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IU International University of Applied Sciences

Bad Honnef, Bad Honnef, Germany

Master Data Science

Unlock the future of data-driven innovation with our online Master's in Data Science. Join a dynamic learning community, gain cutting-edge skills in machine learning, data analysis, and artificial intelligence and prepare for a successful career in an in-demand, competitive field.

 

Intakes

  • Jan
  • Sep

Application Processing Time in Days: 30

Minimum English Language Requirements

English Level Description IELTS (1.0 -9.0) TOEFL IBT (0-120) TOEFL CBT (0-300) PTE (10-90)
Expert 9 120 297-300 86-90
Very Good 8.5 115-119 280-293 83-86
Very Good 8 110-114 270-280 79-83
Good 7.5 102-109 253-267 73-79
Good 7 94-101 240-253 65-73
Competent 6.5 79-93 213-233 58-65
Competent 6 60-78 170-210 50-58
Modest 5.5 46-59 133-210 43-50
Modest 5 35-45 107-133 36-43
Limited 4 32-34 97-103 30-36
Extremely Limited < 4 < 31 < 93 < 30

Admission Requirement / Eligibility Criteria

  • Completed undergraduate degree from a public or officially recognised university/higher education institution.  
  • For 60-ECTS credits programmes, you will need to have already acquired 240 ECTS credits. 
  • For 120-ECTS credits programmes, you will need to have 180 ECTS credits.  
  • You must have achieved a final grade of at least “satisfactory” or Grade C equivalent in your previous undergraduate degree 
  • Proof of at least one year’s professional work experience completed prior to the start of study programme. Work experience must have been gained after completion of your undergraduate studies

 

For More Information Pls Contact To Our PSA Counselor.

 

  • Course Type: Blended
  • Course Level: Masters/PG Degree
  • Duration: 01 Year  
  • Total Tuition Fee: 1932 EUR
    Average Cost of Living: 10000 EUR /year
    Application Fee: N/A
This Institution is not directly represented by us and applications / visa support (to them) attract a nominal charge