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Resource-Constrained On-Device Learning by Dynamic Averaging

机译:动态平均资源约束的设备上学习

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The communication between data-generating devices is partially responsible for a growing portion of the world's power consumption. Thus reducing communication is vital, both, from an economical and an ecological perspective. For machine learning, on-device learning avoids sending raw data, which can reduce communication substantially. Furthermore, not centralizing the data protects privacy-sensitive data. However, most learning algorithms require hardware with high computation power and thus high energy consumption. In contrast, ultra-low-power processors, like FPGAs or micro-controllers, allow for energy-efficient learning of local models. Combined with communication-efficient distributed learning strategies, this reduces the overall energy consumption and enables applications that were yet impossible due to limited energy on local devices. The major challenge is then, that the low-power processors typically only have integer processing capabilities. This paper investigates an approach to communication-efficient on-device learning of integer exponential families that can be executed on low-power processors, is privacy-preserving, and effectively minimizes communication. The empirical evaluation shows that the approach can reach a model quality comparable to a centrally learned regular model with an order of magnitude less communication. Comparing the overall energy consumption, this reduces the required energy for solving the machine learning task by a significant amount.
机译:数据生成设备之间的通信部分负责世界上不断增长的功耗。因此,减少通信是至关重要的,两者都是从经济和生态的角度来看。对于机器学习,设备内学习避免发送原始数据,这可以基本上减少通信。此外,没有集中数据保护隐私敏感数据。然而,大多数学习算法需要具有高计算能力的硬件,从而高耗高。相比之下,超低功耗处理器,如FPGA或微控制器,允许局部模型的节能学习。结合通信有效的分布式学习策略,这降低了整体能源消耗,并使由于本地设备上的能量有限而无法实现的应用程序。然后,主要挑战是,低功耗处理器通常只具有整数处理能力。本文调查了一种可以在低功耗处理器上执行的整数指数家庭的通信有效的设备学习方法,是保留的,并且有效地减少通信。实证评估表明,该方法可以达到与集中学识的常规模型相当的模型质量,其沟通量较少。比较整体能耗,这减少了通过大量解决机器学习任务所需的能量。

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