Patents by Inventor Jyotiswarup Pai Raiturkar

Jyotiswarup Pai Raiturkar 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: 20220051282
    Abstract: Systems and methods for generating recommended offers are disclosed. An example method may be performed by one or more processors of a recommendation system and include correlating attributes of users with attributes of offers based on historical data associated with the users and offers, training a machine learning model to predict a user's interest in an offer based on the correlating, obtaining current user data, obtaining current offer data, providing the current user data and the current offer data to the trained machine learning model, generating, using the trained machine learning model, a predicted level of interest that the current user has in each respective current offer of the number of current offers, identifying, among the number of current offers, at least one current offer having a predicted level of interest for the current user greater than a value, and generating one or more recommended offers for the current user.
    Type: Application
    Filed: October 28, 2021
    Publication date: February 17, 2022
    Applicant: Intuit Inc.
    Inventors: Yao H. MORIN, James JENNINGS, Christian A. RODRIGUEZ, Lei PEI, Jyotiswarup Pai RAITURKAR
  • Patent number: 11244340
    Abstract: User data from users/consumers is transformed into machine learning training data including historical offer attribute model training data, historical offer performance model training data, and user attribute model training data associated with two or more users/consumers, and, in some cases, millions, tens of millions, or hundreds of millions or more, users/consumers. The machine learning training data is then used to train one or more offer/attribute matching models in an offline training environment. A given current user's data and current offer data are then provided as input data to the offer/attribute matching models in an online runtime/execution environment to identify current offers predicted to have a threshold level of user interest. Recommendation data representing these offers is then provided to the user and the current user's actions with respect to the recommended offers is monitored and used as online training data.
    Type: Grant
    Filed: January 19, 2018
    Date of Patent: February 8, 2022
    Assignee: Intuit Inc.
    Inventors: Yao H. Morin, James Jennings, Christian A. Rodriguez, Lei Pei, Jyotiswarup Pai Raiturkar
  • Patent number: 11170433
    Abstract: Big data analysis methods and machine learning based models are used to provide offer recommendations to consumers that are probabilistically determined to be relevant to a given consumer. Machine learning based matching of user attributes and offer attributes is first performed to identify potentially relevant offers for a given consumer. A de-duplication process is then used to identify and eliminate any offers represented in the offer data that the consumer has already seen, has historically shown no interest in, has already accepted, that are directed to product or service types the user/consumer already owns, for which the user does not qualify, or that are otherwise deemed to be irrelevant to the consumer.
    Type: Grant
    Filed: June 25, 2020
    Date of Patent: November 9, 2021
    Assignee: Intuit Inc.
    Inventors: Yao H. Morin, James Jennings, Christian A. Rodriguez, Lei Pei, Jyotiswarup Pai Raiturkar
  • Publication number: 20200327604
    Abstract: Big data analysis methods and machine learning based models are used to provide offer recommendations to consumers that are probabilistically determined to be relevant to a given consumer. Machine learning based matching of user attributes and offer attributes is first performed to identify potentially relevant offers for a given consumer. A de-duplication process is then used to identify and eliminate any offers represented in the offer data that the consumer has already seen, has historically shown no interest in, has already accepted, that are directed to product or service types the user/consumer already owns, for which the user does not qualify, or that are otherwise deemed to be irrelevant to the consumer.
    Type: Application
    Filed: June 25, 2020
    Publication date: October 15, 2020
    Applicant: Intuit Inc.
    Inventors: Yao H. Morin, James Jennings, Christian A. Rodriguez, Lei Pei, Jyotiswarup Pai Raiturkar
  • Patent number: 10706453
    Abstract: Big data analysis methods and machine learning based models are used to provide offer recommendations to consumers that are probabilistically determined to be relevant to a given consumer. Machine learning based matching of user attributes and offer attributes is first performed to identify potentially relevant offers for a given consumer. A de-duplication process is then used to identify and eliminate any offers represented in the offer data that the consumer has already seen, has historically shown no interest in, has already accepted, that are directed to product or service types the user/consumer already owns, for which the user does not qualify, or that are otherwise deemed to be irrelevant to the consumer.
    Type: Grant
    Filed: January 9, 2018
    Date of Patent: July 7, 2020
    Assignee: Intuit Inc.
    Inventors: Yao H. Morin, James Jennings, Christian A. Rodriguez, Lei Pei, Jyotiswarup Pai Raiturkar