Practical Ai Ethics Integrating Ethical Principles Into Machine Learning Projects


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Practical AI Ethics: Integrating Ethical Principles into Machine Learning Projects


Practical AI Ethics: Integrating Ethical Principles into Machine Learning Projects

Author: Peter Jones

language: en

Publisher: Walzone Press

Release Date: 2025-01-17


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"Practical AI Ethics: Integrating Ethical Principles into Machine Learning Projects" is an essential resource for AI professionals, policymakers, and academics dedicated to embedding ethical practices within the rapidly evolving field of machine learning. This comprehensive guide tackles some of the most pressing ethical challenges, including transparency, bias, privacy, fairness, and compliance, offering clear and actionable strategies for addressing these issues in AI systems. Written in a practical and solution-oriented style, the book simplifies complex ethical concepts, providing readers with advanced tools, practical frameworks, and insightful case studies to guide the ethical integration of AI in real-world projects. From minimizing the environmental impact of AI to safeguarding human rights and navigating regulatory landscapes, this book equips readers to take on the ethical challenges of AI with confidence. By engaging with *"Practical AI Ethics: Integrating Ethical Principles into Machine Learning Projects,"* readers will gain the knowledge and skills to lead the charge in promoting fairness, accountability, and transparency in AI. It is a must-read for anyone committed to shaping a responsible, ethical future for AI innovation.

Artificial Intelligence for a Better Future


Artificial Intelligence for a Better Future

Author: Bernd Carsten Stahl

language: en

Publisher: Springer Nature

Release Date: 2021-03-17


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This open access book proposes a novel approach to Artificial Intelligence (AI) ethics. AI offers many advantages: better and faster medical diagnoses, improved business processes and efficiency, and the automation of boring work. But undesirable and ethically problematic consequences are possible too: biases and discrimination, breaches of privacy and security, and societal distortions such as unemployment, economic exploitation and weakened democratic processes. There is even a prospect, ultimately, of super-intelligent machines replacing humans. The key question, then, is: how can we benefit from AI while addressing its ethical problems? This book presents an innovative answer to the question by presenting a different perspective on AI and its ethical consequences. Instead of looking at individual AI techniques, applications or ethical issues, we can understand AI as a system of ecosystems, consisting of numerous interdependent technologies, applications and stakeholders. Developing this idea, the book explores how AI ecosystems can be shaped to foster human flourishing. Drawing on rich empirical insights and detailed conceptual analysis, it suggests practical measures to ensure that AI is used to make the world a better place.

AI Ethics in Higher Education: Insights from Africa and Beyond


AI Ethics in Higher Education: Insights from Africa and Beyond

Author: Caitlin C. Corrigan

language: en

Publisher: Springer Nature

Release Date: 2023-01-20


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This open access book tackles the pressing problem of integrating concerns related to Artificial Intelligence (AI) ethics into higher education curriculums aimed at future AI developers in Africa and beyond. For doing so, it analyzes the present and future states of AI ethics education in local computer science and engineering programs. The authors share relevant best practices and use cases for teaching, develop answers to ongoing organizational challenges, and reflect on the practical implications of different theoretical approaches to AI ethics. The book is of great interest to faculty members, researchers, and students in the fields of artificial intelligence, computer science, mathematics, computer engineering, and related areas, as well as higher education administration.