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Lars Ulander

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Postdoc in Data-driven Methods for Remote Sensing of Forests Using the Biomass Satellite University of Gothenburg in Sweden

Degree Level

Postdoc

Field of study

Computer Science

Funding

Available

Deadline

Mar 27, 2026

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Country

Sweden

University

University of Gothenburg

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Where to contact

Official Email

Keywords

Computer Science
Geology
Environmental Science
Electrical Engineering
Remote Sensing
Synthetic Aperture Radar
Physics
Machine learning

About this position

Join the Department of Space, Earth and Environment at the University of Gothenburg for a postdoctoral position focused on advancing data-driven methods for remote sensing of forests using the European Space Agency’s Biomass satellite. The Division of Geoscience and Remote Sensing is renowned for its expertise in space, geoscience, energy, and sustainability, and is committed to curiosity-driven research, education, and global collaboration. The Biomass satellite, launched in April 2025, is equipped with cutting-edge P-band synthetic aperture radar (SAR) and will deliver global forest biomass data through its polarimetric and tomographic radar capabilities. This five-year ESA Earth Explorer mission addresses critical needs in environmental monitoring and sustainable development.

As a postdoc, you will contribute to the development and extension of the biomass algorithm, integrating machine learning approaches to enhance the accuracy and scope of biomass data products. The project involves generating large-scale training datasets from various remote sensing sources, including airborne and spaceborne laser scanners, and validating results with international ground-truth networks such as GEO-TREES. You will be responsible for developing, implementing, optimizing, training, testing, benchmarking, and validating machine learning algorithms for above-ground biomass density estimation. Additional tasks include processing large remote sensing datasets, preparing AI-ready data, presenting research at conferences, publishing in scientific journals, and supervising students.

The position offers a dynamic and inspiring work environment in Gothenburg, Sweden, with full employee benefits provided by Chalmers University of Technology. Chalmers is dedicated to gender balance, equality, and inclusion, and offers Swedish language courses to help international staff settle in. The postdoc contract is for three years, requiring physical presence throughout the employment. Applicants must have a doctoral degree in remote sensing, physics, electrical engineering, or related fields, strong English communication skills, and experience with remote sensing data and machine learning algorithms. Preferred qualifications include recent doctoral completion, experience with forest mapping, large geo-spatial datasets, SAR and lidar data, and university-level teaching.

To apply, submit your application in English via the online form, including a comprehensive CV, publication list, teaching experience, and a personal letter outlining your research background and future goals. The deadline for applications is 27 March 2026. For further information, contact Prof. Lars Ulander at [email protected]. This position is ideal for candidates seeking to advance their careers in academia, industry, or the public sector, and to contribute to global environmental monitoring and sustainable solutions.

Funding details

Available

What's required

Applicants must hold a doctoral degree or equivalent foreign degree in remote sensing, physics, electrical engineering, or related disciplines, to be completed by the time of employment decision. Strong written and verbal communication skills in English are required. Experience in processing and analyzing remote sensing data, and in selecting, implementing, developing, testing, optimizing, benchmarking, and validating custom machine learning algorithms for multi-dimensional remote sensing applications is mandatory. Good social skills and ability to collaborate in an interdisciplinary and international environment are expected. Preferred qualifications include a doctoral degree obtained within the last three years, experience with terrestrial mapping (especially forests), large geo-spatial and satellite datasets, polarimetric/interferometric/tomographic SAR data, airborne and spaceborne lidar data, and university-level teaching experience. Physical presence in Gothenburg is required throughout the employment, and a valid residence permit must be presented by the start date.

How to apply

Prepare your application in English and attach all documents as PDF files (maximum 40 MB each). Submit a comprehensive CV, publication list, details of teaching experience, and a personal letter outlining your research background and future goals. Use the online application form via the provided link. Incomplete applications and those sent by email will not be considered.

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