scipy.interpolate.krogh_interpolate¶
- scipy.interpolate.krogh_interpolate(xi, yi, x, der=0, axis=0)[source]¶
- Convenience function for polynomial interpolation. - See KroghInterpolator for more details. - Parameters: - xi : array_like - Known x-coordinates. - yi : array_like - Known y-coordinates, of shape (xi.size, R). Interpreted as vectors of length R, or scalars if R=1. - x : array_like - Point or points at which to evaluate the derivatives. - der : int or list, optional - How many derivatives to extract; None for all potentially nonzero derivatives (that is a number equal to the number of points), or a list of derivatives to extract. This number includes the function value as 0th derivative. - axis : int, optional - Axis in the yi array corresponding to the x-coordinate values. - Returns: - d : ndarray - If the interpolator’s values are R-dimensional then the returned array will be the number of derivatives by N by R. If x is a scalar, the middle dimension will be dropped; if the yi are scalars then the last dimension will be dropped. - See also - Notes - Construction of the interpolating polynomial is a relatively expensive process. If you want to evaluate it repeatedly consider using the class KroghInterpolator (which is what this function uses). 
