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Ioannis N. Athanasiadis

Professor and Chair of AI

Wageningen University & Research

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Netherlands

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Research Interests

Statistics

10%

Self-supervised Learning

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Environmental Science

10%

Computer Vision

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Biology

10%

Machine Learning

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Positions1

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Ioannis N. Athanasiadis

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Wageningen University & Research

Postdoc in Self-Supervised Learning for Image-Based Phenotyping in Agriculture

Wageningen University & Research is recruiting a Postdoc in Self-Supervised Learning for Image-Based Phenotyping within the chair Artificial Intelligence , led by Prof. Ioannis Athanasiadis , with co-supervision by Prof. Ricardo da Silva Torres and Prof. Athanasiadis. The project sits at the intersection of computer science , agriculture , biology , statistics , and environmental science . The research focuses on self-supervised learning , foundation models , computer vision , and image-based phenotyping for crop improvement. You will work with large-scale, multi-temporal plant image datasets, including UAV and sensor data, to learn biologically meaningful representations of plant traits, stress responses, genetic variation, and genotype-environment interactions. The postdoc is embedded in the PHENOM project and involves collaboration between Wageningen University & Research and Radicle Crops . A key crop in the project is quinoa , used as both a model and target crop for sustainable agriculture and breeding. The role is research-intensive and aims to support predictive breeding pipelines and practical breeding applications. Applicants should have a completed PhD in AI, computer science, statistics, engineering, or a related field, plus strong applied machine learning experience. Experience in Python , PyTorch , Scikit-Learn , Git, and HPC environments is desirable. Background in plant breeding, self-supervised learning, or time-series analysis is a plus. English proficiency at C1 level is expected. The position offers a two-year temporary contract (1+1) with a gross monthly salary of €3,546 to €5,538 for a full-time 38-hour week, with a possible 0.8 FTE arrangement. WUR also highlights benefits such as sabbatical leave, study leave, partially paid parental leave, a year-end bonus, pension, and an international working environment in Wageningen, Netherlands. Applications must be submitted through the WUR website only. The deadline is 8 June 2026 .

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