pymor.discretizers.builtin.gui.qt
¶
Visualization of grid data using Qt.
This module provides a few methods and classes for visualizing data associated to grids. We use the Qt widget toolkit for the GUI.
Submodules¶
Package Contents¶
- class pymor.discretizers.builtin.gui.qt.PlotMainWindow(U, vmins, vmaxs, plot, length=1, title=None, save_action=None)[source]¶
Bases:
qtpy.QtWidgets.QWidget
Base class for plot main windows.
Methods
This is directly called from CI.
- pymor.discretizers.builtin.gui.qt.background_visualization_method(method='ipython_if_possible')[source]¶
- pymor.discretizers.builtin.gui.qt.visualize_matplotlib_1d(grid, U, codim=1, title=None, legend=None, separate_plots=False, rescale_axes=False, columns=2, block=False)[source]¶
Visualize scalar data associated to a one-dimensional
Grid
as a plot.The grid’s
ReferenceElement
must be the line. The data can either be attached to the subintervals or vertices of the grid.Parameters
- grid
The underlying
Grid
.- U
VectorArray
of the data to visualize. Iflen(U) > 1
, the data is visualized as a time series of plots. Alternatively, a tuple ofVectorArrays
can be provided, in which case several plots are made into the same axes. The lengths of all arrays have to agree.- codim
The codimension of the entities the data in
U
is attached to (either 0 or 1).- title
Title of the plot.
- legend
Description of the data that is plotted. Most useful if
U
is a tuple in which caselegend
has to be a tuple of strings of the same length.- separate_plots
If
True
, use subplots to visualize multipleVectorArrays
.- rescale_axes
If
True
, rescale axes to data in each frame.- columns
Number of columns the subplots are organized in.
- block
If
True
, block execution until the plot window is closed.
- pymor.discretizers.builtin.gui.qt.visualize_patch(grid, U, bounding_box=([0, 0], [1, 1]), codim=2, title=None, legend=None, separate_colorbars=False, rescale_colorbars=False, backend='gl', block=False, columns=2)[source]¶
Visualize scalar data associated to a two-dimensional
Grid
as a patch plot.The grid’s
ReferenceElement
must be the triangle or square. The data can either be attached to the faces or vertices of the grid.Parameters
- grid
The underlying
Grid
.- U
VectorArray
of the data to visualize. Iflen(U) > 1
, the data is visualized as a time series of plots. Alternatively, a tuple ofVectorArrays
can be provided, in which case a subplot is created for each entry of the tuple. The lengths of all arrays have to agree.- bounding_box
A bounding box in which the grid is contained.
- codim
The codimension of the entities the data in
U
is attached to (either 0 or 2).- title
Title of the plot.
- legend
Description of the data that is plotted. Most useful if
U
is a tuple in which caselegend
has to be a tuple of strings of the same length.- separate_colorbars
If
True
, use separate colorbars for each subplot.- rescale_colorbars
If
True
, rescale colorbars to data in each frame.- backend
Plot backend to use (‘gl’ or ‘matplotlib’).
- block
If
True
, block execution until the plot window is closed.- columns
The number of columns in the visualizer GUI in case multiple plots are displayed at the same time.