| Management number | 233487979 | Release Date | 2026/06/27 | List Price | US$8.62 | Model Number | 233487979 | ||
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A Practical Playbook for Managing AI Risk, Fairness, Governance & ComplianceAI is no longer a technical upgrade—it is a management revolution. As organizations race to modernize, leaders face a new mandate: deploy AI with speed and with accountability. Serious Managers’ Guide to Responsible AI gives modernization leaders, IT managers, and executives the complete, practical framework they need to scale AI safely, ethically, and sustainably.Grounded in real-world scenarios—from biased hiring tools to unsafe generative assistants—this book translates complex AI governance concepts into clear checklists, templates, workflows, and 90‑day playbooks you can use immediately. You’ll learn how to build guardrails, operationalize oversight, and create the governance structures that regulators, boards, and customers now expect.Drawing from global standards such as the EU AI Act, NIST AI RMF, ISO 42001, OECD principles, and emerging U.S. policy, this guide shows you how to turn Responsible AI from a buzzword into a repeatable management discipline.What You’ll LearnAccountability Made Practical How to build an AI accountability chain across data, models, deployment, and operations—so you always know who owns what.Ethics That Prevent Incidents A manager-ready ethics checklist, fairness audit templates, and real examples of how ethical failures derail modernization.Safety by Design Concrete harm scenarios, misuse deterrence strategies, and safety controls for generative AI, decision systems, and high-impact models.Fairness at Scale How to detect, measure, and mitigate bias using project-level and operational fairness checklists, equity dashboards, and bias audits.Transparency That Builds Trust Model cards, AI fact sheets, decision logs, and communication templates that make AI explainable to executives, regulators, and users.Governance That Actually Works A complete AI governance operating model—roles, workflows, approval checkpoints, escalation paths, and governance KPIs.Data Integrity & Stewardship How to build trustworthy data pipelines, define data roles, manage lineage, and establish a Data Stewardship Board.Culture, Training & Human Oversight How to build a responsibility culture where teams raise concerns early and humans remain meaningfully in the loop.Measuring AI Impact A full KPI framework for fairness, safety, compliance, and value—plus system-level scorecards and portfolio reporting templates.Your 12–24 Month Responsible AI Roadmap A four-phase roadmap (Assess → Pilot → Scale → Improve) that turns principles into a sustainable operating model.Who This Book Is ForIT modernization leadersCIOs, CTOs, and Chief Data/AI OfficersFederal and enterprise program managersRisk, compliance, and governance professionalsProduct and engineering leaders deploying AI at scaleIf you are responsible for AI-enabled systems—or accountable for their outcomes—this book gives you the tools, language, and structure to lead with confidence.Why This Book MattersAI is reshaping how decisions are made across government, healthcare, finance, and the enterprise. But without responsible governance, organizations face fairness failures, safety incidents, regulatory exposure, and loss of public trust. This book ensures you can scale AI without sacrificing ethics, safety, or credibility.Serious Managers’ Guide to Responsible AI is the definitive, practical handbook for leaders who must deliver innovation—and protect their organization at the same time. Read more
| ISBN10 | 1972752022 |
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| ISBN13 | 978-1972752029 |
| Language | English |
| Publisher | Cybersoft Publishers LLc |
| Dimensions | 6 x 0.78 x 9 inches |
| Item Weight | 1.05 pounds |
| Print length | 343 pages |
| Part of series | Serious Managers Guide to AI |
| Publication date | March 23, 2026 |
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