More jobs:
Job Description & How to Apply Below
The KU Leuven Life Cycle Engineering (LCE) research group in the Department of Mechanical Engineering and the KU Leuven Institute for Sustainable Metals and Minerals (SIM2) has developed strong, unique expertise in reuse, repair, repurposing, remanufacturing, and recycling, in close cooperation with its industrial partners. To support these research activities, KU Leuven established the Re- and Demanufacturing Lab in Heverlee, where the multidisciplinary team develops state-of-the-art automation, spectroscopic, and computer vision equipment for material characterization, human-robot cooperative disassembly and sorting, product identification, and state evaluation.
Within the REINFUSE project, the ambition is also to frame these previously developed tools within the broader ecosystem for acquiring, handling, and reselling used electronics and industrial equipment. Therefore, the REINFUSE project aims to develop the following digital infrastructure that complements and enhances the lab’s research and development activities:
- AI-driven product research and data acquisition, and
- Lifecycle product traceability Functieomschrijving The KU Leuven Life Cycle Engineering research group is expanding its activities at the intersection of re- and demanufacturing and advanced AI. REINFUSE aims to build the next generation of AI-augmented tools for product (re-)identification, information acquisition, product-data enrichment, valuation, and lifecycle decision support. Diverse inputs, such as product images, OCR text, label images, manuals, and web documents, are to be structured and validated within a product data backbone that supports reuse, repair, refurbishing, remanufacturing, and recycling.
The project targets TRL 5 demonstration, combining fundamental research with robust, reusable software demonstrators for industrial validation with 10 Flemish companies active in production, refurbishing, remanufacturing, and online auctions.
We are seeking a PhD or Postdoctoral researcher to co-develop web-search-enabled LLM-based enrichment pipelines, schemas, and data-structure logic that form the core of the REINFUSE product-information backbone. Research: designing, evaluating, and refining methods for multimodal product-data extraction, enrichment, and validation.
Engineering: building and validating reliable, scalable, and maintainable codebases and pipelines that feed into REINFUSE demonstrators in close cooperation with industrial
Co) design and develop the database structures that form the backbone of the product-information layer, ensuring that identifiers, attributes, and derived data are stored, versioned, traced, and validated over time.
~ Implement and evaluate the data-enrichment pipelines that use web-search-enabled LLMs to extract model- and device-level properties from documents, manuals, and online sources. Support the preparation and organisation of demonstrators and be involved in on-site user tests.
~ Support the guidance of master's theses and job students supporting the validation cases and interface development.
~ Present research results at (international) conferences and events.
~ Assist in workshops, dissemination activities, and teaching tasks (for PhD researchers only at less than 10% of working time).
Profiel For both PhD and Postdoctoral candidates
You hold a Master’s degree obtained with cum laude or equivalent.
You have strong programming skills, especially in Python, and are comfortable working with Git and API tooling, such as Postman.
Having experience in data science with SQL or an ORM framework for designing and querying structured data is a strong asset.
Experience developing software in a team environment and familiarity with collaborative development workflows (version control, code reviews, documentation) are a plus.
You communicate effectively in English (oral and written);
Dutch is an advantage, but not required.
Additional expectations for Postdoctoral candidates
You hold a PhD in Engineering, AI, Data Science, or related fields with a high relevance to the project activities.
Designed complex data structures or schemas for real-world use,
# Built scalable data ingestion or enrichment pipelines
A position in a leading research group with a strong international track record in applied research deploying AI in reuse, repair, remanufacturing, and lifecycle engineering.
Access to large real-world datasets and collaboration with companies across multiple product sectors and active in different product lifecycle stages.
A research trajectory that blends scientific publication with real-world impact, supporting both academic excellence and industrial relevance.
For PhD researchers: the opportunity to complete a PhD in a highly relevant industrial–academic environment.
For Postdoctoral researchers: the opportunity to grow into a technical leader in a strategic Flemish research and innovation project funded through Flanders Make.
Note that applications are not being accepted from your jurisdiction for this job currently via this jobsite. Candidate preferences are the decision of the Employer or Recruiting Agent, and are controlled by them alone.
To Search, View & Apply for jobs on this site that accept applications from your location or country, tap here to make a Search:
To Search, View & Apply for jobs on this site that accept applications from your location or country, tap here to make a Search:
Search for further Jobs Here:
×