International audienceEmbedding Artificial Intelligence onto low-power devices is a challenging task that has been partly overcome with recent advances in machine learning and hardware design. Presently, deep neural networks can be deployed on embedded targets to perform different tasks such as speech recognition, object detection or Human Activity Recognition. However, there is still room for optimization of deep neural networks onto embedded devices. These optimizations mainly address power consumption, memory and real-time constraints, but also an easier deployment at the edge. Moreover, there is still a need for a better understanding of what can be achieved for different use cases. This work focuses on quantization and deployment of de...
Heavily quantized fixed-point arithmetic is becoming a common approach to deploy Convolutional Neura...
The severe on-chip memory limitations are currently preventing the deployment of the most accurate D...
Differently to the common belief, the industry quest for ultra-low-power neural networks is just at ...
International audienceEmbedding Artificial Intelligence onto low-power devices is a challenging task...
There is an urgent need for compact, fast, and power-efficient hardware implementations of state-of-...
High energy efficiency and low memory footprint are the key requirements for the deployment of deep ...
Deep Learning is moving to edge devices, ushering in a new age of distributed Artificial Intelligenc...
Deep neural networks (DNNs) are a vital tool in pattern recognition and Machine Learning (ML) – solv...
MicroAI is a software framework for end-to-end deep neural networks training, quantization and deplo...
Large Deep Neural Networks (DNNs) are the backbone of today's artificial intelligence due to their a...
Deep Learning is moving to edge devices, ushering in a new age of distributed Artificial Intelligenc...
The creation of effective computational models that function within the power limitations of edge de...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
Deep learning algorithms have seen success in a wide variety of applications, such as machine transl...
Heavily quantized fixed-point arithmetic is becoming a common approach to deploy Convolutional Neura...
The severe on-chip memory limitations are currently preventing the deployment of the most accurate D...
Differently to the common belief, the industry quest for ultra-low-power neural networks is just at ...
International audienceEmbedding Artificial Intelligence onto low-power devices is a challenging task...
There is an urgent need for compact, fast, and power-efficient hardware implementations of state-of-...
High energy efficiency and low memory footprint are the key requirements for the deployment of deep ...
Deep Learning is moving to edge devices, ushering in a new age of distributed Artificial Intelligenc...
Deep neural networks (DNNs) are a vital tool in pattern recognition and Machine Learning (ML) – solv...
MicroAI is a software framework for end-to-end deep neural networks training, quantization and deplo...
Large Deep Neural Networks (DNNs) are the backbone of today's artificial intelligence due to their a...
Deep Learning is moving to edge devices, ushering in a new age of distributed Artificial Intelligenc...
The creation of effective computational models that function within the power limitations of edge de...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
Deep learning algorithms have seen success in a wide variety of applications, such as machine transl...
Heavily quantized fixed-point arithmetic is becoming a common approach to deploy Convolutional Neura...
The severe on-chip memory limitations are currently preventing the deployment of the most accurate D...
Differently to the common belief, the industry quest for ultra-low-power neural networks is just at ...