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Your position We are offering a PhD position in experimental microbiology to study antibiotic tolerance in Mycobacterium abscessus , one of the most challenging to treat bacterial pathogens
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. Empa is a research institution of the ETH Domain. To strengthen our team and enhance our knowledge and understanding in pyrolysis processes we are looking for a PhD student for scientific analysis
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records from stalagmites which grew in coastal caves, to reconstruct the phasing of changes in the North Atlantic salinity relative to AMOC variations, and interpreting them with the aid of process models
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21 April, 2026. Initial online interviews will be scheduled for the week of 27 April. For questions about the application process, please contact Prof. Dr. Nemiah Ladd (n.ladd@unibas.ch ). Please do
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efficient and sustainable chemical processes for the production of active ingredients in the pharmaceutical and agrochemical industries. You will develop flow and microfluidic reactors for simultaneous
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the Electrochemistry Laboratory, we are looking for a PhD student. This project aims to understand the mechanisms of electrochemical oxidation processes for the removal of emerging contaminants in water and to develop
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be scheduled for the week of 27 April. For questions about the application process, please contact Prof. Dr. Nemiah Ladd (n.ladd@unibas.ch ). Please do not submit application materials by email. Where
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between 2026 and 2029 and includes experimental campaigns, field installations and data collection, data processing, algorithm development and system optimization. Job description Experimental Campaigns and
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Zurich translates the science of materials processing into societally impactful technologies through student entrepreneurship and interdisciplinary collaboration. For this research project in partnership
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to study and predict. In this four-year SNF-funded project, you will develop data-driven, multiscale simulation methods that combine computer simulations, machine learning, and surrogate models to explore