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CHA: A Caching Framework for Home-based Voice Assistant Systems

机译:CHA:用于家庭基于家庭语音助手系统的缓存框架

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Voice assistant systems are becoming immersive in our daily lives nowadays. However, current voice assistant systems rely on the cloud for command understanding and fulfillment, resulting in unstable performance and unnecessary frequent network transmission. In this paper, we introduce CHA, an edge-based caching framework for voice assistant systems, and especially for smart homes where resource-restricted edge devices can be deployed. Located between the voice assistant device and the cloud, CHA introduces a layered architecture with modular design in each layer. By introducing an understanding module and adaptive learning, CHA understands the user’s intent with high accuracy. By maintaining a cache, CHA reduces the interaction with the cloud and provides fast and stable responses in a smart home. Targeting on resource-constrained edge devices, CHA uses joint classification and model pruning on a pre-trained language model to achieve performance and system efficiency. We compare CHA to the status quo solution of voice assistant systems and show that CHA benefits voice assistant systems. We evaluate CHA on three edge devices that differ in hardware configuration and demonstrate its ability to meet the latency and accuracy demands with efficient resource utilization. Our evaluation shows that compared to the current solution for voice assistant systems, CHA can provide at least 70% speedup in responses for frequently asked voice commands with less than 13% CPU consumption, and less than 9% memory consumption when running on a Raspberry Pi.
机译:现在,语音助理系统在我们日常生活中遭到沉浸。但是,当前的语音助手系统依靠云进行命令理解和实现,从而导致不稳定的性能和不必要的频繁网络传输。在本文中,我们介绍了语音辅助系统的基于边缘的缓存框架的CHA,特别是对于可以部署资源限制边缘设备的智能房屋。位于语音辅助设备和云之间,CHA在每层中引入具有模块化设计的分层体系结构。通过介绍一个理解模块和自适应学习,CHA理解用户的意图高精度。通过维护缓存,CHA可以减少与云的互动,并在智能家中提供快速且稳定的响应。针对资源受限的边缘设备,CHA在预先训练的语言模型上使用联合分类和模型修剪,以实现性能和系统效率。我们将Cha与语音助理系统的现状解决方案进行比较,并显示CHA优势语音助理系统。我们在三个边缘设备上评估了硬件配置的三个边缘设备,并展示其符合高效资源利用率的延迟和准确性需求的能力。我们的评估表明,与目前的语音助手系统解决方案相比,CHA可以在rspbery pi上运行时提供至少70%的响应,在常见的CPU消耗中的响应中的响应,并且在覆盆子PI上运行时少于9%的内存消耗。

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