荷语区鲁汶大学

Finding structure in multi-modal food data with visual analytics

项目介绍

The PhD candidate will join the Augmented Intelligence for Data Analytics (AIDA) research group, led by Prof. Jan Aerts, within the Department of Biosystems, KU Leuven (Belgium). The AIDA-lab develops methods at the interface of unsupervised machine learning, topological data analysis, and interactive data visualisation, with the goal of embedding computational analysis into expert workflows across life sciences, agriculture, and food systems. The candidate will apply this approach within a large collaborative project on healthy and sustainable food.

Project

This PhD position is part of the HSFood4ALL (Healthy and Sustainable Food for All) project. HSFood4All is an ambitious interdisciplinary research project that brings together expertise in agricultural and environmental economics, nutrition, consumer behaviour, data science, sustainability assessment, governance, and participatory research.

Despite growing awareness on sustainability and healthy diets, dietary patterns only improve slowly due to a lack of incentives and facilitators for consumers. Information is fragmented, labels are often confusing, and food environments frequently make healthy and sustainable choices difficult. At the same time, food producers and retailers struggle to communicate sustainability efforts in ways that are meaningful and trusted by consumers.

The HSFood4All project addresses these challenges by:

  • Integrating environmental, nutritional, social, and economic data.
  • Developing innovative multi-dimensional food labelling and communication tools.
  • Studying consumer behaviour, food literacy, and food environments.
  • Testing behavioural interventions and communication strategies.
  • Co-creating solutions through citizen research labs and stakeholder engagement.
  • Delivering evidence-based recommendations for industry and policymakers

This particular PhD position sits in a transversal work package that provides the analytical and visual foundation for the whole project, working across its three facets: healthy food choices, environmental sustainability, and voluntary sustainability standards. This cross-cutting position is where the research questions come from. Integrating data across facets raises hard problems in its own right, and the patterns worth finding are those that appear only once the facets are joined. The candidate works at that intersection and builds an independent research line from it.The work is exploratory data analysis in the detective sense: searching complex, multi-modal data for clues, and letting the structure that emerges drive the next question. Three connected threads make up the research:

  • Discovery: what patterns hide across the facets? – Using unsupervised machine learning (clustering, dimensionality reduction), topological data analysis and interactive visualisation in a tight loop with domain experts, surface structure and cross-domain relationships (nutrition–environment trade-offs, consumer segments, cross-facet dependencies) that siloed analyses cannot reach. Which methods reveal which structure, and where they agree or diverge, is open.
  • Integration: how do you make heterogeneous data speak to each other? –  Sources differ in resolution, structure, and completeness, and the choice of representation (relational, document or graph database) determines which cross-modal structure can be used for downstream unsupervised analysis. Designing that data representation (schema) and the integration strategy over joint consumer/product data is a research problem in its own right.
  • Translation: what makes a visual design effective? – At a later stage in the project, we will design front-of-package (FOP) visual formats at multiple levels of informational detail grounded in perception and cognition, so that consumers and policymakers can make data-informed decisions. What encodings stay faithful to the data while remaining interpretable to non-experts is an empirical, testable question.

You will build on AIDA’s methodological line (e.g. minimum spanning tree–based topological networks, flare-sensitive clustering, PLSCAN) and extend it, with food systems as the test case. Domain experts across the three facets provide the questions and ground-truth; findings are published at visual-analytics and data-science venues (e.g. EuroVis, IEEE VIS).

Profile

We are looking for a highly motivated PhD candidate to join our team in this mission to improve food consumption behaviour. Your ideal background:

  • EU Master Degree in Data Science, Bioscience Engineering, Computer Science or a closely related field
  • Demonstrated understanding of unsupervised machine learning (clustering, dimensionality reduction); exposure to topological data analysis is welcome.
  • An exploratory, investigative mindset: comfortable working without a fixed hypothesis, iterating on both analytical methods and visual designs.
  • Solid proficiency in Python; knowledge of SQL (NoSQL experience (document and graph databases) is an asset).
  • Interest in visual design and communication of data, beyond default plotting tools.
  • Strong analytical skills and interest in interdisciplinary, applied methodological research.
  • Knowledge of Dutch is a plus.

Offer

  • A one year position that can be extended to four years after positive evaluation. Possibility to enroll in the PhD programme of the Arenberg Doctoral School.

  • Supervision by an internationally recognised and highly interdisciplinary research team.
  • Opportunities to collaborate with leading academic, industry, and policy stakeholders.
  • Access to advanced training programmes, international conferences, and career development opportunities.
  • A dynamic, international, and supportive working environment.
  • The opportunity to contribute to research with significant scientific and societal impact.

Biosystems Department
AIDA Lab

Interested?

For more information please contact Prof. dr. ir. Jan Aerts, mail: jan.aerts@kuleuven.be.
Are you interested? Then submit your application via the KU Leuven online application tool no later than August 14, 2026. Please note that applications will be screened on a rolling basis, and suitable candidates may be selected and interviewed before the deadline. Early applications are therefore strongly encouraged. Documents to provide:
1. Motivation letter (maximum 1 A4 page), outlining your motivation for the position and how your strengths and background align with the project.2. Curriculum Vitae, including details of your education, current position, relevant work experience (if any), relevant extracurricular activities.3. Academic transcripts (diploma plus list of courses and their grades)4. Contact information for at least 2 references.
You can apply for this job no later than August 14, 2026 via the online application tool

项目概览

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欧洲, 比利时 所在地点
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截止日期 2026-08-14
荷语区鲁汶大学

院校简介

鲁汶大学是比利时久负盛名的世界百强名校。
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联系方式

电话: +32 16 324010

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