978-3-031-21491-2.pdf

This open access book explains how leading business organizations attempt to achieve the responsible and ethical use of artificial intelligence (AI) and other advanced information technologies. These technologies can produce tremendous insights and benefits. But they can also invade privacy, perpetu...

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Γλώσσα:English
Έκδοση: Springer Nature 2023
Διαθέσιμο Online:https://link.springer.com/978-3-031-21491-2
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spelling oapen-20.500.12657-860992023-12-13T11:31:11Z Business Data Ethics Hirsch, Dennis Bartley, Timothy Chandrasekaran, Aravind Norris, Davon Parthasarathy, Srinivasan Turner, Piers Norris AI Ethics Data Ethics AI Ethics Management Responsible AI Governance of AI Responsible data science Ethical data science Ethical data analytics Business ethics Corporate social responsibility Risk management bic Book Industry Communication::L Law::LN Laws of Specific jurisdictions::LNJ Entertainment & media law bic Book Industry Communication::L Law::LB International law bic Book Industry Communication::U Computing & information technology::UY Computer science::UYQ Artificial intelligence bic Book Industry Communication::K Economics, finance, business & management::KJ Business & management::KJG Business ethics & social responsibility bic Book Industry Communication::K Economics, finance, business & management::KJ Business & management::KJR Corporate governance This open access book explains how leading business organizations attempt to achieve the responsible and ethical use of artificial intelligence (AI) and other advanced information technologies. These technologies can produce tremendous insights and benefits. But they can also invade privacy, perpetuate bias, and otherwise injure people and society. To use these technologies successfully, organizations need to implement them responsibly and ethically. The question is: how to do this? Data ethics management, and this book, provide some answers. The authors interviewed and surveyed data ethics managers at leading companies. They asked why these experts see data ethics as important and how they seek to achieve it. This book conveys the results of that research on a concise, accessible way. Much of the existing writing on data and AI ethics focuses either on macro-level ethical principles, or on micro-level product design and tooling. The interviews showed that companies need a third component: data ethics management. This third element consists of the management structures, processes, training and substantive benchmarks that companies use to operationalize their high-level ethical principles and to guide and hold accountable their developers. Data ethics management is the connective tissue makes ethical principles real. It is the focus of this book. This book should be of use to organizations that wish to improve their own data ethics management efforts, legislators and policymakers who hope to build on existing management practices, scholars who study beyond compliance business behavior, and members of the public who want to understand better the threats that AI poses and how to reduce them. 2023-12-13T10:35:50Z 2023-12-13T10:35:50Z 2024 book ONIX_20231213_9783031214912_5 9783031214912 9783031214905 https://library.oapen.org/handle/20.500.12657/86099 eng SpringerBriefs in Law application/pdf n/a 978-3-031-21491-2.pdf https://link.springer.com/978-3-031-21491-2 Springer Nature Springer International Publishing 10.1007/978-3-031-21491-2 10.1007/978-3-031-21491-2 6c6992af-b843-4f46-859c-f6e9998e40d5 14f4ea20-7ca0-467a-b791-0dcc685b467b 9783031214912 9783031214905 Springer International Publishing 101 Cham [...] Ohio State University OSU open access
institution OAPEN
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language English
description This open access book explains how leading business organizations attempt to achieve the responsible and ethical use of artificial intelligence (AI) and other advanced information technologies. These technologies can produce tremendous insights and benefits. But they can also invade privacy, perpetuate bias, and otherwise injure people and society. To use these technologies successfully, organizations need to implement them responsibly and ethically. The question is: how to do this? Data ethics management, and this book, provide some answers. The authors interviewed and surveyed data ethics managers at leading companies. They asked why these experts see data ethics as important and how they seek to achieve it. This book conveys the results of that research on a concise, accessible way. Much of the existing writing on data and AI ethics focuses either on macro-level ethical principles, or on micro-level product design and tooling. The interviews showed that companies need a third component: data ethics management. This third element consists of the management structures, processes, training and substantive benchmarks that companies use to operationalize their high-level ethical principles and to guide and hold accountable their developers. Data ethics management is the connective tissue makes ethical principles real. It is the focus of this book. This book should be of use to organizations that wish to improve their own data ethics management efforts, legislators and policymakers who hope to build on existing management practices, scholars who study beyond compliance business behavior, and members of the public who want to understand better the threats that AI poses and how to reduce them.
title 978-3-031-21491-2.pdf
spellingShingle 978-3-031-21491-2.pdf
title_short 978-3-031-21491-2.pdf
title_full 978-3-031-21491-2.pdf
title_fullStr 978-3-031-21491-2.pdf
title_full_unstemmed 978-3-031-21491-2.pdf
title_sort 978-3-031-21491-2.pdf
publisher Springer Nature
publishDate 2023
url https://link.springer.com/978-3-031-21491-2
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