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Fundamental of Artificial Intelligence (CSC3180)
Prof. David Zhang School of Science and Engineering The Chinese University of Hong Kong (Shenzhen) or Tell: Room #: Chengdao Building 511 1
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Lecturer Academic Position Professional Honors Research Interests
Chair Professor: in PolyU Presidential Chair Professor: 2018 in CUHKSZ Founding Lecturer (CSC3180) in CUHKSZ Website: Professional Honors IEEE Fellow/ IAPR Fellow Selected as a Highly Cited Researchers in Engineering in 2014, 2015, 2016, 2017 and 2018, respectively. ( Research Interests Biometrics, Artificial Intelligence, Image Processing & Pattern Recognition Publication >400 International Journal Papers, >20 Monographs and >40 Patents from USA/HK/Japan/China
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Teaching Arrangement Management Tutorials 18:00-18:50 Wednesday TD_201
Lectures: :00-15:00 Tuesday ZHIX_111 13:00-14:00 Thursday ZHIX_111 Tutorials :00-18: Wednesday TD_201 18:00-18: Thursday TD_201 18:00-18: Friday TD_201 Mid-term exam 20% Assignment 30% Final exam 50%
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Teaching Arrangement TAs:
TA1: Hualie Jiang Phone: Office Hour: 19:00-20:00 Wednesday ZhirenB_502 TA2: Ruoyu Xu Phone: Office Hour: 16:00-17:00 Wednesday ZhirenB_502
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Fundamentals of Artificial Intelligence (AI)
Aim: Understand the basic technologies and some typical applications Main topics Introduction to AI (Lecture 1) Part I: AI Basic Technologies (Problem solving agent and Logical agent, etc.) (Lectures 2-7) Part II: General AI approaches (DM, PCA and Sparse) (Lectures 7-11) Part III: Recent AI development (ANN, DL) (Lectures 12-13)
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Learning Outcomes Upon completing this course, students will be able to: Understand the concept of AI and its basic functions; Use the traditional AI approaches by some typical examples; Know recent AI developments for future work; Apply the AI knowledge into some real applications.
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Background Knowledge Except Internet and Computer System, the main background is needed as follows: CSC1001: Introduction to Computer Science: Programming Methodologies STA2001: Probability and Statistics I
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Mid-Term Exam and Assignment
Mid-term test: Explain the requirement in the lecture time Assignment: A special topic for each group Project output Midterm report/Short introduction Final Report Final Presentation
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Recommended Texts Stuart Russell and Peter Norvig, Artificial Intelligence: A modern approach, 3rd edition, Prentice Hall International, Wolfgang Ertel, Introduction to Artificial Intelligence, Springer, 2011. Witten I H, Frank E, Hall M A, et al, Data Mining: Practical Machine Learning Tools and Techniques, Morgan Kaufmann, 2016. Neural Networks and Deep Learning, free online book. (
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