Patents by Inventor Kaustubh Page

Kaustubh Page 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: 11645363
    Abstract: In example embodiments, techniques are provided to automatically identify misclassified elements of an infrastructure model using machine learning. In a first set of embodiments, supervised machine learning is used to train one or more classification models that use different types of data describing elements (e.g., a geometric classification model that uses geometry data, a natural language processing (NLP) classification model that uses textual data, and an omniscient (Omni) classification model that uses a combination of geometry and textual data; or a single classification model that uses geometry data, textual data, and a combination of geometry and textual data). Predictions from classification models (e.g., predictions from the geometric classification model, NLP classification model and the Omni classification model) are compared to identify misclassified elements, or a prediction of misclassified elements directly produced (e.g., from the single classification model).
    Type: Grant
    Filed: October 20, 2020
    Date of Patent: May 9, 2023
    Assignee: Bentley Systems, Incorporated
    Inventors: Karl-Alexandre Jahjah, Hugo Bergeron, Marc-André Lapointe, Kaustubh Page, Evan Rausch-Larouche
  • Patent number: 11521026
    Abstract: In example embodiments, techniques are provided to automatically classify individual elements of an infrastructure model by training one or more machine learning algorithms on classified infrastructure models, producing a classification model that maps features to classification labels, and utilizing the classification model to classify the individual elements of the infrastructure model. The resulting classified elements may then be readily subject to analytics, for example, enabling the display of dashboards for monitoring project performance and the impact of design changes. Such techniques enable classification of elements of new infrastructure models or in updates to existing infrastructure models.
    Type: Grant
    Filed: September 28, 2020
    Date of Patent: December 6, 2022
    Assignee: Bentley Systems, Incorporated
    Inventors: Marc-André Lapointe, Karl-Alexandre Jahjah, Hugo Bergeron, Kaustubh Page
  • Patent number: 11455437
    Abstract: Techniques are provided for generating and retrieving change summary data and aggregated model version data for an infrastructure model. A process obtains a briefcase representing a particular version of the infrastructure model and one or more changesets. The process applies the changeset(s) to the briefcase to construct a briefcase that represents a newer version of the infrastructure model. The process compares the briefcases to generate a change summary indicating modifications between the two versions. Further, the process generates aggregated model version data as the infrastructure model transitions to newer versions. The process updates the aggregated model version data utilizing the change summaries such that the aggregated model version data is comprehensive regarding each element that is and was included in the infrastructure model from its genesis to its current state.
    Type: Grant
    Filed: October 15, 2019
    Date of Patent: September 27, 2022
    Assignee: Bentley Systems, Incorporated
    Inventors: Nishad Kulkarni, Arnob Mallick, Kaustubh Page
  • Publication number: 20220121886
    Abstract: In example embodiments, techniques are provided to automatically identify misclassified elements of an infrastructure model using machine learning. In a first set of embodiments, supervised machine learning is used to train one or more classification models that use different types of data describing elements (e.g., a geometric classification model that uses geometry data, a natural language processing (NLP) classification model that uses textual data, and an omniscient (Omni) classification model that uses a combination of geometry and textual data; or a single classification model that uses geometry data, textual data, and a combination of geometry and textual data). Predictions from classification models (e.g., predictions from the geometric classification model, NLP classification model and the Omni classification model) are compared to identify misclassified elements, or a prediction of misclassified elements directly produced (e.g., from the single classification model).
    Type: Application
    Filed: October 20, 2020
    Publication date: April 21, 2022
    Inventors: Karl-Alexandre Jahjah, Hugo Bergeron, Marc-André Lapointe, Kaustubh Page, Evan Rausch-Larouche
  • Publication number: 20210117716
    Abstract: In example embodiments, techniques are provided to automatically classify individual elements of an infrastructure model by training one or more machine learning algorithms on classified infrastructure models, producing a classification model that maps features to classification labels, and utilizing the classification model to classify the individual elements of the infrastructure model. The resulting classified elements may then be readily subject to analytics, for example, enabling the display of dashboards for monitoring project performance and the impact of design changes. Such techniques enable classification of elements of new infrastructure models or in updates to existing infrastructure models.
    Type: Application
    Filed: September 28, 2020
    Publication date: April 22, 2021
    Inventors: Marc-André Lapointe, Karl-Alexandre Jahjah, Hugo Bergeron, Kaustubh Page