Patents by Inventor Maria KAZANDJIEVA

Maria KAZANDJIEVA 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: 11886470
    Abstract: A non-transitory computer readable storage medium has instructions executed by a processor to receive from a network connection different sources of unstructured data, where the unstructured data has multiple modes of semantically distinct data types and the unstructured data has time-varying data instances aggregated over time. An entity combining different sources of the unstructured data is formed. A representation for the entity is created, where the representation includes embeddings that are numeric vectors computed using machine learning embedding models. These operations are repeated to form an aggregation of multimodal, time-varying entities and a corresponding index of individual entities and corresponding embeddings. Proximity searches are performed on embeddings within the index.
    Type: Grant
    Filed: February 23, 2022
    Date of Patent: January 30, 2024
    Assignee: Graft, Inc.
    Inventors: Adam Oliner, Maria Kazandjieva, Eric Schkufza, Mher Hakobyan, Irina Calciu, Brian Calvert, Daniel Woolridge
  • Patent number: 11809417
    Abstract: A non-transitory computer readable storage medium has instructions executed by a processor to receive from a network connection different sources of unstructured data. An entity is formed by combining one or more sources of the unstructured data, where the entity has relational data attributes. A representation for the entity is created, where the representation includes embeddings that are numeric vectors computed using machine learning embedding models, including trunk models, where a trunk model is a machine learning model trained on data in a self-supervised manner. An enrichment model is created to predict a property of the entity. A query is processed to produce a query result, where the query is applied to one or more of the entity, the embeddings, the machine learning embedding models, and the enrichment model.
    Type: Grant
    Filed: September 28, 2021
    Date of Patent: November 7, 2023
    Assignee: Graft, Inc.
    Inventors: Adam Oliner, Maria Kazandjieva, Eric Schkufza, Mher Hakobyan, Irina Calciu, Brian Calvert
  • Publication number: 20230072311
    Abstract: A non-transitory computer readable storage medium has instructions executed by a processor to receive from a network connection different sources of unstructured data. An entity is formed by combining one or more sources of the unstructured data, where the entity has relational data attributes. A representation for the entity is created, where the representation includes embeddings that are numeric vectors computed using machine learning embedding models, including trunk models, where a trunk model is a machine learning model trained on data in a self-supervised manner. An enrichment model is created to predict a property of the entity. A query is processed to produce a query result, where the query is applied to one or more of the entity, the embeddings, the machine learning embedding models, and the enrichment model.
    Type: Application
    Filed: September 28, 2021
    Publication date: March 9, 2023
    Inventors: Adam OLINER, Maria KAZANDJIEVA, Eric SCHKUFZA, Mher HAKOBYAN, Irina CALCIU, Brian CALVERT
  • Publication number: 20230069958
    Abstract: A non-transitory computer readable storage medium has instructions executed by a processor to receive from a network connection different sources of unstructured data, where the unstructured data has multiple modes of semantically distinct data types and the unstructured data has time-varying data instances aggregated over time. An entity combining different sources of the unstructured data is formed. A representation for the entity is created, where the representation includes embeddings that are numeric vectors computed using machine learning embedding models. These operations are repeated to form an aggregation of multimodal, time-varying entities and a corresponding index of individual entities and corresponding embeddings. Proximity searches are performed on embeddings within the index.
    Type: Application
    Filed: February 23, 2022
    Publication date: March 9, 2023
    Inventors: Adam OLINER, Maria KAZANDJIEVA, Eric SCHKUFZA, Mher HAKOBYAN, Irina CALCIU, Brian CALVERT, Daniel WOOLRIDGE
  • Publication number: 20220414254
    Abstract: A non-transitory computer readable storage medium with instructions executed by a processor maintains a collection of data access connectors configured to access different sources of unstructured data. A user interface with prompts for designating a selected data access connector from the data access connectors is supplied. Unstructured data is received from the selected data access connector. Numeric vectors characterizing the unstructured data are created from the unstructured data. The numeric vectors are stored and indexed.
    Type: Application
    Filed: May 3, 2022
    Publication date: December 29, 2022
    Inventors: Adam OLINER, Maria KAZANDJIEVA, Eric SCHKUFZA, Mher HAKOBYAN, Irina CALCIU, Brian CALVERT, Deven NAVANI
  • Publication number: 20220414157
    Abstract: A non-transitory computer readable storage medium has instructions executed by a processor to maintain a repository of machine learning directed acyclic graphs. Each machine learning directed acyclic graph has machine learning artifacts as nodes and machine learning executors as edges joining machine learning artifacts. Each machine learning artifact has typed data that has associated conflict rules maintained by the repository. Each machine learning executor specifies executable code that executes a machine learning artifact as an input and produces a new machine learning artifact as an output. A request about an object in the repository is received. A response with information about the object is supplied.
    Type: Application
    Filed: June 29, 2022
    Publication date: December 29, 2022
    Inventors: Adam OLINER, Maria KAZANDJIEVA, Eric SCHKUFZA, Mher HAKOBYAN, Irina CALCIU, Brian CALVERT, Daniel WOOLRIDGE, Deven NAVANI