Developing Privacy-preserving AI Systems: The Lessons learned

Huili Chen, S. Hussain, Fabian Boemer, Emmanuel Stapf, A. Sadeghi, F. Koushanfar, Rosario Cammarota
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引用次数: 8

Abstract

Advances in customers' data privacy laws create pressures and pain points across the entire lifecycle of AI products. Working figures such as data scientists and data engineers need to account for the correct use of privacy-enhancing technologies such as homomorphic encryption, secure multi-party computation, and trusted execution environment when they develop, test and deploy products embedding AI models while providing data protection guarantees. In this work, we share the lessons learned during the development of frameworks to aid data scientists and data engineers to map their optimized workloads onto privacy-enhancing technologies seamlessly and correctly.
开发保护隐私的人工智能系统:经验教训
客户数据隐私法的进步给人工智能产品的整个生命周期带来了压力和痛点。数据科学家和数据工程师等工作人员在开发、测试和部署嵌入人工智能模型的产品时,在提供数据保护保证的同时,需要考虑到正确使用同态加密、安全多方计算、可信执行环境等增强隐私的技术。在这项工作中,我们分享了在框架开发过程中获得的经验教训,以帮助数据科学家和数据工程师将其优化的工作负载无缝且正确地映射到隐私增强技术上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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