Machine learning algorithms have achieved remarkable results and are widely applied in a variety of domains. These algorithms often rely on sensitive and private data such as medical and financial records. Therefore, it is vital to draw further attention regarding privacy threats and corresponding defensive techniques applied to machine learning models. In this paper, we present TenSEAL, an open-source library for Privacy-Preserving Machine Learning using Homomorphic Encryption that can be easily integrated within popular machine learning frameworks. We benchmark our implementation using MNIST and show that an encrypted convolutional neural network can be evaluated in less than a second, using less than half a megabyte of communication.
翻译:机器学习算法取得了显著成果,并广泛应用于各个领域,这些算法往往依赖敏感和私人数据,如医疗和财务记录。因此,必须进一步提请注意隐私威胁和适用于机器学习模式的相应防御技术。本文介绍TenSEAL,这是一个使用基因加密进行隐私-保护机器学习的开放图书馆,可以很容易地纳入流行机器学习框架。我们用MNIST来衡量我们的执行情况,并表明加密的革命神经网络可以在不到一秒内用不到半兆字节的通信来评估。