| from __future__ import annotations |
|
|
| import io |
| from typing import TYPE_CHECKING, Any |
|
|
| from bokeh.io import export_png, export_svg, show |
| from bokeh.io.export import get_screenshot_as_png |
| from bokeh.layouts import gridplot |
| from bokeh.models.annotations.labels import Label |
| from bokeh.palettes import Category10 |
| from bokeh.plotting import figure |
| import numpy as np |
|
|
| from contourpy.enum_util import as_fill_type, as_line_type |
| from contourpy.util.bokeh_util import filled_to_bokeh, lines_to_bokeh |
| from contourpy.util.renderer import Renderer |
|
|
| if TYPE_CHECKING: |
| from bokeh.models import GridPlot |
| from bokeh.palettes import Palette |
| from numpy.typing import ArrayLike |
| from selenium.webdriver.remote.webdriver import WebDriver |
|
|
| from contourpy import FillType, LineType |
| from contourpy._contourpy import FillReturn, LineReturn |
|
|
|
|
| class BokehRenderer(Renderer): |
| """Utility renderer using Bokeh to render a grid of plots over the same (x, y) range. |
| |
| Args: |
| nrows (int, optional): Number of rows of plots, default ``1``. |
| ncols (int, optional): Number of columns of plots, default ``1``. |
| figsize (tuple(float, float), optional): Figure size in inches (assuming 100 dpi), default |
| ``(9, 9)``. |
| show_frame (bool, optional): Whether to show frame and axes ticks, default ``True``. |
| want_svg (bool, optional): Whether output is required in SVG format or not, default |
| ``False``. |
| |
| Warning: |
| :class:`~.BokehRenderer`, unlike :class:`~.MplRenderer`, needs to be told in advance if |
| output to SVG format will be required later, otherwise it will assume PNG output. |
| """ |
| _figures: list[figure] |
| _layout: GridPlot |
| _palette: Palette |
| _want_svg: bool |
|
|
| def __init__( |
| self, |
| nrows: int = 1, |
| ncols: int = 1, |
| figsize: tuple[float, float] = (9, 9), |
| show_frame: bool = True, |
| want_svg: bool = False, |
| ) -> None: |
| self._want_svg = want_svg |
| self._palette = Category10[10] |
|
|
| total_size = 100*np.asarray(figsize, dtype=int) |
|
|
| nfigures = nrows*ncols |
| self._figures = [] |
| backend = "svg" if self._want_svg else "canvas" |
| for _ in range(nfigures): |
| fig = figure(output_backend=backend) |
| fig.xgrid.visible = False |
| fig.ygrid.visible = False |
| self._figures.append(fig) |
| if not show_frame: |
| fig.outline_line_color = None |
| fig.axis.visible = False |
|
|
| self._layout = gridplot( |
| self._figures, ncols=ncols, toolbar_location=None, |
| width=total_size[0] // ncols, height=total_size[1] // nrows) |
|
|
| def _convert_color(self, color: str) -> str: |
| if isinstance(color, str) and color[0] == "C": |
| index = int(color[1:]) |
| color = self._palette[index] |
| return color |
|
|
| def _get_figure(self, ax: figure | int) -> figure: |
| if isinstance(ax, int): |
| ax = self._figures[ax] |
| return ax |
|
|
| def filled( |
| self, |
| filled: FillReturn, |
| fill_type: FillType | str, |
| ax: figure | int = 0, |
| color: str = "C0", |
| alpha: float = 0.7, |
| ) -> None: |
| """Plot filled contours on a single plot. |
| |
| Args: |
| filled (sequence of arrays): Filled contour data as returned by |
| :meth:`~.ContourGenerator.filled`. |
| fill_type (FillType or str): Type of :meth:`~.ContourGenerator.filled` data as returned |
| by :attr:`~.ContourGenerator.fill_type`, or a string equivalent. |
| ax (int or Bokeh Figure, optional): Which plot to use, default ``0``. |
| color (str, optional): Color to plot with. May be a string color or the letter ``"C"`` |
| followed by an integer in the range ``"C0"`` to ``"C9"`` to use a color from the |
| ``Category10`` palette. Default ``"C0"``. |
| alpha (float, optional): Opacity to plot with, default ``0.7``. |
| """ |
| fill_type = as_fill_type(fill_type) |
| fig = self._get_figure(ax) |
| color = self._convert_color(color) |
| xs, ys = filled_to_bokeh(filled, fill_type) |
| if len(xs) > 0: |
| fig.multi_polygons(xs=[xs], ys=[ys], color=color, fill_alpha=alpha, line_width=0) |
|
|
| def grid( |
| self, |
| x: ArrayLike, |
| y: ArrayLike, |
| ax: figure | int = 0, |
| color: str = "black", |
| alpha: float = 0.1, |
| point_color: str | None = None, |
| quad_as_tri_alpha: float = 0, |
| ) -> None: |
| """Plot quad grid lines on a single plot. |
| |
| Args: |
| x (array-like of shape (ny, nx) or (nx,)): The x-coordinates of the grid points. |
| y (array-like of shape (ny, nx) or (ny,)): The y-coordinates of the grid points. |
| ax (int or Bokeh Figure, optional): Which plot to use, default ``0``. |
| color (str, optional): Color to plot grid lines, default ``"black"``. |
| alpha (float, optional): Opacity to plot lines with, default ``0.1``. |
| point_color (str, optional): Color to plot grid points or ``None`` if grid points |
| should not be plotted, default ``None``. |
| quad_as_tri_alpha (float, optional): Opacity to plot ``quad_as_tri`` grid, default |
| ``0``. |
| |
| Colors may be a string color or the letter ``"C"`` followed by an integer in the range |
| ``"C0"`` to ``"C9"`` to use a color from the ``Category10`` palette. |
| |
| Warning: |
| ``quad_as_tri_alpha > 0`` plots all quads as though they are unmasked. |
| """ |
| fig = self._get_figure(ax) |
| x, y = self._grid_as_2d(x, y) |
| xs = list(x) + list(x.T) |
| ys = list(y) + list(y.T) |
| kwargs = {"line_color": color, "alpha": alpha} |
| fig.multi_line(xs, ys, **kwargs) |
| if quad_as_tri_alpha > 0: |
| |
| xmid = (0.25*(x[:-1, :-1] + x[1:, :-1] + x[:-1, 1:] + x[1:, 1:])).ravel() |
| ymid = (0.25*(y[:-1, :-1] + y[1:, :-1] + y[:-1, 1:] + y[1:, 1:])).ravel() |
| fig.multi_line( |
| list(np.stack((x[:-1, :-1].ravel(), xmid, x[1:, 1:].ravel()), axis=1)), |
| list(np.stack((y[:-1, :-1].ravel(), ymid, y[1:, 1:].ravel()), axis=1)), |
| **kwargs) |
| fig.multi_line( |
| list(np.stack((x[:-1, 1:].ravel(), xmid, x[1:, :-1].ravel()), axis=1)), |
| list(np.stack((y[:-1, 1:].ravel(), ymid, y[1:, :-1].ravel()), axis=1)), |
| **kwargs) |
| if point_color is not None: |
| fig.circle( |
| x=x.ravel(), y=y.ravel(), fill_color=color, line_color=None, alpha=alpha, size=8) |
|
|
| def lines( |
| self, |
| lines: LineReturn, |
| line_type: LineType | str, |
| ax: figure | int = 0, |
| color: str = "C0", |
| alpha: float = 1.0, |
| linewidth: float = 1, |
| ) -> None: |
| """Plot contour lines on a single plot. |
| |
| Args: |
| lines (sequence of arrays): Contour line data as returned by |
| :meth:`~.ContourGenerator.lines`. |
| line_type (LineType or str): Type of :meth:`~.ContourGenerator.lines` data as returned |
| by :attr:`~.ContourGenerator.line_type`, or a string equivalent. |
| ax (int or Bokeh Figure, optional): Which plot to use, default ``0``. |
| color (str, optional): Color to plot lines. May be a string color or the letter ``"C"`` |
| followed by an integer in the range ``"C0"`` to ``"C9"`` to use a color from the |
| ``Category10`` palette. Default ``"C0"``. |
| alpha (float, optional): Opacity to plot lines with, default ``1.0``. |
| linewidth (float, optional): Width of lines, default ``1``. |
| |
| Note: |
| Assumes all lines are open line strips not closed line loops. |
| """ |
| line_type = as_line_type(line_type) |
| fig = self._get_figure(ax) |
| color = self._convert_color(color) |
| xs, ys = lines_to_bokeh(lines, line_type) |
| if xs is not None: |
| fig.line(xs, ys, line_color=color, line_alpha=alpha, line_width=linewidth) |
|
|
| def mask( |
| self, |
| x: ArrayLike, |
| y: ArrayLike, |
| z: ArrayLike | np.ma.MaskedArray[Any, Any], |
| ax: figure | int = 0, |
| color: str = "black", |
| ) -> None: |
| """Plot masked out grid points as circles on a single plot. |
| |
| Args: |
| x (array-like of shape (ny, nx) or (nx,)): The x-coordinates of the grid points. |
| y (array-like of shape (ny, nx) or (ny,)): The y-coordinates of the grid points. |
| z (masked array of shape (ny, nx): z-values. |
| ax (int or Bokeh Figure, optional): Which plot to use, default ``0``. |
| color (str, optional): Circle color, default ``"black"``. |
| """ |
| mask = np.ma.getmask(z) |
| if mask is np.ma.nomask: |
| return |
| fig = self._get_figure(ax) |
| color = self._convert_color(color) |
| x, y = self._grid_as_2d(x, y) |
| fig.circle(x[mask], y[mask], fill_color=color, size=10) |
|
|
| def save( |
| self, |
| filename: str, |
| transparent: bool = False, |
| *, |
| webdriver: WebDriver | None = None, |
| ) -> None: |
| """Save plots to SVG or PNG file. |
| |
| Args: |
| filename (str): Filename to save to. |
| transparent (bool, optional): Whether background should be transparent, default |
| ``False``. |
| webdriver (WebDriver, optional): Selenium WebDriver instance to use to create the image. |
| |
| .. versionadded:: 1.1.1 |
| |
| Warning: |
| To output to SVG file, ``want_svg=True`` must have been passed to the constructor. |
| """ |
| if transparent: |
| for fig in self._figures: |
| fig.background_fill_color = None |
| fig.border_fill_color = None |
|
|
| if self._want_svg: |
| export_svg(self._layout, filename=filename, webdriver=webdriver) |
| else: |
| export_png(self._layout, filename=filename, webdriver=webdriver) |
|
|
| def save_to_buffer(self, *, webdriver: WebDriver | None = None) -> io.BytesIO: |
| """Save plots to an ``io.BytesIO`` buffer. |
| |
| Args: |
| webdriver (WebDriver, optional): Selenium WebDriver instance to use to create the image. |
| |
| .. versionadded:: 1.1.1 |
| |
| Return: |
| BytesIO: PNG image buffer. |
| """ |
| image = get_screenshot_as_png(self._layout, driver=webdriver) |
| buffer = io.BytesIO() |
| image.save(buffer, "png") |
| return buffer |
|
|
| def show(self) -> None: |
| """Show plots in web browser, in usual Bokeh manner. |
| """ |
| show(self._layout) |
|
|
| def title(self, title: str, ax: figure | int = 0, color: str | None = None) -> None: |
| """Set the title of a single plot. |
| |
| Args: |
| title (str): Title text. |
| ax (int or Bokeh Figure, optional): Which plot to set the title of, default ``0``. |
| color (str, optional): Color to set title. May be a string color or the letter ``"C"`` |
| followed by an integer in the range ``"C0"`` to ``"C9"`` to use a color from the |
| ``Category10`` palette. Default ``None`` which is ``black``. |
| """ |
| fig = self._get_figure(ax) |
| fig.title = title |
| fig.title.align = "center" |
| if color is not None: |
| fig.title.text_color = self._convert_color(color) |
|
|
| def z_values( |
| self, |
| x: ArrayLike, |
| y: ArrayLike, |
| z: ArrayLike, |
| ax: figure | int = 0, |
| color: str = "green", |
| fmt: str = ".1f", |
| quad_as_tri: bool = False, |
| ) -> None: |
| """Show ``z`` values on a single plot. |
| |
| Args: |
| x (array-like of shape (ny, nx) or (nx,)): The x-coordinates of the grid points. |
| y (array-like of shape (ny, nx) or (ny,)): The y-coordinates of the grid points. |
| z (array-like of shape (ny, nx): z-values. |
| ax (int or Bokeh Figure, optional): Which plot to use, default ``0``. |
| color (str, optional): Color of added text. May be a string color or the letter ``"C"`` |
| followed by an integer in the range ``"C0"`` to ``"C9"`` to use a color from the |
| ``Category10`` palette. Default ``"green"``. |
| fmt (str, optional): Format to display z-values, default ``".1f"``. |
| quad_as_tri (bool, optional): Whether to show z-values at the ``quad_as_tri`` centres |
| of quads. |
| |
| Warning: |
| ``quad_as_tri=True`` shows z-values for all quads, even if masked. |
| """ |
| fig = self._get_figure(ax) |
| color = self._convert_color(color) |
| x, y = self._grid_as_2d(x, y) |
| z = np.asarray(z) |
| ny, nx = z.shape |
| kwargs = {"text_color": color, "text_align": "center", "text_baseline": "middle"} |
| for j in range(ny): |
| for i in range(nx): |
| fig.add_layout(Label(x=x[j, i], y=y[j, i], text=f"{z[j, i]:{fmt}}", **kwargs)) |
| if quad_as_tri: |
| for j in range(ny-1): |
| for i in range(nx-1): |
| xx = np.mean(x[j:j+2, i:i+2]) |
| yy = np.mean(y[j:j+2, i:i+2]) |
| zz = np.mean(z[j:j+2, i:i+2]) |
| fig.add_layout(Label(x=xx, y=yy, text=f"{zz:{fmt}}", **kwargs)) |
|
|