A Predictive-Reactive Procedure for improving the strength of simultaneous data Services

International Journal of Computer Science and Engineering
© 2014 by SSRG - IJCSE Journal
Volume 1 Issue 10
Year of Publication : 2014
Authors : Mrs. M.S. Vinmathi, Ms. V.Sathiya, Mrs. M.Maheswari

pdf
Citation:
MLA Style:

Mrs. M.S. Vinmathi, Ms. V.Sathiya, Mrs. M.Maheswari, "A Predictive-Reactive Procedure for improving the strength of simultaneous data Services" SSRG International Journal of Computer Science and Engineering 1.10 (2014): 1-5.

APA Style:

Mrs. M.S. Vinmathi, Ms. V.Sathiya, Mrs. M.Maheswari, (2014). A Predictive-Reactive Procedure for improving the strength of simultaneous data Services. SSRG International Journal of Computer Science and Engineering 1.10, 1-5.

Abstract:

Real-time data services can benefit data-intensive real-time applications, e.g., e-commerce, via timely transaction processing using fresh data, e.g., the current stock prices. Stock quote queries and trade transactions should be processed within the acceptable response time bound using up-to-date stock prices. If the service delay is longer than a few seconds, most ecommerce clients tend to leave. Transaction processing based on stale data, such as outdated stock prices, may adversely affect decision making. Similarly, data service requests for transportation management should be processed in a timely manner using fresh data representing the current traffic status.

References:

[1]Nicolas Chaufette,” Generalized Performance Management of Multi Class Real-Time Imprecise Data Services, Text book published in June 5, 2006. .
[2] Kyoung-Don Kang, Jisu Oh, Yan Zhou “Backlog Estimation and Management for Real-Time Data Services” In Real-Time Systems, volume 28, Nov.-Dec. 2004. .
[3] Nina Bhatti, Anna Bouch1,Allan Kuchinsky “Integrating User-Perceived Quality into Web Server Design” Proceedings of the Internet Server Performance W orkshop, March 1998. .
[4] Woochul Kang, Sang H. and John A. Stankovic “Design, Implementation, and Evaluation of a QoS-Aware Real-Time Embedded Database” in The 6th IEEE Communications Society Conference on Sensor, Mesh and Ad-hoc Communications and Networks (SECON), June, 2009. .
[ 5] Badrish Chandramouli, Jonathan Goldstein, Roger Barga, Mirek Riedewald, Ivo Santos “Accurate Latency Estimation in a Distributed Event Processing S ystem”Research paper from Microsoft Corporation. [6]Nesime tatbul, ugur cetintemel,stanzdonik “Load shedding in a data stream manager” Proceeding of 29thVLDB conference ,berlin, Germany,2003. .
[7]Mehdi Amirijoo, Jorgen Hansson, and sang H.son “specification and management of Qos in Realtime Database supporting imprecise computations”IEEE computer, 28(6):1625,1995. .
[ 8] Kyoung-Don Kang, Sang H. Son, Senior Member, IEEE, and John A. Stankovic “Managing Deadline Miss Ratio and Sensor Data Freshness in Real-Time Databases” IEEE TRANSACTIONS ON KNOWLEDGE AND DATA E NGINEERING, VOL. 16, NO. 10, OCTOBER 2004.
[9] Chenyang Lu,Ying Lu, Tarek F. Abdelzaher, John A. Stankovis, and Sang Hyuk Son “Feedback Control Architecture and Design Methodology for Service Delay G uarantees in Web Servers” IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS, VOL. 17, N O. 9, SEPTEMBER 2006.
[10] B. Adelberg, H. Garcia-Molina, and B. Kao, “Applying Update Streams in a Soft Real-Time Database S ystem,” Proc. ACM SIGMOD, 1995. .
[11] The TimesTen Team, “In-Memory Data Managementfor Consumer Transactions The Times Ten A pproach,” Proc. ACM SIGMOD, 1999.
[12] Jisu Oh and Kyoung-Don Kang “A PredictiveReactive Method for Improving the Robustness of Real- Time Data Services” IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, VOL. 25, NO. 5, MAY 2013

Key Words:

Data-intensive real-time applications, real-time databases.