Patents by Inventor Deepak Kumar Dileep Kumar

Deepak Kumar Dileep Kumar 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: 11531928
    Abstract: Techniques are provided for using machine learning techniques to associate skills with different content. In one technique, multiple classifications models are trained. Each classification model corresponds to a different skill and is trained based on textual embeddings of a plurality of content items and labels indicating whether each content item is associated with the skill that corresponds to that classification model. A particular content item embedding is generated based on text from a particular content item. The particular content item embedding is applied to the classification models to generate multiple results. One or more results of the multiple results are identified that indicate that one or more corresponding skills are associated with the particular content item. For each result of the one or more results, skill tagging data are stored that associate the particular content item with a particular skill that corresponds to that result.
    Type: Grant
    Filed: June 30, 2018
    Date of Patent: December 20, 2022
    Assignee: Microsoft Technology Licensing, LLC
    Inventors: Shivani Rao, Deepak Kumar Dileep Kumar, Zhe Cui, Bonnie Bills, SeyedMohsen Jamali, Siyuan Zhang, Gungor Polatkan
  • Publication number: 20220245512
    Abstract: In an example embodiment, a fully automated process is provided for frequent model retraining and redeployment of a machine learned model trained to output a prediction of how likely it is that a candidate is qualified for a particular job posting. Model quality verification is provided by maintaining a snapshot of a baseline model and automatically comparing it to a proposed model by performing various metrics on the models by testing the models using a holdout data set that includes only data that was not used during the training process. Overlap between data in the holdout set used during retraining and the training set used during initial training is prevented by splitting each dataset using a hash on certain fields of the data.
    Type: Application
    Filed: February 4, 2021
    Publication date: August 4, 2022
    Inventors: Kirill Talanine, Konstantin Salomatin, Arjun K. Kulothungun, Huseyin Baris Ozmen, Linda Fayad, Gungor Polatkan, Deepak Kumar Dileep Kumar
  • Patent number: 11386462
    Abstract: In an embodiment, the disclosed technologies include determining a digital identifier, computing, using aggregate digital event data obtained from at least one computing device, digital feature data relating to the digital identifier, inputting the digital feature data relating to the digital identifier into a digital model that has machine-learned correlations between digital feature data and digital propensity prediction values, receiving, from the digital model, a predicted propensity value associated with the digital identifier, determining a propensity score based on the predicted propensity value, causing a digital content item to be displayed on a user interface of a network-based software application associated with the digital identifier if the propensity score satisfies a propensity criterion.
    Type: Grant
    Filed: February 4, 2020
    Date of Patent: July 12, 2022
    Assignee: Microsoft Technology Licensing, LLC
    Inventors: Sneha S. Chaudhari, Mahesh S. Joshi, Gungor Polatkan, Deepak Kumar Dileep Kumar
  • Patent number: 11195023
    Abstract: Techniques for implementing a feature generation pipeline for machine learning are provided. In one technique, multiple jobs are executed, each of which computes a different set of feature values for a different feature of multiple features associated with videos. A feature registry is stored that lists each of the multiple features. After the jobs are executed and the feature registry is stored, a model specification is received that indicates a set of features for a model. For each feature in a subset of the set of features, a location is identified in storage where a value for said each feature is found and the value for that feature is retrieved from the location. A feature vector is created that comprises, for each feature in the set of features, the value that corresponds to that feature. The feature vector is used to train the model or as input to the model.
    Type: Grant
    Filed: June 30, 2018
    Date of Patent: December 7, 2021
    Assignee: Microsoft Technology Licensing, LLC
    Inventors: Christopher Wright Lloyd, II, Konstantin Salomatin, Jeffrey Douglas Gee, Mahesh S. Joshi, Shivani Rao, Vladislav Tcheprasov, Gungor Polatkan, Deepak Kumar Dileep Kumar
  • Publication number: 20210241320
    Abstract: In an embodiment, the disclosed technologies include determining a digital identifier, computing, using aggregate digital event data obtained from at least one computing device, digital feature data relating to the digital identifier, inputting the digital feature data relating to the digital identifier into a digital model that has machine-learned correlations between digital feature data and digital propensity prediction values, receiving, from the digital model, a predicted propensity value associated with the digital identifier, determining a propensity score based on the predicted propensity value, causing a digital content item to be displayed on a user interface of a network-based software application associated with the digital identifier if the propensity score satisfies a propensity criterion.
    Type: Application
    Filed: February 4, 2020
    Publication date: August 5, 2021
    Inventors: Sneha S. Chaudhari, Mahesh S. Joshi, Gungor Polatkan, Deepak Kumar Dileep Kumar
  • Publication number: 20200005194
    Abstract: Techniques are provided for using machine learning techniques to associate skills with different content. In one technique, multiple classifications models are trained. Each classification model corresponds to a different skill and is trained based on textual embeddings of a plurality of content items and labels indicating whether each content item is associated with the skill that corresponds to that classification model. A particular content item embedding is generated based on text from a particular content item. The particular content item embedding is applied to the classification models to generate multiple results. One or more results of the results are identified that indicate that one or more corresponding skills are associated with the particular content item. For each result of the one or more results, skill tagging data is stored that associates the particular content item with a particular skill that corresponds to that result.
    Type: Application
    Filed: June 30, 2018
    Publication date: January 2, 2020
    Inventors: Shivani Rao, Deepak Kumar Dileep Kumar, Zhe Cui, Bonnie Bills, SeyedMohsen Jamali, Siyuan Zhang, Gungor Polatkan
  • Publication number: 20200005045
    Abstract: Techniques for implementing a feature generation pipeline for machine learning are provided. In one technique, multiple jobs are executed, each of which computes a different set of feature values for a different feature of multiple features associated with videos. A feature registry is stored that lists each of the multiple features. After the jobs are executed and the feature registry is stored, a model specification is received that indicates a set of features for a model. For each feature in a subset of the set of features, a location is identified in storage where a value for said each feature is found and the value for that feature is retrieved from the location. A feature vector is created that comprises, for each feature in the set of features, the value that corresponds to that feature. The feature vector is used to train the model or as input to the model.
    Type: Application
    Filed: June 30, 2018
    Publication date: January 2, 2020
    Inventors: Christopher Wright Lloyd, II, Konstantin Salomatin, Jeffrey Douglas Gee, Mahesh S. Joshi, Shivani Rao, Vladislav Tcheprasov, Gungor Polatkan, Deepak Kumar Dileep Kumar