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(Reference retrieved automatically from Web of Science through information on FAPESP grant and its corresponding number as mentioned in the publication by the authors.)

Code Generation in Computational Neuroscience: A Review of Tools and Techniques

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Author(s):
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Blundell, Inga [1] ; Brette, Romain [2] ; Cleland, Thomas A. [3] ; Close, Thomas G. [4] ; Coca, Daniel [5] ; Davison, Andrew P. [6] ; Diaz-Pier, Sandra [7] ; Musoles, Carlos Fernandez [5] ; Gleeson, Padraig [8] ; Goodman, Dan F. M. [9] ; Hines, Michael [10] ; Hopkins, Michael W. [11] ; Kumbhar, Pramod [12] ; Lester, David R. [11] ; Marin, Boris [8, 13] ; Morrison, Abigail [7, 1, 14] ; Mueller, Eric [15] ; Nowotny, Thomas [16] ; Peyser, Alexander [7] ; Plotnikov, Dimitri [7, 17] ; Richmond, Paul [18] ; Rowley, Andrew [11] ; Rumpe, Bernhard [17] ; Stimberg, Marcel [2] ; Stokes, Alan B. [11] ; Tomkins, Adam [5] ; Trensch, Guido [7] ; Woodman, Marmaduke [19] ; Eppler, Jochen Martin [7]
Total Authors: 29
Affiliation:
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[1] Forschungszentrum Julich, Inst Neurosci & Med INM 6, Inst Adv Simulat IAS 6, JARA BRAIN Inst 1, Julich - Germany
[2] Sorbonne Univ, CNRS, Inst Vis, INSERM, Paris - France
[3] Cornell Univ, Dept Psychol, Ithaca, NY 14853 - USA
[4] Monash Univ, Monash Biomed Imaging, Melbourne, Vic - Australia
[5] Univ Sheffield, Dept Automat Control & Syst Engn, Sheffield, S Yorkshire - England
[6] CNRS, Unite Neurosci Informat & Complexite, FRE 3693, Gif Sur Yvette - France
[7] Forschungszentrum Julich, Julich Aachen Res Alliance, Julich Supercomp Ctr, Inst Adv Simulat, Simulat Lab Neurosci, Julich - Germany
[8] UCL, Dept Neurosci Physiol & Pharmacol, London - England
[9] Imperial Coll London, Dept Elect & Elect Engn, London - England
[10] Yale Univ, Sch Med, Dept Neurobiol, New Haven, CT - USA
[11] Univ Manchester, Sch Comp Sci, Adv Processor Technol Grp, Manchester, Lancs - England
[12] EPFL, Blue Brain Project, Campus Biotech, Geneva - Switzerland
[13] Univ Fed ABC, Ctr Matemat Comp & Cognicao, Sao Bernardo Do Campo - Brazil
[14] Ruhr Univ Bochum, Inst Cognit Neurosci, Fac Psychol, Bochum - Germany
[15] Heidelberg Univ, Kirchhoff Inst Phys, Heidelberg - Germany
[16] Univ Sussex, Sch Engn & Informat, Ctr Computat Neurosci & Robot, Brighton, E Sussex - England
[17] Rhein Westfal TH Aachen, Software Engn, Julich Aachen Res Alliance, Aachen - Germany
[18] Univ Sheffield, Dept Comp Sci, Sheffield, S Yorkshire - England
[19] Aix Marseille Univ, Inst Neurosci Syst, Marseille - France
Total Affiliations: 19
Document type: Review article
Source: FRONTIERS IN NEUROINFORMATICS; v. 12, NOV 5 2018.
Web of Science Citations: 4
Abstract

Advances in experimental techniques and computational power allowing researchers to gather anatomical and electrophysiological data at unprecedented levels of detail have fostered the development of increasingly complex models in computational neuroscience. Large-scale, biophysically detailed cell models pose a particular set of computational challenges, and this has led to the development of a number of domain-specific simulators. At the other level of detail, the ever growing variety of point neuron models increases the implementation barrier even for those based on the relatively simple integrate-and-fire neuron model. Independently of the model complexity, all modeling methods crucially depend on an efficient and accurate transformation of mathematical model descriptions into efficiently executable code. Neuroscientists usually publish model descriptions in terms of the mathematical equations underlying them. However, actually simulating them requires they be translated into code. This can cause problems because errors may be introduced if this process is carried out by hand, and code written by neuroscientists may not be very computationally efficient. Furthermore, the translated code might be generated for different hardware platforms, operating system variants or even written in different languages and thus cannot easily be combined or even compared. Two main approaches to addressing this issues have been followed. The first is to limit users to a fixed set of optimized models, which limits flexibility. The second is to allow model definitions in a high level interpreted language, although this may limit performance. Recently, a third approach has become increasingly popular: using code generation to automatically translate high level descriptions into efficient low level code to combine the best of previous approaches. This approach also greatly enriches efforts to standardize simulator-independent model description languages. In the past few years, a number of code generation pipelines have been developed in the computational neuroscience community, which differ considerably in aim, scope and functionality. This article provides an overview of existing pipelines currently used within the community and contrasts their capabilities and the technologies and concepts behind them. (AU)

FAPESP's process: 17/04748-0 - Neuroinformatics tools for declarative multiscale modeling via automatic generation of implementations, applied to large-scale models of the vertebrate retina
Grantee:Bóris Marin
Support Opportunities: Scholarships in Brazil - Post-Doctoral