Patents by Inventor Nisarg Vyas

Nisarg Vyas 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: 11861263
    Abstract: This specification is generally directed to techniques for robust natural language (NL) based control of computer applications. In many implementations, the NL control is at least selectively interactive in that the user feedback input is solicited, and received, in resolving action(s), resolving action set(s), generating domain specific knowledge, and/or in providing feedback on implemented action set(s). The user feedback input can be utilized in further training of machine learning model(s) utilized in the NL based control of the computer applications.
    Type: Grant
    Filed: June 22, 2022
    Date of Patent: January 2, 2024
    Assignee: X DEVELOPMENT LLC
    Inventors: Thomas Hunt, David Andre, Nisarg Vyas, Rebecca Radkoff, Rishabh Singh
  • Publication number: 20230359789
    Abstract: As opposed to a rigid approach, implementations disclosed herein utilize a flexible approach in automatically determining an action set to utilize in attempting performance of a task that is requested by natural language input of a user. The approach is flexible at least in that embedding technique(s) and/or action model(s), that are utilized in generating action set(s) from which the action set to utilize is determined, are at least selectively varied. Put another way, implementations leverage a framework via which different embedding technique(s) and/or different action model(s) can at least selectively be utilized in generating different candidate action sets for given NL input of a user. Further, one of those action sets can be selected for actual use in attempting real-world performance of a given task reflected by the given NL input. The selection can be based on a suitability metric for the selected action set and/or other considerations.
    Type: Application
    Filed: May 2, 2023
    Publication date: November 9, 2023
    Inventors: David Andre, Rishabh Singh, Rebecca Radkoff, Yu-Ann Madan, Nisarg Vyas, Jayendra Parmar, Falak Shah, Shaili Trivedi
  • Publication number: 20230170059
    Abstract: Computer-implemented methods may include accessing a multi-dimensional embedding space that supports relating embeddings of molecules to predicted values of a given property of the molecules. The method may also include identifying one or more points of interest within the embedding space based on the predicted values. Each of the one or more points of interest may include a set of coordinate values within the multi-dimensional embedding space and may be associated with a corresponding predicted value of the given property. The method may further include generating, for each of the one or more points of interest, a structural representation of a molecule by transforming the set of coordinate values included in the point of interest using a decoder network. The method may include outputting a result that identifies, for each of the one or more points of interest, the structural representation of the molecule corresponding to the point of interest.
    Type: Application
    Filed: October 17, 2022
    Publication date: June 1, 2023
    Inventors: Tusharkumar Gadhiya, Falak Shah, Nisarg Vyas, Julia Yang, Vahe Gharakhanyan, Alexander Holiday
  • Publication number: 20230167264
    Abstract: Computer-implemented methods may include accessing a predictive function. The predictive function may be configured to receive a partial or complete bond string and position (BSP) representation of a molecule of a reactant ionic liquid, where the representation identifies relative positions of atoms in the molecule. The predictive function may be configured to predict a reaction-characteristic value that characterizes a reaction between the ionic liquid and a particular polymer. The predictive function may be generated using training data corresponding to a set of molecules that were selected using Bayesian optimization, one or more previous versions of the predictive function, and experimentally derived reaction-characteristic values characterizing reactions between the molecules and the particular polymer. The method may also include identifying a particular ionic liquid as a prospect for depolymerizing the particular polymer based on the predictive function.
    Type: Application
    Filed: October 17, 2022
    Publication date: June 1, 2023
    Inventors: Tusharkumar Gadhiya, Falak Shah, Nisarg Vyas, Vahe Gharakhanyan, Julia Yang, Alexander Holiday
  • Patent number: 11487522
    Abstract: Training and/or utilization of a neural decompiler that can be used to generate, from a lower-level compiled representation, a target source code snippet in a target programming language. In some implementations, the lower-level compiled representation is generated by compiling a base source code snippet that is in a base programming language, thereby enabling translation of the base programming language (e.g., C++) to a target programming language (e.g., Python). In some of those implementations, output(s) from the neural decompiler indicate canonical representation(s) of variables. Technique(s) can be used to match those canonical representation(s) to variable(s) of the base source code snippet. In some implementations, multiple candidate target source code snippets are generated using the neural decompiler, and a subset (e.g., one) is selected based on evaluation(s).
    Type: Grant
    Filed: May 12, 2021
    Date of Patent: November 1, 2022
    Assignee: X DEVELOPMENT LLC
    Inventors: Rishabh Singh, Nisarg Vyas, Jayendra Parmar, Dhara Kotecha, Artem Goncharuk, David Andre
  • Publication number: 20150282767
    Abstract: Systems and methods for non-invasively determining parameters related to blood glucose are disclosed. Embodiments are disclosed wherein a wearable sensor device comprises non-invasive sensors generating various sensed data which is then utilized to determine a glucose-related parameter.
    Type: Application
    Filed: October 28, 2014
    Publication date: October 8, 2015
    Applicant: BodyMedia, Inc.
    Inventors: John M. Stivoric, Eric Teller, David Andre, Nisarg Vyas, Jonathan Farringdon, Donna Wolf, Christopher Pacione, Suresh Vishnubhatla, Scott Safier, Raymond Pelletier
  • Publication number: 20140343370
    Abstract: Systems and methods for non-invasively determining parameters related to blood glucose are disclosed. Embodiments are disclosed wherein a wearable sensor device comprises non-invasive sensors generating various sensed data which is then utilized to determine a glucose-related parameter.
    Type: Application
    Filed: April 14, 2014
    Publication date: November 20, 2014
    Inventors: John M. Stivoric, Eric Teller, David Andre, Nisarg Vyas, Jonathan Farringdon, Donna Wolf, Christopher Pacione, Suresh Vishnubhatla, Scott Safier, Raymond Pelletier
  • Patent number: 8870766
    Abstract: Systems and methods for non-invasively determining parameters related to blood glucose are disclosed. Embodiments are disclosed wherein a wearable sensor device comprises non-invasive sensors generating various sensed data which is then utilized to determine a glucose-related parameter.
    Type: Grant
    Filed: November 8, 2011
    Date of Patent: October 28, 2014
    Assignee: BodyMedia, Inc.
    Inventors: John M. Stivoric, Eric Teller, David Andre, Nisarg Vyas, Jonathan Farringdon, Donna Wolf, Christopher Pacione, Suresh Vishnubhatla, Scott Safier, Raymond Pelletier
  • Publication number: 20120149996
    Abstract: Systems and methods for non-invasively determining parameters related to blood glucose are disclosed. Embodiments are disclosed wherein a wearable sensor device comprises non-invasive sensors generating various sensed data which is then utilized to determine a glucose-related parameter.
    Type: Application
    Filed: November 8, 2011
    Publication date: June 14, 2012
    Inventors: John M. Stivoric, Eric Teller, David Andre, Nisarg Vyas, Jonathan Farringdon, Donna Wolf, Christopher Pacione, Suresh Vishnubhatla, Scott Safier, Ray Pelletier
  • Publication number: 20120123232
    Abstract: The present invention relates to advanced signal processing methods including digital wavelet transformation to analyze heart-related electronic signals and extract features that can accurately identify various states of the cardiovascular system. The invention may be utilized to estimate the extent of blood volume loss, distinguish blood volume loss from physiological activities associated with exercise, and predict the presence and extent of cardiovascular disease in general.
    Type: Application
    Filed: December 16, 2009
    Publication date: May 17, 2012
    Inventors: Kayvan Najarian, David Andre, Kevin Ward, Nisarg Vyas, Eric Teller, John M. Stivoric, Jonathan Farringdon, Scott K. Boehmke, Gregory Kovacs, James Gabarro, Christopher Kasabach, Soo-Yeon Ji, Abel Al Raoff, Raymond Pelletier
  • Publication number: 20090177068
    Abstract: Various methods and apparatuses for measuring a state parameter of an individual using signals based on one or more sensors are disclosed. In one embodiment, a first set of signals is used in a first function to determine how a second set of signals is used in one or more second functions to predict the state parameter. In another embodiment, first and second functions are used where the state parameter or an indicator of the state parameter may be obtained from a relationship between the first function and the second function. The state parameter may, for example, include blood glucose levels, calories consumed or calories burned by the individual. Various methods for making such apparatuses are also disclosed.
    Type: Application
    Filed: July 2, 2008
    Publication date: July 9, 2009
    Inventors: John M. Stivoric, Eric Teller, David Andre, Nisarg Vyas, Jonathan Farringdon, Donna Wolf, Christopher Pacione, Suresh Vishnubhatla, Scott Safier, Ray Pelletier