
Civic Algorithms
Building Trustworthy AI for Society
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In an era where artificial intelligence is rapidly transforming the machinery of government and public service, the question is no longer whether AI will shape society, but how-and for whom. Algorithmic Stewardship: Governing AI for the Public Good (or any of the above titles) offers a comprehensive and deeply researched roadmap for deploying AI in ways that are not only effective, but also just, transparent, and accountable. Drawing on real-world case studies, cutting-edge research, and the lived experiences of public servants, technologists, and community advocates, this book explores the fu...
In an era where artificial intelligence is rapidly transforming the machinery of government and public service, the question is no longer whether AI will shape society, but how-and for whom. Algorithmic Stewardship: Governing AI for the Public Good (or any of the above titles) offers a comprehensive and deeply researched roadmap for deploying AI in ways that are not only effective, but also just, transparent, and accountable. Drawing on real-world case studies, cutting-edge research, and the lived experiences of public servants, technologists, and community advocates, this book explores the full lifecycle of AI in public systems-from initial conception and stakeholder mapping, through participatory design and procurement, to continuous monitoring, impact assessment, and eventual retirement. At every stage, it foregrounds the ethical imperatives that must guide public sector innovation: fairness, equity, transparency, and the protection of human dignity. The book begins by tracing the historical arc of technology in government, highlighting both the promises and perils of past digital transformations. It then delves into the unique challenges posed by AI, including the risk of algorithmic bias, the opacity of complex models, and the potential for new forms of exclusion or harm. Through detailed frameworks and practical templates, readers learn how to map the stakeholder landscape, engage marginalized communities, and move beyond token consultation to genuine co-creation. Central to the book is the development and operationalization of robust equity metrics. Readers are guided through the nuances of algorithmic fairness-demographic parity, equalized odds, counterfactual fairness-and shown how to select, measure, and monitor these metrics in real-world deployments. The text emphasizes the importance of continuous, participatory impact assessment, ensuring that AI systems remain aligned with evolving societal values and do not inadvertently perpetuate or amplify historical injustices. The book also addresses the practicalities of ethical procurement, vendor due diligence, and the drafting of contracts that embed transparency and accountability requirements. It offers actionable strategies for establishing clear lines of responsibility, grievance and redress mechanisms, and independent oversight-ensuring that when things go wrong, there are pathways for remediation and learning. Throughout, the narrative is enriched by a major case study: the deployment of an AI-powered triage system in public healthcare. This field project illustrates the complexities of stakeholder engagement, the iterative refinement of equity metrics, and the challenges of integrating AI into existing workflows without eroding trust or exacerbating disparities. Finally, the book looks to the future, exploring emerging trends such as generative AI, climate resilience, and the global movement toward participatory AI governance. It concludes with a call to action for public sector leaders, engineers, and citizens alike: to embrace the responsibilities of algorithmic stewardship, to foster a culture of continuous learning and ethical reflection, and to ensure that AI serves as a force for public good in an increasingly digital world.