Patents by Inventor MRIDUL BALARAMAN

MRIDUL BALARAMAN 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: 20240119349
    Abstract: A method of optimizing training of a machine learning model is disclosed. The method may include receiving an input training data using an optimization device. The input training data may include a plurality of training data samples. Further, a set of relevant training data samples from the input training data may be identified. The method may use the optimization device to select a suitable type and configuration of a machine learning model from a plurality of types and configurations of machine learning models for processing the set of relevant training data samples. Furthermore, the method may validate the set of relevant training data samples.
    Type: Application
    Filed: March 15, 2022
    Publication date: April 11, 2024
    Inventors: Sukant DEBNATH, Mridul BALARAMAN, Ishita DAS, Madhusudan SINGH, Guneet Singh TANDON
  • Publication number: 20240111814
    Abstract: A method of selecting samples to represent a cluster is disclosed. The method may include receiving one or more clusters by an optimization device. Each of the one or more clusters may include a plurality of samples. The method may determine a count of number of samples to be selected from each of the one or more clusters and may generate an array-based distance matrix for each of the one or more clusters. The method may sort the plurality of samples of the cluster based on a degree of variability of the plurality of samples in the cluster. The sorting may be performed using the array-based distance matrix for each of the one or more clusters. Further, the method may select the determined count of number of samples from the sorted plurality of samples of each of the plurality of clusters to represent the cluster.
    Type: Application
    Filed: March 15, 2022
    Publication date: April 4, 2024
    Inventors: Ishita DAS, Madhusudan SINGH, Mridul BALARAMAN, Sukant DEBNATH, Mrinal GUPTA
  • Publication number: 20240104144
    Abstract: Method (400) and system for clustering data samples is disclosed. The method (400) may include receiving (402) a plurality of batches, each of the plurality of batches including a plurality of samples, and creating (404) a set of clusters from a first batch of the plurality of batches, using a clustering technique. Each cluster of the set of clusters may include one or more samples. The one or more samples are determined based on variability of the one or more samples and cluster attributes associated with each cluster. The method may further include reconfiguring (406) the set of clusters that includes at least one of: repopulating (400A) the existing set of clusters with samples from remaining batches of the plurality of batches; and adding (400B) a new set of clusters to the existing set of clusters and populating the new set of clusters with samples from the remaining batches.
    Type: Application
    Filed: March 18, 2022
    Publication date: March 28, 2024
    Inventors: Ishita DAS, Madhusudan SINGH, Mridul BALARAMAN, Sukant DEBNATH
  • Publication number: 20230185835
    Abstract: Disclosed herein is system and method for examining relevancy of documents. The system, based on request from the user extracts documents from one or more data sources. The system then obtains from the user, user intention information and user queries. The system then analyses each document with respect to user intention information in order to determine a relevancy level of each document. The relevancy level is indicated in the form of a ranking score. The system ranks and displays the documents to the user in the order of their scores. The system also highlights important excerpts from the documents and provides one or more responses to the one or more user queries submitted by the user for each and every document. Based on the received responses, user provides feedback for further training the system, thereby achieving better accuracy.
    Type: Application
    Filed: February 2, 2023
    Publication date: June 15, 2023
    Inventors: ANKIT MALVIYA, MADHUSUDAN SINGH, MRIDUL BALARAMAN, PRAKHAR SRIVASTAVA
  • Publication number: 20220067585
    Abstract: A method and device for identifying machine learning models for detecting entities is disclosed. The method includes identifying a first entity from within data. A machine learning model trained to identify the first entity is absent in a plurality of machine learning models. The method may include extracting a first set of entity attributes associated with the first entity and matching the first set of entity attributes with each of a plurality of second set of entity attributes. The method may further comprises identifying a second entity from the set of second entities based on the matching. Similarity between a second set of entity attributes associated with the second entity and the first set of entity attributes is above a similarity threshold. The method may include retraining a machine learning model associated with the second entity to identify the first entity based on the first set of entity attributes.
    Type: Application
    Filed: December 30, 2019
    Publication date: March 3, 2022
    Inventors: MRIDUL BALARAMAN, MADHUSUDAN SINGH, MRINAL GUPTA, VIDYA SURESH, KARTIK NIVRITTI KADAM, NIRMAL VENKATA RAMESH RAYULU VANAPALLI
  • Publication number: 20220004921
    Abstract: A method and a device for creating and training machine learning models is disclosed. In an embodiment, a method for training a machine learning model for identifying entities from data includes creating a first plurality of clusters from a first plurality of data samples in a first dataset and a second plurality of clusters from a second plurality of data samples in a second dataset. The method further includes determining a rank for each of the first plurality of clusters and a rank for each of the second plurality of clusters. The method includes retraining the machine learning model using at least one of the first plurality of clusters weighted based on the rank determined for each of the first plurality of clusters and at least one of the second plurality of clusters weighted based on the rank determined for each of the second plurality of clusters.
    Type: Application
    Filed: September 28, 2019
    Publication date: January 6, 2022
    Inventors: MRIDUL BALARAMAN, MADHUSUDAN SINGH, AMIT KUMAR, MRINAL GUPTA, VIDYA SURESH, BHUPINDER SINGH, KARTIK NIVRITTI KADAM
  • Publication number: 20180349110
    Abstract: The method and system of present disclosure relate to facilitating identification of a layout of user interface. The method includes receiving plurality of screenshots of plurality of user-interfaces. From each of the plurality of screenshots, text elements and their corresponding actionable elements axe extracted. Further, the system identifies properties of the actionable elements in each of the plurality of screenshots which indicates the functionality of the actionable elements. Based on the properties, the system further associates the text elements, of one screenshot associated with one user-interface, with the actionable elements, of another screenshot associated with another user-interface. Further, the system creates clusters text elements and the one or more actionable elements based on the association. The clusters facilitate in the identification of the layout of the user interface.
    Type: Application
    Filed: July 19, 2017
    Publication date: December 6, 2018
    Inventors: Krishna PRASAD YELLAPRAGADA, VEENA SRIKANTH RAJE URS, MRIDUL BALARAMAN, RAMPRASAD KANAKATTE RAMANNA, VINUTHA BANGALORE NARAYANMURTHY