課程與核心能力關聯配比(%) |
課程目標之教學方法與評量方法 |
課程目標 |
核心能力 |
配比(%) |
教學方法 |
評量方法 |
This course is concerned with the following objectives:
• Understanding data representation and underlying mathematical formulas for deep learning: We will delve into various data representations, such as vectors, matrices, tensors, etc., and explore the mathematical principles and applications behind these representations.
• Translating mathematical formulas of deep learning into code: We will learn how to transform mathematical formulas into code to achieve specific tasks. It involves selecting appropriate models and writing efficient and reliable code. Additionally, we will learn how to evaluate and interpret the results to verify their correctness and effectiveness.
• Learning the fundamentals and recent advancements in deep learning: Deep learning is a significant branch of artificial intelligence that emulates the structure and functionality of the human brain, enabling automatic learning and extraction of critical features from data. This course will teach students basic deep learning concepts, including various neural networks, forward/backward propagations, etc. We will also explore the latest developments in deep learning, such as convolutional neural networks (CNNs), recurrent neural networks (RNNs), and generative adversarial networks (GANs), and understand their applications in image processing.
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授課內容(單元名稱與內容、習作/每週授課、考試進度-共16週加自主學習) |
週次 |
授課內容 |
第1週 |
Basic introduction to artificial intelligence (Chap 1) |
第2週 |
Introduction to Environmental and Data Science Packages (Chap 2) |
第3週 |
Introduction to Environmental and Data Science Packages (Chap 2) |
第4週 |
Introduction to Environmental and Data Science Packages (Chap 2) |
第5週 |
Machine Learning and Deep Learning Fundamentals (Chap 3) |
第6週 |
Machine Learning and Deep Learning Fundamentals (Chap 3) |
第7週 |
Machine Learning and Deep Learning Fundamentals (Chap 3) |
第8週 |
Neural Networks and Convolutional Neural Networks (Chap 4) |
第9週 |
Neural Networks and Convolutional Neural Networks (Chap 4)/ HW #1 |
第10週 |
Common Deep Learning Training Techniques (Chap 5) |
第11週 |
Introduction to Deep Learning Architectures (Chap 6) |
第12週 |
Advanced Deep Learning Techniques (Chap 7)/ HW #2 |
第13週 |
Advanced Deep Learning Techniques (Chap 7)/ HW #3 |
第14週 |
Some Deep Learning Examples for image processing (Chap 8) |
第15週 |
Some Deep Learning Examples for image processing (Chap 8)/ HW #4 |
第16週 |
Some Deep Learning Examples for image processing (Chap 8)
Term Project
Term Project |
自主學習 內容 |
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學習評量方式 |
Homework: 40%
Term Project: 60% |
教科書&參考書目(書名、作者、書局、代理商、說明) |
Textbook
彭彥璁,李偉華,陳彥蓉, “深度學習–影像處理應用”, 初版, 全華圖書, 2023.
Reference book
Sebastian Raschka, Yuxi (Hayden) Liu, and Vahid Mirjalili, “Machine Learning with PyTorch and Scikit-Learn”, 1st edition, Packt Publishing, 2022. |
課程教材(教師個人網址請列在本校內之網址) |
iLearning 3.0 |
課程輔導時間 |
Wednesday 5:00pm – 6:00pm or by appointment |
聯合國全球永續發展目標(連結網址) |
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