The dynamic nature of the edge cloud and future network infrastructures is another challenge to be added when modeling end-to-end service performance using machine learning. That is, a model that has been trained for one specific environment may see reductions in prediction accuracy over time due to e.g., routing, migration, or scaling decisions. Transfer learning has been proposed as an approach for leveraging already learned knowledge in a new environment, especially when the amount of training data is limited in that new domain. This thesis proposes and evaluates a heterogeneous transfer learning approach via feed-forward neural networks that addresses model transfer across different domains with diverse input features, a natural consequ...
Enterprises use live video streaming as a mean of communication. Streaming high-quality video to tho...
Excessive resource allocation in telecommunications networks can be prevented by forecasting the res...
Improved time series forecasting accuracy can enhance demand planning, and therefore save money and ...
The dynamic nature of the edge cloud and future network infrastructures is another challenge to be a...
Existing edge computing architectures do not support the updating of neural network models, nor are ...
With the development of modern data centers and networks, many service providers have moved most of ...
Cloud service management for telecommunication operators is crucial and challengingespecially in a c...
The surge in data traffic is challenging for network infrastructure owners coping with stringent ser...
The surge in data traffic is challenging for network infrastructure owners coping with stringent ser...
The number of Internet of Things (IoT) edge devices are exponentially on the rise that have both com...
Transfer learning uses a profound labeled set of data from the source domain to deal with a similar ...
In recent years, the open sourcing of pretrained machine learning models through platforms like Hugg...
The massive amount of data collected in the Internet of Things (IoT) asks for effective, intelligent...
Thanks to many breakthroughs in neural network techniques, machine learning is widely applied in man...
Dag för dag blir sakernas internet-enheter (IoT) en större del av vårt liv. För närvarande är dessa ...
Enterprises use live video streaming as a mean of communication. Streaming high-quality video to tho...
Excessive resource allocation in telecommunications networks can be prevented by forecasting the res...
Improved time series forecasting accuracy can enhance demand planning, and therefore save money and ...
The dynamic nature of the edge cloud and future network infrastructures is another challenge to be a...
Existing edge computing architectures do not support the updating of neural network models, nor are ...
With the development of modern data centers and networks, many service providers have moved most of ...
Cloud service management for telecommunication operators is crucial and challengingespecially in a c...
The surge in data traffic is challenging for network infrastructure owners coping with stringent ser...
The surge in data traffic is challenging for network infrastructure owners coping with stringent ser...
The number of Internet of Things (IoT) edge devices are exponentially on the rise that have both com...
Transfer learning uses a profound labeled set of data from the source domain to deal with a similar ...
In recent years, the open sourcing of pretrained machine learning models through platforms like Hugg...
The massive amount of data collected in the Internet of Things (IoT) asks for effective, intelligent...
Thanks to many breakthroughs in neural network techniques, machine learning is widely applied in man...
Dag för dag blir sakernas internet-enheter (IoT) en större del av vårt liv. För närvarande är dessa ...
Enterprises use live video streaming as a mean of communication. Streaming high-quality video to tho...
Excessive resource allocation in telecommunications networks can be prevented by forecasting the res...
Improved time series forecasting accuracy can enhance demand planning, and therefore save money and ...