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. This is a non-customer facing position. Duties to include: Conduct spatial analyses using ArcGIS Write computer code for simulating geological processing in the study area Write reports Present results in
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of root-microbe interactions in forming stable soil organic matter in different soil types and under future climate scenarios using a range of different approaches, and in collaboration with Statistics
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, statistics, or a related field strongly preferred. Demonstrated experience leading or managing large, multi-site research programs (e.g., randomized controlled trials, community exposure studies
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. Proficiency in statistics and spatial analyses and map-making using R and/or ArcGIS Experience in analysis of forestry and environmental data Strong communication, writing, and organizational abilities Desired
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acquired while helping ensure the graduate students or postdoc papers have the highest quality data and analysis. Participate in the teams to develop new code and statistical methods to analyze in situ
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), under Portugal 2030, of the R&D unit Centro de Economia e Finanças do Porto, under the following conditions: 1. Research areas: Social Sciences: Economics, Management, Statistics, Computer Science
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, fixed-term position focused on the development and application of synthetic control methods to problems in spatial causality within agricultural and environmental economics. The successful candidate will
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January 15th, 2026 until filled Recent advances in high-throughput technologies for single-cell analysis, including single-cell transcriptomics, spatial transcriptomics, epigenomics, and their combination
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transcriptomics, spatial transcriptomics, epigenomics, and their combination into multi-omic platforms, have transformed the life sciences landscape. At ISTA, we implement these diverse technologies across
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Saelens team. Research Project In this research project you will develop probabilistic deep-learning models that automatically extract biological and statistical knowledge from in vivo perturbational omics