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monitoring, ideally with experience in biodiversity and AI. Proficiency in data visualization and analysis, particularly using R or Python. Experience with camera trap data or audio recordings is a plus
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international environment Very good command of written and spoken English Desirable Good knowledge of the statistical programming language R Experience with vegetative fossils of seed plants, i.e. leaf venation
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programming skills in one or more languages (Matlab, Python, R, C, Fortran) excellent knowledge of English (written and spoken) high degree of motivation, creativity, and flexibility ability and willingness
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quantitative training or research experience Training and experience in quasi-experimental methods is a plus Strong coding skills in R, Stata, or other statistical software package Good communication skills in
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degree in a health-related subject is not required to apply Training and experience in quasi-experimental methods is a plus Strong coding skills in R, Stata, or other statistical software package Good
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-cell sequencing) Prior experience working with spatial biology approaches, and early-adoption of cutting-edge technologies Prior experience working with Linux and high performance clusters (HPC) R/Python
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genomics. be proficient in bash scripting and R and experience with cloud computing (required). be proficient with Python and Git (preferred). perform bioinformatical and statistical analysis of multi-tier
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; experience in other relevant programming languages such as R, Java, C#, Rust or C++ is a great advantage First experience in the development of AI models with relevant frameworks such as PyTorch, Huggingface
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other relevant programming languages such as R, Java, C#, Rust or C++ is a great advantage First experience in the development of AI models with relevant frameworks such as PyTorch, Huggingface
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biology, genetics, genomics, or equivalent scientific background with an excellent understanding of genome biology comprehensive programming experience in python and/or R demonstrable experience in multi