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Integration of geoscientific knowledge and explainability in machine-learning algorithms for th[...]

📍 France

Informatique & Technologie IFP Energies nouvelles

Description du Poste

Title Integration of geoscientific knowledge and explainability in machinelearning algorithms for the assisted lithological interpretation of well data.

Topic description In the context of the energy transition, the characterization of subsurface rocks is essential for CO₂ sequestration, geothermal energy and resource exploration (for example lithium or natural hydrogen). Leveraging existing data and automation through artificial intelligence (AI) are key drivers despite the complexity of geological formations and the challenges related to trust and explainability. The objective of this PhD work is to develop innovative machine-learning (ML) approaches that integrate geoscientific knowledge (geoscience-aware AI) for the automatic interpretation of well data (logs and high-resolution images) and the characterization of geological formations.

PhD Project Areas

Spatial modeling of geological formations:

use of sequential models such as Recurrent Neural Networks, Convolutional Neural Networks and Hidden Markov Models to capture spatial dependencies in the data, with rich and augmented datasets to strengthen robustness.

Incorporation of geoscientific knowledge:

integration of knowledge graphs and regularizations based on physical principles to guide the algorithms and ensure the geological consistency of predictions.

Improvement of model interpretability:

implementation of techniques such as Grad-CAM, t-SNE and uncertainty estimation to address trust issues and encourage the adoption of ML tools.

Supervision will remain structured yet flexible, allowing the doctoral candidate to explore different approaches and to develop a complete Python tool intended for external users. Methodological advances may lead to high-impact publications, notably because the issues addressed arise in many domains involving AI (for example physics-informed machine learning).

Starting date -11-02

Funding category Public funding alone (i.e. government, region, European, international organization research grant)

Location: Ile-de-France, FR

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Détails du Poste

Date de Publication: February 28, 2026
Type de Poste: Informatique & Technologie
Lieu: France
Company: IFP Energies nouvelles

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Don't miss this opportunity! Apply now and join our team.