Benefits of interpreted vector programming and Hierarchical Data Format for statistic ocean model evaluation
Author(s)
Type
Conference paper
Language
English
Obiettivo Specifico
4A. Oceanografia e clima
Status
Published
Date Issued
November 2018
Conference Location
Barcelona, Spain
Publisher
Istituto Nazionale di Oceanografia e di Geofisica Sperimentale
Alternative Location
Subjects
Abstract
HPC world is increasing incredibly fast.We can build more resolute and accurate models. Unfortunately,Big Data management pops up when trying to evaluate them.We set up a Python module that does automated assessment of a set of observations,extraction and aggregation in time of ocean model time,running evaluation methods.
For the first time execution,we used ocean physics variables and CMEMS reprocessed moorings historical data,two model data from the RITMARE and from CMEMS.
The results are promising,because we can process an historical or real time evaluation and it is portable,the evaluation results provides more reliable skill scores.
For the first time execution,we used ocean physics variables and CMEMS reprocessed moorings historical data,two model data from the RITMARE and from CMEMS.
The results are promising,because we can process an historical or real time evaluation and it is portable,the evaluation results provides more reliable skill scores.
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IMDIS2018_Proceedings.pdf
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