论文标题

DeepNetqoe:深网的自适应QOE优化框架

DeepNetQoE: Self-adaptive QoE Optimization Framework of Deep Networks

论文作者

Wang, Rui, Chen, Min, Guizani, Nadra, Li, Yong, Gharavi, Hamid, Hwang, Kai

论文摘要

深度学习的未来进步及其对所有领域人工智能(AI)发展的影响都在很大程度上取决于数据大小和计算能力。许多研究人员认识到牺牲大量计算资源以换取网络模型的更好的精确率。当计算资源受到限制时,这会导致巨大的计算消耗和令人满意的结果。因此,有必要在资源和模型绩效之间找到平衡,以实现令人满意的结果。本文提出了自适应的经验质量(QOE)框架DeepNetqoe,以指导深网的培训。建立了一个自适应QOE模型,该模型将模型的准确性与培训所需的计算资源联系起来,这将使模型的体验价值改善。为了在计算机资源受到限制时最大化体验价值,需要建立资源分配模型和解决方案。此外,我们基于四个网络模型进行实验,以分析与人群计数示例相对于人群计数的值。实验结果表明,所提出的DeepNetQoe能够根据用户需求自适应地获得高经验价值,从而指导用户确定分配给网络模型的计算资源。

Future advances in deep learning and its impact on the development of artificial intelligence (AI) in all fields depends heavily on data size and computational power. Sacrificing massive computing resources in exchange for better precision rates of the network model is recognized by many researchers. This leads to huge computing consumption and satisfactory results are not always expected when computing resources are limited. Therefore, it is necessary to find a balance between resources and model performance to achieve satisfactory results. This article proposes a self-adaptive quality of experience (QoE) framework, DeepNetQoE, to guide the training of deep networks. A self-adaptive QoE model is set up that relates the model's accuracy with the computing resources required for training which will allow the experience value of the model to improve. To maximize the experience value when computer resources are limited, a resource allocation model and solutions need to be established. In addition, we carry out experiments based on four network models to analyze the experience values with respect to the crowd counting example. Experimental results show that the proposed DeepNetQoE is capable of adaptively obtaining a high experience value according to user needs and therefore guiding users to determine the computational resources allocated to the network models.

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