In recent years, the topic of embedded machine learning has become very popular in AI research. With the help of various compression techniques such as pruning, quantization and others compression techniques, it became possible to run neural networks on embedded devices. These techniques have opened up a whole new application area for machine learning. They range from smart products such as voice assistants to smart sensors that are needed in robotics. Despite the achievements in embedded machine learning, efficient algorithms for training neural networks in constrained domains are still lacking. Training on embedded devices will open up further fields of applications. Efficient training algorithms would enable federated learning on embedde...
As embedded systems become more prominent in society, it is important that the technologies that run...
In real-world edge AI applications, their accuracy is often affected by various environmental factor...
The aim of this thesis was to review the tools needed for the development of deep learning applicati...
The exponential increase in internet data poses several challenges to cloud systems and data centers...
Embedded systems are becoming interconnected and collaborative systems able to perform autonomous ta...
There is great potential in enabling neural network applications in embedded devices and an importan...
International audienceNowadays, the main challenges in embedded machine learning are related to arti...
With the increasing ubiquity of edge devices, such as the Internet of Things (IoT) and mobile device...
As deep learning for resource-constrained systems become more popular, we see an increased number of...
The digital transformation we are experiencing in recent years is cross-cutting to all sectors of th...
A machine learning system is described that enables an embedded and/or low-power device to locally t...
Deep learning techniques have made great success in areas such as computer vision, speech recognitio...
The number of Internet of Things (IoT) edge devices are exponentially on the rise that have both com...
The number of devices connected to the Internet is increasing, exchanging large amounts of data, and...
Internet of Things (IoT) edge devices have small amounts of memory and limited computational power. ...
As embedded systems become more prominent in society, it is important that the technologies that run...
In real-world edge AI applications, their accuracy is often affected by various environmental factor...
The aim of this thesis was to review the tools needed for the development of deep learning applicati...
The exponential increase in internet data poses several challenges to cloud systems and data centers...
Embedded systems are becoming interconnected and collaborative systems able to perform autonomous ta...
There is great potential in enabling neural network applications in embedded devices and an importan...
International audienceNowadays, the main challenges in embedded machine learning are related to arti...
With the increasing ubiquity of edge devices, such as the Internet of Things (IoT) and mobile device...
As deep learning for resource-constrained systems become more popular, we see an increased number of...
The digital transformation we are experiencing in recent years is cross-cutting to all sectors of th...
A machine learning system is described that enables an embedded and/or low-power device to locally t...
Deep learning techniques have made great success in areas such as computer vision, speech recognitio...
The number of Internet of Things (IoT) edge devices are exponentially on the rise that have both com...
The number of devices connected to the Internet is increasing, exchanging large amounts of data, and...
Internet of Things (IoT) edge devices have small amounts of memory and limited computational power. ...
As embedded systems become more prominent in society, it is important that the technologies that run...
In real-world edge AI applications, their accuracy is often affected by various environmental factor...
The aim of this thesis was to review the tools needed for the development of deep learning applicati...