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Pre-Conference Talk by HUYNH Nguyen Loc

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DeepMon: Building Mobile GPU Deep Learning Models for Continuous Vision Applications

Speaker (s):

HUYNH Nguyen Loc

PhD Candidate

School of Information Systems

Singapore Management University

Date:


Time:


Venue:

 

June 2, 2017, Friday


4:00pm - 4:30pm


Seminar Room 3.3, Level 3

School of Information Systems

Singapore Management University


80 Stamford Road

Singapore 178902

We look forward to seeing you at this research seminar.

About the Talk

The rapid emergence of head-mounted devices such as the Microsoft Holo-lens enables a wide variety of continuous vision applications. Such applications often adopt deep-learning algorithms such as CNN and RNN to extract rich contextual information from the first-person-view video streams. Despite the high accuracy, use of deep learning algorithms in mobile devices raises critical challenges, i.e., high processing latency and power consumption. In this paper, we propose DeepMon, a mobile deep learning inference system to run a variety of deep learning inferences purely on a mobile device in a fast and energy-efficient manner. For this, we designed a suite of optimization techniques to efficiently offload convolutional layers to mobile GPUs and accelerate the processing; note that the convolutional layers are the common performance bottleneck of many deep learning models. Our experimental results show that DeepMon can classify an image over the VGG-VeryDeep-16 deep learning model in 644ms on Samsung Galaxy S7, taking an important step towards continuous vision without imposing any privacy concerns nor networking cost.

This a pre-conference talk for 15th ACM International Conference on Mobile Systems, Applications, and Services (MobiSys 2017).

About the Speaker

HUYNH Nguyen Loc is a PhD student in the School of Information Systems, Singapore Management University, working in the area of mobile and wearable computing. He received his Bachelor of Engineering and Master of Engineering degree from the Ho Chi Minh University of Technology, Vietnam, in 2011 and 2014 correspondingly. His current research focuses on heterogeneous computing especially on mobile devices.