IP-based methodology for analog design flow: Application on neuromorphic engineering

@article{Levi2008IPbasedMF,
  title={IP-based methodology for analog design flow: Application on neuromorphic engineering},
  author={T. Levi and N. Lewis and J. Tomas and P. Fouillat},
  journal={2008 Joint 6th International IEEE Northeast Workshop on Circuits and Systems and TAISA Conference},
  year={2008},
  pages={343-346}
}
  • T. Levi, N. Lewis, +1 author P. Fouillat
  • Published 2008
  • Computer Science
  • 2008 Joint 6th International IEEE Northeast Workshop on Circuits and Systems and TAISA Conference
  • Analog and Mixed Signal design flow has to be improved. In a specific application, neuromorphic engineering, we propose a definition of the analog IP (Intellectual Property) content and the structure of an IP-based library. The case study consists in the neuron-level integration of a complete system that emulates spiking neural networks. A reuse methodology based on the IP concept is developed and we show how it can be used to accelerate the design cycle of the next ASIC generation. 
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