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Responsible AI in the Enterprise

You're reading from  Responsible AI in the Enterprise

Product type Book
Published in Jul 2023
Publisher Packt
ISBN-13 9781803230528
Pages 318 pages
Edition 1st Edition
Languages
Authors (2):
Adnan Masood Adnan Masood
Profile icon Adnan Masood
Heather Dawe Heather Dawe
Profile icon Heather Dawe
View More author details

Table of Contents (16) Chapters

Preface 1. Part 1: Bigot in the Machine – A Primer
2. Chapter 1: Explainable and Ethical AI Primer 3. Chapter 2: Algorithms Gone Wild 4. Part 2: Enterprise Risk Observability Model Governance
5. Chapter 3: Opening the Algorithmic Black Box 6. Chapter 4: Robust ML – Monitoring and Management 7. Chapter 5: Model Governance, Audit, and Compliance 8. Chapter 6: Enterprise Starter Kit for Fairness, Accountability, and Transparency 9. Part 3: Explainable AI in Action
10. Chapter 7: Interpretability Toolkits and Fairness Measures – AWS, GCP, Azure, and AIF 360 11. Chapter 8: Fairness in AI Systems with Microsoft Fairlearn 12. Chapter 9: Fairness Assessment and Bias Mitigation with Fairlearn and the Responsible AI Toolbox 13. Chapter 10: Foundational Models and Azure OpenAI 14. Index 15. Other Books You May Enjoy

The ML life cycle

Reproducibility is crucial in ML to ensure consistent and replicable results. Integrating the MLOps life cycle promotes reproducibility, auditability, ethics, reliability, and trustworthiness in ML models. Auditability ensures the model behaves as expected and provides transparency of its workings and data usage. Ethical guidelines addressing privacy rights, data accuracy, and transparency are essential when deploying AI systems. A well-defined ML life cycle facilitates adherence to these guidelines. Model monitoring guarantees reliability by operationalizing the trustworthiness of ML models, particularly in high-risk applications and regulated industries. Implementing routine testing, validation by outside experts, and ongoing performance monitoring is essential. Clear explanations for decision-making and user control over their own data ensure a transparent, repeatable, and auditable AI system.

Adopting an ML life cycle

ML operationalization is the process...

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