AILFM uses active imitation learning to learn thermal- and kernel-aware scheduling policies for LFM inference on 3D S-NUCA many-cores, outperforming baselines while maintaining thermal safety.
InProceedings of the 29th ACM International Conference on Architectural Support for Programming Languages and Operating Systems, Volume 2(2024), pp
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Active Imitation Learning for Thermal- and Kernel-Aware LFM Inference on 3D S-NUCA Many-Cores
AILFM uses active imitation learning to learn thermal- and kernel-aware scheduling policies for LFM inference on 3D S-NUCA many-cores, outperforming baselines while maintaining thermal safety.