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work on cryo-electron tomography studies of regulatory synapses at the axon initial segment of neurons. Expected start date and duration of employment The starting date is 1st September 2026, or as soon
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: whether electron transfer proceeds via diffusible intermediates or through direct, cell-to-cell electron transfer (DIET) is still under active debate. This project aims to resolve the mechanism of archaeal
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) molecule fluorescence and other techniques, such as smFRET. Structural biology using electron microscopy, such as cryogenic electron microscopy (cryo-EM) and tomography (cryo-ET). The postdoc will be central
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regulatory RNAs. Characterization of RNA devices by structural biology methods such as cryo-electron microscopy (cryo-EM) and tomography (cryo-ET). Testing and screening of RNA devices by functional assays in
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regulatory RNAs. Characterization of RNA devices by structural biology methods such as cryo-electron microscopy (cryo-EM) and tomography (cryo-ET). Testing and screening of RNA devices by functional assays in
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ecological processes, i.e., vertical turbulent diffusion, phytoplankton production and consumption, greenhouse gas emissions, etc., to develop hybrid models. Performance will be compared to several 1D aquatic
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hyperpolarized 13C magnetic resonance spectroscopy, nanodiamond-based quantum sensing of ROS, and advanced label-free optical microscopy to establish robust experimental workflows for studying infection biology
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for fundamental optomechanics and practical gas sensing applications. The postdoctoral fellow is expected to contribute to the design, fabrication and optical/structural/mechanical characterization of “string
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and synchrotron-based experiments to study the dynamics of light-induced phase transitions on atomic and nanoscopic length-scales driven by optical and phononic excitation. The focus will be
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polar orbit, passing near the poles about 15 times per day and regularly observing the CIFAR study region. Its payload - two optical cameras, a thermal camera, and onboard machine-learning capabilities