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Lecture
Machine Learning Models for Neuroscience
Graph Chatbot
Related lectures (31)
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Optimization of Neuroprosthetic Systems
Explores the optimization of neuroprosthetic systems, including sensory feedback restoration and neural stimulation strategies.
Graph Signal Processing for the Brain
Explores Graph Signal Processing applied to brain networks, emphasizing the relationship between brain function and structure using methods like Graph Fourier Transform and Structural-Decoupling Index.
Neural Taskonomy and Historical Perspectives in Visual Intelligence
Covers Neural Taskonomy, the evolution of neural networks, and historical perspectives in visual intelligence.
Neural System Organization
Explores the organization of the nervous system, including neuron structure, synapses, neurotransmitters, and neural circuits.
Ring Attractor Dynamics in Drosophila Brain
Explores ring attractor networks in the Drosophila brain for maintaining heading direction during navigation.
Machine Learning for Feature Extraction
Explores machine learning for feature extraction, 3D vision, and neural networks in mobile robotics.
Feedback & Adaptation: Visual Intelligence
Covers feedback mechanisms in visual intelligence, human pose estimation, motor adaptation in legged robots, and PID controllers.
Dynamical modeling, decoding, and control of multiscale brain network activity
Explores dynamical modeling, decoding, and control of brain network activity for personalized therapy.
Neuroscience and AI: Bridging the Gap
Explores the gap between AI and human intelligence through neuroscience-inspired models and algorithms.
Deep Learning: Convolutional Neural Networks
Covers Convolutional Neural Networks, standard architectures, training techniques, and adversarial examples in deep learning.