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Principles of flexible computation

Discovering principles of flexible information processing in the cortex is critical to understanding the mechanisms of brain-state-dependent sensory processing and cognition. The Jadi Lab at Yale investigates the principles of flexible computations across multiple neural substrates, including synaptic integration in single neurons, dynamics in excitatory-inhibitory networks, and information routing between networks. In combination with theoretical frameworks such as dynamical systems and information theory, they use tools such as probabilistic graphical models, unsupervised learning, multicompartmental biophysical models, and phenomenological models to conduct our research. Work in the research group ranges from purely computational to active collaborations with experimental groups at WTI and beyond.

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Biography

Monika Jadi received her Bachelor's degree in 1995 from the Visvesvaraya National Institute of Technology in Electrical Engineering and her Doctoral degree in 2010 from the University of Southern California in Biomedical Engineering (Neuroengineering). She did her post-doctoral research at the Salk Institute and started her lab at Yale in 2017. She enjoys practicing the classical dance form of Kathak and the outdoors.