Responsible AI: Implementing Ethical and Unbiased Algorithms
Autor Sray Agarwal, Shashin Mishraen Limba Engleză Paperback – 17 sep 2021
The responsibility to ensure that the AI models are ethical and make responsible decisions does not lie with the data scientists alone. The product owners and the business analysts are as important in ensuring bias-free AI as the data scientists on the team. This book addresses the part that these roles play in building a fair, explainable and accountable model, along with ensuring model and data privacy. Each chapter covers the fundamentals for the topic and then goes deep into the subject matter – providing the details that enable the business analysts and the data scientists to implement these fundamentals.
AI research is one of the most active and growing areas of computer science and statistics. This book includes an overview of the many techniques that draw from the research or are created by combining different research outputs. Some of the techniques from relevant and popular libraries are covered, but deliberately not drawn very heavily from as they are already well documented, and new research is likely to replace some of it.
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Specificații
ISBN-13: 9783030768591
ISBN-10: 3030768597
Pagini: 177
Ilustrații: XIX, 177 p. 143 illus., 132 illus. in color.
Dimensiuni: 155 x 235 mm
Greutate: 0.29 kg
Ediția:1st ed. 2021
Editura: Springer International Publishing
Colecția Springer
Locul publicării:Cham, Switzerland
ISBN-10: 3030768597
Pagini: 177
Ilustrații: XIX, 177 p. 143 illus., 132 illus. in color.
Dimensiuni: 155 x 235 mm
Greutate: 0.29 kg
Ediția:1st ed. 2021
Editura: Springer International Publishing
Colecția Springer
Locul publicării:Cham, Switzerland
Cuprins
Introduction.- Fairness and proxy features.- Bias in data.- Explainability.- Remove bias from ML model.- Remove bias from ML output.- Accountability in AI.- Data & Model privacy.- Conclusion.
Notă biografică
Sray Agarwal:
Sray Agarwal has applied AI and analytics from Financial Services to Hospitality and has led the development of Responsible AI framework for one of the largest banks in the UK. A well-known industry expert with expertise in Predictive Modelling, Forecasting and advanced Machine Learning with profound knowledge of algorithms and advanced statistic, Sray is an Associate Director of Data Science and Analytics at Publicis Sapient, the digital business transformation company. He is an active blogger and has given his talks on Ethical AI at major AI conferences across the globe. His contribution to the development of the technology was recognised by Microsoft when he won the Most Valued Professional in AI award in 2020.
Shashin Mishra:
A senior technology leader, Shashin Mishra has built transformational AI products across industry verticals. In his current role, he is a Director of Data Science and Analytics at Publicis Sapient, the digital business transformation company. Prior to Publicis Sapient, Shashin co-founded an IOT start up to perform real time power distribution grid monitoring and was recognised as the Most Promising Entrepreneur of India in 2009. His current areas of interest are building Responsible Algorithms and the role of Regulators in the future of AI. Shashin lives with his wife and their two children in London, UK.
Textul de pe ultima copertă
This book is written for software product teams that use AI to add intelligent models to their products or are planning to use it. As AI adoption grows, it is becoming important that all AI driven products can demonstrate they are not introducing any bias to the AI-based decisions they are making, as well as reducing any pre-existing bias or discrimination.
The responsibility to ensure that the AI models are ethical and make responsible decisions does not lie with the data scientists alone. The product owners and the business analysts are as important in ensuring bias-free AI as the data scientists on the team. This book addresses the part that these roles play in building a fair, explainable and accountable model, along with ensuring model and data privacy. Each chapter covers the fundamentals for the topic and then goes deep into the subject matter – providing the details that enable the business analysts and the data scientists to implement these fundamentals.
AI research is one of the most active and growing areas of computer science and statistics. This book includes an overview of the many techniques that draw from the research or are created by combining different research outputs. Some of the techniques from relevant and popular libraries are covered, but deliberately not drawn very heavily from as they are already well documented, and new research is likely to replace some of it.
The responsibility to ensure that the AI models are ethical and make responsible decisions does not lie with the data scientists alone. The product owners and the business analysts are as important in ensuring bias-free AI as the data scientists on the team. This book addresses the part that these roles play in building a fair, explainable and accountable model, along with ensuring model and data privacy. Each chapter covers the fundamentals for the topic and then goes deep into the subject matter – providing the details that enable the business analysts and the data scientists to implement these fundamentals.
AI research is one of the most active and growing areas of computer science and statistics. This book includes an overview of the many techniques that draw from the research or are created by combining different research outputs. Some of the techniques from relevant and popular libraries are covered, but deliberately not drawn very heavily from as they are already well documented, and new research is likely to replace some of it.
- Hands-on approach to ensure easy practical implementation of the concepts discussed
- Most of the techniques covered are new, with only a few that refer to existing packages. For the techniques covered, the book goes deep into the subject matter and includes code to help the product teams implement these techniques for their products
- Also addresses the contribution that product owners and the business analysts make to the product being fair and explainable, explaining every topic in detail, including the math involved
- Covers the end-to-end view of what any software product team needs to do to be able to create a robust, successful and fair AI-driven product
- Most of the chapters include notes sections throughout to cover the topic in progress for all audiences. Non-technical readers will also benefit by the introductions and conclusions for the book and in each of the chapters
Caracteristici
Hands-on approach to ensure easy practical implementation of the concepts discussed Most of the techniques covered are new, with only a few that refer to existing packages. For the techniques covered, the book goes deep into the subject matter and includes code to help the product teams implement these techniques for their products Also addresses the contribution that product owners and the business analysts make to the product being fair and explainable, explaining every topic in detail, including the math involved Covers the end-to-end view of what any software product team needs to do to be able to create a robust, successful and fair AI-driven product