Q-Module-Bot: A Generative AI-Based Question and Answer Bot for Module Teaching Support

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Mia Allen;Usman Naeem;Sukhpal Singh Gill
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引用次数: 0

Abstract

Contributions: In this article, a generative artificial intelligence (AI)-based Q&A system has been developed by integrating information retrieval and natural language processing techniques, using course materials as a knowledge base and facilitating real-time student interaction through a chat interface. Background: The rise of advanced AI exemplified by ChatGPT developed by OpenAI, has sparked interest in its application within higher education. AI has the potential to reshape education delivery through chatbots and related tools, improving remote learning and mitigating challenges, such as student isolation and educator administrative burdens. Yet, ChatGPT’s practical applications in education remain uncertain, potentially due to its novel and enigmatic nature. Additionally, current e-learning chatbot systems often suffer from development complexity and a lack of input from key stakeholders, leading to developer-focused solutions rather than user-centered ones. Intended Outcomes: In this manuscript, we introduce a practical implementation of AI in education by creating a system called Q-Module-Bot that is accessible for both technical and nontechnical educators to harness e-learning benefits and demystify generative pretraining transformer (GPT). Application Design: The proposed Q-Module-Bot system has utilized pretrained large language models (LLMs) to build a Q&A system that helps students with their queries and supports education delivery using content extracted from a virtual learning environment (VLE). Findings: The prototype and system evaluation confirm the effectiveness of a scalable cross-departmental tool featuring source attribution and real-time responses. While successful in encouraging wider acceptance of GPT use cases in higher education, refinements are needed for full integration into the VLE and expansion to other modules/courses.
Q 模块机器人:用于模块教学支持的基于人工智能的生成式问答机器人
贡献:本文通过整合信息检索和自然语言处理技术,开发了基于生成式人工智能(AI)的问答系统,将课程材料作为知识库,并通过聊天界面促进学生的实时互动。开发背景以 OpenAI 开发的 ChatGPT 为代表的高级人工智能的兴起,引发了人们对其在高等教育中应用的兴趣。人工智能有可能通过聊天机器人和相关工具重塑教育交付,改善远程学习,减轻学生隔离和教育工作者管理负担等挑战。然而,ChatGPT 在教育领域的实际应用仍不确定,这可能是由于它的新颖性和神秘性。此外,当前的电子学习聊天机器人系统往往存在开发复杂和缺乏关键利益相关者投入的问题,导致解决方案以开发人员为中心,而不是以用户为中心。预期成果:在本手稿中,我们通过创建一个名为 Q-Module-Bot 的系统,介绍了人工智能在教育领域的实际应用,该系统可供技术和非技术教育工作者使用,以利用电子学习的优势,并揭开生成式预训练转换器(GPT)的神秘面纱。应用设计:拟议的 Q-Module-Bot 系统利用预训练的大型语言模型(LLM)来构建一个问答系统,帮助学生解答疑问,并利用从虚拟学习环境(VLE)中提取的内容支持教育交付。研究结果:原型和系统评估证实了这一可扩展的跨部门工具的有效性,其特点是来源归属和实时响应。虽然成功地鼓励了更广泛地接受高等教育中的 GPT 用例,但还需要进行改进,以便完全集成到 VLE 中,并扩展到其他模块/课程。
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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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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