167 evolution "https:" "https:" "https:" "https:" "https:" "U.S" "U.S" positions at DAAD
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available in the further tabs (e.g. “Application requirements”). Objective With its development-oriented postgraduate study programmes, the DAAD promotes the training of specialists from development and newly
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available in the further tabs (e.g. “Application requirements”). Objective As part of a cooperation with the U.S. Department of State and the Insitute of International Education (IIE) within the „Benjamin A
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Engineering offers a position as Research Associate (m/f/x) Development and application of wire-mesh sensors for thermohydraulic test facilities (subject to personal qualification employees are remunerated
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supported by career development measures including at least one international research stay. For TUD Dresden University of Technology (TUD) diversity is an essential feature and a quality criterion of an
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projects range from the analysis of basic cellular processes to clinical translation, from the application of novel biophysical approaches to the development of new imaging-related techniques and compounds
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and training provision within CAFE-BIO are available from the network website ( https://cafe-bio.org ) and the official EU page for the network ( https://cordis.europa.eu/project/id/101226762
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Participation in the maintenance and development of the department’s infrastructure Participation in the department’s public outreach and communication of our research to the general public Requirements
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/m/d) Development of soft-sensors connected to particlebased separation models to control flotation processes. Your tasks Develop and implement soft‑sensor concepts for continuous monitoring of ore
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-minded team and a supportive atmosphere extensive training and development opportunities the chance to collaborate with international research partners flexible working hours and remote work for balancing
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the development and application of probabilistic inference methods and machine learning techniques for quantitative uncertainty modeling and for the integration of heterogeneous climate data