Nov 27, 2024  
2023-2024 Graduate Catalog 
    
2023-2024 Graduate Catalog [ARCHIVED CATALOG]

Data Analytics Learning Outcomes


Upon completion of the the Master of Science in Data Analytics, students should be able to:

  1. Successfully compete for employment in the public and private sector in the field of data analytics.
  2. Develop methods to obtain and structure large volume sets and multiple sources.
  3. Apply statistical and predictive modeling to big data for decision making.
  4. Demonstrate the ability to use Big Data tools.
  5. Demonstrate knowledge of high ethical standards and the application of those standards in real life criminal justice situations consistent with the Christian humanistic philosophy of St. Francis de Sales.

 

Program Learning Outcomes are mapped in the following way: (F = Focus, E = Extensive Focus)

 

A

B

C

D

E

IT 511

F

F

 

 

F

IT 513

F

E

E

 

E

IT 541

F

F

 

 

F

IT 553

E

 

E

E

F

IT 562

E

 

E

E

F

 

Specific course outcomes are as follows:

IT 511 Database Management

IT 513 Data Mining and Visualization

IT 541 Decision Support Systems

IT 553 Statistical Analysis and Predictive Modeling

IT 562 Data Analytics

Describe advanced database design techniques

 

Be able to use the RStudio IDE to create the R’s data structures necessary to read, manipulate, and graph data files with basic separators (blanks, commas, tabs, soft and hard returns), Excel files, and SAS, and SPPS files

Define and describe a decision support system

 

Understand statistical concepts and apply to projects for decision making

 

Understand statistical concepts and apply them to predictive analytics models

 

Implement advanced database management skills

 

Learn critical programming skills with R Programming and its interaction with some other analytical tools

Analyze, model and design a decision support system

 

Demonstrate the ability to use and interpret statistical software effectively

 

Demonstrate the ability to use and understand statistical software effectively

 

Develop the physical and logical models as related to database planning

Improve and clean data quality for reporting and analytics for decision makers

Define knowledge management: acquisition and validation

 

Develop methods and form conclusions to solve a real world problem

Develop predictive models couple with AI.

 

Apply advanced SQL programming techniques

 

Learn the fundamentals of statistics and analytics.

 

Unitize artificial intelligence and neural network software

 

Apply predictive modeling techniques to large data sets

 

Demonstrate a graduate-level competency in the use of analytical tools and techniques to do predictive analytics

 

Exploring and visualizing data

 

Conceptualize a web-based decision support system

 

 

 

Explore career opportunities in Data Science, Mining, and Warehousing