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Learning Early Exit for Deep Neural Network Inference on Mobile Devices through Multi-Armed Bandits

机译:通过多武装匪徒了解移动设备深度神经网络推断的早期出口

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We present a novel learning framework that utilizes the early exit of Deep Neural Network (DNN), a device-only solution that reduces the latency of inference by sacrificing a reasonable degree of accuracy. Choosing the optimal exit point is challenging as the delay and the accuracy of each exit point are random and cannot be known in advance. The problem is further complicated as the overall duration of the processing is also unknown. To this end, we propose Learning Early Exit (LEE), an online learning scheme based on multi-armed bandits analysis. LEE efficiently learns the optimal exit point for mobile-based DNN inference while simultaneously balancing the exploration-exploitation trade-off. LEE differs from the standard bandit analyses in two ways: the reward of choosing each exit point addresses the confidence-latency trade-off, and the time duration between each action is random (i.e., the latency of each action is random). LEE addresses the aforementioned challenges and it achieves asymptotically optimal performance. We implement a real-world system with a real-time testbed that can be deployed in a driving system. DNN models with multiple exit points are trained and deployed in the testbed so that the performance of LEE and benchmark schemes can be tested and compared. The result denotes that LEE substantially outperforms the benchmark schemes.
机译:我们提出了一种利用深神经网络(DNN)的早期出口的新型学习框架,仅通过牺牲合理程度的准确度来降低推理的潜伏期。选择最佳出口点是具有挑战性的,因为每个出口点的延迟和准确性是随机的,不能提前知道。随着处理的总持续时间也未知,问题进一步复杂。为此,我们建议学习早期退出(李),基于多武装匪分析的在线学习方案。 Lee有效地了解基于移动的DNN推理的最佳出口点,同时平衡探索开采权衡。 Lee以两种方式与标准强盗分析不同:选择每个退出点的奖励解决了置信度延迟权衡,并且每个动作之间的持续时间是随机的(即,每个动作的延迟是随机的。李地解决了上述挑战,它取得了渐近的最佳性能。我们实现了一个真实世界的系统,实时测试平台可以部署在驾驶系统中。具有多个出口点的DNN模型培训并部署在测试平板中,以便可以测试和比较李和基准方案的性能。结果表示Lee基本上优于基准方案。

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