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DASC: Data Science

112-01
Intro to Computational Stat II
 
Online
M. Isaacson
LAIBSUSTCore 
09/03 - 12/19
30/30/0
Lecture
CRN 41292
2 Cr.
Size: 30
Enrolled: 30
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
             
+ asynchronous coursework

Subject: Data Science (DASC)

CRN: 41292

Online: Asynchronous | Lecture

Online

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     Sustainability (SUST)

  Marc Isaacson

This course provides students who already have a solid conceptual understanding of statistics the opportunity to apply their knowledge to analyzing data using modern statistical software. Topics include data visualization, inference for one and two samples, analysis of variance, chi-square tests for goodness of fit and association, and simple and multiple linear regression. Prerequisites: DASC 111 or AP Statistics Credit. Note, students who receive credit for DASC 112 may not receive credit for DASC 120.

2 Credits

112-02
Intro to Computational Stat II
 
Online
M. Isaacson
LAIBSUSTCore 
09/03 - 12/19
30/27/0
Lecture
CRN 43134
2 Cr.
Size: 30
Enrolled: 27
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
             
+ asynchronous coursework

Subject: Data Science (DASC)

CRN: 43134

Online: Asynchronous | Lecture

Online

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     Sustainability (SUST)

  Marc Isaacson

This course provides students who already have a solid conceptual understanding of statistics the opportunity to apply their knowledge to analyzing data using modern statistical software. Topics include data visualization, inference for one and two samples, analysis of variance, chi-square tests for goodness of fit and association, and simple and multiple linear regression. Prerequisites: DASC 111 or AP Statistics Credit. Note, students who receive credit for DASC 112 may not receive credit for DASC 120.

2 Credits

120-01
Introduction to Computational Statistics
 
MWF 10:55 am - 12:00 pm
K. Jacobs
LAIBEdTrnSUSTCore 
09/03 - 12/19
96/92/0
Lecture
CRN 41293
4 Cr.
Size: 96
Enrolled: 92
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su

10:55 am
12:00 pm
JRC 126

 

10:55 am
12:00 pm
JRC 126

 

10:55 am
12:00 pm
JRC 126

   

Subject: Data Science (DASC)

CRN: 41293

In Person | Lecture

St Paul: John Roach Center 126

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course
     Sustainability (SUST)

  Kathryn Jacobs

This course is composed of an in-depth study of the processes through which statistics can be used to learn about environments and events. There will be an intensive focus on the application, analysis, interpretation, and presentation of both descriptive and inferential statistics in a variety of real world contexts. Topics include data collection, research design, data visualization, sampling distributions, confidence intervals and hypothesis testing, inference for one and two samples, chi-square tests for goodness of fit and association, analysis of variance, and simple and multiple linear regression. Extensive data analysis using modern statistical software is an essential component of this course. Prerequisites: Math placement at level of MATH 108 or above; or completion of MATH 006, 007, 100, 101, 103, 104, 105, 108, 111, or 113. NOTE: Students who receive credit for DASC 120 may not receive credit for DASC 111 or DASC 112.

4 Credits

120-02
Introduction to Computational Statistics
 
MWF 12:15 pm - 1:20 pm
K. Jacobs
LAIBEdTrnSUSTCore 
09/03 - 12/19
96/92/0
Lecture
CRN 41294
4 Cr.
Size: 96
Enrolled: 92
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su

12:15 pm
1:20 pm
OWS 150

 

12:15 pm
1:20 pm
OWS 150

 

12:15 pm
1:20 pm
OWS 150

   

Subject: Data Science (DASC)

CRN: 41294

In Person | Lecture

St Paul: Owens Science Hall 150

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course
     Sustainability (SUST)

  Kathryn Jacobs

This course is composed of an in-depth study of the processes through which statistics can be used to learn about environments and events. There will be an intensive focus on the application, analysis, interpretation, and presentation of both descriptive and inferential statistics in a variety of real world contexts. Topics include data collection, research design, data visualization, sampling distributions, confidence intervals and hypothesis testing, inference for one and two samples, chi-square tests for goodness of fit and association, analysis of variance, and simple and multiple linear regression. Extensive data analysis using modern statistical software is an essential component of this course. Prerequisites: Math placement at level of MATH 108 or above; or completion of MATH 006, 007, 100, 101, 103, 104, 105, 108, 111, or 113. NOTE: Students who receive credit for DASC 120 may not receive credit for DASC 111 or DASC 112.

4 Credits

120-03
Introduction to Computational Statistics
 
TR 8:00 am - 9:40 am
J. Weinburd
LAIBEdTrnSUSTCore 
09/03 - 12/19
96/89/0
Lecture
CRN 41295
4 Cr.
Size: 96
Enrolled: 89
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

8:00 am
9:40 am
OWS 150

 

8:00 am
9:40 am
OWS 150

     

Subject: Data Science (DASC)

CRN: 41295

In Person | Lecture

St Paul: Owens Science Hall 150

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course
     Sustainability (SUST)

  Jasper Weinburd

This course is composed of an in-depth study of the processes through which statistics can be used to learn about environments and events. There will be an intensive focus on the application, analysis, interpretation, and presentation of both descriptive and inferential statistics in a variety of real world contexts. Topics include data collection, research design, data visualization, sampling distributions, confidence intervals and hypothesis testing, inference for one and two samples, chi-square tests for goodness of fit and association, analysis of variance, and simple and multiple linear regression. Extensive data analysis using modern statistical software is an essential component of this course. Prerequisites: Math placement at level of MATH 108 or above; or completion of MATH 006, 007, 100, 101, 103, 104, 105, 108, 111, or 113. NOTE: Students who receive credit for DASC 120 may not receive credit for DASC 111 or DASC 112.

4 Credits

120-04
Introduction to Computational Statistics
 
TR 9:55 am - 11:35 am
V. Ferguson-Kramer
LAIBEdTrnSUSTCore 
09/03 - 12/19
96/89/0
Lecture
CRN 41296
4 Cr.
Size: 96
Enrolled: 89
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

9:55 am
11:35 am
OWS 150

 

9:55 am
11:35 am
OWS 150

     

Subject: Data Science (DASC)

CRN: 41296

In Person | Lecture

St Paul: Owens Science Hall 150

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course
     Sustainability (SUST)

  Victoria Ferguson-Kramer

This course is composed of an in-depth study of the processes through which statistics can be used to learn about environments and events. There will be an intensive focus on the application, analysis, interpretation, and presentation of both descriptive and inferential statistics in a variety of real world contexts. Topics include data collection, research design, data visualization, sampling distributions, confidence intervals and hypothesis testing, inference for one and two samples, chi-square tests for goodness of fit and association, analysis of variance, and simple and multiple linear regression. Extensive data analysis using modern statistical software is an essential component of this course. Prerequisites: Math placement at level of MATH 108 or above; or completion of MATH 006, 007, 100, 101, 103, 104, 105, 108, 111, or 113. NOTE: Students who receive credit for DASC 120 may not receive credit for DASC 111 or DASC 112.

4 Credits

120-05
Introduction to Computational Statistics
 
TR 1:30 pm - 3:10 pm
V. Ferguson-Kramer
LAIBEdTrnSUSTCore 
09/03 - 12/19
96/89/0
Lecture
CRN 41297
4 Cr.
Size: 96
Enrolled: 89
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

1:30 pm
3:10 pm
OWS 150

 

1:30 pm
3:10 pm
OWS 150

     

Subject: Data Science (DASC)

CRN: 41297

In Person | Lecture

St Paul: Owens Science Hall 150

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course
     Sustainability (SUST)

  Victoria Ferguson-Kramer

This course is composed of an in-depth study of the processes through which statistics can be used to learn about environments and events. There will be an intensive focus on the application, analysis, interpretation, and presentation of both descriptive and inferential statistics in a variety of real world contexts. Topics include data collection, research design, data visualization, sampling distributions, confidence intervals and hypothesis testing, inference for one and two samples, chi-square tests for goodness of fit and association, analysis of variance, and simple and multiple linear regression. Extensive data analysis using modern statistical software is an essential component of this course. Prerequisites: Math placement at level of MATH 108 or above; or completion of MATH 006, 007, 100, 101, 103, 104, 105, 108, 111, or 113. NOTE: Students who receive credit for DASC 120 may not receive credit for DASC 111 or DASC 112.

4 Credits

120-51
Intro. to Comp. Stat. / Lab
 
T 8:00 am - 9:40 am
D. Ehren
LAIBEdTrnCore 
09/03 - 12/19
30/27/0
Lab
CRN 41298
0 Cr.
Size: 30
Enrolled: 27
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

8:00 am
9:40 am
OSS 431

         

Subject: Data Science (DASC)

CRN: 41298

In Person | Lab

St Paul: O'Shaughnessy Science Hall 431

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  David Ehren

This lab section will use MINITAB for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-52
Intro. to Comp. Stat. / Lab
 
T 5:30 pm - 7:15 pm
E. Storm
LAIBEdTrnCore 
09/03 - 12/19
30/26/0
Lab
CRN 41299
0 Cr.
Size: 30
Enrolled: 26
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

5:30 pm
7:15 pm
OSS 431

         

Subject: Data Science (DASC)

CRN: 41299

In Person | Lab

St Paul: O'Shaughnessy Science Hall 431

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Elizabeth Storm

This lab section will use R for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-53
Intro. to Comp. Stat. / Lab
 
T 5:30 pm - 7:15 pm
A. Johnson
LAIBEdTrnCore 
09/03 - 12/19
30/30/0
Lab
CRN 41300
0 Cr.
Size: 30
Enrolled: 30
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

5:30 pm
7:15 pm
OSS 432

         

Subject: Data Science (DASC)

CRN: 41300

In Person | Lab

St Paul: O'Shaughnessy Science Hall 432

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Adam Johnson

This lab section will use MINITAB for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-54
Intro. to Comp. Stat. / Lab
 
T 5:30 pm - 7:15 pm
L. Kunz
LAIBEdTrnCore 
09/03 - 12/19
30/28/0
Lab
CRN 41301
0 Cr.
Size: 30
Enrolled: 28
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

5:30 pm
7:15 pm
OSS 434

         

Subject: Data Science (DASC)

CRN: 41301

In Person | Lab

St Paul: O'Shaughnessy Science Hall 434

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Lauren Kunz

This lab section will use R for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-55
Intro. to Comp. Stat. / Lab
 
T 7:30 pm - 9:15 pm
E. Storm
LAIBEdTrnCore 
09/03 - 12/19
30/27/0
Lab
CRN 41302
0 Cr.
Size: 30
Enrolled: 27
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

7:30 pm
9:15 pm
OSS 431

         

Subject: Data Science (DASC)

CRN: 41302

In Person | Lab

St Paul: O'Shaughnessy Science Hall 431

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Elizabeth Storm

This lab section will use R for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-56
Intro. to Comp. Stat. / Lab
 
T 7:30 pm - 9:15 pm
L. Kunz
LAIBEdTrnCore 
09/03 - 12/19
30/23/0
Lab
CRN 41303
0 Cr.
Size: 30
Enrolled: 23
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

7:30 pm
9:15 pm
OSS 434

         

Subject: Data Science (DASC)

CRN: 41303

In Person | Lab

St Paul: O'Shaughnessy Science Hall 434

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Lauren Kunz

This lab section will use R for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-57
Intro. to Comp. Stat. / Lab
 
T 7:30 pm - 9:15 pm
A. Johnson
LAIBEdTrnCore 
09/03 - 12/19
30/29/0
Lab
CRN 41304
0 Cr.
Size: 30
Enrolled: 29
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

7:30 pm
9:15 pm
OSS 432

         

Subject: Data Science (DASC)

CRN: 41304

In Person | Lab

St Paul: O'Shaughnessy Science Hall 432

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Adam Johnson

This lab section will use MINITAB for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-58
Intro. to Comp. Stat. / Lab
 
W 3:25 pm - 5:00 pm
K. Jacobs
LAIBEdTrnCore 
09/03 - 12/19
30/29/0
Lab
CRN 41305
0 Cr.
Size: 30
Enrolled: 29
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
   

3:25 pm
5:00 pm
OSS 431

       

Subject: Data Science (DASC)

CRN: 41305

In Person | Lab

St Paul: O'Shaughnessy Science Hall 431

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Kathryn Jacobs

This lab section will use SPSS for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-59
Intro. to Comp. Stat. / Lab
 
W 3:25 pm - 5:00 pm
C. Silkin
LAIBEdTrnCore 
09/03 - 12/19
30/30/0
Lab
CRN 41306
0 Cr.
Size: 30
Enrolled: 30
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
   

3:25 pm
5:00 pm
OSS 432

       

Subject: Data Science (DASC)

CRN: 41306

In Person | Lab

St Paul: O'Shaughnessy Science Hall 432

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Charlie Silkin

This lab section will use JMP for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-60
Intro. to Comp. Stat. / Lab
 
W 5:30 pm - 7:15 pm
D. Ehren
LAIBEdTrnCore 
09/03 - 12/19
30/29/0
Lab
CRN 41307
0 Cr.
Size: 30
Enrolled: 29
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
   

5:30 pm
7:15 pm
OSS 431

       

Subject: Data Science (DASC)

CRN: 41307

In Person | Lab

St Paul: O'Shaughnessy Science Hall 431

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  David Ehren

This lab section will use MINITAB for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-61
Intro. to Comp. Stat. / Lab
 
W 7:30 pm - 9:15 pm
C. Rosenthal
LAIBEdTrnCore 
09/03 - 12/19
30/30/0
Lab
CRN 41308
0 Cr.
Size: 30
Enrolled: 30
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
   

7:30 pm
9:15 pm
OSS 432

       

Subject: Data Science (DASC)

CRN: 41308

In Person | Lab

St Paul: O'Shaughnessy Science Hall 432

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Caleb Rosenthal

This lab section will use SPSS for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-62
Intro. to Comp. Stat. / Lab
 
R 8:00 am - 9:40 am
D. Ehren
LAIBEdTrnCore 
09/03 - 12/19
30/29/0
Lab
CRN 41309
0 Cr.
Size: 30
Enrolled: 29
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
     

8:00 am
9:40 am
OSS 431

     

Subject: Data Science (DASC)

CRN: 41309

In Person | Lab

St Paul: O'Shaughnessy Science Hall 431

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  David Ehren

This lab section will use MINITAB for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-63
Intro. to Comp. Stat. / Lab
 
R 5:30 pm - 7:15 pm
V. Ferguson-Kramer
LAIBEdTrnCore 
09/03 - 12/19
30/29/0
Lab
CRN 41310
0 Cr.
Size: 30
Enrolled: 29
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
     

5:30 pm
7:15 pm
OSS 431

     

Subject: Data Science (DASC)

CRN: 41310

In Person | Lab

St Paul: O'Shaughnessy Science Hall 431

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Victoria Ferguson-Kramer

This lab section will use JMP for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-64
Intro. to Comp. Stat. / Lab
 
R 5:30 pm - 7:15 pm
J. Rebello
LAIBEdTrnCore 
09/03 - 12/19
30/30/0
Lab
CRN 41311
0 Cr.
Size: 30
Enrolled: 30
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
     

5:30 pm
7:15 pm
OSS 432

     

Subject: Data Science (DASC)

CRN: 41311

In Person | Lab

St Paul: O'Shaughnessy Science Hall 432

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Jagdish Rebello

This lab section will use SPSS for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-65
Intro. to Comp. Stat. / Lab
 
R 7:30 pm - 9:15 pm
J. Rebello
LAIBEdTrnCore 
09/03 - 12/19
30/27/0
Lab
CRN 41312
0 Cr.
Size: 30
Enrolled: 27
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
     

7:30 pm
9:15 pm
OSS 432

     

Subject: Data Science (DASC)

CRN: 41312

In Person | Lab

St Paul: O'Shaughnessy Science Hall 432

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Jagdish Rebello

This lab section will use SPSS for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

120-66
Intro. to Comp. Stat. / Lab
 
R 7:30 pm - 9:15 pm
V. Ferguson-Kramer
LAIBEdTrnCore 
09/03 - 12/19
30/28/0
Lab
CRN 41313
0 Cr.
Size: 30
Enrolled: 28
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
     

7:30 pm
9:15 pm
OSS 431

     

Subject: Data Science (DASC)

CRN: 41313

In Person | Lab

St Paul: O'Shaughnessy Science Hall 431

Core Requirements Met:
     [Core] Quant Analysis

Other Requirements Met:
     Liberal Arts Bus Minor Appr
     School of Ed Transfer Course

  Victoria Ferguson-Kramer

This lab section will use JMP for data analysis. Please check with your academic advisor to determine whether this is the recommended lab for your intended major. Note: Students registering for this lab must also register for a DASC 120 lecture.

0 Credits

130-01
Introduction to Data Science
 
TR 3:25 pm - 5:00 pm
E. Hoefer
 
09/03 - 12/19
26/26/0
Lecture
CRN 41314
4 Cr.
Size: 26
Enrolled: 26
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

3:25 pm
5:00 pm
OSS 432

 

3:25 pm
5:00 pm
OSS 432

     

Subject: Data Science (DASC)

CRN: 41314

In Person | Lecture

St Paul: O'Shaughnessy Science Hall 432

  Elizabeth Hoefer

This course provides students with an introduction to the field of data science. Students learn foundational skills, including basic data visualization, data wrangling, descriptive modeling techniques, and simulation-based inference. All material is grounded in contextual data examples, and consideration of data context and ethical issues is paramount. Prerequisites: Math placement at level of MATH 108 or above; or completion of MATH 006, 100, 101, 103, 104, 105, 108, 111, or 113.

4 Credits

240-D01
Applied Regression Analysis
 
MW 3:25 pm - 5:00 pm
A. Dwyer
Core 
09/03 - 12/19
26/24/0
Lecture
CRN 41315
4 Cr.
Size: 26
Enrolled: 24
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su

3:25 pm
5:00 pm
OSS 434

 

3:25 pm
5:00 pm
OSS 434

       

Subject: Data Science (DASC)

CRN: 41315

In Person | Lecture

St Paul: O'Shaughnessy Science Hall 434

Requirements Met:
     Writing in the Discipline

  Anna Dwyer

This course provides students with the knowledge to effectively use various forms of regression models to address problems in a variety of fields. Students learn both simple and multiple forms of linear, ordinal, nominal, and beta regression models. There is an emphasis on simultaneous inference, model selection and validation, detecting collinearity and autocorrelation, and remedial measures for model violations. Students are also introduced to the use of time series and forecasting methods. Prerequisites: Grade of C- or higher in DASC 112 or DASC 120.

4 Credits

240-D02
Applied Regression Analysis
 
MW 5:30 pm - 7:15 pm
A. Dwyer
Core 
09/03 - 12/19
26/13/0
Lecture
CRN 41316
4 Cr.
Size: 26
Enrolled: 13
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su

5:30 pm
7:15 pm
OSS 434

 

5:30 pm
7:15 pm
OSS 434

       

Subject: Data Science (DASC)

CRN: 41316

In Person | Lecture

St Paul: O'Shaughnessy Science Hall 434

Requirements Met:
     Writing in the Discipline

  Anna Dwyer

This course provides students with the knowledge to effectively use various forms of regression models to address problems in a variety of fields. Students learn both simple and multiple forms of linear, ordinal, nominal, and beta regression models. There is an emphasis on simultaneous inference, model selection and validation, detecting collinearity and autocorrelation, and remedial measures for model violations. Students are also introduced to the use of time series and forecasting methods. Prerequisites: Grade of C- or higher in DASC 112 or DASC 120.

4 Credits

336-01
Data Comm and Visualization
 
TR 1:30 pm - 3:10 pm
E. Hoefer
 
09/03 - 12/19
26/26/0
Lecture
CRN 41317
4 Cr.
Size: 26
Enrolled: 26
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

1:30 pm
3:10 pm
JRC 426

 

1:30 pm
3:10 pm
JRC 426

     

Subject: Data Science (DASC)

CRN: 41317

In Person | Lecture

St Paul: John Roach Center 426

  Elizabeth Hoefer

This course will prepare students to effectively communicate the insights from data analysis. The course will cover the three main methods of communicating information about data – visually, orally, and in writing. Students will learn to tailor their communication to their audience and create publication-ready and boardroom-ready presentations of their results. Prerequisites: CISC 130 or CISC 131; and DASC 112, DASC 120, STAT 303, or STAT 314.

4 Credits

360-01
Multivariate Data Analysis
 
TR 9:55 am - 11:35 am
J. Weinburd
SUSTCore 
09/03 - 12/19
26/25/0
Lecture
CRN 41318
4 Cr.
Size: 26
Enrolled: 25
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

9:55 am
11:35 am
OSS 434

 

9:55 am
11:35 am
OSS 434

     

Subject: Data Science (DASC)

CRN: 41318

In Person | Lecture

St Paul: O'Shaughnessy Science Hall 434

Core Requirements Met:
     [Core] Global Perspective

Other Requirements Met:
     Sustainability (SUST)

  Jasper Weinburd

This course introduces students to advanced computational methods in statistics and data analysis that require a thorough knowledge of a programming language such as Python or R. There will be an intensive focus on investigating the correlation and covariance structure of data, including data extraction and modification, dimensionality reduction, and structural equation modeling. Prerequisites: Grades of C- or higher in CISC 130 or 131 and in MATH 109 or 112 or 113 and in DASC 240, STAT 303, STAT 314, or ECON 315.

4 Credits

360-02
Multivariate Data Analysis
 
TR 1:30 pm - 3:10 pm
J. Weinburd
SUSTCore 
09/03 - 12/19
26/26/0
Lecture
CRN 41319
4 Cr.
Size: 26
Enrolled: 26
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

1:30 pm
3:10 pm
OSS 434

 

1:30 pm
3:10 pm
OSS 434

     

Subject: Data Science (DASC)

CRN: 41319

In Person | Lecture

St Paul: O'Shaughnessy Science Hall 434

Core Requirements Met:
     [Core] Global Perspective

Other Requirements Met:
     Sustainability (SUST)

  Jasper Weinburd

This course introduces students to advanced computational methods in statistics and data analysis that require a thorough knowledge of a programming language such as Python or R. There will be an intensive focus on investigating the correlation and covariance structure of data, including data extraction and modification, dimensionality reduction, and structural equation modeling. Prerequisites: Grades of C- or higher in CISC 130 or 131 and in MATH 109 or 112 or 113 and in DASC 240, STAT 303, STAT 314, or ECON 315.

4 Credits

400-01
Data Mining & Machine Learning
 
MWF 1:35 pm - 2:40 pm
M. Werness
 
09/03 - 12/19
26/28/0
Lecture
CRN 41320
4 Cr.
Size: 26
Enrolled: 28
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su

1:35 pm
2:40 pm
OSS 434

 

1:35 pm
2:40 pm
OSS 434

 

1:35 pm
2:40 pm
OSS 434

   

Subject: Data Science (DASC)

CRN: 41320

In Person | Lecture

St Paul: O'Shaughnessy Science Hall 434

  Mark Werness

In this course students will learn methods for working with massive and complex data. They will explore these topics from both statistical and computational perspectives. Topics include data preparation, defining and exploring data sources, pattern discovery, cluster analysis, decision trees, regression, neural networks, memory-based reasoning, survival analysis, and genetic algorithms. Software used in the course includes, but is not limited to, JMP, Excel, Java, R, Python, and Minitab. Prerequisites: Grades of C- or higher in CISC 130 or 131 and in MATH 109 or 112 or 113 and in DASC 240, STAT 333, or ECON 315.

4 Credits

420-01
Network Science & Graph Theory
 
TR 3:25 pm - 5:00 pm
S. Berg
SUST 
09/03 - 12/19
26/17/0
Lecture
CRN 41321
4 Cr.
Size: 26
Enrolled: 17
Waitlisted: 0
09/03 - 12/19
M T W Th F Sa Su
 

3:25 pm
5:00 pm
OSS 434

 

3:25 pm
5:00 pm
OSS 434

     

Subject: Data Science (DASC)

CRN: 41321

In Person | Lecture

St Paul: O'Shaughnessy Science Hall 434

Requirements Met:
     Sustainability (SUST)

  Sergey Berg

This course provides a systematic approach to the use of network modeling in the understanding and prediction of complex social, technological, and biological systems such as the emergence of fake news, the exchange of information across network routers, and the spread of infectious diseases. There will be an emphasis on efficient numerical methods for describing, visualizing, constructing, and simulating processes across both directed and undirected networks that may be static or dynamic in nature. Prerequisites: CISC 130 or CISC 131 and DASC 240, STAT 303, or STAT 314

4 Credits


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