Neuroinformatics

BEAM33NIN
Computer Science and ICT, Data, AI

About this course

The Neuroinformatics Course concentrates on modelling of neurons, stochastic learning on cellular level, information coding and decoding in brain and single unit processing. Examples from clinical practices are provided throughout the course. The labs focus on signal neuron analysis from human and animal brain.

Learning outcomes

The course deals with data and application of computational models and analytical tools in the field of neurosciences.

Course requirements

Prerequisites: Signal Theory, Statistics and Reliability in Medicine, Pattern Recognition and Machine Learning.

Resources

  • [1] Christof Koch, Biophysics of Computation-Information Processing in Single Neurons, Oxford University Press, 1999.[2] Thomas P. Trappenberg, Fundamentals of Computational Neuroscience, Oxford University Press, 2002.
  • [3] Fred Rieke,Spikes Exploring the Neural Code, MIT Press, 1999.
  • [4] Peter Dayan, Theoretical Neuroscience, MIT Press, 2001.
  • [5] Wulfram Gerstner, Spiking Neuron Models, Cambridge University Press, 2002.

Activities

Lectures, lab-work, homeworks

Additional information

course
6 ECTS
  • Level
    Master
  • Contact hours per week
    4
  • Instructors
    D´Angelo Giulia Ph.D., Mgr. Štěpánová Karla Ph.D., Mgr. Antolík Ján Ph.D., doc. Ing. Novák Daniel Ph.D., Ing. Bakštein Eduard Ph.D.
  • Mode of delivery
    Hybrid
If anything remains unclear, please check the FAQ of CTU (Czech Republic).

Starting dates

  • 16 Feb 2026

    ends 20 Sept 2026

    LanguageEnglish
    Term *Summer 2025/2026
    Enrolment period closed
These offerings are valid for students of L'X (France)