

MS in Social and Economic Data Science
- Public University
Faculty of Politics, Law and Economics
MS in Social and Economic Data Science at Uni Konstanz Overview
MS in Social and Economic Data Science offered at Universität Konstanz is a PG course, which is considered the top-ranked course across the university and the country. Students who want to apply, can take up the course within the duration of 2 years. International students applying at for this course need to submit the necessary documents as per the department and the course. International students need to submit qualification proofs along with test scores of exams including IELTS. In addition to the tuition fees students need to look into other various factors that are necessary to manage their stay during the study at the university, which include the other necessary costs like:
- Accommodation costs
- Hostel fees
- Food
- Books
- Supplies
- Utilities, etc.
Duration | 2 years Get Curriculum |
Tuition & Fees | |
International Students Admission Website | Go to Website |
Official Career Service Website | Go to Website |
Course Level | PG Degree |
MS in Social and Economic Data Science at Uni Konstanz Fees
The fee breakup of the Universität Konstanz MS in Social and Economic Data Science includes the first-year tuition fee and cost of living. The cost of living will include expenses like rent for accommodation, meals, and other utilities. Students must note that the total expenses are subject to vary, depending on the additional charges set by the Universität Konstanz. Students can check the table given below to know more about Universität Konstanz MS in Social and Economic Data Science fee breakup.
| Fees components | Amount (for 1 year) |
|---|---|
| Tuition & fees | INR 0 |
| Fees components | Amount (for 1 year) |
|---|---|
| Insurance | INR 1,12,607 |
| Mandatory Fees | INR 61,422 |
MS in Social and Economic Data Science at Uni Konstanz Curriculum
For students who want to explore the Universität Konstanz MS in Social and Economic Data Science program, candidates can find the curriculum by clicking on the green button below. A list of the topics that will be covered in the course, choices for electives that improve learning chances, and other relevant course material are all included in this PDF curriculum. Additionally, it breaks down the course structure by semester, allowing students to see how their studies will advance each term. Making educated selections regarding your academic route requires the use of this material.
Download exam sample paper
MS in Social and Economic Data Science at Uni Konstanz Entry Requirements
- No specific cutoff mentioned
- CGPA - 2.5/4
- An above average Bachelor's degree, at least corresponding to the German grade 2,5 (good) in Economics, Mathematics/Statistics, Political Science, Computer Science, Sociology or Psychology.

Calculate your score and check your eligibility at over 2000+ universities.
Out of 10
- Marks - 6.5/9
- Get a Full FREE IELTS Prep Course with Shiksha Study Abroad – Limited Seats for Weekend & Weekday Batches! Register now for IELTS

Calculate your score and check your eligibility at over 2000+ universities.
Out of 10
- No specific cutoff mentioned
MS in Social and Economic Data Science at Uni Konstanz Rankings
| Rank | Rank Publisher |
|---|---|
| #176 | |
| #451 | |
| #401 |
MS in Social and Economic Data Science at Uni Konstanz Placements
| Particulars | Statistics (2021) |
|---|---|
| Internship Available | Yes |
MS in Social and Economic Data Science at Uni Konstanz Highlights
- MS in Social and Economic Data Science is offered by Faculty of Politics, Law and Economics under Universität Konstanz , Germany.
This a Masters level program of a course duration of 2 Years.
Download the brochure to read more details of this course.
MS in Social and Economic Data Science at Uni Konstanz Scholarships
Resources for you
Learn the process in simple steps with these guides handpicked for youExplore courses offered by Uni Konstanz
Other Courses offered by Uni Konstanz
Similar courses in different Universities
Göttingen, GermanyPublic
Dortmund, GermanyPublic
Deggendorf, GermanyPublic
Hamburg, GermanyPublic
Brunswick, GermanyPublic
Leipzig, GermanyPublic
Erlangen, GermanyPublic
Kiel, GermanyPublic
Magdeburg, GermanyPublic
Trier, GermanyPublic
About the author




