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Diary/2019-3-12

R-WoNC(2)

二日目

Requirements on neuromorphic computing from brain-scale neuronal networks

Spiking Neural Network imulation on SpiNNaker

Biology Suggests New Forms of Deep Learning in Reccurent Networks of Spiking Neurons
  • topics
    • computational units that boost temporal processing capabilities
    • powerfull
  • backpropagation through time(BPTT) by e-prop
    • cur. replace by feed forward connections
    • proposed. e-prop, there is no transmission of error signals backwards in time or space
  • cf. Long short-term memory and learning-to-learn in networks of spiking neurons - https://arxiv.org/abs/1803.09574
  • cf. Biologically inspired alternatives to backpropagation through time for learning in recurrent neural nets - https://arxiv.org/abs/1901.09049

Large-scale simulation of cortico-thalamo-cerebellar cicuits toward whole brain simulations

post-ke exploratory challenge 4

  • スパコンでのspiking neural network modelは,50年で1 neuronから7 billion neurons まで進化してきた

Nonlinear Neural Dynamics and its Electronic and Optical Implementation

Physical models of biological computation
  • topics
    • real-time analog neural network emulator
    • systems based on novel devices/materials
  • motivations for keeping up the tradition
    • massively parallel collections of non-linear dynamical elements
    • analog computation, digital asynchronous communication
    • memory and computation are co-localized
  • The FeFET neuron, H.Mulaosmanovic et al., Nanoscale 2018 - Mimicking biological neurons with a nanoscale ferroelectric transistor https://pubs.rsc.org/en/content/articlelanding/2018/nr/c8nr07135g#!divAbstract
  • Bilogical evidences - cf. https://www.ncbi.nlm.nih.gov/pubmed/3340148
  • New materials: challenges and opportunity
  • Learning and recall of orthogonal patterns

Resistive Analog Neuromorphic Devices for Edge AI Computing

Panel