Our long-term research goal is to enable intelligence inside our microchips by designing neuromorphic circuits and systems that mimic the brain's fundamental information processing strategies for solving challenging real-world problems.
We aim to build brain-inspired machine intelligence devices. We address the problem of machine intelligence across the whole computing stack, from new models of computation down to hardware. We take inspiration from the brain's efficiency, and we research neural-inspired models of computation that are massively parallel, compute on-demand, and benefit from emerging nano- and microelectronics technologies to develop new disruptive neuromorphic computing systems.
Read moreMeet some of our Researchers
Recent Publications
Our most recent peer reviewed publications
-
Empirical study on the efficiency of Spiking Neural Networks with axonal delays, and algorithm-hardware benchmarking
(2023) -
Aircraft Marshaling Signals Dataset of FMCW Radar and Event-Based Camera for Sensor Fusion
(2023) -
PetaOps/W edge-AI µProcessors: Myth or reality?
(2023) -
Accurate online training of dynamical spiking neural networks through Forward Propagation Through Time
Nature Machine Intelligence (2023) -
Empirical study on the efficiency of Spiking Neural Networks with axonal delays, and algorithm-hardware benchmarking
(2023)
Contact
-
Visiting address
Hannah de Vries LLBFlux, room 4.130Department of Electrical Engineering5612 AP EindhovenNetherlandsrdelarivebox@ vanderberg.com -
Visiting address
Elena MangalFiene van Kuijc van MalsenLelijveldsteeg4382JC Ouwster-NijegaNetherlandssmith.mika@ live.nl -
TeamleadZakaria van WijkHaackhof3351RJ Dwingeloof.corradi@ tue.nl