High Tech, High Touch

Search
Close
Search
 

Graduate

  • home
  • Graduate
  • Department of Smart Factory Convergence
  • Curriculum

Graduate

Department of Smart Factory Convergence

For more details on the courses, please refer to the Course Catalog

교육과정
Code Course Title Credit Learning Time Division Degree Grade Note Language Availability
ADS5006 Advanced Machine Learning 3 6 Major Master/Doctor 1-8 Applied Data Science Korean Yes
This course provides a broad introduction to machine learning, datamining, and statistical pattern recognition. Topics include: (i) Supervised learning (parametric/non-parametric algorithms, support vector machines, kernels, neural networks). (ii) Unsupervised learning (clustering, dimensionality reduction, recommender systems, deep learning). (iii) Best practices in machine learning (bias/variance theory; innovation process in machine learning and AI). The course will also draw from numerous case studies and applications, so that you'll also learn how to apply learning algorithms to building smart robots (perception, control), text understanding (web search, anti-spam), computer vision, medical informatics, audio, database mining, and other areas.
AIM5002 Theory of Machine Learning 3 6 Major Master/Doctor 1-4 Artificial Intelligence Korean Yes
MachineLearningisthestudyofhowtobuildcomputersystemsthatlearnfromexperience.Thiscoursewillgiveanoverviewofmanymodelsandalgorithmsusedinmodernmachinelearning,includinggeneralizedlinearmodels,multi-layerneuralnetworks,supportvectormachines,Bayesianbeliefnetworks,clustering,anddimension reduction.
AIM5004 Deep Neural Networks 3 6 Major Master/Doctor Artificial Intelligence - No
In this class, we will cover the following state-of-the-art deep learning techniques such as linear classification, feedforward deep neural networks (DNNs), various regularization and optimization for DNNs, convolutional neural networks (CNNs), recurrent neural networks (RNN), attention mechanism, generative deep models (VAE, GAN), visualization and explanation.
CHS5006 Optimization and performance evaluation of 3D printing 3 6 Major Master/Doctor 1-4 Challenge Semester - No
Evolution of 3D printing application area is slow due to difficulty in developing contents, optimization and evaluation deposit process. We will discuss optimization techniques and evaluation of deposit process for DED based powder metal 3D printing. A real data set will be used for application of theory learned from the class. Furthermore, deep learning and machine learning techniques will be also covered.
CHS7001 Introduction to Blockchain 3 6 Major Bachelor/Master/Doctor Challenge Semester - No
This course deals with the basic concept for the overall understanding of the technology called 'blockchain'. We will discuss the purpose of technology and background where blockchain techology has emerged. This course aims to give you the opportunity to think about the limitations and applicability of the technology yourself. You will understand the pros and cons of the two major cryptocurrencies: Bitcoin and Ethereum. In addition, we will discuss the concepts and limitations about consensus algorithm (POW, POS), the scalability of the blockchain, and cryptoeconomics. You will advance your understanding of blockchain technogy through discussions among students about the direction and applicability of the technology.
CHS7002 Machine Learning and Deep Learning 3 6 Major Bachelor/Master/Doctor Challenge Semester - No
This course covers the basic machine learning algorithms and practices. The algorithms in the lectures include linear classification, linear regression, decision trees, support vector machines, multilayer perceptrons, and convolutional neural networks, and related python pratices are also provided. It is expected for students to have basic knowledge on calculus, linear algebra, probability and statistics, and python literacy.
CHS7003 Artificial Intelligence Application 3 6 Major Bachelor/Master/Doctor Challenge Semester - No
Cs231n, an open course at Stanford University, is one of the most popular open courses on image recognition and deep learning. This class uses the MOOC content which is cs231n of Stanford University with a flipped class way.  This class requires basic undergraduate knowledge of mathematics (linear algebra, calculus, probability/statistics) and basic Python-based coding skills. The specific progress and activities of the class are as follows. 1) Listening to On-line Lectures (led by learners) 2) On-line lecture (English) Organize individual notes about what you listen to 3) On-line lecture (English) QnA discussion about what was listened to (learned by the learner) 4) QnA-based Instructor-led Off-line Lecture (Korean) Lecturer 5) Team Supplementary Presentation (Learner-led)   For each topic, learn using the above mentioned steps from 1) to 5). The grades are absolute based on each activity, assignment, midterm exam and final project.   Class contents are as follows. - Introduction Image Classification Loss Function & Optimization (Assignment # 1) - Introduction to Neural Networks - Convolutional Neural Networks (Assignment # 2) - Training Neural Networks - Deep Learning Hardware and Software - CNN Architectures-Recurrent Neural Networks (Assignment # 3) - Detection and Segmentation - Generative Models - Visualizing and Understanding - Deep Reinforcement Learning - Final Project.   This class will cover the deep learning method related to image recognitio
COV7001 Academic Writing and Research Ethics 1 1 2 Major Master/Doctor SKKU Institute for Convergence Korean Yes
1) Learn the basic structure of academic paper writing, and obtain the ability to compose academic paper writing. 2) Learn the skills to express scientific data in English and to be able to sumit research paper in the international journals. 3) Learn research ethics in conducting science and writing academic papers.
ECE4280 Wireless Networks Cornerstone 3 6 Major Bachelor/Master 1-4 Electrical and Computer Engineering English Yes
This course provides an overview on wireless networking principles and technologies from the view point of computer science majors. The major themes will focus on the fundamentals and principles covering the protocol stacks of wireless networks, and wireless data services.
ECE5613 Special Topics on Information Security Theory 3 6 Major Master/Doctor 1-4 Electrical and Computer Engineering - No
There will be studied on the classical cryptosystem, symmetric cryptosystem, public key cryptosystem, and zero-knowledge interactive proof system which are based on number theory, information theory and complexity theory. By using above cryptographic techniques, also, identification, authentication, digital signature, key management, and the security of communication and computer network will be lectured.
ECE5940 Mobile Computing 3 6 Major Master/Doctor 1-4 Electrical and Computer Engineering - No
In this course, the issues of mobile computing environments, which is introduced by technical advances in the development of portable computers and wireless communication technologies, are studied. We deal with design issues which stem from three essential properties of mobile computing: portability, mobility, and wireless communication. Especially, we study communication protocols for mobile computing environments, design methodologies of softwares for mobile computing environments, operating systems for mobile hosts, and some typical application softwares for mobile environments.
ECE5947 HCI Design 3 6 Major Master/Doctor 1-4 Electrical and Computer Engineering Korean Yes
HCI, the general concept defining the interaction between the user and the product, suggests that the initiative of product development is shifted from the knowledge of the developer to the satisfaction of the user. Consequently the product should be designed such that it is more appealing to diverse user groups and its use is easy to learn. This lecture provides students with principles and techniques of HCI necessary to design HW and SW component of the product to the user’s satisfaction.
ECE5969 Database Systems 3 6 Major Master/Doctor 1-4 Electrical and Computer Engineering - No
In this course, extending basic concepts in databases, we learn fundamental concepts and theory for constructing and managing database systems. The major contents that will be covered is the following: file indexing, external hashing, external sorting, database tuning, relational schema design, concurrency control, recovery, security, integrity control, distributed databases, deductive databases, etc.
EME4905 Convergence Business Model Planning 3 6 Major Bachelor/Master 1-4 Mechanical Engineering Korean Yes
This course amis to learn the methodologies for developing a new business model based on understandings on the needs of internet user group and network communities which are expanding the interconnections and creating new values. Students will study various technological trends such as IoT, cultural trends, big data, and methods for user study. This will be used to establish technology-converging business models and appropriate marketting strategies through multidisciplinary approach.
EME5174 Advanced Design and Manufacturing Engineering 3 6 Major Master/Doctor 1-4 Mechanical Engineering English Yes
This course covers foundations for design theory and methodology such as design creativity, design cognition, and designers’ interactions and design for X – manufacture, assembly/disassembly, robustness, environment, etc. - methodologies with theoretical and project-based approaches. The advanced theories on traditional manufacturing technologies such as casting, forming, machining, welding and etc. will also be covered in addition to next generation technologies including micro/bio manufacturing, laser-based manufacturing, 3-dimensional rapid prototyping, and so forth.