Abstract: A system and method for data processing. A method includes sending, by a first system, a plurality of data processing requests to a buffer, wherein the buffer is stored in a second system, wherein the second system is remote from the first system; pulling a portion of the plurality of data processing requests from the buffer; processing the portion of the plurality of data processing requests pulled from the buffer in order to obtain at least one data processing result; and sending the at least one data processing result to the buffer.
Type:
Application
Filed:
August 21, 2023
Publication date:
February 27, 2025
Applicant:
LUMANA INC.
Inventors:
Ofir MULLA, Sagi BEN MOSHE, Edan SORSKI, Roy MICHAEL, Aviad ZABATANI, Ron KIMMEL, Oz DONNER, Yonatan Charls RESNIK
Abstract: Systems and methods for visual content processing. A method includes obtaining a subset of media content selected based on outputs of a first machine learning model, wherein the first machine learning model is produced by training a student model using outputs of a teacher model, wherein the outputs of the first machine learning model include a plurality of first predictions for a plurality of portions of the media content; and applying a second machine learning model to the obtained subset of media content, wherein the second machine learning model outputs a plurality of second predictions for respective portions of the plurality of portions, wherein a domain used by the first machine learning model is a subset of a domain used by the second machine learning model.
Type:
Application
Filed:
December 22, 2022
Publication date:
June 27, 2024
Applicant:
LUMANA INC.
Inventors:
Ofir MULLA, Noam ROTSTEIN, Amit BRACHA, Ron KIMMEL, Aviad ZABATANI, Ron SLOSSBERG, Sagi BEN MOSHE
Abstract: Systems and methods for visual content processing. A method includes applying teacher models to training candidates in order to output instances of a custom object label. The training candidates are selected using a student model based on search configuration parameters. A first set of media content is generated by labeling the training candidates based on the instances of the custom object label output by the teacher models. A custom model is created using the teacher models. The custom model is a machine learning model trained using the first set of media content. A subset of a second set of media content is obtained. The subset of the second set of media content is selected based on outputs of the custom model as applied to the second set of media content. An advanced machine learning model is applied to the obtained subset of the second set of media content.
Type:
Application
Filed:
March 20, 2023
Publication date:
June 27, 2024
Applicant:
LUMANA INC.
Inventors:
Ofir MULLA, Noam ROTSTEIN, Amit BRACHA, Ron KIMMEL, Aviad ZABATANI, Ron SLOSSBERG, Sagi BEN MOSHE