A Pragmatic Approach To On-Device Incremental Learning System With Selective Weight Updates

PROCEEDINGS OF THE 2020 57TH ACM/EDAC/IEEE DESIGN AUTOMATION CONFERENCE (DAC)(2020)

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摘要
Incremental learning is drawing attention to widen capabilities of device-AI. Previous works have researched to reduce numerous computations and memory accesses required for the training process of IL, but they could not show a noticeable improvement in the weight gradient computation (WGC) phase. Therefore, we propose a selective weight update technique that searches for critical weights to be updated by applying the IL algorithm that training per-task binary masks. Also, we introduce a novel dataflow for the implementation of selective WGC on typical NPUs with minimum overheads. On average, our system shows a 2.9 x speed up and 2.5x energy efficiency in WGC without degrading training quality.
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关键词
pragmatic approach,on-device incremental learning system,device-AI,memory accesses,weight gradient computation phase,selective weight update technique,critical weights,IL algorithm,selective WGC,training quality,NPUs
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