{"title":"VidyaRANG:基于大语言模型的会话学习平台","authors":"Chitranshu Harbola, Anupam Purwar","doi":"arxiv-2407.16209","DOIUrl":null,"url":null,"abstract":"Providing authoritative information tailored to a student's specific doubt is\na hurdle in this era where search engines return an overwhelming number of\narticle links. Large Language Models such as GPTs fail to provide answers to\nquestions that were derived from sensitive confidential information. This\ninformation which is specific to some organisations is not available to LLMs\ndue to privacy constraints. This is where knowledge-augmented retrieval\ntechniques become particularly useful. The proposed platform is designed to\ncater to the needs of learners from divergent fields. Today, the most common\nformat of learning is video and books, which our proposed platform allows\nlearners to interact and ask questions. This increases learners' focus time\nexponentially by restricting access to pertinent content and, at the same time\nallowing personalized access and freedom to gain in-depth knowledge.\nInstructor's roles and responsibilities are significantly simplified allowing\nthem to train a larger audience. To preserve privacy, instructors can grant\ncourse access to specific individuals, enabling personalized conversation on\nthe provided content. This work includes an extensive spectrum of software\ndevelopment and product management skills, which also circumscribe knowledge of\ncloud computing for running Large Language Models and maintaining the\napplication. For Frontend development, which is responsible for user\ninteraction and user experience, Streamlit and React framework have been\nutilized. To improve security and privacy, the server is routed to a domain\nwith an SSL certificate, and all the API key/s are stored securely on an AWS\nEC2 instance, to enhance user experience, web connectivity to an Android\nStudio-based mobile app has been established, and in-process to publish the app\non play store, thus addressing all major software engineering disciplines","PeriodicalId":501168,"journal":{"name":"arXiv - CS - Emerging Technologies","volume":"24 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-07-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"VidyaRANG: Conversational Learning Based Platform powered by Large Language Model\",\"authors\":\"Chitranshu Harbola, Anupam Purwar\",\"doi\":\"arxiv-2407.16209\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Providing authoritative information tailored to a student's specific doubt is\\na hurdle in this era where search engines return an overwhelming number of\\narticle links. 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引用次数: 0
摘要
在搜索引擎返回大量文章链接的时代,针对学生的具体疑问提供权威信息是一个障碍。大型语言模型(如 GPT)无法提供源自敏感机密信息的问题答案。由于隐私方面的限制,LLM 无法获得这些特定于某些组织的信息。这正是知识增强检索技术特别有用的地方。拟议的平台旨在满足不同领域学习者的需求。如今,最常见的学习形式是视频和书籍,而我们提出的平台允许学习者进行互动和提问。通过限制对相关内容的访问,学习者的专注时间成倍增加,同时允许个性化访问和自由获取深入知识。为了保护个人隐私,讲师可以将课程访问权授予特定的个人,从而可以就所提供的内容进行个性化对话。这项工作包括广泛的软件开发和产品管理技能,还包括运行大型语言模型和维护应用程序的云计算知识。前端开发负责用户交互和用户体验,使用了 Streamlit 和 React 框架。为了提高安全性和私密性,服务器被路由到一个具有 SSL 证书的域,所有 API 密钥都安全地存储在 AWSEC2 实例中,为了增强用户体验,建立了与基于 AndroidStudio 的移动应用程序的网络连接,并正在 play 商店发布应用程序,从而解决了所有主要软件工程学科的问题
VidyaRANG: Conversational Learning Based Platform powered by Large Language Model
Providing authoritative information tailored to a student's specific doubt is
a hurdle in this era where search engines return an overwhelming number of
article links. Large Language Models such as GPTs fail to provide answers to
questions that were derived from sensitive confidential information. This
information which is specific to some organisations is not available to LLMs
due to privacy constraints. This is where knowledge-augmented retrieval
techniques become particularly useful. The proposed platform is designed to
cater to the needs of learners from divergent fields. Today, the most common
format of learning is video and books, which our proposed platform allows
learners to interact and ask questions. This increases learners' focus time
exponentially by restricting access to pertinent content and, at the same time
allowing personalized access and freedom to gain in-depth knowledge.
Instructor's roles and responsibilities are significantly simplified allowing
them to train a larger audience. To preserve privacy, instructors can grant
course access to specific individuals, enabling personalized conversation on
the provided content. This work includes an extensive spectrum of software
development and product management skills, which also circumscribe knowledge of
cloud computing for running Large Language Models and maintaining the
application. For Frontend development, which is responsible for user
interaction and user experience, Streamlit and React framework have been
utilized. To improve security and privacy, the server is routed to a domain
with an SSL certificate, and all the API key/s are stored securely on an AWS
EC2 instance, to enhance user experience, web connectivity to an Android
Studio-based mobile app has been established, and in-process to publish the app
on play store, thus addressing all major software engineering disciplines