Patents by Inventor Ravisutha Sakrepatna Srinivasamurthy

Ravisutha Sakrepatna Srinivasamurthy 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: 20230342640
    Abstract: Techniques for synthetic data generation in computer-based reasoning systems are discussed and include receiving a request for generation of synthetic data based on a set of training data cases. One or more focal training data cases are determined. For undetermined features (either all of them or those that are not subject to conditions), a value for the feature is determined based on the focal cases. In some embodiments, the generated synthetic data may be checked for similarity against the training data, and if similarity conditions are met, it may be modified (e.g., resampled), removed, and/or replaced.
    Type: Application
    Filed: June 21, 2023
    Publication date: October 26, 2023
    Inventors: Christopher James Hazard, Jacob Beel, Yash Shah, Ravisutha Sakrepatna Srinivasamurthy, Michael Resnick
  • Patent number: 11669769
    Abstract: Techniques for synthetic data generation in computer-based reasoning systems are discussed and include receiving a request for generation of synthetic data based on a set of training data cases. One or more focal training data cases are determined. For undetermined features (either all of them or those that are not subject to conditions), a value for the feature is determined based on the focal cases. In some embodiments, the generation of synthetic data may be conditioned on values of features, preserved features, such as unique identifiers, previous-in-time features, and using the other techniques discussed herein.
    Type: Grant
    Filed: August 28, 2020
    Date of Patent: June 6, 2023
    Assignee: Diveplane Corporation
    Inventors: Christopher James Hazard, Ravisutha Sakrepatna Srinivasamurthy, David R. Cheeseman, Valeri A. Korobov, Martin James Koistinen, Matthew Chase Fulp, Michael Resnick
  • Publication number: 20230140834
    Abstract: Techniques for synthetic data generation in computer-based reasoning systems are discussed and include receiving a request for generation of synthetic data based on a set of training data cases. One or more focal training data cases are determined. For undetermined features (either all of them or those that are not subject to conditions), a value for the feature is determined based on the focal cases. In some embodiments, the generated synthetic data may be checked for similarity against the training data, and if similarity conditions are met, it may be modified (e.g., resampled), removed, and/or replaced.
    Type: Application
    Filed: May 28, 2021
    Publication date: May 4, 2023
    Inventors: Christopher James HAZARD, Jacob David BEEL, Yash SHAH, Ravisutha Sakrepatna SRINIVASAMURTHY, Michael RESNICK
  • Publication number: 20230140842
    Abstract: Techniques for synthetic data generation in computer-based reasoning systems are discussed and include receiving a request for generation of synthetic data based on a set of training data cases. One or more focal training data cases are determined. For undetermined features (either all of them or those that are not subject to conditions), a value for the feature is determined based on the focal cases. In some embodiments, the generation of synthetic data may be conditioned on values of features, preserved features, such as unique identifiers, previous-in-time features, and using the other techniques discussed herein.
    Type: Application
    Filed: August 28, 2020
    Publication date: May 4, 2023
    Inventors: Christopher James Hazard, Ravisutha Sakrepatna Srinivasamurthy, David R. Cheeseman, Valeri A. Korobov, Martin James Koistinen, Matthew Chase Fulp, Michael Resnick
  • Patent number: 11640561
    Abstract: Techniques for synthetic data generation in computer-based reasoning systems are discussed and include receiving a request for generation of synthetic data based on a set of training data cases. One or more focal training data cases are determined. For undetermined features (either all of them or those that are not subject to conditions), a value for the feature is determined based on the focal cases. In some embodiments, the generated synthetic data may be checked for similarity against the training data, and if similarity conditions are met, it may be modified (e.g., resampled), removed, and/or replaced.
    Type: Grant
    Filed: May 28, 2021
    Date of Patent: May 2, 2023
    Assignee: Diveplane Corporation
    Inventors: Christopher James Hazard, Jacob David Beel, Yash Shah, Ravisutha Sakrepatna Srinivasamurthy, Michael Resnick
  • Publication number: 20230046874
    Abstract: Techniques for synthetic data generation in computer-based reasoning systems are discussed and include receiving a request for generation of synthetic data based on a set of training data cases. One or more focal training data cases are determined. For undetermined features (either all of them or those that are not subject to conditions), a value for the feature is determined based on the focal cases. In some embodiments, the generation of synthetic data may be conditioned on values of features, preserved features, such as unique identifiers, previous-in-time features, and using the other techniques discussed herein.
    Type: Application
    Filed: October 24, 2022
    Publication date: February 16, 2023
    Inventors: Christopher James Hazard, Michael Resnick, Ravisutha Sakrepatna Srinivasamurthy, David R. Cheeseman, Valeri A. Korobov, Martin James Koistinen, Matthew Chase Fulp
  • Patent number: 11455557
    Abstract: Techniques for synthetic data generation in computer-based reasoning systems are discussed and include receiving a request for generation of synthetic data based on a set of training data cases. One or more focal training data cases are determined. For undetermined features (either all of them or those that are not subject to conditions), a value for the feature is determined based on the focal cases. In some embodiments, the generation of synthetic data may be conditioned on values of features, preserved features, such as unique identifiers, previous-in-time features, and using the other techniques discussed herein.
    Type: Grant
    Filed: August 28, 2020
    Date of Patent: September 27, 2022
    Assignee: Diveplane Corporation
    Inventors: Christopher James Hazard, Ravisutha Sakrepatna Srinivasamurthy, David R. Cheeseman, Valeri A. Korobov, Martin James Koistinen, Matthew Chase Fulp, Michael Resnick
  • Patent number: 11385633
    Abstract: Techniques are provided herein for creating well-balanced computer-based reasoning systems and using those to control systems. The techniques include receiving a request to determine whether to use one or more particular data elements, features, cases, etc. in a computer-based reasoning model (e.g., as data elements, cases or features are being added, or as part of pruning existing features or cases). Conviction measures are determined and inclusivity conditions are tested. The result of comparing the conviction measure can be used to determine whether to include or exclude the feature, case, etc. in the model and/or whether there are anomalies in the model. A controllable system may then be controlled using the computer-based reasoning model.
    Type: Grant
    Filed: August 13, 2020
    Date of Patent: July 12, 2022
    Assignee: Diveplane Corporation
    Inventors: Christopher James Hazard, Michael Resnick, Ravisutha Sakrepatna Srinivasamurthy, David R. Cheeseman, Ju Hyun Kim, Yamac Alican Isik
  • Patent number: 11262742
    Abstract: Techniques are provided herein for creating well-balanced computer-based reasoning systems and using those to control systems. The techniques include receiving a request to determine whether to use one or more particular data elements, features, cases, etc. in a computer-based reasoning model (e.g., as data elements, cases or features are being added, or as part of pruning existing features or cases). Conviction measures are determined and inclusivity conditions are tested. The result of comparing the conviction measure can be used to determine whether to include or exclude the feature, case, etc. in the model and/or whether there are anomalies in the model. A controllable system may then be controlled using the computer-based reasoning model.
    Type: Grant
    Filed: August 13, 2020
    Date of Patent: March 1, 2022
    Assignee: Diveplane Corporation
    Inventors: Ravisutha Sakrepatna Srinivasamurthy, Christopher James Hazard, Michael Resnick, Ju Hyun Kim, Yamac Alican Isik
  • Publication number: 20210326652
    Abstract: Techniques for synthetic data generation in computer-based reasoning systems are discussed and include receiving a request for generation of synthetic data based on a set of training data cases. One or more focal training data cases are determined. For undetermined features (either all of them or those that are not subject to conditions), a value for the feature is determined based on the focal cases. In some embodiments, the generated synthetic data may be checked for similarity against the training data, and if similarity conditions are met, it may be modified (e.g., resampled), removed, and/or replaced.
    Type: Application
    Filed: May 28, 2021
    Publication date: October 21, 2021
    Inventors: Christopher James Hazard, Jacob Beel, Yash Shah, Ravisutha Sakrepatna Srinivasamurthy, Michael Resnick
  • Publication number: 20210064018
    Abstract: Techniques are provided herein for creating well-balanced computer-based reasoning systems and using those to control systems. The techniques include receiving a request to determine whether to use one or more particular data elements, features, cases, etc. in a computer-based reasoning model (e.g., as data elements, cases or features are being added, or as part of pruning existing features or cases). Conviction measures are determined and inclusivity conditions are tested. The result of comparing the conviction measure can be used to determine whether to include or exclude the feature, case, etc. in the model and/or whether there are anomalies in the model. A controllable system may then be controlled using the computer-based reasoning model.
    Type: Application
    Filed: August 13, 2020
    Publication date: March 4, 2021
    Inventors: Christopher James Hazard, Michael Resnick, Ravisutha Sakrepatna Srinivasamurthy, David R. Cheeseman, Ju Hyun Kim, Yamac Alican Isik
  • Publication number: 20200394541
    Abstract: Techniques for synthetic data generation in computer-based reasoning systems are discussed and include receiving a request for generation of synthetic data based on a set of training data cases. One or more focal training data cases are determined. For undetermined features (either all of them or those that are not subject to conditions), a value for the feature is determined based on the focal cases. In some embodiments, the generation of synthetic data may be conditioned on values of features, preserved features, such as unique identifiers, previous-in-time features, and using the other techniques discussed herein.
    Type: Application
    Filed: August 28, 2020
    Publication date: December 17, 2020
    Inventors: Christopher James Hazard, Ravisutha Sakrepatna Srinivasamurthy, David R. Cheeseman, Valeri A. Korobov, Martin Koistinen, Matthew Fulp, Michael Resnick
  • Publication number: 20200371512
    Abstract: Techniques are provided herein for creating well-balanced computer-based reasoning systems and using those to control systems. The techniques include receiving a request to determine whether to use one or more particular data elements, features, cases, etc. in a computer-based reasoning model (e.g., as data elements, cases or features are being added, or as part of pruning existing features or cases). Conviction measures are determined and inclusivity conditions are tested. The result of comparing the conviction measure can be used to determine whether to include or exclude the feature, case, etc. in the model and/or whether there are anomalies in the model. A controllable system may then be controlled using the computer-based reasoning model.
    Type: Application
    Filed: August 13, 2020
    Publication date: November 26, 2020
    Inventors: Ravisutha Sakrepatna Srinivasamurthy, Christopher James Hazard, Michael Resnick, Ju Hyun Kim, Yamac Alican Isik