gftool.pade.averaged
- gftool.pade.averaged(z_out, z_in, *, valid_z=None, fct_z=None, coeff=None, filter_valid=None, kind: KindSelector)[source]
Return the averaged Padé continuation with its variance.
The output is checked to have an imaginary part smaller than threshold, as retarded Green’s functions and self-energies have a negative imaginary part. This is a helper to conveniently get the continuation, it comes however with overhead.
- Parameters:
- z_out(N_out,) complex ndarray
Points at with the functions will be evaluated.
- z_in(N_in,) complex ndarray
Complex mesh used to calculate coeff.
- valid_z(N_out,) complex ndarray, optional
The output range according to which the Padé approximation is validated (compared to the threshold).
- fct_z(N_z, ) complex ndarray, optional
Function at points z from which the coefficients will be calculated. Can be omitted if coeff is directly given.
- coeff(N_in,) complex ndarray, optional
Coefficients for Padé, calculated from pade.coefficients. Can be given instead of fct_z.
- filter_validcallable or iterable of callable
Function determining which approximants to keep. The signature should be filter_valid(iterable) -> bool ndarray. Currently there are the functions {
FilterNegImag
,FilterNegImagNum
,FilterHighVariance
} implemented to generate filter functions. Look into the implemented for details to create new filters.- kind{KindGf, KindSelf}
Defines the asymptotic of the continued function and the number of minimum and maximum input points used for Padé. For
KindGf
the function goes like \(1/z\) for large z, forKindSelf
the function behaves like a constant for large z.
- Returns:
- averaged.x(N_in, N_out) complex ndarray
Function evaluated at points z.
- averaged.err(N_in, N_out) complex ndarray
Variance associated with the function values pade.x at points z.