Back to Search
Start Over
Smart at what cost?
- Source :
- Internet Measurement Conference
- Publication Year :
- 2021
- Publisher :
- ACM, 2021.
-
Abstract
- With smartphones' omnipresence in people's pockets, Machine Learning (ML) on mobile is gaining traction as devices become more powerful. With applications ranging from visual filters to voice assistants, intelligence on mobile comes in many forms and facets. However, Deep Neural Network (DNN) inference remains a compute intensive workload, with devices struggling to support intelligence at the cost of responsiveness.On the one hand, there is significant research on reducing model runtime requirements and supporting deployment on embedded devices. On the other hand, the strive to maximise the accuracy of a task is supported by deeper and wider neural networks, making mobile deployment of state-of-the-art DNNs a moving target. In this paper, we perform the first holistic study of DNN usage in the wild in an attempt to track deployed models and match how these run on widely deployed devices. To this end, we analyse over 16k of the most popular apps in the Google Play Store to characterise their DNN usage and performance across devices of different capabilities, both across tiers and generations. Simultaneously, we measure the models' energy footprint, as a core cost dimension of any mobile deployment. To streamline the process, we have developed gaugeNN, a tool that automates the deployment, measurement and analysis of DNNs on devices, with support for different frameworks and platforms. Results from our experience study paint the landscape of deep learning deployments on smartphones and indicate their popularity across app developers. Furthermore, our study shows the gap between bespoke techniques and real-world deployments and the need for optimised deployment of deep learning models in a highly dynamic and heterogeneous ecosystem.<br />Accepted at the ACM Internet Measurement Conference (IMC), 2021
- Subjects :
- FOS: Computer and information sciences
Computer Science - Machine Learning
Computer Science - Performance
Artificial neural network
Computer science
Process (engineering)
business.industry
Deep learning
Workload
Machine Learning (cs.LG)
Task (project management)
Performance (cs.PF)
Footprint
Software deployment
Human–computer interaction
Artificial intelligence
business
Bespoke
Subjects
Details
- Database :
- OpenAIRE
- Journal :
- Proceedings of the 21st ACM Internet Measurement Conference
- Accession number :
- edsair.doi.dedup.....2ef0b591656c8b3dff7b2946dbe9e204