Centralized Database Access: Transformer Framework and LLM/Chatbot Integration-Based Hybrid Model

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied System Innovation Pub Date : 2024-02-15 DOI:10.3390/asi7010017
Diana Bratić, Marko Šapina, Denis Jurečić, Jana Žiljak Gršić
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Abstract

This paper addresses the challenges associated with the centralized storage of educational materials in the context of a fragmented and disparate database. In response to the increasing demands of modern education, efficient and accessible retrieval of materials for educators and students is essential. This paper presents a hybrid model based on the transformer framework and utilizing an API for an existing large language model (LLM)/chatbot. This integration ensures precise responses drawn from a comprehensive educational materials database. The model architecture uses mathematically defined algorithms for precise functions that enable deep text processing through advanced word embedding methods. This approach improves accuracy in natural language processing and ensures both high efficiency and adaptability. Therefore, this paper not only provides a technical solution to a prevalent problem but also highlights the potential for the continued development and integration of emerging technologies in education. The aim is to create a more efficient, transparent, and accessible educational environment. The importance of this research lies in its ability to streamline material access, benefiting the global scientific community and contributing to the continuous advancement of educational technology.
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集中式数据库访问:转换器框架和基于 LLM/Chatbot 集成的混合模型
本文论述了在分散、不同的数据库中集中存储教育资料所面临的挑战。为了应对现代教育日益增长的需求,为教育工作者和学生提供高效、可访问的资料检索至关重要。本文介绍了一种基于转换器框架的混合模型,该模型利用了现有大型语言模型(LLM)/聊天机器人的应用程序接口。这种整合可确保从全面的教育资料数据库中提取精确的响应。模型架构采用数学定义的精确函数算法,通过先进的单词嵌入方法实现深度文本处理。这种方法提高了自然语言处理的准确性,并确保了高效率和适应性。因此,本文不仅为一个普遍存在的问题提供了技术解决方案,而且还凸显了新兴技术在教育领域持续发展和整合的潜力。其目的是创造一个更高效、更透明、更方便的教育环境。这项研究的重要性在于它能够简化材料的获取,使全球科学界受益,并促进教育技术的不断进步。
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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