Evaluation, Analysis and adaptation of web prefetching techniques in current web
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Abstract
This dissertation is focused on the study of the prefetching technique applied to the World Wide Web. This technique lies in processing (e.g., downloading) a Web request before the user actually makes it. By doing so, the waiting time perceived by the user can be reduced, which is the main goal of the Web prefetching techniques.
The study of the state of the art about Web prefetching showed the heterogeneity that exists in its performance evaluation.
This heterogeneity is mainly focused on four issues:
i) there was no open framework to simulate and evaluate the already proposed prefetching techniques;
ii) no uniform selection of the performance indexes to be maximized, or even their definition;
iii) no comparative studies of prediction algorithms taking into account the costs and benefits of web prefetching at the same time;
and iv) the evaluation of techniques under very different or few significant workloads.
During the research work, we have contributed to homogenizing the evaluation of prefetching performance by developing an open simulation framework that reproduces in detail all the aspects that impact on prefetching performance. In addition, prefetching performance metrics have been analyzed in order to clarify their definition and detect the most meaningful from the user's point of view.
We also proposed an evaluation methodology to consider the cost and the benefit of prefetching at the same time.
Finally, the importance of using current workloads to evaluate prefetching techniques has been highlighted; otherwise wrong conclusions could be achieved.
The potential benefits of each web prefetching architecture were analyzed, finding that collaborative predictors could reduce almost all the latency perceived by users.
The first step to develop a collaborative predictor is to make predictions at the server, so this thesis is focused on an architecture with a server-located predictor.
The environment conditions that can be found in the web are als