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motivated with an interest to work in an interdisciplinary team spanning machine learning, bioinformatics, and medicine Strong English language skills to communicate and collaborate in our diverse work
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working in an interdisciplinary environment Excellent written and verbal communicaton skills in the English languange Our offer A vibrant research community in an open, diverse and international work
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Research Foundation (DFG) is funding the project. In the course of the application procedure, which takes place both at the GRK 2767 of the TU Dresden and at the HZDR, the documents received by the HZDR will
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Requirements: excellent university degree (master or comparable) in computer engineering or electrical engineering a strong background in digital design, hardware description languages (e.g. Verilog, VHDL
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Training Group "AirMetro - Technological & Operational Integration of Highly Automated Air Transport in Urban Areas" (RTG 2947) , funded by the German Research Foundation (DFG). This interdisciplinary group
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Optional requirements: background or experience in protein biochemistry and molecular cell biology research communication skills in German (can, alternatively, be learnt on the post) We offer: integration
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programs, the university unites the natural and engineering sciences with the humanities, social sciences and medicine. This wide range of disciplines is a special feature, facilitating interdisciplinarity
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wide range of offers to help you balance work and family life Further training opportunities and free in-house language courses The group language is English, so no German language skills are required
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to help you balance work and family life Further training opportunities and free in-house language courses The group language is English, so no German language skills are required – but it is a great
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degree in computational engineering, mechanical engineering, computer science, applied mathematics, physics or a similar area very good programming skills in Python good prior experience with neural