Modern consumer electronic devices have adopted deep learning-based intelligence services for their key features. Vendors have recently started to execute intelligence services on devices to preserve personal data in devices, reduce network and cloud costs. We find such a trend as the opportunity to personalize intelligence services by updating neural networks with user data without exposing the data out of devices: on-device training. For example, we may add a new class, my dog, Alpha, for robotic vacuums, adapt speech recognition for the users accent, let text-to-speech speak as if the user speaks. However, the resource limitations of target devices incur significant difficulties. We propose NNTrainer, a light-weight on-device training fr...
In recent years, machine learning has very much been a prominent talking point, and is considered by...
In the past decade, deep learning has achieved great breakthroughs on tasks of computer vision, spee...
A machine learning system is described that enables an embedded and/or low-power device to locally t...
With the increasing ubiquity of edge devices, such as the Internet of Things (IoT) and mobile device...
The digital transformation we are experiencing in recent years is cross-cutting to all sectors of th...
Modern machine learning (ML) applications are often deployed in the cloud environment to exploit the...
In the last few years, we have witnessed an exponential growth in research activity into the advance...
With the emergence of the Internet of Things (IoT), devices are generating massive amounts of data. ...
Given a domotic installation based on the Internet of things paradigm, we would like to provide a Vo...
There is great potential in enabling neural network applications in embedded devices and an importan...
A recurring problem faced when training neural networks is that there is typically not enough data t...
Recently, machine learning, especially deep learning, has been a core algorithm to be widely used in...
Although state-of-the-art in many typical machine-learning tasks, deep learning algorithms are very ...
Automated feature extraction capability and significant performance of Deep Neural Networks (DNN) ma...
© 2009-2012 IEEE. Deep learning has recently become im-mensely popular for image recognition, as wel...
In recent years, machine learning has very much been a prominent talking point, and is considered by...
In the past decade, deep learning has achieved great breakthroughs on tasks of computer vision, spee...
A machine learning system is described that enables an embedded and/or low-power device to locally t...
With the increasing ubiquity of edge devices, such as the Internet of Things (IoT) and mobile device...
The digital transformation we are experiencing in recent years is cross-cutting to all sectors of th...
Modern machine learning (ML) applications are often deployed in the cloud environment to exploit the...
In the last few years, we have witnessed an exponential growth in research activity into the advance...
With the emergence of the Internet of Things (IoT), devices are generating massive amounts of data. ...
Given a domotic installation based on the Internet of things paradigm, we would like to provide a Vo...
There is great potential in enabling neural network applications in embedded devices and an importan...
A recurring problem faced when training neural networks is that there is typically not enough data t...
Recently, machine learning, especially deep learning, has been a core algorithm to be widely used in...
Although state-of-the-art in many typical machine-learning tasks, deep learning algorithms are very ...
Automated feature extraction capability and significant performance of Deep Neural Networks (DNN) ma...
© 2009-2012 IEEE. Deep learning has recently become im-mensely popular for image recognition, as wel...
In recent years, machine learning has very much been a prominent talking point, and is considered by...
In the past decade, deep learning has achieved great breakthroughs on tasks of computer vision, spee...
A machine learning system is described that enables an embedded and/or low-power device to locally t...