Patents by Inventor Scott A. Skirlo
Scott A. Skirlo 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).
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Patent number: 11914415Abstract: An optical neural network is constructed based on photonic integrated circuits to perform neuromorphic computing. In the optical neural network, matrix multiplication is implemented using one or more optical interference units, which can apply an arbitrary weighting matrix multiplication to an array of input optical signals. Nonlinear activation is realized by an optical nonlinearity unit, which can be based on nonlinear optical effects, such as saturable absorption. These calculations are implemented optically, thereby resulting in high calculation speeds and low power consumption in the optical neural network.Type: GrantFiled: May 4, 2022Date of Patent: February 27, 2024Assignee: Massachusetts Institute of TechnologyInventors: Jacques Johannes Carolan, Mihika Prabhu, Scott A. Skirlo, Yichen Shen, Marin Soljacic, Dirk Englund, Nicholas C. Harris
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Publication number: 20230045938Abstract: An optical neural network is constructed based on photonic integrated circuits to perform neuromorphic computing. In the optical neural network, matrix multiplication is implemented using one or more optical interference units, which can apply an arbitrary weighting matrix multiplication to an array of input optical signals. Nonlinear activation is realized by an optical nonlinearity unit, which can be based on nonlinear optical effects, such as saturable absorption. These calculations are implemented optically, thereby resulting in high calculation speeds and low power consumption in the optical neural network.Type: ApplicationFiled: May 4, 2022Publication date: February 16, 2023Applicant: Massachusetts Institute of TechnologyInventors: Jacques Johannes CAROLAN, Mihika PRABHU, Scott A. SKIRLO, Yichen Shen, Marin SOLJACIC, DIRK ENGLUND, Nicholas C. HARRIS
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Patent number: 11334107Abstract: An optical neural network is constructed based on photonic integrated circuits to perform neuromorphic computing. In the optical neural network, matrix multiplication is implemented using one or more optical interference units, which can apply an arbitrary weighting matrix multiplication to an array of input optical signals. Nonlinear activation is realized by an optical nonlinearity unit, which can be based on nonlinear optical effects, such as saturable absorption. These calculations are implemented optically, thereby resulting in high calculation speeds and low power consumption in the optical neural network.Type: GrantFiled: August 6, 2020Date of Patent: May 17, 2022Assignee: Massachusetts Institute of TechnologyInventors: Jacques Johannes Carolan, Mihika Prabhu, Scott A. Skirlo, Yichen Shen, Marin Soljacic, Dirk Englund, Nicholas Christopher Harris
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Publication number: 20220043323Abstract: An integrated optical beam steering device includes a planar dielectric lens that collimates beams from different inputs in different directions within the lens plane. It also includes an output coupler, such as a grating or photonic crystal, that guides the collimated beams in different directions out of the lens plane. A switch matrix controls which input port is illuminated and hence the in-plane propagation direction of the collimated beam. And a tunable light source changes the wavelength to control the angle at which the collimated beam leaves the plane of the substrate. The device is very efficient, in part because the input port (and thus in-plane propagation direction) can be changed by actuating only log2 N of the N switches in the switch matrix. It can also be much simpler, smaller, and cheaper because it needs fewer control lines than a conventional optical phased array with the same resolution.Type: ApplicationFiled: October 15, 2021Publication date: February 10, 2022Applicant: Massachusetts Institute of TechnologyInventors: Scott A. SKIRLO, Cheryl Marie SORACE-AGASKAR, Marin SOLJACIC, Simon VERGHESE, Jeffrey S. HERD, Paul William JUODAWLKIS, Yi YANG, DIRK ENGLUND, Mihika PRABHU
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Publication number: 20220012619Abstract: A photonic parallel network can be used to sample combinatorially hard distributions of Ising problems. The photonic parallel network, also called a photonic processor, finds the ground state of a general Ising problem and can probe critical behaviors of universality classes and their critical exponents. In addition to the attractive features of photonic networks—passivity, parallelization, high-speed and low-power—the photonic processor exploits dynamic noise that occurs during the detection process to find ground states more efficiently.Type: ApplicationFiled: April 26, 2021Publication date: January 13, 2022Applicant: Massachusetts Institute of TechnologyInventors: Charles ROQUES-CARMES, Yichen Shen, Li JING, Tena DUBCEK, Scott A. SKIRLO, Hengameh BAGHERIANLEMRASKI, Marin SOLJACIC
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Patent number: 11175562Abstract: An integrated optical beam steering device includes a planar dielectric lens that collimates beams from different inputs in different directions within the lens plane. It also includes an output coupler, such as a grating or photonic crystal, that guides the collimated beams in different directions out of the lens plane. A switch matrix controls which input port is illuminated and hence the in-plane propagation direction of the collimated beam. And a tunable light source changes the wavelength to control the angle at which the collimated beam leaves the plane of the substrate. The device is very efficient, in part because the input port (and thus in-plane propagation direction) can be changed by actuating only log2 N of the N switches in the switch matrix. It can also be much simpler, smaller, and cheaper because it needs fewer control lines than a conventional optical phased array with the same resolution.Type: GrantFiled: April 7, 2020Date of Patent: November 16, 2021Assignee: Massachusetts Institute of TechnologyInventors: Scott A. Skirlo, Cheryl Marie Sorace-Agaskar, Marin Soljacic, Simon Verghese, Jeffrey S. Herd, Paul William Juodawlkis, Yi Yang, Dirk Englund, Mihika Prabhu
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Patent number: 11017309Abstract: A photonic parallel network can be used to sample combinatorially hard distributions of Ising problems. The photonic parallel network, also called a photonic processor, finds the ground state of a general Ising problem and can probe critical behaviors of universality classes and their critical exponents. In addition to the attractive features of photonic networks—passivity, parallelization, high-speed and low-power—the photonic processor exploits dynamic noise that occurs during the detection process to find ground states more efficiently.Type: GrantFiled: July 11, 2018Date of Patent: May 25, 2021Assignee: Massachusetts Institute of TechnologyInventors: Charles Roques-Carmes, Yichen Shen, Li Jing, Tena Dubcek, Scott A. Skirlo, Hengameh Bagherianlemraski, Marin Soljacic
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Publication number: 20200379504Abstract: An optical neural network is constructed based on photonic integrated circuits to perform neuromorphic computing. In the optical neural network, matrix multiplication is implemented using one or more optical interference units, which can apply an arbitrary weighting matrix multiplication to an array of input optical signals. Nonlinear activation is realized by an optical nonlinearity unit, which can be based on nonlinear optical effects, such as saturable absorption. These calculations are implemented optically, thereby resulting in high calculation speeds and low power consumption in the optical neural network.Type: ApplicationFiled: August 6, 2020Publication date: December 3, 2020Inventors: Jacques Johannes CAROLAN, Mihika PRABHU, Scott A. SKIRLO, Yichen Shen, Marin SOLJACIC, DIRK ENGLUND, Nicholas Christopher HARRIS
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Publication number: 20200333683Abstract: An integrated optical beam steering device includes a planar dielectric lens that collimates beams from different inputs in different directions within the lens plane. It also includes an output coupler, such as a grating or photonic crystal, that guides the collimated beams in different directions out of the lens plane. A switch matrix controls which input port is illuminated and hence the in-plane propagation direction of the collimated beam. And a tunable light source changes the wavelength to control the angle at which the collimated beam leaves the plane of the substrate. The device is very efficient, in part because the input port (and thus in-plane propagation direction) can be changed by actuating only log2 N of the N switches in the switch matrix. It can also be much simpler, smaller, and cheaper because it needs fewer control lines than a conventional optical phased array with the same resolution.Type: ApplicationFiled: April 7, 2020Publication date: October 22, 2020Inventors: Scott A. SKIRLO, Cheryl Marie SORACE-AGASKAR, Marin SOLJACIC, Simon VERGHESE, Jeffrey S. HERD, Paul William JUODAWLKIS, Yi YANG, DIRK ENGLUND, Mihika PRABHU
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Patent number: 10768659Abstract: An optical neural network is constructed based on photonic integrated circuits to perform neuromorphic computing. In the optical neural network, matrix multiplication is implemented using one or more optical interference units, which can apply an arbitrary weighting matrix multiplication to an array of input optical signals. Nonlinear activation is realized by an optical nonlinearity unit, which can be based on nonlinear optical effects, such as saturable absorption. These calculations are implemented optically, thereby resulting in high calculation speeds and low power consumption in the optical neural network.Type: GrantFiled: February 12, 2019Date of Patent: September 8, 2020Assignee: Massachusetts Institute of TechnologyInventors: Jacques Johannes Carolan, Mihika Prabhu, Scott A. Skirlo, Yichen Shen, Marin Soljacic, Nicholas Christopher Harris, Dirk Englund
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Patent number: 10649306Abstract: An integrated optical beam steering device includes a planar dielectric lens that collimates beams from different inputs in different directions within the lens plane. It also includes an output coupler, such as a grating or photonic crystal, that guides the collimated beams in different directions out of the lens plane. A switch matrix controls which input port is illuminated and hence the in-plane propagation direction of the collimated beam. And a tunable light source changes the wavelength to control the angle at which the collimated beam leaves the plane of the substrate. The device is very efficient, in part because the input port (and thus in-plane propagation direction) can be changed by actuating only log2 N of the N switches in the switch matrix. It can also be much simpler, smaller, and cheaper because it needs fewer control lines than a conventional optical phased array with the same resolution.Type: GrantFiled: February 25, 2019Date of Patent: May 12, 2020Assignee: Massachusetts Institute of TechnologyInventors: Scott A. Skirlo, Cheryl Marie Sorace-Agaskar, Marin Soljacic, Simon Verghese, Jeffrey S. Herd, Paul William Juodawlkis, Yi Yang, Dirk Robert Englund, Mihika Prabhu
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Publication number: 20190294199Abstract: An optical neural network is constructed based on photonic integrated circuits to perform neuromorphic computing. In the optical neural network, matrix multiplication is implemented using one or more optical interference units, which can apply an arbitrary weighting matrix multiplication to an array of input optical signals. Nonlinear activation is realized by an optical nonlinearity unit, which can be based on nonlinear optical effects, such as saturable absorption. These calculations are implemented optically, thereby resulting in high calculation speeds and low power consumption in the optical neural network.Type: ApplicationFiled: February 12, 2019Publication date: September 26, 2019Inventors: Jacques Johannes Carolan, Mihika Prabhu, Scott A. Skirlo, Yichen Shen, Marin Soljacic, Nicholas Christopher Harris, Dirk Englund
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Publication number: 20190265574Abstract: An integrated optical beam steering device includes a planar dielectric lens that collimates beams from different inputs in different directions within the lens plane. It also includes an output coupler, such as a grating or photonic crystal, that guides the collimated beams in different directions out of the lens plane. A switch matrix controls which input port is illuminated and hence the in-plane propagation direction of the collimated beam. And a tunable light source changes the wavelength to control the angle at which the collimated beam leaves the plane of the substrate. The device is very efficient, in part because the input port (and thus in-plane propagation direction) can be changed by actuating only log2 N of the N switches in the switch matrix. It can also be much simpler, smaller, and cheaper because it needs fewer control lines than a conventional optical phased array with the same resolution.Type: ApplicationFiled: February 25, 2019Publication date: August 29, 2019Inventors: Scott A. SKIRLO, Cheryl Marie SORACE-AGASKAR, Marin SOLJACIC, Simon VERGHESE, Jeffrey S. HERD, Paul William JUODAWLKIS, Yi YANG, Dirk Robert ENGLUND, Mihika PRABHU
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Patent number: 10268232Abstract: An optical neural network is constructed based on photonic integrated circuits to perform neuromorphic computing. In the optical neural network, matrix multiplication is implemented using one or more optical interference units, which can apply an arbitrary weighting matrix multiplication to an array of input optical signals. Nonlinear activation is realized by an optical nonlinearity unit, which can be based on nonlinear optical effects, such as saturable absorption. These calculations are implemented optically, thereby resulting in high calculation speeds and low power consumption in the optical neural network.Type: GrantFiled: June 2, 2017Date of Patent: April 23, 2019Assignee: Massachusetts Institute of TechnologyInventors: Nicholas Christopher Harris, Jacques Johannes Carolan, Mihika Prabhu, Dirk Robert Englund, Scott A. Skirlo, Yichen Shen, Marin Soljacic
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Patent number: 10261389Abstract: An integrated optical beam steering device includes a planar dielectric lens that collimates beams from different inputs in different directions within the lens plane. It also includes an output coupler, such as a grating or photonic crystal, that guides the collimated beams in different directions out of the lens plane. A switch matrix controls which input port is illuminated and hence the in-plane propagation direction of the collimated beam. And a tunable light source changes the wavelength to control the angle at which the collimated beam leaves the plane of the substrate. The device is very efficient, in part because the input port (and thus in-plane propagation direction) can be changed by actuating only log2 N of the N switches in the switch matrix. It can also be much simpler, smaller, and cheaper because it needs fewer control lines than a conventional optical phased array with the same resolution.Type: GrantFiled: June 22, 2017Date of Patent: April 16, 2019Assignee: Massachusetts Institute of TechnologyInventors: Scott Skirlo, Cheryl Marie Sorace-Agaskar, Marin Soljacic, Simon Verghese, Jeffrey S. Herd, Paul William Juodawlkis, Yi Yang, Dirk Robert Englund, Mihika Prabhu
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Publication number: 20190019100Abstract: A photonic parallel network can be used to sample combinatorially hard distributions of Ising problems. The photonic parallel network, also called a photonic processor, finds the ground state of a general Ising problem and can probe critical behaviors of universality classes and their critical exponents. In addition to the attractive features of photonic networks—passivity, parallelization, high-speed and low-power—the photonic processor exploits dynamic noise that occurs during the detection process to find ground states more efficiently.Type: ApplicationFiled: July 11, 2018Publication date: January 17, 2019Inventors: Charles ROQUES-CARMES, Yichen Shen, Li Jing, Tena Dubcek, Scott A. Skirlo, Hengameh Bagherianlemraski, Marin Soljacic
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Publication number: 20180260703Abstract: A system for training a neural network model, the neural network model comprising a plurality of layers including a first hidden layer associated with a first set of weights, the system comprising at least one computer hardware processor programmed to perform: obtaining training data; selecting a unitary rotational representation for representing a matrix of the first set weights, the selected unitary rotational representation comprising a plurality of parameters; training the neural network model using the training data using an iterative neural network training algorithm to obtain a trained neural network model, each iteration of the iterative neural network training algorithm comprising: updating values of the plurality of parameters in the selected unitary rotational representation for representing the matrix of the set of weights for the at least one hidden layer, and saving the trained neural network model.Type: ApplicationFiled: November 22, 2017Publication date: September 13, 2018Applicant: Massachusetts Institute of TechnologyInventors: Marin Soljacic, Yichen Shen, Li Jing, Tena Dubcek, Scott Skirlo, John E. Peurifoy, Max Erik Tegmark
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Publication number: 20170371227Abstract: An integrated optical beam steering device includes a planar dielectric lens that collimates beams from different inputs in different directions within the lens plane. It also includes an output coupler, such as a grating or photonic crystal, that guides the collimated beams in different directions out of the lens plane. A switch matrix controls which input port is illuminated and hence the in-plane propagation direction of the collimated beam. And a tunable light source changes the wavelength to control the angle at which the collimated beam leaves the plane of the substrate. The device is very efficient, in part because the input port (and thus in-plane propagation direction) can be changed by actuating only log2 N of the N switches in the switch matrix. It can also be much simpler, smaller, and cheaper because it needs fewer control lines than a conventional optical phased array with the same resolution.Type: ApplicationFiled: June 22, 2017Publication date: December 28, 2017Inventors: Scott SKIRLO, Cheryl Marie Sorace-Agaskar, Marin Soljacic, Simon Verghese, Jeffrey S. Herd, Paul William Juodawlkis, Yi Yang, Dirk Robert Englund, Mihika Prabhu
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Publication number: 20170351293Abstract: An optical neural network is constructed based on photonic integrated circuits to perform neuromorphic computing. In the optical neural network, matrix multiplication is implemented using one or more optical interference units, which can apply an arbitrary weighting matrix multiplication to an array of input optical signals. Nonlinear activation is realized by an optical nonlinearity unit, which can be based on nonlinear optical effects, such as saturable absorption. These calculations are implemented optically, thereby resulting in high calculation speeds and low power consumption in the optical neural network.Type: ApplicationFiled: June 2, 2017Publication date: December 7, 2017Inventors: Jacques Johannes Carolan, Mihika PRABHU, Scott SKIRLO, Yichen SHEN, Marin SOLJACIC, Nicholas Christopher HARRIS, Dirk Robert ENGLUND