"""
Base classes for all gridders.
"""
import xarray as xr
import pandas as pd
import numpy as np
from sklearn.base import BaseEstimator
from sklearn.metrics import r2_score
from ..coordinates import grid_coordinates, profile_coordinates, scatter_points
from .utils import check_data, check_fit_input
[docs]class BaseGridder(BaseEstimator):
"""
Base class for gridders.
Most methods of this class requires the implementation of a
:meth:`~verde.base.BaseGridder.predict` method. The data returned by it
should be a 1d or 2d numpy array for scalar data or a tuple with 1d or 2d
numpy arrays for each component of vector data.
The :meth:`~verde.base.BaseGridder.filter` method requires the
implementation of a :meth:`~verde.base.BaseGridder.fit` method to fit the
gridder model to data.
Doesn't define any new attributes.
This is a subclass of :class:`sklearn.base.BaseEstimator` and must abide by
the same rules of the scikit-learn classes. Mainly:
* ``__init__`` must **only** assign values to attributes based on the
parameters it receives. All parameters must have default values.
Parameter checking should be done in ``fit``.
* Estimated parameters should be stored as attributes with names ending in
``_``.
Examples
--------
Let's create a class that interpolates by attributing the mean value of the
data to every single point (it's not a very good interpolator).
>>> import verde as vd
>>> import numpy as np
>>> from sklearn.utils.validation import check_is_fitted
>>> class MeanGridder(vd.base.BaseGridder):
... "Gridder that always produces the mean of all data values"
... def __init__(self, multiplier=1):
... # Init should only assign the parameters to attributes
... self.multiplier = multiplier
... def fit(self, coordiantes, data):
... # Argument checking should be done in fit
... if self.multiplier <= 0:
... raise ValueError('Invalid multiplier {}'
... .format(self.multiplier))
... self.mean_ = data.mean()*self.multiplier
... # fit should return self so that we can chain operations
... return self
... def predict(self, coordinates):
... # We know the gridder has been fitted if it has the mean
... check_is_fitted(self, ['mean_'])
... return np.ones_like(coordinates[0])*self.mean_
>>> # Try it on some synthetic data
>>> synthetic = vd.datasets.CheckerBoard(region=(0, 5, -10, 8))
>>> data = synthetic.scatter()
>>> print('{:.4f}'.format(data.scalars.mean()))
-32.2182
>>> # Fit the gridder to our synthetic data
>>> grd = MeanGridder().fit((data.easting, data.northing), data.scalars)
>>> grd
MeanGridder(multiplier=1)
>>> # Interpolate on a regular grid
>>> grid = grd.grid(region=(0, 5, -10, -8), shape=(30, 20))
>>> np.allclose(grid.scalars, -32.2182)
True
>>> # Interpolate along a profile
>>> profile = grd.profile(point1=(0, -10), point2=(5, -8), size=10)
>>> print(', '.join(['{:.2f}'.format(i) for i in profile.distance]))
0.00, 0.60, 1.20, 1.80, 2.39, 2.99, 3.59, 4.19, 4.79, 5.39
>>> print(', '.join(['{:.1f}'.format(i) for i in profile.scalars]))
-32.2, -32.2, -32.2, -32.2, -32.2, -32.2, -32.2, -32.2, -32.2, -32.2
"""
[docs] def predict(self, coordinates):
"""
Predict data on the given coordinate values. NOT IMPLEMENTED.
This is a dummy placeholder for an actual method.
Parameters
----------
coordinates : tuple of arrays
Arrays with the coordinates of each data point. Should be in the
following order: (easting, northing, vertical, ...).
Returns
-------
data : array
The data predicted at the give coordinates.
"""
raise NotImplementedError()
[docs] def fit(self, coordinates, data, weights=None):
"""
Fit the gridder to observed data. NOT IMPLEMENTED.
This is a dummy placeholder for an actual method.
Parameters
----------
coordinates : tuple of arrays
Arrays with the coordinates of each data point. Should be in the
following order: (easting, northing, vertical, ...).
data : array or tuple of arrays
The data values of each data point. If the data has more than one
component, *data* must be a tuple of arrays (one for each
component).
weights : None or array or tuple of arrays
If not None, then the weights assigned to each data point. If more
than one data component is provided, you must provide a weights
array for each data component (if not None).
Returns
-------
self
This instance of the gridder. Useful to chain operations.
"""
raise NotImplementedError()
[docs] def filter(self, coordinates, data, weights=None):
"""
Filter the data through the gridder and produce residuals.
Calls ``fit`` on the data, evaluates the residuals (data - predicted
data), and returns the coordinates, residuals, and weights.
No very useful by itself but this interface makes gridders compatible
with other processing operations and is used by :class:`verde.Chain` to
join them together (for example, so you can fit a spline on the
residuals of a trend).
Parameters
----------
coordinates : tuple of arrays
Arrays with the coordinates of each data point. Should be in the
following order: (easting, northing, vertical, ...).
data : array or tuple of arrays
The data values of each data point. If the data has more than one
component, *data* must be a tuple of arrays (one for each
component).
weights : None or array or tuple of arrays
If not None, then the weights assigned to each data point. If more
than one data component is provided, you must provide a weights
array for each data component (if not None).
Returns
-------
coordinates, residuals, weights
The coordinates and weights are same as the input. Residuals are
the input data minus the predicted data.
"""
self.fit(coordinates, data, weights)
data = check_data(data)
pred = check_data(self.predict(coordinates))
residuals = tuple(
datai - predi.reshape(datai.shape) for datai, predi in zip(data, pred)
)
if len(residuals) == 1:
residuals = residuals[0]
return coordinates, residuals, weights
[docs] def score(self, coordinates, data, weights=None):
"""
Score the gridder predictions against the given data.
Calculates the R^2 coefficient of determination of between the
predicted values and the given data values. A maximum score of 1 means
a perfect fit. The score can be negative.
If the data has more than 1 component, the scores of each component
will be averaged.
Parameters
----------
coordinates : tuple of arrays
Arrays with the coordinates of each data point. Should be in the
following order: (easting, northing, vertical, ...).
data : array or tuple of arrays
The data values of each data point. If the data has more than one
component, *data* must be a tuple of arrays (one for each
component).
weights : None or array or tuple of arrays
If not None, then the weights assigned to each data point. If more
than one data component is provided, you must provide a weights
array for each data component (if not None).
Returns
-------
score : float
The R^2 score
"""
coordinates, data, weights = check_fit_input(
coordinates, data, weights, unpack=False
)
pred = check_data(self.predict(coordinates))
result = np.mean(
[
r2_score(datai.ravel(), predi.ravel(), sample_weight=weighti)
for datai, predi, weighti in zip(data, pred, weights)
]
)
return result
[docs] def grid(
self,
region=None,
shape=None,
spacing=None,
dims=None,
data_names=None,
projection=None,
**kwargs
):
"""
Interpolate the data onto a regular grid.
The grid can be specified by either the number of points in each
dimension (the *shape*) or by the grid node spacing. See
:func:`verde.grid_coordinates` for details. Other arguments for
:func:`verde.grid_coordinates` can be passed as extra keyword arguments
(``kwargs``) to this method.
If the interpolator collected the input data region, then it will be
used if ``region=None``. Otherwise, you must specify the grid region.
Use the *dims* and *data_names* arguments to set custom names for the
dimensions and the data field(s) in the output :class:`xarray.Dataset`.
Default names will be provided if none are given.
Parameters
----------
region : list = [W, E, S, N]
The boundaries of a given region in Cartesian or geographic
coordinates.
shape : tuple = (n_north, n_east) or None
The number of points in the South-North and West-East directions,
respectively.
spacing : tuple = (s_north, s_east) or None
The grid spacing in the South-North and West-East directions,
respectively.
dims : list or None
The names of the northing and easting data dimensions,
respectively, in the output grid. Defaults to ``['northing',
'easting']``. **NOTE: This is an exception to the "easting" then
"northing" pattern but is required for compatibility with xarray.**
data_names : list of None
The name(s) of the data variables in the output grid. Defaults to
``['scalars']`` for scalar data,
``['east_component', 'north_component']`` for 2D vector data, and
``['east_component', 'north_component', 'vertical_component']`` for
3D vector data.
projection : callable or None
If not None, then should be a callable object
``projection(easting, northing) -> (proj_easting, proj_northing)``
that takes in easting and northing coordinate arrays and returns
projected northing and easting coordinate arrays. This function
will be used to project the generated grid coordinates before
passing them into ``predict``. For example, you can use this to
generate a geographic grid from a Cartesian gridder.
Returns
-------
grid : xarray.Dataset
The interpolated grid. Metadata about the interpolator is written
to the ``attrs`` attribute.
See also
--------
verde.grid_coordinates : Generate the coordinate values for the grid.
"""
dims = get_dims(dims)
region = get_instance_region(self, region)
coordinates = grid_coordinates(region, shape=shape, spacing=spacing, **kwargs)
if projection is None:
data = check_data(self.predict(coordinates))
else:
data = check_data(self.predict(projection(*coordinates)))
data_names = get_data_names(data, data_names)
coords = {dims[1]: coordinates[0][0, :], dims[0]: coordinates[1][:, 0]}
attrs = {"metadata": "Generated by {}".format(repr(self))}
data_vars = {
name: (dims, value, attrs) for name, value in zip(data_names, data)
}
return xr.Dataset(data_vars, coords=coords, attrs=attrs)
[docs] def scatter(
self,
region=None,
size=300,
random_state=0,
dims=None,
data_names=None,
projection=None,
**kwargs
):
"""
Interpolate values onto a random scatter of points.
Point coordinates are generated by :func:`verde.scatter_points`. Other
arguments for this function can be passed as extra keyword arguments
(``kwargs``) to this method.
If the interpolator collected the input data region, then it will be
used if ``region=None``. Otherwise, you must specify the grid region.
Use the *dims* and *data_names* arguments to set custom names for the
dimensions and the data field(s) in the output
:class:`pandas.DataFrame`. Default names are provided.
Parameters
----------
region : list = [W, E, S, N]
The boundaries of a given region in Cartesian or geographic
coordinates.
size : int
The number of points to generate.
random_state : numpy.random.RandomState or an int seed
A random number generator used to define the state of the random
permutations. Use a fixed seed to make sure computations are
reproducible. Use ``None`` to choose a seed automatically
(resulting in different numbers with each run).
dims : list or None
The names of the northing and easting data dimensions,
respectively, in the output dataframe. Defaults to ``['northing',
'easting']``. **NOTE: This is an exception to the "easting" then
"northing" pattern but is required for compatibility with xarray.**
data_names : list of None
The name(s) of the data variables in the output dataframe. Defaults
to ``['scalars']`` for scalar data,
``['east_component', 'north_component']`` for 2D vector data, and
``['east_component', 'north_component', 'vertical_component']`` for
3D vector data.
projection : callable or None
If not None, then should be a callable object
``projection(easting, northing) -> (proj_easting, proj_northing)``
that takes in easting and northing coordinate arrays and returns
projected northing and easting coordinate arrays. This function
will be used to project the generated scatter coordinates before
passing them into ``predict``. For example, you can use this to
generate a geographic scatter from a Cartesian gridder.
Returns
-------
table : pandas.DataFrame
The interpolated values on a random set of points.
"""
dims = get_dims(dims)
region = get_instance_region(self, region)
coordinates = scatter_points(region, size, random_state=random_state, **kwargs)
if projection is None:
data = check_data(self.predict(coordinates))
else:
data = check_data(self.predict(projection(*coordinates)))
data_names = get_data_names(data, data_names)
columns = [(dims[0], coordinates[1]), (dims[1], coordinates[0])]
columns.extend(zip(data_names, data))
return pd.DataFrame(dict(columns), columns=[c[0] for c in columns])
[docs] def profile(
self,
point1,
point2,
size,
dims=None,
data_names=None,
projection=None,
**kwargs
):
"""
Interpolate data along a profile between two points.
Generates the profile along a straight line assuming Cartesian
distances. Point coordinates are generated by
:func:`verde.profile_coordinates`. Other arguments for this function
can be passed as extra keyword arguments (``kwargs``) to this method.
Use the *dims* and *data_names* arguments to set custom names for the
dimensions and the data field(s) in the output
:class:`pandas.DataFrame`. Default names are provided.
Includes the calculated Cartesian distance from *point1* for each data
point in the profile.
Parameters
----------
point1 : tuple
The easting and northing coordinates, respectively, of the first
point.
point2 : tuple
The easting and northing coordinates, respectively, of the second
point.
size : int
The number of points to generate.
dims : list or None
The names of the northing and easting data dimensions,
respectively, in the output dataframe. Defaults to ``['northing',
'easting']``. **NOTE: This is an exception to the "easting" then
"northing" pattern but is required for compatibility with xarray.**
data_names : list of None
The name(s) of the data variables in the output dataframe. Defaults
to ``['scalars']`` for scalar data,
``['east_component', 'north_component']`` for 2D vector data, and
``['east_component', 'north_component', 'vertical_component']`` for
3D vector data.
projection : callable or None
If not None, then should be a callable object
``projection(easting, northing) -> (proj_easting, proj_northing)``
that takes in easting and northing coordinate arrays and returns
projected northing and easting coordinate arrays. This function
will be used to project the generated profile coordinates before
passing them into ``predict``. For example, you can use this to
generate a geographic profile from a Cartesian gridder.
Returns
-------
table : pandas.DataFrame
The interpolated values along the profile.
"""
dims = get_dims(dims)
coordinates, distances = profile_coordinates(point1, point2, size, **kwargs)
if projection is None:
data = check_data(self.predict(coordinates))
else:
data = check_data(self.predict(projection(*coordinates)))
data_names = get_data_names(data, data_names)
columns = [
(dims[0], coordinates[1]),
(dims[1], coordinates[0]),
("distance", distances),
]
columns.extend(zip(data_names, data))
return pd.DataFrame(dict(columns), columns=[c[0] for c in columns])
def get_dims(dims):
"""
Get default dimension names.
Examples
--------
>>> get_dims(dims=None)
('northing', 'easting')
>>> get_dims(dims=('john', 'paul'))
('john', 'paul')
"""
if dims is not None:
return dims
return ("northing", "easting")
def get_data_names(data, data_names):
"""
Get default names for data fields if none are given based on the data.
Examples
--------
>>> import numpy as np
>>> east, north, up = [np.arange(10)]*3
>>> get_data_names((east,), data_names=None)
('scalars',)
>>> get_data_names((east, north), data_names=None)
('east_component', 'north_component')
>>> get_data_names((east, north, up), data_names=None)
('east_component', 'north_component', 'vertical_component')
>>> get_data_names((up, north), data_names=('ringo', 'george'))
('ringo', 'george')
"""
if data_names is not None:
if len(data) != len(data_names):
raise ValueError(
"Data has {} components but only {} names provided: {}".format(
len(data), len(data_names), str(data_names)
)
)
return data_names
data_types = [
("scalars",),
("east_component", "north_component"),
("east_component", "north_component", "vertical_component"),
]
if len(data) > len(data_types):
raise ValueError(
" ".join(
[
"Default data names only available for up to 3 components.",
"Must provide custom names through the 'data_names' argument.",
]
)
)
return data_types[len(data) - 1]
def get_instance_region(instance, region):
"""
Get the region attribute stored in instance if one is not provided.
"""
if region is None:
if not hasattr(instance, "region_"):
raise ValueError("No default region found. Argument must be supplied.")
region = getattr(instance, "region_")
return region