Patents by Inventor Jocelyn Beauchesne

Jocelyn Beauchesne 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: 20250103966
    Abstract: An anomaly detection system is disclosed capable of reporting anomalous processes or hosts in a computer network using machine learning models trained using unsupervised training techniques. In embodiments, the system assigns observed processes to a set of process categories based on the file system path of the program executed by the process. The system extracts a feature vector for each process or host from the observation records and applies the machine learning models to the feature vectors to determine an outlier metric each process or host. The processes or hosts with the highest outlier metrics are reported as detected anomalies to be further examined by security analysts. In embodiments, the machine learnings models may be periodically retrained based on new observation records using unsupervised machine learning techniques. Accordingly, the system allows the models to learn from newly observed data without requiring the new data to be manually labeled by humans.
    Type: Application
    Filed: December 9, 2024
    Publication date: March 27, 2025
    Applicant: Rapid7,, Inc.
    Inventors: Jocelyn Beauchesne, John Lim Oh, Vasudha Shivamoggi, Roy Donald Hodgman
  • Patent number: 12206699
    Abstract: An anomaly detection system is disclosed capable of reporting anomalous processes or hosts in a computer network using machine learning models trained using unsupervised training techniques. In embodiments, the system assigns observed processes to a set of process categories based on the file system path of the program executed by the process. The system extracts a feature vector for each process or host from the observation records and applies the machine learning models to the feature vectors to determine an outlier metric each process or host. The processes or hosts with the highest outlier metrics are reported as detected anomalies to be further examined by security analysts. In embodiments, the machine learnings models may be periodically retrained based on new observation records using unsupervised machine learning techniques. Accordingly, the system allows the models to learn from newly observed data without requiring the new data to be manually labeled by humans.
    Type: Grant
    Filed: December 12, 2023
    Date of Patent: January 21, 2025
    Assignee: Rapid7, Inc.
    Inventors: Jocelyn Beauchesne, John Lim Oh, Vasudha Shivamoggi, Roy Donald Hodgman
  • Patent number: 12182670
    Abstract: An anomaly detection system is disclosed capable of reporting anomalous processes or hosts in a computer network using machine learning models trained using unsupervised training techniques. In embodiments, the system assigns observed processes to a set of process categories based on the file system path of the program executed by the process. The system extracts a feature vector for each process or host from the observation records and applies the machine learning models to the feature vectors to determine an outlier metric each process or host. The processes or hosts with the highest outlier metrics are reported as detected anomalies to be further examined by security analysts. In embodiments, the machine learnings models may be periodically retrained based on new observation records using unsupervised machine learning techniques. Accordingly, the system allows the models to learn from newly observed data without requiring the new data to be manually labeled by humans.
    Type: Grant
    Filed: December 31, 2020
    Date of Patent: December 31, 2024
    Assignee: Rapid7, Inc.
    Inventors: Jocelyn Beauchesne, John Lim Oh, Vasudha Shivamoggi, Roy Donald Hodgman
  • Publication number: 20240396907
    Abstract: An anomaly detection system is disclosed capable of reporting anomalous processes or hosts in a computer network using machine learning models trained using unsupervised training techniques. In embodiments, the system assigns observed processes to a set of process categories based on the file system path of the program executed by the process. The system extracts a feature vector for each process or host from the observation records and applies the machine learning models to the feature vectors to determine an outlier metric each process or host. The processes or hosts with the highest outlier metrics are reported as detected anomalies to be further examined by security analysts. In embodiments, the machine learnings models may be periodically retrained based on new observation records using unsupervised machine learning techniques. Accordingly, the system allows the models to learn from newly observed data without requiring the new data to be manually labeled by humans.
    Type: Application
    Filed: August 6, 2024
    Publication date: November 28, 2024
    Applicant: Rapid7, Inc.
    Inventors: Jocelyn Beauchesne, John Lim Oh, Vasudha Shivamoggi, Roy Donald Hodgman
  • Patent number: 12088600
    Abstract: An anomaly detection system is disclosed capable of reporting anomalous processes or hosts in a computer network using machine learning models trained using unsupervised training techniques. In embodiments, the system assigns observed processes to a set of process categories based on the file system path of the program executed by the process. The system extracts a feature vector for each process or host from the observation records and applies the machine learning models to the feature vectors to determine an outlier metric each process or host. The processes or hosts with the highest outlier metrics are reported as detected anomalies to be further examined by security analysts. In embodiments, the machine learnings models may be periodically retrained based on new observation records using unsupervised machine learning techniques. Accordingly, the system allows the models to learn from newly observed data without requiring the new data to be manually labeled by humans.
    Type: Grant
    Filed: September 17, 2020
    Date of Patent: September 10, 2024
    Assignee: Rapid7, Inc.
    Inventors: Jocelyn Beauchesne, John Lim Oh, Vasudha Shivamoggi, Roy Donald Hodgman
  • Patent number: 12069079
    Abstract: An anomaly detection system is disclosed capable of reporting anomalous processes or hosts in a computer network using machine learning models trained using unsupervised training techniques. In embodiments, the system assigns observed processes to a set of process categories based on the file system path of the program executed by the process. The system extracts a feature vector for each process or host from the observation records and applies the machine learning models to the feature vectors to determine an outlier metric each process or host. The processes or hosts with the highest outlier metrics are reported as detected anomalies to be further examined by security analysts. In embodiments, the machine learnings models may be periodically retrained based on new observation records using unsupervised machine learning techniques. Accordingly, the system allows the models to learn from newly observed data without requiring the new data to be manually labeled by humans.
    Type: Grant
    Filed: October 17, 2022
    Date of Patent: August 20, 2024
    Assignee: Rapid7, Inc.
    Inventors: Jocelyn Beauchesne, John Lim Oh, Vasudha Shivamoggi, Roy Donald Hodgman
  • Patent number: 11853853
    Abstract: An anomaly detection system is disclosed capable of reporting anomalous processes or hosts in a computer network using machine learning models trained using unsupervised training techniques. In embodiments, the system assigns observed processes to a set of process categories based on the file system path of the program executed by the process. The system extracts a feature vector for each process or host from the observation records and applies the machine learning models to the feature vectors to determine an outlier metric each process or host. The processes or hosts with the highest outlier metrics are reported as detected anomalies to be further examined by security analysts. In embodiments, the machine learnings models may be periodically retrained based on new observation records using unsupervised machine learning techniques. Accordingly, the system allows the models to learn from newly observed data without requiring the new data to be manually labeled by humans.
    Type: Grant
    Filed: December 31, 2020
    Date of Patent: December 26, 2023
    Assignee: Rapid7, Inc.
    Inventors: Jocelyn Beauchesne, John Lim Oh, Vasudha Shivamoggi, Roy Donald Hodgman
  • Patent number: 11509674
    Abstract: An anomaly detection system is disclosed capable of reporting anomalous processes or hosts in a computer network using machine learning models trained using unsupervised training techniques. In embodiments, the system assigns observed processes to a set of process categories based on the file system path of the program executed by the process. The system extracts a feature vector for each process or host from the observation records and applies the machine learning models to the feature vectors to determine an outlier metric each process or host. The processes or hosts with the highest outlier metrics are reported as detected anomalies to be further examined by security analysts. In embodiments, the machine learnings models may be periodically retrained based on new observation records using unsupervised machine learning techniques. Accordingly, the system allows the models to learn from newly observed data without requiring the new data to be manually labeled by humans.
    Type: Grant
    Filed: September 17, 2020
    Date of Patent: November 22, 2022
    Assignee: Rapid7, Inc.
    Inventors: Jocelyn Beauchesne, John Lim Oh, Vasudha Shivamoggi, Roy Donald Hodgman