The COVID-19 Disaster. Volume II: Prevention and Response to Pandemics Using Artificial Intelligence

R. Desourdis
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Abstract

This book describes the work to be done in building an automated pandemic prevention and response capability for the US with international extensions and extendibility using artificial intelligence. The complexity of operational decisions, information sharing, situational awareness, and planned/ongoing actions by thousands of actors in pandemic prevention, preparedness and response is far too great for anyone to manage effectively. The deaths and economic devastation caused by COVID-19 yet again proved this fact, much like all other major disasters we have endured. There are too many organizations, too many differing plans and agendas, too many different people of varying experience in positions of responsibility, and too much information as well as critical need for optimal decisions and actions, to avoid calamity during the inevitable next pandemic. We need automated planning, information vetting/sharing and rapid action to optimize prevention and, if not prevented, response to minimize spread. Volume I laid out the case for a better approach than exists in the U.S. today, and our nation’s military – touted as the best in the world – employs methodologies with precision and fidelity that optimize rapid decision making for human-sized enemies. It turns out these same methodologies and associated technologies work just as well with our microscopic enemies, like COVID-19. This book provides an overview of how it should be developed, implemented and evolved nationwide before the next pandemic. Seems like we finally should get our “act” together, otherwise the toll for passage of the next virus could be far higher as we remain unprepared. It will be hard and extensive work, which some have referenced the “Manhattan Project” or the Apollo Program, but the COVID-19 death count mandates we apply our best effort to prevent another pandemic disaster. We are better equipped now than ever to do so. © 2022 by Nova Science Publishers, Inc.
COVID-19灾难。第二卷:利用人工智能预防和应对流行病
这本书描述了使用人工智能为美国建立具有国际扩展和可扩展性的自动化流行病预防和响应能力所要做的工作。在大流行预防、准备和应对过程中,成千上万的行为体所做出的业务决策、信息共享、态势感知以及计划/正在采取的行动非常复杂,任何人都无法有效管理。COVID-19造成的死亡和经济破坏再次证明了这一事实,就像我们经历的所有其他重大灾害一样。为了在不可避免的下一次大流行期间避免灾难,有太多的组织,太多不同的计划和议程,太多不同的人在责任岗位上有不同的经验,太多的信息以及对最佳决策和行动的迫切需要。我们需要自动化规划、信息审查/共享和快速行动,以优化预防,如果无法预防,也要做出反应,最大限度地减少传播。第一卷提出了一种比美国现有的更好的方法,我们国家的军队——被吹捧为世界上最好的军队——采用了精确而逼真的方法,优化了对人类大小的敌人的快速决策。事实证明,这些相同的方法和相关技术同样适用于我们的微观敌人,比如COVID-19。这本书概述了如何在下一次大流行之前在全国范围内制定、实施和演变。看来我们终于应该一起“行动”起来,否则由于我们仍然毫无准备,下一个病毒传播的代价可能会高得多。这将是一项艰巨而广泛的工作,有些人将其称为“曼哈顿计划”或“阿波罗计划”,但COVID-19死亡人数要求我们尽最大努力防止另一场大流行灾难。我们现在比以往任何时候都更有条件这样做。©2022 by Nova Science Publishers, Inc。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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