cbook
matplotlib.cbook
A collection of utility functions and classes. Originally, many (but not all) were from the Python Cookbook -- hence the name cbook.
This module is safe to import from anywhere within matplotlib; it imports matplotlib only at runtime.
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class matplotlib.cbook.Bunch(**kwargs)
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Bases:
types.SimpleNamespace
Deprecated since version 3.0: The Bunch class was deprecated in Matplotlib 3.0 and will be removed in 3.2. Use types.SimpleNamespace instead.
Often we want to just collect a bunch of stuff together, naming each item of the bunch; a dictionary's OK for that, but a small do- nothing class is even handier, and prettier to use. Whenever you want to group a few variables:
>>> point = Bunch(datum=2, squared=4, coord=12) >>> point.datum
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class matplotlib.cbook.CallbackRegistry(exception_handler=<function _exception_printer>)
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Bases:
object
Handle registering and disconnecting for a set of signals and callbacks:
>>> def oneat(x): ... print('eat', x) >>> def ondrink(x): ... print('drink', x)
>>> from matplotlib.cbook import CallbackRegistry >>> callbacks = CallbackRegistry()
>>> id_eat = callbacks.connect('eat', oneat) >>> id_drink = callbacks.connect('drink', ondrink)
>>> callbacks.process('drink', 123) drink 123 >>> callbacks.process('eat', 456) eat 456 >>> callbacks.process('be merry', 456) # nothing will be called >>> callbacks.disconnect(id_eat) >>> callbacks.process('eat', 456) # nothing will be called
In practice, one should always disconnect all callbacks when they are no longer needed to avoid dangling references (and thus memory leaks). However, real code in Matplotlib rarely does so, and due to its design, it is rather difficult to place this kind of code. To get around this, and prevent this class of memory leaks, we instead store weak references to bound methods only, so when the destination object needs to die, the CallbackRegistry won't keep it alive.
Parameters: -
exception_handler : callable, optional
-
If provided must have signature
def handler(exc: Exception) -> None:
If not None this function will be called with any
Exception
subclass raised by the callbacks inCallbackRegistry.process
. The handler may either consume the exception or re-raise.The callable must be pickle-able.
The default handler is
def h(exc): traceback.print_exc()
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connect(s, func)
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Register func to be called when signal s is generated.
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disconnect(cid)
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Disconnect the callback registered with callback id cid.
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process(s, *args, **kwargs)
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Process signal s.
All of the functions registered to receive callbacks on s will be called with
*args
and**kwargs
.
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class matplotlib.cbook.GetRealpathAndStat(**kwargs)
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Bases:
object
Deprecated since version 3.0: The GetRealpathAndStat class was deprecated in Matplotlib 3.0 and will be removed in 3.2.
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class matplotlib.cbook.Grouper(init=())
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Bases:
object
This class provides a lightweight way to group arbitrary objects together into disjoint sets when a full-blown graph data structure would be overkill.
Objects can be joined using
join()
, tested for connectedness usingjoined()
, and all disjoint sets can be retrieved by using the object as an iterator.The objects being joined must be hashable and weak-referenceable.
For example:
>>> from matplotlib.cbook import Grouper >>> class Foo(object): ... def __init__(self, s): ... self.s = s ... def __repr__(self): ... return self.s ... >>> a, b, c, d, e, f = [Foo(x) for x in 'abcdef'] >>> grp = Grouper() >>> grp.join(a, b) >>> grp.join(b, c) >>> grp.join(d, e) >>> sorted(map(tuple, grp)) [(a, b, c), (d, e)] >>> grp.joined(a, b) True >>> grp.joined(a, c) True >>> grp.joined(a, d) False
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clean()
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Clean dead weak references from the dictionary.
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get_siblings(a)
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Returns all of the items joined with a, including itself.
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join(a, *args)
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Join given arguments into the same set. Accepts one or more arguments.
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joined(a, b)
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Returns True if a and b are members of the same set.
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remove(a)
[source]
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exception matplotlib.cbook.IgnoredKeywordWarning
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Bases:
UserWarning
A class for issuing warnings about keyword arguments that will be ignored by matplotlib
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class matplotlib.cbook.Locked(**kwargs)
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Bases:
object
Deprecated since version 3.0: The Locked class was deprecated in Matplotlib 3.0 and will be removed in 3.2.
Context manager to handle locks.
Based on code from conda.
(c) 2012-2013 Continuum Analytics, Inc. / https://www.continuum.io/ All Rights Reserved
conda is distributed under the terms of the BSD 3-clause license. Consult LICENSE_CONDA or https://opensource.org/licenses/BSD-3-Clause.
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LOCKFN = '.matplotlib_lock'
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exception TimeoutError
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Bases:
RuntimeError
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class matplotlib.cbook.Stack(default=None)
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Bases:
object
Stack of elements with a movable cursor.
Mimics home/back/forward in a web browser.
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back()
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Move the position back and return the current element.
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bubble(o)
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Raise o to the top of the stack. o must be present in the stack.
o is returned.
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clear()
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Empty the stack.
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empty()
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Return whether the stack is empty.
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forward()
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Move the position forward and return the current element.
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home()
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Push the first element onto the top of the stack.
The first element is returned.
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push(o)
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Push o to the stack at current position. Discard all later elements.
o is returned.
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remove(o)
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Remove o from the stack.
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matplotlib.cbook.align_iterators(func, *iterables)
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Deprecated since version 2.2: The align_iterators function was deprecated in Matplotlib 2.2 and will be removed in 3.1.
This generator takes a bunch of iterables that are ordered by func It sends out ordered tuples:
(func(row), [rows from all iterators matching func(row)])
It is used by
matplotlib.mlab.recs_join()
to join record arrays
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matplotlib.cbook.boxplot_stats(X, whis=1.5, bootstrap=None, labels=None, autorange=False)
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Returns list of dictionaries of statistics used to draw a series of box and whisker plots. The
Returns
section enumerates the required keys of the dictionary. Users can skip this function and pass a user-defined set of dictionaries to the newaxes.bxp
method instead of relying on MPL to do the calculations.Parameters: -
X : array-like
-
Data that will be represented in the boxplots. Should have 2 or fewer dimensions.
-
whis : float, string, or sequence (default = 1.5)
-
As a float, determines the reach of the whiskers to the beyond the first and third quartiles. In other words, where IQR is the interquartile range (
Q3-Q1
), the upper whisker will extend to last datum less thanQ3 + whis*IQR
). Similarly, the lower whisker will extend to the first datum greater thanQ1 - whis*IQR
. Beyond the whiskers, data are considered outliers and are plotted as individual points. This can be set this to an ascending sequence of percentile (e.g., [5, 95]) to set the whiskers at specific percentiles of the data. Finally,whis
can be the string'range'
to force the whiskers to the minimum and maximum of the data. In the edge case that the 25th and 75th percentiles are equivalent,whis
can be automatically set to'range'
via theautorange
option. -
bootstrap : int, optional
-
Number of times the confidence intervals around the median should be bootstrapped (percentile method).
-
labels : array-like, optional
-
Labels for each dataset. Length must be compatible with dimensions of
X
. -
autorange : bool, optional (False)
-
When
True
and the data are distributed such that the 25th and 75th percentiles are equal,whis
is set to'range'
such that the whisker ends are at the minimum and maximum of the data.
Returns: -
bxpstats : list of dict
-
A list of dictionaries containing the results for each column of data. Keys of each dictionary are the following:
Key Value Description label tick label for the boxplot mean arithemetic mean value med 50th percentile q1 first quartile (25th percentile) q3 third quartile (75th percentile) cilo lower notch around the median cihi upper notch around the median whislo end of the lower whisker whishi end of the upper whisker fliers outliers
Notes
Non-bootstrapping approach to confidence interval uses Gaussian- based asymptotic approximation:
General approach from: McGill, R., Tukey, J.W., and Larsen, W.A. (1978) "Variations of Boxplots", The American Statistician, 32:12-16.
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matplotlib.cbook.contiguous_regions(mask)
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Return a list of (ind0, ind1) such that mask[ind0:ind1].all() is True and we cover all such regions
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matplotlib.cbook.dedent(s)
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Remove excess indentation from docstring s.
Discards any leading blank lines, then removes up to n whitespace characters from each line, where n is the number of leading whitespace characters in the first line. It differs from textwrap.dedent in its deletion of leading blank lines and its use of the first non-blank line to determine the indentation.
It is also faster in most cases.
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matplotlib.cbook.delete_masked_points(*args)
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Find all masked and/or non-finite points in a set of arguments, and return the arguments with only the unmasked points remaining.
Arguments can be in any of 5 categories:
- 1-D masked arrays
- 1-D ndarrays
- ndarrays with more than one dimension
- other non-string iterables
- anything else
The first argument must be in one of the first four categories; any argument with a length differing from that of the first argument (and hence anything in category 5) then will be passed through unchanged.
Masks are obtained from all arguments of the correct length in categories 1, 2, and 4; a point is bad if masked in a masked array or if it is a nan or inf. No attempt is made to extract a mask from categories 2, 3, and 4 if
np.isfinite()
does not yield a Boolean array.All input arguments that are not passed unchanged are returned as ndarrays after removing the points or rows corresponding to masks in any of the arguments.
A vastly simpler version of this function was originally written as a helper for Axes.scatter().
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matplotlib.cbook.file_requires_unicode(x)
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Returns
True
if the given writable file-like object requires Unicode to be written to it.
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matplotlib.cbook.flatten(seq, scalarp=<function is_scalar_or_string>)
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Returns a generator of flattened nested containers
For example:
>>> from matplotlib.cbook import flatten >>> l = (('John', ['Hunter']), (1, 23), [[([42, (5, 23)], )]]) >>> print(list(flatten(l))) ['John', 'Hunter', 1, 23, 42, 5, 23]
By: Composite of Holger Krekel and Luther Blissett From: https://code.activestate.com/recipes/121294/ and Recipe 1.12 in cookbook
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matplotlib.cbook.get_label(y, default_name)
[source]
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matplotlib.cbook.get_realpath_and_stat
[source]
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matplotlib.cbook.get_sample_data(fname, asfileobj=True)
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Return a sample data file. fname is a path relative to the
mpl-data/sample_data
directory. If asfileobj isTrue
return a file object, otherwise just a file path.Set the rc parameter examples.directory to the directory where we should look, if sample_data files are stored in a location different than default (which is 'mpl-data/sample_data` at the same level of 'matplotlib` Python module files).
If the filename ends in .gz, the file is implicitly ungzipped.
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matplotlib.cbook.index_of(y)
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A helper function to get the index of an input to plot against if x values are not explicitly given.
Tries to get
y.index
(works if this is a pd.Series), if that fails, return np.arange(y.shape[0]).This will be extended in the future to deal with more types of labeled data.
Parameters: -
y : scalar or array-like
-
The proposed y-value
Returns: -
x, y : ndarray
-
The x and y values to plot.
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matplotlib.cbook.is_hashable(obj)
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Returns true if obj can be hashed
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matplotlib.cbook.is_math_text(s)
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matplotlib.cbook.is_numlike(obj)
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Deprecated since version 3.0: isinstance(..., numbers.Number)
return true if obj looks like a number
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matplotlib.cbook.is_scalar_or_string(val)
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Return whether the given object is a scalar or string like.
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matplotlib.cbook.is_writable_file_like(obj)
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return true if obj looks like a file object with a write method
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matplotlib.cbook.iterable(obj)
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return true if obj is iterable
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matplotlib.cbook.listFiles(root, patterns='*', recurse=1, return_folders=0)
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Deprecated since version 3.0: The listFiles function was deprecated in Matplotlib 3.0 and will be removed in 3.2.
Recursively list files
from Parmar and Martelli in the Python Cookbook
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matplotlib.cbook.local_over_kwdict(local_var, kwargs, *keys)
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Enforces the priority of a local variable over potentially conflicting argument(s) from a kwargs dict. The following possible output values are considered in order of priority:
local_var > kwargs[keys[0]] > ... > kwargs[keys[-1]]The first of these whose value is not None will be returned. If all are None then None will be returned. Each key in keys will be removed from the kwargs dict in place.
Parameters: - local_var: any object
-
The local variable (highest priority)
- kwargs: dict
-
Dictionary of keyword arguments; modified in place
- keys: str(s)
-
Name(s) of keyword arguments to process, in descending order of priority
Returns: - out: any object
-
Either local_var or one of kwargs[key] for key in keys
Raises: - IgnoredKeywordWarning
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For each key in keys that is removed from kwargs but not used as the output value
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class matplotlib.cbook.maxdict(maxsize)
[source] -
Bases:
dict
A dictionary with a maximum size; this doesn't override all the relevant methods to constrain the size, just setitem, so use with caution
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matplotlib.cbook.mkdirs(newdir, mode=511)
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Deprecated since version 3.0: The mkdirs function was deprecated in Matplotlib 3.0 and will be removed in 3.2.
make directory newdir recursively, and set mode. Equivalent to
> mkdir -p NEWDIR > chmod MODE NEWDIR
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matplotlib.cbook.normalize_kwargs(kw, alias_mapping=None, required=(), forbidden=(), allowed=None)
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Helper function to normalize kwarg inputs
The order they are resolved are:
- aliasing
- required
- forbidden
- allowed
This order means that only the canonical names need appear in
allowed
,forbidden
,required
Parameters: - alias_mapping, dict, optional
-
A mapping between a canonical name to a list of aliases, in order of precedence from lowest to highest.
If the canonical value is not in the list it is assumed to have the highest priority.
-
required : iterable, optional
-
A tuple of fields that must be in kwargs.
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forbidden : iterable, optional
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A list of keys which may not be in kwargs
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allowed : tuple, optional
-
A tuple of allowed fields. If this not None, then raise if
kw
contains any keys not in the union ofrequired
andallowed
. To allow only the required fields pass in()
forallowed
Raises: - TypeError
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To match what python raises if invalid args/kwargs are passed to a callable.
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matplotlib.cbook.open_file_cm(path_or_file, mode='r', encoding=None)
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Pass through file objects and context-manage
PathLike
s.
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matplotlib.cbook.print_cycles(objects, outstream=<_io.TextIOWrapper name='<stdout>' mode='w' encoding='UTF-8'>, show_progress=False)
[source] -
- objects
- A list of objects to find cycles in. It is often useful to pass in gc.garbage to find the cycles that are preventing some objects from being garbage collected.
- outstream
- The stream for output.
- show_progress
- If True, print the number of objects reached as they are found.
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matplotlib.cbook.pts_to_midstep(x, *args)
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Convert continuous line to mid-steps.
Given a set of
N
points convert to2N
points which when connected linearly give a step function which changes values at the middle of the intervals.Parameters: -
x : array
-
The x location of the steps. May be empty.
-
y1, ..., yp : array
-
y arrays to be turned into steps; all must be the same length as
x
.
Returns: -
out : array
-
The x and y values converted to steps in the same order as the input; can be unpacked as
x_out, y1_out, ..., yp_out
. If the input is lengthN
, each of these arrays will be length2N
.
Examples
>> x_s, y1_s, y2_s = pts_to_midstep(x, y1, y2)
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matplotlib.cbook.pts_to_poststep(x, *args)
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Convert continuous line to post-steps.
Given a set of
N
points convert to2N + 1
points, which when connected linearly give a step function which changes values at the end of the intervals.Parameters: -
x : array
-
The x location of the steps. May be empty.
-
y1, ..., yp : array
-
y arrays to be turned into steps; all must be the same length as
x
.
Returns: -
out : array
-
The x and y values converted to steps in the same order as the input; can be unpacked as
x_out, y1_out, ..., yp_out
. If the input is lengthN
, each of these arrays will be length2N + 1
. ForN=0
, the length will be 0.
Examples
>> x_s, y1_s, y2_s = pts_to_poststep(x, y1, y2)
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matplotlib.cbook.pts_to_prestep(x, *args)
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Convert continuous line to pre-steps.
Given a set of
N
points, convert to2N - 1
points, which when connected linearly give a step function which changes values at the beginning of the intervals.Parameters: -
x : array
-
The x location of the steps. May be empty.
-
y1, ..., yp : array
-
y arrays to be turned into steps; all must be the same length as
x
.
Returns: -
out : array
-
The x and y values converted to steps in the same order as the input; can be unpacked as
x_out, y1_out, ..., yp_out
. If the input is lengthN
, each of these arrays will be length2N + 1
. ForN=0
, the length will be 0.
Examples
>> x_s, y1_s, y2_s = pts_to_prestep(x, y1, y2)
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matplotlib.cbook.report_memory(i=0)
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return the memory consumed by process
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matplotlib.cbook.safe_first_element(obj)
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matplotlib.cbook.safe_masked_invalid(x, copy=False)
[source]
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matplotlib.cbook.safezip(*args)
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make sure args are equal len before zipping
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matplotlib.cbook.sanitize_sequence(data)
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Converts dictview object to list
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class matplotlib.cbook.silent_list(type, seq=None)
[source] -
Bases:
list
override repr when returning a list of matplotlib artists to prevent long, meaningless output. This is meant to be used for a homogeneous list of a given type
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matplotlib.cbook.simple_linear_interpolation(a, steps)
[source] -
Resample an array with
steps - 1
points between original point pairs.Parameters: -
a : array, shape (n, ...)
-
steps : int
Returns: - array, shape ``((n - 1) * steps + 1, ...)``
- Along each column of *a*, ``(steps - 1)`` points are introduced between
- each original values; the values are linearly interpolated.
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matplotlib.cbook.strip_math(s)
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remove latex formatting from mathtext
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matplotlib.cbook.to_filehandle(fname, flag='rU', return_opened=False, encoding=None)
[source] -
fname can be an
os.PathLike
or a file handle. Support for gzipped files is automatic, if the filename ends in .gz. flag is a read/write flag forfile()
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matplotlib.cbook.unicode_safe(s)
[source] -
Deprecated since version 3.0: The unicode_safe function was deprecated in Matplotlib 3.0 and will be removed in 3.2.
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matplotlib.cbook.violin_stats(X, method, points=100)
[source] -
Returns a list of dictionaries of data which can be used to draw a series of violin plots. See the
Returns
section below to view the required keys of the dictionary. Users can skip this function and pass a user-defined set of dictionaries to theaxes.vplot
method instead of using MPL to do the calculations.Parameters: -
X : array-like
-
Sample data that will be used to produce the gaussian kernel density estimates. Must have 2 or fewer dimensions.
-
method : callable
-
The method used to calculate the kernel density estimate for each column of data. When called via
method(v, coords)
, it should return a vector of the values of the KDE evaluated at the values specified in coords. -
points : scalar, default = 100
-
Defines the number of points to evaluate each of the gaussian kernel density estimates at.
Returns: - A list of dictionaries containing the results for each column of data.
- The dictionaries contain at least the following:
-
- coords: A list of scalars containing the coordinates this particular kernel density estimate was evaluated at.
- vals: A list of scalars containing the values of the kernel density estimate at each of the coordinates given in
coords
. - mean: The mean value for this column of data.
- median: The median value for this column of data.
- min: The minimum value for this column of data.
- max: The maximum value for this column of data.
-
© 2012–2018 Matplotlib Development Team. All rights reserved.
Licensed under the Matplotlib License Agreement.
https://matplotlib.org/3.0.0/api/cbook_api.html