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SciDataTool is an open-source Python package for scientific data handling. The objective is to provide a user-friendly, unified, flexible module to postprocess any kind of signal. It is meant to be used by researchers, R&D engineers and teachers in any scientific area. This package allows to efficiently store data fields in the time/space or in …

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SciDataTool

Presentation

SciDataTool's objective is to provide a user-friendly, unified, flexible scientific data tool based on open-source python package.

It is meant to be used by researchers, R&D engineers and teachers in any scientific area. This package allows to efficiently store data fields in the time/space or in the frequency domain, to easily perform Fourier Transforms, to extract slices, to convert units, to compare several fields, etc. It also includes simplified plot commands.

Origin and status of the project

EOMYS has started an open and non-commercial project named Pyleecan (Python Library for Electrical Engineering Computational Analysis). In this context, a scientific data tool has been implemented with the intent to be as generic as possible. The resulting module could be used in any scientific area, and benefit from exterior developments, hence the idea to create the separated open-source project.

Documentation

Tutorials are available in the Tutorials folder.

Contact

You can contact us on Github by opening an issue (to request a feature, ask a question or report a bug).

About

SciDataTool is an open-source Python package for scientific data handling. The objective is to provide a user-friendly, unified, flexible module to postprocess any kind of signal. It is meant to be used by researchers, R&D engineers and teachers in any scientific area. This package allows to efficiently store data fields in the time/space or in …

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  • Jupyter Notebook 90.1%
  • Python 9.9%