Patents by Inventor Yu-Chung HSIAO

Yu-Chung HSIAO 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: 20240079263
    Abstract: A wafer container includes a frame, a door and at least a pair of shelves. The frame has opposite sidewalls. The pair of the shelves are respectively disposed and aligned on the opposite sidewalls of the frame. Various methods and devices are provided for holding at least one wafer to the shelves during transport.
    Type: Application
    Filed: February 22, 2023
    Publication date: March 7, 2024
    Inventors: Kai-Hung HSIAO, Chi-Chung JEN, Yu-Chun SHEN, Yuan-Cheng KUO, Chih-Hsiung HUANG, Wen-Chih CHIANG
  • Patent number: 11816544
    Abstract: The present disclosure provides a composite machine learning system for a transaction labeling service. A transaction labeling service receives at least one descriptive string describing a transaction associated with a user. The service identifies a preliminary grouping from a generalized scheme. The service extracts a set of N-grams from the descriptive string and converts the N-grams and the preliminary grouping into a set of features. A machine learning model determines a label from a labeling scheme for the transaction based on the features. User input related to the label includes an accuracy indicator and a reliability indicator. If the reliability indicator satisfies a reliability condition, a set of training data for the machine learning model is updated based on the descriptive string and the label. The machine learning model is then trained against the updated set of training data.
    Type: Grant
    Filed: April 16, 2021
    Date of Patent: November 14, 2023
    Assignee: INTUIT, INC.
    Inventors: Yu-Chung Hsiao, Lei Pei, Meng Chen, Nhung Ho
  • Publication number: 20230124380
    Abstract: Systems and methods are disclosed for triggering an update to a machine-learning model upon detecting that a distribution of particular (e.g., recently collected) input data set is sufficiently different from a distribution training input data set used to train the model. The distributions may be determined to be sufficiently different when a classifier can identify to which distribution individual data elements belong (e.g., to at least a predetermined degree). An update to the machine-learning model can include morphing weights used by the model and/or retraining the model.
    Type: Application
    Filed: December 15, 2022
    Publication date: April 20, 2023
    Applicant: Apple Inc.
    Inventors: Moises Goldszmidt, Anatoly D. Adamov, Juan C. Garcia, Julia R. Reisler, Timothy S. Paek, Vishwas Kulkarni, Yu-Chung Hsiao, Pavan Chitta
  • Patent number: 11562297
    Abstract: Systems and methods are disclosed for triggering an update to a machine-learning model upon detecting that a distribution of particular (e.g., recently collected) input data set is sufficiently different from a distribution training input data set used to train the model. The distributions may be determined to be sufficiently different when a classifier can identify to which distribution individual data elements belong (e.g., to at least a predetermined degree). An update to the machine-learning model can include morphing weights used by the model and/or retraining the model.
    Type: Grant
    Filed: May 15, 2020
    Date of Patent: January 24, 2023
    Assignee: Apple Inc.
    Inventors: Moises Goldszmidt, Anatoly D. Adamov, Juan C. Garcia, Julia R. Reisler, Timothy S. Paek, Vishwas Kulkarni, Yu-Chung Hsiao, Pavan Chitta
  • Publication number: 20210232976
    Abstract: The present disclosure provides a composite machine learning system for a transaction labeling service. A transaction labeling service receives at least one descriptive string describing a transaction associated with a user. The service identifies a preliminary grouping from a generalized scheme. The service extracts a set of N-grams from the descriptive string and converts the N-grams and the preliminary grouping into a set of features. A machine learning model determines a label from a labeling scheme for the transaction based on the features. User input related to the label includes an accuracy indicator and a reliability indicator. If the reliability indicator satisfies a reliability condition, a set of training data for the machine learning model is updated based on the descriptive string and the label. The machine learning model is then trained against the updated set of training data.
    Type: Application
    Filed: April 16, 2021
    Publication date: July 29, 2021
    Inventors: Yu-Chung HSIAO, Lei PEI, Meng CHEN, Nhung HO
  • Publication number: 20210224687
    Abstract: Systems and methods are disclosed for triggering an update to a machine-learning model upon detecting that a distribution of particular (e.g., recently collected) input data set is sufficiently different from a distribution training input data set used to train the model. The distributions may be determined to be sufficiently different when a classifier can identify to which distribution individual data elements belong (e.g., to at least a predetermined degree). An update to the machine-learning model can include morphing weights used by the model and/or retraining the model.
    Type: Application
    Filed: May 15, 2020
    Publication date: July 22, 2021
    Applicant: Apple Inc.
    Inventors: Moises Goldszmidt, Anatoly D. Adamov, Juan C. Garcia, Julia R. Reisler, Timothy S. Paek, Vishwas Kulkarni, Yu-Chung Hsiao, Pavan Chitta
  • Patent number: 10984340
    Abstract: The present disclosure provides a composite machine-learning system for a transaction labeling service. A transaction labeling service receives at least one descriptive string describing a transaction associated with a user. The service identifies a preliminary grouping from a generalized scheme. The service extracts a set of N-grams from the descriptive string and converts the N-grams and the preliminary grouping into a set of features. A machine-learning model determines a label from a labeling scheme for the transaction based on the features. User input related to the label includes an accuracy indicator and a reliability indicator. If the reliability indicator satisfies a reliability condition, a set of training data for the machine-learning model is updated based on the descriptive string and the label. The machine-learning model is then trained against the updated set of training data.
    Type: Grant
    Filed: March 31, 2017
    Date of Patent: April 20, 2021
    Assignee: Intuit Inc.
    Inventors: Yu-Chung Hsiao, Lei Pei, Meng Chen, Nhung Ho
  • Publication number: 20180285773
    Abstract: The present disclosure provides a composite machine-learning system for a transaction labeling service. A transaction labeling service receives at least one descriptive string describing a transaction associated with a user. The service identifies a preliminary grouping from a generalized scheme. The service extracts a set of N-grams from the descriptive string and converts the N-grams and the preliminary grouping into a set of features. A machine-learning model determines a label from a labeling scheme for the transaction based on the features. User input related to the label includes an accuracy indicator and a reliability indicator. If the reliability indicator satisfies a reliability condition, a set of training data for the machine-learning model is updated based on the descriptive string and the label. The machine-learning model is then trained against the updated set of training data.
    Type: Application
    Filed: March 31, 2017
    Publication date: October 4, 2018
    Inventors: Yu-Chung HSIAO, Lei PEI, Meng CHEN, Nhung HO