Non-iterative initial parameter guesses for fitting routines
Project description
scikit-guess
This scikit contains methods for computing fast, non-iterative estimates of fitting parameters for common functions. The estimates may be used as-is on their own, or refined through non-linear optimization algorithms. The name of the scikit comes from the fact that estimates are a good initial guess for the optimal fitting parameters.
Documentation available on Read the Docs: https://scikit-guess.readthedocs.io/en/latest/.
Changelog
0.0.1a0 (2021-02-01)
- First release on PyPI. Still a WIP, but wanted to hog the package name.
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