Patents by Inventor Sachin Tripathi

Sachin Tripathi 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: 12032607
    Abstract: A context-based recommendation system for feature search automatically identifies features of a feature-rich system (e.g., an application) based on the program code of the feature-rich system and additional data corresponding to the feature-rich system. A code workflow graph describing workflows in the program code is generated. Various data corresponding to the feature-rich system, such as help data, analytics data, social media data, and so forth is obtained. The code workflow graph and the data are analyzed to identify sentences in the workflow. These sentences are used to a train machine learning system to generate one or more recommendations. In response to a user query, the machine learning system generates and outputs as recommendations workflows identified based on the user query.
    Type: Grant
    Filed: May 18, 2020
    Date of Patent: July 9, 2024
    Assignee: Adobe Inc.
    Inventors: Sudhir Tubegere Shankaranarayana, Sreenivas Ramaswamy, Sachin Tripathi, Reetesh Mukul, Mayuri Jain, Bhakti Ramnani
  • Patent number: 11556393
    Abstract: A resource management system of an application takes various actions to improve or maintain the health of the application (e.g., keep the application from becoming sluggish). The resource management system maintains a reinforcement learning model indicating which actions the resource management system is to take for various different states of the application. The resource management system performs multiple iterations of a process of identifying a current state of the application, determining an action to take to manage resources for the application, and taking the determined action. In each iteration, the resource management system determines the result of the action taken in the previous iteration and updates the reinforcement learning model so that the reinforcement learning model learns which actions improve the health of the application and which actions do not improve the health of the application.
    Type: Grant
    Filed: January 7, 2020
    Date of Patent: January 17, 2023
    Assignee: Adobe Inc.
    Inventors: Bhakti Ramnani, Sachin Tripathi, Reetesh Mukul, Prabal Kumar Ghosh
  • Publication number: 20210357440
    Abstract: A context-based recommendation system for feature search automatically identifies features of a feature-rich system (e.g., an application) based on the program code of the feature-rich system and additional data corresponding to the feature-rich system. A code workflow graph describing workflows in the program code is generated. Various data corresponding to the feature-rich system, such as help data, analytics data, social media data, and so forth is obtained. The code workflow graph and the data are analyzed to identify sentences in the workflow. These sentences are used to a train machine learning system to generate one or more recommendations. In response to a user query, the machine learning system generates and outputs as recommendations workflows identified based on the user query.
    Type: Application
    Filed: May 18, 2020
    Publication date: November 18, 2021
    Applicant: Adobe Inc.
    Inventors: Sudhir Tubegere Shankaranarayana, Sreenivas Ramaswamy, Sachin Tripathi, Reetesh Mukul, Mayuri Jain, Bhakti Ramnani
  • Publication number: 20210209419
    Abstract: A resource management system of an application takes various actions to improve or maintain the health of the application (e.g., keep the application from becoming sluggish). The resource management system maintains a reinforcement learning model indicating which actions the resource management system is to take for various different states of the application. The resource management system performs multiple iterations of a process of identifying a current state of the application, determining an action to take to manage resources for the application, and taking the determined action. In each iteration, the resource management system determines the result of the action taken in the previous iteration and updates the reinforcement learning model so that the reinforcement learning model learns which actions improve the health of the application and which actions do not improve the health of the application.
    Type: Application
    Filed: January 7, 2020
    Publication date: July 8, 2021
    Applicant: Adobe Inc.
    Inventors: Bhakti Ramnani, Sachin Tripathi, Reetesh Mukul, Prabal Kumar Ghosh
  • Publication number: 20160081312
    Abstract: The invention features a non-transgenic rat model for early AD, using a metal mixture of As, Cd and Pb, characterized by enhanced synergistic amyloidogenicity in rat cortex and hippocampus. This model can serve as a tool for (a) AD-directed drug screening, and (b) determining mechanism of AD pathogenicity. It features induction of the A?-mediated apoptosis and induction of inflammation in rodent brain. The invention features novel astrocyte and neuronal cellular models for AD, using a metal mixture of As, Cd and Pb, characterized by enhanced synergistic amyloidogenicity. This model can serve as a tool for (a) AD-directed drug screening in astrocytes and neurons, and (b) determining mechanism of AD pathogenicity in cells. It features induction of the A?-mediated apoptosis and induction of inflammation in astrocytes and neurons.
    Type: Application
    Filed: May 15, 2014
    Publication date: March 24, 2016
    Inventors: Sanghamitra Bandyopadhyay, Anushruti Ashok, Nagendra Kumar Rai, Asit Rai, Sachin Tripathi