Patents by Inventor JONATHAN LA

JONATHAN LA 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: 11632383
    Abstract: In some implementations, sequences of time series values determined from machine data are obtained. Each sequence corresponds to a respective time series. A plurality of predictive models is generated for a first time series from the sequences of time series values. Each predictive model is to generate predicted values associated with the first time series using values of a second time series. For each of the plurality of predictive models, an error is determined between the corresponding predicted values and values associated with the first time series. A predictive model is selected for anomaly detection based on the determined error of the predictive model. Transmission is caused of an indication of an anomaly detected using the selected predictive model.
    Type: Grant
    Filed: October 21, 2020
    Date of Patent: April 18, 2023
    Assignee: Splunk Inc.
    Inventors: Adam Jamison Oliner, Jonathan La, Colleen Kinross, Hongyang Zhang, Jacob Leverich, Shang Cai, Mihai Ganea, Alex Cruise, Toufic Boubez, Manish Sainani
  • Publication number: 20210037037
    Abstract: In some implementations, sequences of time series values determined from machine data are obtained. Each sequence corresponds to a respective time series. A plurality of predictive models is generated for a first time series from the sequences of time series values. Each predictive model is to generate predicted values associated with the first time series using values of a second time series. For each of the plurality of predictive models, an error is determined between the corresponding predicted values and values associated with the first time series. A predictive model is selected for anomaly detection based on the determined error of the predictive model. Transmission is caused of an indication of an anomaly detected using the selected predictive model.
    Type: Application
    Filed: October 21, 2020
    Publication date: February 4, 2021
    Inventors: ADAM JAMISON OLINER, JONATHAN LA, COLLEEN KINROSS, HONGYANG ZHANG, JACOB LEVERICH, SHANG CAI, MIHAI GANEA, ALEX CRUISE, TOUFIC BOUBEZ, MANISH SAINANI
  • Patent number: 10855712
    Abstract: In some implementations, sequences of time series values determined from machine data are obtained. Each sequence corresponds to a respective time series. A plurality of predictive models is generated for a first time series from the sequences of time series values. Each predictive model is to generate predicted values associated with the first time series using values of a second time series. For each of the plurality of predictive models, an error is determined between the corresponding predicted values and values associated with the first time series. A predictive model is selected for anomaly detection based on the determined error of the predictive model. Transmission is caused of an indication of an anomaly detected using the selected predictive model.
    Type: Grant
    Filed: June 19, 2019
    Date of Patent: December 1, 2020
    Assignee: SPLUNK Inc.
    Inventors: Adam Jamison Oliner, Jonathan La, Colleen Kinross, Hongyang Zhang, Jacob Leverich, Shang Cai, Mihai Ganea, Alex Cruise, Toufic Boubez, Manish Sainani
  • Publication number: 20190306184
    Abstract: In some implementations, sequences of time series values determined from machine data are obtained. Each sequence corresponds to a respective time series. A plurality of predictive models is generated for a first time series from the sequences of time series values. Each predictive model is to generate predicted values associated with the first time series using values of a second time series. For each of the plurality of predictive models, an error is determined between the corresponding predicted values and values associated with the first time series. A predictive model is selected for anomaly detection based on the determined error of the predictive model. Transmission is caused of an indication of an anomaly detected using the selected predictive model.
    Type: Application
    Filed: June 19, 2019
    Publication date: October 3, 2019
    Inventors: ADAM JAMISON OLINER, JONATHAN LA, COLLEEN KINROSS, HONGYANG ZHANG, JACOB LEVERICH, SHANG CAI, MIHAI GANEA, ALEX CRUISE, TOUFIC BOUBEZ, MANISH SAINANI
  • Patent number: 10375098
    Abstract: In some implementations, sequences of time series values determined from machine data are obtained. Each sequence corresponds to a respective time series. A plurality of predictive models is generated for a first time series from the sequences of time series values. Each predictive model is to generate predicted values associated with the first time series using values of a second time series. For each of the plurality of predictive models, an error is determined between the corresponding predicted values and values associated with the first time series. A predictive model is selected for anomaly detection based on the determined error of the predictive model. Transmission is caused of an indication of an anomaly detected using the selected predictive model.
    Type: Grant
    Filed: January 31, 2017
    Date of Patent: August 6, 2019
    Inventors: Adam Jamison Oliner, Jonathan La, Colleen Kinross, Hongyang Zhang, Jacob Leverich, Shang Cai, Mihai Ganea, Alex Cruise, Toufic Boubez, Manish Sainani
  • Publication number: 20180219889
    Abstract: In some implementations, sequences of time series values determined from machine data are obtained. Each sequence corresponds to a respective time series. A plurality of predictive models is generated for a first time series from the sequences of time series values. Each predictive model is to generate predicted values associated with the first time series using values of a second time series. For each of the plurality of predictive models, an error is determined between the corresponding predicted values and values associated with the first time series. A predictive model is selected for anomaly detection based on the determined error of the predictive model. Transmission is caused of an indication of an anomaly detected using the selected predictive model.
    Type: Application
    Filed: January 31, 2017
    Publication date: August 2, 2018
    Inventors: ADAM JAMISON OLINER, JONATHAN LA, COLLEEN KINROSS, HONGYANG ZHANG, JACOB LEVERICH, SHANG CAI, MIHAI GANEA, ALEX CRUISE, TOUFIC BOUBEZ, MANISH SAINANI