Matches in SemOpenAlex for { <https://semopenalex.org/work/W2929242575> ?p ?o ?g. }
- W2929242575 endingPage "39982" @default.
- W2929242575 startingPage "39974" @default.
- W2929242575 abstract "Cloud Computing provides an effective platform for executing large-scale and complex workflow applications with a pay-as-you-go model. Nevertheless, various challenges, especially its optimal scheduling for multiple conflicting objectives, are yet to be addressed properly. The existing multi-objective workflow scheduling approaches are still limited in many ways, e.g., encoding is restricted by prior experts’ knowledge when handling a dynamic real-time problem, which strongly influences the performance of scheduling. In this paper, we apply a deep-Q-network model in a multi-agent reinforcement learning setting to guide the scheduling of multi-workflows over infrastructure-as-a-service clouds. To optimize multi-workflow completion time and user’s cost, we consider a Markov game model, which takes the number of workflow applications and heterogeneous virtual machines as state input and the maximum completion time and cost as rewards. The game model is capable of seeking for correlated equilibrium between make-span and cost criteria without prior experts’ knowledge and converges to the correlated equilibrium policy in a dynamic real-time environment. To validate our proposed approach, we conduct extensive case studies based on multiple well-known scientific workflow templates and Amazon EC2 cloud. The experimental results clearly suggest that our proposed approach outperforms traditional ones, e.g., non-dominated sorting genetic algorithm-II, multi-objective particle swarm optimization, and game-theoretic-based greedy algorithms, in terms of optimality of scheduling plans generated." @default.
- W2929242575 created "2019-04-11" @default.
- W2929242575 creator A5005763018 @default.
- W2929242575 creator A5016805696 @default.
- W2929242575 creator A5040080768 @default.
- W2929242575 creator A5064190343 @default.
- W2929242575 creator A5064993304 @default.
- W2929242575 creator A5069464645 @default.
- W2929242575 creator A5071083753 @default.
- W2929242575 creator A5080478930 @default.
- W2929242575 date "2019-01-01" @default.
- W2929242575 modified "2023-10-14" @default.
- W2929242575 title "Multi-Objective Workflow Scheduling With Deep-Q-Network-Based Multi-Agent Reinforcement Learning" @default.
- W2929242575 cites W1966769064 @default.
- W2929242575 cites W2040262586 @default.
- W2929242575 cites W2098781560 @default.
- W2929242575 cites W2123432324 @default.
- W2929242575 cites W2126105956 @default.
- W2929242575 cites W2150062570 @default.
- W2929242575 cites W2165171393 @default.
- W2929242575 cites W2343505381 @default.
- W2929242575 cites W2469321762 @default.
- W2929242575 cites W2488745305 @default.
- W2929242575 cites W2507363050 @default.
- W2929242575 cites W2546571074 @default.
- W2929242575 cites W2559975580 @default.
- W2929242575 cites W2567554004 @default.
- W2929242575 cites W2581327637 @default.
- W2929242575 cites W2592981353 @default.
- W2929242575 cites W2737551799 @default.
- W2929242575 cites W2753661786 @default.
- W2929242575 cites W2783038397 @default.
- W2929242575 cites W2784017215 @default.
- W2929242575 cites W2794654330 @default.
- W2929242575 cites W2798925681 @default.
- W2929242575 cites W2800698154 @default.
- W2929242575 cites W2811338889 @default.
- W2929242575 cites W2817612004 @default.
- W2929242575 cites W2870777968 @default.
- W2929242575 cites W2890673770 @default.
- W2929242575 cites W2892008910 @default.
- W2929242575 cites W2892375454 @default.
- W2929242575 cites W2892501391 @default.
- W2929242575 cites W2897510551 @default.
- W2929242575 cites W2898726528 @default.
- W2929242575 doi "https://doi.org/10.1109/access.2019.2902846" @default.
- W2929242575 hasPublicationYear "2019" @default.
- W2929242575 type Work @default.
- W2929242575 sameAs 2929242575 @default.
- W2929242575 citedByCount "179" @default.
- W2929242575 countsByYear W29292425752019 @default.
- W2929242575 countsByYear W29292425752020 @default.
- W2929242575 countsByYear W29292425752021 @default.
- W2929242575 countsByYear W29292425752022 @default.
- W2929242575 countsByYear W29292425752023 @default.
- W2929242575 crossrefType "journal-article" @default.
- W2929242575 hasAuthorship W2929242575A5005763018 @default.
- W2929242575 hasAuthorship W2929242575A5016805696 @default.
- W2929242575 hasAuthorship W2929242575A5040080768 @default.
- W2929242575 hasAuthorship W2929242575A5064190343 @default.
- W2929242575 hasAuthorship W2929242575A5064993304 @default.
- W2929242575 hasAuthorship W2929242575A5069464645 @default.
- W2929242575 hasAuthorship W2929242575A5071083753 @default.
- W2929242575 hasAuthorship W2929242575A5080478930 @default.
- W2929242575 hasBestOaLocation W29292425751 @default.
- W2929242575 hasConcept C105795698 @default.
- W2929242575 hasConcept C106189395 @default.
- W2929242575 hasConcept C107568181 @default.
- W2929242575 hasConcept C111919701 @default.
- W2929242575 hasConcept C119857082 @default.
- W2929242575 hasConcept C120314980 @default.
- W2929242575 hasConcept C126255220 @default.
- W2929242575 hasConcept C154945302 @default.
- W2929242575 hasConcept C159886148 @default.
- W2929242575 hasConcept C177212765 @default.
- W2929242575 hasConcept C206729178 @default.
- W2929242575 hasConcept C31258907 @default.
- W2929242575 hasConcept C33923547 @default.
- W2929242575 hasConcept C41008148 @default.
- W2929242575 hasConcept C5119721 @default.
- W2929242575 hasConcept C77088390 @default.
- W2929242575 hasConcept C79974875 @default.
- W2929242575 hasConcept C97541855 @default.
- W2929242575 hasConceptScore W2929242575C105795698 @default.
- W2929242575 hasConceptScore W2929242575C106189395 @default.
- W2929242575 hasConceptScore W2929242575C107568181 @default.
- W2929242575 hasConceptScore W2929242575C111919701 @default.
- W2929242575 hasConceptScore W2929242575C119857082 @default.
- W2929242575 hasConceptScore W2929242575C120314980 @default.
- W2929242575 hasConceptScore W2929242575C126255220 @default.
- W2929242575 hasConceptScore W2929242575C154945302 @default.
- W2929242575 hasConceptScore W2929242575C159886148 @default.
- W2929242575 hasConceptScore W2929242575C177212765 @default.
- W2929242575 hasConceptScore W2929242575C206729178 @default.
- W2929242575 hasConceptScore W2929242575C31258907 @default.
- W2929242575 hasConceptScore W2929242575C33923547 @default.
- W2929242575 hasConceptScore W2929242575C41008148 @default.
- W2929242575 hasConceptScore W2929242575C5119721 @default.