Introduction to Computational Neuroscience (MTAT.03.291)
Lectures: Mondays 16:15, Liivi 2-122
Practices: Tuesdays 14:15, Liivi 2-122
- Raul Vicente (email@example.com)
- Aqeel Labash (firstname.lastname@example.org)
- Daniel Majoral (email@example.com)
Mailing list: firstname.lastname@example.org
- Course announcements, discussions and updates will appear in this list. Please add yourself there by entering your e-mail address in here (and click "saada"):
About the course
Purpose of this course is to familiarize students without biological background with the field of neuroscience and study how mathematics and computer science are used to solve questions arising in this field. The following topics will be covered during the course:
- Basic organization of the brain and nervous system
- Approaches to explore the brain
- Data analysis
- Single neuron models
- Network models
- Learning and plasticity
- Cognitive functions
In the practice sessions we are going to
- Try out concepts discussed on the lectures.
- Solve exercises from the field.
- Analyse data using Python.
- Conduct demonstrations/experiments.
The points accumulated so far are in this Google Sheets: (comming soon)
Your final grade will consist of:
- Homework assignments (30%)
- Project (40%)
- Exam (30%)
- And bonus exercises (~5-7%)
You can collect up to 105/107 points, 90+ will give you A, 80+ B, 70+ C and so on. However to pass the course you are required to at least get 50% of each component (homework, project, and exam).
Course materials from last years are available at Github repository
Also homework exercises for this semester will be put there as we go.