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UMR PAM ( Dijon, France) and UMR SecAliM (Nantes, France) | Nantes, Pays de la Loire | France | 15 days ago
objective of this axis will be to evaluate the resistance of six strains of L. monocytogenes to two stress conditions encountered in unit operations chains in the dairy industry. Statistical analysis
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biscriptualism desirable. EEG data acquisition and analysis (matlab). General skills in experimental methodology and statistical analysis. Excellent written and verbal communication skills in English. Ability
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on complementary imaging techniques combining high sensitivity, high spatial resolution and statistical representativity. As it stands, the reference technique is atom probe tomography (APT) [3] but it suffers from
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committed to develop novel methodologies combining mechanistic and statistical modeling to be ultimately applied at bedside. Post doc statutory salary is determined by Aix Marseille Université – around 2
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concern the construction and exploitation of relevant data representation spaces, endowed with statistical properties, to link data samples in this representation space and/or reconstruct cases in
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Requirements Master or Engineering degree, in data science, AI, applied mathematics, or related fields. Strong skills in advanced statistics and Machine Learning, including Deep Learning Good programming
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, immunofluorescence, protein extraction, ELISA, protein electrophoresis. The candidate will have to master basics of statistical analysis and be able to interpret results. He will have to be rapidly autonomous after
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or professional with an academic background in statistics, environmental sciences, environmental psychology, bibliometrics, education sciences or similar. Working knowledge of French is essential. Working knowledge