Efficient continual learning at the edge with progressive segmented training

Xiaocong Du, S. Venkataramanaiah, Zheng Li, Han-Sok Suh, Shihui Yin, Gokul Krishnan, Frank Liu, Jae-sun Seo, Yu Cao
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引用次数: 1

Abstract

There is an increasing need for continual learning in dynamic systems at the edge, such as self-driving vehicles, surveillance drones, and robotic systems. Such a system requires learning from the data stream, training the model to preserve previous information and adapt to a new task, and generating a single-headed vector for future inference, within a limited power budget. Different from previous continual learning algorithms with dynamic structures, this work focuses on a single network and model segmentation to mitigate catastrophic forgetting problem. Leveraging the redundant capacity of a single network, model parameters for each task are separated into two groups: one important group which is frozen to preserve current knowledge, and a secondary group to be saved (not pruned) for future learning. A fixed-size memory containing a small amount of previously seen data is further adopted to assist the training. Without additional regularization, the simple yet effective approach of progressive segmented training (PST) successfully incorporates multiple tasks and achieves state-of-the-art accuracy in the single-head evaluation on the CIFAR-10 and CIFAR-100 datasets. Moreover, the segmented training significantly improves computation efficiency in continual learning and thus, enabling efficient continual learning at the edge. On Intel Stratix-10 MX FPGA, we further demonstrate the efficiency of PST with representative CNNs trained on CIFAR-10.
通过渐进式分段训练在边缘进行有效的持续学习
在边缘动态系统中,对持续学习的需求越来越大,例如自动驾驶汽车、监视无人机和机器人系统。这样的系统需要从数据流中学习,训练模型以保留以前的信息并适应新的任务,并在有限的功率预算内生成用于未来推理的单头向量。与以往基于动态结构的连续学习算法不同,本研究侧重于单个网络和模型分割,以减轻灾难性遗忘问题。利用单个网络的冗余容量,每个任务的模型参数被分成两组:一个重要组被冻结以保存当前知识,另一个次要组被保存(而不是修剪)以供将来学习。进一步采用包含少量先前见过的数据的固定大小存储器来辅助训练。在没有额外正则化的情况下,简单而有效的渐进式分段训练(PST)方法成功地融合了多个任务,并在CIFAR-10和CIFAR-100数据集的单头部评估中达到了最先进的精度。此外,分段训练显著提高了持续学习的计算效率,从而实现了边缘的高效持续学习。在Intel Stratix-10 MX FPGA上,我们用在CIFAR-10上训练的具有代表性的cnn进一步验证了PST的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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