COLCOM - Postdoctoral Researcher in Multimodal Crop Analysis & Fertilizer Optimization
Listed on 2026-02-14
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Research/Development
Research Scientist, Data Scientist, Biomedical Science, Biotechnology
Organisation/Company MOHAMMED VI POLYTECHNIC UNIVERSITY Research Field Computer science Environmental science Geosciences Researcher Profile Recognised Researcher (R2) Established Researcher (R3) Final date to receive applications 11 Mar 2026 - 00:00 (UTC) Country Morocco Type of Contract Permanent Job Status Full-time Is the job funded through the EU Research Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure?
No
About the recruiter — UM6P
Mohammed VI Polytechnic University (UM6P) is a research-and-innovation focused university in Morocco committed to African development. UM6P’s College of Computing (Benguerir & Rabat campuses) advances world-class research and education in Computer Science, fostering partnerships with industry and local stakeholders.
Project summary (one line)
Develop farmer-centric systems that fuse multi-modal remote sensing, soil and phenology data to enable crop classification and precise, customized fertilizer recommendations.
Selection criteria (short)
Required
- PhD (awarded or defended before start) in Computer Science, Remote-Sensing/Geoinformatics, Agricultural Data Science, or related field.
- Strong track record in remote-sensing imagery and/or time-series analysis and ML/DL for spatio-temporal data.
- Advanced Python skills and experience with ML frameworks and geospatial tools (e.g., PyTorch/Tensor Flow, rasterio/GDAL).
- Ability to work independently and produce reproducible research outputs.
- Good English (written & oral) and willingness to collaborate with agronomists and partners.
Preferred
- Postdoc or ≥2 years research experience after PhD; first-author publications in relevant journals/conferences.
- Experience with multimodal data fusion (optical/SAR/soil/phenology), satellite platforms (Sentinel/Landsat/GEE), and building reproducible pipelines.
- Field/ground-truth experience, agronomic knowledge, or fertilizer-recommendation systems. French/Arabic useful for local engagement.
- Cover letter (fit with CropID + available start date).
- CV with links (ORCID, Git Hub).
- Research statement (1–2 pages) with a 12–18 month plan.
- Up to 3 representative papers and links to code/datasets (if available).
- 2–3 referee contacts.
Selection & timeline (brief)
Shortlist based on research fit, technical skills, and interdisciplinarity. Top candidates invited for a technical interview covering past projects, a 6-month plan, reproducibility practices, and farmer-translation. Appointment: fixed-term (24 months), UM6P (Benguerir).
References
- Moreno-Revelo, M.Y., Guachi-Guachi, L., Gomez-Mendoza, J.B., Revelo-Fuelagan, J. & Peluffo-Ordonez, D.H. (2021). Enhanced convolutional-neural-network architecture for crop classification. Applied Sciences, 11(9), 4292. Bhattacharya, S. & Pandey, M. (2024). PCFRIMDS:
Smart Next-Generation Approach for Precision Crop and Fertilizer Recommendations Using Integrated Multimodal Data Fusion for Sustainable Agriculture. IEEE Transactions on Consumer Electronics.
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