Patents by Inventor Nair Raghunath Eledath

Nair Raghunath Eledath 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: 20230376869
    Abstract: An approach for optimizing workspace allocation. The approach receives a request for workspace seats based on an associated workspace floor plan. The approach annotates the floor plan based on occupied and unoccupied seats and their owning organizational component, non-movable spaces, and walkways. The approach overlays the floorplan with a grid, creates groups based on seat clusters, and annotates the groups based on owning component. The approach determines an optimal assignment of seats based on predefined constraints, vacant seat locations and distances between component groups and vacant seats based on a distance calculation.
    Type: Application
    Filed: May 19, 2022
    Publication date: November 23, 2023
    Inventors: Liyan Fang, Mansoor Ahmed, Sattwati Kundu, Nair Raghunath Eledath
  • Patent number: 11763196
    Abstract: Methods, systems and computer readable media are provided for configuring machine learning systems to automatically and dynamically select a machine learning model based on statistical profiling of received data to improve machine learning applications for high variance data. Data is received from a system in operation. A profile is computed for the received data. A database comprising a plurality of stored profiles for a dataset is accessed, wherein each stored profile corresponds to a distinct pattern identified in the dataset. The computed profile is compared to each of the stored profiles to determine whether the computed profile matches one or more of the stored profiles. When one or more stored profiles match the computed profile, a matching profile is selected by the machine learning system. The received data is processed using a ML model associated with the matching profile.
    Type: Grant
    Filed: March 25, 2020
    Date of Patent: September 19, 2023
    Assignee: International Business Machines Corporation
    Inventors: Sattwati Kundu, Nair Raghunath Eledath, Mansoor Ahmed, Geetha Adinarayan
  • Patent number: 11288155
    Abstract: A computer-implemented method, system and computer program product for identifying anomalies in data during a data outage. An anomaly detection model is built using data received from a sensor at a characterized granularity. Once a period of service occurs following a data outage, a quantum of missing data during the data outage is identified using predictive modeling if the data during the data outage is not available at the granularity in which the anomaly detection model is built. The identified quantum of missing data is retrofitted into a predicted pattern during the data outage and the analytics are then re-run on the retrofitted quantum of missing data in the predicted pattern to identify anomalies during the data outage. In this manner, anomalies in data, such as data from sensor readings, can be identified during the data outage thereby enabling the model to provide more accurate predictions of anomalies occurring during the data outage.
    Type: Grant
    Filed: December 19, 2020
    Date of Patent: March 29, 2022
    Assignee: International Business Machines Corporation
    Inventors: Mansoor Ahmed, Sattwati Kundu, Nair Raghunath Eledath, Geetha Adinarayan
  • Patent number: 11221934
    Abstract: A computer-implemented method, system and computer program product for identifying anomalies in data during a data outage. An anomaly detection model is built using data received from a sensor at a characterized granularity. Once a period of service occurs following a data outage, a quantum of missing data during the data outage is identified using predictive modeling if the data during the data outage is not available at the granularity in which the anomaly detection model is built. The identified quantum of missing data is retrofitted into a predicted pattern during the data outage and the analytics are then re-run on the retrofitted quantum of missing data in the predicted pattern to identify anomalies during the data outage. In this manner, anomalies in data, such as data from sensor readings, can be identified during the data outage thereby enabling the model to provide more accurate predictions of anomalies occurring during the data outage.
    Type: Grant
    Filed: January 10, 2020
    Date of Patent: January 11, 2022
    Assignee: International Business Machines Corporation
    Inventors: Mansoor Ahmed, Sattwati Kundu, Nair Raghunath Eledath, Geetha Adinarayan
  • Publication number: 20210304057
    Abstract: Methods, systems and computer readable media are provided for configuring machine learning systems to automatically and dynamically select a machine learning model based on statistical profiling of received data to improve machine learning applications for high variance data. Data is received from a system in operation. A profile is computed for the received data. A database comprising a plurality of stored profiles for a dataset is accessed, wherein each stored profile corresponds to a distinct pattern identified in the dataset. The computed profile is compared to each of the stored profiles to determine whether the computed profile matches one or more of the stored profiles. When one or more stored profiles match the computed profile, a matching profile is selected by the machine learning system. The received data is processed using a ML model associated with the matching profile.
    Type: Application
    Filed: March 25, 2020
    Publication date: September 30, 2021
    Inventors: Sattwati Kundu, Nair Raghunath Eledath, Mansoor Ahmed, GEETHA Adinarayan
  • Publication number: 20210216423
    Abstract: A computer-implemented method, system and computer program product for identifying anomalies in data during a data outage. An anomaly detection model is built using data received from a sensor at a characterized granularity. Once a period of service occurs following a data outage, a quantum of missing data during the data outage is identified using predictive modeling if the data during the data outage is not available at the granularity in which the anomaly detection model is built. The identified quantum of missing data is retrofitted into a predicted pattern during the data outage and the analytics are then re-run on the retrofitted quantum of missing data in the predicted pattern to identify anomalies during the data outage. In this manner, anomalies in data, such as data from sensor readings, can be identified during the data outage thereby enabling the model to provide more accurate predictions of anomalies occurring during the data outage.
    Type: Application
    Filed: December 19, 2020
    Publication date: July 15, 2021
    Inventors: Mansoor Ahmed, Sattwati Kundu, Nair Raghunath Eledath, Geetha Adinarayan
  • Publication number: 20210216422
    Abstract: A computer-implemented method, system and computer program product for identifying anomalies in data during a data outage. An anomaly detection model is built using data received from a sensor at a characterized granularity. Once a period of service occurs following a data outage, a quantum of missing data during the data outage is identified using predictive modeling if the data during the data outage is not available at the granularity in which the anomaly detection model is built. The identified quantum of missing data is retrofitted into a predicted pattern during the data outage and the analytics are then re-run on the retrofitted quantum of missing data in the predicted pattern to identify anomalies during the data outage. In this manner, anomalies in data, such as data from sensor readings, can be identified during the data outage thereby enabling the model to provide more accurate predictions of anomalies occurring during the data outage.
    Type: Application
    Filed: January 10, 2020
    Publication date: July 15, 2021
    Inventors: Mansoor Ahmed, Sattwati Kundu, Nair Raghunath Eledath, Geetha Adinarayan