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- Czestochowa University of Technology
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are expected to unveil detailed relationships between surface chemistry and blinking statistics and will lead to rational design of NC surfaces for specific applications. Job Description: We are seeking a highly
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Biological sciences » Biodiversity Biological sciences » Biology Chemistry » Computational chemistry Technology » Biotechnology Physics » Mathematical physics Physics » Statistical physics Physics » Biophysics
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Applications to the open call may be submitted by those who meet the conditions specified in Section 113 of the Act – Law on Higher Education and Science of 20 July 2018 (Journal of Law 2024 item 1571) [1
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; Data collection (e.g. interviews with stakeholders); Compilation and organisation of statistical data; Review and analysis of regulations and strategic documents; Communication with international
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models to study semantic relationships and changes in language during different periods of conflict collaboration with an interdisciplinary team performing statistical analyses active role in writing
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Evaluation of metrological parameters of MIP sensors in laboratory and biological samples Statistical analysis of experimental results Graphical data processing (e.g. Origin, MATLAB) Preparation of reports and
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to independently plan and conduct experiments (turbulent flows). Knowledge of optical (PIV, LDA) and thermo-anemometric measurement techniques. Signal processing skills – spectral analysis, statistics, POD
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for the OPUS 28 call: https://ncn.gov.pl/sites/default/files/pliki/uchwaly-rady/2024/uchwala84_2024-zal1.pdf The candidate should: Know the physiology of the nervous system, molecular and cell biology
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, particularly radionuclides, on a continental scale. The aim is to develop a new class of inverse Bayesian models, STE-EU-SCALE, combining innovative forward dispersion models, machine learning techniques, and