Computer Vision & Data Science
Tuition
Duration
Admissions Deadline
Location
Profile
The vast majority of data generated every day is image data, which is why image data analysis is one of the most important focus areas for modern Data Science and Artificial Intelligence. The field is evolving at such a rapid pace that the demand for image data science professionals is extremely high. In the future, any visual inspection task may be automated. It is therefore important that a new generation of applied researchers and engineers is ready to take advantage of the countless possibilities offered by modern data science.Core tasks of an image data professional are:Designing, developing and testing machine learning algorithms for automating visual inspections.Creating, balancing and maintaining annotated datasets, in collaboration with domain experts.Optimising and scaling the developed algorithms.Carrying out methodologically correct research.Keeping abreast of relevant and current trends and developments in the field.The programme covers various topics such as machine learning, deep learning, computer vision, mathematics, programming and many more. As a student, you will learn to acquire the knowledge and skills to successfully find a solution to real-life problems. You will be supported by the experts of the professorship Computer Vision & Data Science who have been working in this field for many years.The master’s programme is a full time programme of one year. Iteratively working towards the practical application of innovative solutions is at the core of the programme. In a master-apprentice stile learning environment you will be working on real-life applied research projects. Where knowledge and skills are integrated in applied research, with attention for ethics, communicational skills and professional development.
Map
Sorry, no records were found. Please adjust your search criteria and try again.
Sorry, unable to load the Maps API.
Related Programs
Program Information
Leeuwarden
Netherlands
8917 DD
Netherlands
- 2 years
- Full Time
- On Campus Learning
Additional Information
Considerations