The recent demonstration of neuromorphic computing with spin-torque nano-oscillators has opened a path to energy efficient data processing. The success of this demonstration hinged on the intrinsic short-term memory of the oscillators. We extend the memory of the spin-torque nano-oscillators through time-delayed feedback. We leverage this extrinsic memory to increase the efficiency of solving pattern recognition tasks that require memory to discriminate different inputs. The large tunability of these nonlinear oscillators allows us to control and optimize the delayed-feedback memory using different operating conditions of applied current and magnetic field
Present day computers expend orders of magnitude more computational resources to perform various cog...
In this article, we present a comprehensive study of four frequency locking mechanisms in Spin Torqu...
Magnetism plays a significant role in the field of computing, both as a medium on which data is stor...
International audienceFabricating powerful neuromorphic chips the size of a thumb requires miniaturi...
Spin-torque nano-oscillators can emulate neurons at the nanoscale. Recent works show that the non-li...
Abstract Neuromorphic computing using spintronic devices, such as spin-torque oscillators (STOs), ha...
This paper gives an overview of coupled oscillators and how such oscillators can be efficiently used...
Neurons in the brain behave as nonlinear oscillators, which develop rhythmic activity and interact t...
International audienceThe brain naturally binds events from different sources in unique concepts. It...
Neuromorphic computing uses basic principles inspired by the brain to design circuits that perform a...
Oscillatory Neural Networks (ONN) are becoming a popular neuromorphic computing model owing to their...
Treballs Finals de Grau de Física, Facultat de Física, Universitat de Barcelona, Curs: 2021, Tutor: ...
Non-Boolean computation for applications such as edge detection, pattern matching, content addressab...
Spin-torque nano-oscillators are non-linear, nano-scale, low power consumption, tunable magnetic mic...
In recent years, artificial neural networks have become the flagship algorithm of artificial intelli...
Present day computers expend orders of magnitude more computational resources to perform various cog...
In this article, we present a comprehensive study of four frequency locking mechanisms in Spin Torqu...
Magnetism plays a significant role in the field of computing, both as a medium on which data is stor...
International audienceFabricating powerful neuromorphic chips the size of a thumb requires miniaturi...
Spin-torque nano-oscillators can emulate neurons at the nanoscale. Recent works show that the non-li...
Abstract Neuromorphic computing using spintronic devices, such as spin-torque oscillators (STOs), ha...
This paper gives an overview of coupled oscillators and how such oscillators can be efficiently used...
Neurons in the brain behave as nonlinear oscillators, which develop rhythmic activity and interact t...
International audienceThe brain naturally binds events from different sources in unique concepts. It...
Neuromorphic computing uses basic principles inspired by the brain to design circuits that perform a...
Oscillatory Neural Networks (ONN) are becoming a popular neuromorphic computing model owing to their...
Treballs Finals de Grau de Física, Facultat de Física, Universitat de Barcelona, Curs: 2021, Tutor: ...
Non-Boolean computation for applications such as edge detection, pattern matching, content addressab...
Spin-torque nano-oscillators are non-linear, nano-scale, low power consumption, tunable magnetic mic...
In recent years, artificial neural networks have become the flagship algorithm of artificial intelli...
Present day computers expend orders of magnitude more computational resources to perform various cog...
In this article, we present a comprehensive study of four frequency locking mechanisms in Spin Torqu...
Magnetism plays a significant role in the field of computing, both as a medium on which data is stor...