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+ | ~~NOTOC~~ | ||
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====== FitPy ====== | ====== FitPy ====== | ||
- | A Python framework for **advanced fitting** of models to data, using approaches such as **semi-stochastic algorithms** and **global analysis**. | + | FitPy -- A Python framework for advanced fitting of models to spectroscopic data. |
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+ | [[https:// | ||
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+ | FitPy is a Python framework for the **advanced fitting | ||
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+ | Making use of the concept of recipe-driven | ||
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+ | |||
+ | ---- | ||
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+ | <WRAP group centeralign> | ||
+ | <WRAP third column> | ||
+ | [[https:// | ||
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+ | [[https:// | ||
+ | </ | ||
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+ | <WRAP third column> | ||
+ | [[https:// | ||
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+ | [[https:// | ||
+ | </ | ||
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+ | <WRAP third column> | ||
+ | [[https:// | ||
+ | |||
+ | [[https:// | ||
+ | </ | ||
+ | </ | ||
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+ | |||
+ | ---- | ||
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+ | ===== License and citation ===== | ||
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+ | FitPy is **free and open source** licensed under a [[.: | ||
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+ | | ||
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+ | As FitPy is based on the SciPy and lmfit packages, you are highly encouraged to cite these two packages as well: SciPy: [[https:// | ||
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+ | ===== News ===== | ||
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+ | Note: The most up-to-date information can be found in the [[https:// | ||
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+ | | ||
+ | * [[https:// | ||
+ | * 2022-01-30: **FitPy v0.1.0 released** | ||
+ | * [[https:// | ||
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+ | |||
+ | ---- | ||
- | FitPy is designed with **spectroscopic data** in mind, but will be generally applicable to all kinds of data models should be fitted to. | ||
+ | **A note on the logo:** The logo shows a Latin square, usually attributed to Leonhard Euler. In the context of statistical sampling, a Latin square consists of only one sample in each row and each column. Its // | ||