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of microbiology and laboratory automation. We are looking for a highly motivated PhD candidate with a strong engineering mindset and a keen interest in AI, automation and microbiology. Prior experience in
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of microbiology and laboratory automation. We are looking for a highly motivated PhD candidate with a strong engineering mindset and a keen interest in AI, automation and microbiology. Prior experience in
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of microbiology and laboratory automation. We are looking for a highly motivated PhD candidate with a strong engineering mindset and a keen interest in AI, automation and microbiology. Prior experience in
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and a willingness to further develop those skills to automate your data processing and improve your own workflow efficiency are expected. You have a strong interest in catalysis and structure-function
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properties of the cluster-substrate system using an automated photocatalytic gas test setup for CO2 photoreduction available at A-PECS. Importantly, the PhD candidate will thus receive a joint PhD degree by
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Networks, and ICT Services & Applications. Your role The SnT Automation & Robotics Research Group is hiring a motivated PhD candidate for the bi-national project DOMINANTS (Dexterity-Oriented Methodology in
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of the results obtained from (semi-)automated AI based pseudonymization of texts. The research will also be contextualized in two industry relevant use case scenarios. Role and responsibilities This is a PhD
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, such as control and automation, mechanical engineering, robotics, electromechanical or mechatronics engineering. Ideally candidates have experience in system identification, theoretical and numerical
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the VUB R&MM research group. You have a Master's degree in a relevant field, such as mechanical engineering, control and automation, robotics, electromechanical or mechatronics engineering. Ideally
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Automated recognition of synonyms and assignment of correct names using sources such as IPNI, World Flora Online, WoRMS, and FishBase; Integration of these data into DiSSCo and LifeWatch infrastructures