pyfai 2023.5.0+dfsg1-9 source package in Ubuntu

Changelog

pyfai (2023.5.0+dfsg1-9) unstable; urgency=medium

  * d/t/control: Make the OpenCL test verbose
  * d/rules: no more test during the build. Rely on autopkgtest to identify
    problematic architectures and on user bug report for all architectures.

 -- Picca Frédéric-Emmanuel <email address hidden>  Fri, 28 Jul 2023 15:13:34 +0200

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Debian PaN Maintainers
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Original maintainer:
Debian PaN Maintainers
Architectures:
any all
Section:
science
Urgency:
Medium Urgency

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Binary packages built by this source

pyfai: Fast Azimuthal Integration scripts

 PyFAI is a Python library for azimuthal integration; it allows the conversion
 of diffraction images taken with 2D detectors like CCD cameras into X-Ray
 powder patterns that can be used by other software like Rietveld refinement
 tools (i.e. FullProf), phase analysis or texture analysis.
 .
 As PyFAI is a library, its main goal is to be integrated in other tools like
 PyMca, LiMa or EDNA. To perform online data analysis, the precise description
 of the experimental setup has to be known. This is the reason why PyFAI
 includes geometry optimization code working on "powder rings" of reference
 samples. Alternatively, PyFAI can also import geometries fitted with other
 tools like Fit2D.
 .
 PyFAI has been designed to work with any kind of detector with any geometry
 (transmission, reflection, off-axis, ...). It uses the Python library FabIO
 to read most images taken by diffractometer.

python-pyfai-doc: Fast Azimuthal Integration scripts - Documentation

 PyFAI is a Python library for azimuthal integration; it allows the conversion
 of diffraction images taken with 2D detectors like CCD cameras into X-Ray
 powder patterns that can be used by other software like Rietveld refinement
 tools (i.e. FullProf), phase analysis or texture analysis.
 .
 As PyFAI is a library, its main goal is to be integrated in other tools like
 PyMca, LiMa or EDNA. To perform online data analysis, the precise description
 of the experimental setup has to be known. This is the reason why PyFAI
 includes geometry optimization code working on "powder rings" of reference
 samples. Alternatively, PyFAI can also import geometries fitted with other
 tools like Fit2D.
 .
 PyFAI has been designed to work with any kind of detector with any geometry
 (transmission, reflection, off-axis, ...). It uses the Python library FabIO
 to read most images taken by diffractometer.
 .
 This is the common documentation package.

python3-pyfai: Fast Azimuthal Integration scripts - Python3

 PyFAI is a Python library for azimuthal integration; it allows the conversion
 of diffraction images taken with 2D detectors like CCD cameras into X-Ray
 powder patterns that can be used by other software like Rietveld refinement
 tools (i.e. FullProf), phase analysis or texture analysis.
 .
 As PyFAI is a library, its main goal is to be integrated in other tools like
 PyMca, LiMa or EDNA. To perform online data analysis, the precise description
 of the experimental setup has to be known. This is the reason why PyFAI
 includes geometry optimization code working on "powder rings" of reference
 samples. Alternatively, PyFAI can also import geometries fitted with other
 tools like Fit2D.
 .
 PyFAI has been designed to work with any kind of detector with any geometry
 (transmission, reflection, off-axis, ...). It uses the Python library FabIO
 to read most images taken by diffractometer.
 .
 This is the Python 3 version of the package.

python3-pyfai-dbgsym: debug symbols for python3-pyfai