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of nanofabrication processes in the NTNU Nanolab cleanroom Photonic chip design, manufacturing, and optical testing Collaborate with an international network of scientific partners Report research findings in
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include: Maintaining strict safety and quality standards, which is important when working in modern GMP regulated laboratories and cleanroom environments. Ensuring that our processes and equipment meet the
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, calibrated, and maintained properly (Hexmodal, KitCheck, Pyxis, cleanroom, etc). Completes assigned cleaning/compliance/documentation appropriately. Promotes a safe working environment by adhering to the UAMS
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commercial software (Comsol and Lumerical). This will involve optical and mechanical simulations, possibly also computational fluid dynamics. Fabrication of the PIC in cleanroom facilities in Norway (NTNU
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Pritzker Nanofabrication Facility (PNF) is looking for a qualified, experienced Cleanroom Process and Equipment Engineer to help manage a suite of specialized tools that enable fabrication of complex
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and application of advanced micro- and nanofabrication technology. DTU Nanolab consists of two facilities (a cleanroom for nanofabrication and an electron microscopy facility for nano characterization
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neuromorphic devices, utilising photolithographic techniques and other cleanroom processes to create highly customised configurations; Design, simulate, and implement neuromorphic architectures to address
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microscopy and development and application of advanced micro- and nanofabrication technology. DTU Nanolab consists of two facilities (a cleanroom for nanofabrication and an electron microscopy facility
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collaborate closely with RF and antenna specialists located at the Micronova premises in Espoo. Read more about our research: https://www.esa.int/ESA_Multimedia/Images/2024/06/Drone_test_of_planeta… https
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machine learning models in simple, standalone devices that are capable of advanced processing. Building on our work on solution-based neuromorphic classifiers (https://doi.org/10.1002/advs.202207023