Patents by Inventor Ran LEVI
Ran LEVI 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).
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Publication number: 20260119881Abstract: Distance metrics and clustering in recurrent neural networks. For example, a method includes determining whether topological patterns of activity in a collection of topological patterns occur in a recurrent artificial neural network in response to input of first data into the recurrent artificial neural network, and determining a distance between the first data and either second data or a reference based on the topological patterns of activity that are determined to occur in response to the input of the first data.Type: ApplicationFiled: October 18, 2024Publication date: April 30, 2026Inventors: Henry Markram, Felix Schürmann, Fabien Jonathan Delalondre, Ran Levi, Kathryn Hess Bellwald, John Rahmon
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Patent number: 12412072Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for characterizing activity in a recurrent artificial neural network. In one aspect, a method includes outputting digits from a recurrent artificial neural network, wherein each digit represents whether or not activity within a particular group of nodes in the recurrent artificial neural network comports with a respective pattern of activity.Type: GrantFiled: June 11, 2018Date of Patent: September 9, 2025Assignee: INAIT SAInventors: Henry Markram, Ran Levi, Kathryn Pamela Hess Bellwald
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Publication number: 20240386265Abstract: A method that is implemented by one or more data processing devices can include receiving a training set that includes a plurality of representations of topological structures in patterns of activity in a source neural network and training a neural network using the representations either as an input to the neural network or as a target answer vector. The activity is responsive to an input into the source neural network.Type: ApplicationFiled: March 21, 2024Publication date: November 21, 2024Inventors: Henry Markram, Ran Levi, Kathryn Pamela Hess Bellwald, Felix Schuermann
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Patent number: 12147904Abstract: Distance metrics and clustering in recurrent neural networks. For example, a method includes determining whether topological patterns of activity in a collection of topological patterns occur in a recurrent artificial neural network in response to input of first data into the recurrent artificial neural network, and determining a distance between the first data and either second data or a reference based on the topological patterns of activity that are determined to occur in response to the input of the first data.Type: GrantFiled: February 13, 2023Date of Patent: November 19, 2024Assignee: INAIT SAInventors: Henry Markram, Felix Schürmann, Fabien Jonathan Delalondre, Ran Levi, Kathryn Hess Bellwald, John Rahmon
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Publication number: 20240176985Abstract: In one implementation, a method is implemented by a neural network device and includes inputting a representation of topological structures in patterns of activity in a source neural network, wherein the activity is responsive to an input into the source neural network, processing the representation, and outputting a result of the processing of the representation. The processing is consistent with a training of the neural network to process different such representations of topological structures in patterns of activity in the source neural network.Type: ApplicationFiled: December 4, 2023Publication date: May 30, 2024Inventors: Henry Markram, Ran Levi, Kathryn Pamela Hess Bellwald, Felix Schuermann
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Patent number: 11972343Abstract: A method that is implemented by one or more data processing devices can include receiving a training set that includes a plurality of representations of topological structures in patterns of activity in a source neural network and training a neural network using the representations either as an input to the neural network or as a target answer vector. The activity is responsive to an input into the source neural network.Type: GrantFiled: June 11, 2018Date of Patent: April 30, 2024Assignee: INAIT SAInventors: Henry Markram, Ran Levi, Kathryn Pamela Hess Bellwald, Felix Schuermann
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Patent number: 11893471Abstract: In one implementation, a method is implemented by a neural network device and includes inputting a representation of topological structures in patterns of activity in a source neural network, wherein the activity is responsive to an input into the source neural network, processing the representation, and outputting a result of the processing of the representation. The processing is consistent with a training of the neural network to process different such representations of topological structures in patterns of activity in the source neural network.Type: GrantFiled: June 11, 2018Date of Patent: February 6, 2024Assignee: INAIT SAInventors: Henry Markram, Ran Levi, Kathryn Pamela Hess Bellwald, Felix Schuermann
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Publication number: 20230351196Abstract: Distance metrics and clustering in recurrent neural networks. For example, a method includes determining whether topological patterns of activity in a collection of topological patterns occur in a recurrent artificial neural network in response to input of first data into the recurrent artificial neural network, and determining a distance between the first data and either second data or a reference based on the topological patterns of activity that are determined to occur in response to the input of the first data.Type: ApplicationFiled: February 13, 2023Publication date: November 2, 2023Inventors: Henry MARKRAM, Felix Schurmann, Fabien Jonathan Delalondre, Ran Levi, Kathryn Hess Bellwald, John Rahmon
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Publication number: 20230297808Abstract: In one aspect, a method includes generating a functional subgraph of a network from a structural graph of the network. The structural graph comprises a set of vertices and structural connections between the vertices. Generating the functional subgraph includes identifying a directed functional edge of the functional subgraph based on presence of structural connection and directional communication of information across the same structural connection.Type: ApplicationFiled: March 23, 2023Publication date: September 21, 2023Inventors: Michael Wolfgang Reimann, Max Christian Nolte, Henry Markram, Kathryn Hess Bellwald, Ran Levi
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Patent number: 11663478Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for characterizing activity in a recurrent artificial neural network. In one aspect, a method for identifying decision moments in a recurrent artificial neural network includes determining a complexity of patterns of activity in the recurrent artificial neural network, wherein the activity is responsive to input into the recurrent artificial neural network, determining a timing of activity having a complexity that is distinguishable from other activity that is responsive to the input, and identifying the decision moment based on the timing of the activity that has the distinguishable complexity.Type: GrantFiled: June 11, 2018Date of Patent: May 30, 2023Assignee: INAIT SAInventors: Henry Markram, Ran Levi, Kathryn Pamela Hess Bellwald
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Patent number: 11615285Abstract: In one aspect, a method includes generating a functional subgraph of a network from a structural graph of the network. The structural graph comprises a set of vertices and structural connections between the vertices. Generating the functional subgraph includes identifying a directed functional edge of the functional subgraph based on presence of structural connection and directional communication of information across the same structural connection.Type: GrantFiled: January 8, 2018Date of Patent: March 28, 2023Assignee: Ecole Polytechnique Federale De Lausanne (EPFL)Inventors: Michael Wolfgang Reimann, Max Christian Nolte, Henry Markram, Kathryn Pamela Hess Bellwald, Ran Levi
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Patent number: 11580401Abstract: Distance metrics and clustering in recurrent neural networks. For example, a method includes determining whether topological patterns of activity in a collection of topological patterns occur in a recurrent artificial neural network in response to input of first data into the recurrent artificial neural network, and determining a distance between the first data and either second data or a reference based on the topological patterns of activity that are determined to occur in response to the input of the first data.Type: GrantFiled: December 11, 2019Date of Patent: February 14, 2023Inventors: Henry Markram, Felix Schürmann, Fabien Jonathan Delalondre, Ran Levi, Kathryn Pamela Hess Bellwald, John Rahmon
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Publication number: 20210182681Abstract: Distance metrics and clustering in recurrent neural networks. For example, a method includes determining whether topological patterns of activity in a collection of topological patterns occur in a recurrent artificial neural network in response to input of first data into the recurrent artificial neural network, and determining a distance between the first data and either second data or a reference based on the topological patterns of activity that are determined to occur in response to the input of the first data.Type: ApplicationFiled: December 11, 2019Publication date: June 17, 2021Inventors: Henry Markram, Felix Schürmann, Fabien Jonathan Delalondre, Ran Levi, Kathryn Pamela Hess Bellwald, John Rahmon
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Publication number: 20190377976Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for characterizing activity in a recurrent artificial neural network. In one aspect, a method for identifying decision moments in a recurrent artificial neural network includes determining a complexity of patterns of activity in the recurrent artificial neural network, wherein the activity is responsive to input into the recurrent artificial neural network, determining a timing of activity having a complexity that is distinguishable from other activity that is responsive to the input, and identifying the decision moment based on the timing of the activity that has the distinguishable complexity.Type: ApplicationFiled: June 11, 2018Publication date: December 12, 2019Inventors: Henry Markram, Ran Levi, Kathryn Pamela Hess Bellwald
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Publication number: 20190378008Abstract: A method that is implemented by one or more data processing devices can include receiving a training set that includes a plurality of representations of topological structures in patterns of activity in a source neural network and training a neural network using the representations either as an input to the neural network or as a target answer vector. The activity is responsive to an input into the source neural network.Type: ApplicationFiled: June 11, 2018Publication date: December 12, 2019Inventors: Henry Markram, Ran Levi, Kathryn Pamela Hess Bellwald, Felix Schuermann
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Publication number: 20190378000Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for characterizing activity in a recurrent artificial neural network. In one aspect, a method includes outputting digits from a recurrent artificial neural network, wherein each digit represents whether or not activity within a particular group of nodes in the recurrent artificial neural network comports with a respective pattern of activity.Type: ApplicationFiled: June 11, 2018Publication date: December 12, 2019Inventors: Henry Markram, Ran Levi, Kathryn Pamela Hess Bellwald
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Publication number: 20190378007Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for characterizing activity in a recurrent artificial neural network. In one aspect, a method can include characterizing activity in an artificial neural network. The method is performed by data processing apparatus and can include identifying clique patterns of activity of the artificial neural network. The clique patterns of activity can enclose cavities.Type: ApplicationFiled: June 11, 2018Publication date: December 12, 2019Inventors: Henry Markram, Ran Levi, Kathryn Pamela Hess Bellwald
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Publication number: 20190377999Abstract: In one implementation, a method is implemented by a neural network device and includes inputting a representation of topological structures in patterns of activity in a source neural network, wherein the activity is responsive to an input into the source neural network, processing the representation, and outputting a result of the processing of the representation. The processing is consistent with a training of the neural network to process different such representations of topological structures in patterns of activity in the source neural network.Type: ApplicationFiled: June 11, 2018Publication date: December 12, 2019Inventors: Henry Markram, Ran Levi, Kathryn Pamela Hess Bellwald, Felix Schuermann
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Publication number: 20180197069Abstract: In one aspect, a method includes generating a functional subgraph of a network from a structural graph of the network. The structural graph comprises a set of vertices and structural connections between the vertices. Generating the functional subgraph includes identifying a directed functional edge of the functional subgraph based on presence of structural connection and directional communication of information across the same structural connection.Type: ApplicationFiled: January 8, 2018Publication date: July 12, 2018Inventors: Michael Wolfgang Reimann, Max Christian Nolte, Henry Markram, Kathryn Pamela Hess Bellwald, Ran Levi
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Publication number: 20160034835Abstract: According to an example, a history of usage and a history of utilization of resources may be accessed. A usage regression model to predict a cloud resource usage and a utilization regression model to predict a cloud resource utilization at a future time period may be developed. The usage regression model and the utilization regression model may be used to manage cloud resource usage costs.Type: ApplicationFiled: July 31, 2014Publication date: February 4, 2016Inventors: Efrat Egozi LEVI, Ira COHEN, Ran LEVI, Sigalit SADE