0743 - 智慧創新實務應用
Practical Applications of Smart Innovation
教育目標 Course Target
課程目的:
本課程為「智慧應用微學程」的成果展現課程 (Capstone Course)。旨在讓學生將微學程中所學的跨域知識(如人工智慧、大數據、物聯網等),整合並實務應用於解決真實世界的創新問題,學生依據所修之微學程製作專題並於期末發表專題成果。本課程目的在於幫助學生瞭解AI 與產業的關聯性,並強化學生將所學知識應用於實務的能力。透過產業實務經驗導入教學,縮短理論與實務應用的落差。透過此課程,旨在培育具備「智慧創新跨域潛力」的應用型人才。
授課教師與分組:
本課程由資工系、資管系、教育研究所、統計系及通識中心教師共同開課。依據教師研究專長分組,進行產業AI 應用專題研究,學生依興趣選擇專題組別,透過分析不同產業類型的資料,深入探討 AI 在該領域的應用,並透過實際產業數據佐證研究成果,培養學生理論與產業實務能力。
上課時間與方式:
本課程上課時間114-2學期。由各組教師帶領與協助學生分組完成專題研究與發表。開學後由各組教師與學生約定討論時間,依時間完成專題進度。
安排AI 領域專家到校演講,分享AI 產業應用案例,更安排相關產業參訪,並且由各組教師帶領與協助學生分組完成專題研究與發表。由各組教師與學生約定討論時間,依時間完成專題進度。
成果發表:
在114-2學期末,各組學生需繳交小論文(10頁以內),並進行專題成果發表。本課程將邀請校內相關專長教師進行評分,選拔優秀作品投稿發表,並參與全國競賽。
評量方式包含企業參訪心得、業界講師演講、小組專題參與貢獻及小組期末成果等。
Course purpose:
This course is the Capstone Course of the "Smart Application Micro-Course". The aim is to allow students to integrate and practically apply the cross-domain knowledge (such as artificial intelligence, big data, Internet of Things, etc.) learned in the micro-learning program to solve real-world innovation problems. Students will create special topics based on the micro-learning courses they have taken and publish the results at the end of the semester. The purpose of this course is to help students understand the correlation between AI and industry, and to strengthen students' ability to apply the knowledge they have learned into practice. Introduce teaching through industrial practical experience to shorten the gap between theory and practical application. Through this course, we aim to cultivate applied talents with "cross-domain potential for smart innovation."
Teachers and groups:
This course is jointly taught by teachers from the Department of Finance and Economics, the Department of Asset Management, the Institute of Education, the Department of Statistics and the General Studies Center. Teachers are grouped into groups according to their research expertise to carry out special research on industrial AI applications. Students select thematic groups according to their interests and analyze the data of different industrial types to deeply explore the application of AI in this field. The research results are supported by actual industrial data to cultivate students' theoretical and industrial practical abilities.
Class time and method:
This course lasts from 114 to 2 semesters. Teachers in each group will lead and assist students to complete special research and publication in groups. After the semester begins, teachers in each group will agree with students on a discussion time and complete the topic progress according to the time.
Arrange experts in the field of AI to give lectures at the school, share AI industry application cases, and arrange visits to related industries. Teachers in each group will lead and assist students in completing special research and publication in groups. The teachers of each group will agree on a discussion time with the students and complete the topic progress according to the time.
Results published:
At the end of the 114-2 semester, students in each group are required to submit a short paper (within 10 pages) and publish their special results. This course will invite teachers with relevant expertise within the school to conduct grading, select outstanding works for publication, and participate in national competitions.
The evaluation methods include company visit experiences, industry lecturers’ speeches, group topic participation contributions, and group final results, etc.
參考書目 Reference Books
自編講義
Self-compiled handouts
評分方式 Grading
| 評分項目 Grading Method |
配分比例 Percentage |
說明 Description |
|---|---|---|
|
企業參訪心得 Enterprise visit experience |
10 | 2 次參訪,每次參訪心得5分 |
|
業界講師演講 Industry lectures |
10 | 3 次演講,每次演講筆記5分 |
|
小組參與貢獻 Group participation and contribution |
30 | 小組成員對於彼此參與狀況與貢獻進行互評 |
|
小組期末成果 Final results of the group |
50 | 小組期末成果,期末專題報告格式另定 |
授課大綱 Course Plan
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相似課程 Related Courses
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課程資訊 Course Information
基本資料 Basic Information
- 課程代碼 Course Code: 0743
- 學分 Credit: 0-1
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上課時間 Course Time:Tuesday/3,4
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授課教師 Teacher:羅譽鑫/鄧佳恩/楊朝棟/謝宗澔/黃家俊/余心淳/陳仕偉/陳鶴元
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修課班級 Class:共選修1-4(工學院開)
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選課備註 Memo:隔週上課
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