import numpy as np from ..base import Base class CustomInterpolator(Base): """ Class to interpolate by fitting a sklearn type Regressor to the given data. Parameters ---------- regressor: class definition, This variable is used to pass in the Regressor we would like to use for interpolation. The regressor sould be sklearn type regressor. Example from sklearn.ensemble -> RandomForestRegressor reg_kwargs: dict, optional This is a dictionary that is passed into the Regressor initialization. Use this to change the behaviour of the passed regressor. Default = empty dict Attributes ---------- reg : object Object of the `regressor` class passed. """ def __init__( self, regressor, resolution="standard", coordinate_type="Euclidean" ): super().__init__(resolution, coordinate_type) self.reg = regressor def _fit(self, X, y): """Function for fitting. This function is not supposed to be called directly. """ self.reg.fit(X, y) return self def _predict_grid(self, x1lim, x2lim): """Function for grid interpolation. This function is not supposed to be called directly. """ # getting the boundaries for interpolation x1min, x1max = x1lim x2min, x2max = x2lim # building the grid x1 = np.linspace(x1min, x1max, self.resolution) x2 = np.linspace(x2min, x2max, self.resolution) X1, X2 = np.meshgrid(x1, x2) return self.reg.predict(np.asarray([X1.ravel(), X2.ravel()]).T) def _predict(self, X): """Function for interpolation on specific points. This function is not supposed to be called directly. """ return self.reg.predict(X) def __repr__(self): return self.__class__.__name__ + "." + self.reg.__class__.__name__