BlinkNet: Software-Defined Deep Learning Analytics with Bounded Resources

Brian Koga, Theresa VanderWeide, Xinghui Zhao, Xuechen Zhang
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Abstract

Deep neural networks (DNNs) have recently gained unprecedented success in various domains. In resource-constrained edge systems (e.g., mobile devices and IoT devices) QoS-aware DNNs are required to meet latency and memory/storage requirements of mission-critical deep learning applications. However, none of the existing DNNs has been de-signed to satisfy both latency and memory bounds simultaneously as specified by end-users in the resource-constrained systems. This paper proposes a runtime system, BlinkNet, which can guarantee both latency and memory/storage bounds for one or multiple DNNs via efficient QoS-aware per-layer approximation. We implement BlinkNet in Apache TVM and evaluate it using CaffeNet, CIFAR-10-quick, and VGG16 network models on both CPU and GPU platforms. Our experimental results show that BlinkNet can enforce various latency and memory bounds set by end-users with real-world datasets.
BlinkNet:有限资源下的软件定义深度学习分析
近年来,深度神经网络(dnn)在各个领域取得了前所未有的成功。在资源受限的边缘系统(例如,移动设备和物联网设备)中,需要qos感知dnn来满足关键任务深度学习应用的延迟和内存/存储需求。然而,现有的dnn都没有被设计成同时满足资源受限系统中最终用户指定的延迟和内存边界。本文提出了一种运行时系统BlinkNet,它可以通过有效的qos感知的逐层近似来保证一个或多个dnn的延迟和内存/存储边界。我们在Apache TVM中实现了BlinkNet,并在CPU和GPU平台上使用CaffeNet、CIFAR-10-quick和VGG16网络模型对其进行了评估。我们的实验结果表明,BlinkNet可以在实际数据集上执行最终用户设置的各种延迟和内存边界。
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