{"id":15,"date":"2021-09-06T15:32:57","date_gmt":"2021-09-06T06:32:57","guid":{"rendered":"https:\/\/ie.unist.ac.kr\/new\/?page_id=15"},"modified":"2026-04-01T16:16:53","modified_gmt":"2026-04-01T07:16:53","slug":"course","status":"publish","type":"page","link":"https:\/\/aigs.unist.ac.kr\/eng\/course\/","title":{"rendered":"Academic Information"},"content":{"rendered":"[vc_row row_type=&#8221;row&#8221; text_align=&#8221;left&#8221; css_animation=&#8221;&#8221; el_class=&#8221;page_course&#8221;][vc_column][vc_tabs style=&#8221;horizontal&#8221; el_class=&#8221;tabs_stRound&#8221;][vc_tab title=&#8221;Curriculum &amp; Graduation Requirements&#8221; tab_id=&#8221;29b8995d-750d-3&#8243;][vc_row_inner row_type=&#8221;row&#8221; text_align=&#8221;left&#8221; css_animation=&#8221;&#8221; el_class=&#8221;page_course_info top&#8221;][vc_column_inner width=&#8221;2\/3&#8243;][vc_column_text]\n<h4 class=\"fs_34\">Intensive AI Training and Advanced Convergent AI Research<\/h4>\n<p class=\"fs_16\">The Graduate School of Artificial Intelligence at UNIST offers a comprehensive AI curriculum designed to develop practical problem-solving skills for real-world industrial challenges. Centered on CORE AI, our program drives research innovation and fosters independent, creative thinking, empowering students to deliver impactful, industry-ready AI solutions.<\/p>\n[\/vc_column_text][\/vc_column_inner][vc_column_inner width=&#8221;1\/3&#8243;][vc_column_text]<img loading=\"lazy\" decoding=\"async\" class=\"alignnone size-full wp-image-21665\" src=\"https:\/\/aigs.unist.ac.kr\/wp-content\/uploads\/2026\/02\/img_course.jpg\" alt=\"\" width=\"502\" height=\"167\" srcset=\"https:\/\/aigs.unist.ac.kr\/eng\/wp-content\/uploads\/2026\/02\/img_course.jpg 502w, https:\/\/aigs.unist.ac.kr\/eng\/wp-content\/uploads\/2026\/02\/img_course-400x133.jpg 400w\" sizes=\"auto, (max-width: 502px) 100vw, 502px\" \/>[\/vc_column_text][\/vc_column_inner][\/vc_row_inner][vc_row_inner row_type=&#8221;row&#8221; text_align=&#8221;left&#8221; css_animation=&#8221;&#8221;][vc_column_inner][vc_column_text]\n<div class=\"page_course_info btm\">\n<dl>\n<dt>For Master\u2019s<br \/>\nProgram<\/dt>\n<dd>\n<ul class=\"bul_dot\">\n<li>Total Credits Required : 28 Credits<br \/>\n<span class=\"fs_13\">(Coursework : 21 Credits, Research : 7 Credits)<\/span><\/li>\n<li>Common Requirement :<br \/>\n<span class=\"fs_13\">Completion of at least 1 semester of Seminar<\/span><\/li>\n<li>Major Required Courses (3) :<br \/>\n<span class=\"fs_13\">Introduction to AI<br \/>\n<span class=\"fs_13\">Principles of Deep Learnin<br \/>\n<span class=\"fs_13\">AI Toolkits<\/span><\/span><\/span><\/li>\n<li>TA Requirement :<br \/>\n<span class=\"fs_13\">1 Semester Mandatory&#8221;<\/span><\/li>\n<\/ul>\n<\/dd>\n<dd><\/dd>\n<\/dl>\n<dl>\n<dt>For Doctoral<br \/>\nProgram<\/dt>\n<dd>\n<ul class=\"bul_dot\">\n<li>Total Credits Required 60 Credits<br \/>\n<span class=\"fs_13\">(Coursework: 15 Credits, Research: 45 Credits)<\/span><\/li>\n<li>Common Requirement<br \/>\n<span class=\"fs_13\">Completion of at least 1 semester of Seminar<\/span><\/li>\n<li>TA Requirement<br \/>\n<span class=\"fs_13\">Mandatory 3 Semesters&#8221;<\/span><\/li>\n<\/ul>\n<\/dd>\n<dd><strong class=\"fs_14\">Academic Excellence or real-world impact ( Option 1 or 2 )<\/strong><br \/>\n<strong>Option 1 : <\/strong>At least one first-authored paper in a premium venue ( e.g., an international SCI\/SCI-E journal or conference listed in the top conference list officially approved by UNIST AIGS )<br \/>\n<strong class=\"mt_15\">Option 2 : <\/strong>Real-world impact performance equivalent to option1 ( e.g., start-up, industrial-academic project ).<br \/>\nDissertation committee evaluates the real-world impact performance.<\/dd>\n<\/dl>\n<dl>\n<dt>For MS-PH.D<br \/>\nIntegrated<br \/>\nProgram<\/dt>\n<dd>\n<ul class=\"bul_dot\">\n<li>Total Credits Required : 60 Credits<br \/>\n<span class=\"fs_13\">(Coursework: 30 Credits, Research: 30 Credits)<\/span><\/li>\n<li>Common Requirement :<br \/>\n<span class=\"fs_13\">Completion of at least 2 semesters of Seminar<\/span><\/li>\n<li>Major Required Courses (3) :<br \/>\n<span class=\"fs_13\">Introduction to AI<br \/>\n<span class=\"fs_13\">Principles of Deep Learning<br \/>\n<span class=\"fs_13\">AI Toolkits<\/span><\/span><\/span><\/li>\n<li>TA Requirement :<br \/>\n<span class=\"fs_13\">Mandatory 3 Semesters&#8221;<\/span><\/li>\n<\/ul>\n<\/dd>\n<dd><strong class=\"fs_14\">Academic Excellence or real-world impact ( Option 1 or 2 )<\/strong><br \/>\n<strong>Option 1 : <\/strong>At least one first-authored paper in a premium venue ( e.g., an international SCI\/SCI-E journal or conference listed in the top conference list officially approved by UNIST AIGS )<br \/>\n<strong class=\"mt_15\">Option 2 : <\/strong>Real-world impact performance equivalent to option1 ( e.g., start-up, industrial-academic project ).<br \/>\nDissertation committee evaluates the real-world impact performance.<\/dd>\n<\/dl>\n<\/div>\n[\/vc_column_text][vc_custom_heading text=&#8221;\uc878\uc5c5\uc694\uac74&#8221; font_container=&#8221;tag:h2|text_align:left|color:%232a2a2a&#8221; use_theme_fonts=&#8221;yes&#8221; el_class=&#8221;tit_h3&#8243; css=&#8221;.vc_custom_1770713174389{margin-top: 50px !important;margin-bottom: 20px !important;}&#8221;][vc_column_text]\n<div class=\"page_gradreq\">\n<div class=\"table_scroll\">\n<table class=\"tbl_st3\" summary=\"\uc878\uc5c5\uc694\uac74 - Classification, Field, Course No., Course Title, Credits, Remark (Code Share)\">\n<caption>\uc878\uc5c5\uc694\uac74 \uc815\ubcf4<\/caption>\n<colgroup>\n<col width=\"12%\" \/>\n<col width=\"13%\" \/>\n<col width=\"13%\" \/>\n<col width=\"26%\" \/>\n<col width=\"13%\" \/>\n<col width=\"13%\" \/> <\/colgroup>\n<thead>\n<tr>\n<th class=\"border_db_r\">Classification<\/th>\n<th class=\"border_db_r\" scope=\"col\">Field<\/th>\n<th scope=\"col\">Course No.<\/th>\n<th scope=\"col\">Course Title<\/th>\n<th scope=\"col\">Credits<\/th>\n<th scope=\"col\">Remark (Code Share)<\/th>\n<\/tr>\n<\/thead>\n<tbody>\n<tr>\n<td class=\"border_db_btm border_db_r\" rowspan=\"3\">Research<\/td>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI590<\/td>\n<td class=\"ta_l bg\">AI Graduate Seminar<\/td>\n<td class=\"bg\">1-1-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI690<\/td>\n<td class=\"ta_l bg\">Master&#8217;s Research<\/td>\n<td class=\"bg\">Value of credit<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r border_db_btm bg\">AI Core<\/td>\n<td class=\"fw_300 border_db_btm\">AI890<\/td>\n<td class=\"ta_l border_db_btm bg\">Doctoral Research<\/td>\n<td class=\"border_db_btm bg\">Value of credit<\/td>\n<td class=\"ta_l fw_300 border_db_btm\"><\/td>\n<\/tr>\n<tr>\n<td class=\"border_db_btm border_db_r\" rowspan=\"3\">Required<\/td>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI501<\/td>\n<td class=\"ta_l bg\">Introduction to AI<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI502<\/td>\n<td class=\"ta_l bg\">Principles of Deep Learning<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r border_db_btm bg\">AI Core<\/td>\n<td class=\"fw_300 border_db_btm\">AI503<\/td>\n<td class=\"ta_l border_db_btm bg\">AI Toolkits<\/td>\n<td class=\"border_db_btm bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300 border_db_btm\"><\/td>\n<\/tr>\n<tr>\n<td class=\"border_bt border_db_r\" rowspan=\"30\">Elective<\/td>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI511<\/td>\n<td class=\"ta_l bg\">Optimization for AI<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI512<\/td>\n<td class=\"ta_l bg\">Reinforcement Learning<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\">O ( IE552 )<\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI513<\/td>\n<td class=\"ta_l bg\">Learning Theory<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI514<\/td>\n<td class=\"ta_l bg\">Big Data Analysis<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI515<\/td>\n<td class=\"ta_l bg\">Distributed Learning<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI516<\/td>\n<td class=\"ta_l bg\">Computer Vision<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI517<\/td>\n<td class=\"ta_l bg\">Deep Learning for NLP\/NLU<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI518<\/td>\n<td class=\"ta_l bg\">Deep Generative Models<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300\">AI519<\/td>\n<td class=\"ta_l bg\">Advanced Machine Learning Topics<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\">O ( CSE544 )<\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_btm border_db_r bg\">AI Core<\/td>\n<td class=\"fw_300 border_db_btm\">AI520<\/td>\n<td class=\"ta_l bg border_db_btm\">Machine Learning Fundamentals<\/td>\n<td class=\"bg border_db_btm\">3-3-0<\/td>\n<td class=\"ta_l fw_300 border_db_btm\">O ( IE503 )<\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI+X<\/td>\n<td class=\"fw_300\">AI531<\/td>\n<td class=\"ta_l bg\">Knowledge Service Engineering<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI+X<\/td>\n<td class=\"fw_300\">AI532<\/td>\n<td class=\"ta_l bg\">Advanced Information Visualization<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI+X<\/td>\n<td class=\"fw_300\">AI533<\/td>\n<td class=\"ta_l bg\">Advanced Quality Control<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI+X<\/td>\n<td class=\"fw_300\">AI534<\/td>\n<td class=\"ta_l bg\">Advanced Additive Manufacturing<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_btm border_db_r bg\">AI+X<\/td>\n<td class=\"fw_300 border_db_btm\">AI535<\/td>\n<td class=\"ta_l bg border_db_btm\">Robotics<\/td>\n<td class=\"bg border_db_btm\">3-3-0<\/td>\n<td class=\"ta_l fw_300 border_db_btm\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Chip+System<\/td>\n<td class=\"fw_300\">AI551<\/td>\n<td class=\"ta_l bg\">AI accelerator architectures<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Chip+System<\/td>\n<td class=\"fw_300\">AI552<\/td>\n<td class=\"ta_l bg\">AI Framework Design and Implementation<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\">O ( CSE613 )<\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Chip+System<\/td>\n<td class=\"fw_300\">AI553<\/td>\n<td class=\"ta_l bg\">AI-based computer system optimization<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Chip+System<\/td>\n<td class=\"fw_300\">AI554<\/td>\n<td class=\"ta_l bg\">Semiconductor Devices for AI System<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_btm border_db_r bg\">AI Chip+System<\/td>\n<td class=\"fw_300 border_db_btm\">AI555<\/td>\n<td class=\"ta_l bg border_db_btm\">Optimizations for AI Systems<\/td>\n<td class=\"bg border_db_btm\">3-3-0<\/td>\n<td class=\"ta_l fw_300 border_db_btm\">O ( EE585 )<\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Advance<\/td>\n<td class=\"fw_300\">AI701<\/td>\n<td class=\"ta_l bg\">Probabilistic Graphical Model<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Advance<\/td>\n<td class=\"fw_300\">AI702<\/td>\n<td class=\"ta_l bg\">Meta &amp; Multi-task Learning<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Advance<\/td>\n<td class=\"fw_300\">AI703<\/td>\n<td class=\"ta_l bg\">Theory of Deep Learning<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Advance<\/td>\n<td class=\"fw_300\">AI704<\/td>\n<td class=\"ta_l bg\">Machine Learning under Uncertainty<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Advance<\/td>\n<td class=\"fw_300\">AI705<\/td>\n<td class=\"ta_l bg\">Nonparametric Bayesian<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Advance<\/td>\n<td class=\"fw_300\">AI706<\/td>\n<td class=\"ta_l bg\">3D Vision and Machine Perception<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Advance<\/td>\n<td class=\"fw_300\">AI707<\/td>\n<td class=\"ta_l bg\">Deep Reinforcement Learning<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Advance<\/td>\n<td class=\"fw_300\">AI721<\/td>\n<td class=\"ta_l bg\">Automated Machine Learning<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Advance<\/td>\n<td class=\"fw_300\">AI722<\/td>\n<td class=\"ta_l bg\">Causal Learning &amp; Explainable AI<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\">O ( IE553 )<\/td>\n<\/tr>\n<tr>\n<td class=\"ta_l border_db_r bg\">AI Advance<\/td>\n<td class=\"fw_300\">AI723<\/td>\n<td class=\"ta_l bg\">Deep Learning Research<\/td>\n<td class=\"bg\">3-3-0<\/td>\n<td class=\"ta_l fw_300\"><\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<\/div>\n<\/div>\n[\/vc_column_text][\/vc_column_inner][\/vc_row_inner][\/vc_tab][vc_tab title=&#8221;Course Information&#8221; tab_id=&#8221;157f5148-c76a-8&#8243;][vc_column_text]\n<div class=\"page_course\">\n<ul>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">AI Graduate Seminar \uc138\ubbf8\ub098<\/span><span class=\"c_code\">AI590<\/span><\/div>\n<div class=\"btm\">\n<p>The purpose of this course is to extend knowledge to the state-of-the-art R&amp;D level by invited talks of the experts in various related scientific or engineering fields, and also possibly by presentations of the students in the course to exchange their own ideas and updated information for creative and fine-tuned achievements.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Master&#8217;s Research \uc11d\uc0ac\ub17c\ubb38\uc5f0\uad6c <\/span><span class=\"c_code\">AI690<\/span><\/div>\n<div class=\"btm\">\n<p>The purpose of this course is to extend knowledge to the state-of-the-art R&amp;D level by invited talks of the experts in various related scientific or engineering fields, and also possibly by presentations of the students in the course to exchange their own ideas and updated information for creative and fine-tuned achievements.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Doctoral Research \ubc15\uc0ac\ub17c\ubb38\uc5f0\uad6c<\/span><span class=\"c_code\">AI890<\/span><\/div>\n<div class=\"btm\">\n<p>This course is related to the student&#8217;s graduate thesis and dissertation. As such, students should be actively working in a laboratory setting and gaining experience through hands-on experimentation.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Introduction to AI \uc778\uacf5\uc9c0\ub2a5\ud559 \uac1c\ub860<\/span><span class=\"c_code\">AI501<\/span><\/div>\n<div class=\"btm\">\n<p>This is a subject that provides an overview of the general AI and graduate courses.<\/p>\n<ul class=\"bul_bar\">\n<li>Supervised learning \/ unsupervised learning \/ reinforced learning<\/li>\n<li>Generative Model<\/li>\n<li>Interpretability, Explainable AI, Causal Learning, Meta Learning, Federated Learning, Robot Learning;<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Principles of Deep Learning \ub525\ub7ec\ub2dd \uc6d0\ub860<\/span><span class=\"c_code\">AI502<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn about basic principles of deep learning (deep learning architecture and learning methodology)<\/p>\n<ul class=\"bul_bar\">\n<li>Backpropagation, SGD optimization, and regularization.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">AI Toolkits AI \ud234\ud0b7<\/span><span class=\"c_code\">AI503<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn about basic mathematical knowledge for understanding AI models and how to use Python ( the most widely used programming language\/environment, in AI )<\/p>\n<ul class=\"bul_bar\">\n<li>Overview of computer science to understand and implement algorithms<\/li>\n<li>Introduction to linear algebra\/probability\/statistics and how to use software libraries such as Numpy, Scipy, TensorFlow, PyTorch, etc.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Optimization for AI \uc778\uacf5\uc9c0\ub2a5 \ucd5c\uc801\ud654<\/span><span class=\"c_code\">AI511<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn about optimization techniques that are used in AI research.<\/p>\n<ul class=\"bul_bar\">\n<li>Convex optimization, submodular optimization<\/li>\n<li>Stochastic optimization, Bayesian optimization<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Reinforcement Learning \uac15\ud654 \ud559\uc2b5<\/span><span class=\"c_code\">AI512<\/span><\/div>\n<div class=\"btm\">\n<p>Reinforcement learning is a promising area in artificial intelligence research. This course will deal with an introduction to the field of reinforcement learning, and students will learn about the core theories and algorithms. Also, students will improve their understanding through a final project. At the end of this course, students will<\/p>\n<ul class=\"bul_bar\">\n<li>Understand core theories in reinforcement learning;<\/li>\n<li>implement algorithms for real applications.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Learning Theory \ud559\uc2b5 \uc774\ub860<\/span><span class=\"c_code\">AI513<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn about the classical machine learning algorithms and their theory.<\/p>\n<ul class=\"bul_bar\">\n<li>nformation theory, statistical machine learning<\/li>\n<li>PAC learning, VC dimension, Boosting, Bagging<\/li>\n<li>GLM, CART, Random Forest, SVM, PGM.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Big Data Analysis \ube45\ub370\uc774\ud130 \ubd84\uc11d<\/span><span class=\"c_code\">AI514<\/span><\/div>\n<div class=\"btm\">\n<p>This module aims to help students understand and develop systems for analyzing big data. During the course, the students will explore<\/p>\n<ul class=\"bul_bar\">\n<li>Text mining, graph mining, and recommender system;<\/li>\n<li>Techniques for acquisition, pre-processing, preparation of large-scale data;<\/li>\n<li>Data visualization.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Distributed Learning \ubd84\uc0b0 \ud559\uc2b5<\/span><span class=\"c_code\">AI515<\/span><\/div>\n<div class=\"btm\">\n<p>This module aims to help students explore theoretical and practical aspects of 1) instantiating machine learning and deep learning frameworks in multi-CPU&amp;GPU environments and 2) computation- and data-efficient inference.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Computer Vision \ucef4\ud4e8\ud130 \ube44\uc804<\/span><span class=\"c_code\">AI516<\/span><\/div>\n<div class=\"btm\">\n<p>In this course, we study how to extract and analyze visual information from images and videos using computers. Topics may include the basic theories and deep learning applications for image formation, image processing, feature extraction, segmentation, object detection, and recognition.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Deep Learning for NLP\/NLU NLP\/NLU \ub525 \ub7ec\ub2dd<\/span><span class=\"c_code\">AI517<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn how to apply deep learning techniques to NLP, NLU problems.<\/p>\n<ul class=\"bul_bar\">\n<li>Machine learning techniques that extract pattern\/knowledge from large-scale document data.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Deep Generative Models \uc2ec\uce35 \uc0dd\uc131 \ubaa8\ub378<\/span><span class=\"c_code\">AI518<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn about the deep generative models that are used to synthesize and manipulate images.<\/p>\n<ul class=\"bul_bar\">\n<li>Variational Auto-Encoder (VAE)\/Generative Adversarial Network (GAN).<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Advanced Machine Learning Topics \uace0\uae09 \uae30\uacc4 \ud559\uc2b5 \uc8fc\uc81c<\/span><span class=\"c_code\">AI519<\/span><\/div>\n<div class=\"btm\">\n<p>This course will provide detailed treatment of advanced methods that are representative of the different categories of machine learning approaches: We will study convex\/non-convex optimization and selected topics in probabilistic models, regularization techniques, and neural networks.<br \/>\nAt the end of this course, students will<\/p>\n<ul class=\"bul_bar\">\n<li>demonstrate a systematic knowledge of state-of-the-art machine learning approaches;<\/li>\n<li>develop and evaluate critically, advanced machine learning models;<\/li>\n<li>identify and implement appropriate algorithms to solve real-world problems.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Machine Learning Fundamentals \uae30\uacc4 \ud559\uc2b5 \uae30\ucd08<\/span><span class=\"c_code\">AI520<\/span><\/div>\n<div class=\"btm\">\n<p>This course gives you better understanding of many concepts, techniques, and algorithms in machine learning, beginning with topics such as classification and linear regression and ending up with more state-of-the art topics such as deep learning. The course will give the student the basic ideas and intuition behind modern machine learning methods as well as a bit more formal understanding of how, why, and when they work. The underlying theme in the course is statistical inference as it provides the foundation for most of the methods covered.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Knowledge Service Engineering \uc9c0\uc2dd \uc11c\ube44\uc2a4 \uacf5\ud559<\/span><span class=\"c_code\">AI531<\/span><\/div>\n<div class=\"btm\">\n<p>This course gives you better understanding of many concepts, techniques, and algorithms in machine learning, beginning with topics such as classification and linear regression and ending up with more state-of-the art topics such as deep learning. The course will give the student the basic ideas and intuition behind modern machine learning methods as well as a bit more formal understanding of how, why, and when they work. The underlying theme in the course is statistical inference as it provides the foundation for most of the methods covered.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Advanced Information Visualization \uace0\uae09 \uc815\ubcf4 \uc2dc\uac01\ud654<\/span><span class=\"c_code\">AI532<\/span><\/div>\n<div class=\"btm\">\n<p>In this course, we will learn information visualization techniques which allow users to analyze complex data. We also discuss recent visual analytics techniques and systems with a focus on understanding AI models.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Advanced Quality Control \uace0\uae09 \ud488\uc9c8 \uc81c\uc5b4<\/span><span class=\"c_code\">AI533<\/span><\/div>\n<div class=\"btm\">\n<p>The objective of this course is to teach fundamental methods about anomaly and change detection in a process or an environment. Topics covered include the univariate and multivariate analysis for continuous and discrete data, risk adjustments, data pre-analyses (such as dimension reduction), and profile monitoring.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Advanced Additive Manufacturing \uace0\ub4f1 \uc801\uce35 \uc81c\uc870<\/span><span class=\"c_code\">AI534<\/span><\/div>\n<div class=\"btm\">\n<p>This course introduces the contemporary research topics and applications of additive manufacturing (AM) technologies. The systematic AM process from design to manufacturing is examined comprehensively. Students will also learn the concept of \u2018Design for Additive Manufacturing (DFAM)\u2019 with practice using the various \/ up-to-date AM resources (HW\/SW) in the UNIST 3D printing research center.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Robotics \ub85c\ubd07\ud559<\/span><span class=\"c_code\">AI535<\/span><\/div>\n<div class=\"btm\">\n<p>This course introduces topics related to algorithms in robot control, estimation, planning, decision making, navigation, perception, and learning. Students are encouraged to apply algorithms to their real robots as the final project (if they have), but the course focuses on algorithmic and software portion in robotics.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">AI Accelerator Architectures AI \uac00\uc18d\uae30 \uc544\ud0a4\ud14d\uccd0<\/span><span class=\"c_code\">AI551<\/span><\/div>\n<div class=\"btm\">\n<p>Traditional CPU and GPU became processing bottleneck as the AI algorithms rapidly advance. Therefore, today\u2019s computing system requires special computing platforms that are dedicated to AI algorithms. This course introduces computer architectures for AI acceleration and optimization techniques.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\"> AI Framework Design and Implementation AI \ud504\ub808\uc784 \uc6cc\ud06c \uc124\uacc4 \ubc0f \uad6c\ud604<\/span><span class=\"c_code\">AI552<\/span><\/div>\n<div class=\"btm\">\n<p>This class will cover key concepts in systems supports for deep learning and machine learning workloads. The primary goal is understanding key properties of these workloads, learning the state-of-the-art system mechanisms and policies integrated in deep learning engines, and more importantly, figuring out how past research work made use of traditional big data processing technologies to improve performance, scalability, and programmability of deep learning applications. Still, there is an open question such that with rapid innovations in new deep learning algorithms and methodologies, how good systems work could come across with them to make synergistic impacts. This course will provide a partial answer of it.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">AI-based Computer System Optimization AI \uae30\ubc18 \ucef4\ud4e8\ud130 \uc2dc\uc2a4\ud15c \ucd5c\uc801\ud654<\/span><span class=\"c_code\">AI553<\/span><\/div>\n<div class=\"btm\">\n<p>This course introduces AI-based techniques for enhancing computer systems. This course covers AI-based optimization techniques that can be applied to key components (e.g., task schedulers and memory and storage managers) in computer systems in order to improve them in various ways such as performance, power\/energy efficiency, and security.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Semiconductor Devices for AI System AI \uc2dc\uc2a4\ud15c \ubc18\ub3c4\uccb4 \uc7a5\uce58<\/span><span class=\"c_code\">AI554<\/span><\/div>\n<div class=\"btm\">\n<p>In this class, focused on semiconductor devices such as basic computing architecture, memory devices and advanced neural devices, students are expected to acquire the knowledge and perspective of\u3000memory and neural device technologies along with basic understanding of computing and memory hierarchy.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Optimizations for AI Systems AI \uc2dc\uc2a4\ud15c \ucd5c\uc801\ud654<\/span><span class=\"c_code\">AI555<\/span><\/div>\n<div class=\"btm\">\n<p>This course introduces architecture- and system-level techniques for design of efficient artificial intelligence systems. Topics may include neural processing architectures, compilation techniques, advanced deep neural networks, and model simplification methods.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Probabilistic Graphical Model \ud655\ub960\uc801 \uadf8\ub798\ud53d \ubaa8\ub378<\/span><span class=\"c_code\">AI701<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn about diverse probabilistic graphical models based on the probability theory and optimization methods.<\/p>\n<ul class=\"bul_bar\">\n<li>Message passing, Game theory<\/li>\n<li>Bayesian network, conditional random field.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Meta &amp; Multi-task Learning \uba54\ud0c0 \ubc0f \ub2e4\uc911 \uc791\uc5c5 \ud559\uc2b5<\/span><span class=\"c_code\">AI702<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn about the modern meta-learning and multi-task learning algorithms, and theoretical backgrounds for learning multiple tasks with data-scarcity. This course covers meta learning, multi-task learning, transfer learning and any other related learning techniques.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Theory of Deep Learning \ub525 \ub7ec\ub2dd \uc774\ub860<\/span><span class=\"c_code\">AI703<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn about the theoretical understanding for the process and generalization ability of deep learning.<\/p>\n<ul class=\"bul_bar\">\n<li>Paper seminar.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Machine Learning under Uncertainty \ubd88\ud655\uc2e4\uc5d0 \uae30\ubc18\ud55c \uae30\uacc4 \ud559\uc2b5<\/span><span class=\"c_code\">AI704<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn about the machine learning techniques that are based on uncertainty estimation.<\/p>\n<ul class=\"bul_bar\">\n<li>Active learning, Robust learning, Multi-armed bandit.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Nonparametric Bayesian \ube44\ubaa8\uc218 \ubca0\uc774\uc9c0\uc548<\/span><span class=\"c_code\">AI705<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn about the recent Nonparametric bayesian learning techniques and its recent research trends.<\/p>\n<ul class=\"bul_bar\">\n<li>Dirichlet process, Gaussian process.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">3D Vision and Machine Perception 3D \ube44\uc804 \ubc0f \uba38\uc2e0 \ud37c\uc149\uc158<\/span><span class=\"c_code\">AI706<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to study the fundamental knowledge on 3D vision (multiple view geometry) and learn about the deep learning methods that are dedicated to the 3D image processing and data learning.<\/p>\n<ul class=\"bul_bar\">\n<li>3D reconstruction, Robotics, Self-driving, Detection\/Segmentation.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Deep Reinforcement Learning \uc2ec\uce35 \uac15\ud654 \ud559\uc2b5<\/span><span class=\"c_code\">AI707<\/span><\/div>\n<div class=\"btm\">\n<p>This is an in-depth course that aims to understand reinforcement learning algorithms using deep learning for applying to real-world problems.<\/p>\n<ul class=\"bul_bar\">\n<li>Projects using the OpenGym.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Automated Machine Learning \uc790\ub3d9\ud654 \uae30\uacc4 \ud559\uc2b5<\/span><span class=\"c_code\">AI721<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn about the AutoML methods and their details that make algorithms learn by themselves without the intervention of the human engineers.<\/p>\n<ul class=\"bul_bar\">\n<li>Black-box optimization, AutoML techniques, NAS(Neural Architecture Search), AutoAugment.<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Causal Learning &amp; Explainable AI \ubcf4\ud3b8\uc801 \ud559\uc2b5 \ubc0f \uc124\uba85 \uac00\ub2a5\ud55c AI<\/span><span class=\"c_code\">AI722<\/span><\/div>\n<div class=\"btm\">\n<p>In data science, it is essential to understand the causal relationship between variables as well as a high-performance prediction based on correlation. Causal learning is an emerging area in the machine learning, statistics, and artificial intelligence community. In this course, we will provide concepts, principles, and algorithms to deal with causal inference and causal discovery problems. Students will learn how to combine data and domain knowledge for causal reasoning, which is crucial in decision making science, e.g. medicine, education, and business administration.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<li>\n<div class=\"inbox\">\n<div class=\"top\"><span class=\"c_tit\">Deep Learning Research \ub525 \ub7ec\ub2dd \uc5f0\uad6c<\/span><span class=\"c_code\">AI723<\/span><\/div>\n<div class=\"btm\">\n<p>This course aims to learn about the recent research trends and flows by reviewing recent deep learning papers.<\/p>\n<\/div>\n<\/div>\n<\/li>\n<\/ul>\n<\/div>\n[\/vc_column_text][\/vc_tab][vc_tab title=&#8221;Doctoral Qualifying Examination (Q.E.)&#8221; tab_id=&#8221;1770790795545-2-8&#8243;][vc_custom_heading text=&#8221;Credit Requirements&#8221; font_container=&#8221;tag:h2|text_align:left|color:%232a2a2a&#8221; use_theme_fonts=&#8221;yes&#8221; el_class=&#8221;tit_h3&#8243; css=&#8221;.vc_custom_1771936514750{margin-bottom: 20px !important;}&#8221;][vc_column_text]\n<div class=\"table_scroll\">\n<table class=\"tbl_st3 tbl_phd\" summary=\"\uae30\uc900\ud559\uc810 - \uacfc\uc815, \uc878\uc5c5\ud559\uc810(\uad50\uacfc, \ub17c\ubb38\uc5f0\uad6c, \uc138\ubbf8\ub098, \ud569\uacc4), TA, \ud559\uc220\uc9c0, Q.E., \ub17c\ubb38\uacc4\ud68d\uc11c\">\n<caption>\uae30\uc900\ud559\uc810 \uc815\ubcf4<\/caption>\n<colgroup>\n<col width=\"12%\" \/>\n<col width=\"11%\" \/>\n<col width=\"11%\" \/>\n<col width=\"11%\" \/>\n<col width=\"11%\" \/>\n<col width=\"11%\" \/>\n<col width=\"11%\" \/>\n<col width=\"11%\" \/>\n<col width=\"11%\" \/> <\/colgroup>\n<thead>\n<tr>\n<th class=\"border_db_r border_bt\" rowspan=\"2\">Program<\/th>\n<th class=\"border_db_r border_db_btm\" colspan=\"4\">Credit Requirements for Graduation<\/th>\n<th class=\"border_bt\" rowspan=\"2\">TA<\/th>\n<th class=\"border_bt\" rowspan=\"2\">Publication<\/th>\n<th class=\"border_bt\" rowspan=\"2\">Q.E.<\/th>\n<th class=\"border_bt\" rowspan=\"2\">Research Proposal<\/th>\n<\/tr>\n<tr>\n<th>Coursework<\/th>\n<th>Research Credits<\/th>\n<th>Seminar<\/th>\n<th class=\"border_db_r\">Total<\/th>\n<\/tr>\n<\/thead>\n<tbody>\n<tr>\n<td class=\"border_db_r bg\">Master\u2019s<\/td>\n<td class=\"fw_300\">21<\/td>\n<td class=\"fw_300\">6<\/td>\n<td class=\"fw_300\">1<\/td>\n<td class=\"border_db_r bg\">28<\/td>\n<td>1<\/td>\n<td>X<\/td>\n<td>X<\/td>\n<td>X<\/td>\n<\/tr>\n<tr>\n<td class=\"border_db_r bg\">Integrated<br \/>\n(MS\u2013Ph.D.)<\/td>\n<td class=\"fw_300\">30<\/td>\n<td class=\"fw_300\">28<\/td>\n<td class=\"fw_300\">2<\/td>\n<td class=\"border_db_r bg\">60<\/td>\n<td>3<\/td>\n<td>O<\/td>\n<td>O<\/td>\n<td>O<\/td>\n<\/tr>\n<tr>\n<td class=\"border_db_r border_db_btm bg\">Ph.D.<\/td>\n<td class=\"border_db_btm fw_300\">15<\/td>\n<td class=\"border_db_btm fw_300\">44<\/td>\n<td class=\"border_db_btm fw_300\">1<\/td>\n<td class=\"border_db_r border_db_btm bg\">60<\/td>\n<td class=\"border_db_btm\">3<\/td>\n<td class=\"border_db_btm\">O<\/td>\n<td class=\"border_db_btm\">O<\/td>\n<td class=\"border_db_btm\">O<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<\/div>\n<ul class=\"bul_excl\">\n<li><strong>Required Courses : <\/strong>AI501, AI502, AI503<\/li>\n<li><strong>Publication Requirement : <\/strong>Choose one of the following\n<ol>\n<li>\u2460 At least one first-authored paper in a premium venue<\/li>\n<li>\u2461 Real-world impact performance equivalent to option \u2460 ( Evaluator : Dissertation committee )<\/li>\n<\/ol>\n<\/li>\n<li><strong>Submission Timeline : <\/strong>The Research Proposal must be submitted within two years of enrollment.<\/li>\n<\/ul>\n[\/vc_column_text][vc_separator type=&#8221;normal&#8221; color=&#8221;#e4e4e4&#8243; up=&#8221;60&#8243; down=&#8221;60&#8243;][vc_custom_heading text=&#8221;Doctoral Qualifying Examination (Q.E.)&#8221; font_container=&#8221;tag:h2|text_align:left|color:%232a2a2a&#8221; use_theme_fonts=&#8221;yes&#8221; el_class=&#8221;tit_h3&#8243; css=&#8221;.vc_custom_1771937427654{margin-bottom: 25px !important;}&#8221;][vc_row_inner row_type=&#8221;row&#8221; text_align=&#8221;left&#8221; css_animation=&#8221;&#8221; el_class=&#8221;page_phd&#8221;][vc_column_inner width=&#8221;1\/3&#8243;][vc_column_text]\n<ul class=\"bul_excl dash_btm\">\n<li><strong>Examination Method<\/strong>\n<ul class=\"bul_dot\">\n<li>Completion of designated coursework<\/li>\n<\/ul>\n<\/li>\n<li><strong>Passing Criteria<\/strong>\n<ul class=\"bul_dot\">\n<li>Minimum grade of B+ in each required course<\/li>\n<\/ul>\n<\/li>\n<\/ul>\n<ul class=\"bul_excl dash_btm\">\n<li><strong>Eligibility<\/strong>\n<ul class=\"bul_dot\">\n<li>Students enrolled in the Integrated (MS\u2013Ph.D.) or Ph.D. program (up to the 6th semester)<\/li>\n<li>Must pass within <strong>three years of enrollment<\/strong><\/li>\n<\/ul>\n<\/li>\n<li><strong>Examination Period<\/strong>\n<ul class=\"bul_dot\">\n<li>June and December (twice a year))<\/li>\n<li>Held between the start of the semester and the final examination period<\/li>\n<\/ul>\n<\/li>\n<\/ul>\n<ul class=\"bul_excl dash_btm\">\n<li><strong>Examination Format<\/strong>\n<ul class=\"bul_dot\">\n<li>Choose one of the following options<\/li>\n<\/ul>\n<ol>\n<li>\u2460 Four courses\n<ul class=\"bul_dot\">\n<li><span class=\"fc_purple\">1 required course<\/span> + 3 designated track courses<br \/>\n\u203b At least two different tracks must be selected<\/li>\n<\/ul>\n<\/li>\n<li>\u2461 Five courses\n<ul class=\"bul_dot\">\n<li>1 required course + 4 track courses<\/li>\n<\/ul>\n<\/li>\n<\/ol>\n<\/li>\n<\/ul>\n<ul class=\"list_down dash_btm\">\n<li><span class=\"bg\">PDF<\/span><a href=\"\/wp-content\/uploads\/2026\/03\/\ubc15\uc0ac\uc790\uaca9\uc2dc\ud5d8Q.E.-\uac00\uc774\ub4dc\ub77c\uc778-AIGS.pdf\" target=\"_blank\" rel=\"noopener\">Q.E. Guideline<\/a><\/li>\n<li><span class=\"bg\">HWP<\/span><a href=\"\/wp-content\/uploads\/2026\/03\/Application-for-Qualifying-Examination-AIGS.hwp\">Application Form<\/a><\/li>\n<\/ul>\n[\/vc_column_text][\/vc_column_inner][vc_column_inner width=&#8221;2\/3&#8243;][vc_column_text]\n<ul class=\"bul_excl\">\n<li><strong>Designated Track<\/strong><\/li>\n<\/ul>\n<div class=\"box_track\">\n<dl class=\"order01\">\n<dt>Core<\/dt>\n<dd class=\"bg\">AI502 (Required)<\/dd>\n<dd class=\"bg\">AI503 (Required)<\/dd>\n<dd>AI51X<\/dd>\n<dd>AI52X<\/dd>\n<dd>AI7XX<\/dd>\n<\/dl>\n<dl class=\"order02\">\n<dt>AI+X<\/dt>\n<dd>AI53X<\/dd>\n<dd>AI5a4X<\/dd>\n<\/dl>\n<dl class=\"order03\">\n<dt>Systems<\/dt>\n<dd>AI55X<\/dd>\n<dd>AI56X<\/dd>\n<\/dl>\n<\/div>\n[\/vc_column_text][\/vc_column_inner][\/vc_row_inner][\/vc_tab][\/vc_tabs][\/vc_column][\/vc_row]\n","protected":false},"excerpt":{"rendered":"<p>[vc_row row_type=&#8221;row&#8221; text_align=&#8221;left&#8221; css_animation=&#8221;&#8221; el_class=&#8221;page_course&#8221;][vc_column][vc_tabs style=&#8221;horizontal&#8221; el_class=&#8221;tabs_stRound&#8221;][vc_tab title=&#8221;Curriculum &amp; Graduation Requirements&#8221; tab_id=&#8221;29b8995d-750d-3&#8243;][vc_row_inner row_type=&#8221;row&#8221; text_align=&#8221;left&#8221; css_animation=&#8221;&#8221; el_class=&#8221;page_course_info top&#8221;][vc_column_inner width=&#8221;2\/3&#8243;][vc_column_text] Intensive AI Training and Advanced Convergent AI Research The Graduate School of Artificial Intelligence at UNIST offers a comprehensive AI curriculum designed to develop practical problem-solving skills&#8230;<\/p>\n","protected":false},"author":1,"featured_media":0,"parent":0,"menu_order":21,"comment_status":"closed","ping_status":"closed","template":"","meta":{"footnotes":""},"class_list":["post-15","page","type-page","status-publish","hentry"],"_links":{"self":[{"href":"https:\/\/aigs.unist.ac.kr\/eng\/wp-json\/wp\/v2\/pages\/15","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/aigs.unist.ac.kr\/eng\/wp-json\/wp\/v2\/pages"}],"about":[{"href":"https:\/\/aigs.unist.ac.kr\/eng\/wp-json\/wp\/v2\/types\/page"}],"author":[{"embeddable":true,"href":"https:\/\/aigs.unist.ac.kr\/eng\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/aigs.unist.ac.kr\/eng\/wp-json\/wp\/v2\/comments?post=15"}],"version-history":[{"count":161,"href":"https:\/\/aigs.unist.ac.kr\/eng\/wp-json\/wp\/v2\/pages\/15\/revisions"}],"predecessor-version":[{"id":23048,"href":"https:\/\/aigs.unist.ac.kr\/eng\/wp-json\/wp\/v2\/pages\/15\/revisions\/23048"}],"wp:attachment":[{"href":"https:\/\/aigs.unist.ac.kr\/eng\/wp-json\/wp\/v2\/media?parent=15"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}