Patents by Inventor Antony Savich

Antony Savich 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: 20140289445
    Abstract: There is provided a hardware accelerator system and method. The system and method relate to a low power scalable stream compute accelerator for general matrix multiply (GEMM). There is provided a systolic compute accelerator architecture for matrix operations. Further, the system may include an application specific engine.
    Type: Application
    Filed: March 24, 2014
    Publication date: September 25, 2014
    Inventor: Antony SAVICH
  • Patent number: 8468109
    Abstract: Systems and methods for a scalable artificial neural network, wherein the architecture includes: an input layer; at least one hidden layer; an output layer; and a parallelization subsystem configured to provide a variable degree of parallelization to the artificial neural network by providing scalability to neurons and layers. In a particular case, the systems and methods may include a back-propagation subsystem that is configured to scalably adjust weights in the artificial neural network in accordance with the variable degree of parallelization. Systems and methods are also provided for selecting an appropriate degree of parallelization based on factors such as hardware resources and performance requirements.
    Type: Grant
    Filed: December 28, 2011
    Date of Patent: June 18, 2013
    Inventors: Medhat Moussa, Antony Savich, Shawki Areibi
  • Publication number: 20120166374
    Abstract: Systems and methods for a scalable artificial neural network, wherein the architecture includes: an input layer; at least one hidden layer; an output layer; and a parallelization subsystem configured to provide a variable degree of parallelization to the artificial neural network by providing scalability to neurons and layers. In a particular case, the systems and methods may include a back-propagation subsystem that is configured to scalably adjust weights in the artificial neural network in accordance with the variable degree of parallelization. Systems and methods are also provided for selecting an appropriate degree of parallelization based on factors such as hardware resources and performance requirements.
    Type: Application
    Filed: December 28, 2011
    Publication date: June 28, 2012
    Inventors: Medhat Moussa, Antony Savich, Shawki Areibi
  • Patent number: 8103606
    Abstract: An architecture, systems and methods for a scalable artificial neural network, wherein the architecture includes: an input layer; at least one hidden layer; an output layer; and a parallelization subsystem configured to provide a variable degree of parallelization to the input layer, at least one hidden layer, and output layer. In a particular case, the architecture includes a back-propagation subsystem that is configured to adjust weights in the scalable artificial neural network in accordance with the variable degree of parallelization. Systems and methods are also provided for selecting an appropriate degree of parallelization based on factors such as hardware resources and performance requirements.
    Type: Grant
    Filed: December 10, 2007
    Date of Patent: January 24, 2012
    Inventors: Medhat Moussa, Antony Savich, Shawki Areibi
  • Publication number: 20080319933
    Abstract: An architecture, systems and methods for a scalable artificial neural network, wherein the architecture includes: an input layer; at least one hidden layer; an output layer; and a parallelization subsystem configured to provide a variable degree of parallelization to the input layer, at least one hidden layer, and output layer. In a particular case, the architecture includes a back-propagation subsystem that is configured to adjust weights in the scalable artificial neural network in accordance with the variable degree of parallelization. Systems and methods are also provided for selecting an appropriate degree of parallelization based on factors such as hardware resources and performance requirements.
    Type: Application
    Filed: December 10, 2007
    Publication date: December 25, 2008
    Inventors: Medhat Moussa, Antony Savich, Shawki Areibi