Machine Learning with Confidential Computing: A Systematization of Knowledge

Author:

Mo Fan1ORCID,Tarkhani Zahra2ORCID,Haddadi Hamed1ORCID

Affiliation:

1. Imperial College London, London, United Kingdom of Great Britain and Northern Ireland

2. Microsoft Research New England, Cambridge, United Kingdom of Great Britain and Northern Ireland

Abstract

Privacy and security challenges in Machine Learning (ML) have become increasingly severe, along with ML’s pervasive development and the recent demonstration of large attack surfaces. As a mature system-oriented approach, Confidential Computing has been utilized in both academia and industry to mitigate privacy and security issues in various ML scenarios. In this article, the conjunction between ML and Confidential Computing is investigated. We systematize the prior work on Confidential Computing-assisted ML techniques that provide (iconfidentiality guarantees and (iiintegrity assurances and discuss their advanced features and drawbacks. Key challenges are further identified, and we provide dedicated analyses of the limitations in existing Trusted Execution Environment (TEE) systems for ML use cases. Finally, prospective works are discussed, including grounded privacy definitions for closed-loop protection, partitioned executions of efficient ML, dedicated TEE-assisted designs for ML, TEE-aware ML, and ML full pipeline guarantees. By providing these potential solutions in our systematization of knowledge, we aim to build the bridge to help achieve a much stronger TEE-enabled ML for privacy guarantees without introducing computation and system costs.

Publisher

Association for Computing Machinery (ACM)

Reference282 articles.

1. Classifying online job advertisements through machine learning;Boselli Roberto;Fut. Gen. Comput. Syst.,2018

2. Maxim Naumov Dheevatsa Mudigere Hao-Jun Michael Shi Jianyu Huang Narayanan Sundaraman Jongsoo Park Xiaodong Wang Udit Gupta Carole-Jean Wu Alisson G. Azzolini Dmytro Dzhulgakov Andrey Mallevich Ilia Cherniavskii Yinghai Lu Raghuraman Krishnamoorthi Ansha Yu Volodymyr Kondratenko Stephanie Pereira Xianjie Chen Wenlin Chen Vijay Rao Bill Jia Liang Xiong and Misha Smelyanskiy. 2019. Deep learning recommendation model for personalization and recommendation systems. arXiv preprint arXiv:1906.00091 (2019).

3. Machine learning in banking risk management: A literature review;Leo Martin;Risks,2019

4. Muhammad Aurangzeb Ahmad, Carly Eckert, and Ankur Teredesai. 2018. Interpretable machine learning in healthcare. In ACM International Conference on Bioinformatics, Computational Biology, and Health Informatics. 559–560.

5. K. Shailaja, B. Seetharamulu, and M. A. Jabbar. 2018. Machine learning in healthcare: A review. In 2nd International Conference on Electronics, Communication and Aerospace Technology (ICECA’18). IEEE, 910–914.

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