Skip to main content
University Catalog
>
Courses
>
COM - Computer Science (UM & GR)
>
3000
> COM 3921
Print this page
/Institutions/Yeshiva-University/json/catalogs.json
8C2AC0E5-3809-43A7-904D-3B6DCA39D926
Catalog Search
Search Options
Entire Catalog
Programs
Courses
Search
http://yu.smartcatalogiq.com
8c2ac0e5-3809-43a7-904d-3b6dca39d926
https://searchproxy.smartcatalogiq.com/search
2a3d0657-b056-4aeb-9368-2d5fe554f674
course
/Institutions/Yeshiva-University/json/2025-2026/University-Catalog-local.json
/Institutions/Yeshiva-University/json/2025-2026/University-Catalog.json
Contents
President's Welcome
About
University Policies
General Education and Jewish Studies Requirements
Undergraduate Programs
Graduate Programs
Benjamin N. Cardozo School of Law
Yeshiva University College of Dental Medicine
Pathways Programs
Articulation Agreements
Courses
ACC - Accounting
AIM - Artificial Intel./Mach. Learn.
ART - Art (UM)
ARTS - Art (UW)
BBLE - Bible (UW)
BIB - Bible (UM & GR)
BIBL - Bible (UW & GR)
BIMS - Biomedical Science
BIO - Biology (UM)
BIOE - Bioethics
BIOL - Biology (UW)
BLW - Business Law
BTM - BioTech Management
BUS - Business & Management
CHE - Chemistry (UM)
CHEM - Chemistry (UW)
COM - Computer Science (UM & GR)
1000
2000
3000
COM 3563
COM 3571
COM 3580
COM 3590
COM 3610
COM 3640
COM 3645
COM 3760
COM 3780
COM 3800
COM 3810
COM 3820
COM 3905
COM 3910
COM 3920
COM 3921
COM 3930
4000
5000
6000
7000
COMP - Computer Science (UW)
CSD - Commun. Sciences & Disorders
CYB - Cybersecurity
DAV - Data Analytics & Visualization
DENT - Dental
ECO - Economics (UM)
ECON - Economics (UW)
EDU - Education
EDUC - Education (UW)
EEX - Exceptional Education
ENG - English (UM)
ENGL - English (UW)
ENGR - Engineering
ENT - Entrepreneurship
FIN - Finance
FYS - First Year Seminar
FYSM - First Year Seminar
FYSW - First Year Seminar
FYWR - First Year Writing
HAL - Halakhah (UM & RIETS)
HEB - Hebrew (UM & GR)
HEBR - Hebrew (UW)
HES - Hebrew Studies
HIS - History (UM)
HIST - History (UW)
HOL - Holocaust and Genocide Studies
HON - Honors
HUM - Humanities
IDS - Information & Decision Science
INDS - Interdisciplinary Studies
INF - Information Systems
JED - Jewish Education
JEDU - Jewish Education (UW)
JHI - Jewish History (UM & GR)
JHIS - Jewish History (UW)
JPH - Jewish Philosophy
JPHI - Jewish Philosophy (UW)
JPHL Jewish Philosophy
JST - Jewish Studies
JTH - Jewish Thought
JTP - Jewish Thought and Philosophy
JUD - Judaic Studies (UM)
PEDU Physical Education UW
JUDS - Judaic Studies (UW)
LAT - Latin
LAW - Law
MAN - Management
MANA - IP: Management
MAR - Marketing
MAT - Mathematics (UM & GR)
MATH - Mathematics (UW)
MGMT - Management
MUS - Music (UM)
MUSI - Music (UW)
NES - Near Eastern Studies
NUR - Nursing
OTH - Occupational Therapy
PAS - Physician Assistant Studies
PFM - Psychology - Family & Marriage
PHI - Philosophy (UM)
PHIL - Philosophy (UW)
PHY - Physics (UM & GR)
PHYS - Physics (UW)
POL - Political Science (UM)
POLI - Political Science (UW)
PSA - General Psychology
PSC - Clinical Psychology
PSH - Clinical Health Psychology
PSM - Applied Psychology
PSS - School Psychology
PSY - Psychology (UM)
PSYC - Psychology (UW)
PUB - Public Health
RE - Real Estate
REA - Real Estate
SCI - Science (Undergrad Men)
SCIE - Science (Undergrad Women)
SEM Semitic Languages
SEMI - Semitic Languages
SOC - Sociology (UM)
SOCI - Sociology (UW)
SPAU - Speech Pathology and Audiology
SPEE - Speech (UW)
STA - Statistics (UM & GR)
STAT - Statistics (UW)
SWK - Social Work
TAL - Talmud
TALS - Talmudic Studies (GR W)
TAN - Tanakh
TAS - Talmudic Studies (GR)
TAX - Tax
THEA - Theater Arts
TMG - Technology Management
WMNS - Women's Studies
Administration
Research
Student Life
Jewish Life
Admissions
Tuition and Financial Aid
Athletics
Resources and Services
Campus Safety
Locations
Contact Us
Support YU
Disclaimer
Catalog Links
Catalog Home
Site Map
All Catalogs
COM 3921
Applied Machine Learning
This course covers a wide variety of machine learning topics balancing between theory of machine learning and practical applied skills. This course addresses how to solve machine learning problems (supervised and unsupervised) using techniques from both traditional machine learning and deep learning by leveraging standard, modern Python tooling such as scikit-learn and tensorflow. The course will cover additional topics such as bias and fairness in machine learning, data pipeline basics, and model deployment basics, Students will also complete a semester long project demonstrating an end-to-end machine learning application. The course involves writing Python code both for labs, homework, and exams. Prerequisite(s):
COM 3920
.
Credits
3