We have entered the era of big data, and it is considered to be the "fuel" for the flourishing of artificial intelligence applications. The enactment of the EU General Data Protection Regulation (GDPR) raises concerns about individuals' privacy in big data. Federated learning (FL) emerges as a functional solution that can help build high-performance models shared among multiple parties while still complying with user privacy and data confidentiality requirements. Although FL has been intensively studied and used in real applications, there is still limited research related to its prospects and applications as a FLaaS (Federated Learning as a Service) to interested 3rd parties. In this paper, we present a FLaaS system: DID-eFed, where FL is facilitated by decentralized identities (DID) and a smart contract. DID enables a more flexible and credible decentralized access management in our system, while the smart contract offers a frictionless and less error-prone process. We describe particularly the scenario where our DID-eFed enables the FLaaS among hospitals and research institutions.
翻译:我们进入了海量数据时代,这被认为是人工智能应用发展的“燃料”。欧盟数据保护总条例(GDPR)的颁布引起了人们对海量数据中个人隐私的担忧。联邦学习(FL)是一个功能解决方案,可以帮助建立多方共享的高性能模式,同时仍然遵守用户隐私和数据保密要求。虽然对FL进行了深入的研究,并将其用于实际应用中,但与其作为FLAAS(联邦学习服务)对感兴趣的第三者的前景和应用有关的研究仍然有限。我们在本文件中介绍了FLAAS系统:DDE-eFed, 该系统由分散身份(DID)和智能合同(智能合同)促进FL。它有助于在我们的系统中建立更加灵活和可信的分散使用管理,而智能合同提供了一种没有摩擦和不易出错的过程。我们特别描述了我们的DI-EFed在医院和研究机构中帮助FLAS的情景。