MIZRAHI Frank
Chercheur Thales
2898556
Mizrahi, A.
surface-science-reports
500
date
desc
1320
https://laboratoire-albert-fert.cnrs-thales.fr/wp-content/plugins/zotpress/
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L. Farcis, B.M.S. Teixeira, P. Talatchian, D. Salomoni, U. Ebels, S. Auffret, B. Dieny, F.A. Mizrahi, J. Grollier, R.C. Sousa, L.D. Buda-Prejbeanu, Spiking Dynamics in Dual Free Layer Perpendicular Magnetic Tunnel Junctions, Nano Letters 23 (2023) 7869. https://doi.org/10.1021/acs.nanolett.3c01597.
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P. Sethi, D. Sanz-Hernández, F. Godel, S. Krishnia, F. Ajejas, A. Mizrahi, V. Cros, D. Marković, J. Grollier, Compensation of Anisotropy in Spin Hall Devices for Neuromorphic Applications, Phys. Rev. Appl. 19 (2023) 064018. https://doi.org/10.1103/PhysRevApplied.19.064018.
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N. Leroux, A. De Riz, D. Sanz-Hernández, D. Marković, A. Mizrahi, J. Grollier, Convolutional neural networks with radio-frequency spintronic nano-devices, Neuromorph. Comput. Eng. 2 (2022) 034002. https://doi.org/10.1088/2634-4386/ac77b2.
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D.V. Christensen, R. Dittmann, B. Linares-Barranco, A. Sebastian, M. Le Gallo, A. Redaelli, S. Slesazeck, T. Mikolajick, S. Spiga, S. Menzel, I. Valov, G. Milano, C. Ricciardi, S.-J. Liang, F. Miao, M. Lanza, T.J. Quill, S.T. Keene, A. Salleo, J. Grollier, D. Marković, A. Mizrahi, P. Yao, J.J. Yang, G. Indiveri, J.P. Strachan, S. Datta, E. Vianello, A. Valentian, J. Feldmann, X. Li, W.H.P. Pernice, H. Bhaskaran, S. Furber, E. Neftci, F. Scherr, W. Maass, S. Ramaswamy, J. Tapson, P. Panda, Y. Kim, G. Tanaka, S. Thorpe, C. Bartolozzi, T.A. Cleland, C. Posch, S. Liu, G. Panuccio, M. Mahmud, A.N. Mazumder, M. Hosseini, T. Mohsenin, E. Donati, S. Tolu, R. Galeazzi, M.-E. Christensen, S. Holm, D. Ielmini, N. Pryds, 2022 roadmap on neuromorphic computing and engineering, Neuromorph. Comput. Eng. 2 (2022) 022501. https://doi.org/10.1088/2634-4386/ac4a83.
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N. Leroux, A. Mizrahi, D. Marković, D. Sanz-Hernández, J. Trastoy, P. Bortolotti, L. Martins, A. Jenkins, R. Ferreira, J. Grollier, Hardware realization of the multiply and accumulate operation on radio-frequency signals with magnetic tunnel junctions, Neuromorph. Comput. Eng. 1 (2021) 011001. https://doi.org/10.1088/2634-4386/abfca6.
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N. Leroux, D. Marković, E. Martin, T. Petrisor, D. Querlioz, A. Mizrahi, J. Grollier, Radio-Frequency Multiply-and-Accumulate Operations with Spintronic Synapses, Phys. Rev. Applied 15 (2021) 034067. https://doi.org/10.1103/PhysRevApplied.15.034067.
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D. Marković, A. Mizrahi, D. Querlioz, J. Grollier, Physics for neuromorphic computing, Nat Rev Phys 2 (2020) 499. https://doi.org/10.1038/s42254-020-0208-2.
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D. Marković, N. Leroux, A. Mizrahi, J. Trastoy, V. Cros, P. Bortolotti, L. Martins, A. Jenkins, R. Ferreira, J. Grollier, Detection of the Microwave Emission from a Spin-Torque Oscillator by a Spin Diode, Phys. Rev. Applied 13 (2020) 044050. https://doi.org/10.1103/PhysRevApplied.13.044050.
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M.W. Daniels, A. Madhavan, P. Talatchian, A. Mizrahi, M.-D. Stiles, Energy-Efficient Stochastic Computing with Superparamagnetic Tunnel Junctions, Phys. Rev. Applied 13 (2020) 034016. https://doi.org/10.1103/PhysRevApplied.13.034016.
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A. Mizrahi, J. Grollier, D. Querlioz, M.D. Stiles, Overcoming device unreliability with continuous learning in a population coding based computing system, Journal of Applied Physics 124 (2018) 152111. https://doi.org/10.1063/1.5042250.
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A. Mizrahi, T. Hirtzlin, A. Fukushima, H. Kubota, S. Yuasa, J. Grollier, D. Querlioz, Neural-like computing with populations of superparamagnetic basis functions, Nature Communications 9 (2018) 1533. https://doi.org/10.1038/s41467-018-03963-w.
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D. Vodenicarevic, N. Locatelli, A. Mizrahi, T. Hirtzlin, J.S. Friedman, J. Grollier, D. Querlioz, Circuit-Level Evaluation of the Generation of Truly Random Bits with Superparamagnetic Tunnel Junctions, in: 2018 IEEE International Symposium on Circuits and Systems (ISCAS), IEEE, 2018: pp. 1–4. https://doi.org/10.1109/ISCAS.2018.8351771.
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D. Vodenicarevic, N. Locatelli, A. Mizrahi, J.S. Friedman, A.-F. Vincent, M. Romera, A. Fukushima, K. Yakushiji, H. Kubota, S. Yuasa, S. Tiwari, J. Grollier, D. Querlioz, Low-Energy Truly Random Number Generation with Superparamagnetic Tunnel Junctions for Unconventional Computing, Phys. Rev. Applied 8 (2017) 054045. https://doi.org/10.1103/PhysRevApplied.8.054045.
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D. Vodenicarevic, A. Mizrahi, N. Locatelli, J. Grollier, D. Querlioz, Spintronic nanoscillators for unconventional circuits, in: 2017 European Conference on Circuit Theory and Design (ECCTD), 2017: pp. 1–4. https://doi.org/10.1109/ECCTD.2017.8093287.
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A. Accioly, N. Locatelli, A. Mizrahi, D. Querlioz, L.-G. Pereira, J. Grollier, J.-V. Kim, Role of spin-transfer torques on synchronization and resonance phenomena in stochastic magnetic oscillators, Journal of Applied Physics 120 (2016) 093902. https://doi.org/10.1063/1.4962015.
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A. Mizrahi, N. Locatelli, R. Lebrun, V. Cros, A. Fukushima, H. Kubota, S. Yuasa, D. Querlioz, J. Grollier, Controlling the phase locking of stochastic magnetic bits for ultra-low power computation, Scientific Reports 6 (2016) 30535. https://doi.org/10.1038/srep30535.
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A. Mizrahi, N. Locatelli, J. Grollier, D. Querlioz, Synchronization of electrically coupled stochastic magnetic oscillators induced by thermal and electrical noise, Phys. Rev. B 94 (2016) 054419. https://doi.org/10.1103/PhysRevB.94.054419.
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A. Mizrahi, N. Locatelli, R. Matsumoto, A. Fukushima, H. Kubota, S. Yuasa, V. Cros, J.-V. Kim, J. Grollier, D. Querlioz, Magnetic Stochastic Oscillators: Noise-Induced Synchronization to Underthreshold Excitation and Comprehensive Compact Model, IEEE Transactions on Magnetics 51 (2015) 1401404. https://doi.org/10.1109/TMAG.2015.2439736.
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N. Locatelli, A.F. Vincent, A. Mizrahi, J.S. Friedman, D. Vodenicarevic, J.-V. Kim, J.-O. Klein, W. Zhao, J. Grollier, D. Querlioz, Spintronic Devices as Key Elements for Energy-Efficient Neuroinspired Architectures, in: 2015 Design, Automation & Test in Europe Conference & Exhibition (Date), Ieee, New York, 2015: pp. 994–999.
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N. Locatelli, A. Mizrahi, A. Accioly, R. Matsumoto, A. Fukushima, H. Kubota, S. Yuasa, V. Cros, L.-G. Pereira, D. Querlioz, J.-V. Kim, J. Grollier, Noise-Enhanced Synchronization of Stochastic Magnetic Oscillators, Physical Review Applied 2 (2014) 034009. https://doi.org/10.1103/PhysRevApplied.2.034009.
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N. Locatelli, A. Mizrahi, A. Accioly, D. Querlioz, J.-V. Kim, V. Cros, J. Grollier, Spin torque nanodevices for bio-inspired computing, in: M. Niemier, W. Porod (Eds.), 2014 14th International Workshop on Cellular Nanoscale Networks and Their Applications (Cnna), Ieee, New York, 2014. https://doi.org/10.1109/CNNA.2014.6888659.