Patents by Inventor Shruti Jadon

Shruti Jadon 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: 12039355
    Abstract: A telemetry service can receive telemetry collection requirements that are expressed as an “intent” that defines how telemetry is to be collected. A telemetry intent compiler can receive the telemetry intent and translate the high level intent into abstract telemetry configuration parameters that provide a generic description of desired telemetry data. The telemetry service can determine, from the telemetry intent, a set of devices from which to collect telemetry data. For each device, the telemetry service can determine capabilities of the device with respect to telemetry data collection. The capabilities may include a telemetry protocol supported by the device. The telemetry service can create a protocol specific device configuration based on the abstract telemetry configuration parameters and the telemetry protocol supported by the device. Devices in a network system that support a particular telemetry protocol can be allocated to instances of a telemetry collector that supports the telemetry protocol.
    Type: Grant
    Filed: August 24, 2020
    Date of Patent: July 16, 2024
    Assignee: JUNIPER NETWORKS, INC.
    Inventors: Gauresh Dilip Vanjare, Shruti Jadon, Tarun Banka, Venny Kranthi Teja Kommarthi, Aditi Ghotikar, Harshit Naresh Chitalia, Keval Nimeshkumar Shah, Mithun Chakaravarrti Dharmaraj, Rajenkumar Patel, Yixiao Wei
  • Publication number: 20240176878
    Abstract: An example system for performing root cause analysis for a plurality of network devices includes one or more processors implemented in circuitry and configured to: receive telemetry data from the plurality of network devices; apply an artificial intelligence (AI) anomaly detection model, trained on historical telemetry data to detect anomalies in the historical telemetry data, to the received telemetry data to detect one or more anomalies in the received telemetry data; and apply an AI root cause analysis mode, trained on historical data, to the anomalies to determine a root cause of an issue causing the one or more anomalies.
    Type: Application
    Filed: August 30, 2023
    Publication date: May 30, 2024
    Inventors: Ajit Krishna Patankar, Kihwan Han, Prasad Miriyala, Mansi Joshi, Shruti Jadon, Deepak Kumar Naik, Maria Charles Maria Selvam
  • Publication number: 20240095603
    Abstract: A device may receive time series data, and may define a first quantity of steps into past data utilized to make future predictions, a second quantity of steps into the future predictions, and a third quantity of steps to skip in the future predictions. The device may determine whether the second quantity is equal to the third quantity. When the second quantity is equal to the third quantity, the device may process the time series data, with a plurality of machine learning models, to generate a plurality of future predictions that do not overlap, may merge the plurality of future predictions into a list of future predictions, and may provide the list for display. When the second quantity is not equal to the third quantity, the device may process the time series data, with the plurality of machine learning models, to generate another plurality of future predictions that do overlap.
    Type: Application
    Filed: June 13, 2022
    Publication date: March 21, 2024
    Inventors: Shruti JADON, Ajit Krishna PATANKAR
  • Patent number: 11823079
    Abstract: This disclosure describes techniques that include using an automatically trained machine learning system to generate a prediction. In one example, this disclosure describes a method comprising: based on a request for the prediction: training each respective machine learning (ML) model in a plurality of ML models to generate a respective training-phase prediction in a plurality of training-phase predictions; automatically determining a selected ML model in the plurality of ML models based on evaluation metrics for the plurality of ML; and applying the selected ML model to generate the prediction based on data collected from a network that includes a plurality of network devices.
    Type: Grant
    Filed: October 7, 2022
    Date of Patent: November 21, 2023
    Assignee: Juniper Networks, Inc.
    Inventors: Shruti Jadon, Mithun Chakaravarrti Dharmaraj, Anita Kar, Harshit Naresh Chitalia
  • Publication number: 20230368066
    Abstract: A device may receive site data identifying raw data or key performance indicators associated with a plurality of sites, and may calculate a similarity score matrix based on the site data. The device may group the site data into data clusters based on the similarity score matrix, and may identify training data and validation data based on the data clusters. The device may generate a meta model, and may train the meta model based on the training data. The device may validate the meta model based on the validation data, and may create site-specific models, for each of the plurality of sites, based on the meta model and the site data. The device may utilize the site-specific models with corresponding new site data of the plurality of sites to generate predictions for the plurality of sites.
    Type: Application
    Filed: May 16, 2022
    Publication date: November 16, 2023
    Inventors: Shruti JADON, Ajit Krishna PATANKAR
  • Publication number: 20230031889
    Abstract: This disclosure describes techniques that include using an automatically trained machine learning system to generate a prediction. In one example, this disclosure describes a method comprising: based on a request for the prediction: training each respective machine learning (ML) model in a plurality of ML models to generate a respective training-phase prediction in a plurality of training-phase predictions; automatically determining a selected ML model in the plurality of ML models based on evaluation metrics for the plurality of ML; and applying the selected ML model to generate the prediction based on data collected from a network that includes a plurality of network devices.
    Type: Application
    Filed: October 7, 2022
    Publication date: February 2, 2023
    Inventors: Shruti Jadon, Mithun Chakaravarrti Dharmaraj, Anita Kar, Harshit Naresh Chitalia
  • Patent number: 11501190
    Abstract: This disclosure describes techniques that include using an automatically trained machine learning system to generate a prediction. In one example, this disclosure describes a method comprising: based on a request for the prediction: training each respective machine learning (ML) model in a plurality of ML models to generate a respective training-phase prediction in a plurality of training-phase predictions; automatically determining a selected ML model in the plurality of ML models based on evaluation metrics for the plurality of ML; and applying the selected ML model to generate the prediction based on data collected from a network that includes a plurality of network devices.
    Type: Grant
    Filed: July 2, 2020
    Date of Patent: November 15, 2022
    Assignee: JUNIPER NETWORKS, INC.
    Inventors: Shruti Jadon, Mithun Chakaravarrti Dhamaraj, Anita Kar, Harshit Naresh Chitalia
  • Publication number: 20220058042
    Abstract: A telemetry service can receive telemetry collection requirements that are expressed as an “intent” that defines how telemetry is to be collected. A telemetry intent compiler can receive the telemetry intent and translate the high level intent into abstract telemetry configuration parameters that provide a generic description of desired telemetry data. The telemetry service can determine, from the telemetry intent, a set of devices from which to collect telemetry data. For each device, the telemetry service can determine capabilities of the device with respect to telemetry data collection. The capabilities may include a telemetry protocol supported by the device. The telemetry service can create a protocol specific device configuration based on the abstract telemetry configuration parameters and the telemetry protocol supported by the device. Devices in a network system that support a particular telemetry protocol can be allocated to instances of a telemetry collector that supports the telemetry protocol.
    Type: Application
    Filed: August 24, 2020
    Publication date: February 24, 2022
    Inventors: Gauresh Dilip Vanjare, Shruti Jadon, Tarun Banka, Venny Kranthi Teja Kommarthi, Aditi Ghotikar, Harshit Naresh Chitalia, Keval Nimeshkumar Shah, Mithun Chakaravarrti Dharmaraj, Rajenkumar Patel, Yixiao Wei
  • Publication number: 20220004897
    Abstract: This disclosure describes techniques that include using an automatically trained machine learning system to generate a prediction. In one example, this disclosure describes a method comprising: based on a request for the prediction: training each respective machine learning (ML) model in a plurality of ML models to generate a respective training-phase prediction in a plurality of training-phase predictions; automatically determining a selected ML model in the plurality of ML models based on evaluation metrics for the plurality of ML; and applying the selected ML model to generate the prediction based on data collected from a network that includes a plurality of network devices.
    Type: Application
    Filed: July 2, 2020
    Publication date: January 6, 2022
    Inventors: Shruti Jadon, Mithun Chakaravarrti Dhamaraj, Anita Kar, Harshit Naresh Chitalia