Patents by Inventor Raghunandan Melkote Kainkaryam

Raghunandan Melkote Kainkaryam 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).

  • Publication number: 20230245777
    Abstract: Disclosed is a method comprising accessing, by a machine learning system, a set of data records for a plurality of users, the data records representative of physical statistics measured for each of the plurality of users over a time period. At least a subset of the data records comprises patterns of missing data for at least a portion of the time period. The method also comprises generating a set of masked data records by masking a subset of the data records in accordance with a pattern of natural missingness from a data record. The method also comprises generating, by the machine learning system, a set of learned representations from at least the set of masked data records. Finally, the method comprises fine tuning, by the machine learning system, a machine learning model using the set of learned representations, the machine learning model configured to perform a downstream machine learning task.
    Type: Application
    Filed: January 18, 2023
    Publication date: August 3, 2023
    Inventors: Luca FOSCHINI, Filip JANKOVIC, Raghunandan Melkote KAINKARYAM, Juan Ignacio Oguiza MENDEZ, Arinbjörn KOLBEINSSON
  • Patent number: 11633148
    Abstract: Disclosed are hair analysis systems and methods comprising: (a) capturing an image of a user at as captured by a camera and sending the image to a hair analysis processor; (b) analyzing the user's hair condition at the hair analysis processor, based on the image from the camera by using a model that is trained using a plurality of images of users that each feature one or more micro features of a respective user's hair, and providing an analysis result to a display; and (c) displaying at the display the analysis result to the user. The present invention provides the system and the method with an improved sensitivity.
    Type: Grant
    Filed: July 28, 2021
    Date of Patent: April 25, 2023
    Assignee: The Procter & Gamble Company
    Inventors: Ankur Purwar, Faiz Feisal Sherman, Raghunandan Melkote Kainkaryam
  • Publication number: 20230043921
    Abstract: A machine learning prediction system can analyze a dataset of users with self-reported symptoms and associated data from a wearable device to impact measure the impact of an acute health condition (such as the flu) at the population level. The machine learning prediction system can train a machine learning model to recognize individual acute health condition patterns based on differences in user activity with respect to the characteristics of determined baseline periods. For example, per-individual normalized change with respect to baseline aggregated at the population level can be used to determine individual acute health condition patterns and predict the onset of certain acute health conditions using a trained machine learning model. In response to predictions, the machine learning prediction system can take interventions to manage the impact of a predicted acute health condition on an individual.
    Type: Application
    Filed: October 18, 2022
    Publication date: February 9, 2023
    Inventors: Luca FOSCHINI, Eamon CADDIGAN, Raghunandan Melkote KAINKARYAM
  • Patent number: 11282190
    Abstract: Disclosed are hair analysis systems and methods comprising: (a) a step to capture an image at least of the top of the head of a user at an image capture unit and to send the image from the image capture unit to a hair analysis unit; (b) a step to analyze the user's hair coverage and/or scalp coverage condition at hair analysis unit, based on the image from the image capture unit by using a deep neural network that predicts user's hair coverage and/or scalp coverage relative to a gender population and is trained on class labels acquired by crowd sourcing, and to provide an analysis result to a display unit; and (c) a step to display at a display unit the analysis result to the user. The present invention provides the system and the method with an improved sensitivity.
    Type: Grant
    Filed: May 16, 2019
    Date of Patent: March 22, 2022
    Assignee: The Procter and Gamble Company
    Inventors: Michael Frederick Niebauer, Faiz Feisal Sherman, Raghunandan Melkote Kainkaryam, Ankur Purwar, Stephen Casperson
  • Publication number: 20210353215
    Abstract: Disclosed are hair analysis systems and methods comprising: (a) capturing an image of a user at as captured by a camera and sending the image to a hair analysis processor; (b) analyzing the user's hair condition at the hair analysis processor, based on the image from the camera by using an artificial learning model that is trained using a plurality of images of users that each feature one or more micro features of a respective user's hair, and providing an analysis result to a display; and (c) displaying at the display the analysis result to the user. The present invention provides the system and the method with an improved sensitivity.
    Type: Application
    Filed: July 28, 2021
    Publication date: November 18, 2021
    Inventors: Ankur Purwar, Faiz Feisal Sherman, Raghunandan Melkote Kainkaryam
  • Patent number: 11172873
    Abstract: Disclosed are hair analysis systems and methods comprising: (a) a step to capture an image of a user at an image capture unit and to send the image from the image capture unit to a hair analysis unit; (b) a step to analyze the user's hair condition at hair analysis unit, based on the image from the image capture unit by using a deep neural network, and to provide an analysis result to a display unit; and (c) a step to display at a display unit the analysis result to the user. The present invention provides the system and the method with an improved sensitivity.
    Type: Grant
    Filed: June 14, 2019
    Date of Patent: November 16, 2021
    Assignee: The Procter & Gamble Company
    Inventors: Ankur Purwar, Faiz Feisal Sherman, Raghunandan Melkote Kainkaryam
  • Publication number: 20210241923
    Abstract: A machine learning prediction system can analyze a dataset of users with self-reported symptoms and associated data from a wearable device to impact measure the impact of an acute health condition (such as the flu) at the population level. The machine learning prediction system can train a machine learning model to recognize individual acute health condition patterns based on differences in user activity with respect to the characteristics of determined baseline periods. For example, per-individual normalized change with respect to baseline aggregated at the population level can be used to determine individual acute health condition patterns and predict the onset of certain acute health conditions using a trained machine learning model. In response to predictions, the machine learning prediction system can take interventions to manage the impact of a predicted acute health condition on an individual.
    Type: Application
    Filed: July 10, 2020
    Publication date: August 5, 2021
    Inventors: Luca Foschini, Eamon Caddigan, Raghunandan Melkote Kainkaryam
  • Publication number: 20200126637
    Abstract: Provided are methods, systems and apparatus for identifying agents with desired biological activity. Specifically, the methods, systems, and apparatus identify functional relationships between multiple agents and/or between one or more agents and a condition of interest. Data of multiple experimental batches are normalized, batch effects accounted for, and the adjusted data used to create a projection matrix or function. The projection matrix is used to project the data into a projection space, in which the distance between a query agent or a query condition and various candidate agents may be determined.
    Type: Application
    Filed: December 19, 2019
    Publication date: April 23, 2020
    Inventors: Jun Xu, Raghunandan Melkote Kainkaryam
  • Publication number: 20190355115
    Abstract: Disclosed are hair analysis systems and methods comprising: (a) a step to capture an image at least of the top of the head of a user at an image capture unit and to send the image from the image capture unit to a hair analysis unit; (b) a step to analyze the user's hair coverage and/or scalp coverage condition at hair analysis unit, based on the image from the image capture unit by using a deep neural network that predicts user's hair coverage and/or scalp coverage relative to a gender population and is trained on class labels acquired by crowd sourcing, and to provide an analysis result to a display unit; and (c) a step to display at a display unit the analysis result to the user. The present invention provides the system and the method with an improved sensitivity.
    Type: Application
    Filed: May 16, 2019
    Publication date: November 21, 2019
    Inventors: Michael Frederick Niebauer, Faiz Feisal Sherman, Raghunandan Melkote Kainkaryam, Ankur Purwar, Stephen Casperson
  • Publication number: 20190350514
    Abstract: Disclosed are hair analysis systems and methods comprising: (a) a step to capture an image of a user at an image capture unit and to send the image from the image capture unit to a hair analysis unit; (b) a step to analyze the user's hair condition at hair analysis unit, based on the image from the image capture unit by using a deep neural network, and to provide an analysis result to a display unit; and (c) a step to display at a display unit the analysis result to the user. The present invention provides the system and the method with an improved sensitivity.
    Type: Application
    Filed: June 14, 2019
    Publication date: November 21, 2019
    Inventors: Ankur Purwar, Faiz Feisal Sherman, Raghunandan Melkote Kainkaryam
  • Publication number: 20170140097
    Abstract: Provided are methods, systems and apparatus for identifying agents with desired biological activity. Specifically, the methods, systems, and apparatus identify functional relationships between multiple agents and/or between one or more agents and a condition of interest. Data of multiple experimental batches are normalized, batch effects accounted for, and the adjusted data used to create a projection matrix or function. The projection matrix is used to project the data into a projection space, in which the distance between a query agent or a query condition and various candidate agents may be determined.
    Type: Application
    Filed: January 30, 2017
    Publication date: May 18, 2017
    Inventors: Jun Xu, Raghunandan Melkote Kainkaryam
  • Publication number: 20130217589
    Abstract: Provided are methods, systems and apparatus for identifying agents with desired biological activity. Specifically, the methods, systems, and apparatus identify functional relationships between multiple agents and/or between one or more agents and a condition of interest. Data of multiple experimental batches are normalized, batch effects accounted for, and the adjusted data used to create a projection matrix or function. The projection matrix is used to project the data into a projection space, in which the distance between a query agent or a query condition and various candidate agents may be determined.
    Type: Application
    Filed: February 22, 2012
    Publication date: August 22, 2013
    Inventors: Jun XU, Raghunandan Melkote Kainkaryam