StarFL:智能城市计算的混合联邦学习架构

Anbu Huang, Yang Liu, Tianjian Chen, Yongkai Zhou, Quan Sun, Hongfeng Chai, Qiang Yang
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引用次数: 24

摘要

从面部识别到自动驾驶,人工智能(AI)将在未来几十年改变我们的生活和工作方式。现有的城市计算人工智能方法面临着各种挑战,包括处理从边缘设备生成的大量数据的同步和处理,以及个人用户的隐私和安全,包括他们的生物特征、位置和行程。传统的集中式方法需要将每个组织的数据上传到中央数据库,这可能受到数据保护法案(如GDPR和CCPA)的禁止。为了将模型训练与存储在云中数据的需求解耦,提出了一种新的训练范式,称为联邦学习(FL)。FL使多个设备能够协作学习共享模型,同时将训练数据保存在本地设备上,这可以显着降低隐私泄露风险。然而,在城市计算场景下,数据通常是通信量大、频率高、异步的,这给FL的实现带来了新的挑战。为了应对这些挑战,我们提出了一种新的混合联邦学习架构,称为StarFL。通过与可信执行环境(TEE)、安全多方计算(MPC)和(北斗)卫星相结合,StarFL实现了安全的密钥分发、加密和解密,并为每个参与者提供了验证机制,以确保本地数据的安全性。此外,StarFL可以提供精确的时间戳匹配,方便多个客户端的同步。所有这些改进使StarFL更适用于下一代城市计算的安全敏感场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
StarFL: Hybrid Federated Learning Architecture for Smart Urban Computing
From facial recognition to autonomous driving, Artificial Intelligence (AI) will transform the way we live and work over the next couple of decades. Existing AI approaches for urban computing suffer from various challenges, including dealing with synchronization and processing of vast amount of data generated from the edge devices, as well as the privacy and security of individual users, including their bio-metrics, locations, and itineraries. Traditional centralized-based approaches require data in each organization be uploaded to the central database, which may be prohibited by data protection acts, such as GDPR and CCPA. To decouple model training from the need to store the data in the cloud, a new training paradigm called Federated Learning (FL) is proposed. FL enables multiple devices to collaboratively learn a shared model while keeping the training data on devices locally, which can significantly mitigate privacy leakage risk. However, under urban computing scenarios, data are often communication-heavy, high-frequent, and asynchronized, posing new challenges to FL implementation. To handle these challenges, we propose a new hybrid federated learning architecture called StarFL. By combining with Trusted Execution Environment (TEE), Secure Multi-Party Computation (MPC), and (Beidou) satellites, StarFL enables safe key distribution, encryption, and decryption, and provides a verification mechanism for each participant to ensure the security of the local data. In addition, StarFL can provide accurate timestamp matching to facilitate synchronization of multiple clients. All these improvements make StarFL more applicable to the security-sensitive scenarios for the next generation of urban computing.
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