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Eindhoven University of Technology 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 top-five position in collaborating with advanced industries. Fundamental knowledge enables us to design solutions for the highly complex problems of today and tomorrow.
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.
This PhD will focus on the development of neural architecture search (NAS) methods for designing efficient, low-power neural networks tailored to neuromorphic hardware and brain decoding tasks.
Brain-machine interfaces (BMIs) hold transformative potential to restore function in individuals with severe disabilities by decoding neural activity into actionable signals for communication or control. This PhD project aims to co-design algorithms and hardware for decoding motor and cognitive intent from human brain recordings, enabling next-generation assistive technologies such as speech prostheses or neural control of external devices.
Designing efficient neural networks for brain-machine interfaces (BMIs) is a challenging task that requires balancing high decoding performance with strict constraints on latency, energy, and hardware complexity. In this PhD project, we aim to automate the design of these networks using Neural Architecture Search (NAS) techniques tailored for event-driven neural networks, state-space models, and transformer-inspired architectures for brain signal decoding.
The project leverages open intracranial EEG or electrocorticography (ECoG) datasets. These datasets, increasingly available as open-access resources, provide high-resolution recordings from human participants and enable the development of generalizable and robust decoding models.
The PhD will develop NAS frameworks that can search over heterogeneous neural architectures, ranging from sparse event-driven layers to dense attention-based modules, under multiple constraints, such as memory usage, energy consumption, and latency on neuromorphic hardware. This will include:
The resulting architectures will be evaluated in terms of both software-level decoding performance and hardware-level feasibility, and selected designs may be implemented in silicon as part of a larger co-design pipeline developed within the NECS lab, in collaboration with international research partners.
This research will contribute to the next generation of efficient and adaptive neural decoders that can be deployed in real-world BMIs for healthcare and assistive technology. The NAS-driven approach will allow us to scale from handcrafted prototypes to automated, data-driven model design aligned with hardware constraints, an essential step toward deployable and personalized neuroprosthetic systems.
The Neuromorphic Edge Computing Systems Lab (NECS) is managed by Dr. Federico Corradi and is part of the Electronic Systems (ES) group (tue.nl/es). The ES group is a top research group consisting of five full professors, three associate professors, five assistant professors, several postdocs, about 40 EngD and PhD candidates, and support staff. The ES group is world-renowned for its design automation and embedded systems research. Our ambition is to provide a scientific basis for design trajectories of electronic systems, ranging from digital circuits to cyber-physical systems. The trajectories are constructive and lead to high-quality, cost-effective systems with predictable properties (functionality, timing, reliability, power dissipation, and cost). Design trajectories for applications that have strict real-time requirements and stringent power constraints are an explicit focus point of the group.
Do you recognize yourself in this profile and would you like to know more? Please contact the hiring manager Federico Corradi, assistant professor, [email protected]
Visit our website for more information about the application process or the conditions of employment. You can also contact Kevin Caris, HR advisor, [email protected].
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:
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.
Type of employment: Temporary positionWe are an internationally top-ranking university in the Netherlands that combines scientific curiosity with a hands-on attitude.
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