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A leading technical institute in France seeks a PhD candidate to develop a collaborative information system focusing on recycling value chains. The role involves designing a distributed, agile system for data sharing and decision support across various stakeholders. Requirements include a Master’s degree in Computer Science or Engineering, proficiency in systems architecture, software skills in Java or Python, and strong communication skills in English and French. This innovative project aims to enhance the integration of recycling networks.
Recycling value chains in France and Europe face significant challenges due to the diversity of actors involved, the fragmentation of management systems, the heterogeneity of material flows, and increasing economic and regulatory constraints. This structural complexity is further amplified by the interdependence of processes, variability in available resources, and the growing need for industrial and technological sovereignty. While the literature on the circular economy is extensive, much of the existing research remains focused on local process optimization (e.g., energy efficiency, waste reduction, yield improvement) or on individual actors, without fully addressing the systemic dynamics and multi-scale interactions required to build robust and resilient recycling networks.
To address these challenges, recent studies emphasize the need to move beyond siloed approaches and develop systemic models capable of integrating the entire product life cycle, delayed decision feedback, sector-specific constraints, and multi-level governance mechanisms. These approaches must consider not only the physical and economic characteristics of materials but also the collaborative dynamics between heterogeneous actors, the uncertainty of material flows, market unpredictability, and the rapid evolution of technologies and regulations.
Important note: this is not a PhD in Artificial Intelligence.
The RéGéNexus project proposes an innovative approach to structuring and managing recycling value chains as dynamic, interconnected, and territorially embedded networks. Based on Systems of Systems (SoS) engineering, the project aims to overcome the limitations of local optimization by integrating multi-level interactions, complex feedback loops, and sector-specific constraints. This vision facilitates the coordination of actors with potentially divergent goals, while providing the flexibility needed to respond to the uncertainties of material flows and the rapid changes in market and regulatory conditions.
This PhD will contribute to a task of the RéGéNexus project. It is centered on the design and architecture of a distributed collaborative information system , capable of ensuring interoperability between heterogeneous partners, detecting contextual changes, and dynamically reconfiguring itself. Artificial intelligence or data science methods may be used as tools when relevant, but they are not the primary focus of this PhD.
The PhD is dedicated to the design of a collaborative information system that is distributed, interoperable, and agile. The system should enable data sharing, information synthesis, product traceability, and support for the coordination of decision-making among stakeholders. The research will focus on the definition, modeling, and implementation of software architectures enabling interoperability and adaptability in multi-actor contexts.
The recycling chain is viewed as a collaborative ecosystem of heterogeneous and evolving entities. The definition and development of information systems is a recurring theme at the intersection of computer science and industrial engineering. Collaborative information systems aim to facilitate data sharing and the orchestration of processes among multiple partners, relying on services provided by various stakeholders involved in the collaboration. To address the need for agile configuration, model-driven and service-oriented architectures have been developed. A persistent challenge in this domain is ensuring the required interoperability among the various information systems.
The supervisory team has experience in the definition and management of collaborative information systems across diverse contexts requiring agile coordination among stakeholders : biomass valorisation (Houngbé et al., 2019), deduction of collaborative processes (Montarnal et al., 2018), Industry 4.0 / 5.0, and the enhancement of decision-making processes through new technologies (Rosin et al., 2022).
Clarification: While some parts of the RéGéNexus project involve advanced material characterization (e.g., hyperspectral imaging, deep learning), these are not the focus of this PhD. The doctoral work will concentrate on the information system architecture and software integration aspects.
The main steps of the PhD include :
1) Houngbé, M., Barthe-Delanoë, A. M., & Négny, S. (2019). Servitization of biomass processing for a virtual biorefinery : application to the lignocellulosic biomass in a French local territory. In 20th IFIP WG 5.5 Working Conference on Virtual Enterprises, PRO-VE 2019, Turin, Italy, September 23–25, 2019, pp. 477‑486.
2) Rosin, F., Forget, P., Lamouri, S., Pellerin, R. (2022). “Enhancing the decision‑making process through Industry 4.0 technologies”, Sustainability, 14(1), 461
3) Montarnal, A., Mu, W., Benaben, F., Lamothe, J., Lauras, M., & Salatge, N. (2018). Automated deduction of cross‑organizational collaborative business processes. Information Sciences, 453, 30‑49.
This PhD is part of a joint supervision between CGI (France) and LISPEN (France).
Location : Albi (main location) – Aix‑en‑Provence
Please note that confirmation of funding for this project is expected in June or July 2025.
Master’s degree in Computer Science or an Engineering degree in Computer Science.
Autonomy and ability to work collaboratively within a research team.
Motivation to contribute to research on sustainable development through digital sciences and information systems.
Knowledge of closed‑loop supply chains or circular economy.
Basic knowledge of AI or data science applied to information systems (but this is not the main focus of the PhD).
Location : IMT Mines Albi (main site) – with joint supervision at LISPEN / ENSAM Aix‑en‑Provence.
Application materials : CV, cover letter, summary of Master’s thesis or research work, transcripts, and any other supporting documents.
Application deadline : November 30, 2025, 12 : 00 PM.
Notification for interview : no later than December 8 2025.