Masters in Analytics
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The Program

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The Analytics Program is a full-time, one-year Master’s program that resides at USF’s downtown San Francisco campus, less than four miles from the USF main campus. The program is designed for students with a strong background in math, computer science, engineering or economics who seek the specific techniques and tools involved in analytics — and the business skills to apply this knowledge effectively and strategically.

This 35-unit program grounds you in both the techniques and skills required to analyze structured and unstructured big data to derive meaning and drive business decisions. Graduates become data scientists and analysts in finance, marketing, operations, business intelligence, or other groups generating and consuming large amounts of data. Students study topics such as: data mining, machine learning, statistical models, predictive analytics, econometrics, optimization, risk analysis, data visualization, business communication, and management science. Students learn to acquire, filter, clean, organize and store data using Python and SQL/NoSQL as "glue" between data sources and statistical tools such as R and SAS. The focus is on applying mathematics, statistics and computer science to solve real problems.

Practicums are special features of the program that provide you with the professional skills, experiences and networking needed to succeed in a business setting. Each semester, students engage in a project working with an industrial partner (some of which are paid internships). Students have worked with MozillaSurveyMonkey, PayPal, and Thomson Reuters, among others; see Project Opportunities for more information.

Analytics Boot Camp (July–August)
Three five-week intensive courses (computational, applied math and economics) with exposure to modern statistical packages, SQL, R and Python, review of probability and statistics, linear algebra, linear regression, and review of basic micro and macroeconomics, including pricing and demand, uncertainty and consumer modeling.

The MS in Analytics program at USF is proud to have our studentsAWS logo develop software and run analyses on Amazon Web Services (e.g., Amazon Elastic Compute Cloud, Amazon DynamoDB, and Amazon Relational Database). Each student gets their own server or servers to manage so they have experience with the mechanics of installing and configuring software. Students have access to vast resources, albeit in bursts, to solve big data projects and typically “submit” their projects by e-mailing a URL on their server to the professor for grading.

What Faculty and Alumni Say


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Program Timeline

Summer (July–August)
Analytics Boot Camp (students take 3 of the following classes)
Computation for Analytics (1 unit)
Review of Linear Algebra (1 unit)
Exploratory Data Analysis (1 unit)
Review of Probability and Statistics (1 unit)

Fall Semester 
(August–December)
Module 1
Linear Regression Analysis (2 units)
Relational Databases (1 unit)
Business Communications for Analytics (2 units)
Data Acquisition (1unit)
Module 2
Introduction to Machine Learning (2 units)
Time Series Analysis for Business and Finance  (2 units)
Practicum I (1 unit) 
NoSQL Databases (1unit)

Intersession (January)
Introduction to Programming in SAS (2 units)

Spring Semester (January–May)
Module 1
Advanced Machine Learning (2 units)
Business Strategies for Big Data (2 units)
Interview Skills (1unit)
Practicum II (1unit)
Module 2
Data Visualization (2 units)
Multivariate Statistical Analysis (2 units)
Distributed Computing (1unit)
Practicum II (1unit)

Summer II (May–June)
Special Topics in Analytics (2 units)
Marketing Analytics (2 units)
Web Analytics (1 unit)
Practicum III (1 unit)

Tuition and Scholarships

For tuition costs and fellowship opportunities click here.

International students are welcome to apply.  International students graduating from the MS in Analytics program are eligible for the STEM extension to OPT (Optional Practical Training).