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James Gleeson
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Protecting data on smartphones and tablets from memory attacks
P Colp, J Zhang, J Gleeson, S Suneja, E De Lara, H Raj, S Saroiu, ...
Proceedings of the Twentieth International Conference on Architectural …, 2015
1432015
RL-Scope: Cross-stack profiling for deep reinforcement learning workloads
J Gleeson, M Gabel, G Pekhimenko, E de Lara, S Krishnan, ...
Proceedings of Machine Learning and Systems 3, 783-799, 2021
122021
Crane: fast and migratable gpu passthrough for opencl applications
J Gleeson, D Kats, C Mei, E de Lara
Proceedings of the 10th ACM International Systems and Storage Conference, 1-13, 2017
62017
Heterogeneous {GPU} reallocation
J Gleeson, E De Lara
9th USENIX Workshop on Hot Topics in Cloud Computing (HotCloud 17), 2017
52017
Optimizing Data Collection in Deep Reinforcement Learning
J Gleeson, D Snider, Y Yang, M Gabel, E de Lara, G Pekhimenko
Third Workshop on Benchmarking Machine Learning Workloads on Emerging …, 2022
22022
GPU Encrypt: AES Encryption on Mobile Devices
J Gleeson, S Rajan, V Saini
22014
Technical report: Crane—Fast and Migratable GPU Passthrough for OpenCL applications
J Gleeson, D Kats, C Mei, E de Lara
University of Toronto, Toronto, Canada 12, 0
2
Minuet: Accelerating 3D sparse convolutions on GPUs
J Yang, C Giannoula, J Wu, M Elhoushi, J Gleeson, G Pekhimenko
arXiv preprint arXiv:2401.06145, 2023
2023
Managing, Profiling, and Optimizing Heterogeneous GPU Workloads
J Gleeson
University of Toronto (Canada), 2023
2023
GPU Encrypt–First Progress Report
J Gleeson, S Rajan, V Saini
GPU Encrypt–Second Progress Report
J Gleeson, S Rajan, V Saini
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