cspice
SPICE toolkit
An unofficial implementation of NASA's SPICE Toolkit for cross-platform compatibility
NASA/JPL SPICE Toolkit for C – patched for cross-platform compatibility
20 stars
4 watching
8 forks
Language: C
last commit: almost 3 years ago
Linked from 1 awesome list
astronomical-algorithmsastronomycelestial-mechanicscross-platformcspiceephemeris-calculationsjpl-spice-toolkitlinuxmacosnaif-cspicenaif-spice-toolkitnasawasmwebassemblywindows
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