论文标题
使人工智能民主化的框架
A Framework for Democratizing AI
论文作者
论文摘要
机器学习和人工智能被认为是第四次工业革命的组成部分。他们的影响和深远的后果虽然被公认,但尚待理解。这些技术非常专业,很少有组织和训练有素的专业人士拥有金钱,人力和可能的范围来绘制未来的范围。但是,功率浓度会导致边缘化,从而导致严重的不平等。全球的监管机构和政府正在制定国家政策,以及围绕这些技术的法律,以保护数字公民的权利以及赋予他们权力。即使是私人,非营利的组织,也通过使技术\ emph {coessible}和\ emph {负担得起的}来使技术民主化。但是,可访问性和负担能力仅仅是使该领域民主化的一些方面。其他包括但不限于,\ emph {jotability},\ emph {likebalability},\ emph {可信度},\ emph {fairness}等。正如人们所想象的那样,民主化AI是一个多方面的问题,它需要科学,技术和政策方面的进步。在\ texttt {mlsquare},我们正在此空间中开发科学工具。具体来说,我们介绍了一个自以为是的,可扩展的,\ texttt {python}框架,该框架为上述每个类别中的各种解决方案提供了一个接口点。我们介绍了设计细节,框架的API,参考实现,开发路线图以及贡献指南。
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 facets of democratizing the field. Others include, but not limited to, \emph{portability}, \emph{explainability}, \emph{credibility}, \emph{fairness}, among others. As one can imagine, democratizing AI is a multi-faceted problem, and it requires advancements in science, technology and policy. At \texttt{mlsquare}, we are developing scientific tools in this space. Specifically, we introduce an opinionated, extensible, \texttt{Python} framework that provides a single point of interface to a variety of solutions in each of the categories mentioned above. We present the design details, APIs of the framework, reference implementations, road map for development, and guidelines for contributions.