This course provides an introduction to basic computational methods for understanding what nervous systems do and for determining how they function. We will explore the computational principles governing various aspects of vision, sensory-motor control, learning, and memory. Specific topics that will be covered include representation of information by spiking neurons, processing of information in neural networks, and algorithms for adaptation and learning. We will make use of Matlab/Octave/Python demonstrations and exercises to gain a deeper understanding of concepts and methods introduced in the course. The course is primarily aimed at third- or fourth-year undergraduates and beginning graduate students, as well as professionals and distance learners interested in learning how the brain processes information.

Computational Neuroscience

Computational Neuroscience


Instructors: Rajesh P. N. Rao
Access provided by Skills Development Fund
150,009 already enrolled
1,142 reviews
Skills you'll gain
- Reinforcement Learning
- Biology
- Artificial Neural Networks
- Network Model
- Physiology
- Probability Distribution
- Recurrent Neural Networks (RNNs)
- Machine Learning Algorithms
- Machine Learning Methods
- Electrophysiology
- Neurology
- Network Analysis
- Mathematical Modeling
- Sensory Systems Analysis
- Supervised Learning
- Differential Equations
Tools you'll learn
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There are 8 modules in this course
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Reviewed on Oct 31, 2024
This course would be improved if the answers with explanations of each quiz question were provided after the student had passed the quizzes.
Reviewed on Dec 27, 2018
Pretty good. A bit of mathematical ambiguity and lax notational conventions, but the course content was solid and presented clearly.
Reviewed on Feb 2, 2019
Starts off great but get rushed 3/4ths into the course. Too much content, too little explanation, but recovers swiftly to end on a high. Recommended
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