Related references
Note: Only part of the references are listed.Fully hardware-implemented memristor convolutional neural network
Peng Yao et al.
NATURE (2020)
Low Power Reconfigurability and Reduced Crosstalk in Integrated Photonic Circuits Fabricated by Femtosecond Laser Micromachining
Francesco Ceccarelli et al.
LASER & PHOTONICS REVIEWS (2020)
Recent advances in physical reservoir computing: A review
Gouhei Tanaka et al.
NEURAL NETWORKS (2019)
Boosting Computational Power through Spatial Multiplexing in Quantum Reservoir Computing
Kohei Nakajima et al.
PHYSICAL REVIEW APPLIED (2019)
Quantum reservoir processing
Sanjib Ghosh et al.
NPJ QUANTUM INFORMATION (2019)
Quantum optical neural networks
Gregory R. Steinbrecher et al.
NPJ QUANTUM INFORMATION (2019)
Thermal Phase Shifters for Femtosecond Laser Written Photonic Integrated Circuits
Francesco Ceccarelli et al.
JOURNAL OF LIGHTWAVE TECHNOLOGY (2019)
Temporal data classification and forecasting using a memristor-based reservoir computing system
John Moon et al.
NATURE ELECTRONICS (2019)
Symmetric polarization-insensitive directional couplers fabricated by femtosecond laser writing
Giacomo Corrielli et al.
OPTICS EXPRESS (2018)
The case for rejecting the memristor as a fundamental circuit element
Isaac Abraham
SCIENTIFIC REPORTS (2018)
Reconfigurable Photonics on a Glass Chip
I. Dyakonov et al.
PHYSICAL REVIEW APPLIED (2018)
Invited Article: Quantum memristors in quantum photonics
M. Sanz et al.
APL PHOTONICS (2018)
High-performance semiconductor quantum-dot single-photon sources
Pascale Senellart et al.
NATURE NANOTECHNOLOGY (2017)
Deep learning with coherent nanophotonic circuits
Yichen Shen et al.
NATURE PHOTONICS (2017)
Reservoir computing using dynamic memristors for temporal information processing
Chao Du et al.
NATURE COMMUNICATIONS (2017)
Harnessing Disordered-Ensemble Quantum Dynamics for Machine Learning
Keisuke Fujii et al.
PHYSICAL REVIEW APPLIED (2017)
Quantum Memristors with Superconducting Circuits
J. Salmilehto et al.
SCIENTIFIC REPORTS (2017)
Real-time Reservoir Computing Network-based Systems for Detection Tasks on Visual Contents
Azarakhsh Jalalvand et al.
PROCEEDINGS 7TH INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE, COMMUNICATION SYSTEMS AND NETWORKS CICSYN 2015 (2015)
Experimental demonstration of reservoir computing on a silicon photonics chip
Kristof Vandoorne et al.
NATURE COMMUNICATIONS (2014)
Memristor-based neural networks
Andy Thomas
JOURNAL OF PHYSICS D-APPLIED PHYSICS (2013)
On the physical properties of memristive, memcapacitive and meminductive systems
Massimiliano Di Ventra et al.
NANOTECHNOLOGY (2013)
Neuromorphic, Digital, and Quantum Computation With Memory Circuit Elements
Yuriy V. Pershin et al.
PROCEEDINGS OF THE IEEE (2012)
Memory effects in complex materials and nanoscale systems
Yuriy V. Pershin et al.
ADVANCES IN PHYSICS (2011)
An Electronic Synapse Device Based on Metal Oxide Resistive Switching Memory for Neuromorphic Computation
Shimeng Yu et al.
IEEE TRANSACTIONS ON ELECTRON DEVICES (2011)
Optical tomography of Fock state superpositions
S. N. Filippov et al.
PHYSICA SCRIPTA (2011)
Solving mazes with memristors: A massively parallel approach
Yuriy V. Pershin et al.
PHYSICAL REVIEW E (2011)
An Organic Nanoparticle Transistor Behaving as a Biological Spiking Synapse
Fabien Alibart et al.
ADVANCED FUNCTIONAL MATERIALS (2010)
Nanoscale Memristor Device as Synapse in Neuromorphic Systems
Sung Hyun Jo et al.
NANO LETTERS (2010)
'Memristive' switches enable 'stateful' logic operations via material implication
Julien Borghetti et al.
NATURE (2010)
Quantum-optical state engineering up to the two-photon level
Erwan Bimbard et al.
NATURE PHOTONICS (2010)
Experimental demonstration of associative memory with memristive neural networks
Yuriy V. Pershin et al.
NEURAL NETWORKS (2010)
Laser written waveguide photonic quantum circuits
Graham D. Marshall et al.
OPTICS EXPRESS (2009)
The missing memristor found
Dmitri B. Strukov et al.
NATURE (2008)
Real-time computing without stable states:: A new framework for neural computation based on perturbations
W Maass et al.
NEURAL COMPUTATION (2002)