Regrouping metric-space search index for search engine size adaptation


Autoria(s): Al Ruqeishi, Khalil; Konečný, Michal
Contribuinte(s)

Amato, Giuseppe

Connor, Richard

Falchi, Fabrizio

Gennaro, Claudio

Data(s)

17/10/2015

Resumo

This work contributes to the development of search engines that self-adapt their size in response to fluctuations in workload. Deploying a search engine in an Infrastructure as a Service (IaaS) cloud facilitates allocating or deallocating computational resources to or from the engine. In this paper, we focus on the problem of regrouping the metric-space search index when the number of virtual machines used to run the search engine is modified to reflect changes in workload. We propose an algorithm for incrementally adjusting the index to fit the varying number of virtual machines. We tested its performance using a custom-build prototype search engine deployed in the Amazon EC2 cloud, while calibrating the results to compensate for the performance fluctuations of the platform. Our experiments show that, when compared with computing the index from scratch, the incremental algorithm speeds up the index computation 2–10 times while maintaining a similar search performance.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/26872/1/regrouping_metric_space_3_.pdf

Al Ruqeishi, Khalil and Konečný, Michal (2015). Regrouping metric-space search index for search engine size adaptation. IN: Similarity search and applications. Amato, Giuseppe; Connor, Richard; Falchi, Fabrizio and Gennaro, Claudio (eds) Lecture notes in computer science . Chem (CH): Springer.

Publicador

Springer

Relação

http://eprints.aston.ac.uk/26872/

Tipo

Book Section

NonPeerReviewed