Title :
Performance Modelling of Partially Replicated In-Memory Transactional Stores
Author :
Didona, Diego ; Romano, Paolo
Abstract :
This paper presents PROMPT, a PeRfOrmance Model for Partially replicated in-memory Transactional cloud stores. PROMPT combines white box Analytical Modelling and Machine Learning techniques, with the goal of achieving the best of the two methodologies: low training times, high extrapolation power, and portability across heterogeneous cloud infrastructures. We validate PROMPT via an extensive experimental study based on a popular open-source transactional in-memory data store (Red Hat´s Infinispan), industry-standard benchmarks, and deployments on both public and private cloud infrastructures.
Keywords :
cloud computing; learning (artificial intelligence); public domain software; replicated databases; software performance evaluation; software portability; storage management; PROMPT; heterogeneous cloud infrastructures; high extrapolation power; industry-standard benchmarks; low training times; machine learning techniques; open-source transactional in-memory data store; performance model for partially replicated in-memory transactional cloud stores; portability; private cloud infrastructures; public cloud infrastructures; red hat infinispan; white box analytical modelling; Analytical models; Cloud computing; Computational modeling; Data models; Distributed databases; Rail to rail outputs; Time factors;
Conference_Titel :
Modelling, Analysis & Simulation of Computer and Telecommunication Systems (MASCOTS), 2014 IEEE 22nd International Symposium on
Conference_Location :
Paris
DOI :
10.1109/MASCOTS.2014.41