This paper addresses the definition of the requirements for the design of a neural network associative memory, with on-chip training, in standard digital CMOS technology. We investigate various learning rules which are integrable in silicon, and we study the associative memory properties of the resulting networks. We also investigate the relationships between the architecture of the circuit and the learning rule, in order to minimize the extra circuitry required for the implementation of training. We describe a 64neuron associative memory with on-chip training, which has been manufactured, and we outline its future extensions. Beyond the application to the specific circuit described in the paper, the general methodology for determining the ...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
In this paper CMOS VLSI circuit solutions are suggested for on-chip learning and weight storage, whi...
Artificial neural networks are systems composed of interconnected simple computing units known as a...
International audienceThis paper addresses the definition of the requirements for the design of a ne...
Pattern recognition and learning are basic functions, which are needed to build artificial systems w...
Rückert U, Kleerbaum C, Goser K. Digital VLSI Implementation of an Associative Memory Based on Neura...
This paper addresses the mixed analog-digital hardware implementation of a Hamming artificial neural...
In this paper we will extend the transconductance-mode (T-mode) approach [1] to implement analog con...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...
Rückert U. An Associative Memory with Neural Architecture and its VLSI Implementation. In: Milutinov...
This paper introduces the definition,principle,model and basic learning rules of feedback neural net...
implemented as custom analog, digital or hybrid VLSI systems. This paper describes the tradeoffs amo...
Rückert U. VLSI Implementation of an Associative Memory Based on Distributed Storage of Information....
In the human brain, learning is continuous, while currently in AI, learning algorithms are pre-train...
In this paper we describe the VLSI design and testing of a high capacity associative memory which we...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
In this paper CMOS VLSI circuit solutions are suggested for on-chip learning and weight storage, whi...
Artificial neural networks are systems composed of interconnected simple computing units known as a...
International audienceThis paper addresses the definition of the requirements for the design of a ne...
Pattern recognition and learning are basic functions, which are needed to build artificial systems w...
Rückert U, Kleerbaum C, Goser K. Digital VLSI Implementation of an Associative Memory Based on Neura...
This paper addresses the mixed analog-digital hardware implementation of a Hamming artificial neural...
In this paper we will extend the transconductance-mode (T-mode) approach [1] to implement analog con...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...
Rückert U. An Associative Memory with Neural Architecture and its VLSI Implementation. In: Milutinov...
This paper introduces the definition,principle,model and basic learning rules of feedback neural net...
implemented as custom analog, digital or hybrid VLSI systems. This paper describes the tradeoffs amo...
Rückert U. VLSI Implementation of an Associative Memory Based on Distributed Storage of Information....
In the human brain, learning is continuous, while currently in AI, learning algorithms are pre-train...
In this paper we describe the VLSI design and testing of a high capacity associative memory which we...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
In this paper CMOS VLSI circuit solutions are suggested for on-chip learning and weight storage, whi...
Artificial neural networks are systems composed of interconnected simple computing units known as a...