During three years of LHC data taking, the ATLAS collaboration completed three petascale data reprocessing campaigns on the Grid, with up to 2 PB of data being reprocessed every year. In reprocessing on the Grid, failures can occur for a variety of reasons, while Grid heterogeneity makes failures hard to diagnose and repair quickly. As a result, Big Data processing on the Grid must tolerate a continuous stream of failures, errors and faults. While ATLAS fault-tolerance mechanisms improve the reliability of Big Data processing in the Grid, their benefits come at costs and result in delays making the performance prediction difficult. Reliability Engineering provides a framework for fundamental understanding of the Big Data processing on the G...
In the LHC operations era, analysis of the multi-petabyte ATLAS data sample by globally distributed ...
In the LHC operations era, analysis of the multi-petabyte ATLAS data sample by globally distributed ...
The ever-increasing volumes of scientific data present new challenges for Distributed Computing and ...
The ATLAS detector is in its third year of continuous LHC running taking data for physics analysis. ...
To improve the data quality for physics analysis, the ATLAS collaboration completed three major data...
The ATLAS detector is in the second year of the LHC long run. A starting point for ATLAS physics ana...
The ATLAS detector is in the second year of continuous LHC running. A starting point for ATLAS physi...
The ATLAS detector is in the second year of continuous LHC running. A starting point for ATLAS physi...
In the LHC operations era the key goal is to analyse the results of the collisions of high-energy pa...
In the LHC operations era the key goal is to analyse the results of the collisions of high-energy pa...
Summary : In the LHC operations era analyzing the large data by the distributed physicists becomes a...
The production system for Grid Data Processing handles petascale ATLAS data reprocessing and Monte C...
The ATLAS experiment has had two years of steady data taking in 2010 and 2011. Data are calibrated, ...
The ATLAS experiment has collected more than 5 fb-1 of data in 2011 at the energy of 7 TeV. Several ...
The ATLAS experiment has collected more than 5 fb-1 of data in 2011 at the energy of 7 TeV. Several ...
In the LHC operations era, analysis of the multi-petabyte ATLAS data sample by globally distributed ...
In the LHC operations era, analysis of the multi-petabyte ATLAS data sample by globally distributed ...
The ever-increasing volumes of scientific data present new challenges for Distributed Computing and ...
The ATLAS detector is in its third year of continuous LHC running taking data for physics analysis. ...
To improve the data quality for physics analysis, the ATLAS collaboration completed three major data...
The ATLAS detector is in the second year of the LHC long run. A starting point for ATLAS physics ana...
The ATLAS detector is in the second year of continuous LHC running. A starting point for ATLAS physi...
The ATLAS detector is in the second year of continuous LHC running. A starting point for ATLAS physi...
In the LHC operations era the key goal is to analyse the results of the collisions of high-energy pa...
In the LHC operations era the key goal is to analyse the results of the collisions of high-energy pa...
Summary : In the LHC operations era analyzing the large data by the distributed physicists becomes a...
The production system for Grid Data Processing handles petascale ATLAS data reprocessing and Monte C...
The ATLAS experiment has had two years of steady data taking in 2010 and 2011. Data are calibrated, ...
The ATLAS experiment has collected more than 5 fb-1 of data in 2011 at the energy of 7 TeV. Several ...
The ATLAS experiment has collected more than 5 fb-1 of data in 2011 at the energy of 7 TeV. Several ...
In the LHC operations era, analysis of the multi-petabyte ATLAS data sample by globally distributed ...
In the LHC operations era, analysis of the multi-petabyte ATLAS data sample by globally distributed ...
The ever-increasing volumes of scientific data present new challenges for Distributed Computing and ...