Artifact python-lmfit-doc_1.2.2-3_all

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  Architecture: all
  Built-Using: sphinx (= 7.2.6-4)
  Depends: libjs-mathjax, libjs-sphinxdoc (>= 7.2.2)
  Description: |-
    Least-Squares Minimization with Constraints (Documentation)
     The lmfit Python package provides a simple, flexible interface to
     non-linear optimization or curve fitting problems. The package
     extends the optimization capabilities of scipy.optimize by replacing
     floating pointing values for the variables to be optimized with
     Parameter objects. These Parameters can be fixed or varied, have
     upper and/or lower bounds placed on its value, or written as an
     algebraic expression of other Parameters.
     .
     The principal advantage of using Parameters instead of simple
     variables is that the objective function does not have to be
     rewritten to reflect every change of what is varied in the fit, or
     what relationships or constraints are placed on the Parameters. This
     means a scientific programmer can write a general model that
     encapsulates the phenomenon to be optimized, and then allow user of
     that model to change what is varied and fixed, what range of values
     is acceptable for Parameters, and what constraints are placed on the
     model. The ease with which the model can be changed also allows one
     to easily test the significance of certain Parameters in a fitting
     model.
     .
     The lmfit package allows a choice of several optimization methods
     available from scipy.optimize. The default, and by far best tested
     optimization method used is the Levenberg-Marquardt algorithm from
     MINPACK-1 as implemented in scipy.optimize.leastsq. This method
     is by far the most tested and best support method in lmfit, and much
     of this document assumes this algorithm is used unless explicitly
     stated. An important point for many scientific analysis is that this
     is only method that automatically estimates uncertainties and
     correlations between fitted variables from the covariance matrix
     calculated during the fit.
     .
     A few other optimization routines are also supported, including
     Nelder-Mead simplex downhill, Powell's method, COBYLA, Sequential
     Least Squares methods as implemented in scipy.optimize.fmin, and
     several others from scipy.optimize. In their native form, some of
     these methods setting allow upper or lower bounds on parameter
     variables, or adding constraints on fitted variables. By using
     Parameter objects, lmfit allows bounds and constraints for all of
     these methods, and makes it easy to swap between methods without
     hanging the objective function or set of Parameters.
     .
     Finally, because the approach derived from MINPACK-1 usin the
     covariance matrix to determine uncertainties is sometimes questioned
     (and sometimes rightly so), lmfit supports methods to do a brute
     force search of the confidence intervals and correlations for sets of
     parameters.
     .
     This is the common documentation package.
  Homepage: https://lmfit.github.io/lmfit-py/
  Installed-Size: '8475'
  Maintainer: Debian Science Maintainers <debian-science-maintainers@lists.alioth.debian.org>
  Multi-Arch: foreign
  Package: python-lmfit-doc
  Priority: optional
  Section: doc
  Source: lmfit-py
  Version: 1.2.2-3
srcpkg_name: lmfit-py
srcpkg_version: 1.2.2-3

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