Literature DB >> 21618053

A comprehensive workflow for general-purpose neural modeling with highly configurable neuromorphic hardware systems.

Daniel Brüderle1, Mihai A Petrovici, Bernhard Vogginger, Matthias Ehrlich, Thomas Pfeil, Sebastian Millner, Andreas Grübl, Karsten Wendt, Eric Müller, Marc-Olivier Schwartz, Dan Husmann de Oliveira, Sebastian Jeltsch, Johannes Fieres, Moritz Schilling, Paul Müller, Oliver Breitwieser, Venelin Petkov, Lyle Muller, Andrew P Davison, Pradeep Krishnamurthy, Jens Kremkow, Mikael Lundqvist, Eilif Muller, Johannes Partzsch, Stefan Scholze, Lukas Zühl, Christian Mayr, Alain Destexhe, Markus Diesmann, Tobias C Potjans, Anders Lansner, René Schüffny, Johannes Schemmel, Karlheinz Meier.   

Abstract

In this article, we present a methodological framework that meets novel requirements emerging from upcoming types of accelerated and highly configurable neuromorphic hardware systems. We describe in detail a device with 45 million programmable and dynamic synapses that is currently under development, and we sketch the conceptual challenges that arise from taking this platform into operation. More specifically, we aim at the establishment of this neuromorphic system as a flexible and neuroscientifically valuable modeling tool that can be used by non-hardware experts. We consider various functional aspects to be crucial for this purpose, and we introduce a consistent workflow with detailed descriptions of all involved modules that implement the suggested steps: The integration of the hardware interface into the simulator-independent model description language PyNN; a fully automated translation between the PyNN domain and appropriate hardware configurations; an executable specification of the future neuromorphic system that can be seamlessly integrated into this biology-to-hardware mapping process as a test bench for all software layers and possible hardware design modifications; an evaluation scheme that deploys models from a dedicated benchmark library, compares the results generated by virtual or prototype hardware devices with reference software simulations and analyzes the differences. The integration of these components into one hardware-software workflow provides an ecosystem for ongoing preparative studies that support the hardware design process and represents the basis for the maturity of the model-to-hardware mapping software. The functionality and flexibility of the latter is proven with a variety of experimental results.

Mesh:

Year:  2011        PMID: 21618053     DOI: 10.1007/s00422-011-0435-9

Source DB:  PubMed          Journal:  Biol Cybern        ISSN: 0340-1200            Impact factor:   2.086


  25 in total

1.  Motion-based prediction is sufficient to solve the aperture problem.

Authors:  Laurent U Perrinet; Guillaume S Masson
Journal:  Neural Comput       Date:  2012-06-26       Impact factor: 2.026

2.  Benchmarking neuromorphic systems with Nengo.

Authors:  Trevor Bekolay; Terrence C Stewart; Chris Eliasmith
Journal:  Front Neurosci       Date:  2015-10-19       Impact factor: 4.677

3.  A neuromorphic network for generic multivariate data classification.

Authors:  Michael Schmuker; Thomas Pfeil; Martin Paul Nawrot
Journal:  Proc Natl Acad Sci U S A       Date:  2014-01-27       Impact factor: 11.205

4.  Parameter estimation of a spiking silicon neuron.

Authors:  Alexander Russell; Kevin Mazurek; Stefan Mihalaş; Ernst Niebur; Ralph Etienne-Cummings
Journal:  IEEE Trans Biomed Circuits Syst       Date:  2012-04       Impact factor: 3.833

5.  A scalable neuristor built with Mott memristors.

Authors:  Matthew D Pickett; Gilberto Medeiros-Ribeiro; R Stanley Williams
Journal:  Nat Mater       Date:  2012-12-16       Impact factor: 43.841

6.  Scalability of Asynchronous Networks Is Limited by One-to-One Mapping between Effective Connectivity and Correlations.

Authors:  Sacha Jennifer van Albada; Moritz Helias; Markus Diesmann
Journal:  PLoS Comput Biol       Date:  2015-09-01       Impact factor: 4.475

7.  Characterization and compensation of network-level anomalies in mixed-signal neuromorphic modeling platforms.

Authors:  Mihai A Petrovici; Bernhard Vogginger; Paul Müller; Oliver Breitwieser; Mikael Lundqvist; Lyle Muller; Matthias Ehrlich; Alain Destexhe; Anders Lansner; René Schüffny; Johannes Schemmel; Karlheinz Meier
Journal:  PLoS One       Date:  2014-10-10       Impact factor: 3.240

8.  Spike-Based Bayesian-Hebbian Learning of Temporal Sequences.

Authors:  Philip J Tully; Henrik Lindén; Matthias H Hennig; Anders Lansner
Journal:  PLoS Comput Biol       Date:  2016-05-23       Impact factor: 4.475

9.  Anisotropic connectivity implements motion-based prediction in a spiking neural network.

Authors:  Bernhard A Kaplan; Anders Lansner; Guillaume S Masson; Laurent U Perrinet
Journal:  Front Comput Neurosci       Date:  2013-09-17       Impact factor: 2.380

10.  Six networks on a universal neuromorphic computing substrate.

Authors:  Thomas Pfeil; Andreas Grübl; Sebastian Jeltsch; Eric Müller; Paul Müller; Mihai A Petrovici; Michael Schmuker; Daniel Brüderle; Johannes Schemmel; Karlheinz Meier
Journal:  Front Neurosci       Date:  2013-02-18       Impact factor: 4.677

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.