Patents by Inventor Wulfram Gerstner

Wulfram Gerstner has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11983620
    Abstract: The simplification of neural network models is described. For example, a method for simplifying a neural network model includes providing the neural network model to be simplified, defining a first temporal filter for the conveyance of input from a neuron to an other spatially-extended neuron along the arborized projection, defining a second temporal filter for the conveyance of input from yet another neuron to the spatially-extended neuron along the arborized projection, replacing, in the neural network model, the first, spatially-extended neuron with a first, spatially-constrained neuron and the arborized projection with a first connection extending between the first, spatially-constrained neuron and the second neuron, wherein the first connection filters input from the second neuron in accordance with the first temporal filter and a second connection extending between the first spatially-constrained neuron and the third neuron.
    Type: Grant
    Filed: April 8, 2022
    Date of Patent: May 14, 2024
    Assignee: Ecole Polytechnique Federale De Lausanne (EPFL)
    Inventors: Henry Markram, Wulfram Gerstner, Marc-Oliver Gewaltig, Christian Rössert, Eilif Benjamin Muller, Christian Pozzorini, Idan Segev, James Gonzalo King, Csaba Erö, Willem Wybo
  • Publication number: 20220230052
    Abstract: The simplification of neural network models is described. For example, a method for simplifying a neural network model includes providing the neural network model to be simplified, defining a first temporal filter for the conveyance of input from a neuron to an other spatially-extended neuron along the arborized projection, defining a second temporal filter for the conveyance of input from yet another neuron to the spatially-extended neuron along the arborized projection, replacing, in the neural network model, the first, spatially-extended neuron with a first, spatially-constrained neuron and the arborized projection with a first connection extending between the first, spatially-constrained neuron and the second neuron, wherein the first connection filters input from the second neuron in accordance with the first temporal filter and a second connection extending between the first spatially-constrained neuron and the third neuron.
    Type: Application
    Filed: April 8, 2022
    Publication date: July 21, 2022
    Inventors: Henry Markram, Wulfram Gerstner, Marc-Oliver Gewaltig, Christian Rössert, Eilif Benjamin Muller, Christian Pozzorini, Idan Segev, James Gonzalo King, Csaba Erö, Willem Wybo
  • Patent number: 11301750
    Abstract: The simplification of neural network models is described. For example, a method for simplifying a neural network model includes providing the neural network model to be simplified, defining a first temporal filter for the conveyance of input from a neuron to an other spatially-extended neuron along the arborized projection, defining a second temporal filter for the conveyance of input from yet another neuron to the spatially-extended neuron along the arborized projection, replacing, in the neural network model, the first, spatially-extended neuron with a first, spatially-constrained neuron and the arborized projection with a first connection extending between the first, spatially-constrained neuron and the second neuron, wherein the first connection filters input from the second neuron in accordance with the first temporal filter and a second connection extending between the first spatially-constrained neuron and the third neuron.
    Type: Grant
    Filed: April 2, 2018
    Date of Patent: April 12, 2022
    Assignee: Ecole Polytechnique Federale De Lausanne (EPFL)
    Inventors: Henry Markram, Wulfram Gerstner, Marc-Oliver Gewaltig, Christian Rössert, Eilif Benjamin Muller, Christian Pozzorini, Idan Segev, James Gonzalo King, Csaba Erö, Willem Wybo
  • Publication number: 20180285716
    Abstract: The simplification of neural network models is described. For example, a method for simplifying a neural network model includes providing the neural network model to be simplified, defining a first temporal filter for the conveyance of input from a neuron to an other spatially-extended neuron along the arborized projection, defining a second temporal filter for the conveyance of input from yet another neuron to the spatially-extended neuron along the arborized projection, replacing, in the neural network model, the first, spatially-extended neuron with a first, spatially-constrained neuron and the arborized projection with a first connection extending between the first, spatially-constrained neuron and the second neuron, wherein the first connection filters input from the second neuron in accordance with the first temporal filter and a second connection extending between the first spatially-constrained neuron and the third neuron.
    Type: Application
    Filed: April 2, 2018
    Publication date: October 4, 2018
    Inventors: Henry Markram, Wulfram Gerstner, Marc-Oliver Gewaltig, Christian Rössert, Eilif Benjamin Muller, Christian Pozzorini, Idan Segev, James Gonzalo King, Csaba Erö, Willem Wybo