“What are the UW Data Science master’s program courses like?”
We often receive this question from prospective students. So, we created this post to give you an inside look at the first data science course in the curriculum, “DS 700: Foundations of Data Science”—and to answer some of the questions that may be on your mind.
What do I learn in the course?
“DS 700: Foundations of Data Science” introduces you to data science and its importance in business decision-making. The course provides an overview of commonly used data science tools, such as R, Tableau, and SQL Server, along with assignments on descriptive and predictive analytics. There is a focus on statistics, programming, ethical perspectives, and strategic deployment of analytics to lay the foundation for data science applications.
This course has 14 lessons that consist of lectures, readings and other media, assignments, discussion prompts, quizzes, and a final project.
- Introduction to the Course and Data Science
- Current Data Landscape
- Statistics and Machine Learning
- Visual Analytics
- Relational Databases and SQL
- SQL Statements
- Advanced SQL, NoSQL, Hadoop
- Project Management
- Data Governance
- Final Project
At the end of this course, you’ll be able to:
- Define data science and discuss its role in decision making.
- Understand how companies can use analytics to compete and succeed.
- Be aware of ethical issues in data analytics.
- Solve basic analytical problems via data analysis using techniques like forecasting, visualization, text mining, data cleaning, missing value imputation, using programs like Excel, R, and Tableau.
- Communicate your perspective on opportunities and challenges related to data science.
What are the lectures like?
After you enroll in “Foundations of Data Science,” you can log in to the learning management system to access all course content. The lectures are hosted in Storybook+ media player and contain rich media content—slides, animations, videos, and instructor narration. You can listen and replay lectures as many times as you wish.
Some lessons have video content featuring interviews with real-life data scientists about their work and the current industry landscape. Other videos show the professor demonstrating vital skills that data scientists use on the job, including how to perform a K-means cluster analysis or work in SQL server.
What type of assignments do I complete?
Assignments are a series of exercises—usually three—that encourage you to practice and demonstrate the concepts you learned in that lesson. You might be asked to develop a forecasting model or perform visual analytics in Tableau and R.
Here’s an example of an assignment from “Lesson 4: Statistics and Machine Learning.”
What else do I do in the course?
Learning material. The professor for this course picks selections from textbooks, articles, or videos for students to watch. Sometimes, you are asked to reflect on this material in an assignment or discussion prompt.
Discussion posts. A lesson may include a graded discussion prompt, which gives you an opportunity to learn from your peers and contribute your own ideas to the group. For these, you craft an initial post and reply to other students’ posts.
Quizzes. Most lessons include a timed quiz of 25 to 30 questions covering that week’s course content, readings, and videos.
What technology do I use in this data science course?
You use SQL Server 2014, R Studio, Tableau, and Microsoft Office (Access, Excel, Word, PowerPoint).
All of these software applications are on the virtual desktop platform, which you have access to as a student in the UW Data Science program.
Who developed the course?
Dr. Rajeev Bukralia, a former instructor at UW-Green Bay, originally developed the content for “DS 700: Foundations of Data Science.” The course was revised by instructor Dr. Gaurav Bansal and Dr. Shoo Il Shin from UW-Green Bay in fall 2017. Faculty work with an instructional design team and industry advisory board to ensure that the course remains cutting-edge and aligned with employer needs.
Do students in the course interact?
Yes. Students interact and share ideas through graded discussions in the learning management system. Also, data science students can collaborate, ask questions, and have general, non-assessed discussions through Piazza, a web-based forum.
How much do I do in one week?
Generally, you need to complete one lesson per week. You have seven days to complete readings and other learning materials, lectures, assignments, and discussion posts. (If you take the course during summer term, the timeline is accelerated, and you may complete multiple lessons per week.)
This data science master’s curriculum is as intensive as any University of Wisconsin program—on campus or otherwise. Some students put 20 hours of work into one course each week. But that number varies widely depending on how much experience they bring to the program. Although the program requires a serious time commitment, the flexible, online format allows you to study early in the morning, late at night, or whenever works best for your schedule, making it ideal for those who work full time.
Have questions about “DS 700: Foundations of Data Science,” the rest of the curriculum, how to apply, home campuses, and more? Our enrollment advisers can help.
Call 1-877-895-3276 or email email@example.com.