AIDCT:用于构建可信智能系统的人工智能服务开发和组合工具

IF 3.2 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS High-Confidence Computing Pub Date : 2024-05-10 DOI:10.1016/j.hcc.2024.100227
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引用次数: 0

摘要

云平台上的人工智能服务日益普及,推动了对能够整合多种人工智能服务以处理复杂任务的技术和工具的需求。传统的智能系统评估方法主要关注人工智能组件的性能,而不提供系统整体的综合指标。此外,由于这些人工智能组件通常来自第三方提供商,用户在进一步开发人工智能模型和处理第三方服务提供商的限制时,可能会面临质量保证不一致和限制等挑战。这些限制往往涉及质量保证以及缺乏二次开发和培训服务的能力。为了解决这些问题,我们在以往工作的基础上开发了一种工具。它可以自主地从人工智能服务中构建智能系统,同时解决上述问题。该工具不仅能创建符合用户定义的功能要求和性能指标的服务组成解决方案,还能执行这些解决方案,以验证指标是否符合用户要求。我们通过一系列案例研究证明了该工具在构建值得信赖的智能系统方面的有效性。
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AIDCT: An AI service development and composition tool for constructing trustworthy intelligent systems
The growing prevalence of AI services on cloud platforms is driving the demand for technologies and tools which enable the integration of multiple AI services to handle intricate tasks. Traditional methods of evaluating intelligent systems focus mainly on the performance of AI components, without providing comprehensive metrics for the system as a whole. Additionally, as these AI components are often sourced from third-party providers, users may face challenges due to inconsistent quality assurance and limitations in further developing AI models, and dealing with third-party service providers’ limitations. These limitations often involve quality assurance and a lack of capability for secondary development and training of services. To address these issues, we have developed a tool based on our previous work. It can autonomously build Intelligent systems from AI services while tackling the issues mentioned above. This tool not only creates service composition solutions that align with user-defined functional requirements and performance metrics but also executes these solutions to verify if the metrics meet user requirements. We have demonstrated the effectiveness of this tool in constructing trustworthy intelligent systems through a series of case studies.
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