Patents by Inventor SOURABH PRAKASH

SOURABH PRAKASH 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: 20240345940
    Abstract: The method and system for generating test script from product requirements is disclosed. The method may include classifying a product requirement into a corresponding category of a plurality of predefined categories, using a first pre-trained machine learning (ML) model and obtaining a set of predefined questions corresponding to the product requirement, based on the category associated with the product requirement, from a database. The method may further include determining an answer-value corresponding to each predefined question of the set of predefined questions, using a second pre-trained machine learning (ML) model and generating a test script based on the set of predefined questions and the answer value corresponding to each question of the set of questions.
    Type: Application
    Filed: March 19, 2024
    Publication date: October 17, 2024
    Inventors: SOURABH PRAKASH, RAKESH KUMAR SIDHARTHAN, SIVA SAKTHIVEL S, SUJEET KUMAR
  • Publication number: 20240193475
    Abstract: Simulation data associated with a simulation test performed with respect to a first set of training data is obtained. Responsive to a determination that the obtained simulation data satisfies one or more criteria, a second set of training data is obtained, where a size of the second set of training data meets or exceeds a size of the first set of training data. A machine learning model is trained using the second set of training data.
    Type: Application
    Filed: February 16, 2024
    Publication date: June 13, 2024
    Inventors: Chetan Pitambar Bhole, Tanmay Khirwadkar, Sourabh Prakash Bansod, Sanjay Mangla, Deepak Ramamurthi Sivaramapuram Chandrasekaran
  • Patent number: 11907817
    Abstract: A simulation test is run on a first machine learning model trained using first training data historically collected over a time period. The first training data includes a set of training inputs and a set of target outputs. In response to a determination that a result of the simulation test run on the first machine learning model satisfies one or more criteria, a size of the set of target outputs of the first training data is determined. Second training data for training a second machine learning model is obtained. A size of a set of target outputs of the second training data meets or exceeds the size of the target outputs of the first training data. The second machine learning model is trained using the second training data.
    Type: Grant
    Filed: December 5, 2022
    Date of Patent: February 20, 2024
    Assignee: Google LLC
    Inventors: Chetan Pitambar Bhole, Tanmay Khirwadkar, Sourabh Prakash Bansod, Sanjay Mangla, Deepak Ramamurthi Sivaramapuram Chandrasekaran
  • Publication number: 20230102640
    Abstract: A simulation test is run on a first machine learning model trained using first training data historically collected over a time period. The first training data includes a set of training inputs and a set of target outputs. In response to a determination that a result of the simulation test run on the first machine learning model satisfies one or more criteria, a size of the set of target outputs of the first training data is determined. Second training data for training a second machine learning model is obtained. A size of a set of target outputs of the second training data meets or exceeds the size of the target outputs of the first training data. The second machine learning model is trained using the second training data.
    Type: Application
    Filed: December 5, 2022
    Publication date: March 30, 2023
    Inventors: Chetan Pitambar Bhole, Tanmay Khirwadkar, Sourabh Prakash Bansod, Sanjay Mangla, Deepak Ramamurthi Sivaramapuram Chandrasekaran
  • Patent number: 11521134
    Abstract: A system and method are disclosed for running a plurality of simulation tests on a first machine learning model to obtain a plurality of results that are each produced during a respective simulation test, the first machine learning model gradually trained using first training data historically collected over a period of time, the first training data comprising a plurality of first training data sets each including a subset of first training inputs and first target outputs associated with one of a plurality of points in time during the period of time, determining a simulation test of the plurality of simulation tests at which corresponding results of the first machine learning model satisfy a threshold condition, wherein the threshold condition is based on historical data at a first point in time of the plurality of points in time, identifying a first training data set of the plurality of first training data sets on which the first machine learning model used during the determined simulation test was trained,
    Type: Grant
    Filed: December 31, 2019
    Date of Patent: December 6, 2022
    Assignee: Google LLC
    Inventors: Chetan Pitambar Bhole, Tanmay Khirwadkar, Sourabh Prakash Bansod, Sanjay Mangla, Deepak Ramamurthi Sivaramapuram Chandrasekaran
  • Publication number: 20210201208
    Abstract: A system and method are disclosed for running a plurality of simulation tests on a first machine learning model to obtain a plurality of results that are each produced during a respective simulation test, the first machine learning model gradually trained using first training data historically collected over a period of time, the first training data comprising a plurality of first training data sets each including a subset of first training inputs and first target outputs associated with one of a plurality of points in time during the period of time, determining a simulation test of the plurality of simulation tests at which corresponding results of the first machine learning model satisfy a threshold condition, wherein the threshold condition is based on historical data at a first point in time of the plurality of points in time, identifying a first training data set of the plurality of first training data sets on which the first machine learning model used during the determined simulation test was trained,
    Type: Application
    Filed: December 31, 2019
    Publication date: July 1, 2021
    Inventors: Chetan Pitambar Bhole, Tanmay Khirwadkar, Sourabh Prakash Bansod, Sanjay Mangla, Deepak Ramamurthi Sivaramapuram Chandrasekaran