LCG MCDB—a knowledgebase of Monte-Carlo simulated events
نویسندگان
چکیده
منابع مشابه
LCG MCDB - a knowledgebase of Monte-Carlo simulated events
In this paper we report on LCG Monte-Carlo Data Base (MCDB) and software which has been developed to operate MCDB. The main purpose of the LCG MCDB project is to provide a storage and documentation system for sophisticated event samples simulated for the LHC collaborations by experts. In many cases, the modern Monte-Carlo simulation of physical processes requires expert knowledge in MonteCarlo ...
متن کاملLCG MCDB – Knowledge Base of Monte Carlo Simulated Events
In this paper we report on LCG Monte Carlo Data Base (MCDB) and software which has been developed to operate MCDB. The main purpose of the LCG MCDB project is to provide storage and documentation system for sophisticated event samples simulated for the LHC collaborations by experts. In many cases, the modern Monte Carlo simulation of physical processes requires expert knowledge in Monte Carlo g...
متن کاملep - p h / 07 03 28 7 v 3 9 N ov 2 00 7 LCG MCDB – a Knowledgebase of Monte - Carlo Simulated Events
In this paper we report on LCG Monte-Carlo Data Base (MCDB) and software which has been developed to operate MCDB. The main purpose of the LCG MCDB project is to provide a storage and documentation system for sophisticated event samples simulated for the LHC collaborations by experts. In many cases, the modern Monte-Carlo simulation of physical processes requires expert knowledge in MonteCarlo ...
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ژورنال
عنوان ژورنال: Computer Physics Communications
سال: 2008
ISSN: 0010-4655
DOI: 10.1016/j.cpc.2007.08.010