Overview
The M.Sc. in Data Science at the University of Wisconsin-Milwaukee (UWM) stands out as a premier choice for aspiring data scientists. As data science continues to transform various sectors, this programme prepares students to harness data effectively, driving innovation and improvement across industries. The demand for skilled data professionals is on the rise, with job growth projected at an impressive 35% by 2032. UWM's programme not only offers a robust curriculum but also provides a unique opportunity for students to engage with real-world applications through partnerships and research initiatives.
Why Data Science at University of Wisconsin-Milwaukee?UWM is renowned for its commitment to academic excellence, consistently ranking among the top institutions for data science education. The university boasts state-of-the-art facilities and a collaborative environment, fostering partnerships with industry leaders such as the Northwestern Mutual Data Science Institute. This partnership enhances the educational experience by providing students with access to mentorship, research support, and funding opportunities, thereby preparing them for successful careers in data science.
Tuition Fee BreakdownThe tuition fees for the M.Sc. in Data Science at UWM are structured as follows:
- International students: USD 26,159 per year
- Domestic students: USD 26,159 per year
- Local students: USD 12,728 per year
Visit the Fees and Funding section for a breakdown in your local currency.
SyllabusThe curriculum for the M.Sc. in Data Science comprises 30 credits, with a blend of core and elective courses designed to provide a comprehensive foundation in data science. Students will engage in:
- Developing insights from data for practical applications
- Organising and maintaining large datasets
- Utilising AI and machine learning techniques to extract insights
- Applying probabilistic methods for data analysis
- Advanced programming for data collection and analysis
- Understanding the ethical implications of data use
Students can choose electives tailored to their interests, allowing them to specialise in various fields such as business analytics, machine learning, and more.
Guaranteed Work ExperienceThe programme includes opportunities for internships, providing students with practical experience in the field. This hands-on approach ensures that graduates are well-prepared to enter the workforce with relevant skills and experience.
Careers with Data ScienceGraduates of the M.Sc. in Data Science from UWM are well-equipped to pursue a range of career paths. Alumni have found success in various sectors, including technology, finance, healthcare, and marketing. Common roles for graduates include data analyst, data scientist, machine learning engineer, and business intelligence analyst. The programme’s focus on interdisciplinary applications ensures that graduates can adapt their skills to meet the needs of diverse industries.
Programme Structure
Courses included:
- Data Analysis for Data Science
- Data and Information Management
- Special Topics in Information Science: (Topic: Data Management and Curation)
- XML for Libraries
- Information Storage and Retrieval
- Machine Learning and Applications
Key information
Duration
- Full-time
- 12 months
Start dates & application deadlines
- Starting
- Apply before , National
- Apply before , International
-
- Starting
- Apply before , National
- Apply before , International
-
Applications for all students and all semesters continue to be accepted after the priority deadlines (rolling admission).
Language
Prepare for Your English Test
AI-powered IELTS feedback. Clear, actionable, and tailored to boost your writing & speaking score. No credit card or upfront payment required.
- Trusted by 300k learners
- 98 accuracy using real exam data
- 4.9/5 student rating
Credits
Delivered
Campus Location
- Milwaukee, United States
Disciplines
Data Science & Big Data View 466 other Masters in Data Science & Big Data in United StatesWhat students do after studying
Academic requirements
English requirements
Prepare for Your English Test
AI-powered IELTS feedback. Clear, actionable, and tailored to boost your writing & speaking score. No credit card or upfront payment required.
- Trusted by 300k learners
- 98 accuracy using real exam data
- 4.9/5 student rating
Other requirements
General requirements
- A baccalaureate degree, or its equivalent as determined by the UWM Center on International Education, from a regionally accredited institution, completed before the first term of enrollment in the Graduate School;
- Proficiency in the English language;
- A minimum cumulative undergraduate grade point average (GPA) of 2.75 on a 4.0 scale, or an equivalent measure on a grading system that does not use a 4.0 scale.
- Students applying to the program are expected to have proficiency, demonstrated through coursework, exams or a portfolio, in the following areas: Linear Algebra (3 credits), Multivariable Calculus (4 credits), Statistics (3 credits), and Computer Literacy (6 credits).
Tuition Fees
-
International Applies to you
Applies to youNon-residents27090 USD / year≈ 27090 USD / year - Out-of-State27090 USD / year≈ 27090 USD / year
-
Domestic
Applies to youIn-State13659 USD / year≈ 13659 USD / year
Additional Details
Minnesota Reciprocity: $21,606 / Midwest Residents: $18,279.
Living costs
Milwaukee
The living costs include the total expenses per month, covering accommodation, public transportation, utilities (electricity, internet), books and groceries.
Funding
In order for us to give you accurate scholarship information, we ask that you please confirm a few details and create an account with us.
Scholarships Information
Below you will find Master's scholarship opportunities for Data Science.
Available Scholarships
You are eligible to apply for these scholarships but a selection process will still be applied by the provider.
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility