loadpatents
name:-0.013712882995605
name:-0.013609886169434
name:-0.012686014175415
Sartran; Laurent Patent Filings

Sartran; Laurent

Patent Applications and Registrations

Patent applications and USPTO patent grants for Sartran; Laurent.The latest application filed is for "hierarchical models using self organizing learning topologies".

Company Profile
12.13.13
  • Sartran; Laurent - Palaiseau FR
*profile and listings may contain filings by different individuals or companies with the same name. Review application materials to confirm ownership/assignment.
Patent Activity
PatentDate
Hierarchical models using self organizing learning topologies
Grant 11,290,477 - Savalle , et al. March 29, 2
2022-03-29
Learning internal ranges from network traffic data to augment anomaly detection systems
Grant 11,140,187 - Sartran , et al. October 5, 2
2021-10-05
Hierarchical Models Using Self Organizing Learning Topologies
App 20200304530 - Savalle; Pierre-Andre ;   et al.
2020-09-24
Estimating feature confidence for online anomaly detection
Grant 10,701,092 - Sartran , et al.
2020-06-30
Hierarchical models using self organizing learning topologies
Grant 10,701,095 - Savalle , et al.
2020-06-30
Detection and analysis of seasonal network patterns for anomaly detection
Grant 10,659,333 - Sartran , et al.
2020-05-19
Anomaly selection using distance metric-based diversity and relevance
Grant 10,616,251 - Savalle , et al.
2020-04-07
Learning Internal Ranges From Network Traffic Data To Augment Anomaly Detection Systems
App 20190342321 - Sartran; Laurent ;   et al.
2019-11-07
User assistance coordination in anomaly detection
Grant 10,469,511 - Vasseur , et al. No
2019-11-05
Learning internal ranges from network traffic data to augment anomaly detection systems
Grant 10,404,728 - Sartran , et al. Sep
2019-09-03
Merging of scored records into consistent aggregated anomaly messages
Grant 10,389,606 - Sartran , et al. A
2019-08-20
Edge-based detection of new and unexpected flows
Grant 10,389,741 - Savalle , et al. A
2019-08-20
Anomaly detection using network traffic data
Grant 10,320,824 - Vasseur , et al.
2019-06-11
Hierarchical Models Using Self Organizing Learning Topologies
App 20190081973 - Savalle; Pierre-Andre ;   et al.
2019-03-14
Specializing unsupervised anomaly detection systems using genetic programming
Grant 10,218,729 - Gay , et al. Feb
2019-02-26
Hierarchical models using self organizing learning topologies
Grant 10,164,991 - Savalle , et al. Dec
2018-12-25
Anomaly Selection Using Distance Metric-based Diversity And Relevance
App 20180241762 - Savalle; Pierre-Andre ;   et al.
2018-08-23
Estimating Feature Confidence For Online Anomaly Detection
App 20180152466 - Sartran; Laurent ;   et al.
2018-05-31
Learning Internal Ranges From Network Traffic Data To Augment Anomaly Detection Systems
App 20180077182 - Sartran; Laurent ;   et al.
2018-03-15
Specializing Unsupervised Anomaly Detection Systems Using Genetic Programming
App 20180013776 - Gay; Sebastien ;   et al.
2018-01-11
Edge-based Detection Of New And Unexpected Flows
App 20170279827 - Savalle; Pierre-Andre ;   et al.
2017-09-28
Merging Of Scored Records Into Consistent Aggregated Anomaly Messages
App 20170279694 - Sartran; Laurent ;   et al.
2017-09-28
User Assistance Coordination In Anomaly Detection
App 20170279834 - Vasseur; Jean-Philippe ;   et al.
2017-09-28
Hierarchical Models Using Self Organizing Learning Topologies
App 20170279828 - Savalle; Pierre-Andre ;   et al.
2017-09-28
Detection And Analysis Of Seasonal Network Patterns For Anomaly Detection
App 20170279698 - Sartran; Laurent ;   et al.
2017-09-28
Anomaly Detection Using Network Traffic Data
App 20160219070 - Vasseur; Jean-Philippe ;   et al.
2016-07-28

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