Patents by Inventor Lev Faivishevsky

Lev Faivishevsky 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: 20240112033
    Abstract: In an example, an apparatus comprises at least one execution platform; and logic, at least partially including hardware logic, to receive a trained neural network model in a model optimizer and convert the trained neural network model to an optimized model comprising parameters that are fit to the at least one execution platform. Other embodiments are also disclosed and claimed.
    Type: Application
    Filed: November 20, 2023
    Publication date: April 4, 2024
    Applicant: Intel Corporation
    Inventors: Amit Bleiweiss, Itamar Ben-Ari, Michael Behar, Guy Jacob, Gal Leibovich, Jacob Subag, Lev Faivishevsky, Yaniv Fais, Tomer Schwartz
  • Patent number: 11886984
    Abstract: In an example, an apparatus comprises a plurality of execution units comprising at least a first type of execution unit and a second type of execution unit and logic, at least partially including hardware logic, to expose embedded cast operations in at least one of a load instruction or a store instruction; determine a target precision level for the cast operations; and load the cast operations at the target precision level. Other embodiments are also disclosed and claimed.
    Type: Grant
    Filed: August 10, 2021
    Date of Patent: January 30, 2024
    Assignee: INTEL CORPORATION
    Inventors: Uzi Sarel, Ehud Cohen, Tomer Schwartz, Amitai Armon, Yahav Shadmiy, Amit Bleiweiss, Gal Leibovich, Jeremie Dreyfuss, Lev Faivishevsky, Tomer Bar-On, Yaniv Fais, Jacob Subag
  • Publication number: 20240028883
    Abstract: A mechanism is described for facilitating memory handling and data management in machine learning at autonomous machines. A method of embodiments, as described herein, includes detecting multiple tables associated with multiple neural networks at multiple autonomous machines, where each of the multiple tables include an index. The method may further include combining the multiple tables and multiple indexes associated with the multiple tables into a single table and a single index, respectively, where the single table is communicated to the multiple autonomous machines to allow simultaneous processing of one or more portions of the single table using one or more memory devices and one or more processors of one or more of the multiple autonomous machines.
    Type: Application
    Filed: July 26, 2023
    Publication date: January 25, 2024
    Applicant: Intel Corporation
    Inventors: Tomer Schwartz, Ehud Cohen, Uzi Sarel, Amitai Armon, Yaniv Fais, Lev Faivishevsky, Amit Bleiweiss, Yahav Shadmiy, Jacob Subag
  • Publication number: 20230394305
    Abstract: In an example, an apparatus comprises a plurality of execution units comprising and logic, at least partially including hardware logic, to receive a plurality of data inputs for training a neural network, wherein the data inputs comprise training data and weights inputs; represent the data inputs in a first form; and represent the weight inputs in a second form. Other embodiments are also disclosed and claimed.
    Type: Application
    Filed: May 30, 2023
    Publication date: December 7, 2023
    Applicant: Intel Corporation
    Inventors: Lev Faivishevsky, Tomer Bar-On, Yaniv Fais, Jacob Subag, Jeremie Dreyfuss, Amit Bleiweiss, Tomer Schwartz, Raanan Yonatan Yehezkel Rohekar, Michael Behar, Amitai Armon, Uzi Sarel
  • Publication number: 20230316589
    Abstract: In an example, an apparatus comprises logic, at least partially including hardware logic, to implement a lossy compression algorithm which utilizes a data transform and quantization process to compress data in a convolutional neural network (CNN) layer. Other embodiments are also disclosed and claimed.
    Type: Application
    Filed: March 28, 2023
    Publication date: October 5, 2023
    Applicant: Intel Corporation
    Inventors: Tomer Bar-On, Jacob Subag, Yaniv Fais, Jeremie Dreyfuss, Gal Novik, Gal Leibovich, Tomer Schwartz, Ehud Cohen, Lev Faivishevsky, Uzi Sarel, Amitai Armon, Yahav Shadmiy
  • Patent number: 11763140
    Abstract: A mechanism is described for facilitating memory handling and data management in machine learning at autonomous machines. A method of embodiments, as described herein, includes detecting multiple tables associated with multiple neural networks at multiple autonomous machines, where each of the multiple tables include an index. The method may further include combining the multiple tables and multiple indexes associated with the multiple tables into a single table and a single index, respectively, where the single table is communicated to the multiple autonomous machines to allow simultaneous processing of one or more portions of the single table using one or more memory devices and one or more processors of one or more of the multiple autonomous machines.
    Type: Grant
    Filed: August 5, 2021
    Date of Patent: September 19, 2023
    Assignee: INTEL CORPORATION
    Inventors: Tomer Schwartz, Ehud Cohen, Uzi Sarel, Amitai Armon, Yaniv Fais, Lev Faivishevsky, Amit Bleiweiss, Yahav Shadmiy, Jacob Subag
  • Publication number: 20230281435
    Abstract: In an example, an apparatus comprises a plurality of execution units comprising and logic, at least partially including hardware logic, to traverse a solution space, score a plurality of solutions to a scheduling deep learning network execution, and select a preferred solution from the plurality of solutions to implement the deep learning network. Other embodiments are also disclosed and claimed.
    Type: Application
    Filed: February 24, 2023
    Publication date: September 7, 2023
    Applicant: Intel Corporation
    Inventors: Eran Ben-Avi, Neta Zmora, Guy Jacob, Lev Faivishevsky, Jeremie Dreyfuss, Tomer Bar-On, Jacob Subag, Yaniv Fais, Shira Hirsch, Orly Weisel, Zigi Walter, Yarden Oren
  • Patent number: 11704564
    Abstract: In an example, an apparatus comprises a plurality of execution units comprising and logic, at least partially including hardware logic, to receive a plurality of data inputs for training a neural network, wherein the data inputs comprise training data and weights inputs; represent the data inputs in a first form; and represent the weight inputs in a second form. Other embodiments are also disclosed and claimed.
    Type: Grant
    Filed: August 17, 2021
    Date of Patent: July 18, 2023
    Assignee: INTEL CORPORATION
    Inventors: Lev Faivishevsky, Tomer Bar-On, Yaniv Fais, Jacob Subag, Jeremie Dreyfuss, Amit Bleiweiss, Tomer Schwartz, Raanan Yonatan Yehezkel Rohekar, Michael Behar, Amitai Armon, Uzi Sarel
  • Patent number: 11669719
    Abstract: In an example, an apparatus comprises logic, at least partially including hardware logic, to save one or more outputs of a deep learning neural network in a storage system of an autonomous vehicle and upload the one or more outputs to a remote server. Other embodiments are also disclosed and claimed.
    Type: Grant
    Filed: February 12, 2021
    Date of Patent: June 6, 2023
    Assignee: INTEL CORPORATION
    Inventors: Jeremie Dreyfuss, Amit Bleiweiss, Lev Faivishevsky, Tomer Bar-On, Yaniv Fais, Jacob Subag, Eran Ben-Avi, Neta Zmora, Tomer Schwartz
  • Patent number: 11656846
    Abstract: In an example, an apparatus comprises a plurality of execution units and logic, at least partially including hardware logic, to gate at least one of a multiply unit or an accumulate unit in response to an input of value zero. Other embodiments are also disclosed and claimed.
    Type: Grant
    Filed: November 24, 2020
    Date of Patent: May 23, 2023
    Assignee: INTEL CORPORATION
    Inventors: Yaniv Fais, Tomer Bar-On, Jacob Subag, Jeremie Dreyfuss, Lev Faivishevsky, Michael Behar, Amit Bleiweiss, Guy Jacob, Gal Leibovich, Itamar Ben-Ari, Galina Ryvchin, Eyal Yaacoby
  • Patent number: 11620766
    Abstract: In an example, an apparatus comprises logic, at least partially including hardware logic, to implement a lossy compression algorithm which utilizes a data transform and quantization process to compress data in a convolutional neural network (CNN) layer.
    Type: Grant
    Filed: June 10, 2021
    Date of Patent: April 4, 2023
    Assignee: INTEL CORPORATION
    Inventors: Tomer Bar-On, Jacob Subag, Yaniv Fais, Jeremie Dreyfuss, Gal Novik, Gal Leibovich, Tomer Schwartz, Ehud Cohen, Lev Faivishevsky, Uzi Sarel, Amitai Armon, Yahav Shadmiy
  • Patent number: 11600035
    Abstract: In an example, an apparatus comprises a plurality of execution units; and logic, at least partially including hardware logic, to determine a sub-graph of a network that can be executed in a frequency domain and apply computations in the sub-graph in the frequency domain. Other embodiments are also disclosed and claimed.
    Type: Grant
    Filed: February 10, 2022
    Date of Patent: March 7, 2023
    Assignee: INTEL CORPORATION
    Inventors: Uzi Sarel, Ehud Cohen, Tomer Schwartz, Amitai Armon, Yahav Shadmiy, Itamar Ben-Ari, Amit Bleiweiss, Lev Faivishevsky, Tomer Bar-On, Yaniv Fais, Jacob Subag, Michael Behar, Guy Jacob, Gal Leibovich, Jeremie Dreyfuss
  • Patent number: 11599777
    Abstract: In an example, an apparatus comprises a plurality of execution units comprising and logic, at least partially including hardware logic, to traverse a solution space, score a plurality of solutions to a scheduling deep learning network execution, and select a preferred solution from the plurality of solutions to implement the deep learning network. Other embodiments are also disclosed and claimed.
    Type: Grant
    Filed: April 28, 2017
    Date of Patent: March 7, 2023
    Assignee: Intel Corporation
    Inventors: Eran Ben-Avi, Neta Zmora, Guy Jacob, Lev Faivishevsky, Jeremie Dreyfuss, Tomer Bar-On, Jacob Subag, Yaniv Fais, Shira Hirsch, Orly Weisel, Zigi Walter, Yarden Oren
  • Publication number: 20220237850
    Abstract: In an example, an apparatus comprises a plurality of execution units; and logic, at least partially including hardware logic, to determine a sub-graph of a network that can be executed in a frequency domain and apply computations in the sub-graph in the frequency domain. Other embodiments are also disclosed and claimed.
    Type: Application
    Filed: February 10, 2022
    Publication date: July 28, 2022
    Applicant: Intel Corporation
    Inventors: Uzi Sarel, Ehud Cohen, Tomer Schwartz, Amitai Armon, Yahav Shadmiy, Itamar Ben-Ari, Amit Bleiweiss, Lev Faivishevsky, Tomer Bar-On, Yaniv Fais, Jacob Subag, Michael Behar, Guy Jacob, Gal Leibovich, Jeremie Dreyfuss
  • Patent number: 11301686
    Abstract: A mechanism is described for facilitating visual anomaly detection without reference in computing environments. An apparatus of embodiments, as described herein, includes one or more processors to select a frame from a sequence of multiple frames associated with a video stream captured by a camera, and dynamically compute a frame confidence score for the frame based on frame training data associated with frame. The one or more processors are further to detect one or more anomalies in the frame when the frame confidence score is less than a frame confidence threshold associated with the frame, where detecting includes dynamically comparing the frame confidence score with the frame confidence threshold through inference using frame field data and the frame training data.
    Type: Grant
    Filed: May 21, 2019
    Date of Patent: April 12, 2022
    Assignee: INTEL CORPORATION
    Inventors: Ashwin Muppalla, Sanket Save, Subash Sudireddy, Amitai Armon, Lev Faivishevsky, Moty Fania, Tahi Hollander
  • Publication number: 20220076118
    Abstract: In an example, an apparatus comprises a plurality of execution units comprising and logic, at least partially including hardware logic, to receive a plurality of data inputs for training a neural network, wherein the data inputs comprise training data and weights inputs; represent the data inputs in a first form; and represent the weight inputs in a second form. Other embodiments are also disclosed and claimed.
    Type: Application
    Filed: August 17, 2021
    Publication date: March 10, 2022
    Applicant: Intel Corporation
    Inventors: Lev Faivishevsky, Tomer Bar-On, Yaniv Fais, Jacob Subag, Jeremie Dreyfuss, Amit Bleiweiss, Tomer Schwartz, Raanan Yonatan Yehezkel Rohekar, Michael Behar, Amitai Armon, Uzi Sarel
  • Publication number: 20220067496
    Abstract: In an example, an apparatus comprises a plurality of execution units comprising at least a first type of execution unit and a second type of execution unit and logic, at least partially including hardware logic, to expose embedded cast operations in at least one of a load instruction or a store instruction; determine a target precision level for the cast operations; and load the cast operations at the target precision level. Other embodiments are also disclosed and claimed.
    Type: Application
    Filed: August 10, 2021
    Publication date: March 3, 2022
    Applicant: Intel Corporation
    Inventors: Uzi Sarel, Ehud Cohen, Tomer Schwartz, Amitai Armon, Yahav Shadmiy, Amit Bleiweiss, Gal Leibovich, Jeremie Dreyfuss, Lev Faivishevsky, Tomer Bar-On, Yaniv Fais, Jacob Subag
  • Publication number: 20220058469
    Abstract: A mechanism is described for facilitating memory handling and data management in machine learning at autonomous machines. A method of embodiments, as described herein, includes detecting multiple tables associated with multiple neural networks at multiple autonomous machines, where each of the multiple tables include an index. The method may further include combining the multiple tables and multiple indexes associated with the multiple tables into a single table and a single index, respectively, where the single table is communicated to the multiple autonomous machines to allow simultaneous processing of one or more portions of the single table using one or more memory devices and one or more processors of one or more of the multiple autonomous machines.
    Type: Application
    Filed: August 5, 2021
    Publication date: February 24, 2022
    Applicant: Intel Corporation
    Inventors: TOMER SCHWARTZ, Ehud Cohen, Uzi Sarel, Amitai Armon, Yaniv Fais, Lev Faivishevsky, Amit Bleiweiss, Yahav Shadmiy, Jacob Subag
  • Patent number: 11250610
    Abstract: In an example, an apparatus comprises a plurality of execution units; and logic, at least partially including hardware logic, to determine a sub-graph of a network that can be executed in a frequency domain and apply computations in the sub-graph in the frequency domain. Other embodiments are also disclosed and claimed.
    Type: Grant
    Filed: August 28, 2020
    Date of Patent: February 15, 2022
    Assignee: INTEL CORPORATION
    Inventors: Uzi Sarel, Ehud Cohen, Tomer Schwartz, Amitai Armon, Yahav Shadmiy, Itamar Ben-Ari, Amit Bleiweiss, Lev Faivishevsky, Tomer Bar-On, Yaniv Fais, Jacob Subag, Michael Behar, Guy Jacob, Gal Leibovich, Jeremie Dreyfuss
  • Patent number: 11238338
    Abstract: In an example, an apparatus comprises a plurality of execution units comprising and logic, at least partially including hardware logic, to receive a plurality of data inputs for training a neural network, wherein the data inputs comprise training data and weights inputs; represent the data inputs in a first form; and represent the weight inputs in a second form. Other embodiments are also disclosed and claimed.
    Type: Grant
    Filed: April 24, 2017
    Date of Patent: February 1, 2022
    Assignee: INTEL CORPORATION
    Inventors: Lev Faivishevsky, Tomer Bar-On, Yaniv Fais, Jacob Subag, Jeremie Dreyfuss, Amit Bleiweiss, Tomer Schwartz, Raanan Yonatan Yehezkel Rohekar, Michael Behar, Amital Armon, Uzi Sarel