Patents by Inventor Sameer Arun JOSHI

Sameer Arun JOSHI 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: 11681944
    Abstract: “Semi-supervised” machine learning relies on less human input than a supervised algorithm to train a machine learning algorithm to perform entity recognition (NER). Starting with a known entity value or known pattern value for a specific entity type, phrases in a training data corpus are identified that include the known entity value. Context-value patterns are generated to match selected phrases that include the known entity value. One or more context-value patterns may be validated based on human input. The validated patterns identify additional entity values. A subset of the additional entity values may also be validated based on human input. Occurrences of validated entity values may be labeled in the training corpus. Sample phrases from the labeled training dataset may be extracted to form a reduced-size training set for a supervised machine learning model which may be further used in production to label data for any named entity recognition application.
    Type: Grant
    Filed: August 9, 2018
    Date of Patent: June 20, 2023
    Assignee: Oracle International Corporation
    Inventors: Shrihari Amarendra Bhat, Sameer Arun Joshi, Ravi Ranjan, Samarjeet Singh Tomar, Harendra Kumar Mishra
  • Patent number: 10789149
    Abstract: Duplicate bug report detection using machine learning algorithms and automated feedback incorporation is disclosed. For each set of bug reports, a user-classification of the set of bug reports as including duplicate bug reports or non-duplicate bug reports is identified. Also for each set of bug reports, correlation values corresponding to a respective feature, of a plurality of features, between bug reports in the set of bug reports is identified. Based on the user-classifications and the correlation values, a model is generated to identify any set of bug reports as including duplicate bug reports or non-duplicate bug reports. The model is applied to classify a particular bug report and a candidate bug report as duplicate bug reports or non-duplicate bug reports.
    Type: Grant
    Filed: April 12, 2019
    Date of Patent: September 29, 2020
    Assignee: Oracle International Corporation
    Inventors: Prasad V. Bagal, Sameer Arun Joshi, Hanlin Daniel Chien, Ricardo Rey Diez, David Cavazos Woo, Emily Ronshien Su, Sha Chang
  • Publication number: 20200050662
    Abstract: “Semi-supervised” machine learning relies on less human input than a supervised algorithm to train a machine learning algorithm to perform entity recognition (NER). Starting with a known entity value or known pattern value for a specific entity type, phrases in a training data corpus are identified that include the known entity value. Context-value patterns are generated to match selected phrases that include the known entity value. One or more context-value patterns may be validated based on human input. The validated patterns identify additional entity values. A subset of the additional entity values may also be validated based on human input. Occurrences of validated entity values may be labeled in the training corpus. Sample phrases from the labeled training dataset may be extracted to form a reduced-size training set for a supervised machine learning model which may be further used in production to label data for any named entity recognition application.
    Type: Application
    Filed: August 9, 2018
    Publication date: February 13, 2020
    Applicant: Oracle International Corporation
    Inventors: SHRIHARI AMARENDRA BHAT, SAMEER ARUN JOSHI, RAVI RANJAN, SAMARJEET SINGH TOMAR, HARENDRA KUMAR MISHRA
  • Patent number: 10379999
    Abstract: Duplicate bug report detection using machine learning algorithms and automated feedback incorporation is disclosed. For each set of bug reports, a user-classification of the set of bug reports as including duplicate bug reports or non-duplicate bug reports is identified. Also for each set of bug reports, correlation values corresponding to a respective feature, of a plurality of features, between bug reports in the set of bug reports is identified. Based on the user-classifications and the correlation values, a model is generated to identify any set of bug reports as including duplicate bug reports or non-duplicate bug reports. The model is applied to classify a particular bug report and a candidate bug report as duplicate bug reports or non-duplicate bug reports.
    Type: Grant
    Filed: January 11, 2016
    Date of Patent: August 13, 2019
    Assignee: Oracle International Corporation
    Inventors: Prasad V. Bagal, Sameer Arun Joshi, Hanlin Daniel Chien, Ricardo Rey Diez, David Cavazos Woo, Emily Ronshien Su, Sha Chang
  • Publication number: 20190235987
    Abstract: Duplicate bug report detection using machine learning algorithms and automated feedback incorporation is disclosed. For each set of bug reports, a user-classification of the set of bug reports as including duplicate bug reports or non-duplicate bug reports is identified. Also for each set of bug reports, correlation values corresponding to a respective feature, of a plurality of features, between bug reports in the set of bug reports is identified. Based on the user-classifications and the correlation values, a model is generated to identify any set of bug reports as including duplicate bug reports or non-duplicate bug reports. The model is applied to classify a particular bug report and a candidate bug report as duplicate bug reports or non-duplicate bug reports.
    Type: Application
    Filed: April 12, 2019
    Publication date: August 1, 2019
    Applicant: Oracle International Corporation
    Inventors: Prasad V. Bagal, Sameer Arun Joshi, Hanlin Daniel Chien, Ricardo Rey Diez, David Cavazos Woo, Emily Ronshien Su, Sha Chang
  • Patent number: 10339030
    Abstract: Duplicate bug report detection using machine learning algorithms and automated feedback incorporation is disclosed. For each set of bug reports, a user-classification of the set of bug reports as including duplicate bug reports or non-duplicate bug reports is identified. Also for each set of bug reports, correlation values corresponding to a respective feature, of a plurality of features, between bug reports in the set of bug reports is identified. Based on the user-classifications and the correlation values, a model is generated to identify any set of bug reports as including duplicate bug reports or non-duplicate bug reports. The model is applied to classify a particular bug report and a candidate bug report as duplicate bug reports or non-duplicate bug reports.
    Type: Grant
    Filed: January 11, 2016
    Date of Patent: July 2, 2019
    Assignee: Oracle International Corporation
    Inventors: Prasad V. Bagal, Sameer Arun Joshi, Hanlin Daniel Chien, Ricardo Rey Diez, David Cavazos Woo, Emily Ronshien Su, Sha Chang
  • Patent number: 10237252
    Abstract: A multi-node cluster is configured for credential management. A method commences by retrieving a super-user credential from a credential record stored in a location accessible to the cluster, then propagating the super-user credential to a set of nodes in the multi-node cluster. A credential creating processes is invoked on at least some of the set of nodes. Application-level credential access can be implemented in a multi-cluster environment by carrying-out an exchange that passes credentials between a first cluster and a second cluster over a secure channel. A protocol is observed whereby one or more applications running on the first cluster receive new credentials for accessing the second cluster from the credential serving process after the credential creating process creates the new credential.
    Type: Grant
    Filed: September 20, 2013
    Date of Patent: March 19, 2019
    Assignee: Oracle International Corporation
    Inventors: Harish Nandyala, Prasad V. Bagal, Sameer Arun Joshi
  • Publication number: 20170199803
    Abstract: Duplicate bug report detection using machine learning algorithms and automated feedback incorporation is disclosed. For each set of bug reports, a user-classification of the set of bug reports as including duplicate bug reports or non-duplicate bug reports is identified. Also for each set of bug reports, correlation values corresponding to a respective feature, of a plurality of features, between bug reports in the set of bug reports is identified. Based on the user-classifications and the correlation values, a model is generated to identify any set of bug reports as including duplicate bug reports or non-duplicate bug reports. The model is applied to classify a particular bug report and a candidate bug report as duplicate bug reports or non-duplicate bug reports.
    Type: Application
    Filed: January 11, 2016
    Publication date: July 13, 2017
    Inventors: Prasad V. Bagal, Sameer Arun Joshi, Hanlin Daniel Chien, Ricardo Rey Diez, David Cavazos Woo, Emily Ronshien Su, Sha Chang
  • Publication number: 20150089608
    Abstract: A multi-node cluster is configured for credential management. A method commences by retrieving a super-user credential from a credential record stored in a location accessible to the cluster, then propagating the super-user credential to a set of nodes in the multi-node cluster. A credential creating processes is invoked on at least some of the set of nodes. Application-level credential access can be implemented in a multi-cluster environment by carrying-out an exchange that passes credentials between a first cluster and a second cluster over a secure channel. A protocol is observed whereby one or more applications running on the first cluster receive new credentials for accessing the second cluster from the credential serving process after the credential creating process creates the new credential.
    Type: Application
    Filed: September 20, 2013
    Publication date: March 26, 2015
    Applicant: Oracle International Corporation
    Inventors: Harish NANDYALA, Prasad V. BAGAL, Sameer Arun JOSHI