Machine learning models for sequence learning and processing often suffer from high energy consumption and require large amounts of training data. The brain presents more efficient solutions to how these types of tasks can be solved. While this has inspired the conception of novel brain-inspired algorithms, their realizations remain constrained to conventional von-Neumann machines. Therefore, the potential power efficiency of the algorithm cannot be exploited due to the inherent memory bottleneck of the computing architecture. Therefore, we present in this paper a dedicated hardware implementation of a biologically plausible version of the Temporal Memory component of the Hierarchical Temporal Memory concept. Our implementation is built on ...
Neuromorphic Very Large Scale Integration (VLSI) devices emulate the activation dynamics of biologic...
International audience—Cognitive tasks are essential for the modern applications of electronics, and...
Abstract-This paper describes techniques to implement gradient-descent-based machine learning algori...
Machine learning models for sequence learning and processing often suffer from high energy consumpti...
Brain-inspired computing proposes a set of algorithmic principles that hold promise for advancing ar...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...
The ongoing revolution in Deep Learning is redefining the nature of computing that is driven by the ...
Neuromorphic engineering is the research field dedicated to the study and design of brain-inspired h...
Dense crossbar arrays of non-volatile memory (NVM) devices represent one possible path for implement...
Dense crossbar arrays of non-volatile memory (NVM) devices represent one possible path for implement...
In the new era of cognitive computing, systems will be able to learn and interact with the environme...
The memristor is a novel nano-scale device discovered in 2008. Memristors are basically nonvolatile ...
The on-chip implementation of learning algorithms would accelerate the training of neural networks i...
This article investigates hardware implementation of hierarchical temporal memory (HTM), a brain-ins...
The success of deep networks and recent industry involvement in brain-inspired computing is igniting...
Neuromorphic Very Large Scale Integration (VLSI) devices emulate the activation dynamics of biologic...
International audience—Cognitive tasks are essential for the modern applications of electronics, and...
Abstract-This paper describes techniques to implement gradient-descent-based machine learning algori...
Machine learning models for sequence learning and processing often suffer from high energy consumpti...
Brain-inspired computing proposes a set of algorithmic principles that hold promise for advancing ar...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...
The ongoing revolution in Deep Learning is redefining the nature of computing that is driven by the ...
Neuromorphic engineering is the research field dedicated to the study and design of brain-inspired h...
Dense crossbar arrays of non-volatile memory (NVM) devices represent one possible path for implement...
Dense crossbar arrays of non-volatile memory (NVM) devices represent one possible path for implement...
In the new era of cognitive computing, systems will be able to learn and interact with the environme...
The memristor is a novel nano-scale device discovered in 2008. Memristors are basically nonvolatile ...
The on-chip implementation of learning algorithms would accelerate the training of neural networks i...
This article investigates hardware implementation of hierarchical temporal memory (HTM), a brain-ins...
The success of deep networks and recent industry involvement in brain-inspired computing is igniting...
Neuromorphic Very Large Scale Integration (VLSI) devices emulate the activation dynamics of biologic...
International audience—Cognitive tasks are essential for the modern applications of electronics, and...
Abstract-This paper describes techniques to implement gradient-descent-based machine learning algori...