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IAL expertise: Experts tools to analyse the outputs of IAL configurations.

Project description

IAL expertise

Expert tools to analyse the outputs of IAL configurations.

Each expert is addressing a different kind of output, being able to parse or read these outputs, and compare them to a reference output.

This package has been developped primarily for the needs of Davai which uses these experts to state on the outputs of tests conducted on a code contribution to IAL or other associated source repositories.

Currently implemented experts (non-exhaustive list)

Experts currently are implemented for the following metrics:

  • Norms (spectral, gridpoint)
  • Fields in FA/GRIB output files
  • Jo-tables
  • DrHook profiling
  • OOPS observation operators, direct and adjoint test
  • OOPS model adjoint test
  • Bator obscounts, Canari statistics
  • Gmkpack build
  • Variables printed in model setup

Expert Board

The analysis and comparison are processed through the use of an ExpertBoard object, whose class is provided in the package.

Experts doc generation

Using Vortex's tbinterface.py:

tbinterface.py -f json -c outputexpert -n ial_expertise

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