Machine learning inference is increasingly being executed locally on mobile and embedded platforms, due to the clear advantages in latency, privacy and connectivity. In this paper, we present approaches for online resource management in heterogeneous multi-core systems and show how they can be applied to optimise the performance of machine learning workloads. Performance can be defined using platform-dependent (e.g. speed, energy) and platform-independent (accuracy, confidence) metrics. In particular, we show how a Deep Neural Network (DNN) can be dynamically scalable to trade-off these various performance metrics. Achieving consistent performance when executing on different platforms is necessary yet challenging, due to the different resou...
Embedded systems technology is undergoing a phase of transformation owing to the novel advancements ...
Machine Learning (ML) techniques, especially Deep Neural Networks (DNNs), have been driving innovati...
In this paper, we analyze heterogeneous performance exhibited by some popular deep learning software...
DNN inference is increasingly being executed locally on embedded platforms, due to the clear advanta...
Deep neural network (DNN) inference is increasingly being executed on mobile and embedded platforms ...
In recent years, machine learning applications are progressing on mobile systems for enhanced user ...
The promising results of deep learning (deep neural network) models in many applications such as spe...
Deep neural networks (DNNs) are a vital tool in pattern recognition and Machine Learning (ML) – solv...
The application of artificial intelligence enhances the ability of sensor and networking technologie...
Machine learning (ML) has become a powerful building block for modern services, scientific endeavors...
After a decade of accelerated progress in the different areas of machine learning (ML), it has becom...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...
Deep neural networks (DNNs) are becoming a key enabling technique for many application domains. Howe...
With the advent of ubiquitous deployment of smart devices and the Internet of Things, data sources f...
Embedded systems technology is undergoing a phase of transformation owing to the novel advancements ...
Embedded systems technology is undergoing a phase of transformation owing to the novel advancements ...
Machine Learning (ML) techniques, especially Deep Neural Networks (DNNs), have been driving innovati...
In this paper, we analyze heterogeneous performance exhibited by some popular deep learning software...
DNN inference is increasingly being executed locally on embedded platforms, due to the clear advanta...
Deep neural network (DNN) inference is increasingly being executed on mobile and embedded platforms ...
In recent years, machine learning applications are progressing on mobile systems for enhanced user ...
The promising results of deep learning (deep neural network) models in many applications such as spe...
Deep neural networks (DNNs) are a vital tool in pattern recognition and Machine Learning (ML) – solv...
The application of artificial intelligence enhances the ability of sensor and networking technologie...
Machine learning (ML) has become a powerful building block for modern services, scientific endeavors...
After a decade of accelerated progress in the different areas of machine learning (ML), it has becom...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...
Deep neural networks (DNNs) are becoming a key enabling technique for many application domains. Howe...
With the advent of ubiquitous deployment of smart devices and the Internet of Things, data sources f...
Embedded systems technology is undergoing a phase of transformation owing to the novel advancements ...
Embedded systems technology is undergoing a phase of transformation owing to the novel advancements ...
Machine Learning (ML) techniques, especially Deep Neural Networks (DNNs), have been driving innovati...
In this paper, we analyze heterogeneous performance exhibited by some popular deep learning software...