matplotlib.scale

Scales define the distribution of data values on an axis, e.g. a log scaling. They are defined as subclasses of ScaleBase.

See also axes.Axes.set_xscale and the scales examples in the documentation.

See Custom scale for a full example of defining a custom scale.

Matplotlib also supports non-separable transformations that operate on both Axis at the same time. They are known as projections, and defined in matplotlib.projections.

class matplotlib.scale.FuncScale(axis, functions)[source]

Bases: matplotlib.scale.ScaleBase

Provide an arbitrary scale with user-supplied function for the axis.

Parameters
axisAxis

The axis for the scale.

functions(callable, callable)

two-tuple of the forward and inverse functions for the scale. The forward function must be monotonic.

Both functions must have the signature:

def forward(values: array-like) -> array-like
get_transform()[source]

Return the FuncTransform associated with this scale.

name = 'function'
set_default_locators_and_formatters(axis)[source]

Set the locators and formatters of axis to instances suitable for this scale.

class matplotlib.scale.FuncScaleLog(axis, functions, base=10)[source]

Bases: matplotlib.scale.LogScale

Provide an arbitrary scale with user-supplied function for the axis and then put on a logarithmic axes.

Parameters
axismatplotlib.axis.Axis

The axis for the scale.

functions(callable, callable)

two-tuple of the forward and inverse functions for the scale. The forward function must be monotonic.

Both functions must have the signature:

def forward(values: array-like) -> array-like
basefloat, default: 10

Logarithmic base of the scale.

property base
get_transform()[source]

Return the Transform associated with this scale.

name = 'functionlog'
class matplotlib.scale.FuncTransform(forward, inverse)[source]

Bases: matplotlib.transforms.Transform

A simple transform that takes and arbitrary function for the forward and inverse transform.

Parameters
forwardcallable

The forward function for the transform. This function must have an inverse and, for best behavior, be monotonic. It must have the signature:

def forward(values: array-like) -> array-like
inversecallable

The inverse of the forward function. Signature as forward.

has_inverse = True

True if this transform has a corresponding inverse transform.

input_dims = 1

The number of input dimensions of this transform. Must be overridden (with integers) in the subclass.

inverted()[source]

Return the corresponding inverse transformation.

It holds x == self.inverted().transform(self.transform(x)).

The return value of this method should be treated as temporary. An update to self does not cause a corresponding update to its inverted copy.

is_separable = True

True if this transform is separable in the x- and y- dimensions.

output_dims = 1

The number of output dimensions of this transform. Must be overridden (with integers) in the subclass.

transform_non_affine(values)[source]

Apply only the non-affine part of this transformation.

transform(values) is always equivalent to transform_affine(transform_non_affine(values)).

In non-affine transformations, this is generally equivalent to transform(values). In affine transformations, this is always a no-op.

Parameters
valuesarray

The input values as NumPy array of length input_dims or shape (N x input_dims).

Returns
array

The output values as NumPy array of length input_dims or shape (N x output_dims), depending on the input.

class matplotlib.scale.InvertedLogTransform(base)[source]

Bases: matplotlib.transforms.Transform

Parameters
shorthand_namestr

A string representing the "name" of the transform. The name carries no significance other than to improve the readability of str(transform) when DEBUG=True.

has_inverse = True

True if this transform has a corresponding inverse transform.

input_dims = 1

The number of input dimensions of this transform. Must be overridden (with integers) in the subclass.

inverted()[source]

Return the corresponding inverse transformation.

It holds x == self.inverted().transform(self.transform(x)).

The return value of this method should be treated as temporary. An update to self does not cause a corresponding update to its inverted copy.

is_separable = True

True if this transform is separable in the x- and y- dimensions.

output_dims = 1

The number of output dimensions of this transform. Must be overridden (with integers) in the subclass.

transform_non_affine(a)[source]

Apply only the non-affine part of this transformation.

transform(values) is always equivalent to transform_affine(transform_non_affine(values)).

In non-affine transformations, this is generally equivalent to transform(values). In affine transformations, this is always a no-op.

Parameters
valuesarray

The input values as NumPy array of length input_dims or shape (N x input_dims).

Returns
array

The output values as NumPy array of length input_dims or shape (N x output_dims), depending on the input.

class matplotlib.scale.InvertedSymmetricalLogTransform(base, linthresh, linscale)[source]

Bases: matplotlib.transforms.Transform

Parameters
shorthand_namestr

A string representing the "name" of the transform. The name carries no significance other than to improve the readability of str(transform) when DEBUG=True.

has_inverse = True

True if this transform has a corresponding inverse transform.

input_dims = 1

The number of input dimensions of this transform. Must be overridden (with integers) in the subclass.

inverted()[source]

Return the corresponding inverse transformation.

It holds x == self.inverted().transform(self.transform(x)).

The return value of this method should be treated as temporary. An update to self does not cause a corresponding update to its inverted copy.

is_separable = True

True if this transform is separable in the x- and y- dimensions.

output_dims = 1

The number of output dimensions of this transform. Must be overridden (with integers) in the subclass.

transform_non_affine(a)[source]

Apply only the non-affine part of this transformation.

transform(values) is always equivalent to transform_affine(transform_non_affine(values)).

In non-affine transformations, this is generally equivalent to transform(values). In affine transformations, this is always a no-op.

Parameters
valuesarray

The input values as NumPy array of length input_dims or shape (N x input_dims).

Returns
array

The output values as NumPy array of length input_dims or shape (N x output_dims), depending on the input.

class matplotlib.scale.LinearScale(axis)[source]

Bases: matplotlib.scale.ScaleBase

The default linear scale.

get_transform()[source]

Return the transform for linear scaling, which is just the IdentityTransform.

name = 'linear'
set_default_locators_and_formatters(axis)[source]

Set the locators and formatters of axis to instances suitable for this scale.

class matplotlib.scale.LogScale(axis, *, base=10, subs=None, nonpositive='clip')[source]

Bases: matplotlib.scale.ScaleBase

A standard logarithmic scale. Care is taken to only plot positive values.

Parameters
axisAxis

The axis for the scale.

basefloat, default: 10

The base of the logarithm.

nonpositive{'clip', 'mask'}, default: 'clip'

Determines the behavior for non-positive values. They can either be masked as invalid, or clipped to a very small positive number.

subssequence of int, default: None

Where to place the subticks between each major tick. For example, in a log10 scale, [2, 3, 4, 5, 6, 7, 8, 9] will place 8 logarithmically spaced minor ticks between each major tick.

property base
get_transform()[source]

Return the LogTransform associated with this scale.

limit_range_for_scale(vmin, vmax, minpos)[source]

Limit the domain to positive values.

name = 'log'
set_default_locators_and_formatters(axis)[source]

Set the locators and formatters of axis to instances suitable for this scale.

class matplotlib.scale.LogTransform(base, nonpositive='clip')[source]

Bases: matplotlib.transforms.Transform

Parameters
shorthand_namestr

A string representing the "name" of the transform. The name carries no significance other than to improve the readability of str(transform) when DEBUG=True.

has_inverse = True

True if this transform has a corresponding inverse transform.

input_dims = 1

The number of input dimensions of this transform. Must be overridden (with integers) in the subclass.

inverted()[source]

Return the corresponding inverse transformation.

It holds x == self.inverted().transform(self.transform(x)).

The return value of this method should be treated as temporary. An update to self does not cause a corresponding update to its inverted copy.

is_separable = True

True if this transform is separable in the x- and y- dimensions.

output_dims = 1

The number of output dimensions of this transform. Must be overridden (with integers) in the subclass.

transform_non_affine(a)[source]

Apply only the non-affine part of this transformation.

transform(values) is always equivalent to transform_affine(transform_non_affine(values)).

In non-affine transformations, this is generally equivalent to transform(values). In affine transformations, this is always a no-op.

Parameters
valuesarray

The input values as NumPy array of length input_dims or shape (N x input_dims).

Returns
array

The output values as NumPy array of length input_dims or shape (N x output_dims), depending on the input.

class matplotlib.scale.LogisticTransform(nonpositive='mask')[source]

Bases: matplotlib.transforms.Transform

Parameters
shorthand_namestr

A string representing the "name" of the transform. The name carries no significance other than to improve the readability of str(transform) when DEBUG=True.

has_inverse = True

True if this transform has a corresponding inverse transform.

input_dims = 1

The number of input dimensions of this transform. Must be overridden (with integers) in the subclass.

inverted()[source]

Return the corresponding inverse transformation.

It holds x == self.inverted().transform(self.transform(x)).

The return value of this method should be treated as temporary. An update to self does not cause a corresponding update to its inverted copy.

is_separable = True

True if this transform is separable in the x- and y- dimensions.

output_dims = 1

The number of output dimensions of this transform. Must be overridden (with integers) in the subclass.

transform_non_affine(a)[source]

logistic transform (base 10)

class matplotlib.scale.LogitScale(axis, nonpositive='mask', *, one_half='\x0crac{1}{2}', use_overline=False)[source]

Bases: matplotlib.scale.ScaleBase

Logit scale for data between zero and one, both excluded.

This scale is similar to a log scale close to zero and to one, and almost linear around 0.5. It maps the interval ]0, 1[ onto ]-infty, +infty[.

Parameters
axismatplotlib.axis.Axis

Currently unused.

nonpositive{'mask', 'clip'}

Determines the behavior for values beyond the open interval ]0, 1[. They can either be masked as invalid, or clipped to a number very close to 0 or 1.

use_overlinebool, default: False

Indicate the usage of survival notation (overline{x}) in place of standard notation (1-x) for probability close to one.

one_halfstr, default: r"frac{1}{2}"

The string used for ticks formatter to represent 1/2.

get_transform()[source]

Return the LogitTransform associated with this scale.

limit_range_for_scale(vmin, vmax, minpos)[source]

Limit the domain to values between 0 and 1 (excluded).

name = 'logit'
set_default_locators_and_formatters(axis)[source]

Set the locators and formatters of axis to instances suitable for this scale.

class matplotlib.scale.LogitTransform(nonpositive='mask')[source]

Bases: matplotlib.transforms.Transform

Parameters
shorthand_namestr

A string representing the "name" of the transform. The name carries no significance other than to improve the readability of str(transform) when DEBUG=True.

has_inverse = True

True if this transform has a corresponding inverse transform.

input_dims = 1

The number of input dimensions of this transform. Must be overridden (with integers) in the subclass.

inverted()[source]

Return the corresponding inverse transformation.

It holds x == self.inverted().transform(self.transform(x)).

The return value of this method should be treated as temporary. An update to self does not cause a corresponding update to its inverted copy.

is_separable = True

True if this transform is separable in the x- and y- dimensions.

output_dims = 1

The number of output dimensions of this transform. Must be overridden (with integers) in the subclass.

transform_non_affine(a)[source]

logit transform (base 10), masked or clipped

class matplotlib.scale.ScaleBase(axis)[source]

Bases: object

The base class for all scales.

Scales are separable transformations, working on a single dimension.

Subclasses should override

name

The scale's name.

get_transform()

A method returning a Transform, which converts data coordinates to scaled coordinates. This transform should be invertible, so that e.g. mouse positions can be converted back to data coordinates.

set_default_locators_and_formatters()

A method that sets default locators and formatters for an Axis that uses this scale.

limit_range_for_scale()

An optional method that "fixes" the axis range to acceptable values, e.g. restricting log-scaled axes to positive values.

Construct a new scale.

Notes

The following note is for scale implementors.

For back-compatibility reasons, scales take an Axis object as first argument. However, this argument should not be used: a single scale object should be usable by multiple Axises at the same time.

get_transform()[source]

Return the Transform object associated with this scale.

limit_range_for_scale(vmin, vmax, minpos)[source]

Return the range vmin, vmax, restricted to the domain supported by this scale (if any).

minpos should be the minimum positive value in the data. This is used by log scales to determine a minimum value.

set_default_locators_and_formatters(axis)[source]

Set the locators and formatters of axis to instances suitable for this scale.

class matplotlib.scale.SymmetricalLogScale(axis, *, base=10, linthresh=2, subs=None, linscale=1)[source]

Bases: matplotlib.scale.ScaleBase

The symmetrical logarithmic scale is logarithmic in both the positive and negative directions from the origin.

Since the values close to zero tend toward infinity, there is a need to have a range around zero that is linear. The parameter linthresh allows the user to specify the size of this range (-linthresh, linthresh).

Parameters
basefloat, default: 10

The base of the logarithm.

linthreshfloat, default: 2

Defines the range (-x, x), within which the plot is linear. This avoids having the plot go to infinity around zero.

subssequence of int

Where to place the subticks between each major tick. For example, in a log10 scale: [2, 3, 4, 5, 6, 7, 8, 9] will place 8 logarithmically spaced minor ticks between each major tick.

linscalefloat, optional

This allows the linear range (-linthresh, linthresh) to be stretched relative to the logarithmic range. Its value is the number of decades to use for each half of the linear range. For example, when linscale == 1.0 (the default), the space used for the positive and negative halves of the linear range will be equal to one decade in the logarithmic range.

Construct a new scale.

Notes

The following note is for scale implementors.

For back-compatibility reasons, scales take an Axis object as first argument. However, this argument should not be used: a single scale object should be usable by multiple Axises at the same time.

property base
get_transform()[source]

Return the SymmetricalLogTransform associated with this scale.

property linscale
property linthresh
name = 'symlog'
set_default_locators_and_formatters(axis)[source]

Set the locators and formatters of axis to instances suitable for this scale.

class matplotlib.scale.SymmetricalLogTransform(base, linthresh, linscale)[source]

Bases: matplotlib.transforms.Transform

Parameters
shorthand_namestr

A string representing the "name" of the transform. The name carries no significance other than to improve the readability of str(transform) when DEBUG=True.

has_inverse = True

True if this transform has a corresponding inverse transform.

input_dims = 1

The number of input dimensions of this transform. Must be overridden (with integers) in the subclass.

inverted()[source]

Return the corresponding inverse transformation.

It holds x == self.inverted().transform(self.transform(x)).

The return value of this method should be treated as temporary. An update to self does not cause a corresponding update to its inverted copy.

is_separable = True

True if this transform is separable in the x- and y- dimensions.

output_dims = 1

The number of output dimensions of this transform. Must be overridden (with integers) in the subclass.

transform_non_affine(a)[source]

Apply only the non-affine part of this transformation.

transform(values) is always equivalent to transform_affine(transform_non_affine(values)).

In non-affine transformations, this is generally equivalent to transform(values). In affine transformations, this is always a no-op.

Parameters
valuesarray

The input values as NumPy array of length input_dims or shape (N x input_dims).

Returns
array

The output values as NumPy array of length input_dims or shape (N x output_dims), depending on the input.

matplotlib.scale.get_scale_names()[source]

Return the names of the available scales.

matplotlib.scale.register_scale(scale_class)[source]

Register a new kind of scale.

Parameters
scale_classsubclass of ScaleBase

The scale to register.

matplotlib.scale.scale_factory(scale, axis, **kwargs)[source]

Return a scale class by name.

Parameters
scale{'function', 'functionlog', 'linear', 'log', 'logit', 'symlog'}
axismatplotlib.axis.Axis