybridization of firefly and improved multi-objective particle swarm optimization algorithm for energy efficient load balancing in cloud computing environments. Journal of Parallel and Distributed Computing, 142, 36-45. DevarajA. F. S., ElhosenyM., DhanasekaranS., LydiaE. L. & ShankarK. (2020). Hybridization of firefly and improved multi-objective particle swarm optimization algorithm for energy efficient load balancing in cloud computing environments. Journal of Parallel and Distributed Computing, 142, 36-45.Search in Google Scholar

Mishra, S. K., Sahoo, B., & Parida, P. P. (2020). Load balancing in cloud computing: a big picture. Journal of King Saud University-Computer and Information Sciences, 32(2), 149-158. MishraS. K., SahooB. & ParidaP. P. (2020). Load balancing in cloud computing: a big picture. Journal of King Saud University-Computer and Information Sciences, 32(2), 149-158.Search in Google Scholar

Pourghebleh, B., & Hayyolalam, V. (2020). A comprehensive and systematic review of the load balancing mechanisms in the Internet of Things. Cluster Computing, 23(2), 641-661. PourgheblehB. & HayyolalamV. (2020). A comprehensive and systematic review of the load balancing mechanisms in the Internet of Things. Cluster Computing, 23(2), 641-661.Search in Google Scholar

Ghomi, E. J., Rahmani, A. M., & Qader, N. N. (2017). Load-balancing algorithms in cloud computing: A survey. Journal of Network and Computer Applications, 88, 50-71. GhomiE. J., RahmaniA. M. & QaderN. N. (2017). Load-balancing algorithms in cloud computing: A survey. Journal of Network and Computer Applications, 88, 50-71.Search in Google Scholar

Latchoumi, T. P., & Parthiban, L. (2022). Quasi oppositional dragonfly algorithm for load balancing in cloud computing environment. Wireless Personal Communications, 122(3), 2639-2656. LatchoumiT. P. & ParthibanL. (2022). Quasi oppositional dragonfly algorithm for load balancing in cloud computing environment. Wireless Personal Communications, 122(3), 2639-2656.Search in Google Scholar

Zhang, J., Yu, F. R., Wang, S., Huang, T., Liu, Z., & Liu, Y. (2018). Load balancing in data center networks: A survey. IEEE Communications Surveys & Tutorials, 20(3), 2324-2352. ZhangJ., YuF. R., WangS., HuangT., LiuZ. & LiuY. (2018). Load balancing in data center networks: A survey. IEEE Communications Surveys & Tutorials, 20(3), 2324-2352.Search in Google Scholar

Neghabi, A. A., Navimipour, N. J., Hosseinzadeh, M., & Rezaee, A. (2018). Load balancing mechanisms in the software defined networks: a systematic and comprehensive review of the literature. IEEE access, 6, 14159-14178. NeghabiA. A., NavimipourN. J., HosseinzadehM. & RezaeeA. (2018). Load balancing mechanisms in the software defined networks: a systematic and comprehensive review of the literature. IEEE access, 6, 14159-14178.Search in Google Scholar

Thakur, V., & Kumar, S. (2018). A pragmatic study and analysis of load balancing techniques in parallel computing. In Information and Decision Sciences: Proceedings of the 6th International Conference on FICTA (pp. 447-454). Springer Singapore. ThakurV. & KumarS. (2018). A pragmatic study and analysis of load balancing techniques in parallel computing. In Information and Decision Sciences: Proceedings of the 6th International Conference on FICTA (pp. 447-454). Springer Singapore.Search in Google Scholar

Nada AbdElFattah Ibrahim, Ehab R. Mohamed, Hanaa M. Hamza, Yousef S. Alsahafi & Khalid M. Hosny. (2024). Masked face image segmentation using a multilevel threshold with a hybrid fitness function. Intelligent Systems with Applications 200445-200445. IbrahimNada AbdElFattah, MohamedEhab R., HamzaHanaa M., AlsahafiYousef S. & HosnyKhalid M.. (2024). Masked face image segmentation using a multilevel threshold with a hybrid fitness function. Intelligent Systems with Applications 200445-200445.Search in Google Scholar

Xiaoxuan Chen, Shuwen Xu, Shaohai Hu & Xiaole Ma. (2025). ACFNet: An adaptive cross-fusion network for infrared and visible image fusion. Pattern Recognition 111098-111098. ChenXiaoxuan, XuShuwen, HuShaohai & MaXiaole. (2025). ACFNet: An adaptive cross-fusion network for infrared and visible image fusion. Pattern Recognition 111098-111098.Search in Google Scholar

Ronghua Shang, Hangcheng Liu, Wenzheng Li, Weitong Zhang, Teng Ma & Licheng Jiao. (2024). An efficient evolutionary architecture search for variational autoencoder with alternating optimization and adaptive crossover. Swarm and Evolutionary Computation 101520-. ShangRonghua, LiuHangcheng, LiWenzheng, ZhangWeitong, MaTeng & JiaoLicheng. (2024). An efficient evolutionary architecture search for variational autoencoder with alternating optimization and adaptive crossover. Swarm and Evolutionary Computation 101520-.Search in Google Scholar

Język:
Angielski
Częstotliwość wydawania:
1 razy w roku
Dziedziny czasopisma:
Nauki biologiczne, Nauki biologiczne, inne, Matematyka, Matematyka stosowana, Matematyka ogólna, Fizyka, Fizyka, inne