Patents by Inventor Daniel De Freitas Adiwardana

Daniel De Freitas Adiwardana 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: 11960848
    Abstract: The present disclosure is directed to systems and methods that include and/or leverage one or more machine-learned language models that generate intermediate textual analysis (e.g., including usage of structural tools such as APIs) in service of contextual text generation. For example, a computing system can obtain a contextual text string that includes one or more contextual text tokens. The computing system can process the contextual text string with the machine-learned language model to generate one or more intermediate text strings that include one or more intermediate text tokens. The computing system can process the one or more intermediate text strings with the machine-learned language model to generate an output text string comprising one or more output text tokens. The one or more intermediate text strings can include textual analysis of the contextual text string that supports the output text string.
    Type: Grant
    Filed: February 3, 2023
    Date of Patent: April 16, 2024
    Assignee: GOOGLE LLC
    Inventors: Noam Shazeer, Daniel De Freitas Adiwardana
  • Publication number: 20230177276
    Abstract: The present disclosure is directed to systems and methods that include and/or leverage one or more machine-learned language models that generate intermediate textual analysis (e.g., including usage of structural tools such as APIs) in service of contextual text generation. For example, a computing system can obtain a contextual text string that includes one or more contextual text tokens. The computing system can process the contextual text string with the machine-learned language model to generate one or more intermediate text strings that include one or more intermediate text tokens. The computing system can process the one or more intermediate text strings with the machine-learned language model to generate an output text string comprising one or more output text tokens. The one or more intermediate text strings can include textual analysis of the contextual text string that supports the output text string.
    Type: Application
    Filed: February 3, 2023
    Publication date: June 8, 2023
    Inventors: Noam Shazeer, Daniel De Freitas Adiwardana
  • Publication number: 20230074406
    Abstract: As part of a dialog session between a user and an automated assistant, implementations can receive a stream of audio data that captures a spoken utterance including an assistant query, determine, based on processing the stream of audio data, a set of assistant outputs that are each predicted to be responsive to the assistant query, process, using large language model (LLM) output(s), the assistant outputs and context of the dialog session to generate a set of modified assistant outputs, and cause given modified assistant output, from among the set of modified assistant outputs, to be provided for presentation to the user in response to the spoken utterance. In some implementations, the LLM output(s) can be generated in an offline manner for subsequent use in an online manner. In additional or alternative implementations, the LLM output(s) can be generated in an online manner when the spoken utterance is received.
    Type: Application
    Filed: November 22, 2021
    Publication date: March 9, 2023
    Inventors: Martin Baeuml, Thushan Amarasiriwardena, Roberto Pieraccini, Vikram Sridar, Daniel De Freitas Adiwardana, Noam M. Shazeer, Quoc Le
  • Patent number: 11574131
    Abstract: The present disclosure is directed to systems and methods that include and/or leverage one or more machine-learned language models that generate intermediate textual analysis (e.g., including usage of structural tools such as APIs) in service of contextual text generation. For example, a computing system can obtain a contextual text string that includes one or more contextual text tokens. The computing system can process the contextual text string with the machine-learned language model to generate one or more intermediate text strings that include one or more intermediate text tokens. The computing system can process the one or more intermediate text strings with the machine-learned language model to generate an output text string comprising one or more output text tokens. The one or more intermediate text strings can include textual analysis of the contextual text string that supports the output text string.
    Type: Grant
    Filed: May 20, 2022
    Date of Patent: February 7, 2023
    Assignee: GOOGLE LLC
    Inventors: Noam Shazeer, Daniel De Freitas Adiwardana
  • Publication number: 20230029590
    Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for evaluating candidate output sequences using language model neural networks. In particular, an auto-regressive language model neural network is used to generate a candidate output sequence. The same auto-regressive language model neural network is used to evaluate the candidate output sequence to determine rating scores for each of one or more criteria. The rating score(s) are then used to determine whether to provide the candidate output sequence.
    Type: Application
    Filed: July 28, 2022
    Publication date: February 2, 2023
    Inventors: Daniel De Freitas Adiwardana, Noam M. Shazeer
  • Publication number: 20220374608
    Abstract: The present disclosure is directed to systems and methods that include and/or leverage one or more machine-learned language models that generate intermediate textual analysis (e.g., including usage of structural tools such as APIs) in service of contextual text generation. For example, a computing system can obtain a contextual text string that includes one or more contextual text tokens. The computing system can process the contextual text string with the machine-learned language model to generate one or more intermediate text strings that include one or more intermediate text tokens. The computing system can process the one or more intermediate text strings with the machine-learned language model to generate an output text string comprising one or more output text tokens. The one or more intermediate text strings can include textual analysis of the contextual text string that supports the output text string.
    Type: Application
    Filed: May 20, 2022
    Publication date: November 24, 2022
    Inventors: Noam Shazeer, Daniel De Freitas Adiwardana
  • Publication number: 20160321560
    Abstract: An opportunity surfacing architecture for surfacing an opportunity to a user in a computing system comprises, in one example, a user interface component and a machine learning framework configured to detect first inputs indicative of an opportunity performance history of a user and to detect second inputs indicative of a new opportunity. The machine learning framework is configured to generate a user-specific indicator for the new opportunity based on the opportunity performance history. The opportunity surfacing architecture comprises an opportunity surfacing system configured to control the user interface component to generate a user interface display that displays a representation of the new opportunity to the user based on the user-specific indicator.
    Type: Application
    Filed: April 30, 2015
    Publication date: November 3, 2016
    Inventors: Babak Nakhayi Ashtiani, Sachin S. Panvalkar, Daniel De Freitas Adiwardana