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Computational red teaming: risk analytics of big-data-to-decisions intelligent systems

Written to bridge the information needs of management and computational scientists, this book presents the first comprehensive treatment of Computational Red Teaming (CRT).  The author describes an analytics environment that blends human reasoning and computational modeling to design risk-aware and...

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Detalles Bibliográficos
Autor principal: Abbass, Hussein A
Lenguaje:eng
Publicado: Springer 2015
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-3-319-08281-3
http://cds.cern.ch/record/1968660
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author Abbass, Hussein A
author_facet Abbass, Hussein A
author_sort Abbass, Hussein A
collection CERN
description Written to bridge the information needs of management and computational scientists, this book presents the first comprehensive treatment of Computational Red Teaming (CRT).  The author describes an analytics environment that blends human reasoning and computational modeling to design risk-aware and evidence-based smart decision making systems. He presents the Shadow CRT Machine, which shadows the operations of an actual system to think with decision makers, challenge threats, and design remedies. This is the first book to generalize red teaming (RT) outside the military and security domains and it offers coverage of RT principles, practical and ethical guidelines. The author utilizes Gilbert’s principles for introducing a science. Simplicity: where the book follows a special style to make it accessible to a wide range of  readers. Coherence:  where only necessary elements from experimentation, optimization, simulation, data mining, big data, cognitive information processing, and system thinking are blended together systematically to present CRT as the science of Risk Analytics and Challenge Analytics. Utility: where the author draws on a wide range of examples, ranging from job interviews to Cyber operations, before presenting three case studies from air traffic control technologies, human behavior, and complex socio-technical systems involving real-time mining and integration of human brain data in the decision making environment.    • Presents first comprehensive treatment of Computational Red Teaming; • Provides balanced coverage of the topic from the perspectives of risk thinking and computational modeling; • Includes thorough coverage of the computational approach to the problem; • Links risk analytics and challenge analytics with the right set of computational tools to assess risk in complex, “big-data” situations.
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spelling cern-19686602021-04-21T20:50:20Zdoi:10.1007/978-3-319-08281-3http://cds.cern.ch/record/1968660engAbbass, Hussein AComputational red teaming: risk analytics of big-data-to-decisions intelligent systemsEngineeringWritten to bridge the information needs of management and computational scientists, this book presents the first comprehensive treatment of Computational Red Teaming (CRT).  The author describes an analytics environment that blends human reasoning and computational modeling to design risk-aware and evidence-based smart decision making systems. He presents the Shadow CRT Machine, which shadows the operations of an actual system to think with decision makers, challenge threats, and design remedies. This is the first book to generalize red teaming (RT) outside the military and security domains and it offers coverage of RT principles, practical and ethical guidelines. The author utilizes Gilbert’s principles for introducing a science. Simplicity: where the book follows a special style to make it accessible to a wide range of  readers. Coherence:  where only necessary elements from experimentation, optimization, simulation, data mining, big data, cognitive information processing, and system thinking are blended together systematically to present CRT as the science of Risk Analytics and Challenge Analytics. Utility: where the author draws on a wide range of examples, ranging from job interviews to Cyber operations, before presenting three case studies from air traffic control technologies, human behavior, and complex socio-technical systems involving real-time mining and integration of human brain data in the decision making environment.    • Presents first comprehensive treatment of Computational Red Teaming; • Provides balanced coverage of the topic from the perspectives of risk thinking and computational modeling; • Includes thorough coverage of the computational approach to the problem; • Links risk analytics and challenge analytics with the right set of computational tools to assess risk in complex, “big-data” situations.Springeroai:cds.cern.ch:19686602015
spellingShingle Engineering
Abbass, Hussein A
Computational red teaming: risk analytics of big-data-to-decisions intelligent systems
title Computational red teaming: risk analytics of big-data-to-decisions intelligent systems
title_full Computational red teaming: risk analytics of big-data-to-decisions intelligent systems
title_fullStr Computational red teaming: risk analytics of big-data-to-decisions intelligent systems
title_full_unstemmed Computational red teaming: risk analytics of big-data-to-decisions intelligent systems
title_short Computational red teaming: risk analytics of big-data-to-decisions intelligent systems
title_sort computational red teaming: risk analytics of big-data-to-decisions intelligent systems
topic Engineering
url https://dx.doi.org/10.1007/978-3-319-08281-3
http://cds.cern.ch/record/1968660
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