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; clearly show motivation and strong commitment; have completed their last university degree not more than 6 years ago at the time of application; must be nationals or permanent residents of Angola
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latest by the time the funding period begins. What can be funded? The programme provides funding for a doctoral project at a state or state-recognised institution of higher education or a non-university
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-containing systems. Who We Are Looking For: PhD Student / Research Assistant (m/f/d) The primary focus of this PhD position is to develop and apply in situ EPR spectroscopic techniques using a newly acquired X
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to contribute to sustainable development. To this end, scholarships are granted for development-related PhD studies for individuals who plan to pursue a career in teaching and / or research at a higher education
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of study in the field of architecture. The scholarships also promote the exchange of experience and networking amongst colleagues. Who can apply? You can apply if you have gained a first university degree in
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universities in Germany. Duration of funding The funding period is in general up to 6 years until obtaining a Master’s degree. Value Tunesia's Ministère de l’Enseignement Supérieur covers the following: Monthly
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research and development, including; Feasibility studies on contaminant removal in a solar powered electrodialysis process Establishment of the most suitable energy management scenario in collaboration with
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methods for photocatalytic membrane development. The project will focus on i) photocatalyst selection, looking beyond the most commonly used materials, ii) exploring options of catalyst deposition and
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you have gained a first university degree in the field of arts. What can be funded? In this study programme, you can complete: a Master's degree course/postgraduate degree course leading to a final
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: Develop innovative machine learning architectures for the mining, prediction, and design of enzymes. Combine state-of-the-art ML (e.g., deep learning, generative models) with computational biochemistry