Cortical-inspired Architectures
Hierarchical, recurrent patterns for efficient representation learning.
Our mission is to decode neural dynamics and build AI that learns with human-like efficiency, transparency, and adaptability.
Hierarchical, recurrent patterns for efficient representation learning.
Transforming fMRI, EEG, and MEG into interpretable cognitive maps.
Perturbation-driven insights for mechanism-level understanding.
Blending continuous and discrete reasoning with biological priors.
Privacy-preserving learning and governance for neural data.
Closed-loop systems that respond to cognitive states in real-time.
Demonstrates emergent topography consistent with primate ventral stream.
PDFPredictive modeling of stimulation effects with uncertainty bounds.
PDFCross-institution learning with differential privacy guarantees.
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