Ahmad M. Nazar, Mohamed Y. Selim, Ashraf Gaffar, Shakil Ahmed
{"title":"本科生学习的革命性变革:CourseGPT 及其生成式人工智能的进步","authors":"Ahmad M. Nazar, Mohamed Y. Selim, Ashraf Gaffar, Shakil Ahmed","doi":"arxiv-2407.18310","DOIUrl":null,"url":null,"abstract":"Integrating Generative AI (GenAI) into educational contexts presents a\ntransformative potential for enhancing learning experiences. This paper\nintroduces CourseGPT, a generative AI tool designed to support instructors and\nenhance the educational experiences of undergraduate students. Built on\nopen-source Large Language Models (LLMs) from Mistral AI, CourseGPT offers\ncontinuous instructor support and regular updates to course materials,\nenriching the learning environment. By utilizing course-specific content, such\nas slide decks and supplementary readings and references, CourseGPT provides\nprecise, dynamically generated responses to student inquiries. Unlike generic\nAI models, CourseGPT allows instructors to manage and control the responses,\nthus extending the course scope without overwhelming details. The paper\ndemonstrates the application of CourseGPT using the CPR E 431 - Basics of\nInformation System Security course as a pilot. This course, with its large\nenrollments and diverse curriculum, serves as an ideal testbed for CourseGPT.\nThe tool aims to enhance the learning experience, accelerate feedback\nprocesses, and streamline administrative tasks. The study evaluates CourseGPT's\nimpact on student outcomes, focusing on correctness scores, context recall, and\nfaithfulness of responses. Results indicate that the Mixtral-8x7b model, with a\nhigher parameter count, outperforms smaller models, achieving an 88.0%\ncorrectness score and a 66.6% faithfulness score. Additionally, feedback from\nformer students and teaching assistants on CourseGPT's accuracy, helpfulness,\nand overall performance was collected. The outcomes revealed that a significant\nmajority found CourseGPT to be highly accurate and beneficial in addressing\ntheir queries, with many praising its ability to provide timely and relevant\ninformation.","PeriodicalId":501168,"journal":{"name":"arXiv - CS - Emerging Technologies","volume":"50 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-07-25","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Revolutionizing Undergraduate Learning: CourseGPT and Its Generative AI Advancements\",\"authors\":\"Ahmad M. Nazar, Mohamed Y. Selim, Ashraf Gaffar, Shakil Ahmed\",\"doi\":\"arxiv-2407.18310\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Integrating Generative AI (GenAI) into educational contexts presents a\\ntransformative potential for enhancing learning experiences. This paper\\nintroduces CourseGPT, a generative AI tool designed to support instructors and\\nenhance the educational experiences of undergraduate students. Built on\\nopen-source Large Language Models (LLMs) from Mistral AI, CourseGPT offers\\ncontinuous instructor support and regular updates to course materials,\\nenriching the learning environment. By utilizing course-specific content, such\\nas slide decks and supplementary readings and references, CourseGPT provides\\nprecise, dynamically generated responses to student inquiries. Unlike generic\\nAI models, CourseGPT allows instructors to manage and control the responses,\\nthus extending the course scope without overwhelming details. The paper\\ndemonstrates the application of CourseGPT using the CPR E 431 - Basics of\\nInformation System Security course as a pilot. This course, with its large\\nenrollments and diverse curriculum, serves as an ideal testbed for CourseGPT.\\nThe tool aims to enhance the learning experience, accelerate feedback\\nprocesses, and streamline administrative tasks. The study evaluates CourseGPT's\\nimpact on student outcomes, focusing on correctness scores, context recall, and\\nfaithfulness of responses. Results indicate that the Mixtral-8x7b model, with a\\nhigher parameter count, outperforms smaller models, achieving an 88.0%\\ncorrectness score and a 66.6% faithfulness score. Additionally, feedback from\\nformer students and teaching assistants on CourseGPT's accuracy, helpfulness,\\nand overall performance was collected. 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Revolutionizing Undergraduate Learning: CourseGPT and Its Generative AI Advancements
Integrating Generative AI (GenAI) into educational contexts presents a
transformative potential for enhancing learning experiences. This paper
introduces CourseGPT, a generative AI tool designed to support instructors and
enhance the educational experiences of undergraduate students. Built on
open-source Large Language Models (LLMs) from Mistral AI, CourseGPT offers
continuous instructor support and regular updates to course materials,
enriching the learning environment. By utilizing course-specific content, such
as slide decks and supplementary readings and references, CourseGPT provides
precise, dynamically generated responses to student inquiries. Unlike generic
AI models, CourseGPT allows instructors to manage and control the responses,
thus extending the course scope without overwhelming details. The paper
demonstrates the application of CourseGPT using the CPR E 431 - Basics of
Information System Security course as a pilot. This course, with its large
enrollments and diverse curriculum, serves as an ideal testbed for CourseGPT.
The tool aims to enhance the learning experience, accelerate feedback
processes, and streamline administrative tasks. The study evaluates CourseGPT's
impact on student outcomes, focusing on correctness scores, context recall, and
faithfulness of responses. Results indicate that the Mixtral-8x7b model, with a
higher parameter count, outperforms smaller models, achieving an 88.0%
correctness score and a 66.6% faithfulness score. Additionally, feedback from
former students and teaching assistants on CourseGPT's accuracy, helpfulness,
and overall performance was collected. The outcomes revealed that a significant
majority found CourseGPT to be highly accurate and beneficial in addressing
their queries, with many praising its ability to provide timely and relevant
information.