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sustainable deep-drawing processes for downgauged, recycled-content aluminum trays. The Challenge Precision-formed aluminum trays are indispensable in high-specification packaging for medical, pharmaceutical
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? No Offer Description This position is part of the NWO KIC Smart Materials project, Smart Materials for Information Processing, in collaboration with the NanoElectronics (NE) group at the University
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innovation processes. Our research approach is process-oriented, using methods that range from intensive longitudinal studies with apps and sensors to in-depth embedded ethnographic research. Together
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to shield these agents during high-shear processing and enable their controlled and targeted release to significantly boost the long-term durability and functionality of next-generation rubber
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in the design, processing, and testing of SMA-based parts. Where to apply Website https://www.academictransfer.com/en/jobs/356312/postdoctoral-position-in-manufa… Requirements Specific Requirements We
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, you are welcome to contact dr. F.L. (Felix) Schwenninger via f.l.schwenninger@utwente.nl . Screening is part of the selection procedure. Website for additional job details https
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seeking for motivated candidates that are interested in developing computer models of the composite human neuro-muscular system that combine detailed musculoskeletal geometries, muscle-tendon models and
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a manufacturing technology for producing small to medium-sized thermoplastic composite components in high volumes. Process simulation software is being developed for virtual optimization of tool
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the feasibility of novel ultralow-power electronics based on quantum-mechanical tunnelling processes in advanced CMOS, which has a strong potential for Internet-of-Things devices and edge-artificial intelligence
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reference architecture for data visiting. This paradigm enables algorithms to securely access and process data within the environments where it resides, supporting federated learning for training machine