def reset_dbplot(): if is_server_plotting_on(): deconstruct_plotting_server() else: for fig_name, plot_window in _DBPLOT_FIGURES.items(): plt.close(plot_window.figure) del _DBPLOT_FIGURES[fig_name]
def hold_dbplots(fig=None, draw_every=None): """ Use this in a "with" statement to prevent plotting until the end. :param fig: :return: """ if is_server_plotting_on(): # For now, this does nothing. Eventually, it should be made to send a "draw" command through the pipe yield return global _hold_plots _old_hold_state = _hold_plots _hold_plots = True yield _hold_plots = _old_hold_state if _old_hold_state: plot_now = False elif draw_every is not None: global _hold_plot_counter plot_now = _hold_plot_counter % draw_every == 0 _hold_plot_counter += 1 else: plot_now = True if plot_now and fig in _DBPLOT_FIGURES: redraw_figure(_DBPLOT_FIGURES[fig].figure)
def dbplot(data, name=None, plot_type=None, axis=None, plot_mode='live', draw_now=True, hang=False, title=None, fig=None, xlabel=None, ylabel=None, draw_every=None, layout=None, legend=None, grid=False, wait_for_display_sec=0, cornertext=None): """ Plot arbitrary data and continue execution. This program tries to figure out what type of plot to use. :param data: Any data. Hopefully, we at dbplot will be able to figure out a plot for it. :param name: A name uniquely identifying this plot. :param plot_type: A specialized constructor to be used the first time when plotting. You can also pass certain string to give hints as to what kind of plot you want (can resolve cases where the given data could be plotted in multiple ways): 'line': Plots a line plot 'img': An image plot 'colour': A colour image plot 'pic': A picture (no scale bars, axis labels, etc). :param axis: A string identifying which axis to plot on. By default, it is the same as "name". Only use this argument if you indend to make multiple dbplots share the same axis. :param plot_mode: Influences how the data should be used to choose the plot type: 'live': Best for 'live' plots that you intend to update as new data arrives 'static': Best for 'static' plots, that you do not intend to update 'image': Try to represent the plot as an image :param draw_now: Draw the plot now (you may choose false if you're going to add another plot immediately after and don't want have to draw this one again. :param hang: Hang on the plot (wait for it to be closed before continuing) :param title: Title of the plot (will default to name if not included) :param fig: Name of the figure - use this when you want to create multiple figures. :param grid: Turn the grid on :param wait_for_display_sec: In server mode, you can choose to wait maximally wait_for_display_sec seconds before this call returns. In case plotting is finished earlier, the call returns earlier. Setting wait_for_display_sec to a negative number will cause the call to block until the plot has been displayed. """ if is_server_plotting_on(): # Redirect the function call to the plotting server. The flag gets turned on in a configuration file. It is # turned off when this file is run ON the plotting server, from the first line in plotting_server.py arg_locals = locals().copy() from artemis.remote.plotting.plotting_client import dbplot_remotely dbplot_remotely(arg_locals=arg_locals) return if isinstance(fig, plt.Figure): assert None not in _DBPLOT_FIGURES, "If you pass a figure, you can only do it on the first call to dbplot (for now)" _DBPLOT_FIGURES[None] = fig fig = None elif fig not in _DBPLOT_FIGURES or not plt.fignum_exists( _DBPLOT_FIGURES[fig].figure.number ): # Second condition handles closed figures. _DBPLOT_FIGURES[fig] = _PlotWindow(figure=_make_dbplot_figure(), subplots=OrderedDict(), axes={}) if fig is not None: _DBPLOT_FIGURES[fig].figure.canvas.set_window_title(fig) suplot_dict = _DBPLOT_FIGURES[fig].subplots if axis is None: axis = name if name not in suplot_dict: if isinstance(plot_type, str): plot = { 'line': LinePlot, 'thick-line': lambda: LinePlot(plot_kwargs={'linewidth': 3}), 'pos_line': lambda: LinePlot(y_bounds=(0, None), y_bound_extend=(0, 0.05)), # 'pos_line': lambda: LinePlot(y_bounds=(0, None)), 'bar': BarPlot, 'img': ImagePlot, 'colour': lambda: ImagePlot(is_colour_data=True), 'equal_aspect': lambda: ImagePlot(aspect='equal'), 'image_history': lambda: MovingImagePlot(), 'fixed_line_history': lambda: MovingPointPlot(buffer_len=100), 'pic': lambda: ImagePlot(show_clims=False, aspect='equal'), 'notice': lambda: TextPlot(max_history=1, horizontal_alignment='center', vertical_alignment='center', size='x-large'), 'cost': lambda: MovingPointPlot(y_bounds=(0, None), y_bound_extend=(0, 0.05)), 'percent': lambda: MovingPointPlot(y_bounds=(0, 100)), 'trajectory': lambda: Moving2DPointPlot(axes_update_mode='expand'), 'trajectory+': lambda: Moving2DPointPlot(axes_update_mode='expand', x_bounds=(0, None), y_bounds=(0, None)), 'histogram': lambda: HistogramPlot(edges=np.linspace(-5, 5, 20)), 'cumhist': lambda: CumulativeLineHistogram(edges=np.linspace(-5, 5, 20)), }[plot_type]() elif plot_type is None: plot = get_plot_from_data(data, mode=plot_mode) else: assert hasattr(plot_type, "__call__") plot = plot_type() if isinstance(axis, SubplotSpec): axis = plt.subplot(axis) if isinstance(axis, Axes): ax = axis ax_name = str(axis) elif isinstance(axis, basestring) or axis is None: ax = select_subplot( axis, fig=_DBPLOT_FIGURES[fig].figure, layout=_default_layout if layout is None else layout) ax_name = axis # ax.set_title(axis) else: raise Exception( "Axis specifier must be a string, an Axis object, or a SubplotSpec object. Not {}" .format(axis)) if ax_name not in _DBPLOT_FIGURES[fig].axes: ax.set_title(name) _DBPLOT_FIGURES[fig].subplots[name] = _Subplot(axis=ax, plot_object=plot) _DBPLOT_FIGURES[fig].axes[ax_name] = ax _DBPLOT_FIGURES[fig].subplots[name] = _Subplot( axis=_DBPLOT_FIGURES[fig].axes[ax_name], plot_object=plot) plt.sca(_DBPLOT_FIGURES[fig].axes[ax_name]) if xlabel is not None: _DBPLOT_FIGURES[fig].subplots[name].axis.set_xlabel(xlabel) if ylabel is not None: _DBPLOT_FIGURES[fig].subplots[name].axis.set_ylabel(ylabel) if draw_every is not None: _draw_counters[fig, name] = -1 if grid: plt.grid() # Update the relevant data and plot it. TODO: Add option for plotting update interval plot = _DBPLOT_FIGURES[fig].subplots[name].plot_object plot.update(data) plot.plot() if cornertext is not None: if not hasattr(_DBPLOT_FIGURES[fig].figure, '__cornertext'): _DBPLOT_FIGURES[fig].figure.__cornertext = _DBPLOT_FIGURES[ fig].subplots.values()[0].axis.annotate( cornertext, xy=(0, 0), xytext=(0.01, 0.98), textcoords='figure fraction') else: _DBPLOT_FIGURES[fig].figure.__cornertext.set_text(cornertext) if title is not None: _DBPLOT_FIGURES[fig].subplots[name].axis.set_title(title) if legend is not None: _DBPLOT_FIGURES[fig].subplots[name].axis.legend(legend, loc='best', framealpha=0.5) if draw_now and not _hold_plots: if draw_every is not None: _draw_counters[fig, name] += 1 if _draw_counters[fig, name] % draw_every != 0: return _DBPLOT_FIGURES[fig].subplots[name].axis if hang: plt.figure(_DBPLOT_FIGURES[fig].figure.number) plt.show() else: redraw_figure(_DBPLOT_FIGURES[fig].figure) return _DBPLOT_FIGURES[fig].subplots[name].axis
from collections import OrderedDict, namedtuple from artemis.config import get_artemis_config_value from artemis.plotting.matplotlib_backend import BarPlot from matplotlib.axes import Axes from matplotlib.gridspec import SubplotSpec from contextlib import contextmanager import numpy as np from matplotlib import pyplot as plt from artemis.plotting.drawing_plots import redraw_figure from artemis.plotting.expanding_subplots import select_subplot from artemis.plotting.matplotlib_backend import get_plot_from_data, TextPlot, MovingPointPlot, Moving2DPointPlot, \ MovingImagePlot, HistogramPlot, CumulativeLineHistogram from artemis.plotting.plotting_backend import LinePlot, ImagePlot, is_server_plotting_on if is_server_plotting_on(): from artemis.remote.plotting.plotting_client import deconstruct_plotting_server __author__ = 'peter' """ dbplot just takes your data, and plots it. No fuss, no muss. No more thinking about what kind plot to use, or how to make updating plots of changing variables. Just dbplot it. dbplot(data, 'my-data') dbplot will look at your data, and figure out which type of plot is appropriate. If you don't like it, you can customize it, using the plot_type argument. dbplot makes online plotting easy. You want to plot updates to your variable? Just dbplot it. dbplot(var, 'my-var') dbplot(updated_var, 'my-var')