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A novel workflow scheduling with multi-criteria using particle swarm optimization for heterogeneous computing systems.

, , and . Clust. Comput., 23 (4): 3255-3271 (2020)

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A distributed fault-tolerant clustering algorithm for wireless sensor networks., , and . ICACCI, page 997-1002. IEEE, (2013)Design of Dependable Task Scheduling Algorithm in Cloud Environment., and . WCI, page 516-521. ACM, (2015)Quantum Inspired Genetic Algorithm for Relay Node Placement in Cluster Based Wireless Sensor Networks., , and . CICBA (1), volume 1030 of Communications in Computer and Information Science, page 381-391. Springer, (2018)Genetic algorithm approach for k-coverage and m-connected node placement in target based wireless sensor networks., , and . Comput. Electr. Eng., (2016)Energy efficient multipath routing for wireless sensor networks: A genetic algorithm approach., , and . ICACCI, page 1735-1740. IEEE, (2016)Coverage and connectivity aware energy efficient scheduling in target based wireless sensor networks: an improved genetic algorithm based approach., and . Wireless Networks, 25 (4): 1995-2011 (2019)GAR: An Energy Efficient GA-Based Routing for Wireless Sensor Networks., , and . ICDCIT, volume 7753 of Lecture Notes in Computer Science, page 267-277. Springer, (2013)A novel workflow scheduling with multi-criteria using particle swarm optimization for heterogeneous computing systems., , and . Clust. Comput., 23 (4): 3255-3271 (2020)Path Construction for Data Mule in Target Based Mobile Wireless Sensor Networks., , and . IBICA, volume 939 of Advances in Intelligent Systems and Computing, page 300-309. Springer, (2018)Feature Selection from Microarray Data based on Deep Learning Approach., , and . ICCCNT, page 1-5. IEEE, (2020)