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Garbage Collector Refinement for New Dynamic Multimedia Applications on Embedded Systems.

, , , , , and . Interaction between Compilers and Computer Architectures, page 25-32. IEEE Computer Society, (2004)

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Unified data path allocation and BIST intrusion., , and . Integr., 28 (1): 55-99 (1999)A Unified Cloud-Enabled Discrete Event Parallel and Distributed Simulation Architecture., , , , and . CoRR, (2023)User-profile-based analytics for detecting cloud security breaches., , , , and . IEEE BigData, page 4529-4535. IEEE Computer Society, (2017)MAMUT: Multi-Agent Reinforcement Learning for Efficient Real-Time Multi-User Video Transcoding., , , , , and . DATE, page 558-563. IEEE, (2019)Revisiting Conventional Task Schedulers to Exploit Asymmetry in ARM big.LITTLE Architectures for Dense Linear Algebra., , , and . CoRR, (2015)Energy Characterization of Garbage Collectors for Dynamic Applications on Embedded Systems., , , , , and . PATMOS, volume 3728 of Lecture Notes in Computer Science, page 69-78. Springer, (2005)Data path structures and heuristics for testable allocation in high level synthesis., , , , and . Microprocess. Microprogramming, 39 (2-5): 263-266 (1993)Level-Spread: A New Job Allocation Policy for Dragonfly Networks., , , , , and . IPDPS, page 1123-1132. IEEE Computer Society, (2018)Performance Evaluation of Barrier Techniques for Distributed Tracing Garbage Collectors., , , and . PARCO, volume 33 of John von Neumann Institute for Computing Series, page 549-556. Central Institute for Applied Mathematics, Jülich, Germany, (2005)Distributed training and inference of deep learning solar energy forecasting models., , , , and . PDP, page 173-176. IEEE, (2023)