In this PhD project you will develop reactive, Bayesian AI agents that run on portable devices. We take inspiration from how the brain spontaneously reacts to sensory input, as formally laid out by the “Free Energy Principle” (https://en.wikipedia.org/wiki/Free_energy_principle(FEP). We develop Bayesian AI agents that, similar to the brain, learn purposeful behavior solely through environdmental interactions.To support this research, we are developping a custom reactive probabilistic Programming toolbox named Rxlnfer (see http://rxinfer.ml). RxInfer supports real-time reactive Bayesian inference for AI agents. In your PhD research you will advance both fundamental and practical development of RxInfer and seek novel application areas for reactive probabilistic programming.
Job Description
This PhD project is funded by the ROBUST program (https://icai.ai/labs-robust/) that aims to develop trustworthy AI tools for today's big societal challenges. One of these challenges concerns improving the participation of hearing-impaired persons in challenging work and social settings. In this PhD project, you will develop probabilistic programming tools for real-time AI agents that support situated (i.e., real-time, in-situ) development of personalized audio processing algorithms for hearing aid clients. Your algorithms will be implemented on portable devices and operate under computational and energy-consumption constraints.
An substantial part of the PhD research will be devoted to further development of RxInfer (http://rxinfer.ml), which is a high-quality toolbox-under-development for automating real-time Bayesian inference. Your work will partly consist of developing and coding fundamental (Bayesian) AI tools, and partly on applying these tools to developing AI agents that learn to personalize (recommend) hearing aid algorithms through situated interactions between the agent and a human client. Therefore, for a perfect fit with this position, you should have a keen interest and background in both quality software development and in Bayesian machine learning methods. RxInfer is based on a Reactive Programming framework and coded in Julia, see http://rxinfer.ml.
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 a leading physics-based theory about computation in the brain, the Free Energy Principle (FEP), to practical use in synthetic AI agents. During this project you will closely collaborate with other BIASlab researchers, as well as with project team members at the Human Technology Interaction lab (https://tinyurl.com/2jno83f6), and with our industrial hearing device partner GN Hearing.
Key areas of interest include software development, Bayesian machine learning, probabilistic graphical models (factor graphs), ,signal processing and computational neurosciences.
This research project requires a multidisciplinary approach and draws from Bayesian machine learning, computational neuroscience, and professional-level software development. See this youtube presentation (https://youtu.be/QYbcm6G_wsk) on Natural Artificial Intelligence for more information about our research.
A substantial part of the PhD research will be devoted to further development of RxInfer (http://rxinfer.ml), which is a high-quality toolbox-under-development for automating real-time Bayesian inference. Your work will partly consist of developing and coding fundamental (Bayesian) AI tools, and partly on applying these tools to developing practical AI agents.
RxInfer is based on a Reactive Programming framework and coded in Julia. For a perfect fit with this position, you should have a keen interest and background in both quality software development and in Bayesian machine learning methods.
This PhD project is funded by the ROBUST program (https://icai.ai/labs-robust/) that aims to develop trustworthy AI tools for today's big societal challenges. A particular application area concerns agents that support situated (i.e., real-time, in-situ), personalized audio processing algorithms for hearing aid clients. Your algorithms will be implemented on portable devices and operate under computational and energy-consumption constraints.
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 a leading physics-based theory about computation in the brain, the Free Energy Principle (FEP), to practical use in synthetic AI agents. During this project you will closely collaborate with other BIASlab researchers, as well as with project team members at the Human Technology Interaction lab (https://tinyurl.com/2jno83f6), and with our industrial hearing device partner GN Hearing.
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:
About us
Eindhoven University of Technology (TU/e) is an internationally top-ranking university in the Netherlands that combines scientific curiosity with a hands-on attitude. Our spirit of collaboration translates into an open culture and a world-wide top-five position in collaborating with advanced industries. Fundamental knowledge enables us to design solutions for the highly complex problems of today and tomorrow.
Curious to hear more about what it’s like as a PhD candidate at TU/e? Please view the videos at https://tinyurl.com/2gnqpxbt.
Information
Do you recognize yourself in this profile and would you like to know more?
Visit our website for more information about the application process or the conditions of employment. You can also contact prof.dr.ir. Bert de Vries at bert.de.vries[at]tue.nl for more information about the advertised position.
Are you inspired and would like to know more about working at TU/e? Please visit our career page.
Application
We invite you to submit a complete application by using the apply button.
The application should include a
Security checks can be part of the selection procedure and admission, both by the university as an employer and by the companies the lab collaborates with.
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.