Technical skills and level required: PhD in machine learning, computer vision, remote sensing, or a closely related field. Solid background in deep learning, with hands-on experience in self-supervised learning and/or multi-modal representation learning. Familiarity with modern architectures (transformers, CNNs) and with training models at scale on GPU/HPC infrastructure. Experience working with remote sensing or geospatial imagery is a strong asset, as is knowledge of continual learning and multi-temporal data analysis.
Languages: Proficiency in Python and common deep learning frameworks (e.g. PyTorch). Working knowledge of English (written and spoken) for publishing and international collaboration. French is not required but can be an asset for interaction with CNES teams.
Relational skills: Ability to work collaboratively within a distributed, multi-team environment (INRIA project-teams and CNES experts). Good communication skills to present results clearly, listen, and exchange ideas across disciplines. Autonomy, rigor, and the capacity to organize one's own research while contributing to shared objectives.
Other valued / appreciated: Track record of publications in international machine learning, computer vision, or remote sensing venues. Curiosity about Earth Observation applications and an interest in transferring research toward operational use.