Debian Science Project
Summary
Modeling of neural systems
신경 시스템 모델링을 위한 Debian 과학 패키지

이 메타패키지는 여러 수준 (단일 뉴런에서 복잡한 네트워크까지)의 실제 신경 시스템 모델링에 관심이 있는 과학자들에게 유용할 수 있는 Debian 패키지를 설치할 것 입니다.

패키지 선택은 시뮬레이션 기법 적용을 목표로 합니다. 방법 개발자는 신경과학 연구에 유용할 수 있는 다양한 추가 소프트웨어에 대해 과학 통계, 과학 이미지 분석, 과학 수치 계산, 의학 영상 및 의학 영상 개발 메타패키지를 참조합니다.

Description

For a better overview of the project's availability as a Debian package, each head row has a color code according to this scheme:

If you discover a project which looks like a good candidate for Debian Science to you, or if you have prepared an unofficial Debian package, please do not hesitate to send a description of that project to the Debian Science mailing list

Links to other tasks

Debian Science Modeling of neural systems packages

Official Debian packages with high relevance

cnrun
??? missing short description for package cnrun :-(
Maintainer: Andrei Zavada
Versions of package cnrun
ReleaseVersionArchitectures
jessie1.1.14-1amd64,armel,armhf,i386
Popcon: 0 users (0 upd.)*
Versions and Archs
License: DFSG free
Git
Please cite: A. Zavada, C.L. Buckley, D. Martinez, J-P. Rospars and T. Nowotny: Competition-based model of pheromone component ratio detection in the moth. (PubMed,eprint) PLoS ONE 6(2):e16308 (2011)
neuron
Simulation environment for computational models of neurons
Versions of package neuron
ReleaseVersionArchitectures
bullseye7.6.3-1amd64,arm64,i386,ppc64el
buster7.6.3-1amd64,arm64,i386
bookworm8.2.2-4amd64,arm64,armel,armhf,i386,ppc64el,s390x
sid8.2.2-7amd64,arm64,armel,armhf,i386,ppc64el,riscv64,s390x
trixie8.2.2-7amd64,arm64,armel,armhf,i386,ppc64el,riscv64,s390x
upstream9.0.dev
Popcon: 16 users (2 upd.)*
Newer upstream!
License: DFSG free
Git

NEURON is a simulation environment for modeling individual neurons and networks of neurons. It provides tools for conveniently building, managing, and using models in a way that is numerically sound and computationally efficient. It is particularly well-suited to problems that are closely linked to experimental data, especially those that involve cells with complex anatomical and biophysical properties.

NEURON offers

  • "natural syntax", which allows one to specify model properties in familiar idioms
  • efficient and painless spatial and temporal discretization
  • several different, user-selectable numerical integration methods
  • convenient user interface (interpreters + GUI)
  • user-extendable library of biophysical mechanisms
python3-brian
simulator for spiking neural networks
Versions of package python3-brian
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License: DFSG free
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Brian is a clock-driven simulator for spiking neural networks. It is designed with an emphasis on flexibility and extensibility, for rapid development and refinement of neural models. Neuron models are specified by sets of user-specified differential equations, threshold conditions and reset conditions (given as strings). The focus is primarily on networks of single compartment neuron models (e.g. leaky integrate-and-fire or Hodgkin-Huxley type neurons). Features include:

  • a system for specifying quantities with physical dimensions
  • exact numerical integration for linear differential equations
  • Euler, Runge-Kutta and exponential Euler integration for nonlinear differential equations
  • synaptic connections with delays
  • short-term and long-term plasticity (spike-timing dependent plasticity)
  • a library of standard model components, including integrate-and-fire equations, synapses and ionic currents
  • a toolbox for automatically fitting spiking neuron models to electrophysiological recordings
Please cite: D.F. Goodman and R. Brette: Brian: A Simulator for Spiking Neural Networks in Python. (PubMed,eprint) Frontiers in Neuroinformatics 2(5) (2008)

Official Debian packages with lower relevance

python3-pynn
simulator-independent specification of neuronal network models
Versions of package python3-pynn
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bullseye0.9.6-1all
bookworm0.10.1-2all
sid0.10.1-3all
upstream0.12.3
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Newer upstream!
License: DFSG free
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PyNN allows for coding a model once and run it without modification on any simulator that PyNN supports (currently NEURON, NEST, PCSIM and Brian). PyNN translates standard cell-model names and parameter names into simulator-specific names.

xppaut
Phase Plane Plus Auto: 다양한 종류의 방정식 해결
Versions of package xppaut
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trixie6.11b+1.dfsg-1.1amd64,arm64,armel,armhf,i386,mips64el,ppc64el,riscv64,s390x
sid6.11b+1.dfsg-1.1amd64,arm64,armel,armhf,i386,mips64el,ppc64el,riscv64,s390x
bookworm6.11b+1.dfsg-1.1amd64,arm64,armel,armhf,i386,mips64el,mipsel,ppc64el,s390x
bullseye6.11b+1.dfsg-1.1amd64,arm64,armel,armhf,i386,mips64el,mipsel,ppc64el,s390x
buster6.11b+1.dfsg-1amd64,arm64,armhf,i386
stretch6.11b+1.dfsg-1amd64,arm64,armel,armhf,i386,mips,mips64el,mipsel,ppc64el,s390x
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License: DFSG free
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XPPAUT는 아래 방정식들을 해결하기 위한 도구입니다

  • 미분 방정식,
  • 차이 방정식,
  • 지연 방정식,
  • 함수 방정식,
  • 경계값 문제,
  • 확률 방정식.

이 코드는 여러가지 유용한 알고리즘을 조합하여 이식성이 매우 뛰어납니다. 모든 그래픽과 인터페이스는 Xlib으로 완전히 재작성되었으며 이는 다소 특이하고 원시적인 위젯 인터페이스를 설명합니다.

Screenshots of package xppaut

Packaging has started and developers might try the packaging code in VCS

nest
A simulator for networks of spiking neurons
Responsible: Yury V. Zaytsev
License: non-FOSS
Git

NEST is a simulation system for large networks of biologically realistic point-neurons and neurons with a small number of electrical compartments.

Please register by following this link if you are using nest.
Please cite: Gewaltig M-O and Diesmann M: NEST (Neural Simulation Tool) (2007)
Remark of Debian Science team: Mentioned packaging is not providing NEST itself but rather only packaging materials so you could build package yourself.

No known packages available but some record of interest (WNPP bug)

pcsim - wnpp
simulator of heterogeneous networks of neurons and synapses
License: GPL-3+
Debian package not available
Language: C, Python

PCSIM is a tool for simulating heterogeneous networks composed of different model neurons and synapses. This simulator is written in C++ with a primary interface to the programming language Python. It is intended to simulate networks containing up to millions of neurons and on the order of billions of synapses. This is achieved by distributing the network over different nodes of a computing cluster by using MPI.

Please cite: Pecevski D, Natschläger T and Schuch K: PCSIM: a parallel simulation environment for neural circuits fully integrated with Python. (2009)
Remark of Debian Science team: last release is more than 1 year ago, but there is development in newbuild branch

No known packages available

invt
iLab Neuromorphic Vision C++ Toolkit
License: GPL-2+
Debian package not available
Language: C++ + Perl, Tcl, Matlab

The iLab Neuromorphic Vision C++ Toolkit (iNVT, pronounced ``invent'') is a comprehensive set of C++ classes for the development of neuromorphic models of vision. Neuromorphic models are computational neuroscience algorithms whose architecture and function is closely inspired from biological brains. The iLab Neuromorphic Vision C++ Toolkit comprises not only base classes for images, neurons, and brain areas, but also fully-developed models such as our model of bottom-up visual attention and of Bayesian surprise.

Features at a glance:

  • Low-level neural network simulation classes.
  • High-level neuromorphic classes.
  • Neuromorphic models of visual attention.
  • Hardware interfacing
  • Parallel processing classes for the simulation of complex models.
  • Neuromorphic modeling environment.
Please register by following this link if you are using invt.
moose
multiscale simulation environment for neuroscience
License: LGPL
Debian package not available
Language: C++, Python

MOOSE is the Multiscale Object-Oriented Simulation Environment. It is the base and numerical core for large, detailed simulations including Computational Neuroscience and Systems Biology. MOOSE spans the range from single molecules to sub-cellular networks, from single cells to neuronal networks, and to still larger systems. It is backwards-compatible with GENESIS, and forward compatible with Python and XML-based model definition standards like SBML and MorphML. MOOSE is coordinating with the GENESIS-3 project towards the goals of developing educational resources for modeling.

*Popularitycontest results: number of people who use this package regularly (number of people who upgraded this package recently) out of 246355