Cognitive Sensors Nodes and Systems Lab

The cognitive sensor nodes and systems (CogSys) lab aims at cracking the inner workings of cognition for low-footprint adaptive computing. To do so, we embrace the synergies of neuroscience, machine learning / AI, and hardware design, where we combine:

  • a bottom-up approach consisting in diving into neuroscience research to identify, and then to exploit, key computational primitives of the brain,
  • a top-down approach that builds on the versatility and scalability of modern AI research.

Tackling an interdisciplinary challenge requires a complementary team that can assemble all pieces of the puzzle at multiple scales. Some of our key research areas include:

  • AI hardware accelerators (recurrent neural networks, graph neural networks, large language models, etc.),
  • neuromorphic engineering and spiking/event-based neural network processors (digital, mixed-signal, in-memory),
  • NeuroAI and learning algorithms (cortical microcircuits, approximations of backprop with scalable learning rules that are local in space and time, Bayesian frameworks, continual learning, few-shot learning, etc.),
  • extreme-edge computing and on-device learning.

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News

  • 22
    April

    Open PhD vacancy

    Are you wondering how the neocortex works, how it is related to modern machine learning algorithms, and how this insight can be used to fuel next-gen neuromorphic hardware?

    The position is open until filled, so please apply early!

    View Details