2023-02-10 04:02:50 +00:00
< html >
< head >
< title >
ECSE-6850 - Introduction to Deep Learning
< / title >
< meta property = "og:title" content = "ECSE-6850 - Introduction to Deep Learning" >
< meta property = "og:description" content = "Deep learning fundamentals and applications in artificial intelligence. Topics include machine learning foundation, linear regression and classification, deep neural networks, convolutional neural networks, recurrent neural networks, generative adversary neural networks, Bayesian neural networks, deep Boltzmann machine, deep Bayesian networks, and deep reinforcement learning." >
2023-02-10 04:08:22 +00:00
< link rel = "stylesheets" href = "../css/common.css" >
< link rel = "stylesheets" href = "../css/coursedisplay.css" >
2023-02-10 04:02:50 +00:00
< / head >
< body class = "search_plugin_added" >
< div id = "qlog-header" >
< a id = "qlog-wordmark" href = "./" > < svg > < use href = "./images/quatalogHWordmark.svg#QuatalogHWordmark" > < / use > < / svg > < / a >
< input type = "text" id = "header-search" placeholder = "Search..." onkeydown = "prepSearch(this, event)" >
< / div >
< div id = "cd-flex" >
< div id = "course-info-container" >
< h1 id = "name" >
Introduction to Deep Learning
< / h1 >
< h2 id = "code" >
ECSE-6850
< / h2 >
< p >
Deep learning fundamentals and applications in artificial intelligence. Topics include machine learning foundation, linear regression and classification, deep neural networks, convolutional neural networks, recurrent neural networks, generative adversary neural networks, Bayesian neural networks, deep Boltzmann machine, deep Bayesian networks, and deep reinforcement learning.
< / p >
< div id = "cattrs-container" >
< span id = "credits-pill" class = "attr-pill" >
3 credits
< / span >
< / div >
< div id = "crosslist-container" >
< div id = "crosslist-title" class = "rel-info-title" >
Cross-listed with:
< / div >
< div id = crosslist-classes" class = "rel-info-courses" >
< a class = "course-pill" href = "ECSE-4850.html" > ECSE-4850 Introduction to Deep Learning< / a >
< / div >
< / div >
< div id = "prereq-container" class = "rel-info-container" >
< div id = "prereq-title" class = "rel-info-title" >
Prereqs:
< / div >
< div id = "prereq-classes" class = "rel-info-courses" >
< span class = "none-rect" >
none
< / span >
< / div >
< / div >
< / div >
< div id = "past-container" >
< h2 id = "past-title" >
Past Term Data
< / h2 >
< div id = "opt-container" >
< div id = "key-panel" >
< div id = "yes-code" class = "key-code" >
< span class = "code-icon" id = "yes-code-icon" >
< svg > < use href = "./icons.svg#circle-check" > < / use > < / svg >
< / span >
Offered
< / div >
< div id = "no-code" class = "key-code" >
< span class = "code-icon" id = "no-code-icon" >
< svg > < use href = "./icons.svg#circle-no" > < / use > < / svg >
< / span >
Not Offered
< / div >
< div id = "diff-code" class = "key-code" >
< span class = "code-icon" id = "diff-code-icon" >
< svg > < use href = "./icons.svg#circle-question" > < / use > < / svg >
< / span >
Offered as Cross-Listing Only
< / div >
< div id = "nil-code" class = "key-code" >
< span class = "code-icon" id = "nil-code-icon" >
< svg > < use href = "./icons.svg#circle-empty" > < / use > < / svg >
< / span >
No Term Data
< / div >
< / div >
< div id = "control-panel" >
< label for = "simple-view-input" id = "simple-view-label" class = "view-option-label" >
< span class = "view-icon" id = "simple-view-icon" >
< span class = "view-icon-selected" > < svg > < use href = "./icons.svg#circle-dot" > < / use > < / svg > < / span >
< span class = "view-icon-unselected" > < svg > < use href = "./icons.svg#circle-empty" > < / use > < / svg > < / span >
< / span >
Simple View
< / label >
< label for = "detail-view-input" id = "detail-view-label" class = "view-option-label" >
< span class = "view-icon" id = "detail-view-icon" >
< span class = "view-icon-selected" > < svg > < use href = "./icons.svg#circle-dot" > < / use > < / svg > < / span >
< span class = "view-icon-unselected" > < svg > < use href = "./icons.svg#circle-empty" > < / use > < / svg > < / span >
< / span >
Detailed View
< / label >
< / div >
< / div >
< table >
< thead >
< tr >
< th > < / th >
< th class = "spring season-label" > Spring< / th >
< th class = "summer season-label" colspan = "2" > Summer< / th >
< th class = "fall season-label" > Fall< / th >
< / tr >
< tr >
< th colspan = "2" > < / th >
< th class = "summer2 midsum-label" > (Session 1)< / th >
< th class = "summer3 midsum-label" > (Session 2)< / th >
< th > < / th >
< / tr >
< / thead >
< tbody >
< tr >
< th class = "year" > 2023< / th >
< td class = "term spring offered" >
< div class = "view-container detail-view-container" >
< span class = "term-course-info" >
Intro To Deep Learning (3c)
< / span >
< ul class = "prof-list" >
< li > Qiang Ji< / li >
< / ul >
< span class = "course-capacity" >
Seats Taken: 17/30
< / span >
< / div >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2022< / th >
< td class = "term spring offered" >
< div class = "view-container detail-view-container" >
< span class = "term-course-info" >
Intro To Deep Learning (3c)
< / span >
< ul class = "prof-list" >
< li > Qiang Ji< / li >
< / ul >
< span class = "course-capacity" >
Seats Taken: 23/30
< / span >
< / div >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2021< / th >
< td class = "term spring offered" >
< div class = "view-container detail-view-container" >
< span class = "term-course-info" >
Intro To Deep Learning (3c)
< / span >
< ul class = "prof-list" >
< li > Qiang Ji< / li >
< / ul >
< span class = "course-capacity" >
Seats Taken: 16/30
< / span >
< / div >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2020< / th >
< td class = "term spring offered" >
< div class = "view-container detail-view-container" >
< span class = "term-course-info" >
Intro To Deep Learning (3c)
< / span >
< ul class = "prof-list" >
< li > Qiang Ji< / li >
< / ul >
< span class = "course-capacity" >
Seats Taken: 25/30
< / span >
< / div >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2019< / th >
< td class = "term spring offered" >
< div class = "view-container detail-view-container" >
< span class = "term-course-info" >
Intro To Deep Learning (3c)
< / span >
< ul class = "prof-list" >
< li > Qiang Ji< / li >
< / ul >
< span class = "course-capacity" >
Seats Taken: 27/40
< / span >
< / div >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2018< / th >
< td class = "term spring not-offered" >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2017< / th >
< td class = "term spring not-offered" >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2016< / th >
< td class = "term spring not-offered" >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2015< / th >
< td class = "term spring not-offered" >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2014< / th >
< td class = "term spring not-offered" >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2013< / th >
< td class = "term spring not-offered" >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2012< / th >
< td class = "term spring not-offered" >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2011< / th >
< td class = "term spring not-offered" >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2010< / th >
< td class = "term spring not-offered" >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2009< / th >
< td class = "term spring not-offered" >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2008< / th >
< td class = "term spring not-offered" >
< / td >
< td colspan = "2" class = "term summer not-offered" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< tr >
< th class = "year" > 2007< / th >
< td class = "term spring unscheduled" >
< / td >
< td colspan = "2" class = "term summer unscheduled" >
< / td >
< td class = "term fall not-offered" >
< / td >
< / tr >
< / tbody >
< / table >
< / div >
< / div >
< / body >
< / html >