Patents by Inventor Srikrishna Sridhar

Srikrishna Sridhar 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: 20200193328
    Abstract: A device implementing a system for providing predicted RGB images includes at least one processor configured to obtain an infrared image of a subject, and to obtain a reference RGB image of the subject. The at least one processor is further configured to provide the infrared image and the reference RGB image to a machine learning model, the machine learning model having been trained to output predicted RGB images of subjects based on infrared images and reference RGB images of the subjects. The at least one processor is further configured to provide a predicted RGB image of the subject based on output by the machine learning model.
    Type: Application
    Filed: December 6, 2019
    Publication date: June 18, 2020
    Inventors: Carlos E. GUESTRIN, Leon A. GATYS, Shreyas V. JOSHI, Gustav M. LARSSON, Kory R. WATSON, Srikrishna SRIDHAR, Karla P. VEGA, Shawn R. SCULLY, Thorsten GERNOTH, Onur C. HAMSICI
  • Patent number: 10606566
    Abstract: The subject technology provides for generating machine learning (ML) model code from a ML document file, the ML document file being in a first data format, the ML document file being converted to code in an object oriented programming language different than the first data format. The subject technology further provides for receiving additional code that calls a function provided by the ML model code. The subject technology compiles the ML model code and the additional code, the compiled ML model code including object code corresponding to the compiled ML model code and the compiled additional code including object code corresponding to the additional code. The subject technology generates a package including the compiled ML model code and the compiled additional code. Further, the subject technology sends the package to a runtime environment on a target device for execution.
    Type: Grant
    Filed: September 29, 2017
    Date of Patent: March 31, 2020
    Assignee: APPLE INC.
    Inventors: Alexander B. Brown, Michael R. Siracusa, Gaurav Kapoor, Elizabeth A. Ottens, Christopher M. Hanson, Zachary A. Nation, Vrushali H. Mundhe, Srikrishna Sridhar
  • Publication number: 20190339784
    Abstract: Systems and processes for operating an intelligent automated assistant are provided. An example process includes detecting input representing motion of an electronic device and sampling an audio input with a microphone of the electronic device. The example process further includes determining, based on the audio input and the input representing motion of the electronic device, whether to initiate a virtual assistant session. In accordance with a determination to initiate the virtual assistant session, the example process includes initiating the virtual assistant session. In accordance with a determination not to initiate the virtual assistant session, the example process includes forgoing initiating the virtual assistant session.
    Type: Application
    Filed: July 11, 2018
    Publication date: November 7, 2019
    Inventors: Stephen O. LEMAY, Michael R. BASTIAN, Roman HOLENSTEIN, Minwoo JEONG, Charles MAALOUF, Brandon J. NEWENDORP, Heriberto NIETO, Timothy PAEK, Joanna PETERSON, Shawn SCULLY, Srikrishna SRIDHAR, Brandt M. WESTING, Shiwen ZHAO
  • Publication number: 20190286424
    Abstract: The subject technology transforms a machine learning model into a transformed machine learning model in accordance with a particular model specification when the machine learning model does not conform to the particular model specification, the particular model specification being compatible with an integrated development environment (IDE). The subject technology generates a code interface and code for the transformed machine learning model, the code interface including code statements in the object oriented programming language, the code statements corresponding to an object representing the transformed machine learning model. Further, the subject technology provides the generated code interface and the code for display in the IDE, the IDE enabling modifying of the generated code interface and the code.
    Type: Application
    Filed: June 3, 2019
    Publication date: September 19, 2019
    Inventors: Alexander B. BROWN, Michael R. SIRACUSA, Gaurav KAPOOR, Elizabeth OTTENS, Christopher M. HANSON, Zachary A. NATION, Vrushali MUNDHE, Srikrishna SRIDHAR
  • Patent number: 10310821
    Abstract: The subject technology provides for determining that a machine learning model in a first format includes sufficient data to conform to a particular model specification in a second format, the second format corresponding to an object oriented programming language. The subject technology transforms the machine learning model into a transformed machine learning model that is compatible with the particular model specification. The subject technology generates a code interface and code for the transformed machine learning model, the code interface including code statements in the object oriented programming language, the code statements corresponding to an object representing the transformed machine learning model. Further, the subject technology provides the generated code interface and the code for display in an integrated development environment (IDE), the IDE enabling modifying of the generated code interface and the code.
    Type: Grant
    Filed: September 29, 2017
    Date of Patent: June 4, 2019
    Assignee: APPLE INC.
    Inventors: Alexander B. Brown, Michael R. Siracusa, Gaurav Kapoor, Elizabeth Ottens, Christopher M. Hanson, Zachary A. Nation, Vrushali Mundhe, Srikrishna Sridhar
  • Publication number: 20190079962
    Abstract: The subject technology provides for generating a set of nodes representing a tree structure, each node comprising a feature index, a flag field indicating branch directions, an execution index storing locations related to the branch directions, and a feature value for comparing with the value stored in the input feature vector. The subject technology generates evaluation data, the evaluation data comprising a first array containing index values, and a second array containing evaluation values respectively corresponding to the index values, the evaluation data representing values of leaf nodes from the set of nodes. Further, the subject technology stores the set of nodes and the evaluation data as a contiguous block of data, where the set of nodes includes a first node and a second node, the second node corresponding to a likely execution path from the first node being physically stored adjacent to the first node.
    Type: Application
    Filed: December 21, 2017
    Publication date: March 14, 2019
    Inventors: Hoyt A. KOEPKE, Srikrishna SRIDHAR
  • Publication number: 20180349103
    Abstract: The subject technology provides for determining that a machine learning model in a first format includes sufficient data to conform to a particular model specification in a second format, the second format corresponding to an object oriented programming language. The subject technology transforms the machine learning model into a transformed machine learning model that is compatible with the particular model specification. The subject technology generates a code interface and code for the transformed machine learning model, the code interface including code statements in the object oriented programming language, the code statements corresponding to an object representing the transformed machine learning model. Further, the subject technology provides the generated code interface and the code for display in an integrated development environment (IDE), the IDE enabling modifying of the generated code interface and the code.
    Type: Application
    Filed: September 29, 2017
    Publication date: December 6, 2018
    Inventors: Alexander B. BROWN, Michael R. SIRACUSA, Gaurav KAPOOR, Elizabeth OTTENS, Christopher M. HANSON, Zachary A. NATION, Vrushali MUNDHE, Srikrishna SRIDHAR
  • Publication number: 20180349109
    Abstract: The subject technology provides for generating machine learning (ML) model code from a ML document file, the ML document file being in a first data format, the ML document file being converted to code in an object oriented programming language different than the first data format. The subject technology further provides for receiving additional code that calls a function provided by the ML model code. The subject technology compiles the ML model code and the additional code, the compiled ML model code including object code corresponding to the compiled ML model code and the compiled additional code including object code corresponding to the additional code. The subject technology generates a package including the compiled ML model code and the compiled additional code. Further, the subject technology sends the package to a runtime environment on a target device for execution.
    Type: Application
    Filed: September 29, 2017
    Publication date: December 6, 2018
    Inventors: Alexander B. BROWN, Michael R. SIRACUSA, Gaurav KAPOOR, Elizabeth A. OTTENS, Christopher M. HANSON, Zachary A. NATION, Vrushali H. MUNDHE, Srikrishna SRIDHAR
  • Publication number: 20160018962
    Abstract: The various embodiments described herein include methods, systems and/or devices used to visualize data. In one aspect, a method is performed by a computing system having one or more processors and memory. The method includes (1) receiving a request from a user to visualize data, the data stored in a graph dataflow processing system, and (2) in response to the request, invoking an interactive graphical user interface (GUI) for display to the user, the GUI including a first set of visualization data corresponding to a first subset of the data.
    Type: Application
    Filed: July 20, 2015
    Publication date: January 21, 2016
    Inventors: Yucheng Low, Tim Muss, Zach Nation, Eric Wolfe, Brian Kent, Chris DuBois, Alice Zheng, Ping Wang, Srikrishna Sridhar, Carlos Guestrin