Advanced search
User account
Login
Register
Find models by
Model name
First author
Each author
Find models for
Brain region
Concept
Find models of
Realistic Microcircuits
Connectionist Networks
Connection-set Algebra (CSA) for the representation of connectivity in NN models (Djurfeldt 2012)
 
Download zip file
Help downloading and running models
Model Information
Model File
Accession:
144455
"The connection-set algebra (CSA) is a novel and general formalism for the description of connectivity in neuronal network models, from small-scale to large-scale structure. ... The expressiveness of CSA makes prototyping of network structure easy. A C++ version of the algebra has been implemented and used in a large-scale neuronal network simulation (Djurfeldt et al., IBM J Res Dev 52(1/2):31–42, 2008b) and an implementation in Python has been publicly released."
Reference:
1 .
Djurfeldt M (2012) The connection-set algebra--a novel formalism for the representation of connectivity structure in neuronal network models.
Neuroinformatics
10
:287-304
[
PubMed
]
2 .
Djurfeldt M, Lundqvist M, Johansson C, Rehn M, Ekeberg O, Lansner A (2008b) Brain-scale simulation of the neocortex on the Blue Gene/L supercomputer
IBM Journal of Research and Development
52(1/2)
:31-42
Citations
Citation Browser
Model Information
(Click on a link to find other models with that property)
Model Type:
Connectionist Network;
Brain Region(s)/Organism:
Cell Type(s):
Channel(s):
Gap Junctions:
Receptor(s):
Gene(s):
Transmitter(s):
Simulation Environment:
C or C++ program;
Python;
Model Concept(s):
Methods;
Implementer(s):
Djurfeldt M;
/
csa_weblink
index.html
csa.zip
File not selected
<- Select file from this column.