Back to Search Start Over

A Big Data Platform for heterogeneous data collection and analysis in large-scale data centres

Authors :
Lucia Morganti
Elisabetta Ronchieri
B Martelli
Matteo Galletti
Doina Cristina Duma
Simone Rossi Tisbeni
Jacopo Gasparetto
Francesco Minarini
Arianna Carbone
Daniele Cesini
Claudia Cavallaro
Diego Michelotto
Antonio Falabella
Elisabetta Furlan
Giusy Sergi
Rossi Tisbeni, Simone
CESINI, Daniele
Martelli, Barbara
Carbone, Arianna
Cavallaro, Claudia
Duma, Doina Cristina
Falabella, Antonio
Galletti, Matteo
Gasparetto, Jacopo
Furlan, Elisabetta
Michelotto, Diego
Minarini, Francesco
Morganti, Lucia
Ronchieri, Elisabetta
Sergi, Giusy
Source :
Scopus-Elsevier
Publication Year :
2021

Abstract

The INFN-CNAF data centre hosts the Italian Tier~1 site for the Worldwide LHC Computing Grid (WLCG), while also serving several other research and technological transfer programs. The challenges posed by the upcoming runs of LHC, together with the opportunity of moving the data centre itself to a bigger site, require a thorough redesign of its monitoring system. The large but heterogeneous amount of logging data and metrics produced daily are fundamental for monitoring activities and, once harmonised, can also be used to build Predictive Maintenance models based on Big Data techniques. In this work we describe the Big Data Platform, a new monitoring infrastructure under development at CNAF. The Big Data Platform relies on a modular, highly scalable architecture based on open source technologies and able to exploit modern frameworks such as containerisation and cloud support. It is capable of collecting data from heterogeneous data sources, clean and harmonise them, and store them as JSON files on different solutions, based on the needs of the end user. Data can then be visualised using Kibana, or analysed through a platform based on Jupyter Notebooks.

Details

Language :
English
Database :
OpenAIRE
Journal :
Scopus-Elsevier
Accession number :
edsair.doi.dedup.....f81670b1962a58ba92782eb51be22359