Patents by Inventor Paul Leeman

Paul Leeman 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: 20240051193
    Abstract: A molded fiber part former includes a first forming mold defining a first mold area and at least one fluid inlet. The molded fiber part former also includes a wall substantially surrounding the first mold area. The molded fiber part former includes a fluid channel disposed adjacent to and surrounding the wall, wherein the channel is fluidically connected to the at least one fluid inlet and defines a fluid channel outlet.
    Type: Application
    Filed: August 28, 2023
    Publication date: February 15, 2024
    Inventors: Pablo Gonzalez, Paul Leeman
  • Publication number: 20240051194
    Abstract: A molded fiber part former includes a first forming mold defining a first mold area and at least one fluid inlet. The molded fiber part former also includes a wall substantially surrounding the first mold area. The molded fiber part former includes a fluid channel disposed adjacent to and surrounding the wall, wherein the channel is fluidically connected to the at least one fluid inlet and defines a fluid channel outlet.
    Type: Application
    Filed: July 18, 2023
    Publication date: February 15, 2024
    Applicant: Zume, Inc.
    Inventors: Pablo Gonzalez, Paul Leeman
  • Publication number: 20230364831
    Abstract: This disclosure describes systems and methods for creating porous molds using additive manufacturing processes such as three-dimensional (3D) printing. At a high level, it has been found that creating a generally porous mold, or a mold with porous regions or zones, can improve the performance of the mold and the quality of the parts created therefrom. It has further been determined that porous molds can be created using additive manufacturing techniques through manipulation of mold manufacturing parameters such as, but not limited to, layer thickness, number of perimeter layers, fill pattern, and fill density. Through variation of these manufacturing parameters, the porosity of a mold created by an additive manufacturing device, e.g., a 3D printer, can be tailored for use with molded fiber.
    Type: Application
    Filed: September 29, 2021
    Publication date: November 16, 2023
    Applicant: Zume, Inc.
    Inventors: Joshua Gouled GOLDBERG, George David SUAREZ, Paul LEEMAN, Daniel Noah PALEY
  • Patent number: 11738485
    Abstract: A molded fiber part former includes a first forming mold defining a first mold area and at least one fluid inlet. The molded fiber part former also includes a wall substantially surrounding the first mold area. The molded fiber part former includes a fluid channel disposed adjacent to and surrounding the wall, wherein the channel is fluidically connected to the at least one fluid inlet and defines a fluid channel outlet.
    Type: Grant
    Filed: November 11, 2020
    Date of Patent: August 29, 2023
    Assignee: Zume, Inc.
    Inventors: Pablo Gonzalez, Paul Leeman
  • Patent number: 11501084
    Abstract: In one example, a system can execute a first machine-learning model to determine an overall classification for a textual dataset. The system can also determine classification scores indicating the level of influence that each token in the textual dataset had on the overall classification. The system can select a first subset of the tokens based on their classification scores. The system can also execute a second machine-learning model to determine probabilities that the textual dataset falls into various categories. The system can determine category scores indicating the level of influence that each token had on a most-likely category determination. The system can select a second subset of the tokens based on their category scores. The system can then generate a first visualization depicting the first subset of tokens color-coded to indicate their classification scores and a second visualization depicting the second subset of tokens color-coded to indicate their category scores.
    Type: Grant
    Filed: May 18, 2022
    Date of Patent: November 15, 2022
    Assignee: SAS INSTITUTE INC.
    Inventors: Reza Soleimani, Samuel Paul Leeman-Munk, James Allen Cox, David Blake Styles
  • Patent number: 11074412
    Abstract: A system trains a classification model. Text windows are defined from tokens based on a window size. A network model including a transformer network is trained with the text windows to define classification information. A first accuracy value is computed. (A) The window size is reduced using a predefined reduction factor value. (B) Second text windows are defined based on the reduced window size. (C) Retrain the network model with the second text windows to define classification information. (D) A second accuracy value is computed. (E) An accuracy reduction value is computed from the second accuracy value relative to the first accuracy value. When the computed accuracy reduction value is ?an accuracy reduction tolerance value, repeat (A)-(E) until the accuracy reduction value is <the accuracy reduction tolerance value. Otherwise, increase the window size, define final text windows based on the increased window size, and retrain the network model.
    Type: Grant
    Filed: March 16, 2021
    Date of Patent: July 27, 2021
    Assignee: SAS Institute Inc.
    Inventors: Samuel Paul Leeman-Munk, James Allen Cox, David Blake Styles, Richard Welland Crowell
  • Publication number: 20210188149
    Abstract: Technologies are generally described for in-vehicle appliance attachment systems. A re-configurable anchor system may include low profile support extrusions vertically attached to interior vehicle walls and horizontal rails with screw, track, and/or channel based securing mechanisms attached to the support extrusions. Configurable mounting connectors comprising a mounting block and a right-angle connection plate, held together by a security pin, may be attached to the horizontal rails and side or back of appliances. Depending on the configuration, the configurable mounting connectors may allow appliances to be arranged with minimal spacing between each other or between the appliances and the wall. The configurable mounting connectors may also be fitted with dampeners to reduce transmission of vehicle vibration to the appliances.
    Type: Application
    Filed: December 19, 2019
    Publication date: June 24, 2021
    Applicant: ZUME, INC.
    Inventors: Pablo Gonzalez, Paul Leeman
  • Publication number: 20210138696
    Abstract: A molded fiber part former includes a first forming mold defining a first mold area and at least one fluid inlet. The molded fiber part former also includes a wall substantially surrounding the first mold area. The molded fiber part former includes a fluid channel disposed adjacent to and surrounding the wall, wherein the channel is fluidically connected to the at least one fluid inlet and defines a fluid channel outlet.
    Type: Application
    Filed: November 11, 2020
    Publication date: May 13, 2021
    Inventors: Pablo Gonzalez, Paul Leeman
  • Patent number: 10324983
    Abstract: Recurrent neural networks (RNNs) can be visualized. For example, a processor can receive vectors indicating values of nodes in a gate of a RNN. The values can result from processing data at the gate during a sequence of time steps. The processor can group the nodes into clusters by applying a clustering method to the values of the nodes. The processor can generate a first graphical element visually indicating how the respective values of the nodes in a cluster changed during the sequence of time steps. The processor can also determine a reference value based on multiple values for multiple nodes in the cluster, and generate a second graphical element visually representing how the respective values of the nodes in the cluster each relate to the reference value. The processor can cause a display to output a graphical user interface having the first graphical element and the second graphical element.
    Type: Grant
    Filed: September 21, 2018
    Date of Patent: June 18, 2019
    Assignees: SAS INSTITUTE INC., NORTH CAROLINA STATE UNIVERSITY
    Inventors: Samuel Paul Leeman-Munk, Saratendu Sethi, Christopher Graham Healey, Shaoliang Nie, Kalpesh Padia, Ravinder Devarajan, David James Caira, Jordan Riley Benson, James Allen Cox, Lawrence E. Lewis
  • Patent number: 10235622
    Abstract: A computing device identifies a pattern in a dataset. A first neural network model is executed using data points as input to input nodes of the first neural network model to generate first output node data. A second neural network model is executed using the first output node data as input to input nodes of the second neural network model to generate second output node data. The second output node data includes a plurality of output values for each x-value of the plurality of data points. For each x-value, an output value of the plurality of output values is associated with a single pattern type of a plurality of predefined pattern types. For each pattern type of the plurality of predefined pattern types, a start time and a stop time is identified when the output value for the associated pattern type exceeds a predefined pattern window threshold value.
    Type: Grant
    Filed: July 25, 2017
    Date of Patent: March 19, 2019
    Assignee: SAS INSTITUTE INC.
    Inventors: Stuart Andrew Hunt, Samuel Paul Leeman-Munk, Richard Welland Crowell
  • Publication number: 20190034558
    Abstract: Recurrent neural networks (RNNs) can be visualized. For example, a processor can receive vectors indicating values of nodes in a gate of a RNN. The values can result from processing data at the gate during a sequence of time steps. The processor can group the nodes into clusters by applying a clustering method to the values of the nodes. The processor can generate a first graphical element visually indicating how the respective values of the nodes in a cluster changed during the sequence of time steps. The processor can also determine a reference value based on multiple values for multiple nodes in the cluster, and generate a second graphical element visually representing how the respective values of the nodes in the cluster each relate to the reference value. The processor can cause a display to output a graphical user interface having the first graphical element and the second graphical element.
    Type: Application
    Filed: September 21, 2018
    Publication date: January 31, 2019
    Applicants: SAS Institute Inc., North Carolina State University
    Inventors: SAMUEL PAUL LEEMAN-MUNK, SARATENDU SETHI, CHRISTOPHER GRAHAM HEALEY, SHAOLIANG NIE, KALPESH PADIA, RAVINDER DEVARAJAN, DAVID JAMES CAIRA, JORDAN RILEY BENSON, JAMES ALLEN COX, LAWRENCE E. LEWIS
  • Patent number: 10191921
    Abstract: A system provides image search results based on a query that includes an attribute or an association and a concept identifier. The query is input into a trained query model to define a search syntax for the query. The search syntax is submitted to an expanded annotated image database that includes a concept image of a concept identified by the concept identifier with a plurality of attributes associated with the concept and a plurality of associations associated with the concept. A query result is received based on matching the defined search syntax to one or more of the attributes or one or more of the associations. The query result includes the concept image of the concept associated with the matched one or more of the attributes or one or more of the associations. The concept image included in the received query result is presented in a display.
    Type: Grant
    Filed: April 3, 2018
    Date of Patent: January 29, 2019
    Assignee: SAS Institute Inc.
    Inventors: Ethem F. Can, Richard Welland Crowell, Samuel Paul Leeman-Munk, Jared Peterson, Saratendu Sethi
  • Patent number: 10192001
    Abstract: Convolutional neural networks can be visualized. For example, a graphical user interface (GUI) can include a matrix of symbols indicating feature-map values that represent a likelihood of a particular feature being present or absent in an input to a convolutional neural network. The GUI can also include a node-link diagram representing a feed forward neural network that forms part of the convolutional neural network. The node-link diagram can include a first row of symbols representing an input layer to the feed forward neural network, a second row of symbols representing a hidden layer of the feed forward neural network, and a third row of symbols representing an output layer of the feed forward neural network. Lines between the rows of symbols can represent connections between nodes in the input layer, the hidden layer, and the output layer of the feed forward neural network.
    Type: Grant
    Filed: October 4, 2017
    Date of Patent: January 29, 2019
    Assignees: SAS INSTITUTE INC., NORTH CAROLINA STATE UNIVERSITY
    Inventors: Samuel Paul Leeman-Munk, Saratendu Sethi, Christopher Graham Healey, Shaoliang Nie, Kalpesh Padia, Ravinder Devarajan, David James Caira, Jordan Riley Benson, James Allen Cox, Lawrence E. Lewis, Mustafa Onur Kabul
  • Patent number: 10048826
    Abstract: Interactive visualizations of a convolutional neural network are provided. For example, a graphical user interface (GUI) can include a matrix having symbols indicating feature-map values that represent likelihoods of particular features being present or absent at various locations in an input to a convolutional neural network. Each column in the matrix can have feature-map values generated by convolving the input to the convolutional neural network with a respective filter for identifying a particular feature in the input. The GUI can detect, via an input device, an interaction indicating that that the columns in the matrix are to be combined into a particular number of groups. Based on the interaction, the columns can be clustered into the particular number of groups using a clustering method. The matrix in the GUI can then be updated to visually represent each respective group of columns as a single column of symbols within the matrix.
    Type: Grant
    Filed: October 3, 2017
    Date of Patent: August 14, 2018
    Assignees: SAS INSTITUTE INC., NORTH CAROLINA STATE UNIVERSITY
    Inventors: Samuel Paul Leeman-Munk, Saratendu Sethi, Christopher Graham Healey, Shaoliang Nie, Kalpesh Padia, Ravinder Devarajan, David James Caira, Jordan Riley Benson, James Allen Cox, Lawrence E. Lewis, Mustafa Onur Kabul
  • Publication number: 20180211153
    Abstract: A computing device identifies a pattern in a dataset. A first neural network model is executed using data points as input to input nodes of the first neural network model to generate first output node data. A second neural network model is executed using the first output node data as input to input nodes of the second neural network model to generate second output node data. The second output node data includes a plurality of output values for each x-value of the plurality of data points. For each x-value, an output value of the plurality of output values is associated with a single pattern type of a plurality of predefined pattern types. For each pattern type of the plurality of predefined pattern types, a start time and a stop time is identified when the output value for the associated pattern type exceeds a predefined pattern window threshold value.
    Type: Application
    Filed: July 25, 2017
    Publication date: July 26, 2018
    Inventors: Stuart Andrew Hunt, Samuel Paul Leeman-Munk, Richard Welland Crowell
  • Publication number: 20180096078
    Abstract: Convolutional neural networks can be visualized. For example, a graphical user interface (GUI) can include a matrix of symbols indicating feature-map values that represent a likelihood of a particular feature being present or absent in an input to a convolutional neural network. The GUI can also include a node-link diagram representing a feed forward neural network that forms part of the convolutional neural network. The node-link diagram can include a first row of symbols representing an input layer to the feed forward neural network, a second row of symbols representing a hidden layer of the feed forward neural network, and a third row of symbols representing an output layer of the feed forward neural network. Lines between the rows of symbols can represent connections between nodes in the input layer, the hidden layer, and the output layer of the feed forward neural network.
    Type: Application
    Filed: October 4, 2017
    Publication date: April 5, 2018
    Applicants: SAS Institute Inc., North Carolina State University
    Inventors: Samuel Paul Leeman-Munk, Saratendu Sethi, Christopher Graham Healey, Shaoliang Nie, Kalpesh Padia, Ravinder Devarajan, David James Caira, Jordan Riley Benson, James Allen Cox, Lawrence E. Lewis, Mustafa Onur Kabul
  • Publication number: 20180095632
    Abstract: Interactive visualizations of a convolutional neural network are provided. For example, a graphical user interface (GUI) can include a matrix having symbols indicating feature-map values that represent likelihoods of particular features being present or absent at various locations in an input to a convolutional neural network. Each column in the matrix can have feature-map values generated by convolving the input to the convolutional neural network with a respective filter for identifying a particular feature in the input. The GUI can detect, via an input device, an interaction indicating that that the columns in the matrix are to be combined into a particular number of groups. Based on the interaction, the columns can be clustered into the particular number of groups using a clustering method. The matrix in the GUI can then be updated to visually represent each respective group of columns as a single column of symbols within the matrix.
    Type: Application
    Filed: October 3, 2017
    Publication date: April 5, 2018
    Applicants: SAS Institute Inc., North Carolina State University
    Inventors: SAMUEL PAUL LEEMAN-MUNK, SARATENDU SETHI, CHRISTOPHER GRAHAM HEALEY, SHAOLIANG NIE, KALPESH PADIA, RAVINDER DEVARAJAN, DAVID JAMES CAIRA, JORDAN RILEY BENSON, JAMES ALLEN COX, LAWRENCE E. LEWIS, MUSTAFA ONUR KABUL
  • Publication number: 20180096241
    Abstract: Deep neural networks can be visualized. For example, first values for a first layer of nodes in a neural network, second values for a second layer of nodes in the neural network, and/or third values for connections between the first layer of nodes and the second layer of nodes can be received. A quilt graph can be output that includes (i) a first set of symbols having visual characteristics representative of the first values and representing the first layer of nodes along a first axis; (ii) a second set of symbols having visual characteristics representative of the second values and representing the second layer of nodes along a second axis; and/or (iii) a matrix of blocks between the first axis and the second axis having visual characteristics representative of the third values and representing the connections between the first layer of nodes and the second layer of nodes.
    Type: Application
    Filed: May 2, 2017
    Publication date: April 5, 2018
    Inventors: CHRISTOPHER GRAHAM HEALEY, SHAOLIANG NIE, KALPESH PADIA, RAVINDER DEVARAJAN, DAVID JAMES CAIRA, JORDAN RILEY BENSON, SARATENDU SETHI, JAMES ALLEN COX, LAWRENCE E. LEWIS, SAMUEL PAUL LEEMAN-MUNK
  • Patent number: 9934462
    Abstract: Deep neural networks can be visualized. For example, first values for a first layer of nodes in a neural network, second values for a second layer of nodes in the neural network, and/or third values for connections between the first layer of nodes and the second layer of nodes can be received. A quilt graph can be output that includes (i) a first set of symbols having visual characteristics representative of the first values and representing the first layer of nodes along a first axis; (ii) a second set of symbols having visual characteristics representative of the second values and representing the second layer of nodes along a second axis; and/or (iii) a matrix of blocks between the first axis and the second axis having visual characteristics representative of the third values and representing the connections between the first layer of nodes and the second layer of nodes.
    Type: Grant
    Filed: May 2, 2017
    Date of Patent: April 3, 2018
    Assignee: SAS INSTITUTE INC.
    Inventors: Christopher Graham Healey, Samuel Paul Leeman-Munk, Shaoliang Nie, Kalpesh Padia, Ravinder Devarajan, David James Caira, Jordan Riley Benson, Saratendu Sethi, James Allen Cox, Lawrence E. Lewis
  • Patent number: 9595002
    Abstract: Electronic communications can be normalized using a neural network. For example, a noncanonical communication that includes multiple terms can be received. The noncanonical communication can be preprocessed by (I) generating a vector including multiple characters from a term of the multiple terms; and (II) repeating a substring of the term in the vector such that a last character of the substring is positioned in a last position in the vector. The vector can be transmitted to a neural network configured to receive the vector and generate multiple probabilities based on the vector. A normalized version of the noncanonical communication can be determined using one or more of the multiple probabilities generated by the neural network. Whether the normalized version of the noncanonical communication should be outputted can also be determined using at least one of the multiple probabilities generated by the neural network.
    Type: Grant
    Filed: June 7, 2016
    Date of Patent: March 14, 2017
    Assignee: SAS INSTITUTE INC.
    Inventors: Samuel Paul Leeman-Munk, James Allen Cox