Patents by Inventor Marios Assiotis

Marios Assiotis 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: 11962817
    Abstract: Systems and methods for frequency management, including: an online media service configured to: receive a request for a media item, the request including a recipient identifier; identify a set of candidate media items ranked by a set of matching criteria; a frequency management service configured to: perform a query against a lookup service, where the query includes (i) an entity identifier of at least one candidate media item of the set of candidate media items, and (ii) the recipient identifier; receive a response from the lookup service including a quantity of impressions associated with the entity identifier and the recipient identifier; identify a predefined frequency threshold; determine that the frequency threshold is exceeded and exclude the at least one candidate media item from a result set based on the determination; and provide the result set including an identifier of at least one other candidate media item.
    Type: Grant
    Filed: February 21, 2022
    Date of Patent: April 16, 2024
    Assignee: TUBI, INC.
    Inventors: Khaldun Matter Ahmad AlDarabsah, Hailong Geng, Yu Tao Zhao, Yoshihiro Tanaka, Haofei Wang, Mark Alden Rotblat, Jaya Kawale, Chang She, Marios Assiotis, Joseph Gallagher, Chiyu Zhong, Amir Mazaheri
  • Publication number: 20220408129
    Abstract: Systems and methods for frequency management, including: an online media service configured to: receive a request for a media item, the request including a recipient identifier; identify a set of candidate media items ranked by a set of matching criteria; a frequency management service configured to: perform a query against a lookup service, where the query includes (i) an entity identifier of at least one candidate media item of the set of candidate media items, and (ii) the recipient identifier; receive a response from the lookup service including a quantity of impressions associated with the entity identifier and the recipient identifier; identify a predefined frequency threshold; determine that the frequency threshold is exceeded and exclude the at least one candidate media item from a result set based on the determination; and provide the result set including an identifier of at least one other candidate media item.
    Type: Application
    Filed: February 21, 2022
    Publication date: December 22, 2022
    Inventors: Khaldun Matter Ahmad AlDarabsah, Hailong Geng, Yu Tao Zhao, Yoshihiro Tanaka, Haofei Wang, Mark Alden Rotblat, Jaya Kawale, Chang She, Marios Assiotis, Joseph Gallagher, Chiyu Zhong, Amir Mazaheri
  • Publication number: 20220405809
    Abstract: Systems and methods for entity detection using artificial intelligence, including: a deep learning model service configured to: select and analyze a set of frames from a media item to determine a set of candidate brand-probability pairs; a voting engine configured to: determining that a first brand-probability pair of a set of candidate brand-probability pairs based on at least one obtained hyperparameter value does not meet a threshold for determining whether candidate brand-probability pairs are to be included in a result set; excluding the first brand-probability pair from the result set based on the determination; sorting the result set; and selecting at least one final brand-probability pair from the result set; and an offline transcoding service configured to: store the final brand-probability pair in a repository with a relation to an identifier of the media item.
    Type: Application
    Filed: February 21, 2022
    Publication date: December 22, 2022
    Inventors: Khaldun Matter Ahmad AlDarabsah, Hailong Geng, Yu Tao Zhao, Yoshihiro Tanaka, Haofei Wang, Mark Alden Rotblat, Jaya Kawale, Chang She, Marios Assiotis, Joseph Gallagher, Chiyu Zhong, Amir Mazaheri
  • Publication number: 20220406038
    Abstract: Systems and methods for programmatic generation of training data, including: a training data generation engine configured to: identify an image asset corresponding to an entity; identify a training video; select a consecutive subset of frames of the training video based on a procedure for ranking frames on their candidacy for overlaying content; for at least one frame of the subset of frames: perform an augmentation technique on the identified logo image to generate an augmented image asset; overlay at least one variation of the image asset, including the augmented image asset, onto each of the subset of frames to generate a set of overlayed frames; and generate an augmented version of the training video including the overlayed frames; and a model training engine configured to: train an artificial intelligence model for entity detection using the augmented version of the training video.
    Type: Application
    Filed: February 21, 2022
    Publication date: December 22, 2022
    Inventors: Khaldun Matter Ahmad AlDarabsah, Hailong Geng, Yu Tao Zhao, Yoshihiro Tanaka, Haofei Wang, Mark Alden Rotblat, Jaya Kawale, Chang She, Marios Assiotis, Joseph Gallagher, Chiyu Zhong, Amir Mazaheri
  • Publication number: 20220027776
    Abstract: System and methods for cold-starting content on a platform using machine learning including: identifying content metadata and contextual data both corresponding to a target content item; generating a target content item model by applying deep neural learning that: applies a word vector embedding operation to the content metadata to generate a collaborative filtering representation of the content metadata, applies a word vector embedding operation to the contextual data to generate a collaborative filtering representation of the contextual data, and bridges the collaborative filtering representations of the content metadata and the contextual data to generate the target content item model; applying deep neural learning to compare the target content item model with a set of existing content item models; determining cold-start characteristics of the target content item based on the comparison; and providing the cold-start characteristics for distribution management of the target content item.
    Type: Application
    Filed: July 21, 2020
    Publication date: January 27, 2022
    Applicant: Tubi, Inc.
    Inventors: John Trenkle, Snehal Mistry, Qiang Chen, Chang She, Rameen Mahdavi, Marios Assiotis
  • Publication number: 20220027373
    Abstract: System and methods for intuitive search operation results using machine learning including: identifying a first candidate content item matching a content item search request; identifying a first content item model corresponding to the first candidate content item including word vector collaborative filtering representations of the first candidate content item; identifying a set of content item models where each: is associated with at least one corresponding available content item, and includes word vector collaborative filtering representations; applying deep neural learning to compare the first content item model with the set of content item models to generate a subset of the content item models most relevant to the first content item model; generating a result set of available content items corresponding to the subset of the content item models most relevant to the first content item model; and providing the result set of available content items.
    Type: Application
    Filed: July 21, 2020
    Publication date: January 27, 2022
    Applicant: Tubi, Inc.
    Inventors: John Trenkle, Snehal Mistry, Qiang Chen, Chang She, Rameen Mahdavi, Marios Assiotis