Long-term Management of 1000s of All-Sky Reference Data Sets Using the HiPS Network

被引:0
|
作者
Fernique, Pierre [1 ]
Boch, Thomas [1 ]
Oberto, Anais [1 ]
Allen, Mark [1 ]
Durand, Daniel [2 ]
Ebisawa, Ken [3 ]
Merin, Bruno [4 ]
Salgado, Jesus [4 ]
机构
[1] Univ Strasbourg, CNRS, Observ Astronom Strasbourg, UMR 7550, 11 Rue Univ, F-67000 Strasbourg, France
[2] Natl Res Council Canada, Herzberg Astron & Astrophys, CADC, Victoria, BC, Canada
[3] Japan Aerosp Explorat Agcy JAXA, ISAS, Chuo Ku, 3-1-1 Yoshinodai, Sagamihara, Kanagawa 2525210, Japan
[4] European Space Astron Ctr ESA, POB 78, Villanueva De La Canada 28691, Spain
关键词
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暂无
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
Over the past few years the Hierarchical Progressive Survey (HiPS) has become a key method for the distribution of all -sky reference data. Today, HiPS represents about 100 TB of data, and is expected to double each year as the network of a dozen of HiPS providers including ESAC, JAXA, CADC and CDS grows. HiPS data sets are used by thousands of users per day through various HiPS aware clients: Aladin, MIZAR, Aladin Lite, and Aladin-Lite based ESASky and JUDO2. We expect that this technology will be one of the main methods for the distribution of surveys - images, catalogs and cubes - for the next decade. In this extremely fast growing environment, we will discuss why the HiPS network is an excellent candidate for long term management of all-sky reference data. We highlight how the intrinsic HiPS architecture based on the well known HEALPix geometry, a simple tile structure, straightforward distribution method based only on a basic HTTP server, and being standardised by IVOA, constitutes an extremely robust foundation for a system which will support all-sky data distribution for a long time.
引用
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页码:46 / 49
页数:4
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