Edge computing is a new development paradigm that brings computational power to the network edge through novel intelligent end-user services. It allows latency-sensitive applications to be placed where the data is created, thus reducing communication overhead and improving security, mobility and power consumption. There is a plethora of applications benefiting from this type of processing. Of particular interest is emerging edge-based image classification at the microscopic level. The scale and magnitude of the objects to segment, detect and classify are very challenging, with data collected using order of magnitude in magnification. The required data processing is intense, and the wish list of end-users in this space includes tools and so...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
This paper explores the performance of Google’s Edge TPU on feed-forward neural networks. We conside...
Recent developments in Artificial Intelligence (AI) research enable new strategies for running Machi...
This research examines and explores four different pre-trained CNN deep learning models (AlexNet, VG...
Scientific workflows are important in modern computational science and are a convenient way to repre...
The increasing number of smart devices has led to a rise in the complexity and volume of the image g...
In recent years, ML (Machine Learning) models that have been trained in data centers can often be de...
The recent advancements towards Artificial Intelligence (AI) at the edge resonate with an impression...
With the advent of powerful, low-cost IoT systems, processing data closer to where the data originat...
This paper explores the use of Google's Edge TPU, a purpose-built ASIC designed to run AI at the edg...
Deep learning has risen to prominence in fields from medicine to autonomous vehicles. This rise has ...
This work explores the possibility of applying edge machine learning technology in the context of po...
In the Machine Learning era, Deep Neural Networks (DNNs) have taken the spotlight, due to their unma...
Our aim is to promote the widespread use of electronic insect traps that report captured pests to a ...
Deep learning has achieved remarkable successes in various areas such as computer vision and natural...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
This paper explores the performance of Google’s Edge TPU on feed-forward neural networks. We conside...
Recent developments in Artificial Intelligence (AI) research enable new strategies for running Machi...
This research examines and explores four different pre-trained CNN deep learning models (AlexNet, VG...
Scientific workflows are important in modern computational science and are a convenient way to repre...
The increasing number of smart devices has led to a rise in the complexity and volume of the image g...
In recent years, ML (Machine Learning) models that have been trained in data centers can often be de...
The recent advancements towards Artificial Intelligence (AI) at the edge resonate with an impression...
With the advent of powerful, low-cost IoT systems, processing data closer to where the data originat...
This paper explores the use of Google's Edge TPU, a purpose-built ASIC designed to run AI at the edg...
Deep learning has risen to prominence in fields from medicine to autonomous vehicles. This rise has ...
This work explores the possibility of applying edge machine learning technology in the context of po...
In the Machine Learning era, Deep Neural Networks (DNNs) have taken the spotlight, due to their unma...
Our aim is to promote the widespread use of electronic insect traps that report captured pests to a ...
Deep learning has achieved remarkable successes in various areas such as computer vision and natural...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
This paper explores the performance of Google’s Edge TPU on feed-forward neural networks. We conside...
Recent developments in Artificial Intelligence (AI) research enable new strategies for running Machi...