Produktbild: The AI Fairness Diagnostic Kit
Vorbesteller Neu

The AI Fairness Diagnostic Kit From Principle to Practice in No-Code AI Fairness Auditing

Fr. 86.90

inkl. gesetzl. MwSt., Versandkostenfrei


Beschreibung

Produktdetails

Einband

Taschenbuch

Erscheinungsdatum

10.09.2026

Abbildungen

XXVI, 11 illus., 10 illus. in color., schwarz-weiss Illustrationen, farbige Illustrationen

Verlag

Apress

Seitenzahl

440

Maße (L/B)

23.5/15.5 cm

Sprache

Englisch

EAN

9798868828843

Beschreibung

Produktdetails

Einband

Taschenbuch

Erscheinungsdatum

10.09.2026

Abbildungen

XXVI, 11 illus., 10 illus. in color., schwarz-weiss Illustrationen, farbige Illustrationen

Verlag

Apress

Seitenzahl

440

Maße (L/B)

23.5/15.5 cm

Sprache

Englisch

EAN

9798868828843

Herstelleradresse

Libri GmbH
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

Noch keine Bewertungen vorhanden

Verfassen Sie die erste Bewertung zu diesem Artikel

Helfen Sie anderen Kundinnen und Kunden durch Ihre Meinung.

Kundinnen und Kunden meinen

Bewertungen (0)

  • Produktbild: The AI Fairness Diagnostic Kit
  • Part 1: Foundations.- Chapter 1: Why AI Fairness Needs a Diagnostic Toolkit.- Chapter 2: The Limits of Awareness: From Principles to Practice.- Chapter 3: The Human Stakes: Fairness Across Domains and Populations.- Chapter 4: Linking Principles to Practice: What FDK™ Adds.- Part 2: Designing the Fairness Diagnostic Kit (FDK™).- Chapter 5: Blueprint for a Diagnostic Approach to AI Fairness.- Chapter 6: Metrics and Measures: Translating Ethics into Testable Criteria.- Chapter 7: Fairness Metrics in Depth.- Chapter 8: Governance and Accountability: Who Tests, Who Decides - Chapter 9 FDK™ Architecture: Baseline, Domain Modules.- Part 3: Fairness Diagnostic Toolkit - Chapter 10: Justice Systems: Fairness in Policing and Sentencing Algorithms.- Chapter 11: Employment and Hiring: Transparency in Automated Decisions.- Chapter 12: Education and Access: Fairness in Learning Technologies.- Chapter 13:

    Financial Services and Housing: Tackling Structural Inequities.- Chapter 14: Health Settings: Fairness in Clinical AI and Diagnostic Systems.- Chapter 15: Business Services: Fairness in Customer Analytics and Decision Support.- Chapter 16: Governance and Public Policy: Fairness in Decision Infrastructure.- Part 4: FDK In Practice.- Chapter 17: Building the Healthcare FDK™ Module.- Chapter 18: Clinical Case Scenarios.- Chapter 19: Clinical Application of FDK in Glaucoma.- Chapter 20: From Bias Detection to Bias Correction in Healthcare AI.- Part 5: Future Directions and Global Impact.- Chapter 21: Scaling FDK™ Across Domains and Geographies.- Chapter 22: Integrating FDK™ with Emerging AI Ecosystems.- Chapter 23: Policy, Regulation, and Professional Standards.- Chapter 24: Education, Literacy, and the Democratization of AI Fairness.- Chapter 25: Sustainability and the Road Ahead.- Part 6: Practical Implementation and Resources.- Chapter 26: Getting Started with the FDK™ API.- Chapter 27: The Metric Foundation of FDK™.- Chapter 28: Running and Interpreting Fairness Audits.- Chapter 29: Fairness API Libraries and Custom Queries.- Chapter 30: Case Studies, Exercises, and Self-Assessment. – Part 7: BiasClean™: Practical Bias Detection and Mitigation in Real-World Data. – Chapter 31: From Fairness Diagnosis to Data Remediation. - Chapter 32: What BiasClean™ Does. – Chapter 33: The BiasClean™ Pipeline Explained. – Chapter 34: Domain-Specific Weighting and Customization. – Chapter 35: Running BiasClean™ in Practice. – Chapter 36: Case Study: Cleaning Bias in the COMPAS Dataset. – Chapter 37: Ethical Boundaries, Risks, and Trade-offs. – Chapter 38: Integrating BiasClean™ into Organizational Workflows. – Chapter 39: Exercises and Applied Scenarios. – Chapter 40: From Tools to Stewardship: Completing the Journey Toward Fairer Decisions.