Modular experiential learning for secure, safe, and reliable AI: Curricular Initiative to Promote Education in Trustworthy AI

A. Fong, Ajay K. Gupta, Steve M. Carr, Shameek Bhattacharjee, Michael A. Harnar
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引用次数: 1

Abstract

Artificial intelligence (AI) is increasingly applied to IT systems. However, AI can be manipulated to perform undesirably, exhibit biases or abusive behaviors. When AI algorithms are parallelized on high-performance computing-based cyberinfrastructure (CI), such misbehaviors and uncertainty can multiply to obscure the root causes. Secure, safe, and reliable computing techniques can mitigate these problems. The project described in this paper aims to inform curriculum and develop materials to educate students who use AI from the outset, so that they will first become aware of the issues and secondly practical considerations will be integrated with theory in classes. Intensive, multi-faceted, modular, experiential learning units are designed to rapidly upgrade the skills of current and future CI users, so they can apply new skills to their tasks. The loosely coupled modules can be taken as standalone self-directed units or integrated into existing classes, starting with CS 1 and CS 2, which are taken by many non-CS STEM students. In a sandpit environment, learners take measured risks when guided on a journey of discovery. The primary purpose of this paper is to present key findings of the research following a 2-year pilot. A secondary purpose of the paper is to disseminate this exciting endeavor broadly, so that likeminded educators and researchers can consider participating in the project.
面向安全、安全、可靠的人工智能的模块化体验式学习:促进可信赖人工智能教育的课程倡议
人工智能(AI)越来越多地应用于IT系统。然而,人工智能可以被操纵,表现出不受欢迎的行为,表现出偏见或滥用行为。当人工智能算法在基于高性能计算的网络基础设施(CI)上并行化时,这种错误行为和不确定性可能会成倍增加,从而掩盖根本原因。可靠、安全、可靠的计算技术可以缓解这些问题。本文所描述的项目旨在为课程提供信息,并开发材料,从一开始就教育使用人工智能的学生,这样他们首先会意识到这些问题,其次,实际考虑将与课堂上的理论相结合。密集的、多方面的、模块化的体验式学习单元旨在快速提升当前和未来CI用户的技能,使他们能够将新技能应用到他们的任务中。松散耦合的模块可以作为独立的自主单元,也可以集成到现有的课程中,从许多非CS STEM学生学习的CS 1和CS 2开始。在沙坑环境中,学习者在探索之旅的引导下承担了适当的风险。本文的主要目的是介绍经过2年试点研究的主要发现。本文的第二个目的是广泛传播这一令人兴奋的努力,以便志同道合的教育工作者和研究人员可以考虑参与该项目。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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