Patents by Inventor Jay Almarode

Jay Almarode 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: 10783439
    Abstract: A framework and interface for invoking and assimilating external algorithms and interacting with said algorithms in-session and real-time are described herein. An example embodiment also includes reproducible, updatable nodes that can be leveraged for data-driven analysis whereby the data itself can direct the algorithm choice, variables, and presentation leading to iteration and optimization in an analysis workflow. With example embodiments, an entire discovery or diagnosis process may be executed on a particular data set, thereby divorcing the discovery or diagnosis process from a specific data set such that the same discovery or diagnosis process, phenotype identification, and visualizations may be repeated on future experiments, published, validated, or shared with another investigator.
    Type: Grant
    Filed: May 9, 2016
    Date of Patent: September 22, 2020
    Assignee: FlowJo, LLC
    Inventors: Maciej Simm, Jay Almarode, Michael D. Stadnisky
  • Patent number: 10713572
    Abstract: A framework and interface for invoking and assimilating external algorithms and interacting with said algorithms in-session and real-time are described herein. An example embodiment also includes reproducible, updatable nodes that can be leveraged for data-driven analysis whereby the data itself can direct the algorithm choice, variables, and presentation leading to iteration and optimization in an analysis workflow. With example embodiments, an entire discovery or diagnosis process may be executed on a particular data set, thereby divorcing the discovery or diagnosis process from a specific data set such that the same discovery or diagnosis process, phenotype identification, and visualizations may be repeated on future experiments, published, validated, or shared with another investigator.
    Type: Grant
    Filed: May 9, 2016
    Date of Patent: July 14, 2020
    Assignee: FlowJo, LLC
    Inventors: Maciej Simm, Jay Almarode, Michael D. Stadnisky
  • Patent number: 10616219
    Abstract: Disclosed herein are a number of example embodiments for data management and analysis in connection with life science operations such as flow cytometry. For example, disclosed herein are (1) a networked link between an acquisition computer and a computer performing analysis on the acquired data, (2) modular experiment templates that can be divided into individual components for future use in multiple experiments, and (3) an automated pipeline of experiment elements.
    Type: Grant
    Filed: December 9, 2015
    Date of Patent: April 7, 2020
    Assignee: FlowJo, LLC
    Inventors: Michael D. Stadnisky, Jay Almarode
  • Patent number: 10438120
    Abstract: A framework and interface for invoking and assimilating external algorithms and interacting with the algorithms in-session and real-time are described. Embodiments include reproducible, updatable nodes that can be leveraged for data-driven analysis whereby the data itself can direct the algorithm choice, variables, and presentation leading to iteration and optimization in an analysis workflow. Embodiments include an entire discovery or diagnosis process executed on a particular data set, thereby divorcing the discovery or diagnosis process from a specific data set such that the same discovery or diagnosis process, phenotype identification, and visualizations may be repeated on future experiments, published, validated, or shared with another investigator.
    Type: Grant
    Filed: May 9, 2016
    Date of Patent: October 8, 2019
    Assignee: FLOWJO, LLC
    Inventors: Maciej Simm, Jay Almarode, Michael D. Stadnisky
  • Publication number: 20160328516
    Abstract: A framework and interface for invoking and assimilating external algorithms and interacting with said algorithms in-session and real-time are described herein. An example embodiment also includes reproducible, updatable nodes that can be leveraged for data-driven analysis whereby the data itself can direct the algorithm choice, variables, and presentation leading to iteration and optimization in an analysis workflow. With example embodiments, an entire discovery or diagnosis process may be executed on a particular data set, thereby divorcing the discovery or diagnosis process from a specific data set such that the same discovery or diagnosis process, phenotype identification, and visualizations may be repeated on future experiments, published, validated, or shared with another investigator.
    Type: Application
    Filed: May 9, 2016
    Publication date: November 10, 2016
    Inventors: Maciej Simm, Jay Almarode, Michael D. Stadnisky
  • Publication number: 20160328649
    Abstract: A framework and interface for invoking and assimilating external algorithms and interacting with said algorithms in-session and real-time are described herein. An example embodiment also includes reproducible, updatable nodes that can be leveraged for data-driven analysis whereby the data itself can direct the algorithm choice, variables, and presentation leading to iteration and optimization in an analysis workflow. With example embodiments, an entire discovery or diagnosis process may be executed on a particular data set, thereby divorcing the discovery or diagnosis process from a specific data set such that the same discovery or diagnosis process, phenotype identification, and visualizations may be repeated on future experiments, published, validated, or shared with another investigator.
    Type: Application
    Filed: May 9, 2016
    Publication date: November 10, 2016
    Inventors: Maciej Simm, Jay Almarode, Michael D. Stadnisky
  • Publication number: 20160328249
    Abstract: A framework and interface for invoking and assimilating external algorithms and interacting with said algorithms in-session and real-time are described herein. An example embodiment also includes reproducible, updatable nodes that can be leveraged for data-driven analysis whereby the data itself can direct the algorithm choice, variables, and presentation leading to iteration and optimization in an analysis workflow. With example embodiments, an entire discovery or diagnosis process may be executed on a particular data set, thereby divorcing the discovery or diagnosis process from a specific data set such that the same discovery or diagnosis process, phenotype identification, and visualizations may be repeated on future experiments, published, validated, or shared with another investigator.
    Type: Application
    Filed: May 9, 2016
    Publication date: November 10, 2016
    Inventors: Maciej Simm, Jay Almarode, Michael D. Stadnisky
  • Publication number: 20160170980
    Abstract: Disclosed herein are a number of example embodiments for data management and analysis in connection with life science operations such as flow cytometry. For example, disclosed herein are (1) a networked link between an acquisition computer and a computer performing analysis on the acquired data, (2) modular experiment templates that can be divided into individual components for future use in multiple experiments, and (3) an automated pipeline of experiment elements.
    Type: Application
    Filed: December 9, 2015
    Publication date: June 16, 2016
    Inventors: Michael D. Stadnisky, Jay Almarode