This paper proposes a novel edge-computing based structure to support learning-based decision-making in industry manufacturing field. This structure consists of four functional layers, respectively realizing model establishment, task allocation and task processing work. In order to take full advantage of the distributed computing resources at the edge, the manufacturing computing task can be further decomposed into several sub-tasks, separating the complex computing problem with large problem size into regional scheduling ones with much smaller problem size. All the sub-tasks are allocated to the edges, accomplished by the algorithm deployed on computing devices of region-related edge node, which contributes to faster data-processing and pr...
This paper proposes an efficient computation task offloading mechanism for mobile edge computing (ME...
Scheduling distributed machine learning pipelines in edge environments is a growing area of research...
Decision-making in a complex, dynamic, interconnected, and data-intensive industrial environment can...
This paper proposes a novel edge-computing based structure to support learning-based decision-making...
Multi-access edge computing (MEC) enables end devices with limited computing power to provide effect...
In this study, based on multi-access edge computing (MEC), we provided the possibility of cooperatin...
At present, smart manufacturing computing framework has faced many challenges such as the lack of an...
At present, smart manufacturing computing framework has faced many challenges such as the lack of an...
The paper presents an adaptive iterative distributed scheduling algorithm that operates in a market-...
Recently, intelligent IoT applications based on artificial intelligence (AI) have been deployed with...
Mobile edge computing (MEC) is a promising technology to support mission-critical vehicular applicat...
Edge computing nodes undertake more and more tasks as business density grows. How to efficiently all...
International audienceFuture sixth-generation (6G) networks will rely on the synergies of edge compu...
In the IoT era and with the advent of 5G networks, an enormous amount of data is generated, and new ...
The computing continuum model is a widely ac-cepted and used approach that make possible the existen...
This paper proposes an efficient computation task offloading mechanism for mobile edge computing (ME...
Scheduling distributed machine learning pipelines in edge environments is a growing area of research...
Decision-making in a complex, dynamic, interconnected, and data-intensive industrial environment can...
This paper proposes a novel edge-computing based structure to support learning-based decision-making...
Multi-access edge computing (MEC) enables end devices with limited computing power to provide effect...
In this study, based on multi-access edge computing (MEC), we provided the possibility of cooperatin...
At present, smart manufacturing computing framework has faced many challenges such as the lack of an...
At present, smart manufacturing computing framework has faced many challenges such as the lack of an...
The paper presents an adaptive iterative distributed scheduling algorithm that operates in a market-...
Recently, intelligent IoT applications based on artificial intelligence (AI) have been deployed with...
Mobile edge computing (MEC) is a promising technology to support mission-critical vehicular applicat...
Edge computing nodes undertake more and more tasks as business density grows. How to efficiently all...
International audienceFuture sixth-generation (6G) networks will rely on the synergies of edge compu...
In the IoT era and with the advent of 5G networks, an enormous amount of data is generated, and new ...
The computing continuum model is a widely ac-cepted and used approach that make possible the existen...
This paper proposes an efficient computation task offloading mechanism for mobile edge computing (ME...
Scheduling distributed machine learning pipelines in edge environments is a growing area of research...
Decision-making in a complex, dynamic, interconnected, and data-intensive industrial environment can...