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Software Engineer] to a postdoctoral-level position. The desired start dates would be as soon as possible in 2025. Are you more of a programmer than your researcher colleagues? Are you more of a researcher than
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. This is an exciting opportunity to work on developing GaAs PICs in a project that includes everything from III-V laser epitaxy design and simulations, and fabrication, to system level PIC lidar tests and
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and conduct field and greenhouse experiments for testing causality in plant-microclimate relationships, especially from a functional ecology perspective. The focus is on tundra plants under climate
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methods (at minimum, linear regression (OLS) and logistic regression, as well as familiarity with some advanced methods). Proficiency with statistical software (e.g. R, Stata). Ability to work both
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the position The main aim of the postdoctoral project is to design and conduct field and greenhouse experiments for testing causality in plant-microclimate relationships, especially from a functional
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funded through the EU Research Framework Programme? Horizon Europe Is the Job related to staff position within a Research Infrastructure? No Offer Description The University of Turku is a world-class
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, it will examine how polarized content influences stress, anxiety, depression, and loneliness, and how mental health vulnerabilities increase susceptibility to polarization. Leveraging network science
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compared with observations, offering a powerful way to test our theories. The combination of novel AI methods and broad statistical analyses will help us pinpoint the exact roles of solar flares and coronal
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problems where we aim to determine unknown causes based on indirect or incomplete measurements. Such problems are inherently challenging because small errors in data can lead to large uncertainties in
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, calibration, and the development of analysis tools and software. Our key focus areas are the physics of jets, top quarks, and EWSB, including the development of novel machine-learning methods for high-energy