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AI FAIRNESS 
GLOBAL LIBRARY

Tools, guides, resources, metrics,

and methodologies to support institutions

transforming AI fairness principles into practice. 

All Resources

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Data Ethics Charter

Origin:

Language:

Type:

Creator:

Worldwide

English

Guide

Institute of International Finance (IIF)

The IIF Data Ethics Charter outlines a set of principles for the ethical handling of customer data in the financial services industry and larger economy. Principles and examples of practice provide an overview of how financial institutions responsibly manage, protect, share, and use customer data.

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Empowering AI Leadership – An Oversight Toolkit for Boards of Directors

Origin:

Language:

Type:

Creator:

English & Spanish

Guide

World Economic Forum

A guide and toolkit for broader public and business leaders to consider not only AI fairness but also business strategy, governance and responsibility.

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Ethical Toolkit for Engineering/Design Practice

Origin:

Language:

Type:

Creator:

North America

English

Tech tool

Markkula Center for Applied Ethics – Santa Clara University

Santa Clara University - Multi set of tools implementing ethical reflection, deliberation, and judgment into engineering and design workflows.

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Ethics & Algorithms Toolkit

Origin:

Language:

Type:

Creator:

North America

English

Tech tool

GovEx, the City and County of San Francisco, Harvard DataSmart, Data Community DC

A practical toolkit for cities to use to help them identify the risks of using an AI algorithm, and maps out the mitigating measures for different risks.

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Explaining decisions made with AI 

Origin:

Language:

Type:

Creator:

Europe

Europe

Framework

Information Commissioner's Officer (ICO)

Mainly focused on explaining decisions made with AI, but it contains fairness issues in the model

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FairTest

Origin:

Language:

Type:

Creator:

North America

English

Tech tool

Universidad de Columbia, Stanford, EPFL, Saarland Univ., Cornell Tech, Jacobs Institute

Enables developers or auditing entities to discover and test for unwarranted associations between an algorithm's outputs and certain user subpopulations identified by protected features. Produced mainly for Tech teams

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Data Privacy and Pou

Origin:

Language:

Type:

Creator:

Pacific

English

Tech tool

Hiria Te Rangi and Amber Craig

The pou define why we exist, who we serve, what our goals are and how we make good decisions as kaitiaki for whānau. Produced mainly for Non - Tech teams.

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Ethical OS Toolkit

Origin:

Language:

Type:

Creator:

North America

English

Guide or Manual

North America

For visualizing and anticipating future risk of technology products, acknowledging that once technology is released and reaches scale it may be used for purposes beyond the original intention.

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Ethically Aligned Design

Origin:

Language:

Type:

Creator:

English

Guide or manual

IEEE Global A/IS Ethics Initiative

Identifies specific verticals and areas of interest and helps provide highly granular and pragmatic papers and insights as a natural evolution of our work. Produced mainly for Tech teams.

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Ethics Canvas

Origin:

Language:

Type:

Creator:

English

Tech tool

ADAPT Centre

Helps you structure ideas about the ethical implications of the projects you are working on, to visualize them and to resolve them. Produced mainly for Managers

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Fair Pricing in Financial Services: summary of responses and next steps

Origin:

Language:

Type:

Creator:

Europe

English

Guide

Financial Conduct Authority (FCA)

Summarices the main themes in the submissions we received and, where appropriate, provide our responses. Provides further clarification on how we will apply our Framework in practice.

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Fairness Compass

Origin:

Language:

Type:

Creator:

Europe

English

Guide

Boris Ruf and Marcin Detyniecki (AI Research at AXA)

Common definitions of fairness and ways of calculating the performance of a machine learning model. Mathematical tension across different fairness definitions makes it impossible to achieve "complete fairness." It helps stakeholders identify the most appropriate fairness definition for a specific use case via a decision tree. Produced mainly for Managers, Tech teams & Non - tech teams.

Do you want to contribute?

 This is a live Global Library.

This publication was last updated in August 2022. If you have any resource on AI fairness that has not been published on this  Global Library and you would like for it to be considered, or if you are the creator of a resource published here, and would like to edit the information, please send us an email to info@cminds.co

Disclosures:

The material included in this site is not necessarily endorsed by the World Economic Forum, the Global Future Council on AI for Humanity, C Minds and/or other collaborators.

The readers and/or users of each resource must evaluate each tool for his/her specific intended purpose. This first interation includes only free and publicly available resources.

The intelectual property of all of the resources are owned by the creators of each individual resource.

This material may be shared, provided that it is clearly attributed to its creators. This material may not be used for commercial purposes.

Global Future Council on AI for Humanity,WEF with the support of C Minds

© 2020 - 2021  

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