MetaLab/Data Science Group Seminar

Wednesday 6 June 2018, 3:30pm to 4:30pm

Venue

InfoLab B78 (Data Science Institute room), Lancaster, United Kingdom - View Map

Open to

Postgraduates, Staff

Registration

Registration not required - just turn up

Event Details

Adaptive Deep Learning Model Selection on Embedded Systems

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.

Speaker

Benjamin Taylor

Computing and Communications, Lancaster University

Contact Details

Name Andrew Moore
Email

a.moore@lancaster.ac.uk