Call for Postdoctoral Researcher
| ABG-135959 | Sujet de Thèse | |
| 23/02/2026 | Financement public/privé |
- Informatique
Description du sujet
Context: DEXTER4LLM is a collaborative R&D project under France-2023 aiming to build a sovereign-AI solution for structured extraction and automated analysis of complex industrial geographic documents (text, tables, figures, diagrams, plans, handwritten notes, etc.) [1], validated on high-impact industrial use cases (nuclear/mining & process engineering).
ECE leads the LLM Engineering (24 months) lot focusing on adaptation, optimization, and model merging to deliver frugal, high-performing geo-spatial (language / vision / multimodal) models for industrial workloads.
Mission: The post-doctoral will contribute to the scientific and engineering backbone, including:
- Document extraction and knowledge integration (knowledge graph / ontology).
- Domain adaptation / fine-tuning and model optimization.
- Model merging research & engineering: implement and evaluate merging recipes (e.g., DARE-TIES, SLERP-style interpolation, novel alternatives), with reproducible protocols and ablation studies.
- Benchmarking & metrics: accuracy/F1 for extraction, faithfulness (GraphRAG-style evaluation), and measurable frugality targets (compute reduction with environmental monitoring).
- Sustainability-aware evaluation tooling (carbon/compute tracking; reporting aligned with emerging standards).
- Research outputs: contribute to publications, open science where possible, and tech transfer with consortium partners.
The postdoctoral will work with the ECE team and in a consortium including major French enterprise.
References:
- Ke, W., Zheng, Y., Li, Y., Xu, H., Nie, D., Wang, P., & He, Y. (2025). Large language models in document intelligence: A comprehensive survey, recent advances, challenges, and future trends. ACM Transactions on Information Systems, 44(1), 1-64.
Nature du financement
Précisions sur le financement
Présentation établissement et labo d'accueil
https://www.ece.fr/
https://fr.wikipedia.org/wiki/%C3%89cole_centrale_d%27%C3%A9lectronique
Profil du candidat
PhD in Computer Science with ML/NLP/AI/GeoAI (or close field).
Strong Python + deep learning experience (PyTorch ecosystem).
Solid understanding of LLM training/fine-tuning (data pipelines, evaluation, failure modes).
Hands-on experience with at least one of:
- fine-tuning LLMs (LoRA/QLoRA),
- model compression/quantization,
- inference optimization / scalable serving,
- model merging / weight-space methods.
Ability to produce reproducible research (experiment tracking, clean repo practices) and produce high-impact research in Q1 journals / A level conference venues.
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