The Operating System of the Neuromorphic BrainScaleS-1 System
March 30, 2020 ยท Declared Dead ยท ๐ Neurocomputing
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Authors
Eric Mรผller, Sebastian Schmitt, Christian Mauch, Sebastian Billaudelle, Andreas Grรผbl, Maurice Gรผttler, Dan Husmann, Joscha Ilmberger, Sebastian Jeltsch, Jakob Kaiser, Johann Klรคhn, Mitja Kleider, Christoph Koke, Josรฉ Montes, Paul Mรผller, Johannes Partzsch, Felix Passenberg, Hartmut Schmidt, Bernhard Vogginger, Jonas Weidner, Christian Mayr, Johannes Schemmel
arXiv ID
2003.13749
Category
cs.NE: Neural & Evolutionary
Citations
28
Venue
Neurocomputing
Last Checked
3 months ago
Abstract
BrainScaleS-1 is a wafer-scale mixed-signal accelerated neuromorphic system targeted for research in the fields of computational neuroscience and beyond-von-Neumann computing. The BrainScaleS Operating System (BrainScaleS OS) is a software stack giving users the possibility to emulate networks described in the high-level network description language PyNN with minimal knowledge of the system. At the same time, expert usage is facilitated by allowing to hook into the system at any depth of the stack. We present operation and development methodologies implemented for the BrainScaleS-1 neuromorphic architecture and walk through the individual components of BrainScaleS OS constituting the software stack for BrainScaleS-1 platform operation.
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