Fully Homomorphic Encryption (FHE) is a relatively recent advancement in the field of privacy-preserving technologies. FHE allows for the arbitrary depth computation of both addition and multiplication, and thus the application of abelian/polynomial equations, like those found in deep learning algorithms. This project investigates, derives, and proves how FHE with deep learning can be used at scale, with relatively low time complexity, the problems that such a system incurs, and mitigations/solutions for such problems. In addition, we discuss how this could have an impact on the future of data privacy and how it can enable data sharing across various actors in the agri-food supply chain, hence allowing the development of machine learning-based systems. Finally, we find that although FHE incurs a high spatial complexity cost, the time complexity is within expected reasonable bounds, while allowing for absolutely private predictions to be made, in our case for milk yield prediction.
翻译:完全同质加密(FHE)是隐私保护技术领域相对较近的进步。 FHE允许任意地对添加和倍增进行深度计算,从而可以像深层学习算法中发现的那样应用贝利/球式方程式。 这个项目调查、产生并证明深层学习的FHE如何在规模上使用,时间复杂性相对较低,这种系统引起的问题,以及这些问题的缓解/解决方案。 此外,我们讨论了这如何影响数据隐私的未来,如何使农业食品供应链中不同行为者能够共享数据,从而能够开发基于机器的学习系统。 最后,我们发现尽管FHE产生高空间复杂性成本,但时间复杂性在预期的合理范围内,同时允许对牛奶产量预测作出绝对私人的预测。