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AI for Humanity: Building Machines That Serve, Not Rule
Coles
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AI for Humanity: Building Machines That Serve, Not Rule in Ottawa, ON
By None
Current price: $22.39
Original price: $27.99


By None
AI for Humanity: Building Machines That Serve, Not Rule in Ottawa, ON
Current price: $22.39
Original price: $27.99
Loading Inventory...
Size: Kobo eBook
*Product information may vary - to confirm product availability, pricing, shipping and return information please contact Coles
When a system is accurate on paper but quietly unfair in practice, trust evaporates. This book offers a grounded path to design ethical ai that protects dignity while delivering real utility.
You will learn how to turn values into requirements, choose fit-for-purpose metrics, and build interfaces that people can contest and understand. Drawing on lived cases in health, hiring, and public services, it shows how human-centric ai aligns with ai policy and everyday operations. Expect practical tools for algorithmic accountability, data provenance, and documentation that actually guides decisions. The result is responsible machine learning that prefers small, careful releases over grand promises, with legible safeguards and explainable ai that changes decisions rather than decorating dashboards.
For product leaders, designers, engineers, and policymakers who want ai transparency without paralysis, this is a humane, pragmatic toolkit. It champions inclusive design and human rights tech so your teams can ship useful systems that serve people first.
When a system is accurate on paper but quietly unfair in practice, trust evaporates. This book offers a grounded path to design ethical ai that protects dignity while delivering real utility.
You will learn how to turn values into requirements, choose fit-for-purpose metrics, and build interfaces that people can contest and understand. Drawing on lived cases in health, hiring, and public services, it shows how human-centric ai aligns with ai policy and everyday operations. Expect practical tools for algorithmic accountability, data provenance, and documentation that actually guides decisions. The result is responsible machine learning that prefers small, careful releases over grand promises, with legible safeguards and explainable ai that changes decisions rather than decorating dashboards.
For product leaders, designers, engineers, and policymakers who want ai transparency without paralysis, this is a humane, pragmatic toolkit. It champions inclusive design and human rights tech so your teams can ship useful systems that serve people first.

















