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; contribute to open-source software and instrument documentation as appropriate. Publish scientific and technical results in peer-reviewed journals and present at conferences; engage with the broader cryogenic
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, integrity, and teamwork. Preferred Knowledge, Skills, and Experience Experience with THz or mmWave instrumentation and measurements. Familiarity with high-gradient acceleration and wakefield accelerator
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materials using engineering controls such as gloveboxes is desired. Knowledge of the use of instrumentation and data acquisition systems to analyze and interpret experimental data. Strong interpersonal
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experimental system design, instrumentation, and automation. Knowledge and experience with analytical techniques (e.g., chromatography, spectroscopy, microscopy). Experience with fouling/scaling studies and/or
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experimental system design, instrumentation, and automation. Knowledge and experience with analytical techniques (e.g., chromatography, spectroscopy, microscopy). Experience with electrochemical techniques (e.g
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, instrumentation, modeling, and data science Position Requirements Recent or soon-to-be-completed PhD (within the last 0-5 years) in field(s) of materials science, physics, computational science, or a related field
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-aware multi-modal deep learning (DL) methods. At Argonne, we are developing physics-aware DL models for scientific data analysis, autonomous experiments and instrument tuning. By incorporating prior
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behaviors of MEMS structures. Hands-on experience working with signal processing and RF testing instruments. Strong communication skills for working in a multidisciplinary team environment. Ability
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for holotomography and to perform dynamic experiments using the Projection X-ray Microscope (PXM) instrument for studying microelectronics. As part of a collaborative team, the successful candidate will participate in
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instrument programming. Interest in software development, in particular, expertise in C or C++ and Linux/Unix programming and Python. Familiarity with scientific productivity, as demonstrated by publications