Edge-assisted Adaptive Heterogeneous Resource Allocation Optimization
for Large-Scale Live Video Analytics
Abstract
In this letter, we propose an Edge-assisted adaptive heterogeneous
resource allocation scheme based on atomic service chain (ASC) to
jointly optimize adaptability for users, flexibility for networks, and
profitability for providers. Particularly, we build an Edge-AI
integrated computing power paradigm that integrates awareness,
forwarding, storage, computing and processing capabilities. Moreover, we
formulate the heterogeneous resource allocation problem into a
non-linear non-convex integer optimization problem and propose an
Edge-AI integrated ASC-based resource allocation approach for
large-scale live video analytics to maximize average network utility
with QoS support and minimize network congestion while considering the
profitability. Experimental results demonstrate that the designed
Edge-assisted ASC-based adaptive heterogeneous resource allocation
approach outperforms the monolithic model-based scheme.