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Advanced Neural Data Analyis

Techniques to record neuronal data from populations of neurons are rapidly improving. Simultaneous recordings from hundreds of channels are possible while animals perform complex behavioral tasks. The analysis of such massive and complex data becomes increasingly challenging. This advanced course aims at providing deeper training in state-of-the-art analysis approaches in systems neuroscience.

g-nodeLogoThe G-Node Advanced Neural Data Analysis Course (ANDA) is running annually. Due to the COVID19 pandemic, the course will be postponed to a later date.

These lectures were recorded by the INCF (International Neuroinformatics Coordinating Facility) during the Workshop "Advanced Neural Data Analysis Course" (ANDA) in 2019. Course Language is English.

 

ANDA3

Experimental spike trains.

Lecturer: Martin Nawrot, University of Cologne

 

ANDA2

Firing rate estimation and directional tuning data set.

Lecturer: Martin Nawrot, University of Cologne

ANDA6 Cortial variability dynamics experimental observations and mechanistic models.

Lecturer: Martin Nawrot, University of Cologne
ANDA4

Correlation analysis of parallel spike trains.

Lecturer: Sonja Grün, Forschungszentrum Jülich, RWTH Aachen

ANDA5

Correlation analysis of massively parallel spike trains

Lecturer: Sonja Grün, Forschungszentrum Jülich, RWTH Aachen

ANDA7

Extended 'Unitary Events' in MEG recordings.

Lecturer: Moshe Abeles, The Hebrew University, Jerusalem. Israel.

ANDA9

Dimensionality reduction PCA and more Part 1

Lecturer: Christian Machens, Champalimaud Centre for the Unknown, Portugal

ANDA10

Dimensionality reduction PCA and more Part 2

Lecturer: Christian Machens, Champalimaud Centre for the Unknown, Portugal

ANDA8

Reproducible analysis of activity data - Open software for sustainable
research.

Lecturer: Michael Denker, Forschungszentrum Jülich

ANDA1

Keeping track of your data - Methods for comprehensive research data
management.

Lecturer: Thomas Wachtler, LMU München

 

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Organizers

  • Sonja Grün, Forschungszentrum Jülich, RWTH Aachen, Germany
  • Martin Nawrot, University of Cologne, Germany
  • Thomas Wachtler, G-Node, Ludwig-Maximillians-Universität München, Germany

ANDA Website