The Community for Technology Leaders
Green Image
Issue No. 01 - Jan.-Feb. (2018 vol. 11)
ISSN: 1939-1374
pp: 155-168
Thomas Fankhauser , School of Engineering and Computing, University of the West of Scotland, Paisley, United Kingdom
Qi Wang , School of Engineering and Computing, University of the West of Scotland, Paisley, United Kingdom
Ansgar Gerlicher , Stuttgart Media University, Stuttgart, Germany
Christos Grecos , Sohar University, Sohar, Oman
The upsurge of mobile devices paired with highly interactive social web applications generates enormous amounts of requests web services have to deal with. Consequently in our previous work, a novel request flow scheme with scalable components was proposed for storing interdependent, permanently updated resources in a database. The major challenge is to process dependencies in an optimal fashion while maintaining dependency constraints. In this work, three research objectives are evaluated by examining resource dependencies and their key graph measurements. An all-sources longest-path algorithm is presented for efficient processing and dependencies are analysed to find correlations between performance and graph measures. Two algorithms basing their parameters on six real-world web service structures, e.g., Facebook Graph API are developed to generate dependency graphs and a model is developed to estimate performance based on resource parameters. An evaluation of four graph series discusses performance effects of different graph structures. The results of an evaluation of 2,000 web services with over 850 thousand resources and 6 million requests indicate that resource dependency processing can be up to a factor of two faster compared to a traditional processing approach while an average model fit of 97 percent allows an accurate prediction.
Web services, Processor scheduling, Algorithm design and analysis, Vegetation, Analytical models, Databases, Computational modeling

T. Fankhauser, Q. Wang, A. Gerlicher and C. Grecos, "Resource Dependency Processing in Web Scaling Frameworks," in IEEE Transactions on Services Computing, vol. 11, no. 1, pp. 155-168, 2018.
318 ms
(Ver 3.3 (11022016))