Visible to the public Privacy-Preserving Machine Learning Based Data Analytics on Edge Devices

TitlePrivacy-Preserving Machine Learning Based Data Analytics on Edge Devices
Publication TypeConference Paper
Year of Publication2018
AuthorsZhao, Jianxin, Mortier, Richard, Crowcroft, Jon, Wang, Liang
Conference NameProceedings of the 2018 AAAI/ACM Conference on AI, Ethics, and Society
PublisherACM
Conference LocationNew York, NY, USA
ISBN Number978-1-4503-6012-8
Keywordscloud, edge computing, machine learning, Metrics, privacy, pubcrawl, resilience, Resiliency, Scalability, user privacy, user privacy in the cloud
Abstract

Emerging Machine Learning (ML) techniques, such as Deep Neural Network, are widely used in today's applications and services. However, with social awareness of privacy and personal data rapidly rising, it becomes a pressing and challenging societal issue to both keep personal data private and benefit from the data analytics power of ML techniques at the same time. In this paper, we argue that to avoid those costs, reduce latency in data processing, and minimise the raw data revealed to service providers, many future AI and ML services could be deployed on users' devices at the Internet edge rather than putting everything on the cloud. Moving ML-based data analytics from cloud to edge devices brings a series of challenges. We make three contributions in this paper. First, besides the widely discussed resource limitation on edge devices, we further identify two other challenges that are not yet recognised in existing literature: lack of suitable models for users, and difficulties in deploying services for users. Second, we present preliminary work of the first systematic solution, i.e. Zoo, to fully support the construction, composing, and deployment of ML models on edge and local devices. Third, in the deployment example, ML service are proved to be easy to compose and deploy with Zoo. Evaluation shows its superior performance compared with state-of-art deep learning platforms and Google ML services.

URLhttps://dl.acm.org/citation.cfm?doid=3278721.3278778
DOI10.1145/3278721.3278778
Citation KeyzhaoPrivacyPreservingMachineLearning2018