Overview
The Master of Science in Data Science (M.Sc.) at the University of Texas at Austin is a comprehensive programme that prepares graduates for a career in one of the most dynamic fields today. As the demand for data scientists continues to surge across various sectors such as academia, government, healthcare, and non-profit organisations, this programme equips students with the critical skills needed to excel in this competitive landscape. The MSDS programme is a collaborative effort between the Department of Statistics and Data Sciences and the Department of Computer Science, ensuring a robust educational experience that integrates both statistical and computational methodologies.
Why Data Science at the University of Texas at Austin?UT Austin is recognised as a top-ranked public university, renowned for its academic excellence and innovative research. The MSDS programme benefits from strong partnerships within the industry, providing students with access to cutting-edge facilities and resources. The curriculum is designed to offer a comprehensive understanding of data science, ensuring that graduates are well-prepared to tackle complex data challenges. With a focus on affordability, the programme offers an advanced degree at competitive tuition rates, making it an attractive option for aspiring data scientists.
Tuition Fee BreakdownThe tuition fees for the Master of Science in Data Science are structured as follows:
- International Students: USD 9,081 per semester
- Domestic Students: USD 9,081 per semester
- Local Students: USD 4,608 per semester
Visit the Fees and Funding section for a breakdown in your local currency.
SyllabusThe curriculum comprises ten courses, including three foundational courses and seven additional required or elective courses. The foundational courses are:
- Data Structures & Algorithms
- Probability & Inference
- Regression & Predictive Modeling
Students will also engage in advanced topics such as:
- Deep Learning
- Machine Learning
- Data Exploration & Visualization
- Natural Language Processing
- Reinforcement Learning
This diverse syllabus ensures that students gain a well-rounded education in data science, preparing them for various roles in the industry.
Careers with Data ScienceGraduates of the MSDS programme are well-positioned to enter a variety of industries, leveraging their skills in data analysis, machine learning, and computational methods. Alumni have found successful careers in sectors such as technology, finance, healthcare, and government, often taking on roles such as data analysts, data scientists, and machine learning engineers. The programme's strong emphasis on practical skills and real-world applications ensures that graduates are equipped to meet the evolving demands of the job market.
Programme Structure
Courses include:
- Advanced Predictive Models for Complex Data
- Design and Causal Inference for Data-Based Decision Making
- Data Exploration, Visualization, and Foundations of Unsupervised Learning
- Principles of Machine Learning
- Deep Learning
- Natural Language Processing
- Optimization
Key information
Start dates & application deadlines
- Starting
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Language
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Credits
Delivered
Campus Location
- Austin, United States
Disciplines
Data Science & Big Data View 195 other Masters in Data Science & Big Data in United StatesWhat students do after studying
Academic requirements
English requirements
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- 98 accuracy using real exam data
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Other requirements
General requirements
- Statement of Purpose: Candidates should limit their submission to two pages describing their reasons for pursuing graduate study, academic and professional interests and goals. It may also include events/experiences that prepared you for graduate study.
- CV/Resume: At the end of the CV/resume please include a section about how you have covered relevant coursework (via MOOC’s, courses, work) and the grade associated with this course (assuming it was through a college or university).
- Mathematics & Programming Preparation Form: Applicants must provide relevant information regarding coursework taken in the subject areas of linear algebra, multivariate calculus, introductory statistics, and programming. This form must be uploaded as a “Mathematics Preparation Form” document through the Document Upload System on the applicant’s MyStatus Portal.
- TOEFL or IELTS.
- Transcripts.
Tuition Fees
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International Applies to you
Applies to youNon-residents18162 USD / year≈ 18162 USD / year - Out-of-State18162 USD / year≈ 18162 USD / year
-
Domestic
Applies to youIn-State9216 USD / year≈ 9216 USD / year
Funding
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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.
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