Syllabus

MGMT 462 Managerial Analytics

Online

 

Spring 2021-2022 January 10, 2022 - April 29, 2022

Instructor:      James Miller

E-mail:             jmiller@dom.edu

Cell phone :    847-530-0550

 

Class Location : Online

 

Texts (required):  

 

1. Business Analytics 3rd Edition by James R. Evans and Publisher Pearson. Save up to 80% by choosing the eTextbook option for ISBN: 9780135231715, 013523171X. The print version of this textbook is ISBN: 9780135231678, 0135231671.

2. Computational and Inferential Thinking (no charge)

The Foundations of Data Science

By Ani Adhikari and John DeNero

The contents of this book are licensed for free consumption under the following license:
Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0).

The book is available at https://www.inferentialthinking.com/chapters/intro.html

The book is also available in PDF form in Canvas

 

 

 

We will use Microsoft Office software, especially Excel, and Access and the Anaconda distribution of Python.  We will also use Microsoft SQL Server which you should not attempt to install on your own machine. All software is available in the Dominican Tech Center. The easiest way to use all the software needed in this course is to connect to the Dominican Server acats2k12.dom.edu. Instructions to do this will be given in the course. You can connect from home or from Dominican.

 

Note: Chromebook computers will not work for many assignments in this course. See this document for a list of assignments that will or may not work with Chromebooks.

 

Course Description: 

Firms can gain a competitive advantage by using data to make better decisions. Many different organizations, including businesses, governments, and non-profits, are now making significant investments in analytics. The objective of this course is to help you understand the field of analytics and be able to put analytics into a business / managerial environment. A secondary objective is to expose the student to basic concepts in Management Information Systems such as Database Management, Cloud Computing, and Big Data. The course will explore

        1. How managers use analytics to formulate and solve business problems and to support managerial decision making.

        2. The Role of Data to help you understand the basis of all analytics

        3. Descriptive Analytics to help you understand what has happened

        4. Predictive Analytics to help you understand trends and predict outcomes

        5. Prescriptive Analytics to help you decide what action you should take

Cases and hands on exercises will be used.  Students will apply tools such as Microsoft Excel, Microsoft Access and SQL, and Python.  

 

 

 

Prerequisites:  (QUAN201 and MGMT301), and (CIS120 or exemption from CIS120)

 

Grading: (Percentages will be updated as soon as all assignments have been entered into Canvas)

Introductory Discussion 1.5%
Texbook Quizzes 20.5%
Homework 70.0%
Exam in Week 11 8.0%
Total of 337 points 100%
Possible 20 bonus points 5.9%

 

 

 

At the end of the course the final  letter grade will be computed as follows:

 

Letter Grade
 
Corresponding Percentage

A:

 

93-100%

A-:

 

90-92.9%

B+:

 

88-89.9%

B:

 

80-87.9%

C+:

 

78-79.9%

C:

 

70-77.9%

C-:

 

68-69.9%

F:

 

0-67.9%

 

 

 

Logistics:

You will need to use your Dominican e-mail address in this class. Please see the Computer Lab aides if you do not already have the required accounts. Use of Canvas is required.

 

All assignments are due at midnight Sunday night. If you have been "stuck" on an issue for more than 15 minutes, seek help. You are welcome to seek help form me.

 

If you have a reason why your assignment will be late, contact me before the due date. This is easy to do and it could save you the late penalty. The late penalty is 1% per day if you don't ask for an extension ahead of time. So, for example, if your assignment is eight days late it will be mathematically impossible to get an "A" on that assignment.

 

Exam in Week 11:  The exam will cover all materials presented in class up to the exam date.  An emphasis will be placed on the class lectures, notes, handouts and the required reading.  If you must miss the exam, you must obtain approval before the exam date. The exam may be made up on a mutually agreeable schedule but make up dates generally are before the scheduled exam date.

 

Online work (Canvas): All work in this course will be submitted in Canvas (No paper!).

 

Schedule details: The schedule is subject to change. A detailed schedule by class week can be found in Canvas. A summary schedule appears later in this document.

 

 

Objectives: 

Week-by-Week Class Schedule

Week Unit/Chapter Comments Start End
1 U1, Appendix A1 Introduce yourself, connect to remoteapp, Excel Basica 10-Jan 16-Jan
2 U1, Chapt 1 pivot tables 17-Jan 23-Jan
3 Unit 2  Bumping Passengers, Relational Databases 24-Jan 30-Jan
4 U2, Chapt 2 Microsoft Access Database Queries 31-Jan 6-Feb
5 Unit 3 What is Python, SQL Reading tables 7-Feb 13-Feb
6 U3, Chapt 3 SQL Group By, Pivot Tables, SQL Updating tables 14-Feb 20-Feb
7 U4, Chapt 4 Python Quiz 1, Excel descriptive statistics 21-Feb 27-Feb
8 Unit 4 Python USDA Assignment 28-Feb 6-Mar
    Mid Semester Break 7-Mar 13-Mar
9 Uint 5 Excel Regression, Cenus quiz, Easy midterm quiz 14-Mar 20-Mar
10 Unit 5 Why Python and Python Hyundai(Elantra)Sales 21-Mar 27-Mar
11 Unit 6  Two part Exam 28-Mar 3-Apr
12 U6, Chapt 8 P values, Excel Trendline, Jury Pool Selection 4-Apr 10-Apr
13 U7,Chapt 13 TED talk on use of data 11-Apr 17-Apr
14 Unit 7 Linear programmng, optional machine earning 18-Apr 24-Apr
14 Unit 7b Optional machine learning (k-means, k-nearest)  
15 Unit 8 Optional Tableau, Optional Crime data 25-Apr 29-Apr
    ALL WORK DUE. 29-Apr 29-Apr

 

Academic Calendar:

January 10

First Day of Classes for Spring (15 weeks) & Spring I (8 weeks)

January 14

Last day to apply to graduate in Spring 2022

 January 17

Martin Luther King, Jr. Day - No Classes

 January 18

Add/Drop deadline: Spring undergraduate courses & all Spring I courses

 January 25

Add/Drop deadline: Spring graduate courses

January 25

Last day to declare satisfactory/fail grade option for undergraduate courses

February 4
February 11

Last day to declare course intensification option for undergraduate courses
Last day to withdraw from Spring I courses (8 weeks)

March
4

Last day of Spring I courses (8 weeks)

March
7-13

Mid-semester vacation

March
14

First Day of Classes for Spring II (8 weeks)

March
21

Add/Drop deadline: all Spring II courses

March
25

Last day to withdraw from Spring classes

April
6

(G)URSCI Expo (class schedule suspended)

April
14-17
April 18

Easter Vacation
Last day to withdraw from Spring II courses (8 weeks)

April
29

Last day of undergraduate classes

April
30

Saturday and schedule conflict undergraduate final exams

May
2-5

Undergraduate Final Examinations

May
5

Last day of graduate classes

May
6

Final grades due at noon for graduating students

May
7-8

Commencement Weekend

May 7

Spring Degree Conferral