Abstract

In purpose of data searching acceleration, the fastest data response is the major concern for latest cloud environment. Regarding this, the intellectual decision is to enrich the SaaS level applications. Amongst the SaaS based applications, service level database integration is the recent trend to provide the integrated view of the heterogeneous cloud databases through shared services using DBaaS. But the generic limitations interacted during the database integration are dynamic adaptability of multiple databases structure, dynamic data location identification in the concern databases, data response using the data commonality. Data migration technique and single query approach are the two individual solutions for the proposed limitations. But the side effects during data migration technique are extra space utilisation and excess time consumption. Again, the single query approach suffers from worst case time complexity for data connectivity, data aggregation and query evaluation. So, to find a suitable data response solution by eliminating these combined major issues, a graph based Middleware Database Integrator Platform or MDIP model has been proposed. This integrator platform is actually the flexible metadata representation technique for the concerned heterogeneous cloud databases. The associativity and commonality among components of multiple databases would be further helpful for efficient data searching in an integrated way. For the incorporation within the service level but not in the services, MDIP is considered as the different platform. It is applicable over any service based database integration in purpose of data response efficiency. Finally, the quality assessment using evaluated query time compared with already proposed SLDI shows better data access quality. Thus, its expertise dedication in data response can overcome summarised challenges like data adaptation flexibility, dynamic identification of data location, wastage of data storage, data accessing within minimal time span and optimised cost in presence of data consistency, data partitioning and user side scalability.

Highlights

  • In cloud computing environment, huge amount of data sets are handled through services

  • The proposed MDIP mechanism is the progressive approach over any service level database integration to ease the data response against maximised customers need

  • Beside the service level database integration, the MDIP mechanism can be implemented in an individual service level platform

Read more

Summary

INTRODUCTION

Huge amount of data sets are handled through services. In sense of robustness of any mechanism, every mechanism suffers from some incompleteness as well as some challenges This service based database integration technique suffers from flexible adaptability of the structure of multiple databases and lacks in dynamic identification of data location in the concern database or databases against users data request using their commonality. Rather this middleware architecture ensures a different platform concept in between Application service and Data service, in which multiple number of heterogeneous cloud databases can store their database details in combined fashion for further integrated data deliverability This mechanism is applicable in any service based database integration for the optimised time consumption during data response. Summarising all the characteristics and solved issues of the proposed approach, it can be concluded that the MDIP approach would be supportive for further accelerated efficient data retrieval in the latest cloud environment

RELATED WORK
FRAMEWORK FOR MDIP
Graphical Representation of MDIP Framework:
Presentation of MDIP graph and its detail description:
Decomposibility of the Levels
ILLUSTRATION OF THE PROPOSED MDIP FRAMEWORK
QUALITY ASSESSMENT THROUGH COMPARISON ANALYSIS BY QUERY EVALUATION
SOLVED ISSUES BY MDIP FRAMEWORK
Database heterogeneity
Distribute support
Dynamic Identification of data location
Memory space utilisation
Cost efficiency
Data consistency
Data partitioning
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