""" Tests specific to the lines module. """ import itertools import platform import timeit from types import SimpleNamespace from cycler import cycler import numpy as np from numpy.testing import assert_array_equal import pytest import matplotlib import matplotlib as mpl from matplotlib import _path import matplotlib.lines as mlines from matplotlib.markers import MarkerStyle from matplotlib.path import Path import matplotlib.pyplot as plt import matplotlib.transforms as mtransforms from matplotlib.testing.decorators import image_comparison, check_figures_equal def test_segment_hits(): """Test a problematic case.""" cx, cy = 553, 902 x, y = np.array([553., 553.]), np.array([95., 947.]) radius = 6.94 assert_array_equal(mlines.segment_hits(cx, cy, x, y, radius), [0]) # Runtimes on a loaded system are inherently flaky. Not so much that a rerun # won't help, hopefully. @pytest.mark.flaky(reruns=3) def test_invisible_Line_rendering(): """ GitHub issue #1256 identified a bug in Line.draw method Despite visibility attribute set to False, the draw method was not returning early enough and some pre-rendering code was executed though not necessary. Consequence was an excessive draw time for invisible Line instances holding a large number of points (Npts> 10**6) """ # Creates big x and y data: N = 10**7 x = np.linspace(0, 1, N) y = np.random.normal(size=N) # Create a plot figure: fig = plt.figure() ax = plt.subplot() # Create a "big" Line instance: l = mlines.Line2D(x, y) l.set_visible(False) # but don't add it to the Axis instance `ax` # [here Interactive panning and zooming is pretty responsive] # Time the canvas drawing: t_no_line = min(timeit.repeat(fig.canvas.draw, number=1, repeat=3)) # (gives about 25 ms) # Add the big invisible Line: ax.add_line(l) # [Now interactive panning and zooming is very slow] # Time the canvas drawing: t_invisible_line = min(timeit.repeat(fig.canvas.draw, number=1, repeat=3)) # gives about 290 ms for N = 10**7 pts slowdown_factor = t_invisible_line / t_no_line slowdown_threshold = 2 # trying to avoid false positive failures assert slowdown_factor < slowdown_threshold def test_set_line_coll_dash(): fig, ax = plt.subplots() np.random.seed(0) # Testing setting linestyles for line collections. # This should not produce an error. ax.contour(np.random.randn(20, 30), linestyles=[(0, (3, 3))]) def test_invalid_line_data(): with pytest.raises(RuntimeError, match='xdata must be'): mlines.Line2D(0, []) with pytest.raises(RuntimeError, match='ydata must be'): mlines.Line2D([], 1) line = mlines.Line2D([], []) # when deprecation cycle is completed # with pytest.raises(RuntimeError, match='x must be'): with pytest.warns(mpl.MatplotlibDeprecationWarning): line.set_xdata(0) # with pytest.raises(RuntimeError, match='y must be'): with pytest.warns(mpl.MatplotlibDeprecationWarning): line.set_ydata(0) @image_comparison(['line_dashes'], remove_text=True, tol=0.002) def test_line_dashes(): # Tolerance introduced after reordering of floating-point operations # Remove when regenerating the images fig, ax = plt.subplots() ax.plot(range(10), linestyle=(0, (3, 3)), lw=5) def test_line_colors(): fig, ax = plt.subplots() ax.plot(range(10), color='none') ax.plot(range(10), color='r') ax.plot(range(10), color='.3') ax.plot(range(10), color=(1, 0, 0, 1)) ax.plot(range(10), color=(1, 0, 0)) fig.canvas.draw() def test_valid_colors(): line = mlines.Line2D([], []) with pytest.raises(ValueError): line.set_color("foobar") def test_linestyle_variants(): fig, ax = plt.subplots() for ls in ["-", "solid", "--", "dashed", "-.", "dashdot", ":", "dotted", (0, None), (0, ()), (0, []), # gh-22930 ]: ax.plot(range(10), linestyle=ls) fig.canvas.draw() def test_valid_linestyles(): line = mlines.Line2D([], []) with pytest.raises(ValueError): line.set_linestyle('aardvark') @image_comparison(['drawstyle_variants.png'], remove_text=True) def test_drawstyle_variants(): fig, axs = plt.subplots(6) dss = ["default", "steps-mid", "steps-pre", "steps-post", "steps", None] # We want to check that drawstyles are properly handled even for very long # lines (for which the subslice optimization is on); however, we need # to zoom in so that the difference between the drawstyles is actually # visible. for ax, ds in zip(axs.flat, dss): ax.plot(range(2000), drawstyle=ds) ax.set(xlim=(0, 2), ylim=(0, 2)) @check_figures_equal(extensions=('png',)) def test_no_subslice_with_transform(fig_ref, fig_test): ax = fig_ref.add_subplot() x = np.arange(2000) ax.plot(x + 2000, x) ax = fig_test.add_subplot() t = mtransforms.Affine2D().translate(2000.0, 0.0) ax.plot(x, x, transform=t+ax.transData) def test_valid_drawstyles(): line = mlines.Line2D([], []) with pytest.raises(ValueError): line.set_drawstyle('foobar') def test_set_drawstyle(): x = np.linspace(0, 2*np.pi, 10) y = np.sin(x) fig, ax = plt.subplots() line, = ax.plot(x, y) line.set_drawstyle("steps-pre") assert len(line.get_path().vertices) == 2*len(x)-1 line.set_drawstyle("default") assert len(line.get_path().vertices) == len(x) @image_comparison( ['line_collection_dashes'], remove_text=True, style='mpl20', tol=0.65 if platform.machine() in ('aarch64', 'ppc64le', 's390x') else 0) def test_set_line_coll_dash_image(): fig, ax = plt.subplots() np.random.seed(0) ax.contour(np.random.randn(20, 30), linestyles=[(0, (3, 3))]) @image_comparison(['marker_fill_styles.png'], remove_text=True) def test_marker_fill_styles(): colors = itertools.cycle([[0, 0, 1], 'g', '#ff0000', 'c', 'm', 'y', np.array([0, 0, 0])]) altcolor = 'lightgreen' y = np.array([1, 1]) x = np.array([0, 9]) fig, ax = plt.subplots() # This hard-coded list of markers correspond to an earlier iteration of # MarkerStyle.filled_markers; the value of that attribute has changed but # we kept the old value here to not regenerate the baseline image. # Replace with mlines.Line2D.filled_markers when the image is regenerated. for j, marker in enumerate("ov^<>8sp*hHDdPX"): for i, fs in enumerate(mlines.Line2D.fillStyles): color = next(colors) ax.plot(j * 10 + x, y + i + .5 * (j % 2), marker=marker, markersize=20, markerfacecoloralt=altcolor, fillstyle=fs, label=fs, linewidth=5, color=color, markeredgecolor=color, markeredgewidth=2) ax.set_ylim([0, 7.5]) ax.set_xlim([-5, 155]) def test_markerfacecolor_fillstyle(): """Test that markerfacecolor does not override fillstyle='none'.""" l, = plt.plot([1, 3, 2], marker=MarkerStyle('o', fillstyle='none'), markerfacecolor='red') assert l.get_fillstyle() == 'none' assert l.get_markerfacecolor() == 'none' @image_comparison(['scaled_lines'], style='default') def test_lw_scaling(): th = np.linspace(0, 32) fig, ax = plt.subplots() lins_styles = ['dashed', 'dotted', 'dashdot'] cy = cycler(matplotlib.rcParams['axes.prop_cycle']) for j, (ls, sty) in enumerate(zip(lins_styles, cy)): for lw in np.linspace(.5, 10, 10): ax.plot(th, j*np.ones(50) + .1 * lw, linestyle=ls, lw=lw, **sty) def test_is_sorted_and_has_non_nan(): assert _path.is_sorted_and_has_non_nan(np.array([1, 2, 3])) assert _path.is_sorted_and_has_non_nan(np.array([1, np.nan, 3])) assert not _path.is_sorted_and_has_non_nan([3, 5] + [np.nan] * 100 + [0, 2]) # [2, 256] byteswapped: assert not _path.is_sorted_and_has_non_nan(np.array([33554432, 65536], ">i4")) n = 2 * mlines.Line2D._subslice_optim_min_size plt.plot([np.nan] * n, range(n)) @check_figures_equal() def test_step_markers(fig_test, fig_ref): fig_test.subplots().step([0, 1], "-o") fig_ref.subplots().plot([0, 0, 1], [0, 1, 1], "-o", markevery=[0, 2]) @pytest.mark.parametrize("parent", ["figure", "axes"]) @check_figures_equal(extensions=('png',)) def test_markevery(fig_test, fig_ref, parent): np.random.seed(42) x = np.linspace(0, 1, 14) y = np.random.rand(len(x)) cases_test = [None, 4, (2, 5), [1, 5, 11], [0, -1], slice(5, 10, 2), np.arange(len(x))[y > 0.5], 0.3, (0.3, 0.4)] cases_ref = ["11111111111111", "10001000100010", "00100001000010", "01000100000100", "10000000000001", "00000101010000", "01110001110110", "11011011011110", "01010011011101"] if parent == "figure": # float markevery ("relative to axes size") is not supported. cases_test = cases_test[:-2] cases_ref = cases_ref[:-2] def add_test(x, y, *, markevery): fig_test.add_artist( mlines.Line2D(x, y, marker="o", markevery=markevery)) def add_ref(x, y, *, markevery): fig_ref.add_artist( mlines.Line2D(x, y, marker="o", markevery=markevery)) elif parent == "axes": axs_test = iter(fig_test.subplots(3, 3).flat) axs_ref = iter(fig_ref.subplots(3, 3).flat) def add_test(x, y, *, markevery): next(axs_test).plot(x, y, "-gD", markevery=markevery) def add_ref(x, y, *, markevery): next(axs_ref).plot(x, y, "-gD", markevery=markevery) for case in cases_test: add_test(x, y, markevery=case) for case in cases_ref: me = np.array(list(case)).astype(int).astype(bool) add_ref(x, y, markevery=me) def test_markevery_figure_line_unsupported_relsize(): fig = plt.figure() fig.add_artist(mlines.Line2D([0, 1], [0, 1], marker="o", markevery=.5)) with pytest.raises(ValueError): fig.canvas.draw() def test_marker_as_markerstyle(): fig, ax = plt.subplots() line, = ax.plot([2, 4, 3], marker=MarkerStyle("D")) fig.canvas.draw() assert line.get_marker() == "D" # continue with smoke tests: line.set_marker("s") fig.canvas.draw() line.set_marker(MarkerStyle("o")) fig.canvas.draw() # test Path roundtrip triangle1 = Path._create_closed([[-1, -1], [1, -1], [0, 2]]) line2, = ax.plot([1, 3, 2], marker=MarkerStyle(triangle1), ms=22) line3, = ax.plot([0, 2, 1], marker=triangle1, ms=22) assert_array_equal(line2.get_marker().vertices, triangle1.vertices) assert_array_equal(line3.get_marker().vertices, triangle1.vertices) @image_comparison(['striped_line.png'], remove_text=True, style='mpl20') def test_striped_lines(): rng = np.random.default_rng(19680801) _, ax = plt.subplots() ax.plot(rng.uniform(size=12), color='orange', gapcolor='blue', linestyle='--', lw=5, label=' ') ax.plot(rng.uniform(size=12), color='red', gapcolor='black', linestyle=(0, (2, 5, 4, 2)), lw=5, label=' ', alpha=0.5) ax.legend(handlelength=5) @check_figures_equal() def test_odd_dashes(fig_test, fig_ref): fig_test.add_subplot().plot([1, 2], dashes=[1, 2, 3]) fig_ref.add_subplot().plot([1, 2], dashes=[1, 2, 3, 1, 2, 3]) def test_picking(): fig, ax = plt.subplots() mouse_event = SimpleNamespace(x=fig.bbox.width // 2, y=fig.bbox.height // 2 + 15) # Default pickradius is 5, so event should not pick this line. l0, = ax.plot([0, 1], [0, 1], picker=True) found, indices = l0.contains(mouse_event) assert not found # But with a larger pickradius, this should be picked. l1, = ax.plot([0, 1], [0, 1], picker=True, pickradius=20) found, indices = l1.contains(mouse_event) assert found assert_array_equal(indices['ind'], [0]) # And if we modify the pickradius after creation, it should work as well. l2, = ax.plot([0, 1], [0, 1], picker=True) found, indices = l2.contains(mouse_event) assert not found l2.set_pickradius(20) found, indices = l2.contains(mouse_event) assert found assert_array_equal(indices['ind'], [0]) @check_figures_equal() def test_input_copy(fig_test, fig_ref): t = np.arange(0, 6, 2) l, = fig_test.add_subplot().plot(t, t, ".-") t[:] = range(3) # Trigger cache invalidation l.set_drawstyle("steps") fig_ref.add_subplot().plot([0, 2, 4], [0, 2, 4], ".-", drawstyle="steps") @check_figures_equal(extensions=["png"]) def test_markevery_prop_cycle(fig_test, fig_ref): """Test that we can set markevery prop_cycle.""" cases = [None, 8, (30, 8), [16, 24, 30], [0, -1], slice(100, 200, 3), 0.1, 0.3, 1.5, (0.0, 0.1), (0.45, 0.1)] cmap = mpl.colormaps['jet'] colors = cmap(np.linspace(0.2, 0.8, len(cases))) x = np.linspace(-1, 1) y = 5 * x**2 axs = fig_ref.add_subplot() for i, markevery in enumerate(cases): axs.plot(y - i, 'o-', markevery=markevery, color=colors[i]) matplotlib.rcParams['axes.prop_cycle'] = cycler(markevery=cases, color=colors) ax = fig_test.add_subplot() for i, _ in enumerate(cases): ax.plot(y - i, 'o-') def test_axline_setters(): fig, ax = plt.subplots() line1 = ax.axline((.1, .1), slope=0.6) line2 = ax.axline((.1, .1), (.8, .4)) # Testing xy1, xy2 and slope setters. # This should not produce an error. line1.set_xy1(.2, .3) line1.set_slope(2.4) line2.set_xy1(.3, .2) line2.set_xy2(.6, .8) # Testing xy1, xy2 and slope getters. # Should return the modified values. assert line1.get_xy1() == (.2, .3) assert line1.get_slope() == 2.4 assert line2.get_xy1() == (.3, .2) assert line2.get_xy2() == (.6, .8) # Testing setting xy2 and slope together. # These test should raise a ValueError with pytest.raises(ValueError, match="Cannot set an 'xy2' value while 'slope' is set"): line1.set_xy2(.2, .3) with pytest.raises(ValueError, match="Cannot set a 'slope' value while 'xy2' is set"): line2.set_slope(3)