Patents by Inventor Adam Sypniewski

Adam Sypniewski 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: 20230317062
    Abstract: Systems and methods are disclosed for generating internal state representations of a neural network during processing and using the internal state representations for classification or search. In some embodiments, the internal state representations are generated from the output activation functions of a subset of nodes of the neural network. The internal state representations may be used for classification by training a classification model using internal state representations and corresponding classifications. The internal state representations may be used for search, by producing a search feature from an search input and comparing the search feature with one or more feature representations to find the feature representation with the highest degree of similarity.
    Type: Application
    Filed: June 12, 2023
    Publication date: October 5, 2023
    Inventors: Jeff Ward, Adam Sypniewski, Scott Stephenson
  • Patent number: 11676579
    Abstract: Systems and methods are disclosed for generating internal state representations of a neural network during processing and using the internal state representations for classification or search. In some embodiments, the internal state representations are generated from the output activation functions of a subset of nodes of the neural network. The internal state representations may be used for classification by training a classification model using internal state representations and corresponding classifications. The internal state representations may be used for search, by producing a search feature from an search input and comparing the search feature with one or more feature representations to find the feature representation with the highest degree of similarity.
    Type: Grant
    Filed: October 16, 2020
    Date of Patent: June 13, 2023
    Assignee: Deepgram, Inc.
    Inventors: Jeff Ward, Adam Sypniewski, Scott Stephenson
  • Patent number: 11367433
    Abstract: Systems and methods are disclosed for end-to-end neural networks for speech recognition and classification and additional machine learning techniques that may be used in conjunction or separately. Some embodiments comprise multiple neural networks, directly connected to each other to form an end-to-end neural network. One embodiment comprises a convolutional network, a first fully-connected network, a recurrent network, a second fully-connected network, and an output network. Some embodiments are related to generating speech transcriptions, and some embodiments relate to classifying speech into a number of classifications.
    Type: Grant
    Filed: May 29, 2020
    Date of Patent: June 21, 2022
    Assignee: Deepgram, Inc.
    Inventors: Adam Sypniewski, Jeff Ward, Scott Stephenson
  • Publication number: 20210035565
    Abstract: Systems and methods are disclosed for generating internal state representations of a neural network during processing and using the internal state representations for classification or search. In some embodiments, the internal state representations are generated from the output activation functions of a subset of nodes of the neural network. The internal state representations may be used for classification by training a classification model using internal state representations and corresponding classifications. The internal state representations may be used for search, by producing a search feature from an search input and comparing the search feature with one or more feature representations to find the feature representation with the highest degree of similarity.
    Type: Application
    Filed: October 16, 2020
    Publication date: February 4, 2021
    Inventors: Jeff Ward, Adam Sypniewski, Scott Stephenson
  • Patent number: 10847138
    Abstract: Systems and methods are disclosed for generating internal state representations of a neural network during processing and using the internal state representations for classification or search. In some embodiments, the internal state representations are generated from the output activation functions of a subset of nodes of the neural network. The internal state representations may be used for classification by training a classification model using internal state representations and corresponding classifications. The internal state representations may be used for search, by producing a search feature from an search input and comparing the search feature with one or more feature representations to find the feature representation with the highest degree of similarity.
    Type: Grant
    Filed: May 21, 2019
    Date of Patent: November 24, 2020
    Assignee: Deepgram, Inc.
    Inventors: Jeff Ward, Adam Sypniewski, Scott Stephenson
  • Publication number: 20200294492
    Abstract: Systems and methods are disclosed for end-to-end neural networks for speech recognition and classification and additional machine learning techniques that may be used in conjunction or separately. Some embodiments comprise multiple neural networks, directly connected to each other to form an end-to-end neural network. One embodiment comprises a convolutional network, a first fully-connected network, a recurrent network, a second fully-connected network, and an output network. Some embodiments are related to generating speech transcriptions, and some embodiments relate to classifying speech into a number of classifications.
    Type: Application
    Filed: May 29, 2020
    Publication date: September 17, 2020
    Inventors: Adam Sypniewski, Jeff Ward, Scott Stephenson
  • Patent number: 10720151
    Abstract: Systems and methods are disclosed for end-to-end neural networks for speech recognition and classification and additional machine learning techniques that may be used in conjunction or separately. Some embodiments comprise multiple neural networks, directly connected to each other to form an end-to-end neural network. One embodiment comprises a convolutional network, a first fully-connected network, a recurrent network, a second fully-connected network, and an output network. Some embodiments are related to generating speech transcriptions, and some embodiments relate to classifying speech into a number of classifications.
    Type: Grant
    Filed: August 22, 2018
    Date of Patent: July 21, 2020
    Assignee: Deepgram, Inc.
    Inventors: Adam Sypniewski, Jeff Ward, Scott Stephenson
  • Publication number: 20200035219
    Abstract: Systems and methods are disclosed for customizing a neural network for a custom dataset, when the neural network has been trained on data from a general dataset. The neural network may comprise an output layer including one or more nodes corresponding to candidate outputs. The values of the nodes in the output layer may correspond to a probability that the candidate output is the correct output for an input. The values of the nodes in the output layer may be adjusted for higher performance when the neural network is used to process data from a custom dataset.
    Type: Application
    Filed: December 26, 2018
    Publication date: January 30, 2020
    Inventors: Jeff WARD, Adam SYPNIEWSKI, Scott STEPHENSON
  • Publication number: 20200035224
    Abstract: Systems and methods are disclosed for generating internal state representations of a neural network during processing and using the internal state representations for classification or search. In some embodiments, the internal state representations are generated from the output activation functions of a subset of nodes of the neural network. The internal state representations may be used for classification by training a classification model using internal state representations and corresponding classifications. The internal state representations may be used for search, by producing a search feature from an search input and comparing the search feature with one or more feature representations to find the feature representation with the highest degree of similarity.
    Type: Application
    Filed: May 21, 2019
    Publication date: January 30, 2020
    Applicant: Deepgram, Inc.
    Inventors: Jeff Ward, Adam Sypniewski, Scott Stephenson
  • Publication number: 20200035222
    Abstract: Systems and methods are disclosed for end-to-end neural networks for speech recognition and classification and additional machine learning techniques that may be used in conjunction or separately. Some embodiments comprise multiple neural networks, directly connected to each other to form an end-to-end neural network. One embodiment comprises a convolutional network, a first fully-connected network, a recurrent network, a second fully-connected network, and an output network. Some embodiments are related to generating speech transcriptions, and some embodiments relate to classifying speech into a number of classifications.
    Type: Application
    Filed: August 22, 2018
    Publication date: January 30, 2020
    Applicant: Deepgram, Inc.
    Inventors: Adam Sypniewski, Jeff Ward, Scott Stephenson
  • Patent number: 10540959
    Abstract: Systems and methods are disclosed for customizing a neural network for a custom dataset, when the neural network has been trained on data from a general dataset. The neural network may comprise an output layer including one or more nodes corresponding to candidate outputs. The values of the nodes in the output layer may correspond to a probability that the candidate output is the correct output for an input. The values of the nodes in the output layer may be adjusted for higher performance when the neural network is used to process data from a custom dataset.
    Type: Grant
    Filed: December 26, 2018
    Date of Patent: January 21, 2020
    Assignee: Deepgram, Inc.
    Inventors: Jeff Ward, Adam Sypniewski, Scott Stephenson
  • Patent number: 10380997
    Abstract: Systems and methods are disclosed for generating internal state representations of a neural network during processing and using the internal state representations for classification or search. In some embodiments, the internal state representations are generated from the output activation functions of a subset of nodes of the neural network. The internal state representations may be used for classification by training a classification model using internal state representations and corresponding classifications. The internal state representations may be used for search, by producing a search feature from an search input and comparing the search feature with one or more feature representations to find the feature representation with the highest degree of similarity.
    Type: Grant
    Filed: August 22, 2018
    Date of Patent: August 13, 2019
    Assignee: Deepgram, Inc.
    Inventors: Jeff Ward, Adam Sypniewski, Scott Stephenson
  • Patent number: 10210860
    Abstract: Systems and methods are disclosed for customizing a neural network for a custom dataset, when the neural network has been trained on data from a general dataset. The neural network may comprise an output layer including one or more nodes corresponding to candidate outputs. The values of the nodes in the output layer may correspond to a probability that the candidate output is the correct output for an input. The values of the nodes in the output layer may be adjusted for higher performance when the neural network is used to process data from a custom dataset.
    Type: Grant
    Filed: August 22, 2018
    Date of Patent: February 19, 2019
    Assignee: Deepgram, Inc.
    Inventors: Jeff Ward, Adam Sypniewski, Scott Stephenson