Patents by Inventor Manuel Le Gallo-Bourdeau

Manuel Le Gallo-Bourdeau 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: 20190179872
    Abstract: A multiplication device for performing a matrix-vector-multiplication may be provided. The multiplication device comprises a memristive crossbar array comprising a plurality of memristive devices. The device comprises a decomposition unit adapted for decomposing a matrix into a partial sum of multiple sub-matrices, and decomposing a vector into a sum of multiple sub-vectors, a programming unit adapted for programing the plurality of the memristive devices with values representing elements of the sub-matrices such that each one of the memristive devices corresponds to one of the elements of the sub-matrices, an applying unit adapted for applying elements of one of the multiple sub-vectors as input values to the memristive crossbar array to input lines of the memristive crossbar array resulting in partial results at output lines of the memristive crossbar array, and a summing unit adapted for scaling and summing the partial results building the product of the matrix and the vector.
    Type: Application
    Filed: February 15, 2019
    Publication date: June 13, 2019
    Inventors: Konstantinos Bekas, Alessandro Curioni, Evangelos Stavros Eleftheriou, Manuel Le Gallo-Bourdeau, Adelmo Cristiano Innocenza Malossi, Abu Sebastian
  • Publication number: 20190122105
    Abstract: Methods and apparatus are provided for training an artificial neural network having a succession of layers of neurons interposed with layers of synapses. A set of crossbar arrays of memristive devices, connected between row and column lines, implements the layers of synapses. Each memristive device stores a weight for a synapse interconnecting a respective pair of neurons in successive neuron layers. The training method includes performing forward propagation, backpropagation and weight-update operations of an iterative training scheme by applying input signals, associated with respective neurons, to row or column lines of the set of arrays to obtain output signals on the other of the row or column lines, and storing digital signal values corresponding to the input and output signals. The weight-update operation is performed by calculating digital weight-correction values for respective memristive devices, and applying programming signals to those devices to update the stored weights.
    Type: Application
    Filed: June 29, 2018
    Publication date: April 25, 2019
    Inventors: IREM BOYBAT KARA, EVANGELOS STAVROS ELEFTHERIOU, MANUEL LE GALLO-BOURDEAU, NANDAKUMAR SASIDHARAN RAJALEKSHMI, ABU SEBASTIAN
  • Publication number: 20190122727
    Abstract: A sensor device comprising a computational memory and electronic circuitry. The sensor device is configured to receive an input signal, to compress the input signal into a compressed signal and to compute a reconstructed signal from the compressed signal. The electronic circuitry is configured to perform a reconstruction algorithm to compute the reconstructed signal. The computational memory is configured to compute the compressed signal and partial results of the reconstruction algorithm. A related method and a related design structure may be provided.
    Type: Application
    Filed: July 10, 2018
    Publication date: April 25, 2019
    Inventors: Manuel Le Gallo-Bourdeau, Abu Sebastian, Giovanni Cherubini
  • Patent number: 10210138
    Abstract: A multiplication device for performing a matrix-vector-multiplication may be provided. The multiplication device comprises a memristive crossbar array comprising a plurality of memristive devices. The device comprises a decomposition unit adapted for decomposing a matrix into a partial sum of multiple sub-matrices, and decomposing a vector into a sum of multiple sub-vectors, a programming unit adapted for programming the plurality of the memristive devices with values representing elements of the sub-matrices such that each one of the memristive devices corresponds to one of the elements of the sub-matrices, an applying unit adapted for applying elements of one of the multiple sub-vectors as input values to the memristive crossbar array to input lines of the memristive crossbar array resulting in partial results at output lines of the memristive crossbar array, and a summing unit adapted for scaling and summing the partial results building the product of the matrix and the vector.
    Type: Grant
    Filed: July 19, 2017
    Date of Patent: February 19, 2019
    Assignee: International Business Machines Corporation
    Inventors: Konstantinos Bekas, Alessandro Curioni, Evangelos Stavros Eleftheriou, Manuel Le Gallo-Bourdeau, Adelmo Cristiano Innocenza Malossi, Abu Sebastian
  • Publication number: 20190026251
    Abstract: A multiplication device for performing a matrix-vector-multiplication may be provided. The multiplication device comprises a memristive crossbar array comprising a plurality of memristive devices. The device comprises a decomposition unit adapted for decomposing a matrix into a partial sum of multiple sub-matrices, and decomposing a vector into a sum of multiple sub-vectors, a programming unit adapted for programming the plurality of the memristive devices with values representing elements of the sub-matrices such that each one of the memristive devices corresponds to one of the elements of the sub-matrices, an applying unit adapted for applying elements of one of the multiple sub-vectors as input values to the memristive crossbar array to input lines of the memristive crossbar array resulting in partial results at output lines of the memristive crossbar array, and a summing unit adapted for scaling and summing the partial results building the product of the matrix and the vector.
    Type: Application
    Filed: July 19, 2017
    Publication date: January 24, 2019
    Inventors: Konstantinos Bekas, Alessandro Curioni, Evangelos Stavros Eleftheriou, Manuel Le Gallo-Bourdeau, Adelmo Cristiano Innocenza Malossi, Abu Sebastian
  • Patent number: 10114613
    Abstract: A computing system includes computational memory and digital combinational circuitry operatively coupled with the computational memory. The computational memory is configured to perform computations at a prescribed precision. The digital combinational circuitry is configured to increase the precision of the computations performed by the computational memory. The computational memory and the digital combinational circuitry may be configured to iteratively perform a computation to a predefined precision. The computational memory may include circuitry configured to perform analog computation using values stored in the computational memory, and the digital combinational circuitry may include a central processing unit, a graphics processing unit and/or application specific circuitry. The computational memory may include an array of resistive memory elements having resistance or conductance values stored therein, the respective resistance or conductance values being programmable.
    Type: Grant
    Filed: September 7, 2016
    Date of Patent: October 30, 2018
    Assignee: International Business Machines Corporation
    Inventors: Konstantinos Bekas, Alessandro Curioni, Evangelos S. Eleftheriou, Manuel Le Gallo-Bourdeau, Abu Sebastian, Tomas Tuma
  • Patent number: 10079058
    Abstract: The invention is notably directed to a device for performing a matrix-vector multiplication of a matrix with a vector. The device comprises a memory crossbar array comprising of row lines, of columns lines and of junctions arranged between the row lines and the column lines. Each junction comprises a programmable resistive memory element. The device comprises a signal generator and a readout circuit. The device is configured to perform a calibration procedure to compensate for conductance variations of the resistive memory elements. The calibration procedure is configured to program a calibration subset of the plurality of resistive memory elements to initial conductance values and to apply a constant calibration voltage to the row lines of the calibration subset. The device is configured to read calibration current values of the column lines of the calibration subset and to derive an estimation of a conductance variation parameter from the calibration current values.
    Type: Grant
    Filed: August 24, 2017
    Date of Patent: September 18, 2018
    Assignee: International Business Machines Corporation
    Inventors: Evangelos S. Eleftheriou, Manuel Le Gallo-Bourdeau, Abu Sebastian
  • Publication number: 20180068217
    Abstract: Artificial neuron apparatus includes first and second resistive memory cells. The first resistive memory cell is connected in first circuitry having a first input and output. The second resistive memory cell is connected in second circuitry having a second input and output. The first and second circuitry are operable in alternating read and write phases to apply a programming current to their respective memory cells on receipt of excitatory and inhibitory neuron input signals, respectively. During the write phase, resistance of the respective cells is changed in response to successive excitatory and inhibitory neuron input signals. During the read phase, a read current is applied to their respective cells to produce first and second measurement signals, respectively. An output circuit connected to the first and second outputs produces a neuron output signal at a neuron output when a difference between the first and second measurement signals traverses a threshold.
    Type: Application
    Filed: September 7, 2016
    Publication date: March 8, 2018
    Inventors: Evangelos S. Eleftheriou, Lukas Kull, Manuel Le Gallo-Bourdeau, Angeliki Pantazi, Abu Sebastian, Tomas Tuma
  • Publication number: 20180067720
    Abstract: A computing system includes computational memory and digital combinational circuitry operatively coupled with the computational memory. The computational memory is configured to perform computations at a prescribed precision. The digital combinational circuitry is configured to increase the precision of the computations performed by the computational memory. The computational memory and the digital combinational circuitry may be configured to iteratively perform a computation to a predefined precision. The computational memory may include circuitry configured to perform analog computation using values stored in the computational memory, and the digital combinational circuitry may include a central processing unit, a graphics processing unit and/or application specific circuitry. The computational memory may include an array of resistive memory elements having resistance or conductance values stored therein, the respective resistance or conductance values being programmable.
    Type: Application
    Filed: September 7, 2016
    Publication date: March 8, 2018
    Inventors: Konstantinos Bekas, Alessandro Curioni, Evangelos S. Eleftheriou, Manuel Le Gallo-Bourdeau, Abu Sebastian, Tomas Tuma