Course Name |
(中) 人工智慧概論(2046) |
(Eng.) Introduction to Artificial Intelligence |
Offering Dept |
Department of Business Administration |
Course Type |
Elective |
Credits |
3 |
Teacher |
Huang Yang |
Department |
Department of Business Administration/Undergraduate |
Language |
English |
Semester |
2025-FALL |
Course Description |
This course provides a comprehensive overview of Artificial Intelligence (AI), covering theoretical concepts including Machine Learning, Deep Neural Networks, and Generative AI. Through the practice of Python and related frameworks (Scikit-Learn, PyTorch, etc.), students are expected to implement ML/DL solutions for problems across various domains. |
Prerequisites |
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self-directed learning in the course |
Y |
Relevance of Course Objectives and Core Learning Outcomes(%) |
Teaching and Assessment Methods for Course Objectives |
Course Objectives |
Competency Indicators |
Ratio(%) |
Teaching Methods |
Assessment Methods |
1. Basic introduction to Artificial Intelligence algorithms and practices.
2. Fundamental Python and Machine Learning packages programming skills
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1.Independent Thinking |
2.Professional Knowledge with Applications |
3.Creativity |
4.English Proficiency |
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topic Discussion/Production |
Exercises |
Discussion |
Lecturing |
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Attendance |
Oral Presentation |
Assignment |
Quiz |
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Course Content and Homework/Schedule/Tests Schedule |
Week |
Course Content |
Week 1 |
Course Overview and Introduction to Artificial Intelligence |
Week 2 |
Python Basic Tutorial |
Week 3 |
Exploratory Data Analysis |
Week 4 |
Introduction to Machine Learning I |
Week 5 |
Introduction to Machine Learning II |
Week 6 |
Data Preprocessing, Imbalanced Data, Model Performance Evaluation |
Week 7 |
Artificial Neural Networks I |
Week 8 |
Artificial Neural Networks II |
Week 9 |
Final Project Proposal & Discussion |
Week 10 |
Midterm Exam |
Week 11 |
Computer Vision and Convolutional Neural Networks I |
Week 12 |
Computer Vision and Convolutional Neural Networks II |
Week 13 |
Natural Language Processing and Recurrent Neural Networks |
Week 14 |
Large Language Models and Prompt Engineering |
Week 15 |
Final Project Presentation |
Week 16 |
Final Project Presentation |
self-directed learning |
Python online practice: Codecademy |
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Evaluation |
Participation (10%)
Homework (30%)
Mid-term exam (30%)
Final Project (30%) |
Textbook & other References |
1. I. Goodfellow and Y. Bengio and A. Courville, Deep Learning, The MIT Press, 2016 (http://www.deeplearningbook.org)
2. Data Mining: Concepts and Techniques, 3rd ed., Morgan Kaufmann Publishers, 2011, by Jiawei Han, Micheline Kamber and Jian Pei
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Teaching Aids & Teacher's Website |
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Office Hours |
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Sustainable Development Goals, SDGs(Link URL) |
| include experience courses:N |
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