Patents by Inventor Jason Weng Wei

Jason Weng Wei 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: 20230394328
    Abstract: Example embodiments of aspects of the present disclosure provide an example computer-implemented method for improved prompting of a machine-learned model. The example method can include obtaining an instructive sequence descriptive of an instructive query, an instructive response, and an instructive trace of intermediate states from the instructive query to the instructive response. The example method can include inputting, to a machine-learned model, the instructive sequence and an operative query, wherein the machine-learned model is configured to process the operative query with attention over the instructive sequence. The example method can include generating, using the machine-learned model and responsive to the operative query, an operative response.
    Type: Application
    Filed: August 5, 2022
    Publication date: December 7, 2023
    Inventors: Jason Weng Wei, Dengyong Zhou, Dale Eric Schuurmans, Quoc V. Le, Maarten Paul Bosma, Ed Huai-Hsin Chi, Olivier Jean Andrè Bousquet, Le Hou, Nathan Kemp Sekiguchi Scales, David J. Bieber, Charles Aloysius Sutton, Nathanael Martin Schärli, Augustus Quadrozzi Odena, Sharan Ajit Narang, Guy Gur-Ari Krakover, Aakanksha Chowdhery, Aitor Lewkowycz, Jiageng Luan, David Martin Dohan, Henryk Michalewski, Jacob Austin, Anders Johan Andreassen, Maxwell Isaac Nye, Xuezhi Wang
  • Publication number: 20230244938
    Abstract: An example method for pretraining a machine-learned model is provided. The example method includes obtaining a plurality of different combinations of configuration parameters of a pretraining objective framework. The example method includes generating, using the pretraining objective framework, a plurality of corrupted training examples from one or more training examples, wherein the plurality of corrupted training examples are respectively generated according to the plurality of different combinations. The example method includes inputting the plurality of corrupted training examples into the machine-learned model, wherein the machine-learned model is configured to generate uncorrupted subportions corresponding to corrupted subportions of the corrupted training examples. The example method includes obtaining, from the machine-learned model, a plurality of outputs respectively generated by the machine-learned model based on the plurality of corrupted training examples.
    Type: Application
    Filed: January 27, 2023
    Publication date: August 3, 2023
    Inventors: Jason Weng Wei, Dengyong Zhou, Xuezhi Wang, Dale Eric Schuurmans, Quoc V. Le, Maarten Paul Bosma, Ed Huai-Hsin Chi, Olivier Jean Andrè Bousquet, Le Hou, Charles Aloysius Sutton, Nathanael Martin Schärli, Nathan Kemp Sekiguchi Scales, Augustus Quadrozzi Odena, Sharan Ajit Narang, Guy Gur-Ari Krakover, Aakanksha Chowdhery, David Martin Dohan, Aitor Lewkowycz, Henryk Michalewski, Jiageng Luan, David J. Bieber, Jacob Austin, Anders Johan Andreassen, Maxwell Isaac Nye, Yi Tay, Mostafa Dehghani
  • Publication number: 20230205994
    Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for performing a machine learning task on an input to generate an output. In one aspect, one of the method includes receiving input data that describes an input of a machine learning task; receiving candidate output data that describes a set of candidate classification outputs of the machine learning task for the input; generating an input sequence that includes the input and the set of candidate classification outputs; processing the input sequence using a neural network to generate a network output that specifies a respective score for each candidate classification output in the set of candidate classification outputs; and generating an output of the machine learning task for the input, comprising selecting, as the output, a selected candidate classification output from the set of candidate classification outputs using the respective scores.
    Type: Application
    Filed: December 23, 2021
    Publication date: June 29, 2023
    Inventors: Jason Weng Wei, Maarten Paul Bosma, Yuzhe Zhao, JR., Kelvin Gu, Quoc V. Le