The growing numbers of application areas for artificial intelligence (AI) methods have led to an explosion in availability of domain-specific accelerators, which struggle to support every new machine learning (ML) algorithm advancement, clearly highlighting the need for a tool to quickly and automatically transition from algorithm definition to hardware implementation and explore the design space along a variety of SWaP (size, weight and Power) metrics. The software defined architectures (SODA) synthesizer implements a modular compiler-based infrastructure for the end-to-end generation of machine learning accelerators, from high-level frameworks to hardware description language. Neuromorphic computing, mimicking how the brain operates, prom...
The spiking neural network (SNN), an emerging brain-inspired computing paradigm, is positioned to en...
The Neuromorphic (NM) field has seen significant growth in recent years, especially in the developme...
Compiler frameworks are crucial for the widespread use of FPGA-based deep learning accelerators. The...
The growing numbers of application areas for artificial intelligence (AI) methods have led to an exp...
International audienceNeuromorphic computing is henceforth a major research field for both academic ...
International audienceMachine learning is yielding unprecedented interest in research and industry, ...
Accelerated mixed-signal neuromorphic hardware presents a promising approach to overcome run time an...
Neuromorphic engineering (NE) encompasses a diverse range of approaches to information processing th...
International audienceInspired from the brain, neuromorphic computing would be the right alternative...
While Moore's law has driven exponential computing power expectations, its nearing end calls for new...
This dissertation proposes ways to address current limitations of neuromorphic computing to create e...
This thesis explores how some neuromorphic engineering approaches can be used to speed up computatio...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
One of the most promising approaches to overcome the end of Moore's law is neuromorphic computing. I...
A neuromorphic chip that combines CMOS analog spiking neurons and memristive synapses offers a promi...
The spiking neural network (SNN), an emerging brain-inspired computing paradigm, is positioned to en...
The Neuromorphic (NM) field has seen significant growth in recent years, especially in the developme...
Compiler frameworks are crucial for the widespread use of FPGA-based deep learning accelerators. The...
The growing numbers of application areas for artificial intelligence (AI) methods have led to an exp...
International audienceNeuromorphic computing is henceforth a major research field for both academic ...
International audienceMachine learning is yielding unprecedented interest in research and industry, ...
Accelerated mixed-signal neuromorphic hardware presents a promising approach to overcome run time an...
Neuromorphic engineering (NE) encompasses a diverse range of approaches to information processing th...
International audienceInspired from the brain, neuromorphic computing would be the right alternative...
While Moore's law has driven exponential computing power expectations, its nearing end calls for new...
This dissertation proposes ways to address current limitations of neuromorphic computing to create e...
This thesis explores how some neuromorphic engineering approaches can be used to speed up computatio...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
One of the most promising approaches to overcome the end of Moore's law is neuromorphic computing. I...
A neuromorphic chip that combines CMOS analog spiking neurons and memristive synapses offers a promi...
The spiking neural network (SNN), an emerging brain-inspired computing paradigm, is positioned to en...
The Neuromorphic (NM) field has seen significant growth in recent years, especially in the developme...
Compiler frameworks are crucial for the widespread use of FPGA-based deep learning accelerators. The...