Patents by Inventor Ajith Govind

Ajith Govind 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: 20230367922
    Abstract: A method and system for an accelerated design of a virtual product formulation based on an expert-enhanced quantitative formulation network includes sourcing qualitative expert formulation; creating a qualitative formulation network; extracting qualitative network-expansion data based on a category associated with a target product associated with the qualitative formulation network, creating a second set of network components including formulation variable nodes and formulation edge connections; integrating the second set of network components into the qualitative formulation network; transforming the qualitative formulation network integrated with the second set of network components to a quantitative formulation network; designing at least part of a virtual product formulation based on the quantitative formulation network; and generating a target formulation proposal that likely satisfies the target formulation objective based on executing the virtual product formulation as initialized.
    Type: Application
    Filed: July 21, 2023
    Publication date: November 16, 2023
    Inventors: Manmit Shrimali, Ajith Govind, Michael L. Thompson
  • Patent number: 11783103
    Abstract: A method and system for implementing one or more machine learning models for accelerating formulation design for a target product that includes converting an unsupervised formulation network model to a supervised formulation network model, deriving an outcome-contributory value for each of a plurality of distinct design variables of the supervised formulation network, identifying a dependency connection between each of a plurality of distinct pairs of distinct design variables, computing a strength of connection metric value for each of the plurality of distinct pairs of distinct design variables; and generating, via a graphical user interface, a graphical rendering of the supervised formulation model that may be manipulated to accelerate for design of a proposed formulation for a target physical product.
    Type: Grant
    Filed: February 2, 2023
    Date of Patent: October 10, 2023
    Assignee: Turing Labs, Inc.
    Inventors: Ajith Govind, Manmit Shrimali, Michael L. Thompson
  • Patent number: 11748529
    Abstract: A method and system for an accelerated design of a virtual product formulation based on an expert-enhanced quantitative formulation network includes sourcing qualitative expert formulation; creating a qualitative formulation network; extracting qualitative network-expansion data based on a category associated with a target product associated with the qualitative formulation network, creating a second set of network components including formulation variable nodes and formulation edge connections; integrating the second set of network components into the qualitative formulation network; transforming the qualitative formulation network integrated with the second set of network components to a quantitative formulation network; designing at least part of a virtual product formulation based on the quantitative formulation network; and generating a target formulation proposal that likely satisfies the target formulation objective based on executing the virtual product formulation as initialized.
    Type: Grant
    Filed: November 1, 2022
    Date of Patent: September 5, 2023
    Assignee: Turing Labs, Inc.
    Inventors: Manmit Shrimali, Ajith Govind, Michael L. Thompson
  • Publication number: 20230259822
    Abstract: A method and system for adaptively generating experimental product formulations for accelerating a formulation design of a target product includes constructing a formulation objective function based on a plurality of distinct product-informative formulation parameters of the target product; generating, via a formula-generating machine learning model, a distinct set of product formulation parameter values based on the formulation objective function; constructing a corpus of experimental findings data based on the distinct set of product formulation parameter values generated by the formula-generating machine learning model; automatically adapting the formula-generating machine learning model based on the corpus of experimental findings that accelerate the formulation design of the target product; and generating, via the adapted formula-generating machine learning model, an adapted set of product formulation parameter values that satisfies the one or more formulation objectives thereby enabling an accelerated c
    Type: Application
    Filed: February 9, 2023
    Publication date: August 17, 2023
    Inventors: Michael L. Thompson, Manmit Shrimali, Ajith Govind
  • Publication number: 20230244838
    Abstract: A method and system for implementing one or more machine learning models for accelerating formulation design for a target product that includes converting an unsupervised formulation network model to a supervised formulation network model, deriving an outcome-contributory value for each of a plurality of distinct design variables of the supervised formulation network, identifying a dependency connection between each of a plurality of distinct pairs of distinct design variables, computing a strength of connection metric value for each of the plurality of distinct pairs of distinct design variables; and generating, via a graphical user interface, a graphical rendering of the supervised formulation model that may be manipulated to accelerate for design of a proposed formulation for a target physical product.
    Type: Application
    Filed: February 2, 2023
    Publication date: August 3, 2023
    Inventors: Ajith Govind, Manmit Shrimali, Michael L. Thompson