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periods. b) Relevant experience in the development of 3D in vitro models and technologies based on microfluidics and nanomedicine for application in cancer research. 5. Formalization of the applications
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fluorescence microscopy. Experience in 3D modeling (e.g., SOLIDWORKS), fabrication of biotechnological devices, and microfluidics for organ-on-chip development. d) Experience in transcriptomic, proteomic, and
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studies and post-doctoral periods. b) Relevant experience in the area of biomaterials and biofabrication of microphysiological models based on 3D bioprinting and microfluidics for cardiovascular
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cell models and in molecular and biochemical characterization techniques (qPCR, western blotting, immunocytochemistry, ELISA). Research experience in cancer and microfluidics will be valued. 5
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integrating them with microfluidics as a standalone device. This is a great opportunity to learn new skills, contribute to assay development, and intellectually contribute to projects within a collaborative
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integrated hardware systems. Experience in integrating camera modules and sensors (I2C, SPI, UART) is advantageous, as is knowledge of microfluidic automation, including actuators like pumps, valves, and
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involves a mix of field, laboratory, and experimental work. The successful candidate will conduct field sampling, perform follow-up aquatic chemistry analyses, and integrate microfluidic experiments
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); extending these findings to other secretory cells and identifing the underlying molecular mechanisms. Second, by using programmable microfluidic devices to construct complex environments in a controlled way
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Position overview Position title: Assistant Project Scientist Salary range: A reasonable salary range estimate for this position is $97,000 - $121,800. The posted UC academic salary scales (https
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of manufacturing. We have identified an opportunity to combine continuous microfluidic (µF) process models, process analytical techn ology (PAT) and machine learning (ML) to achieve a paradigm shift in bioprocess