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LCTES 2018
co-located with PLDI 2018

The recent ground-breaking advances in deep learning networks (DNNs) make them attractive for embedded systems. However, it can take a long time for DNNs to make an inference on resource-limited embedded devices. Offloading the computation into the cloud is often infeasible due to privacy concerns, high latency, or the lack of connectivity. As such, there is a critical need to find a way to effectively execute the DNN models locally on the devices. This paper presents an adaptive scheme to determine which DNN model to use for a given input, by considering the desired accuracy and inference time. Our approach employs machine learning to develop a predictive model to quickly select a pre-trained DNN to use for a given input and the optimization constraint. We achieve this by first training off-line a predictive model, and then use the learnt model to select a DNN model to use for new, unseen inputs. We apply our approach to the image classification task and evaluate it on a Jetson TX2 embedded deep learning platform using the ImageNet ILSVRC 2012 validation dataset. We consider a range of influential DNN models. Experimental results show that our approach achieves a 7.52% improvement in inference accuracy, and a 1.8x reduction in inference time over the most-capable single DNN model.

Tue 19 Jun

Displayed time zone: Eastern Time (US & Canada) change

14:00 - 15:40
Full paper session on Adaptation and HardwareLCTES 2018 at Discovery AB
14:00
25m
Full-paper
Adaptive Deep Learning Model Selection on Embedded Systems
LCTES 2018
Ben Taylor Lancaster University, UK, Vicent Sanz Marco Lancaster University, Willy Wolff Lancaster University, Yehia Elkhatib Lancaster University, Zheng Wang Lancaster University
14:25
25m
Full-paper
Optimizing RAID/SSD Controllers with Lifetime Extension for Flash-based SSD Array
LCTES 2018
Lei Han , Zhaoyan Shen The Hong Kong Polytechnic University, Zili Shao The Hong Kong Polytechnic University, Tao Li University of Florida
14:50
25m
Full-paper
Verification of Coarse-Grained Reconfigurable Arrays through Random Test Programs
LCTES 2018
Bernhard Egger Seoul National University, Eunjin Song Seoul National University, Hochan Lee Seoul National University, Daeyoung Shin Seoul National University
15:15
25m
Full-paper
Decoupling Address Generation from Loads and Stores to Improve Data Access Energy Efficiency
LCTES 2018
Michael Stokes Florida State University, Ryan Baird Florida State University, Zhaoxiang Jin Michigan Technological University, David B. Whalley , Soner Onder Michigan Technological University