| .. redirect-from:: /users/explain/performance |
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| .. _performance: |
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|
| Performance |
| =========== |
|
|
| Whether exploring data in interactive mode or programmatically |
| saving lots of plots, rendering performance can be a challenging |
| bottleneck in your pipeline. Matplotlib provides multiple |
| ways to greatly reduce rendering time at the cost of a slight |
| change (to a settable tolerance) in your plot's appearance. |
| The methods available to reduce rendering time depend on the |
| type of plot that is being created. |
|
|
| Line segment simplification |
| |
|
|
| For plots that have line segments (e.g. typical line plots, outlines |
| of polygons, etc.), rendering performance can be controlled by |
| :rc:`path.simplify` and :rc:`path.simplify_threshold`, which |
| can be defined e.g. in the :file:`matplotlibrc` file (see |
| :ref:`customizing` for more information about |
| the :file:`matplotlibrc` file). :rc:`path.simplify` is a Boolean |
| indicating whether or not line segments are simplified at all. |
| :rc:`path.simplify_threshold` controls how much line segments are simplified; |
| higher thresholds result in quicker rendering. |
|
|
| The following script will first display the data without any |
| simplification, and then display the same data with simplification. |
| Try interacting with both of them:: |
|
|
| import numpy as np |
| import matplotlib.pyplot as plt |
| import matplotlib as mpl |
|
|
| # Setup, and create the data to plot |
| y = np.random.rand(100000) |
| y[50000:] *= 2 |
| y[np.geomspace(10, 50000, 400).astype(int)] = -1 |
| mpl.rcParams['path.simplify'] = True |
|
|
| mpl.rcParams['path.simplify_threshold'] = 0.0 |
| plt.plot(y) |
| plt.show() |
|
|
| mpl.rcParams['path.simplify_threshold'] = 1.0 |
| plt.plot(y) |
| plt.show() |
|
|
| Matplotlib currently defaults to a conservative simplification |
| threshold of ``1/9``. To change default settings to use a different |
| value, change the :file:`matplotlibrc` file. Alternatively, users |
| can create a new style for interactive plotting (with maximal |
| simplification) and another style for publication quality plotting |
| (with minimal simplification) and activate them as necessary. See |
| :ref:`customizing` for instructions on |
| how to perform these actions. |
|
|
| The simplification works by iteratively merging line segments |
| into a single vector until the next line segment's perpendicular |
| distance to the vector (measured in display-coordinate space) |
| is greater than the ``path.simplify_threshold`` parameter. |
|
|
| .. note:: |
| Changes related to how line segments are simplified were made |
| in version 2.1. Rendering time will still be improved by these |
| parameters prior to 2.1, but rendering time for some kinds of |
| data will be vastly improved in versions 2.1 and greater. |
|
|
| Marker subsampling |
| |
|
|
| Markers can also be simplified, albeit less robustly than line |
| segments. Marker subsampling is only available to `.Line2D` objects |
| (through the ``markevery`` property). Wherever `.Line2D` construction |
| parameters are passed through, such as `.pyplot.plot` and `.Axes.plot`, |
| the ``markevery`` parameter can be used:: |
|
|
| plt.plot(x, y, markevery=10) |
|
|
| The ``markevery`` argument allows for naive subsampling, or an |
| attempt at evenly spaced (along the *x* axis) sampling. See the |
| :doc:`/gallery/lines_bars_and_markers/markevery_demo` |
| for more information. |
|
|
| Splitting lines into smaller chunks |
| |
|
|
| If you are using the Agg backend (see :ref:`what-is-a-backend`), |
| then you can make use of :rc:`agg.path.chunksize` |
| This allows users to specify a chunk size, and any lines with |
| greater than that many vertices will be split into multiple |
| lines, each of which has no more than ``agg.path.chunksize`` |
| many vertices. (Unless ``agg.path.chunksize`` is zero, in |
| which case there is no chunking.) For some kind of data, |
| chunking the line up into reasonable sizes can greatly |
| decrease rendering time. |
|
|
| The following script will first display the data without any |
| chunk size restriction, and then display the same data with |
| a chunk size of 10,000. The difference can best be seen when |
| the figures are large, try maximizing the GUI and then |
| interacting with them:: |
|
|
| import numpy as np |
| import matplotlib.pyplot as plt |
| import matplotlib as mpl |
| mpl.rcParams['path.simplify_threshold'] = 1.0 |
|
|
| # Setup, and create the data to plot |
| y = np.random.rand(100000) |
| y[50000:] *= 2 |
| y[np.geomspace(10, 50000, 400).astype(int)] = -1 |
| mpl.rcParams['path.simplify'] = True |
|
|
| mpl.rcParams['agg.path.chunksize'] = 0 |
| plt.plot(y) |
| plt.show() |
|
|
| mpl.rcParams['agg.path.chunksize'] = 10000 |
| plt.plot(y) |
| plt.show() |
|
|
| Legends |
| |
|
|
| The default legend behavior for axes attempts to find the location |
| that covers the fewest data points (``loc='best'``). This can be a |
| very expensive computation if there are lots of data points. In |
| this case, you may want to provide a specific location. |
|
|
| Using the *fast* style |
| |
|
|
| The *fast* style can be used to automatically set |
| simplification and chunking parameters to reasonable |
| settings to speed up plotting large amounts of data. |
| The following code runs it:: |
|
|
| import matplotlib.style as mplstyle |
| mplstyle.use('fast') |
|
|
| It is very lightweight, so it works well with other |
| styles. Be sure the fast style is applied last |
| so that other styles do not overwrite the settings:: |
|
|
| mplstyle.use(['dark_background', 'ggplot', 'fast']) |
|
|