Deep learning based predictive analytics for decentralized content caching in hierarchical edge networks
Abstract
Content centric network is a state-of-the-art networking architecture for content
distribution and content caching. However, it is inefficient to cache every content
in each network device. The modern edge computing technology opens the door
for content caching in the edge of the network. However, still we have to decide
which contents we should cache and which content we should replace from the
cache. Deep learning based predictive analytics can play an important role in
selecting contents for caching purposes. In this research, we will use Long shortterm
memory(LSTM) based Recurrent Neural Network(RNN) for decentralized
content caching at the hierarchical edge of the network.