论文标题
值得信赖的AI推论系统:行业研究观点
Trustworthy AI Inference Systems: An Industry Research View
论文作者
论文摘要
在这项工作中,我们提供了一种行业研究观点,以了解可信赖的人工智能(AI)推论系统的设计,部署和运行。这样的系统为客户提供及时,知情和自定义的推论,以帮助他们的决策,同时使用适当的AI模型安全保护机制。此外,此类系统还应随时使用隐私增强技术(PET)来保护客户的数据。为了接近主题,我们首先引入AI推理系统中的当前趋势。我们继续详细阐述此类系统中知识产权(IP)和私人数据保护之间的关系。关于保护机制,我们调查了安全性和隐私构建障碍物在设计,构建,部署和操作私人AI推理系统方面发挥了作用。例如,我们使用可信赖的执行环境以及加密技术的最新进展来强调AI系统中的机会和挑战,以保护使用中的数据。最后,我们概述了需要行业,学术界和政府研究人员全球集体关注的进一步发展领域,以维持可信赖的AI推论系统的运作。
In this work, we provide an industry research view for approaching the design, deployment, and operation of trustworthy Artificial Intelligence (AI) inference systems. Such systems provide customers with timely, informed, and customized inferences to aid their decision, while at the same time utilizing appropriate security protection mechanisms for AI models. Additionally, such systems should also use Privacy-Enhancing Technologies (PETs) to protect customers' data at any time. To approach the subject, we start by introducing current trends in AI inference systems. We continue by elaborating on the relationship between Intellectual Property (IP) and private data protection in such systems. Regarding the protection mechanisms, we survey the security and privacy building blocks instrumental in designing, building, deploying, and operating private AI inference systems. For example, we highlight opportunities and challenges in AI systems using trusted execution environments combined with more recent advances in cryptographic techniques to protect data in use. Finally, we outline areas of further development that require the global collective attention of industry, academia, and government researchers to sustain the operation of trustworthy AI inference systems.