Yael Feldman-Maggor, Ron Blonder, Giora Alexandron
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引用次数: 0
Abstract
Artificial intelligence (AI) has made remarkable strides in recent years, finding applications in various fields, including chemistry research and industry. Its integration into chemistry education has gained attention more recently, particularly with the advent of generative AI (GAI) tools. However, there is a need to understand how teachers’ knowledge can impact their ability to integrate these tools into their practice. This position paper emphasizes two central points. First, teachers technological pedagogical content knowledge (TPACK) is essential for more accurate and responsible use of GAI. Second, prompt engineering—the practice of delivering instructions to GAI tools—requires knowledge that falls partially under the technological dimension of TPACK but also includes AI-related competencies that do not fit into any aspect of the framework, for example, the awareness of GAI-related issues such as bias, discrimination, and hallucinations. These points are demonstrated using ChatGPT on three examples drawn from chemistry education. This position paper extends the discussion about the types of knowledge teachers need to apply GAI effectively, highlights the need to further develop theoretical frameworks for teachers’ knowledge in the age of GAI, and, to address that, suggests ways to extend existing frameworks such as TPACK with AI-related dimensions.
近年来,人工智能(AI)取得了长足的进步,在化学研究和工业等各个领域都得到了应用。最近,尤其是随着生成式人工智能(GAI)工具的出现,人工智能与化学教育的结合越来越受到关注。然而,有必要了解教师的知识如何影响他们将这些工具融入实践的能力。本立场文件强调两个核心要点。首先,教师的技术教学内容知识(TPACK)对于更准确、更负责任地使用 GAI 至关重要。其次,提示工程--为 GAI 工具提供指导的实践--需要的知识部分属于 TPACK 的技术维度,但也包括与人工智能相关的能力,这些能力不属于该框架的任何方面,例如,对 GAI 相关问题的认识,如偏见、歧视和幻觉。我们将利用 ChatGPT 以化学教育中的三个实例来证明这些观点。本立场文件扩展了关于教师有效应用 GAI 所需的知识类型的讨论,强调了在 GAI 时代进一步发展教师知识理论框架的必要性,并针对这一问题,提出了将现有框架(如 TPACK)与人工智能相关维度进行扩展的方法。
期刊介绍:
Journal of Science Education and Technology is an interdisciplinary forum for the publication of original peer-reviewed, contributed and invited research articles of the highest quality that address the intersection of science education and technology with implications for improving and enhancing science education at all levels across the world. Topics covered can be categorized as disciplinary (biology, chemistry, physics, as well as some applications of computer science and engineering, including the processes of learning, teaching and teacher development), technological (hardware, software, deigned and situated environments involving applications characterized as with, through and in), and organizational (legislation, administration, implementation and teacher enhancement). Insofar as technology plays an ever-increasing role in our understanding and development of science disciplines, in the social relationships among people, information and institutions, the journal includes it as a component of science education. The journal provides a stimulating and informative variety of research papers that expand and deepen our theoretical understanding while providing practice and policy based implications in the anticipation that such high-quality work shared among a broad coalition of individuals and groups will facilitate future efforts.