Patents by Inventor Saket K. Sathe

Saket K. Sathe 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: 11966340
    Abstract: To automate time series forecasting machine learning pipeline generation, a data allocation size of time series data may be determined based on one or more characteristics of a time series data set. The time series data may be allocated for use by candidate machine learning pipelines based on the data allocation size. Features for the time series data may be determined and cached by the candidate machine learning pipelines. Predictions of each of the candidate machine learning pipelines using at least the one or more features may be evaluated. A ranked list of machine learning pipelines may be automatically generated from the candidate machine learning pipelines for time series forecasting based upon evaluating predictions of each of the one or more candidate machine learning pipelines.
    Type: Grant
    Filed: March 15, 2022
    Date of Patent: April 23, 2024
    Assignee: International Business Machines Corporation
    Inventors: Long Vu, Bei Chen, Xuan-Hong Dang, Peter Daniel Kirchner, Syed Yousaf Shah, Dhavalkumar C. Patel, Si Er Han, Ji Hui Yang, Jun Wang, Jing James Xu, Dakuo Wang, Gregory Bramble, Horst Cornelius Samulowitz, Saket K. Sathe, Wesley M. Gifford, Petros Zerfos
  • Patent number: 11868230
    Abstract: Computer hardware and/or software that performs the following operations: (i) assessing a performance of a plurality of unsupervised machine learning pipelines against a plurality of data sets; (ii) associating the performance with meta-features corresponding to respective pipeline/data set combinations; (iii) training a supervised meta-learning model using the associated performance and meta-features as training data; and (iv) utilizing the trained model to identify one or more pipelines for processing an input data set.
    Type: Grant
    Filed: March 11, 2022
    Date of Patent: January 9, 2024
    Assignee: International Business Machines Corporation
    Inventors: Saket K. Sathe, Long Vu, Peter Daniel Kirchner, Horst Cornelius Samulowitz
  • Publication number: 20230342627
    Abstract: Predefined pipelines may be created with predefined meta-features. Time series data may be segmented using lookback window parameters. Meta-features may be determined for windowed data. Those of the predefined pipelines having a maximum amount of matching predefined meta-features may be determined. Those of the lookback window parameters that result in the windowed data having the meta-features most similar to the meta-features of one or more of the plurality of predefined pipelines may be identified.
    Type: Application
    Filed: April 22, 2022
    Publication date: October 26, 2023
    Applicant: INTERNATIONAL BUSINESS MACHINES CORPORATION
    Inventors: Long VU, Saket K SATHE, Peter Daniel KIRCHNER, Gregory BRAMBLE
  • Publication number: 20230289277
    Abstract: Computer hardware and/or software that performs the following operations: (i) assessing a performance of a plurality of unsupervised machine learning pipelines against a plurality of data sets; (ii) associating the performance with meta-features corresponding to respective pipeline/data set combinations; (iii) training a supervised meta-learning model using the associated performance and meta-features as training data; and (iv) utilizing the trained model to identify one or more pipelines for processing an input data set.
    Type: Application
    Filed: March 11, 2022
    Publication date: September 14, 2023
    Inventors: Saket K. Sathe, Long VU, Peter Daniel Kirchner, Horst Cornelius Samulowitz
  • Publication number: 20220327058
    Abstract: To automate time series forecasting machine learning pipeline generation, a data allocation size of time series data may be determined based on one or more characteristics of a time series data set. The time series data may be allocated for use by candidate machine learning pipelines based on the data allocation size. Features for the time series data may be determined and cached by the candidate machine learning pipelines. Predictions of each of the candidate machine learning pipelines using at least the one or more features may be evaluated. A ranked list of machine learning pipelines may be automatically generated from the candidate machine learning pipelines for time series forecasting based upon evaluating predictions of each of the one or more candidate machine learning pipelines.
    Type: Application
    Filed: March 15, 2022
    Publication date: October 13, 2022
    Applicant: INTERNATIONAL BUSINESS MACHINES CORPORATION
    Inventors: Long VU, Bei CHEN, Xuan-Hong DANG, Peter Daniel KIRCHNER, Syed Yousaf SHAH, Dhavalkumar C. PATEL, Si Er HAN, Ji Hui YANG, Jun WANG, Jing James XU, Dakuo WANG, Gregory BRAMBLE, Horst Cornelius SAMULOWITZ, Saket K. SATHE, Wesley M. GIFFORD, Petros ZERFOS
  • Publication number: 20180348001
    Abstract: Embodiments of the invention include method, systems and computer program products for providing ease-of-drive driving directions. The computer-implemented method includes receiving, by a processor, a request for a route from a starting point to a destination point. The processor calculates one or more routes from the starting point to the destination point. The processor scores the one or more calculated routes according to ease-of-drive driving criteria. The processor presents at least one of the scored calculated routes that are below a predetermined threshold.
    Type: Application
    Filed: May 31, 2017
    Publication date: December 6, 2018
    Inventors: Charu C. Aggarwal, Saket K. Sathe, Deepak S. Turaga
  • Publication number: 20180348002
    Abstract: Embodiments of the invention include method, systems and computer program products for providing ease-of-drive driving directions. The computer-implemented method includes receiving, by a processor, a request for a route from a starting point to a destination point. The processor calculates one or more routes from the starting point to the destination point. The processor scores the one or more calculated routes according to ease-of-drive driving criteria. The processor presents at least one of the scored calculated routes that are below a predetermined threshold.
    Type: Application
    Filed: November 14, 2017
    Publication date: December 6, 2018
    Inventors: Charu C. Aggarwal, Saket K. Sathe, Deepak S. Turaga
  • Publication number: 20180218237
    Abstract: A contact group creation method, system, and computer program product, includes identifying a subset of people in an image having a similar feature, associating each of the people in the subset of people with a contact address, and creating a contact group data file including the contact address of the each of the people in the subset of people.
    Type: Application
    Filed: January 30, 2017
    Publication date: August 2, 2018
    Inventors: Sue Ann Chen, Saket K. Sathe, Arun Vishwanath
  • Publication number: 20180218547
    Abstract: Obtaining position data of an asset; obtaining one or more context sensor signals, each context sensor signal representing a real-time measured parameter related to the asset; in near-real-time, updating a function that determines a present usage rate of the asset based on the position data, weighted values of the context sensor signals, and an immediate past usage status; in near-real-time, estimating an asset time to failure based on the updated function and a future asset task allocation; and based on the estimate of asset time to failure, and in near-real-time, adjusting the future asset task allocation.
    Type: Application
    Filed: December 31, 2017
    Publication date: August 2, 2018
    Inventors: Shivkumar Kalyanaraman, Ravindranath Kokku, Vinay K. Kolar, Saket K. Sathe
  • Publication number: 20180218546
    Abstract: Obtaining position data of an asset; obtaining one or more context sensor signals, each context sensor signal representing a real-time measured parameter related to the asset; in near-real-time, updating a function that determines a present usage rate of the asset based on the position data, weighted values of the context sensor signals, and an immediate past usage status; in near-real-time, estimating an asset time to failure based on the updated function and a future asset task allocation; and based on the estimate of asset time to failure, and in near-real-time, adjusting the future asset task allocation.
    Type: Application
    Filed: January 30, 2017
    Publication date: August 2, 2018
    Inventors: Shivkumar Kalyanaraman, Ravindranath Kokku, Vinay K. Kolar, Saket K. Sathe