Rapid advancements in edge devices has led to large deployment of deep neural network (DNN) based workloads. To utilize the resources at the edge effectively, many DNN compilers are proposed that efficiently map the high level DNN models developed in frameworks like PyTorch, Tensorflow, Caffe etc into minimum deployable lightweight execution engines. For real time applications like ADAS, these compiler optimized engines should give precise, reproducible and predictable inferences, both in-terms of runtime and output consistency. This paper is the first effort in empirically auditing state of the art DNN compilers viz TensorRT, AutoTVM and AutoScheduler. We characterize the NN compilers based on their performance predictability w.r.t inference latency, output reproducibility, hardware utilization. etc and based on that provide various recommendations. Our methodology and findings can potentially help the application developers, in making informed decision about the choice of DNN compiler, in a real time safety critical setting.
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