Patents by Inventor EVANGELOS GEORGANAS

EVANGELOS GEORGANAS 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: 20230315450
    Abstract: Systems, methods, and apparatuses relating to 8-bit floating-point matrix dot product instructions are described.
    Type: Application
    Filed: May 5, 2023
    Publication date: October 5, 2023
    Applicant: Intel Corporation
    Inventors: Naveen Mellempudi, Alexander F. Heinecke, Robert Valentine, Mark J. Charney, Christopher J. Hughes, Evangelos Georganas, Zeev Sperber, Amit Gradstein, Simon Rubanovich
  • Publication number: 20230101512
    Abstract: Techniques for shared data prefetch are described. An exemplary instruction for shared data prefetch includes at least one field for an opcode, at least one field for a source operand to provide a memory address at least a byte of data, wherein the opcode is to indicate that circuitry is to fetch of a line of data from memory at the provided address that contains the byte specified with the source operand and store that byte in at least a cache local to a requester, wherein the byte of data is to be stored in a shared state.
    Type: Application
    Filed: September 25, 2021
    Publication date: March 30, 2023
    Inventors: Christopher HUGHES, Zhe WANG, Dan BAUM, Alexander HEINECKE, Evangelos GEORGANAS, Lingxiang XIANG, Joseph NUZMAN, Ritu GUPTA
  • Publication number: 20230102279
    Abstract: Systems, methods, and apparatuses relating sparsity based FMA. In some examples, an instance of a single FMA instruction has one or more fields for an opcode, one or more fields to identify a source/destination matrix operand, one or more fields to identify a first plurality of source matrix operands, one or more fields to identify a second plurality of matrix operands, wherein the opcode is to indicate that execution circuitry is to select a proper subset of data elements from the first plurality of source matrix operands based on sparsity controls from a first matrix operand of the second plurality of matrix operands and perform a FMA.
    Type: Application
    Filed: September 25, 2021
    Publication date: March 30, 2023
    Inventors: Menachem ADELMAN, Robert VALENTINE, Dan BAUM, Amit GRADSTEIN, Simon RUBANOVICH, Regev SHEMY, Zeev SPERBER, Alexander HEINECKE, Christopher HUGHES, Evangelos GEORGANAS, Mark CHARNEY, Arik NARKIS, Rinat RAPPOPORT, Barukh ZIV, Yaroslav POLLAK, Nilesh JAIN, Yash AKHAURI, Brinda GANESH, Rajesh POORNACHANDRAN, Guy BOUDOUKH
  • Publication number: 20230072105
    Abstract: Techniques for comparing BF16 data elements are described. An exemplary BF16 comparison instruction includes fields for an opcode, an identification of a location of a first packed data source operand, and an identification of a location of a second packed data source operand, wherein the opcode is to indicate that execution circuitry is to perform, for a particular data element position of the packed data source operands, a comparison of a data element at that position, and update a flags register based on the comparison.
    Type: Application
    Filed: August 31, 2021
    Publication date: March 9, 2023
    Inventors: Alexander HEINECKE, Menachem ADELMAN, Robert VALENTINE, Zeev SPERBER, Amit GRADSTEIN, Mark CHARNEY, Evangelos GEORGANAS, Dhiraj KALAMKAR, Christopher HUGHES, Cristina ANDERSON
  • Publication number: 20230067810
    Abstract: Techniques for performing BF16 FMA in response to an instruction are described.
    Type: Application
    Filed: August 31, 2021
    Publication date: March 2, 2023
    Inventors: Alexander HEINECKE, Menachem ADELMAN, Robert VALENTINE, Zeev SPERBER, Amit GRADSTEIN, Mark CHARNEY, Evangelos GEORGANAS, Dhiraj KALAMKAR, Christopher HUGHES, Cristina ANDERSON
  • Publication number: 20230068781
    Abstract: Techniques for scale and reduction of BF16 data elements are described. An exemplary instruction includes fields for an having fields for an opcode, an identification of a location of a first packed data source operand, an identification of a location of a second packed data source operand, and an identification of a packed data destination operand, wherein the opcode is to indicate that execution circuitry is to perform, for each data element position of the packed data source operands, a floating point scale operation of a BF16 data element of the first packed data source by multiplying the data element by a power of 2 value, wherein a value of the exponent of the power of 2 value is a floor value of a BF16 data element of the second packed data source, and store a result of the floating point scale operation into a corresponding data element position of the packed data destination operand.
    Type: Application
    Filed: August 31, 2021
    Publication date: March 2, 2023
    Inventors: Menachem ADELMAN, Alexander HEINECKE, Robert VALENTINE, Zeev SPERBER, Amit GRADSTEIN, Mark CHARNEY, Evangelos GEORGANAS, Dhiraj KALAMKAR, Christopher HUGHES, Cristina ANDERSON
  • Publication number: 20230069000
    Abstract: Techniques for performing arithmetic operations on BF16 values are described. An exemplary instruction includes fields for an opcode, an identification of a location of a first packed data source operand, an identification of a location of a second packed data source operand, and an identification of location of a packed data destination operand, wherein the opcode is to indicate an arithmetic operation execution circuitry is to perform, for each data element position of the identified packed data source operands, the arithmetic operation on BF16 data elements in that data element position in BF16 format and store a result of each arithmetic operation into a corresponding data element position of the identified packed data destination operand.
    Type: Application
    Filed: August 31, 2021
    Publication date: March 2, 2023
    Inventors: Alexander HEINECKE, Menachem ADELMAN, Robert VALENTINE, Zeev SPERBER, Amit GRADSTEIN, Mark CHARNEY, Evangelos GEORGANAS, Dhiraj KALAMKAR, Christopher HUGHES, Cristina ANDERSON
  • Publication number: 20230061618
    Abstract: Techniques for performing square root or reciprocal square root calculations on BF16 data elements in response to an instruction are described. An example of an instruction is one that includes fields for an opcode, an identification of a location of a packed data source operand, and an identification of a packed data destination operand, wherein the opcode is to indicate that execution circuitry is to perform, for each data element position of the packed data source operand, a calculation of a square root value of a BF16 data element in that position and store a result of each square root into a corresponding data element position of the packed data destination operand.
    Type: Application
    Filed: August 31, 2021
    Publication date: March 2, 2023
    Inventors: Menachem ADELMAN, Alexander HEINECKE, Robert VALENTINE, Zeev SPERBER, Amit GRADSTEIN, Mark CHARNEY, Evangelos GEORGANAS, Dhiraj KALAMKAR, Christopher HUGHES, Cristina ANDERSON
  • Publication number: 20230060146
    Abstract: Techniques for BF16 classification or manipulation using single instructions are described. An exemplary instruction includes fields for an opcode, an identification of a location of a packed data source operand, an indication of one or more classification checks to perform, and an identification of a packed data destination operand, wherein the opcode is to indicate that execution circuitry is to perform, for each data element position of the packed data source operand, a classification according to the indicated one or more classification checks and store a result of the classification in a corresponding data element position of the destination operand.
    Type: Application
    Filed: August 31, 2021
    Publication date: March 2, 2023
    Inventors: Menachem ADELMAN, Alexander HEINECKE, Robert VALENTINE, Zeev SPERBER, Amit GRADSTEIN, Mark CHARNEY, Evangelos GEORGANAS, Dhiraj KALAMKAR, Christopher HUGHES, Cristina ANDERSON
  • Publication number: 20220414182
    Abstract: Techniques for matrix multiplication are described. In some examples, decode circuitry is to decode a single instruction having fields for an opcode, an indication of a location of a first source operand, an indication of a location of a second source operand, and an indication of a location of a destination operand, wherein the opcode is to indicate that execution circuitry is to at least convert data elements of the first and second source operands from a first floating point representation to a second floating point representation, perform matrix multiplication with the converted data elements, and accumulate results of the matrix multiplication in the destination operand in the first floating point representation; and the execution circuitry is to execute to the decoded instruction as specified by the opcode.
    Type: Application
    Filed: June 26, 2021
    Publication date: December 29, 2022
    Inventors: Menachem ADELMAN, Robert VALENTINE, Zeev SPERBER, Amit GRADSTEIN, Simon RUBANOVICH, Sagi MELLER, Christopher HUGHES, Evangelos GEORGANAS, Alexander HEINECKE, Mark CHARNEY
  • Patent number: 11386256
    Abstract: Systems and methods for determining a configuration for a microarchitecture are described herein. An example system includes a proposal generator to generate a first candidate configuration of parameters for the microarchitecture, a machine learning model to process the first candidate configuration of parameters to output estimated performance indicators for the microarchitecture, an uncertainty checker to determine whether the estimated performance indicators are reliable, and a performance checker. In response to a determination that the estimated performance indicators are reliable, the performance checker is to determine whether the estimated performance indicators have improved toward a target. Further, if the estimated performance indicators have improved, the performance checker is to store the first candidate configuration of parameters in a memory as a potential solution for a microarchitecture without performing a full simulation on the first candidate configuration of parameters.
    Type: Grant
    Filed: November 30, 2020
    Date of Patent: July 12, 2022
    Assignee: Intel Corporation
    Inventors: Javier Sebastián Turek, Javier Felip Leon, Alexander Heinecke, Evangelos Georganas, Luis Carlos Maria Remis, Ignacio Javier Alvarez, David Israel Gonzalez Aguirre, Shengtian Zhou, Justin Gottschlich
  • Publication number: 20220206743
    Abstract: Techniques for converting FP16 to BF8 using bias are described.
    Type: Application
    Filed: December 26, 2020
    Publication date: June 30, 2022
    Inventors: Alexander Heinecke, Naveen Mellempudi, Robert Valentine, Mark Charney, Christopher Hughes, Evangelos Georganas, Zeev Sperber, Amit Gradstein, Simon Rubanovich
  • Publication number: 20220206801
    Abstract: Systems, methods, and apparatuses relating to 8-bit floating-point matrix dot product instructions are described.
    Type: Application
    Filed: December 26, 2020
    Publication date: June 30, 2022
    Applicant: Intel Corporation
    Inventors: Naveen Mellempudi, Alexander F. Heinecke, Robert Valentine, Mark J. Charney, Christopher J. Hughes, Evangelos Georganas, Zeev Sperber, Amit Gradstein, Simon Rubanovich
  • Publication number: 20220206805
    Abstract: Techniques for converting FP16 data elements to BF8 data elements using a single instruction are described. An exemplary apparatus includes decoder circuitry to decode a single instruction, the single instruction to include a one or more fields to identify a source operand, one or more fields to identify a destination operand, and one or more fields for an opcode, the opcode to indicate that execution circuitry is to convert packed half-precision floating-point data from the identified source to packed bfloat8 data and store the packed bfloat8 data into corresponding data element positions of the identified destination operand; and execution circuitry to execute the decoded instruction according to the opcode to convert packed half-precision floating-point data from the identified source to packed bfloat8 data and store the packed bfloat8 data into corresponding data element positions.
    Type: Application
    Filed: December 26, 2020
    Publication date: June 30, 2022
    Inventors: Alexander Heinecke, Naveen Mellempudi, Robert Valentine, Mark Charney, Christopher Hughes, Evangelos Georganas, Zeev Sperber, Amit Gradstein, Simon Rubanovich
  • Patent number: 11354564
    Abstract: An example includes a sequence generator to generate a plurality of sequence pairs, a first one of the sequence pairs including: (i) a first input sequence representing first accesses to first tensors in a first loop nest of a first computer program, and (ii) a first output sequence representing a first tuned loop nest corresponding to the first accesses to the first tensors in the first loop nest; a model trainer to train a recurrent neural network based on the sequence pairs as training data, the recurrent neural network to be trained to tune loop ordering of a second computer program based on a second input sequence representing second accesses to a second tensor in a second loop nest of the second computer program; and a memory interface to store, in memory, a trained model corresponding to the recurrent neural network.
    Type: Grant
    Filed: June 27, 2019
    Date of Patent: June 7, 2022
    Assignee: Intel Corporation
    Inventors: Alexander Heinecke, Evangelos Georganas, Justin Gottschlich
  • Publication number: 20220100502
    Abstract: Systems, methods, and apparatuses relating to 16-bit floating-point matrix dot product instructions are described.
    Type: Application
    Filed: December 24, 2020
    Publication date: March 31, 2022
    Inventors: ALEXANDER F. HEINECKE, ROBERT VALENTINE, MARK J. CHARNEY, MENACHEM ADELMAN, CHRISTOPHER J. HUGHES, EVANGELOS GEORGANAS, ZEEV SPERBER, AMIT GRADSTEIN, SIMON RUBANOVICH
  • Publication number: 20220100513
    Abstract: Systems, methods, and apparatuses relating to one or more instructions that load data into a tile register and pad a row (or column) with a pad value from a padding circuit are described.
    Type: Application
    Filed: December 24, 2020
    Publication date: March 31, 2022
    Inventors: CHRISTOPHER J. HUGHES, ALEXANDER HEINECKE, ROBERT VALENTINE, MENACHEM ADELMAN, EVANGELOS GEORGANAS, MARK CHARNEY
  • Publication number: 20220100507
    Abstract: Systems, methods, and apparatuses relating to instructions to convert 16-bit floating-point formats are described. In one embodiment, a processor includes fetch circuitry to fetch a single instruction having fields to specify an opcode and locations of a source vector comprising N plurality of 16-bit half-precision floating-point elements, and a destination vector to store N plurality of 16-bit bfloat floating-point elements, the opcode to indicate execution circuitry is to convert each of the elements of the source vector from 16-bit half-precision floating-point format to 16-bit bfloat floating-point format and store each converted element into a corresponding location of the destination vector, decode circuitry to decode the fetched single instruction into a decoded single instruction, and the execution circuitry to respond to the decoded single instruction as specified by the opcode.
    Type: Application
    Filed: December 24, 2020
    Publication date: March 31, 2022
    Inventors: ALEXANDER F. HEINECKE, ROBERT VALENTINE, MARK J. CHARNEY, MENACHEM ADELMAN, CHRISTOPHER J. HUGHES, EVANGELOS GEORGANAS, ZEEV SPERBER, AMIT GRADSTEIN, SIMON RUBANOVICH
  • Publication number: 20210406012
    Abstract: Embodiments for loading and storing matrix data with datatype conversion are disclosed. In an embodiment, a processor includes a decoder and execution circuitry. The decoder is to decode an instruction having a format including an opcode field to specify an opcode, a first destination operand field to specify a first destination matrix location, and a first source operand field to specify a first source matrix location. The execution circuitry is to, in response to the decoded instruction, convert data elements from a plurality of source element locations of a first source matrix specified by the first source matrix location from a first datatype to a second datatype to generate a plurality of converted data elements and to store each of the plurality of converted data elements in one of a plurality of destination element locations in a first destination matrix specified by the first destination matrix location.
    Type: Application
    Filed: June 27, 2020
    Publication date: December 30, 2021
    Applicant: Intel Corporation
    Inventors: Menachem Adelman, Robert Valentine, Gideon Stupp, Yaroslav Pollak, Amit Gradstein, Simon Rubanovich, Zeev Sperber, Mark J. Charney, Christopher J. Hughes, Alexander F. Heinecke, Evangelos Georganas
  • Publication number: 20210405974
    Abstract: Embodiments for a matrix transpose and multiply operation are disclosed. In an embodiment, a processor includes a decoder and execution circuitry. The decoder is to decode an instruction having a format including an opcode field to specify an opcode, a first destination operand field to specify a destination matrix location, a first source operand field to specify a first source matrix location, and a second source operand field to specify a second source matrix location. The execution circuitry is to, in response to the decoded instruction, transpose the first source matrix to generate a transposed first source matrix, perform a matrix multiplication using the transposed first source matrix and the second source matrix to generate a result, and store the result in a destination matrix location.
    Type: Application
    Filed: June 27, 2020
    Publication date: December 30, 2021
    Applicant: Intel Corporation
    Inventors: Menachem Adelman, Robert Valentine, Barukh Ziv, Amit Gradstein, Simon Rubanovich, Zeev Sperber, Mark J. Charney, Christopher J. Hughes, Alexander F. Heinecke, Evangelos Georganas, Binh Pham