Tiny Machine Learning (TinyML) applications impose mu J/Inference constraints, with maximum power consumption of a few tens of mW. It is extremely challenging to meet these requirement at a reasonable accuracy level. In this work, we address this challenge with a flexible, fully digital Ternary Neural Network (TNN) accelerator in a RISC-V-based SoC. The design achieves 2.72 mu J/Inference, 12.2 mW, 3200 Inferences/sec at 0.5 V for a non-trivial 9-layer, 96 channels-per-layer network with CIFAR-10 accuracy of 86 %. The peak energy efficiency is 1036 TOp/s/W, outperforming the state-of-the-art in silicon-proven TinyML accelerators by 1.67x
none3noDeep Neural Networks (DNNs) computation-hungry algorithms demand hardware platforms capable o...
We introduce Neuro.ZERO-a co-processor architecture consisting of a main microcontroller (MCU) that ...
Tiny machine learning (TinyML) has become an emerging field according to the rapid growth in the are...
Binary neural networks (BNNs) are promising to deliver accuracy comparable to conventional deep neur...
Recent advancements in the field of ultra-low-power machine learning (TinyML) promises to unlock an ...
International audienceAlthough performing inference with artiicial neural networks (ANN) was until q...
The proliferation of embedded Neural Processing Units (NPUs) is enabling the adoption of Tiny Machin...
Binary Neural Networks enable smart IoT devices, as they significantly reduce the required memory fo...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
The field of Tiny Machine Learning (TinyML) has gained significant attention due to its potential to...
International audience—The computation and storage requirements for Deep Neural Networks (DNNs) are ...
Recently, Deep Spiking Neural Network (DSNN) has emerged as a promising neuromorphic approach for va...
International audienceThanks to their excellent performances on typical artificial intelligence prob...
With the surging popularity of edge computing, the need to efficiently perform neural network infere...
Ternary Neural Networks (TNNs) and mixed-precision Ternary Binary Networks (TBNs) have demonstrated ...
none3noDeep Neural Networks (DNNs) computation-hungry algorithms demand hardware platforms capable o...
We introduce Neuro.ZERO-a co-processor architecture consisting of a main microcontroller (MCU) that ...
Tiny machine learning (TinyML) has become an emerging field according to the rapid growth in the are...
Binary neural networks (BNNs) are promising to deliver accuracy comparable to conventional deep neur...
Recent advancements in the field of ultra-low-power machine learning (TinyML) promises to unlock an ...
International audienceAlthough performing inference with artiicial neural networks (ANN) was until q...
The proliferation of embedded Neural Processing Units (NPUs) is enabling the adoption of Tiny Machin...
Binary Neural Networks enable smart IoT devices, as they significantly reduce the required memory fo...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
The field of Tiny Machine Learning (TinyML) has gained significant attention due to its potential to...
International audience—The computation and storage requirements for Deep Neural Networks (DNNs) are ...
Recently, Deep Spiking Neural Network (DSNN) has emerged as a promising neuromorphic approach for va...
International audienceThanks to their excellent performances on typical artificial intelligence prob...
With the surging popularity of edge computing, the need to efficiently perform neural network infere...
Ternary Neural Networks (TNNs) and mixed-precision Ternary Binary Networks (TBNs) have demonstrated ...
none3noDeep Neural Networks (DNNs) computation-hungry algorithms demand hardware platforms capable o...
We introduce Neuro.ZERO-a co-processor architecture consisting of a main microcontroller (MCU) that ...
Tiny machine learning (TinyML) has become an emerging field according to the rapid growth in the are...