Patents by Inventor Samuel Vincent Scarpino

Samuel Vincent Scarpino 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: 20190087475
    Abstract: Presented here is a system for automatic conversion of data between various data sets. In one embodiment, the system can obtain a data set, can analyze associations between the variables in the data set, and can convert the data set into a canonical data model. The canonical data model is a smaller representation of the original data set because insignificant variables and associations can be left out, and significant relationships can be represented procedurally and/or using mathematical functions. In one embodiment, part of the system can be a trained machine learning model which can convert the input data set into a canonical data model. The canonical data model can be a more efficient representation of the input data set. Consequently, various actions, such as an analysis of the data set, merging of two data sets, etc. can be performed more efficiently on the canonical data model.
    Type: Application
    Filed: September 12, 2018
    Publication date: March 21, 2019
    Inventors: Stefan Anastas Nagey, James Charles Bursa, Samuel Vincent Scarpino, Conor Matthew Hastings, Agastya Mondal, Michael Roytman
  • Publication number: 20190087474
    Abstract: Presented here is a system for automatic conversion of data between various data sets. In one embodiment, the system can obtain a data set, can analyze associations between the variables in the data set, and can convert the data set into a canonical data model. The canonical data model is a smaller representation of the original data set because insignificant variables and associations can be left out, and significant relationships can be represented procedurally and/or using mathematical functions. In one embodiment, part of the system can be a trained machine learning model which can convert the input data set into a canonical data model. The canonical data model can be a more efficient representation of the input data set. Consequently, various actions, such as an analysis of the data set, merging of two data sets, etc. can be performed more efficiently on the canonical data model.
    Type: Application
    Filed: September 12, 2018
    Publication date: March 21, 2019
    Inventors: Stefan Anastas Nagey, James Charles Bursa, Samuel Vincent Scarpino, Conor Matthew Hastings, Agastya Mondal, Michael Roytman