Modeling and Trade-off for Mobile Communication, Computing and Caching Networks

07/15/2018
by   Yaping Sun, et al.
0

Computation task service delivery in a computing-enabled and caching-aided multi-user mobile edge computing (MEC) system is studied in this paper, where a MEC server can deliver the input or output datas of tasks to mobile devices over a wireless multicast channel. The computing-enabled and caching-aided mobile devices are able to store the input or output datas of some tasks, and also compute some tasks locally, reducing the wireless bandwidth consumption. The corresponding framework of this system is established, and under the latency constraint, we jointly optimize the caching and computing policy at mobile devices to minimize the required transmission bandwidth. The joint policy optimization problem is shown to be NP-hard, and based on equivalent transformation and exact penalization of the problem, a stationary point is obtained via concave convex procedure (CCCP). Moreover, in a symmetric scenario, gains offered by this approach are derived to analytically understand the influences of caching and computing resources at mobile devices, multicast transmission, the number of mobile devices, as well as the number of tasks on the transmission bandwidth. Our results indicate that exploiting the computing and caching resources at mobile devices can provide significant bandwidth savings.

READ FULL TEXT

page 1

page 2

page 3

page 7

research
01/23/2019

Bandwidth Gain from Mobile Edge Computing and Caching in Wireless Multicast Systems

In this paper, we present a novel mobile edge computing (MEC) model wher...
research
02/14/2020

Mobile Communications, Computing and Caching Resources Optimization for Coded Caching with Device Computing

Edge caching and computing have been regarded as an efficient approach t...
research
01/12/2020

Communications-Caching-Computing Tradeoff Analysis for Bidirectional Data Computation in Mobile Edge Networks

With the advent of the modern mobile traffic, e.g., online gaming, augme...
research
10/26/2020

Towards Adjusting Mobile Devices to User's Behaviour

Mobile devices are a special class of resource-constrained embedded devi...
research
11/23/2019

Using Surrogate Models and Data Assimilation for Efficient Mobile Simulations

Numerical simulations on mobile devices are an important tool for engine...
research
10/22/2019

Train Where the Data is: A Case for Bandwidth Efficient Coded Training

Training a machine learning model is both compute and data-intensive. Mo...
research
07/29/2019

Energy-Efficient Processing and Robust Wireless Cooperative Transmission for Edge Inference

Edge machine learning can deliver low-latency and private artificial int...

Please sign up or login with your details

Forgot password? Click here to reset