A Framework for Democratizing AI
Shakkeel Ahmed, Ravi S. Mula, Soma S. Dhavala

TL;DR
This paper introduces an extensible Python framework designed to make AI more accessible, understandable, fair, and credible, addressing multiple facets of democratization in a unified manner.
Contribution
It presents a comprehensive, modular framework with APIs and guidelines to facilitate democratizing AI across science, technology, and policy domains.
Findings
Framework provides a unified interface for diverse AI democratization tools
Design details and APIs enable easy integration and extension
Road map and contribution guidelines support community development
Abstract
Machine Learning and Artificial Intelligence are considered an integral part of the Fourth Industrial Revolution. Their impact, and far-reaching consequences, while acknowledged, are yet to be comprehended. These technologies are very specialized, and few organizations and select highly trained professionals have the wherewithal, in terms of money, manpower, and might, to chart the future. However, concentration of power can lead to marginalization, causing severe inequalities. Regulatory agencies and governments across the globe are creating national policies, and laws around these technologies to protect the rights of the digital citizens, as well as to empower them. Even private, not-for-profit organizations are also contributing to democratizing the technologies by making them \emph{accessible} and \emph{affordable}. However, accessibility and affordability are all but a few of the…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Ethics and Social Impacts of AI · Adversarial Robustness in Machine Learning
