Patents by Inventor Thiagarajan Ramakrishnan

Thiagarajan Ramakrishnan 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: 11895101
    Abstract: The described technology is generally directed towards a machine learning development hub, and corresponding methods and computer readable media. The machine learning development hub can comprise a machine learning development platform complete with various tools for various stages of machine learning development. The machine learning development hub can furthermore comprise translation functions to translate received inputs into inputs to other machine learning development platforms. The machine learning development hub can collect credentials for the other machine learning development platforms and can connect to the other machine learning development platforms via their respective interfaces, in order to supply inputs and instructions thereto. The machine learning development hub can encrypt its communications to other machine learning development platforms to secure its interactions.
    Type: Grant
    Filed: November 22, 2021
    Date of Patent: February 6, 2024
    Assignee: DELL PRODUCTS, L.P.
    Inventors: Francisco Garcia Montemayor, Leandro Lopes, Thiagarajan Ramakrishnan, Robert Mujica
  • Patent number: 11520756
    Abstract: Improved techniques for processing large-scale data and various large-scale data applications (e.g., large-scale Data Mining (DM), large-scale data analysis (LSDA)) in computing systems (e.g., Data Information Systems, Database Systems) are disclosed. Redundancy-reduced data (RRDS) can be provided as data that can be used more efficiently by various applications, especially, large-scale data applications. In doing so, at least one assumption about the distribution of a multi-dimensional data set (MDDS) and its corresponding set of responses (Y) can be made in order to reduce the multi-dimensional data set (MDDS). For example, a normal distribution (e.g.
    Type: Grant
    Filed: December 23, 2019
    Date of Patent: December 6, 2022
    Assignee: Teradata US, Inc.
    Inventors: Choudur K. Lakshminarayan, Thiagarajan Ramakrishnan, Awny Kayed Al-Omari
  • Publication number: 20210191912
    Abstract: Improved techniques for reducing the size of data of the multidimensional data are disclosed. The improved techniques are highly suitable for processing large-scale data and various large-scale data applications (e.g., large-scale Data Mining (DM), large-scale data analysis (LSDA) in computing systems (e.g., Data Information Systems, Database Systems). Redundancy-reduced data can be provided (RRDS) thereby providing data that can be used more efficiently by various applications, especially, large-scale data applications. At least one assumption about the distribution of a multi-dimensional data set (MDDS) and its corresponding set of responses (Y) can be made in order to reduce the multi-dimensional data set (MDDS). It should be noted that the assumption can be made after effectively combining multi-dimensional data set (MDDS) and its corresponding set of responses (Y) so that the set of responses (Y) can also be in considered in effectively reducing the size of the multi-dimensional data set (MDDS).
    Type: Application
    Filed: December 23, 2019
    Publication date: June 24, 2021
    Applicant: Teradata US, Inc.
    Inventors: Choudur K. Lakshminarayan, Thiagarajan Ramakrishnan, Awny Kayed Al-Omari