Overview
The Master of Science in Applied Data Science at the University of Michigan is a comprehensive online programme that prepares students for the evolving demands of data utilisation across diverse sectors. This degree spans 38 credits and is structured around more than 28 courses, ensuring a robust educational experience that blends theoretical knowledge with practical application.
Why Applied Data Science at the University of Michigan?The University of Michigan is renowned for its academic excellence and innovative approach to education. The School of Information emphasises the intersection of technology and human interaction, fostering a learning environment that equips students with the necessary skills to thrive in a data-driven world. The programme is supported by state-of-the-art facilities and a faculty of experienced professionals who provide invaluable insights into the field of data science.
Tuition Fee BreakdownThe tuition fees for the M.Sc. in Applied Data Science are as follows:
- International Students: USD 57,776 per year
- National Students: USD 57,776 per year
- Local Students: USD 28,886 per year
Visit the Fees and Funding section for a breakdown in your local currency.
SyllabusThe curriculum is designed to cover a wide range of essential topics in data science, including:
- Computational methods for big data
- Data visualisation techniques
- Analytic techniques such as machine learning and network analysis
- Application of data science in contexts like social media and learning analytics
Students will engage in hands-on projects that culminate in a comprehensive end-to-end data science project, which will serve as an essential part of their professional portfolio upon graduation.
Careers with Applied Data ScienceGraduates of the M.Sc. in Applied Data Science are well-prepared for a variety of roles in the data science field. Alumni have found positions in leading companies and organisations, working in sectors such as technology, finance, healthcare, and education. The skills acquired during the programme enable graduates to excel in roles such as data analyst, data scientist, and machine learning engineer, making them valuable assets in any data-centric organisation.
Programme Structure
What you will learn:
- Computational methods for big data
- Visualizing data using multiple approaches
- Analytic techniques (machine learning, network analysis, natural language processing, experiment design and analysis, causal inference, etc.)
- Data science application in context (search and recommender systems, social media analytics, learning analytics, etc.)
Key information
Duration
- Full-time
- 12 months
- Part-time
- 36 months
Start dates & application deadlines
- Starting
- Apply before
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Language
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Credits
Delivered
Campus Location
- Ann Arbor, United States
Disciplines
Computer Sciences Data Science & Big Data View 259 other Masters in Computer Sciences in United StatesWhat students do after studying
Academic requirements
We are not aware of any specific GRE, GMAT or GPA grading score requirements for this programme.
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
- Minimum requirements are a bachelor’s degree or equivalent and a transcript of all undergraduate and graduate programs for which you have degrees. In addition, the School of Information uses a holistic review process where we may solicit a current resume, essays, assessments, and the recommendation of supervisors or professors. Non-native speakers of English must also score 100 or higher on the Test of English as a Foreign Language (TOEFL), although some exemptions do apply.
- We do not require the GRE or any other additional standardized tests for admission.
- Application fees are $75 for U.S. citizens and permanent residents and $90 for international applicants. Some fee waivers are available.
Tuition Fees
-
International Applies to you
Applies to youNon-residents60634 USD / year≈ 60634 USD / year - Out-of-State60634 USD / year≈ 60634 USD / year
-
Domestic
Applies to youIn-State30314 USD / year≈ 30314 USD / year
Funding
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Scholarships Information
Below you will find Master's scholarship opportunities for Applied Data Science (Online).
Available Scholarships
You are eligible to apply for these scholarships but a selection process will still be applied by the provider.
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