Recent advances in both lightweight deep learning algorithms and edge computing increasingly enable multiple model inference tasks to be conducted concurrently on resource-constrained edge devices, allowing us to achieve one goal collaboratively rather than getting high quality in each standalone task. However, the high overall running latency for performing multi-model inferences always negatively affects the real-time applications. To combat latency, the algorithms should be optimized to minimize the latency for multi-model deployment without compromising the safety-critical situation. This work focuses on the real-time task scheduling strategy for multi-model deployment and investigating the model inference using an open neural network e...
With the increasing number of mobile devices (MD), IoT devices, and computation-intensive tasks depl...
The emergence of deep learning has attracted the attention from a wide range of fields and brought a...
The recent emergence of a broad class of deep learning based augmented and virtual reality applicati...
Recent advances in both lightweight deep learning algorithms and edge computing increasingly enable ...
Deep neural networks (DNNs) are becoming the core components of many applications running on edge de...
The increasingly growing expansion of the Internet of Things (IoT) along with the convergence of mul...
Edge computing is a promising solution to host artificial intelligence (AI) applications that enable...
With the advancement of machine learning, a growing number of mobile users rely on machine learning ...
Cooperative inference in Mobile Edge Computing (MEC), achieved by deploying partitioned Deep Neural ...
With the development of mobile edge computing (MEC), more and more intelligent services and applicat...
The execution of multi-inference tasks on low-powered edge devices has become increasingly popular i...
Deep learning applications have been widely adopted on edge devices, to mitigate the privacy and lat...
Embedded systems are becoming interconnected and collaborative systems able to perform autonomous ta...
For time-critical IoT applications using deep learning, inference acceleration through distributed c...
With the rise of IoT devices and the necessity of intelligent applications, inference tasks are ofte...
With the increasing number of mobile devices (MD), IoT devices, and computation-intensive tasks depl...
The emergence of deep learning has attracted the attention from a wide range of fields and brought a...
The recent emergence of a broad class of deep learning based augmented and virtual reality applicati...
Recent advances in both lightweight deep learning algorithms and edge computing increasingly enable ...
Deep neural networks (DNNs) are becoming the core components of many applications running on edge de...
The increasingly growing expansion of the Internet of Things (IoT) along with the convergence of mul...
Edge computing is a promising solution to host artificial intelligence (AI) applications that enable...
With the advancement of machine learning, a growing number of mobile users rely on machine learning ...
Cooperative inference in Mobile Edge Computing (MEC), achieved by deploying partitioned Deep Neural ...
With the development of mobile edge computing (MEC), more and more intelligent services and applicat...
The execution of multi-inference tasks on low-powered edge devices has become increasingly popular i...
Deep learning applications have been widely adopted on edge devices, to mitigate the privacy and lat...
Embedded systems are becoming interconnected and collaborative systems able to perform autonomous ta...
For time-critical IoT applications using deep learning, inference acceleration through distributed c...
With the rise of IoT devices and the necessity of intelligent applications, inference tasks are ofte...
With the increasing number of mobile devices (MD), IoT devices, and computation-intensive tasks depl...
The emergence of deep learning has attracted the attention from a wide range of fields and brought a...
The recent emergence of a broad class of deep learning based augmented and virtual reality applicati...