We have demonstrated on-chip learning in an array of floating-gate MOS synapse transistors. The array comprises one synapse transistor at each node, and normalization circuitry at the row boundaries. The array computes the inner product of a column input vector and a stored weight matrix. The weights are stored as floating-gate charge; they are nonvolatile, but can increase when we apply a row-learn signal. The input and learn signals are digital pulses; column input pulses that are coincident with row-learn pulses cause weight increases at selected synapses. The normalization circuitry forces row synapses to compete for floating-gate charge, bounding the weight values. The array simultaneously exhibits fast computation and slow adaptation:...
The promise of neuromorphic computing to develop ultra-low-power intelligent devices lies in its abi...
In 2011 the International Technology Roadmap for Semiconductors, ITRS 2011, outlined how the semicon...
Research presented in this thesis provides a substantial leap from the study of interesting devi...
We describe single-transistor silicon synapses that compute, learn, and provide non-volatile memory ...
We have developed a new floating-gate silicon MOS transistor for analog learning applications. The m...
Our goal is to develop silicon learning systems. One impediment to achieving this goal has been the ...
We describe single-transistor silicon synapses that compute, learn, and provide non-volatile memory ...
We have developed a complementary pair of pFET and nFET floating-gate silicon MOS transistors for an...
We describe the design, fabrication, characterization, and modeling of an array of single transistor...
A computation is an operation that can be performed by a physical machine. We are familiar with digi...
NOTE: Text or symbols not renderable in plain ASCII are indicated by [...]. Abstract is included in ...
Spiking Neural Networks (SNNs) are becoming increasingly popular for their application in Edge Artif...
We propose a CMOS architecture for spiking neural networks with permanent memory and online learning...
Learning in a neural network typically happens with the modification or plasticity of synaptic weigh...
Synapses plays an important role of learning in a neural network; the learning rules which modify th...
The promise of neuromorphic computing to develop ultra-low-power intelligent devices lies in its abi...
In 2011 the International Technology Roadmap for Semiconductors, ITRS 2011, outlined how the semicon...
Research presented in this thesis provides a substantial leap from the study of interesting devi...
We describe single-transistor silicon synapses that compute, learn, and provide non-volatile memory ...
We have developed a new floating-gate silicon MOS transistor for analog learning applications. The m...
Our goal is to develop silicon learning systems. One impediment to achieving this goal has been the ...
We describe single-transistor silicon synapses that compute, learn, and provide non-volatile memory ...
We have developed a complementary pair of pFET and nFET floating-gate silicon MOS transistors for an...
We describe the design, fabrication, characterization, and modeling of an array of single transistor...
A computation is an operation that can be performed by a physical machine. We are familiar with digi...
NOTE: Text or symbols not renderable in plain ASCII are indicated by [...]. Abstract is included in ...
Spiking Neural Networks (SNNs) are becoming increasingly popular for their application in Edge Artif...
We propose a CMOS architecture for spiking neural networks with permanent memory and online learning...
Learning in a neural network typically happens with the modification or plasticity of synaptic weigh...
Synapses plays an important role of learning in a neural network; the learning rules which modify th...
The promise of neuromorphic computing to develop ultra-low-power intelligent devices lies in its abi...
In 2011 the International Technology Roadmap for Semiconductors, ITRS 2011, outlined how the semicon...
Research presented in this thesis provides a substantial leap from the study of interesting devi...