Skip to main content
Print this page
Select a Catalog
Walsh College Academic Catalog 2024-2025
Walsh College Transfer Resources
Walsh College Academic Catalog 2023-2024
Archive Catalogs
Catalog Search
Search Options
Entire Catalog
Programs
Courses
Search
http://walshcollege.smartcatalogiq.com/
8698c621-e417-4e9b-8e3d-6bf4091b1b26
https://searchproxy.smartcatalogiq.com/search
4c6cf6ea-7f94-4939-be03-d8ff20fa56e2
course
/Institutions/Walsh-College/json/current/Walsh-College-Catalog-local.json
/Institutions/Walsh-College/json/current/Walsh-College-Catalog.json
Contents
Welcome to Walsh College
General Information
Academic Calendar
Admission to Walsh College
Readmission to Walsh College
Financial Aid and Scholarships
Student Services
International Student Information
Veteran Student Information
Walsh College Programs
Walsh College Courses
ACC - Accounting
BL - Business Law
BTC - Business & Technology
BUS - Business
CE - Continuing Education Courses
COM - Communications
DCT - Doctoral
DIS - Dissertation
ECN - Economics
ENG - English
FIN - Finance
IDS - Interdisciplinary
IT - Information Technology
000 Level Courses
200 Level Courses
300 Level Courses
400 Level Courses
500 Level Courses
IT 501
IT 502
IT 505
IT 506
IT 510
IT 511
IT 512
IT 520
IT 530
IT 531
IT 532
IT 533
IT 534
IT 536
IT 537
IT 538
IT 540
IT 542
IT 544
IT 545
IT 546
IT 547
IT 550
IT 551
IT 552
IT 553
IT 554
IT 555
IT 556
IT 557
IT 558
IT 559
IT 560
IT 565
IT 566
IT 567
IT 575
IT 590
IT 591
IT 592
IT 593
IT 594
IT 599
700
MDL - Moodle Orientation
MGT - Management
MKT - Marketing
MTH - Math
QM - Quantitative Methods
RES - Research Methods
RSD - Residency
TAX - Taxation
Professional Development
Policies and Procedures
Walsh College Leadership
Walsh College Faculty
Addendum
Catalog Links
Catalog Home
Site Map
All Catalogs
IT 556
MACHINE LEARNING
Students will obtain the ability to build both supervised and unsupervised machine learning models. In constructing such models, students shall develop a variety of 'art and practice' skills such as: use of Git and GitHub; use of Jupyter notebooks, and how to leverage multiprocessing with multiple cores on their own computer. Students will also enhance existing skills learned in IT540 including data acquisition, data cleaning, data imputation, data exploration and visualization, hyperparameter estimation, cross validation, modeling and others. These skills will be developed through text readings, significant 'hands-on' execution of provided Jupyter notebooks using the Python language, and development of end-to-end modeling projects. Additional readings and videos may be assigned by the instructor.
Credits
3
Prerequisite
IT 545
Distribution
INFORMATION TECHNOLOGY