Patents by Inventor Talha Koc

Talha Koc 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: 12380145
    Abstract: Exemplary embodiments provide methods, mediums, and systems for performing a reusable, intelligent semantic search across a potentially large number of records. Embodiments may be particularly useful for responding to requests for information from regulatory agencies. In one embodiment, an embedding model is trained to embed queries in an embedding space. When a new query is received, the new query is embedded with the embedding model. A set of documents (e.g., previous responses to regulatory inquiries) may be searched using the embedded query and an indexing model that allows for efficient searches of embedding spaces. A number of results may be returned from the document store, and the results may be ranked by a ranking model. User feedback about the quality of the results may be received, and the ranking model may be retrained based on the feedback.
    Type: Grant
    Filed: March 31, 2022
    Date of Patent: August 5, 2025
    Assignee: Capital One Services, LLC
    Inventors: Paul Cho, Gary B. Williams, Alexander Bussan, Eric Campbell, Piper Alexandra Coble, Ralph Lozano, Mukund Manikantan, Talyne Derderian Walsh, Talha Koc, Prarthana Bhattarai
  • Patent number: 11789915
    Abstract: Methods and systems are described herein for improving anomaly detection in timeseries datasets. Different machine learning models may be trained to process specific types of timeseries data efficiently and accurately. Thus, selecting a proper machine learning model for identifying anomalies in a specific set of timeseries data may greatly improve accuracy and efficiency of anomaly detection. Another way to improve anomaly detection is to process a multitude of timeseries datasets for a time period (e.g., 90 days) to detect anomalies from those timeseries datasets and then correlate those detected anomalies by generating an anomaly timeseries dataset and identifying anomalies within the anomaly timeseries dataset. Yet another way to improve anomaly detection is to divide a dataset into multiple datasets based on a type of anomaly detection requested.
    Type: Grant
    Filed: April 23, 2021
    Date of Patent: October 17, 2023
    Assignee: Capital One Services, LLC
    Inventors: Vannia Gonzalez Macias, Talha Koc, Mark Davis, Prarthana Bhattarai, Mark Roberts, Alan Rozet, Mengfei Shao
  • Publication number: 20230315766
    Abstract: Exemplary embodiments provide methods, mediums, and systems for performing a reusable, intelligent semantic search across a potentially large number of records. Embodiments may be particularly useful for responding to requests for information from regulatory agencies. In one embodiment, an embedding model is trained to embed queries in an embedding space. When a new query is received, the new query is embedded with the embedding model. A set of documents (e.g., previous responses to regulatory inquiries) may be searched using the embedded query and an indexing model that allows for efficient searches of embedding spaces. A number of results may be returned from the document store, and the results may be ranked by a ranking model. User feedback about the quality of the results may be received, and the ranking model may be retrained based on the feedback.
    Type: Application
    Filed: March 31, 2022
    Publication date: October 5, 2023
    Applicant: CAPITAL ONE SERVICES, LLC
    Inventors: Paul CHO, Gary B. WILLIAMS, Alexander BUSSAN, Eric CAMPBELL, Piper Alexandra COBLE, Ralph LOZANO, Mukund MANIKANTAN, Talyne Derderian WALSH, Talha KOC, Prarthana BHATTARAI
  • Publication number: 20220342861
    Abstract: Methods and systems are described herein for improving anomaly detection in timeseries datasets. Different machine learning models may be trained to process specific types of timeseries data efficiently and accurately. Thus, selecting a proper machine learning model for identifying anomalies in a specific set of timeseries data may greatly improve accuracy and efficiency of anomaly detection. Another way to improve anomaly detection is to process a multitude of timeseries datasets for a time period (e.g., 90 days) to detect anomalies from those timeseries datasets and then correlate those detected anomalies by generating an anomaly timeseries dataset and identifying anomalies within the anomaly timeseries dataset. Yet another way to improve anomaly detection is to divide a dataset into multiple datasets based on a type of anomaly detection requested.
    Type: Application
    Filed: April 23, 2021
    Publication date: October 27, 2022
    Applicant: Capital One Services, LLC
    Inventors: Vannia Gonzalez Macias, Talha Koc, Mark Davis, Prarthana Bhattarai, Mark Roberts, Alan Rozet, Mengfei Shao