User Tools

Site Tools


note_on_data_science_as_an_academic_discipline

Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revision Previous revision
note_on_data_science_as_an_academic_discipline [2016/02/23 12:21]
hkimscil
note_on_data_science_as_an_academic_discipline [2016/02/23 12:23] (current)
hkimscil
Line 38: Line 38:
   * School: **College of Arts and Sciences**   * School: **College of Arts and Sciences**
   * Location: San Francisco, CA   * Location: San Francisco, CA
-Full-Time Program: 1 year +  * Full-Time Program: 1 year 
-Part-Time Program: No +  ​* ​Part-Time Program: No 
-Online Option: No+  ​* ​Online Option: No
 Students in USF’s interdisciplinary program master the methods and technologies tied to strategic decisions; develop technical skills such as software development and statistical analysis, as well as the skills needed to effectively communicate their results. Students in USF’s interdisciplinary program master the methods and technologies tied to strategic decisions; develop technical skills such as software development and statistical analysis, as well as the skills needed to effectively communicate their results.
  
Line 52: Line 52:
 Arizona State University Arizona State University
  
-Degree: Master of Science in Business Analytics +  * Degree: Master of Science in Business Analytics 
-School: W.P. Carey School of Business +  ​* ​School: W.P. Carey **School of Business** 
-Location: Tempe, AZ +  ​* ​Location: Tempe, AZ 
-Full-Time Program: 9 months +  ​* ​Full-Time Program: 9 months 
-Part-Time Program: In development +  ​* ​Part-Time Program: In development 
-Online Option: In development+  ​* ​Online Option: In development
 ASU’s nine-month program focuses on using analytics in day-to-day business processes and managing it effectively. Required courses include data mining, applied regression models, analytical decision making tools and business analytics strategy. The curriculum also includes internship opportunities and a capstone practicum project with local Arizona companies such as American Express and Intel. 30 credit hours. ASU’s nine-month program focuses on using analytics in day-to-day business processes and managing it effectively. Required courses include data mining, applied regression models, analytical decision making tools and business analytics strategy. The curriculum also includes internship opportunities and a capstone practicum project with local Arizona companies such as American Express and Intel. 30 credit hours.
  
 Bentley University Bentley University
  
-Degree: Master of Science in Marketing Analytics +  * Degree: Master of Science in Marketing Analytics 
-School: Graduate School of Business +  ​* ​School: Graduate ​**School of Business** 
-Location: Waltham, MA +  ​* ​Location: Waltham, MA 
-Full-Time Program: 1 – 1.5 years +  ​* ​Full-Time Program: 1 – 1.5 years 
-Part-Time Program: Yes +  ​* ​Part-Time Program: Yes 
-Online Option: No+  ​* ​Online Option: No
 Thanks in part to demand from companies in the Route 128 corridor, Bentley’s program is growing by leaps and bounds. Thanks in part to demand from companies in the Route 128 corridor, Bentley’s program is growing by leaps and bounds.
  
Line 76: Line 76:
 Carnegie Mellon University Carnegie Mellon University
  
-Degree: Master of Information Systems Management or Master of Science in Information Technology +  * Degree: Master of Information Systems Management or Master of Science in Information Technology 
-Concentration in Business Intelligence and Data Analytics +  ​* ​Concentration in Business Intelligence and Data Analytics 
-School: Heinz College +  ​* ​School: Heinz College 
-Location: Pittsburgh, PA +  ​* ​Location: Pittsburgh, PA 
-Full-Time Program: 16 months +  ​* ​Full-Time Program: 16 months 
-Part-Time Program: No +  ​* ​Part-Time Program: No 
-Online Option: Yes+  ​* ​Online Option: Yes
 Carnegie Mellon’s MISM and MITM focus on three core areas: Carnegie Mellon’s MISM and MITM focus on three core areas:
  
note_on_data_science_as_an_academic_discipline.txt · Last modified: 2016/02/23 12:23 by hkimscil