LGNIJan 28, 2021

AdaSpring: Context-adaptive and Runtime-evolutionary Deep Model Compression for Mobile Applications

arXiv:2101.11800v111 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of dynamic, context-aware model compression for mobile applications, offering an incremental improvement over existing offline methods.

The paper tackles the problem of enabling robust and private mobile sensing by deploying deep neural networks locally on resource-constrained devices, presenting AdaSpring, a framework for runtime adaptive DNN compression that achieves up to 3.1x latency reduction and 4.2x energy efficiency improvement compared to hand-crafted techniques, with only <=6.2ms evolution latency.

There are many deep learning (e.g., DNN) powered mobile and wearable applications today continuously and unobtrusively sensing the ambient surroundings to enhance all aspects of human lives. To enable robust and private mobile sensing, DNN tends to be deployed locally on the resource-constrained mobile devices via model compression. The current practice either hand-crafted DNN compression techniques, i.e., for optimizing DNN-relative performance (e.g., parameter size), or on-demand DNN compression methods, i.e., for optimizing hardware-dependent metrics (e.g., latency), cannot be locally online because they require offline retraining to ensure accuracy. Also, none of them have correlated their efforts with runtime adaptive compression to consider the dynamic nature of the deployment context of mobile applications. To address those challenges, we present AdaSpring, a context-adaptive and self-evolutionary DNN compression framework. It enables the runtime adaptive DNN compression locally online. Specifically, it presents the ensemble training of a retraining-free and self-evolutionary network to integrate multiple alternative DNN compression configurations (i.e., compressed architectures and weights). It then introduces the runtime search strategy to quickly search for the most suitable compression configurations and evolve the corresponding weights. With evaluation on five tasks across three platforms and a real-world case study, experiment outcomes show that AdaSpring obtains up to 3.1x latency reduction, 4.2 x energy efficiency improvement in DNNs, compared to hand-crafted compression techniques, while only incurring <= 6.2ms runtime-evolution latency.

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