Drawing on our experience of more than a decade of AI in academic research, technology development, industry engagement, postgraduate teaching, doctoral supervision and organisational consultancy, we present the 'CDAC AI Life Cycle', a comprehensive life cycle for the design, development and deployment of Artificial Intelligence (AI) systems and solutions. It consists of three phases, Design, Develop and Deploy, and 17 constituent stages across the three phases from conception to production of any AI initiative. The 'Design' phase highlights the importance of contextualising a problem description by reviewing public domain and service-based literature on state-of-the-art AI applications, algorithms, pre-trained models and equally importantly ethics guidelines and frameworks, which then informs the data, or Big Data, acquisition and preparation. The 'Develop' phase is technique-oriented, as it transforms data and algorithms into AI models that are benchmarked, evaluated and explained. The 'Deploy' phase evaluates computational performance, which then apprises pipelines for model operationalisation, culminating in the hyperautomation of a process or system as a complete AI solution, that is continuously monitored and evaluated to inform the next iteration of the life cycle. An ontological mapping of AI algorithms to applications, followed by an organisational context for the AI life cycle are further contributions of this article.
翻译:根据我们十年多以来在学术研究、技术开发、工业参与、研究生教学、博士监督和组织咨询方面的大赦国际的经验,我们介绍了“ACDA AI 生活周期”,这是设计、开发和部署人工智能系统和解决方案的综合生命周期,包括三个阶段,设计、开发和部署,以及从设计到制作任何AI倡议的三个阶段的17个构成阶段。“设计”阶段强调通过审查公共领域和基于服务的文献来描述问题描述的重要性,这些文献涉及最新的AI应用、算法、预先培训的模型以及同样重要的道德准则和框架,然后为数据或大数据、获取和准备提供信息。“开发”阶段以技术为导向,因为它将数据和算法转换成由基准、评估和解释的AI模型模型模型模型。“设计”阶段评估计算性业绩,然后为模型操作提供管道,最终将一个过程或系统作为完整的AI解决方案,然后不断监测和评估该过程或系统作为完整的AI解决方案,从而为下一个生命周期的版本的应用提供信息。