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Self-adaptive utility-based web session management
Authors:Nicolas Poggi  Toni Moreno  Josep Lluis Berral  Ricard Gavaldà  Jordi Torres
Affiliation:1. Computer Architecture Department, Technical University of Catalonia, Campus Nord UPC, edifici Omega, Jordi Girona Salgado 1-3, 08034 Barcelona, Spain;2. Department of Management, Technical University of Catalonia, Barcelona, Spain;3. Department of Software, LARCA Research Group, Technical University of Catalonia, Barcelona, Spain;4. Barcelona Supercomputing Center, Barcelona, Spain;1. College of Computer and Information Engineering, Hohai University, Nanjing 210098, PR China;2. School of Mathematics Sciences, Liaocheng University, Liaocheng, Shandong 252059, PR China;1. College of Communication Engineering, Jilin University, China;2. School of Computing and Information Systems, Athabasca University, Alberta, Canada;1. Department of Radiation Oncology, Georges François Leclerc Cancer Center, Dijon, France;2. Medical Imaging Group, Laboratory of Electronics, Computer Science and Imaging (Le2I), CNRS 6306, University of Burgundy, France;3. Department of Radiology, University Hospital Le Bocage, Dijon, France;4. Department of Urology, University Hospital Le Bocage, Dijon, France;5. Department of Medical Physics and Radiation Oncology, Georges François Leclerc Cancer Center, Dijon, France;6. Department of Biostatistics, Georges François Leclerc Cancer Center, Dijon, France;7. Department of Surgery, Georges François Leclerc Cancer Center, Dijon, France;8. Department of MR Spectroscopy, University Hospital Le Bocage, Dijon, France;1. Fusion for Energy (F4E), Josep Pla 2, Barcelona, Spain;2. ATMOSTAT, F-94815 Villejuif, France;3. CEA-Saclay, DEN, DM2S, SEMT, F-91191 Gif-sur-Yvette, France;4. CEA-DRT, 38000 Grenoble, France;5. Karlsruhe Institute of Technology (KIT), Postfach 3640, Karlsruhe, Germany
Abstract:In the Internet, where millions of users are a click away from your site, being able to dynamically classify the workload in real time, and predict its short term behavior, is crucial for proper self-management and business efficiency. As workloads vary significantly according to current time of day, season, promotions and linking, it becomes impractical for some ecommerce sites to keep over-dimensioned infrastructures to accommodate the whole load. When server resources are exceeded, session-based admission control systems allow maintaining a high throughput in terms of properly finished sessions and QoS for a limited number of sessions; however, by denying access to excess users, the website looses potential customers.In the present study we describe the architecture of AUGURES, a system that learns to predict Web user’s intentions for visiting the site as well its resource usage. Predictions are made from information known at the time of their first request and later from navigational clicks. For this purpose we use machine learning techniques and Markov-chain models. The system uses these predictions to automatically shape QoS for the most profitable sessions, predict short-term resource needs, and dynamically provision servers according to the expected revenue and the cost to serve it. We test the AUGURES prototype on access logs from a high-traffic, online travel agency, obtaining promising results.
Keywords:
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