Seleziona la regione che meglio si adatta alla tua posizione o alle tue preferenze.
Questa impostazione controlla la lingua dell'interfaccia utente, inclusi i pulsanti, i menu e tutto il testo del sito. Seleziona la tua lingua preferita per la migliore esperienza di navigazione.
Seleziona le lingue per gli annunci di lavoro che desideri vedere. Questa impostazione determina quali annunci di lavoro ti verranno mostrati.
Are you interested in developing cutting-edge AI that is inspired by how the brain works? In this PhD project you will apply active inference, a leading neuroscientific theory for how the brain works, to continuous model alignment for manufacturing processes.
In manufacturing, uncertainties may arise from stochastic machine behavior, sensory noise, changes in environment/context and incomplete information. Real-time adaptation to such disturbances is crucial to the efficiency and effectiveness of the manufacturing process. Active inference is a first-principles theory about how agents act and adapt under uncertainty.
By combining active inference principles with probabilistic graphical modeling, event knowledge graphs and physics-informed neural nets, you will enable agents to reason under uncertainty, test hypothesis and adjust internal models based on observed data. These techniques should provide full decision traceability, ensuring explainability and accountability of developed agents for application in complex manufacturing processes.
This PhD project is funded by the Horizon Europe program (https://tinyurl.com/mr7wjukv). You will work in the BIASlab team (http://biaslab.org) in the Electrical Engineering department at TU/e. This lab focuses its research activities on transferring Active Inference principles to practical use in industrial contexts. Please see this youtube presentation (https://youtu.be/QYbcm6G_wsk) for more information about our research. During this project you will closely collaborate with other BIASlab researchers, as well as with project team members in the Process Analytics Cluster (https://tinyurl.com/3uee5xt7), and with our industrial partners.
An important part of the PhD research will be devoted to contributing to RxInfer (https://rxinfer.com/), which is a toolbox-under-development for automating real-time Bayesian inference. Hence, your work will partly consist of developing and coding fundamental (Bayesian) AI tools, and partly on applying these tools to manufacturing applications.
Key areas of interest include Bayesian machine learning, probabilistic graphical models (factor graphs), computational neuroscience, manufacturing processes and software development.
A meaningful job in a dynamic and ambitious university, in an interdisciplinary setting and within an international network. You will work on a beautiful, green campus within walking distance of the central train station. In addition, we offer you:
On our website you can discover even more information about our conditions of employment. Build on your career at TU/e!
We are a leading international university where scientific curiosity meets a hands-on mindset. We work in an open and collaborative way with high-tech industries to tackle complex societal challenges. Our responsible and respectful approach ensures impact — today and in the future. TU/e is home to over 13,000 students and more than 7,000 staff, forming a diverse and vibrant academic community.
Our university is located in Brainport Eindhoven — a world‑leading tech region with more than 7,000 high‑tech companies and strong R&D activity. Known for breakthroughs in AI, photonics, semiconductors and advanced manufacturing, Brainport is a place where technology serves people and society. Learn more about the Brainport region here.
The mission of the Department of Electrical Engineering is to acquire, share and transfer knowledge and understanding in the whole field of Electrical Engineering through education, research and valorization. We work towards a ‘Smart Sustainable Society’, a ‘Connected World’, and a healthy humanity (‘Care & Cure’). Activities share an application-oriented character, a high degree of complexity and a large synergy between multiple facets of the field.
Research is carried out into the applications of electromagnetic phenomena in all forms of energy conversion, telecommunication and electrical signal processing. Existing and new electrical components and systems are analyzed, designed and built. The Electrical Engineering department takes its inspiration from contacts with high-tech industry in the direct surrounding region and beyond.
The department is innovative and has international ambitions and partnerships. The result is a challenging and inspiring setting in which socially relevant issues are addressed.
Do you recognize yourself in this profile and would you like to know more? Visit our website for more information about the application process. You can also contact dr. Thijs van de Laar at [email protected] for more information about the advertised position. Please note that you can only apply online (see below) and applications sent by email will not be processed.
Curious to hear more about what it’s like as a PhD candidate at TU/e? Please view the video.
Are you inspired and would like to know more about working at TU/e? Please visit our career page.
We invite you to submit a complete application by using the apply button. The application should include a:
Ensure that you submit all the requested application documents. Please note that incomplete applications may not be considered and could be rejected.
We look forward to receiving your application and will screen it as soon as possible. The vacancy will remain open until the position is filled.
We are an internationally top-ranking university in the Netherlands that combines scientific curiosity with a hands-on attitude.
Visita la pagina del datore di lavoro