Recently, the U.S. Department of Energy (DOE), Office of Science, Biological and Environmental Research (BER), and Advanced Scientific Computing Research (ASCR) programs organized and held the Artificial Intelligence for Earth System Predictability (AI4ESP) workshop series. From this workshop, a critical conclusion that the DOE BER and ASCR community came to is the requirement to develop a new paradigm for Earth system predictability focused on enabling artificial intelligence (AI) across the field, lab, modeling, and analysis activities, called ModEx. The BER's `Model-Experimentation', ModEx, is an iterative approach that enables process models to generate hypotheses. The developed hypotheses inform field and laboratory efforts to collect measurement and observation data, which are subsequently used to parameterize, drive, and test model (e.g., process-based) predictions. A total of 17 technical sessions were held in this AI4ESP workshop series. This paper discusses the topic of the `AI Architectures and Co-design' session and associated outcomes. The AI Architectures and Co-design session included two invited talks, two plenary discussion panels, and three breakout rooms that covered specific topics, including: (1) DOE HPC Systems, (2) Cloud HPC Systems, and (3) Edge computing and Internet of Things (IoT). We also provide forward-looking ideas and perspectives on potential research in this co-design area that can be achieved by synergies with the other 16 session topics. These ideas include topics such as: (1) reimagining co-design, (2) data acquisition to distribution, (3) heterogeneous HPC solutions for integration of AI/ML and other data analytics like uncertainty quantification with earth system modeling and simulation, and (4) AI-enabled sensor integration into earth system measurements and observations. Such perspectives are a distinguishing aspect of this paper.
翻译:最近,美国能源部(DOE)科学办公室的生物和环境研究(BER)和高级科学计算研究(ASCR)计划组织并举办了面向地球系统可预测性的人工智能(AI4ESP)研讨会系列。从这次研讨会中,BER和ASCR社区得出的重要结论是需要开发一种新的地球系统可预测性范式,以便在领域、实验室、建模和分析活动中实现人工智能(AI),称为ModEx。BER的“模型实验”(ModEx)是一种迭代方法,可以让过程模型产生假设。发展出的假设会引导现场和实验室的数据收集,这些数据后来用于参数化、驱动和测试模型(例如,基于过程的)预测。本次AI4ESP研讨会共组织了17个专业技术会议。本文讨论了“AI体系结构与协同设计”会议的主题和相关成果。AI体系结构与协同设计会议包括两次特邀演讲、两次全体讨论小组和三个分组会议,涉及具体主题:(1)DOE HPC系统,(2)云HPC系统,(3)边缘计算和物联网(IoT)。我们还提供了关于通过与其他16个会议主题的协同作用实现该协同设计领域的潜在研究前瞻性思路和观点。这些思路包括诸如:(1)重新设想协同设计,(2)从数据获取到分布,(3)异构HPC解决方案,用于集成AI/ML和其他数据分析(如地球系统建模和仿真的不确定性量化),以及(4)将AI技术应用于地球系统测量和观测传感器的集成。本文提供了这些观点,这是本文的一个独特之处。