Abstract

Big data is one such technology. When we receive huge volume of data, there will be high demand in processing the huge data. It can also be said challenging task in big data processing. The increases in IoT devices in the network system collect more data to be processed in centralized devices called cloud storage. Every big data is processed and stored in the cloud. To overcome the performance and latency issues in large data computation, big cloud processing system uses edge computing in it. One of the key components of IoT is edge computing. We combine big data with cloud and edge computing in this paper as hybrid edge computing system. In the edge computing system, huge number of IoT devices computes services in its nearby network edge. Data sharing and transmission between the various service components may affect performance of the system. The main aim of this research article is to reduce the delay in data transfer between the components. This optimization goal is achieved by new Hybrid Meta-heuristic optimization (HMeO) algorithm. New HMeO algorithm designed for IoT devices to deploy the service components. MHO model is design to optimize the process by selecting the edge computing with minimum latency. Our proposed HMeO algorithm is compared with existing genetic algorithm and ant colony algorithm. The result shows HMeO algorithm provides more performance and efficient in in-depth data analysing and locating the component in big databased cloud environment.

Highlights

  • At present mobile devices such as smart phones, laptops, mini tablets, smart data storage devices become significant thing in every human hand

  • The increases in Internet of things (IoT) devices in the network system collect more data to be processed in centralized devices called cloud storage

  • New HMeO algorithm designed for IoT devices to deploy the service components

Read more

Summary

A Survey on Service Level Components in BigCloud-IoT Systems with

Abstract - Big data is one such technology. When we receive huge volume of data, there will be high demand in processing the huge data. To overcome the performance and latency issues in large data computation, big cloud processing system uses edge computing in it. We combine big data with cloud and edge computing in this paper as hybrid edge computing system. The main aim of this research article is to reduce the delay in data transfer between the components. This optimization goal is achieved by new Hybrid Meta-heuristic optimization (HMeO) algorithm. New HMeO algorithm designed for IoT devices to deploy the service components. The result shows HMeO algorithm provides more performance and efficient in in-depth data analysing and locating the component in big databased cloud environment. Keyword - Bigdata; Cloud services; Data-intensive computing; Edge computing; Hybrid meta-heuristic optimization

Introduction
Service Deployment Of Components In Data Intensive Computing
HMeO algorithm
Working of ACO and SA algorithm
Findings
Conclusion and future work
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call