Patents by Inventor Alexandre Honoré
Alexandre Honoré 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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Patent number: 11757991Abstract: Methods are provided for synchronizing task execution and/or data collection on multiple network devices. The methods involve obtaining a command to be executed on a plurality of target network devices and splitting the command into a plurality of single device execution tasks. Each single device execution task is for a respective network device of the plurality of target network devices. The methods further involve providing each of the plurality of single device execution tasks, via a command line interface or an application programming interface, to a respective one of the plurality of target network devices. The plurality of single device execution tasks being provided within a bounded time interval.Type: GrantFiled: October 25, 2021Date of Patent: September 12, 2023Assignee: CISCO TECHNOLOGY, INC.Inventors: Frédéric René Philippe Detienne, Piotr Jerzy Kupisiewicz, Alexandre Honoré, Jonathan Maria Jan Slenders
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Publication number: 20230027999Abstract: Methods are provided for synchronizing task execution and/or data collection on multiple network devices. The methods involve obtaining a command to be executed on a plurality of target network devices and splitting the command into a plurality of single device execution tasks. Each single device execution task is for a respective network device of the plurality of target network devices. The methods further involve providing each of the plurality of single device execution tasks, via a command line interface or an application programming interface, to a respective one of the plurality of target network devices. The plurality of single device execution tasks being provided within a bounded time interval.Type: ApplicationFiled: October 25, 2021Publication date: January 26, 2023Inventors: Frédéric René Philippe Detienne, Piotr Jerzy Kupisiewicz, Alexandre Honoré, Jonathan Maria Jan Slenders
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Patent number: 11240259Abstract: In one embodiment, a networking device at an edge of a network generates a first set of feature vectors using information regarding one or more characteristics of host devices in the network. The networking device forms the host devices into device clusters dynamically based on the first set of feature vectors. The networking device generates a second set of feature vectors using information regarding traffic associated with the device clusters. The networking device models interactions between the device clusters using a plurality of anomaly detection models that are based on the second set of feature vectors.Type: GrantFiled: July 11, 2019Date of Patent: February 1, 2022Assignee: Cisco Technology, Inc.Inventors: Jean-Philippe Vasseur, Sébastien Gay, Grégory Mermoud, Pierre-André Savalle, Alexandre Honoré, Fabien Flacher
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Patent number: 11212079Abstract: In one embodiment, a network assurance service maintains a first set of telemetry data from the network anonymized using a first key regarding a plurality of network entities in a monitored network. The service receives a key rotation notification indicative of a key changeover from the first key to a second key for anonymization of a second set of telemetry data from the network. The service forms, during a key rotation time period associated with the key changeover, a mapped dataset by converting anonymized tokens in the second set of telemetry data into anonymized tokens in the first set of telemetry data. The service augments, during the key rotation time period, the first set of telemetry data with the mapped dataset. The service assesses, during the time period, performance of the network by applying a machine learning-based model to the first set of telemetry data augmented with the mapped dataset.Type: GrantFiled: November 12, 2018Date of Patent: December 28, 2021Assignee: Cisco Technology, Inc.Inventors: Pierre-André Savalle, Jean-Philippe Vasseur, Alexandre Honoré, Grégory Mermoud
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Publication number: 20200153616Abstract: In one embodiment, a network assurance service maintains a first set of telemetry data from the network anonymized using a first key regarding a plurality of network entities in a monitored network. The service receives a key rotation notification indicative of a key changeover from the first key to a second key for anonymization of a second set of telemetry data from the network. The service forms, during a key rotation time period associated with the key changeover, a mapped dataset by converting anonymized tokens in the second set of telemetry data into anonymized tokens in the first set of telemetry data. The service augments, during the key rotation time period, the first set of telemetry data with the mapped dataset. The service assesses, during the time period, performance of the network by applying a machine learning-based model to the first set of telemetry data augmented with the mapped dataset.Type: ApplicationFiled: November 12, 2018Publication date: May 14, 2020Inventors: Pierre-André Savalle, Jean-Philippe Vasseur, Alexandre Honoré, Grégory Mermoud
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Publication number: 20190334941Abstract: In one embodiment, a networking device at an edge of a network generates a first set of feature vectors using information regarding one or more characteristics of host devices in the network. The networking device forms the host devices into device clusters dynamically based on the first set of feature vectors. The networking device generates a second set of feature vectors using information regarding traffic associated with the device clusters. The networking device models interactions between the device clusters using a plurality of anomaly detection models that are based on the second set of feature vectors.Type: ApplicationFiled: July 11, 2019Publication date: October 31, 2019Inventors: Jean-Philippe Vasseur, Sébastien Gay, Grégory Mermoud, Pierre-André Savalle, Alexandre Honoré, Fabien Flacher
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Patent number: 10404727Abstract: In one embodiment, a networking device at an edge of a network generates a first set of feature vectors using information regarding one or more characteristics of host devices in the network. The networking device forms the host devices into device clusters dynamically based on the first set of feature vectors. The networking device generates a second set of feature vectors using information regarding traffic associated with the device clusters. The networking device models interactions between the device clusters using a plurality of anomaly detection models that are based on the second set of feature vectors.Type: GrantFiled: June 8, 2016Date of Patent: September 3, 2019Assignee: Cisco Technology, Inc.Inventors: Jean-Philippe Vasseur, Sébastien Gay, Grégory Mermoud, Pierre-André Savalle, Alexandre Honoré, Fabien Flacher
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Patent number: 10318887Abstract: In one embodiment, a device in a network identifies a plurality of applications from observed traffic in the network. The device forms two or more application clusters from the plurality of applications. Each of the application clusters includes one or more of the applications, and wherein a particular application in the plurality of applications is included in each of the application clusters. The device generates anomaly detection models for each of the application clusters. The device tests the anomaly detection models, to determine a measure of efficacy for each of the models with respect to traffic associated with the particular application. The device selects a particular anomaly detection model to analyze the traffic associated with the particular application based on the measures of efficacy for each of the models.Type: GrantFiled: June 21, 2016Date of Patent: June 11, 2019Assignee: Cisco Technology, Inc.Inventors: Jean-Philippe Vasseur, Pierre-André Savalle, Alexandre Honoré
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Patent number: 10243980Abstract: In one embodiment, a device in a network receives an indication that a network anomaly detected by an anomaly detector of a first node in the network is associated with scanning activity in the network. The device receives labeled traffic data associated with the detected anomaly that identifies whether the traffic data is associated with legitimate or illegitimate scanning activity. The device trains a machine learning-based classifier using the labeled traffic data to distinguish between legitimate and illegitimate scanning activity in the network. The device deploys the trained classifier to the first node, to distinguish between legitimate and illegitimate scanning activity in the network.Type: GrantFiled: July 8, 2016Date of Patent: March 26, 2019Assignee: Cisco Technology, Inc.Inventors: Jean-Philippe Vasseur, Grégory Mermoud, Pierre-André Savalle, Alexandre Honoré
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Publication number: 20170310691Abstract: In one embodiment, a networking device at an edge of a network generates a first set of feature vectors using information regarding one or more characteristics of host devices in the network. The networking device forms the host devices into device clusters dynamically based on the first set of feature vectors. The networking device generates a second set of feature vectors using information regarding traffic associated with the device clusters. The networking device models interactions between the device clusters using a plurality of anomaly detection models that are based on the second set of feature vectors.Type: ApplicationFiled: June 8, 2016Publication date: October 26, 2017Inventors: Jean-Philippe Vasseur, Sébastien Gay, Grégory Mermoud, Pierre-André Savalle, Alexandre Honoré, Fabien Flacher
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Publication number: 20170279833Abstract: In one embodiment, a device in a network receives an indication that a network anomaly detected by an anomaly detector of a first node in the network is associated with scanning activity in the network. The device receives labeled traffic data associated with the detected anomaly that identifies whether the traffic data is associated with legitimate or illegitimate scanning activity. The device trains a machine learning-based classifier using the labeled traffic data to distinguish between legitimate and illegitimate scanning activity in the network. The device deploys the trained classifier to the first node, to distinguish between legitimate and illegitimate scanning activity in the network.Type: ApplicationFiled: July 8, 2016Publication date: September 28, 2017Inventors: Jean-Philippe Vasseur, Grégory Mermoud, Pierre-André Savalle, Alexandre Honoré
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Publication number: 20170279696Abstract: In one embodiment, a device in a network identifies a plurality of applications from observed traffic in the network. The device forms two or more application clusters from the plurality of applications. Each of the application clusters includes one or more of the applications, and wherein a particular application in the plurality of applications is included in each of the application clusters. The device generates anomaly detection models for each of the application clusters. The device tests the anomaly detection models, to determine a measure of efficacy for each of the models with respect to traffic associated with the particular application. The device selects a particular anomaly detection model to analyze the traffic associated with the particular application based on the measures of efficacy for each of the models.Type: ApplicationFiled: June 21, 2016Publication date: September 28, 2017Inventors: Jean-Philippe Vasseur, Pierre-André Savalle, Alexandre Honoré