A Simple Model for Portable and Fast Prediction of Execution Time and Power Consumption of GPU Kernels
2020
Characterizing compute kernel execution behavior on GPUs for efficient task scheduling is a non trivial task. We address this with a simple model enabling portable and fast predictions among different GPUs using only hardware-independent features extracted. This model is built based on random forests using 189 individual compute kernels from benchmarks such as Parboil, Rodinia, Polybench-GPU and SHOC. Evaluation of the model performance using cross-validation yields a median Mean Average Percentage Error (MAPE) of [13.45%, 44.56%] and [1.81%, 2.91%], for time respectively power prediction on five different GPUs, while latency for a single prediction varies between 0.1 and 0.2 seconds.
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