Patents by Inventor Ala SHAABANA

Ala SHAABANA 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: 20240144246
    Abstract: Provided is a system and method for stake-prioritized serving of utility in a network of a plurality of servers, with stake verification on a proof-of-stake blockchain. For stake-controlled inflation the utility may be validated in a plurality of validators that set stake-weighted utility assessment values for each utility server registered on the blockchain, where a consensus calculator may determine a relative utility measure and level of agreement and adjusts the next block reward so that servers obtain inflation in proportion to their level of agreed utility. New servers and validators may register and may thereby activate stake in the utility network by solving a proof-of-work challenge verified on the blockchain, after which servers can serve utility and validators can validate utility and influence blockchain inflation distribution.
    Type: Application
    Filed: November 2, 2022
    Publication date: May 2, 2024
    Applicant: Opentensor Foundation
    Inventors: Jacob Robert Steeves, Ala Shaabana, Francois Pierre Sarel Luus, Sin Tai Liu, Yuiqan Hu
  • Patent number: 11669735
    Abstract: A system and method for automatically generating recurrent neural networks for log anomaly detection uses a controller recurrent neural network that generates an output set of hyperparameters when an input set of controller parameters is applied to the controller recurrent neural network. The output set of hyperparameters is applied to a target recurrent neural network to produce a child recurrent neural network with an architecture that is defined by the output set of hyperparameters. The child recurrent neural network is then trained, and a log classification accuracy of the child recurrent neural network is computed. Using the log classification accuracy, at least one of the controller parameters used to generate the child recurrent neural network is adjusted to produce a different input set of controller parameters to be applied to the controller recurrent neural network so that a different child recurrent neural network for log anomaly detection can be generated.
    Type: Grant
    Filed: January 23, 2020
    Date of Patent: June 6, 2023
    Assignee: VMWARE, INC.
    Inventors: Ala Shaabana, Arvind Mohan, Vikram Nair, Anant Agarwal, Aalap Desai, Ravi Kant Cherukupalli, Pawan Saxena
  • Publication number: 20210232906
    Abstract: A system and method for automatically generating recurrent neural networks for log anomaly detection uses a controller recurrent neural network that generates an output set of hyperparameters when an input set of controller parameters is applied to the controller recurrent neural network. The output set of hyperparameters is applied to a target recurrent neural network to produce a child recurrent neural network with an architecture that is defined by the output set of hyperparameters. The child recurrent neural network is then trained, and a log classification accuracy of the child recurrent neural network is computed. Using the log classification accuracy, at least one of the controller parameters used to generate the child recurrent neural network is adjusted to produce a different input set of controller parameters to be applied to the controller recurrent neural network so that a different child recurrent neural network for log anomaly detection can be generated.
    Type: Application
    Filed: January 23, 2020
    Publication date: July 29, 2021
    Inventors: Ala SHAABANA, Arvind MOHAN, Vikram NAIR, Anant AGARWAL, Aalap DESAI, Ravi Kant CHERUKUPALLI, Pawan SAXENA