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With the growing integration of Artificial Intelligence (AI) in geospatial decision-making processes, ensuring transparency, accountability, and trust in model outputs has become imperative, especially in critical domains such as disaster risk management, social vulnerability mapping using satellite imagery, and ecological monitoring of invasive species.
You will explore how Explainable AI (XAI) methods can efficiently interpret geospatial models' behaviour. The central aim is to explore how such techniques can provide intuitive, human-interpretable explanations for complex model predictions derived from Earth Observation data, including high-resolution satellite and aerial imagery.
You will engage in a comparative analysis of XAI techniques in two key directions: their capacity to enhance the interpretability and usability of model outputs for non-technical stakeholders—partners, such as policy-makers, environmental managers, and disaster response coordinators—including the potential integration of Large Language Models (LLMs) to translate technical explanations into more accessible, natural language narratives — and their potential to iteratively improve model performance by integrating feedback from explanation-based diagnostics.
The research may be applied to diverse domains, ranging from damage assessment in post-disaster scenarios to detecting environmental change processes in vulnerable ecosystems.
You will present (both preliminary and mature) results at appropriate meetings and conferences, publish results in scientific workshops, conference proceedings, and journals, contribute to teaching on topics related to your work, and supervise and mentor involved MSc students as needed.
Interested and motivated candidates are encouraged to apply, even when they still need to obtain all the desired skills. You can develop relevant skills on the job through dedicated learning and doctoral training.
For more information about the position, you can contact Dr Caroline Gevaert (email: [email protected]) or Prof Raúl Zurita-Milla (email: [email protected]). You are also invited to visit our homepage.
For questions about working and living in the Netherlands, please consult the official website of the Netherlands Government or the website of the Expat Centre East Netherlands.
Screening is part of the selection procedure.
Please submit your application before 27 July 2025 at 17:00 CET. Your application should include:
These last two points may be included in the same document as your motivation letter. If you use any AI tools in preparing these documents, please state this at the end of each relevant document.
First-round (online) interviews are scheduled for August 12, 2025. A (possible) second round interview might take the week of August 25th.
The Geo-Information Processing Department (GIP) works on the design and development of methods & techniques for processing (acquiring, organising, analysing) heterogeneous collections of spatiotemporal data, and in the implementation of open geo-information solutions (models, visualisations, and services) that help to understand key societal problems.
The Faculty of Geo-Information Science and Earth Observation (ITC) provides international postgraduate education, research and project services in the field of geo-information science and earth observation. Our mission is capacity development, where we apply, share and facilitate the effective use of geo-information and earth observation knowledge and tools for tackling global wicked problems. Our purpose is to enable our many partners around the world to track and trace the impact – and the shifting causes and frontiers – of today’s global challenges. Our vision is of a world in which researchers, educators, and students collaborate across disciplinary and geographic divides with governmental and non-governmental organisations, institutes, businesses, and local populations to surmount today’s complex global challenges and to contribute to sustainable, fair, and digital societies.
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