NCHU Course Outline
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
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
1.Independent Thinking
2.Professional Knowledge with Applications
3.Creativity
4.English Proficiency
20
40
20
20
topic Discussion/Production
Exercises
Discussion
Lecturing
Attendance
Oral Presentation
Assignment
Quiz
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
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
Teaching Aids & Teacher's Website

Office Hours

Sustainable Development Goals, SDGs(Link URL)
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Update Date, year/month/day:2025/06/09 17:01:21 Printed Date, year/month/day:2025 / 6 / 18
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