Patents by Inventor Vaidyanathan Venkatraman

Vaidyanathan Venkatraman 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: 11954309
    Abstract: In implementations of systems for predicting a terminal event, a computing device implements a termination system to receive input data defining a period of time and a maximum event threshold. This system uses a classification model to generate event scores for a plurality of entity devices. Each of the event scores indicates a probability of an event occurrence for a corresponding entity device within a period of time. The plurality of entity devices are segmented into a first segment and a second segment based on an event score threshold. Entity devices included in the first segment have event scores greater than the event score threshold and entity devices included in the second segment have event scores below the event score threshold. The termination system generates an indication of a probability that a number of event occurrences for the entity devices included in the second segment exceeds the maximum even threshold within the period of time.
    Type: Grant
    Filed: May 4, 2020
    Date of Patent: April 9, 2024
    Assignee: Adobe Inc.
    Inventors: Amit Doda, Gaurav Sinha, Kai Yeung Lau, Akangsha Sunil Bedmutha, Shiv Kumar Saini, Ritwik Sinha, Vaidyanathan Venkatraman, Niranjan Shivanand Kumbi, Omar Rahman, Atanu R. Sinha
  • Patent number: 11775813
    Abstract: The present disclosure relates to systems, methods, and non-transitory computer readable media for generating a recommended target audience based on determining a predicted attendance utilizing a neural network approach. For example, the disclosed systems can utilize an approximate nearest neighbor algorithm to identify individuals that are within a similarity threshold of invitees for an event. In addition, the disclosed systems can implement an attendance prediction model to determine a probability of an invitee attending the event. The disclosed systems can further determine a predicted attendance for an event based on the individual probabilities. Based on identifying the similar individuals to, and the attendance probabilities for, the invitees, the disclosed systems can generate a recommended target audience to satisfy a target attendance for an event based on a predicted attendance for the event.
    Type: Grant
    Filed: June 19, 2019
    Date of Patent: October 3, 2023
    Assignee: Adobe Inc.
    Inventors: Niranjan Kumbi, Vaidyanathan Venkatraman, Rajan Madhavan, Omar Rahman, Kai Lau, Badsah Mukherji, Ajay Awatramani
  • Patent number: 11501161
    Abstract: Embodiments of the present invention provide systems, methods, and computer storage media for providing factors that explain the generated results of a deep neural network (DNN). In embodiments, multiple machine learning models and a DNN are trained on a training dataset. A preliminary set of trained machine learning models with similar results to the trained DNN are selected for further evaluation. The preliminary set of machine learning models may be evaluated using a distribution analysis to select a reduced set of machine learning models. Results produced by the reduced set of machine learning models are compared, point-by-point, to the results produced by the DNN. The best performing machine learning model with generated results that performs closest to the DNN generated results may be selected. One or more factors used by the selected machine learning model are determined.
    Type: Grant
    Filed: April 4, 2019
    Date of Patent: November 15, 2022
    Assignee: ADOBE INC.
    Inventors: Vaidyanathan Venkatraman, Rajan Madhavan, Omar Rahman, Niranjan Shivanand Kumbi, Brajendra Kumar Bhujabal, Ajay Awatramani
  • Publication number: 20210342649
    Abstract: In implementations of systems for predicting a terminal event, a computing device implements a termination system to receive input data defining a period of time and a maximum event threshold. This system uses a classification model to generate event scores for a plurality of entity devices. Each of the event scores indicates a probability of an event occurrence for a corresponding entity device within a period of time. The plurality of entity devices are segmented into a first segment and a second segment based on an event score threshold. Entity devices included in the first segment have event scores greater than the event score threshold and entity devices included in the second segment have event scores below the event score threshold. The termination system generates an indication of a probability that a number of event occurrences for the entity devices included in the second segment exceeds the maximum even threshold within the period of time.
    Type: Application
    Filed: May 4, 2020
    Publication date: November 4, 2021
    Applicant: Adobe Inc.
    Inventors: Amit Doda, Gaurav Sinha, Kai Yeung Lau, Akangsha Sunil Bedmutha, Shiv Kumar Saini, Ritwik Sinha, Vaidyanathan Venkatraman, Niranjan Shivanand Kumbi, Omar Rahman, Atanu R. Sinha
  • Publication number: 20210342866
    Abstract: Techniques are disclosed for selecting audience members for a marketing campaign. A list of potential members is accessed, where each member is associated with a corresponding feature vector comprising features. A subset of the features is selected, and used to select a first group from the list for inclusion in the campaign, thereby also defining a second group from the list for exclusion from the campaign. A first similarity among the members in the first group is compared to a second similarity between the members in the first and second groups. If the first similarity is equal to or lower than the second similarity, the subset of features is updated to form a new subset of features, and the selection process of target audience member is repeated, until the first similarity becomes higher than the second similarity. Subsequently, the marketing campaign is launched with the first group of members.
    Type: Application
    Filed: April 29, 2020
    Publication date: November 4, 2021
    Applicant: Adobe Inc.
    Inventors: Camille Girabawe, Richard Yang, Goutham Srivatsav Arra, Akangsha Sunil Bedmutha, Omar Rahman, Niranjan Kumbi, Vaidyanathan Venkatraman
  • Publication number: 20210209629
    Abstract: An improved analytics system generates predicted event outcomes for events. The analytics system generates expected registration profiles based on event metadata that indicates predicted audience behavior for an event. This expected registration profile is used to analyze real-time audience behavior of an audience associated with the event. A predicted event outcome can be determined that indicates a time-based conversion propensity related to the audience.
    Type: Application
    Filed: January 2, 2020
    Publication date: July 8, 2021
    Inventors: Niranjan Shivanand Kumbi, Ajay Awatramani, Vaidyanathan Venkatraman, Omar Rahman, Kai Yeung Lau
  • Publication number: 20200401880
    Abstract: The present disclosure relates to systems, methods, and non-transitory computer readable media for generating a recommended target audience based on determining a predicted attendance utilizing a neural network approach. For example, the disclosed systems can utilize an approximate nearest neighbor algorithm to identify individuals that are within a similarity threshold of invitees for an event. In addition, the disclosed systems can implement an attendance prediction model to determine a probability of an invitee attending the event. The disclosed systems can further determine a predicted attendance for an event based on the individual probabilities. Based on identifying the similar individuals to, and the attendance probabilities for, the invitees, the disclosed systems can generate a recommended target audience to satisfy a target attendance for an event based on a predicted attendance for the event.
    Type: Application
    Filed: June 19, 2019
    Publication date: December 24, 2020
    Inventors: Niranjan Kumbi, Vaidyanathan Venkatraman, Rajan Madhavan, Omar Rahman, Kai Lau, Badsah Mukherji, Ajay Awatramani
  • Publication number: 20200320381
    Abstract: Embodiments of the present invention provide systems, methods, and computer storage media for providing factors that explain the generated results of a deep neural network (DNN). In embodiments, multiple machine learning models and a DNN are trained on a training dataset. A preliminary set of trained machine learning models with similar results to the trained DNN are selected for further evaluation. The preliminary set of machine learning models may be evaluated using a distribution analysis to select a reduced set of machine learning models. Results produced by the reduced set of machine learning models are compared, point-by-point, to the results produced by the DNN. The best performing machine learning model with generated results that performs closest to the DNN generated results may be selected. One or more factors used by the selected machine learning model are determined.
    Type: Application
    Filed: April 4, 2019
    Publication date: October 8, 2020
    Inventors: Vaidyanathan Venkatraman, Rajan Madhavan, Omar Rahman, Niranjan Shivanand Kumbi, Brajendra Kumar Bhujabal, Ajay Awatramani