Patents by Inventor Camille Patel

Camille Patel 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: 11988111
    Abstract: A method for refitting blade shrouds of a rotor wheel in an aircraft turbomachine is described. The rotor wheel has a disc bearing blades that each have an airfoil extending between a root and a shroud, the shroud of each blade having lateral edges including shapes complementary to the lateral edges of the shrouds of the adjacent blades. The lateral edges of the shrouds are interlocked in engagement with one another such that anti-wear coatings of these edges are in contact with one another in a desired interlocking engagement position, and at least one of the lateral edges of at least one of the shrouds being able to be disengaged from the lateral edge of an adjacent shroud in an undesired disengagement position. The method includes, when an undesired disengagement position is detected, a step of inserting a re-engagement device into the turbomachine.
    Type: Grant
    Filed: March 1, 2021
    Date of Patent: May 21, 2024
    Assignee: SAFRAN AIRCRAFT ENGINES
    Inventors: Vijeay Patel, Robert Fiarda, Etienne Léon Francois, Bruno Marc-Etienne Loisel, Camille Maryse Martine Palomba
  • Patent number: 11961598
    Abstract: A method for predicting errors in prescription claim data is performed by a claim analysis device. The method includes extracting historical claim features from successfully processed historical claims received from the data warehouse system. The method includes extracting pending claim features from a pending claim. The method includes applying a binarization process on the extracted historical claim features to obtain a binarized training feature set. The method includes applying the binarization process on the extracted pending claim features to obtain a binarized pending feature set. The method includes calculating an aggregate distance between the binarized pending feature set and the binarized training feature set. The method includes identifying the historical claim associated with the least aggregate distance as a predictive historical claim.
    Type: Grant
    Filed: June 26, 2020
    Date of Patent: April 16, 2024
    Assignee: Express Scripts Strategic Development, Inc.
    Inventors: Morgan J. Finley, Garret L. Anderson, Camille Patel, Michael Nassar, Siju Vattakunnumpurath Eugin, Daniel Owens
  • Publication number: 20240087709
    Abstract: Methods and systems for selecting a machine learning algorithm are described. In one embodiment, one or more factors to be used by a machine learning algorithm in predicting a value of a required pharmacy element of a prescription are identified, the machine learning algorithm is trained to predict the value of the required pharmacy element using a first subset of previously received prescriptions, a success rates for the machine learning algorithm at predicting respective known values of respective known required pharmacy elements for each of a second subset of the previously received prescriptions are determined, and the machine learning algorithm predicts the value of the required pharmacy element of the prescription for a first predetermined period.
    Type: Application
    Filed: November 20, 2023
    Publication date: March 14, 2024
    Inventors: Sudipto Dey, Camille Patel, Pulla Reddy P. Yeduru, Robert A. Seyss
  • Patent number: 11848086
    Abstract: Methods and systems for selecting a machine learning algorithm are described. In one embodiment, one or more factors to be used by a plurality of machine learning algorithms in predicting a value of a required pharmacy element of a prescription are identified, each of the plurality of machine learning algorithms are trained to predict the value of the required pharmacy element using a first subset of previously received prescriptions, respective success rates for each of the plurality of machine learning algorithms at predicting respective known values of respective known required pharmacy elements for each of a second subset of the previously received prescriptions are determined, and a first of the plurality of machine learning algorithms having a highest success rate is selected to predict the value of the required pharmacy element of the prescription for a first predetermined period.
    Type: Grant
    Filed: November 28, 2022
    Date of Patent: December 19, 2023
    Assignee: Express Scripts Strategic Development, Inc.
    Inventors: Sudipto Dey, Camille Patel, Pulla R. Yeduru, Robert Seyss
  • Publication number: 20230100574
    Abstract: Methods and systems for selecting a machine learning algorithm are described. In one embodiment, one or more factors to be used by a plurality of machine learning algorithms in predicting a value of a required pharmacy element of a prescription are identified, each of the plurality of machine learning algorithms are trained to predict the value of the required pharmacy element using a first subset of previously received prescriptions, respective success rates for each of the plurality of machine learning algorithms at predicting respective known values of respective known required pharmacy elements for each of a second subset of the previously received prescriptions are determined, and a first of the plurality of machine learning algorithms having a highest success rate is selected to predict the value of the required pharmacy element of the prescription for a first predetermined period.
    Type: Application
    Filed: November 28, 2022
    Publication date: March 30, 2023
    Inventors: Sudipto Dey, Camille Patel, Pulla Reddy Yeduru, Robert Seyss
  • Patent number: 11515022
    Abstract: Methods and systems for selecting a machine learning algorithm are described. In one embodiment, one or more factors to be used by a plurality of machine learning algorithms in predicting a value of a required pharmacy element of a prescription are identified, each of the plurality of machine learning algorithms are trained to predict the value of the required pharmacy element using a first subset of previously received prescriptions, respective success rates for each of the plurality of machine learning algorithms at predicting respective known values of respective known required pharmacy elements for each of a second subset of the previously received prescriptions are determined, and a first of the plurality of machine learning algorithms having a highest success rate is selected to predict the value of the required pharmacy element of the prescription for a first predetermined period.
    Type: Grant
    Filed: February 11, 2019
    Date of Patent: November 29, 2022
    Assignee: Express Scripts Strategic Development, Inc.
    Inventors: Sudipto Dey, Camille Patel, Pulla R. Yeduru, Robert Seyss