def get_color_palette(num, colors=DEFAULT_PLOTLY_COLORS): """Returns ``num`` of distinct RGB colors. If ``num`` is less than or equal to the length of ``colors``, first ``num`` elements of ``colors`` are returned. Else ``num`` elements of colors are interpolated between the first and the last colors of ``colors``. Parameters ---------- num : `int` Number of colors required. colors : [`str`, `list` [`str`]], default ``DEFAULT_PLOTLY_COLORS`` Which colors to use to build the color palette. This can be a list of RGB colors or a `str` from ``PLOTLY_SCALES``. Returns ------- color_palette: List A list consisting ``num`` of RGB colors. """ validate_colors(colors, colortype="rgb") if len(colors) == 1: return colors * num elif len(colors) >= num: color_palette = colors[0:num] else: color_palette = n_colors( colors[0], colors[-1], num, colortype="rgb") return color_palette
def create_2d_density(x, y, colorscale='Earth', ncontours=20, hist_color=(0, 0, 0.5), point_color=(0, 0, 0.5), point_size=2, title='2D Density Plot', height=600, width=600): """ Returns figure for a 2D density plot :param (list|array) x: x-axis data for plot generation :param (list|array) y: y-axis data for plot generation :param (str|tuple|list) colorscale: either a plotly scale name, an rgb or hex color, a color tuple or a list or tuple of colors. An rgb color is of the form 'rgb(x, y, z)' where x, y, z belong to the interval [0, 255] and a color tuple is a tuple of the form (a, b, c) where a, b and c belong to [0, 1]. If colormap is a list, it must contain the valid color types aforementioned as its members. :param (int) ncontours: the number of 2D contours to draw on the plot :param (str) hist_color: the color of the plotted histograms :param (str) point_color: the color of the scatter points :param (str) point_size: the color of the scatter points :param (str) title: set the title for the plot :param (float) height: the height of the chart :param (float) width: the width of the chart Example 1: Simple 2D Density Plot ``` import plotly.plotly as py from plotly.figure_factory create_2d_density import numpy as np # Make data points t = np.linspace(-1,1.2,2000) x = (t**3)+(0.3*np.random.randn(2000)) y = (t**6)+(0.3*np.random.randn(2000)) # Create a figure fig = create_2D_density(x, y) # Plot the data py.iplot(fig, filename='simple-2d-density') ``` Example 2: Using Parameters ``` import plotly.plotly as py from plotly.figure_factory create_2d_density import numpy as np # Make data points t = np.linspace(-1,1.2,2000) x = (t**3)+(0.3*np.random.randn(2000)) y = (t**6)+(0.3*np.random.randn(2000)) # Create custom colorscale colorscale = ['#7A4579', '#D56073', 'rgb(236,158,105)', (1, 1, 0.2), (0.98,0.98,0.98)] # Create a figure fig = create_2D_density( x, y, colorscale=colorscale, hist_color='rgb(255, 237, 222)', point_size=3) # Plot the data py.iplot(fig, filename='use-parameters') ``` """ # validate x and y are filled with numbers only for array in [x, y]: if not all(isinstance(element, Number) for element in array): raise plotly.exceptions.PlotlyError( "All elements of your 'x' and 'y' lists must be numbers.") # validate x and y are the same length if len(x) != len(y): raise plotly.exceptions.PlotlyError( "Both lists 'x' and 'y' must be the same length.") colorscale = clrs.validate_colors(colorscale, 'rgb') colorscale = make_linear_colorscale(colorscale) # validate hist_color and point_color hist_color = clrs.validate_colors(hist_color, 'rgb') point_color = clrs.validate_colors(point_color, 'rgb') trace1 = graph_objs.Scatter(x=x, y=y, mode='markers', name='points', marker=dict(color=point_color[0], size=point_size, opacity=0.4)) trace2 = graph_objs.Histogram2dContour(x=x, y=y, name='density', ncontours=ncontours, colorscale=colorscale, reversescale=True, showscale=False) trace3 = graph_objs.Histogram(x=x, name='x density', marker=dict(color=hist_color[0]), yaxis='y2') trace4 = graph_objs.Histogram(y=y, name='y density', marker=dict(color=hist_color[0]), xaxis='x2') data = [trace1, trace2, trace3, trace4] layout = graph_objs.Layout(showlegend=False, autosize=False, title=title, height=height, width=width, xaxis=dict(domain=[0, 0.85], showgrid=False, zeroline=False), yaxis=dict(domain=[0, 0.85], showgrid=False, zeroline=False), margin=dict(t=50), hovermode='closest', bargap=0, xaxis2=dict(domain=[0.85, 1], showgrid=False, zeroline=False), yaxis2=dict(domain=[0.85, 1], showgrid=False, zeroline=False)) fig = graph_objs.Figure(data=data, layout=layout) return fig
def create_bullet(data, markers=None, measures=None, ranges=None, subtitles=None, titles=None, orientation='h', range_colors=('rgb(200, 200, 200)', 'rgb(245, 245, 245)'), measure_colors=('rgb(31, 119, 180)', 'rgb(176, 196, 221)'), horizontal_spacing=None, vertical_spacing=None, scatter_options={}, **layout_options): """ Returns figure for bullet chart. :param (pd.DataFrame | list | tuple) data: either a list/tuple of dictionaries or a pandas DataFrame. :param (str) markers: the column name or dictionary key for the markers in each subplot. :param (str) measures: the column name or dictionary key for the measure bars in each subplot. This bar usually represents the quantitative measure of performance, usually a list of two values [a, b] and are the blue bars in the foreground of each subplot by default. :param (str) ranges: the column name or dictionary key for the qualitative ranges of performance, usually a 3-item list [bad, okay, good]. They correspond to the grey bars in the background of each chart. :param (str) subtitles: the column name or dictionary key for the subtitle of each subplot chart. The subplots are displayed right underneath each title. :param (str) titles: the column name or dictionary key for the main label of each subplot chart. :param (bool) orientation: if 'h', the bars are placed horizontally as rows. If 'v' the bars are placed vertically in the chart. :param (list) range_colors: a tuple of two colors between which all the rectangles for the range are drawn. These rectangles are meant to be qualitative indicators against which the marker and measure bars are compared. Default=('rgb(200, 200, 200)', 'rgb(245, 245, 245)') :param (list) measure_colors: a tuple of two colors which is used to color the thin quantitative bars in the bullet chart. Default=('rgb(31, 119, 180)', 'rgb(176, 196, 221)') :param (float) horizontal_spacing: see the 'horizontal_spacing' param in plotly.tools.make_subplots. Ranges between 0 and 1. :param (float) vertical_spacing: see the 'vertical_spacing' param in plotly.tools.make_subplots. Ranges between 0 and 1. :param (dict) scatter_options: describes attributes for the scatter trace in each subplot such as name and marker size. Call help(plotly.graph_objs.Scatter) for more information on valid params. :param layout_options: describes attributes for the layout of the figure such as title, height and width. Call help(plotly.graph_objs.Layout) for more information on valid params. Example 1: Use a Dictionary ``` import plotly import plotly.plotly as py import plotly.figure_factory as ff data = [ {"label": "Revenue", "sublabel": "US$, in thousands", "range": [150, 225, 300], "performance": [220,270], "point": [250]}, {"label": "Profit", "sublabel": "%", "range": [20, 25, 30], "performance": [21, 23], "point": [26]}, {"label": "Order Size", "sublabel":"US$, average","range": [350, 500, 600], "performance": [100,320],"point": [550]}, {"label": "New Customers", "sublabel": "count", "range": [1400, 2000, 2500], "performance": [1000, 1650],"point": [2100]}, {"label": "Satisfaction", "sublabel": "out of 5","range": [3.5, 4.25, 5], "performance": [3.2, 4.7], "point": [4.4]} ] fig = ff.create_bullet( data, titles='label', subtitles='sublabel', markers='point', measures='performance', ranges='range', orientation='h', title='my simple bullet chart' ) py.iplot(fig) ``` Example 2: Use a DataFrame with Custom Colors ``` import plotly.plotly as py import plotly.figure_factory as ff import pandas as pd data = pd.read_json('https://cdn.rawgit.com/plotly/datasets/master/BulletData.json') fig = ff.create_bullet( data, titles='title', markers='markers', measures='measures', orientation='v', measure_colors=['rgb(14, 52, 75)', 'rgb(31, 141, 127)'], scatter_options={'marker': {'symbol': 'circle'}}, width=700 ) py.iplot(fig) ``` """ # validate df if not pd: raise exceptions.ImportError( "'pandas' must be installed for this figure factory." ) if is_sequence(data): if not all(isinstance(item, dict) for item in data): raise exceptions.PlotlyError( 'Every entry of the data argument list, tuple, etc must ' 'be a dictionary.' ) elif not isinstance(data, pd.DataFrame): raise exceptions.PlotlyError( 'You must input a pandas DataFrame, or a list of dictionaries.' ) # make DataFrame from data with correct column headers col_names = ['titles', 'subtitle', 'markers', 'measures', 'ranges'] if is_sequence(data): df = pd.DataFrame( [ [d[titles] for d in data] if titles else [''] * len(data), [d[subtitles] for d in data] if subtitles else [''] * len(data), [d[markers] for d in data] if markers else [[]] * len(data), [d[measures] for d in data] if measures else [[]] * len(data), [d[ranges] for d in data] if ranges else [[]] * len(data), ], index=col_names ) elif isinstance(data, pd.DataFrame): df = pd.DataFrame( [ data[titles].tolist() if titles else [''] * len(data), data[subtitles].tolist() if subtitles else [''] * len(data), data[markers].tolist() if markers else [[]] * len(data), data[measures].tolist() if measures else [[]] * len(data), data[ranges].tolist() if ranges else [[]] * len(data), ], index=col_names ) df = pd.DataFrame.transpose(df) # make sure ranges, measures, 'markers' are not NAN or NONE for needed_key in ['ranges', 'measures', 'markers']: for idx, r in enumerate(df[needed_key]): try: r_is_nan = math.isnan(r) if r_is_nan or r is None: df[needed_key][idx] = [] except TypeError: pass # validate custom colors for colors_list in [range_colors, measure_colors]: if colors_list: if len(colors_list) != 2: raise exceptions.PlotlyError( "Both 'range_colors' or 'measure_colors' must be a list " "of two valid colors." ) colors.validate_colors(colors_list) colors_list = colors.convert_colors_to_same_type(colors_list, 'rgb')[0] # default scatter options default_scatter = { 'marker': {'size': 12, 'symbol': 'diamond-tall', 'color': 'rgb(0, 0, 0)'} } if scatter_options == {}: scatter_options.update(default_scatter) else: # add default options to scatter_options if they are not present for k in default_scatter['marker']: if k not in scatter_options['marker']: scatter_options['marker'][k] = default_scatter['marker'][k] fig = _bullet( df, markers, measures, ranges, subtitles, titles, orientation, range_colors, measure_colors, horizontal_spacing, vertical_spacing, scatter_options, layout_options, ) return fig
def create_bullet(data, markers=None, measures=None, ranges=None, subtitles=None, titles=None, orientation='h', range_colors=('rgb(200, 200, 200)', 'rgb(245, 245, 245)'), measure_colors=('rgb(31, 119, 180)', 'rgb(176, 196, 221)'), horizontal_spacing=None, vertical_spacing=None, scatter_options={}, **layout_options): """ Returns figure for bullet chart. :param (pd.DataFrame | list | tuple) data: either a list/tuple of dictionaries or a pandas DataFrame. :param (str) markers: the column name or dictionary key for the markers in each subplot. :param (str) measures: the column name or dictionary key for the measure bars in each subplot. This bar usually represents the quantitative measure of performance, usually a list of two values [a, b] and are the blue bars in the foreground of each subplot by default. :param (str) ranges: the column name or dictionary key for the qualitative ranges of performance, usually a 3-item list [bad, okay, good]. They correspond to the grey bars in the background of each chart. :param (str) subtitles: the column name or dictionary key for the subtitle of each subplot chart. The subplots are displayed right underneath each title. :param (str) titles: the column name or dictionary key for the main label of each subplot chart. :param (bool) orientation: if 'h', the bars are placed horizontally as rows. If 'v' the bars are placed vertically in the chart. :param (list) range_colors: a tuple of two colors between which all the rectangles for the range are drawn. These rectangles are meant to be qualitative indicators against which the marker and measure bars are compared. Default=('rgb(200, 200, 200)', 'rgb(245, 245, 245)') :param (list) measure_colors: a tuple of two colors which is used to color the thin quantitative bars in the bullet chart. Default=('rgb(31, 119, 180)', 'rgb(176, 196, 221)') :param (float) horizontal_spacing: see the 'horizontal_spacing' param in plotly.tools.make_subplots. Ranges between 0 and 1. :param (float) vertical_spacing: see the 'vertical_spacing' param in plotly.tools.make_subplots. Ranges between 0 and 1. :param (dict) scatter_options: describes attributes for the scatter trace in each subplot such as name and marker size. Call help(plotly.graph_objs.Scatter) for more information on valid params. :param layout_options: describes attributes for the layout of the figure such as title, height and width. Call help(plotly.graph_objs.Layout) for more information on valid params. Example 1: Use a Dictionary ``` import plotly import plotly.plotly as py import plotly.figure_factory as ff data = [ {"label": "Revenue", "sublabel": "US$, in thousands", "range": [150, 225, 300], "performance": [220,270], "point": [250]}, {"label": "Profit", "sublabel": "%", "range": [20, 25, 30], "performance": [21, 23], "point": [26]}, {"label": "Order Size", "sublabel":"US$, average","range": [350, 500, 600], "performance": [100,320],"point": [550]}, {"label": "New Customers", "sublabel": "count", "range": [1400, 2000, 2500], "performance": [1000, 1650],"point": [2100]}, {"label": "Satisfaction", "sublabel": "out of 5","range": [3.5, 4.25, 5], "performance": [3.2, 4.7], "point": [4.4]} ] fig = ff.create_bullet( data, titles='label', subtitles='sublabel', markers='point', measures='performance', ranges='range', orientation='h', title='my simple bullet chart' ) py.iplot(fig) ``` Example 2: Use a DataFrame with Custom Colors ``` import plotly.plotly as py import plotly.figure_factory as ff import pandas as pd data = pd.read_json('https://cdn.rawgit.com/plotly/datasets/master/BulletData.json') fig = ff.create_bullet( data, titles='title', markers='markers', measures='measures', orientation='v', measure_colors=['rgb(14, 52, 75)', 'rgb(31, 141, 127)'], scatter_options={'marker': {'symbol': 'circle'}}, width=700 ) py.iplot(fig) ``` """ # validate df if not pd: raise exceptions.ImportError( "'pandas' must be installed for this figure factory.") if is_sequence(data): if not all(isinstance(item, dict) for item in data): raise exceptions.PlotlyError( 'Every entry of the data argument list, tuple, etc must ' 'be a dictionary.') elif not isinstance(data, pd.DataFrame): raise exceptions.PlotlyError( 'You must input a pandas DataFrame, or a list of dictionaries.') # make DataFrame from data with correct column headers col_names = ['titles', 'subtitle', 'markers', 'measures', 'ranges'] if is_sequence(data): df = pd.DataFrame([ [d[titles] for d in data] if titles else [''] * len(data), [d[subtitles] for d in data] if subtitles else [''] * len(data), [d[markers] for d in data] if markers else [[]] * len(data), [d[measures] for d in data] if measures else [[]] * len(data), [d[ranges] for d in data] if ranges else [[]] * len(data), ], index=col_names) elif isinstance(data, pd.DataFrame): df = pd.DataFrame([ data[titles].tolist() if titles else [''] * len(data), data[subtitles].tolist() if subtitles else [''] * len(data), data[markers].tolist() if markers else [[]] * len(data), data[measures].tolist() if measures else [[]] * len(data), data[ranges].tolist() if ranges else [[]] * len(data), ], index=col_names) df = pd.DataFrame.transpose(df) # make sure ranges, measures, 'markers' are not NAN or NONE for needed_key in ['ranges', 'measures', 'markers']: for idx, r in enumerate(df[needed_key]): try: r_is_nan = math.isnan(r) if r_is_nan or r is None: df[needed_key][idx] = [] except TypeError: pass # validate custom colors for colors_list in [range_colors, measure_colors]: if colors_list: if len(colors_list) != 2: raise exceptions.PlotlyError( "Both 'range_colors' or 'measure_colors' must be a list " "of two valid colors.") colors.validate_colors(colors_list) colors_list = colors.convert_colors_to_same_type( colors_list, 'rgb')[0] # default scatter options default_scatter = { 'marker': { 'size': 12, 'symbol': 'diamond-tall', 'color': 'rgb(0, 0, 0)' } } if scatter_options == {}: scatter_options.update(default_scatter) else: # add default options to scatter_options if they are not present for k in default_scatter['marker']: if k not in scatter_options['marker']: scatter_options['marker'][k] = default_scatter['marker'][k] fig = _bullet( df, markers, measures, ranges, subtitles, titles, orientation, range_colors, measure_colors, horizontal_spacing, vertical_spacing, scatter_options, layout_options, ) return fig
def create_violin( data, data_header=None, group_header=None, colors=None, use_colorscale=False, group_stats=None, rugplot=True, sort=False, height=450, width=600, title="Violin and Rug Plot", ): """ **deprecated**, use instead the plotly.graph_objects trace :class:`plotly.graph_objects.Violin`. :param (list|array) data: accepts either a list of numerical values, a list of dictionaries all with identical keys and at least one column of numeric values, or a pandas dataframe with at least one column of numbers. :param (str) data_header: the header of the data column to be used from an inputted pandas dataframe. Not applicable if 'data' is a list of numeric values. :param (str) group_header: applicable if grouping data by a variable. 'group_header' must be set to the name of the grouping variable. :param (str|tuple|list|dict) colors: either a plotly scale name, an rgb or hex color, a color tuple, a list of colors or a dictionary. An rgb color is of the form 'rgb(x, y, z)' where x, y and z belong to the interval [0, 255] and a color tuple is a tuple of the form (a, b, c) where a, b and c belong to [0, 1]. If colors is a list, it must contain valid color types as its members. :param (bool) use_colorscale: only applicable if grouping by another variable. Will implement a colorscale based on the first 2 colors of param colors. This means colors must be a list with at least 2 colors in it (Plotly colorscales are accepted since they map to a list of two rgb colors). Default = False :param (dict) group_stats: a dictioanry where each key is a unique value from the group_header column in data. Each value must be a number and will be used to color the violin plots if a colorscale is being used. :param (bool) rugplot: determines if a rugplot is draw on violin plot. Default = True :param (bool) sort: determines if violins are sorted alphabetically (True) or by input order (False). Default = False :param (float) height: the height of the violin plot. :param (float) width: the width of the violin plot. :param (str) title: the title of the violin plot. Example 1: Single Violin Plot >>> from plotly.figure_factory import create_violin >>> import plotly.graph_objs as graph_objects >>> import numpy as np >>> from scipy import stats >>> # create list of random values >>> data_list = np.random.randn(100) >>> # create violin fig >>> fig = create_violin(data_list, colors='#604d9e') >>> # plot >>> fig.show() Example 2: Multiple Violin Plots with Qualitative Coloring >>> from plotly.figure_factory import create_violin >>> import plotly.graph_objs as graph_objects >>> import numpy as np >>> import pandas as pd >>> from scipy import stats >>> # create dataframe >>> np.random.seed(619517) >>> Nr=250 >>> y = np.random.randn(Nr) >>> gr = np.random.choice(list("ABCDE"), Nr) >>> norm_params=[(0, 1.2), (0.7, 1), (-0.5, 1.4), (0.3, 1), (0.8, 0.9)] >>> for i, letter in enumerate("ABCDE"): ... y[gr == letter] *=norm_params[i][1]+ norm_params[i][0] >>> df = pd.DataFrame(dict(Score=y, Group=gr)) >>> # create violin fig >>> fig = create_violin(df, data_header='Score', group_header='Group', ... sort=True, height=600, width=1000) >>> # plot >>> fig.show() Example 3: Violin Plots with Colorscale >>> from plotly.figure_factory import create_violin >>> import plotly.graph_objs as graph_objects >>> import numpy as np >>> import pandas as pd >>> from scipy import stats >>> # create dataframe >>> np.random.seed(619517) >>> Nr=250 >>> y = np.random.randn(Nr) >>> gr = np.random.choice(list("ABCDE"), Nr) >>> norm_params=[(0, 1.2), (0.7, 1), (-0.5, 1.4), (0.3, 1), (0.8, 0.9)] >>> for i, letter in enumerate("ABCDE"): ... y[gr == letter] *=norm_params[i][1]+ norm_params[i][0] >>> df = pd.DataFrame(dict(Score=y, Group=gr)) >>> # define header params >>> data_header = 'Score' >>> group_header = 'Group' >>> # make groupby object with pandas >>> group_stats = {} >>> groupby_data = df.groupby([group_header]) >>> for group in "ABCDE": ... data_from_group = groupby_data.get_group(group)[data_header] ... # take a stat of the grouped data ... stat = np.median(data_from_group) ... # add to dictionary ... group_stats[group] = stat >>> # create violin fig >>> fig = create_violin(df, data_header='Score', group_header='Group', ... height=600, width=1000, use_colorscale=True, ... group_stats=group_stats) >>> # plot >>> fig.show() """ # Validate colors if isinstance(colors, dict): valid_colors = clrs.validate_colors_dict(colors, "rgb") else: valid_colors = clrs.validate_colors(colors, "rgb") # validate data and choose plot type if group_header is None: if isinstance(data, list): if len(data) <= 0: raise exceptions.PlotlyError("If data is a list, it must be " "nonempty and contain either " "numbers or dictionaries.") if not all(isinstance(element, Number) for element in data): raise exceptions.PlotlyError("If data is a list, it must " "contain only numbers.") if pd and isinstance(data, pd.core.frame.DataFrame): if data_header is None: raise exceptions.PlotlyError("data_header must be the " "column name with the " "desired numeric data for " "the violin plot.") data = data[data_header].values.tolist() # call the plotting functions plot_data, plot_xrange = violinplot(data, fillcolor=valid_colors[0], rugplot=rugplot) layout = graph_objs.Layout( title=title, autosize=False, font=graph_objs.layout.Font(size=11), height=height, showlegend=False, width=width, xaxis=make_XAxis("", plot_xrange), yaxis=make_YAxis(""), hovermode="closest", ) layout["yaxis"].update( dict(showline=False, showticklabels=False, ticks="")) fig = graph_objs.Figure(data=plot_data, layout=layout) return fig else: if not isinstance(data, pd.core.frame.DataFrame): raise exceptions.PlotlyError("Error. You must use a pandas " "DataFrame if you are using a " "group header.") if data_header is None: raise exceptions.PlotlyError("data_header must be the column " "name with the desired numeric " "data for the violin plot.") if use_colorscale is False: if isinstance(valid_colors, dict): # validate colors dict choice below fig = violin_dict( data, data_header, group_header, valid_colors, use_colorscale, group_stats, rugplot, sort, height, width, title, ) return fig else: fig = violin_no_colorscale( data, data_header, group_header, valid_colors, use_colorscale, group_stats, rugplot, sort, height, width, title, ) return fig else: if isinstance(valid_colors, dict): raise exceptions.PlotlyError("The colors param cannot be " "a dictionary if you are " "using a colorscale.") if len(valid_colors) < 2: raise exceptions.PlotlyError("colors must be a list with " "at least 2 colors. A " "Plotly scale is allowed.") if not isinstance(group_stats, dict): raise exceptions.PlotlyError("Your group_stats param " "must be a dictionary.") fig = violin_colorscale( data, data_header, group_header, valid_colors, use_colorscale, group_stats, rugplot, sort, height, width, title, ) return fig
def create_2d_density( x, y, colorscale="Earth", ncontours=20, hist_color=(0, 0, 0.5), point_color=(0, 0, 0.5), point_size=2, title="2D Density Plot", height=600, width=600, ): """ **deprecated**, use instead :func:`plotly.express.density_heatmap`. :param (list|array) x: x-axis data for plot generation :param (list|array) y: y-axis data for plot generation :param (str|tuple|list) colorscale: either a plotly scale name, an rgb or hex color, a color tuple or a list or tuple of colors. An rgb color is of the form 'rgb(x, y, z)' where x, y, z belong to the interval [0, 255] and a color tuple is a tuple of the form (a, b, c) where a, b and c belong to [0, 1]. If colormap is a list, it must contain the valid color types aforementioned as its members. :param (int) ncontours: the number of 2D contours to draw on the plot :param (str) hist_color: the color of the plotted histograms :param (str) point_color: the color of the scatter points :param (str) point_size: the color of the scatter points :param (str) title: set the title for the plot :param (float) height: the height of the chart :param (float) width: the width of the chart Examples -------- Example 1: Simple 2D Density Plot >>> from plotly.figure_factory import create_2d_density >>> import numpy as np >>> # Make data points >>> t = np.linspace(-1,1.2,2000) >>> x = (t**3)+(0.3*np.random.randn(2000)) >>> y = (t**6)+(0.3*np.random.randn(2000)) >>> # Create a figure >>> fig = create_2d_density(x, y) >>> # Plot the data >>> fig.show() Example 2: Using Parameters >>> from plotly.figure_factory import create_2d_density >>> import numpy as np >>> # Make data points >>> t = np.linspace(-1,1.2,2000) >>> x = (t**3)+(0.3*np.random.randn(2000)) >>> y = (t**6)+(0.3*np.random.randn(2000)) >>> # Create custom colorscale >>> colorscale = ['#7A4579', '#D56073', 'rgb(236,158,105)', ... (1, 1, 0.2), (0.98,0.98,0.98)] >>> # Create a figure >>> fig = create_2d_density(x, y, colorscale=colorscale, ... hist_color='rgb(255, 237, 222)', point_size=3) >>> # Plot the data >>> fig.show() """ # validate x and y are filled with numbers only for array in [x, y]: if not all(isinstance(element, Number) for element in array): raise plotly.exceptions.PlotlyError( "All elements of your 'x' and 'y' lists must be numbers.") # validate x and y are the same length if len(x) != len(y): raise plotly.exceptions.PlotlyError( "Both lists 'x' and 'y' must be the same length.") colorscale = clrs.validate_colors(colorscale, "rgb") colorscale = make_linear_colorscale(colorscale) # validate hist_color and point_color hist_color = clrs.validate_colors(hist_color, "rgb") point_color = clrs.validate_colors(point_color, "rgb") trace1 = graph_objs.Scatter( x=x, y=y, mode="markers", name="points", marker=dict(color=point_color[0], size=point_size, opacity=0.4), ) trace2 = graph_objs.Histogram2dContour( x=x, y=y, name="density", ncontours=ncontours, colorscale=colorscale, reversescale=True, showscale=False, ) trace3 = graph_objs.Histogram(x=x, name="x density", marker=dict(color=hist_color[0]), yaxis="y2") trace4 = graph_objs.Histogram(y=y, name="y density", marker=dict(color=hist_color[0]), xaxis="x2") data = [trace1, trace2, trace3, trace4] layout = graph_objs.Layout( showlegend=False, autosize=False, title=title, height=height, width=width, xaxis=dict(domain=[0, 0.85], showgrid=False, zeroline=False), yaxis=dict(domain=[0, 0.85], showgrid=False, zeroline=False), margin=dict(t=50), hovermode="closest", bargap=0, xaxis2=dict(domain=[0.85, 1], showgrid=False, zeroline=False), yaxis2=dict(domain=[0.85, 1], showgrid=False, zeroline=False), ) fig = graph_objs.Figure(data=data, layout=layout) return fig
def create_gantt( df, colors=None, index_col=None, show_colorbar=False, reverse_colors=False, title="Gantt Chart", bar_width=0.2, showgrid_x=False, showgrid_y=False, height=600, width=None, tasks=None, task_names=None, data=None, group_tasks=False, show_hover_fill=True, ): """ Returns figure for a gantt chart :param (array|list) df: input data for gantt chart. Must be either a a dataframe or a list. If dataframe, the columns must include 'Task', 'Start' and 'Finish'. Other columns can be included and used for indexing. If a list, its elements must be dictionaries with the same required column headers: 'Task', 'Start' and 'Finish'. :param (str|list|dict|tuple) colors: either a plotly scale name, an rgb or hex color, a color tuple or a list of colors. An rgb color is of the form 'rgb(x, y, z)' where x, y, z belong to the interval [0, 255] and a color tuple is a tuple of the form (a, b, c) where a, b and c belong to [0, 1]. If colors is a list, it must contain the valid color types aforementioned as its members. If a dictionary, all values of the indexing column must be keys in colors. :param (str|float) index_col: the column header (if df is a data frame) that will function as the indexing column. If df is a list, index_col must be one of the keys in all the items of df. :param (bool) show_colorbar: determines if colorbar will be visible. Only applies if values in the index column are numeric. :param (bool) show_hover_fill: enables/disables the hovertext for the filled area of the chart. :param (bool) reverse_colors: reverses the order of selected colors :param (str) title: the title of the chart :param (float) bar_width: the width of the horizontal bars in the plot :param (bool) showgrid_x: show/hide the x-axis grid :param (bool) showgrid_y: show/hide the y-axis grid :param (float) height: the height of the chart :param (float) width: the width of the chart Example 1: Simple Gantt Chart >>> from plotly.figure_factory import create_gantt >>> # Make data for chart >>> df = [dict(Task="Job A", Start='2009-01-01', Finish='2009-02-30'), ... dict(Task="Job B", Start='2009-03-05', Finish='2009-04-15'), ... dict(Task="Job C", Start='2009-02-20', Finish='2009-05-30')] >>> # Create a figure >>> fig = create_gantt(df) >>> fig.show() Example 2: Index by Column with Numerical Entries >>> from plotly.figure_factory import create_gantt >>> # Make data for chart >>> df = [dict(Task="Job A", Start='2009-01-01', ... Finish='2009-02-30', Complete=10), ... dict(Task="Job B", Start='2009-03-05', ... Finish='2009-04-15', Complete=60), ... dict(Task="Job C", Start='2009-02-20', ... Finish='2009-05-30', Complete=95)] >>> # Create a figure with Plotly colorscale >>> fig = create_gantt(df, colors='Blues', index_col='Complete', ... show_colorbar=True, bar_width=0.5, ... showgrid_x=True, showgrid_y=True) >>> fig.show() Example 3: Index by Column with String Entries >>> from plotly.figure_factory import create_gantt >>> # Make data for chart >>> df = [dict(Task="Job A", Start='2009-01-01', ... Finish='2009-02-30', Resource='Apple'), ... dict(Task="Job B", Start='2009-03-05', ... Finish='2009-04-15', Resource='Grape'), ... dict(Task="Job C", Start='2009-02-20', ... Finish='2009-05-30', Resource='Banana')] >>> # Create a figure with Plotly colorscale >>> fig = create_gantt(df, colors=['rgb(200, 50, 25)', (1, 0, 1), '#6c4774'], ... index_col='Resource', reverse_colors=True, ... show_colorbar=True) >>> fig.show() Example 4: Use a dictionary for colors >>> from plotly.figure_factory import create_gantt >>> # Make data for chart >>> df = [dict(Task="Job A", Start='2009-01-01', ... Finish='2009-02-30', Resource='Apple'), ... dict(Task="Job B", Start='2009-03-05', ... Finish='2009-04-15', Resource='Grape'), ... dict(Task="Job C", Start='2009-02-20', ... Finish='2009-05-30', Resource='Banana')] >>> # Make a dictionary of colors >>> colors = {'Apple': 'rgb(255, 0, 0)', ... 'Grape': 'rgb(170, 14, 200)', ... 'Banana': (1, 1, 0.2)} >>> # Create a figure with Plotly colorscale >>> fig = create_gantt(df, colors=colors, index_col='Resource', ... show_colorbar=True) >>> fig.show() Example 5: Use a pandas dataframe >>> from plotly.figure_factory import create_gantt >>> import pandas as pd >>> # Make data as a dataframe >>> df = pd.DataFrame([['Run', '2010-01-01', '2011-02-02', 10], ... ['Fast', '2011-01-01', '2012-06-05', 55], ... ['Eat', '2012-01-05', '2013-07-05', 94]], ... columns=['Task', 'Start', 'Finish', 'Complete']) >>> # Create a figure with Plotly colorscale >>> fig = create_gantt(df, colors='Blues', index_col='Complete', ... show_colorbar=True, bar_width=0.5, ... showgrid_x=True, showgrid_y=True) >>> fig.show() """ # validate gantt input data chart = validate_gantt(df) if index_col: if index_col not in chart[0]: raise exceptions.PlotlyError( "In order to use an indexing column and assign colors to " "the values of the index, you must choose an actual " "column name in the dataframe or key if a list of " "dictionaries is being used.") # validate gantt index column index_list = [] for dictionary in chart: index_list.append(dictionary[index_col]) utils.validate_index(index_list) # Validate colors if isinstance(colors, dict): colors = clrs.validate_colors_dict(colors, "rgb") else: colors = clrs.validate_colors(colors, "rgb") if reverse_colors is True: colors.reverse() if not index_col: if isinstance(colors, dict): raise exceptions.PlotlyError( "Error. You have set colors to a dictionary but have not " "picked an index. An index is required if you are " "assigning colors to particular values in a dictioanry.") fig = gantt( chart, colors, title, bar_width, showgrid_x, showgrid_y, height, width, tasks=None, task_names=None, data=None, group_tasks=group_tasks, show_hover_fill=show_hover_fill, show_colorbar=show_colorbar, ) return fig else: if not isinstance(colors, dict): fig = gantt_colorscale( chart, colors, title, index_col, show_colorbar, bar_width, showgrid_x, showgrid_y, height, width, tasks=None, task_names=None, data=None, group_tasks=group_tasks, show_hover_fill=show_hover_fill, ) return fig else: fig = gantt_dict( chart, colors, title, index_col, show_colorbar, bar_width, showgrid_x, showgrid_y, height, width, tasks=None, task_names=None, data=None, group_tasks=group_tasks, show_hover_fill=show_hover_fill, ) return fig
def create_scatterplotmatrix(df, index=None, endpts=None, diag='scatter', height=500, width=500, size=6, title='Scatterplot Matrix', colormap=None, colormap_type='cat', dataframe=None, headers=None, index_vals=None, **kwargs): """ Returns data for a scatterplot matrix. :param (array) df: array of the data with column headers :param (str) index: name of the index column in data array :param (list|tuple) endpts: takes an increasing sequece of numbers that defines intervals on the real line. They are used to group the entries in an index of numbers into their corresponding interval and therefore can be treated as categorical data :param (str) diag: sets the chart type for the main diagonal plots. The options are 'scatter', 'histogram' and 'box'. :param (int|float) height: sets the height of the chart :param (int|float) width: sets the width of the chart :param (float) size: sets the marker size (in px) :param (str) title: the title label of the scatterplot matrix :param (str|tuple|list|dict) colormap: either a plotly scale name, an rgb or hex color, a color tuple, a list of colors or a dictionary. An rgb color is of the form 'rgb(x, y, z)' where x, y and z belong to the interval [0, 255] and a color tuple is a tuple of the form (a, b, c) where a, b and c belong to [0, 1]. If colormap is a list, it must contain valid color types as its members. If colormap is a dictionary, all the string entries in the index column must be a key in colormap. In this case, the colormap_type is forced to 'cat' or categorical :param (str) colormap_type: determines how colormap is interpreted. Valid choices are 'seq' (sequential) and 'cat' (categorical). If 'seq' is selected, only the first two colors in colormap will be considered (when colormap is a list) and the index values will be linearly interpolated between those two colors. This option is forced if all index values are numeric. If 'cat' is selected, a color from colormap will be assigned to each category from index, including the intervals if endpts is being used :param (dict) **kwargs: a dictionary of scatterplot arguments The only forbidden parameters are 'size', 'color' and 'colorscale' in 'marker' Example 1: Vanilla Scatterplot Matrix ``` import plotly.plotly as py from plotly.graph_objs import graph_objs from plotly.figure_factory import create_scatterplotmatrix import numpy as np import pandas as pd # Create dataframe df = pd.DataFrame(np.random.randn(10, 2), columns=['Column 1', 'Column 2']) # Create scatterplot matrix fig = create_scatterplotmatrix(df) # Plot py.iplot(fig, filename='Vanilla Scatterplot Matrix') ``` Example 2: Indexing a Column ``` import plotly.plotly as py from plotly.graph_objs import graph_objs from plotly.figure_factory import create_scatterplotmatrix import numpy as np import pandas as pd # Create dataframe with index df = pd.DataFrame(np.random.randn(10, 2), columns=['A', 'B']) # Add another column of strings to the dataframe df['Fruit'] = pd.Series(['apple', 'apple', 'grape', 'apple', 'apple', 'grape', 'pear', 'pear', 'apple', 'pear']) # Create scatterplot matrix fig = create_scatterplotmatrix(df, index='Fruit', size=10) # Plot py.iplot(fig, filename = 'Scatterplot Matrix with Index') ``` Example 3: Styling the Diagonal Subplots ``` import plotly.plotly as py from plotly.graph_objs import graph_objs from plotly.figure_factory import create_scatterplotmatrix import numpy as np import pandas as pd # Create dataframe with index df = pd.DataFrame(np.random.randn(10, 4), columns=['A', 'B', 'C', 'D']) # Add another column of strings to the dataframe df['Fruit'] = pd.Series(['apple', 'apple', 'grape', 'apple', 'apple', 'grape', 'pear', 'pear', 'apple', 'pear']) # Create scatterplot matrix fig = create_scatterplotmatrix(df, diag='box', index='Fruit', height=1000, width=1000) # Plot py.iplot(fig, filename = 'Scatterplot Matrix - Diagonal Styling') ``` Example 4: Use a Theme to Style the Subplots ``` import plotly.plotly as py from plotly.graph_objs import graph_objs from plotly.figure_factory import create_scatterplotmatrix import numpy as np import pandas as pd # Create dataframe with random data df = pd.DataFrame(np.random.randn(100, 3), columns=['A', 'B', 'C']) # Create scatterplot matrix using a built-in # Plotly palette scale and indexing column 'A' fig = create_scatterplotmatrix(df, diag='histogram', index='A', colormap='Blues', height=800, width=800) # Plot py.iplot(fig, filename = 'Scatterplot Matrix - Colormap Theme') ``` Example 5: Example 4 with Interval Factoring ``` import plotly.plotly as py from plotly.graph_objs import graph_objs from plotly.figure_factory import create_scatterplotmatrix import numpy as np import pandas as pd # Create dataframe with random data df = pd.DataFrame(np.random.randn(100, 3), columns=['A', 'B', 'C']) # Create scatterplot matrix using a list of 2 rgb tuples # and endpoints at -1, 0 and 1 fig = create_scatterplotmatrix(df, diag='histogram', index='A', colormap=['rgb(140, 255, 50)', 'rgb(170, 60, 115)', '#6c4774', (0.5, 0.1, 0.8)], endpts=[-1, 0, 1], height=800, width=800) # Plot py.iplot(fig, filename = 'Scatterplot Matrix - Intervals') ``` Example 6: Using the colormap as a Dictionary ``` import plotly.plotly as py from plotly.graph_objs import graph_objs from plotly.figure_factory import create_scatterplotmatrix import numpy as np import pandas as pd import random # Create dataframe with random data df = pd.DataFrame(np.random.randn(100, 3), columns=['Column A', 'Column B', 'Column C']) # Add new color column to dataframe new_column = [] strange_colors = ['turquoise', 'limegreen', 'goldenrod'] for j in range(100): new_column.append(random.choice(strange_colors)) df['Colors'] = pd.Series(new_column, index=df.index) # Create scatterplot matrix using a dictionary of hex color values # which correspond to actual color names in 'Colors' column fig = create_scatterplotmatrix( df, diag='box', index='Colors', colormap= dict( turquoise = '#00F5FF', limegreen = '#32CD32', goldenrod = '#DAA520' ), colormap_type='cat', height=800, width=800 ) # Plot py.iplot(fig, filename = 'Scatterplot Matrix - colormap dictionary ') ``` """ # TODO: protected until #282 if dataframe is None: dataframe = [] if headers is None: headers = [] if index_vals is None: index_vals = [] validate_scatterplotmatrix(df, index, diag, colormap_type, **kwargs) # Validate colormap if isinstance(colormap, dict): colormap = clrs.validate_colors_dict(colormap, 'rgb') elif isinstance(colormap, six.string_types) and 'rgb' not in colormap and '#' not in colormap: if colormap not in clrs.PLOTLY_SCALES.keys(): raise exceptions.PlotlyError( "If 'colormap' is a string, it must be the name " "of a Plotly Colorscale. The available colorscale " "names are {}".format(clrs.PLOTLY_SCALES.keys()) ) else: # TODO change below to allow the correct Plotly colorscale colormap = clrs.colorscale_to_colors(clrs.PLOTLY_SCALES[colormap]) # keep only first and last item - fix later colormap = [colormap[0]] + [colormap[-1]] colormap = clrs.validate_colors(colormap, 'rgb') else: colormap = clrs.validate_colors(colormap, 'rgb') if not index: for name in df: headers.append(name) for name in headers: dataframe.append(df[name].values.tolist()) # Check for same data-type in df columns utils.validate_dataframe(dataframe) figure = scatterplot(dataframe, headers, diag, size, height, width, title, **kwargs) return figure else: # Validate index selection if index not in df: raise exceptions.PlotlyError("Make sure you set the index " "input variable to one of the " "column names of your " "dataframe.") index_vals = df[index].values.tolist() for name in df: if name != index: headers.append(name) for name in headers: dataframe.append(df[name].values.tolist()) # check for same data-type in each df column utils.validate_dataframe(dataframe) utils.validate_index(index_vals) # check if all colormap keys are in the index # if colormap is a dictionary if isinstance(colormap, dict): for key in colormap: if not all(index in colormap for index in index_vals): raise exceptions.PlotlyError("If colormap is a " "dictionary, all the " "names in the index " "must be keys.") figure = scatterplot_dict( dataframe, headers, diag, size, height, width, title, index, index_vals, endpts, colormap, colormap_type, **kwargs ) return figure else: figure = scatterplot_theme( dataframe, headers, diag, size, height, width, title, index, index_vals, endpts, colormap, colormap_type, **kwargs ) return figure
def create_trisurf(x, y, z, simplices, colormap=None, show_colorbar=True, scale=None, color_func=None, title='Trisurf Plot', plot_edges=True, showbackground=True, backgroundcolor='rgb(230, 230, 230)', gridcolor='rgb(255, 255, 255)', zerolinecolor='rgb(255, 255, 255)', edges_color='rgb(50, 50, 50)', height=800, width=800, aspectratio=None): """ Returns figure for a triangulated surface plot :param (array) x: data values of x in a 1D array :param (array) y: data values of y in a 1D array :param (array) z: data values of z in a 1D array :param (array) simplices: an array of shape (ntri, 3) where ntri is the number of triangles in the triangularization. Each row of the array contains the indicies of the verticies of each triangle :param (str|tuple|list) colormap: either a plotly scale name, an rgb or hex color, a color tuple or a list of colors. An rgb color is of the form 'rgb(x, y, z)' where x, y, z belong to the interval [0, 255] and a color tuple is a tuple of the form (a, b, c) where a, b and c belong to [0, 1]. If colormap is a list, it must contain the valid color types aforementioned as its members :param (bool) show_colorbar: determines if colorbar is visible :param (list|array) scale: sets the scale values to be used if a non- linearly interpolated colormap is desired. If left as None, a linear interpolation between the colors will be excecuted :param (function|list) color_func: The parameter that determines the coloring of the surface. Takes either a function with 3 arguments x, y, z or a list/array of color values the same length as simplices. If None, coloring will only depend on the z axis :param (str) title: title of the plot :param (bool) plot_edges: determines if the triangles on the trisurf are visible :param (bool) showbackground: makes background in plot visible :param (str) backgroundcolor: color of background. Takes a string of the form 'rgb(x,y,z)' x,y,z are between 0 and 255 inclusive :param (str) gridcolor: color of the gridlines besides the axes. Takes a string of the form 'rgb(x,y,z)' x,y,z are between 0 and 255 inclusive :param (str) zerolinecolor: color of the axes. Takes a string of the form 'rgb(x,y,z)' x,y,z are between 0 and 255 inclusive :param (str) edges_color: color of the edges, if plot_edges is True :param (int|float) height: the height of the plot (in pixels) :param (int|float) width: the width of the plot (in pixels) :param (dict) aspectratio: a dictionary of the aspect ratio values for the x, y and z axes. 'x', 'y' and 'z' take (int|float) values Example 1: Sphere ``` # Necessary Imports for Trisurf import numpy as np from scipy.spatial import Delaunay import plotly.plotly as py from plotly.figure_factory import create_trisurf from plotly.graph_objs import graph_objs # Make data for plot u = np.linspace(0, 2*np.pi, 20) v = np.linspace(0, np.pi, 20) u,v = np.meshgrid(u,v) u = u.flatten() v = v.flatten() x = np.sin(v)*np.cos(u) y = np.sin(v)*np.sin(u) z = np.cos(v) points2D = np.vstack([u,v]).T tri = Delaunay(points2D) simplices = tri.simplices # Create a figure fig1 = create_trisurf(x=x, y=y, z=z, colormap="Rainbow", simplices=simplices) # Plot the data py.iplot(fig1, filename='trisurf-plot-sphere') ``` Example 2: Torus ``` # Necessary Imports for Trisurf import numpy as np from scipy.spatial import Delaunay import plotly.plotly as py from plotly.figure_factory import create_trisurf from plotly.graph_objs import graph_objs # Make data for plot u = np.linspace(0, 2*np.pi, 20) v = np.linspace(0, 2*np.pi, 20) u,v = np.meshgrid(u,v) u = u.flatten() v = v.flatten() x = (3 + (np.cos(v)))*np.cos(u) y = (3 + (np.cos(v)))*np.sin(u) z = np.sin(v) points2D = np.vstack([u,v]).T tri = Delaunay(points2D) simplices = tri.simplices # Create a figure fig1 = create_trisurf(x=x, y=y, z=z, colormap="Viridis", simplices=simplices) # Plot the data py.iplot(fig1, filename='trisurf-plot-torus') ``` Example 3: Mobius Band ``` # Necessary Imports for Trisurf import numpy as np from scipy.spatial import Delaunay import plotly.plotly as py from plotly.figure_factory import create_trisurf from plotly.graph_objs import graph_objs # Make data for plot u = np.linspace(0, 2*np.pi, 24) v = np.linspace(-1, 1, 8) u,v = np.meshgrid(u,v) u = u.flatten() v = v.flatten() tp = 1 + 0.5*v*np.cos(u/2.) x = tp*np.cos(u) y = tp*np.sin(u) z = 0.5*v*np.sin(u/2.) points2D = np.vstack([u,v]).T tri = Delaunay(points2D) simplices = tri.simplices # Create a figure fig1 = create_trisurf(x=x, y=y, z=z, colormap=[(0.2, 0.4, 0.6), (1, 1, 1)], simplices=simplices) # Plot the data py.iplot(fig1, filename='trisurf-plot-mobius-band') ``` Example 4: Using a Custom Colormap Function with Light Cone ``` # Necessary Imports for Trisurf import numpy as np from scipy.spatial import Delaunay import plotly.plotly as py from plotly.figure_factory import create_trisurf from plotly.graph_objs import graph_objs # Make data for plot u=np.linspace(-np.pi, np.pi, 30) v=np.linspace(-np.pi, np.pi, 30) u,v=np.meshgrid(u,v) u=u.flatten() v=v.flatten() x = u y = u*np.cos(v) z = u*np.sin(v) points2D = np.vstack([u,v]).T tri = Delaunay(points2D) simplices = tri.simplices # Define distance function def dist_origin(x, y, z): return np.sqrt((1.0 * x)**2 + (1.0 * y)**2 + (1.0 * z)**2) # Create a figure fig1 = create_trisurf(x=x, y=y, z=z, colormap=['#FFFFFF', '#E4FFFE', '#A4F6F9', '#FF99FE', '#BA52ED'], scale=[0, 0.6, 0.71, 0.89, 1], simplices=simplices, color_func=dist_origin) # Plot the data py.iplot(fig1, filename='trisurf-plot-custom-coloring') ``` Example 5: Enter color_func as a list of colors ``` # Necessary Imports for Trisurf import numpy as np from scipy.spatial import Delaunay import random import plotly.plotly as py from plotly.figure_factory import create_trisurf from plotly.graph_objs import graph_objs # Make data for plot u=np.linspace(-np.pi, np.pi, 30) v=np.linspace(-np.pi, np.pi, 30) u,v=np.meshgrid(u,v) u=u.flatten() v=v.flatten() x = u y = u*np.cos(v) z = u*np.sin(v) points2D = np.vstack([u,v]).T tri = Delaunay(points2D) simplices = tri.simplices colors = [] color_choices = ['rgb(0, 0, 0)', '#6c4774', '#d6c7dd'] for index in range(len(simplices)): colors.append(random.choice(color_choices)) fig = create_trisurf( x, y, z, simplices, color_func=colors, show_colorbar=True, edges_color='rgb(2, 85, 180)', title=' Modern Art' ) py.iplot(fig, filename="trisurf-plot-modern-art") ``` """ if aspectratio is None: aspectratio = {'x': 1, 'y': 1, 'z': 1} # Validate colormap colors.validate_colors(colormap) colormap, scale = colors.convert_colors_to_same_type( colormap, colortype='tuple', return_default_colors=True, scale=scale ) data1 = trisurf(x, y, z, simplices, show_colorbar=show_colorbar, color_func=color_func, colormap=colormap, scale=scale, edges_color=edges_color, plot_edges=plot_edges) axis = dict( showbackground=showbackground, backgroundcolor=backgroundcolor, gridcolor=gridcolor, zerolinecolor=zerolinecolor, ) layout = graph_objs.Layout( title=title, width=width, height=height, scene=graph_objs.layout.Scene( xaxis=graph_objs.layout.scene.XAxis(**axis), yaxis=graph_objs.layout.scene.YAxis(**axis), zaxis=graph_objs.layout.scene.ZAxis(**axis), aspectratio=dict( x=aspectratio['x'], y=aspectratio['y'], z=aspectratio['z']), ) ) return graph_objs.Figure(data=data1, layout=layout)
def create_gantt(df, colors=None, index_col=None, show_colorbar=False, reverse_colors=False, title='Gantt Chart', bar_width=0.2, showgrid_x=False, showgrid_y=False, height=600, width=900, tasks=None, task_names=None, data=None, group_tasks=False): """ Returns figure for a gantt chart :param (array|list) df: input data for gantt chart. Must be either a a dataframe or a list. If dataframe, the columns must include 'Task', 'Start' and 'Finish'. Other columns can be included and used for indexing. If a list, its elements must be dictionaries with the same required column headers: 'Task', 'Start' and 'Finish'. :param (str|list|dict|tuple) colors: either a plotly scale name, an rgb or hex color, a color tuple or a list of colors. An rgb color is of the form 'rgb(x, y, z)' where x, y, z belong to the interval [0, 255] and a color tuple is a tuple of the form (a, b, c) where a, b and c belong to [0, 1]. If colors is a list, it must contain the valid color types aforementioned as its members. If a dictionary, all values of the indexing column must be keys in colors. :param (str|float) index_col: the column header (if df is a data frame) that will function as the indexing column. If df is a list, index_col must be one of the keys in all the items of df. :param (bool) show_colorbar: determines if colorbar will be visible. Only applies if values in the index column are numeric. :param (bool) reverse_colors: reverses the order of selected colors :param (str) title: the title of the chart :param (float) bar_width: the width of the horizontal bars in the plot :param (bool) showgrid_x: show/hide the x-axis grid :param (bool) showgrid_y: show/hide the y-axis grid :param (float) height: the height of the chart :param (float) width: the width of the chart Example 1: Simple Gantt Chart ``` import plotly.plotly as py from plotly.figure_factory import create_gantt # Make data for chart df = [dict(Task="Job A", Start='2009-01-01', Finish='2009-02-30'), dict(Task="Job B", Start='2009-03-05', Finish='2009-04-15'), dict(Task="Job C", Start='2009-02-20', Finish='2009-05-30')] # Create a figure fig = create_gantt(df) # Plot the data py.iplot(fig, filename='Simple Gantt Chart', world_readable=True) ``` Example 2: Index by Column with Numerical Entries ``` import plotly.plotly as py from plotly.figure_factory import create_gantt # Make data for chart df = [dict(Task="Job A", Start='2009-01-01', Finish='2009-02-30', Complete=10), dict(Task="Job B", Start='2009-03-05', Finish='2009-04-15', Complete=60), dict(Task="Job C", Start='2009-02-20', Finish='2009-05-30', Complete=95)] # Create a figure with Plotly colorscale fig = create_gantt(df, colors='Blues', index_col='Complete', show_colorbar=True, bar_width=0.5, showgrid_x=True, showgrid_y=True) # Plot the data py.iplot(fig, filename='Numerical Entries', world_readable=True) ``` Example 3: Index by Column with String Entries ``` import plotly.plotly as py from plotly.figure_factory import create_gantt # Make data for chart df = [dict(Task="Job A", Start='2009-01-01', Finish='2009-02-30', Resource='Apple'), dict(Task="Job B", Start='2009-03-05', Finish='2009-04-15', Resource='Grape'), dict(Task="Job C", Start='2009-02-20', Finish='2009-05-30', Resource='Banana')] # Create a figure with Plotly colorscale fig = create_gantt(df, colors=['rgb(200, 50, 25)', (1, 0, 1), '#6c4774'], index_col='Resource', reverse_colors=True, show_colorbar=True) # Plot the data py.iplot(fig, filename='String Entries', world_readable=True) ``` Example 4: Use a dictionary for colors ``` import plotly.plotly as py from plotly.figure_factory import create_gantt # Make data for chart df = [dict(Task="Job A", Start='2009-01-01', Finish='2009-02-30', Resource='Apple'), dict(Task="Job B", Start='2009-03-05', Finish='2009-04-15', Resource='Grape'), dict(Task="Job C", Start='2009-02-20', Finish='2009-05-30', Resource='Banana')] # Make a dictionary of colors colors = {'Apple': 'rgb(255, 0, 0)', 'Grape': 'rgb(170, 14, 200)', 'Banana': (1, 1, 0.2)} # Create a figure with Plotly colorscale fig = create_gantt(df, colors=colors, index_col='Resource', show_colorbar=True) # Plot the data py.iplot(fig, filename='dictioanry colors', world_readable=True) ``` Example 5: Use a pandas dataframe ``` import plotly.plotly as py from plotly.figure_factory import create_gantt import pandas as pd # Make data as a dataframe df = pd.DataFrame([['Run', '2010-01-01', '2011-02-02', 10], ['Fast', '2011-01-01', '2012-06-05', 55], ['Eat', '2012-01-05', '2013-07-05', 94]], columns=['Task', 'Start', 'Finish', 'Complete']) # Create a figure with Plotly colorscale fig = create_gantt(df, colors='Blues', index_col='Complete', show_colorbar=True, bar_width=0.5, showgrid_x=True, showgrid_y=True) # Plot the data py.iplot(fig, filename='data with dataframe', world_readable=True) ``` """ # validate gantt input data chart = validate_gantt(df) if index_col: if index_col not in chart[0]: raise exceptions.PlotlyError( "In order to use an indexing column and assign colors to " "the values of the index, you must choose an actual " "column name in the dataframe or key if a list of " "dictionaries is being used.") # validate gantt index column index_list = [] for dictionary in chart: index_list.append(dictionary[index_col]) utils.validate_index(index_list) # Validate colors if isinstance(colors, dict): colors = clrs.validate_colors_dict(colors, 'rgb') else: colors = clrs.validate_colors(colors, 'rgb') if reverse_colors is True: colors.reverse() if not index_col: if isinstance(colors, dict): raise exceptions.PlotlyError( "Error. You have set colors to a dictionary but have not " "picked an index. An index is required if you are " "assigning colors to particular values in a dictioanry." ) fig = gantt( chart, colors, title, bar_width, showgrid_x, showgrid_y, height, width, tasks=None, task_names=None, data=None, group_tasks=group_tasks ) return fig else: if not isinstance(colors, dict): fig = gantt_colorscale( chart, colors, title, index_col, show_colorbar, bar_width, showgrid_x, showgrid_y, height, width, tasks=None, task_names=None, data=None, group_tasks=group_tasks ) return fig else: fig = gantt_dict( chart, colors, title, index_col, show_colorbar, bar_width, showgrid_x, showgrid_y, height, width, tasks=None, task_names=None, data=None, group_tasks=group_tasks ) return fig
def create_trisurf(x, y, z, simplices, colormap=None, show_colorbar=True, scale=None, color_func=None, title='Trisurf Plot', plot_edges=True, showbackground=True, backgroundcolor='rgb(230, 230, 230)', gridcolor='rgb(255, 255, 255)', zerolinecolor='rgb(255, 255, 255)', edges_color='rgb(50, 50, 50)', height=800, width=800, aspectratio=None): """ Returns figure for a triangulated surface plot :param (array) x: data values of x in a 1D array :param (array) y: data values of y in a 1D array :param (array) z: data values of z in a 1D array :param (array) simplices: an array of shape (ntri, 3) where ntri is the number of triangles in the triangularization. Each row of the array contains the indicies of the verticies of each triangle :param (str|tuple|list) colormap: either a plotly scale name, an rgb or hex color, a color tuple or a list of colors. An rgb color is of the form 'rgb(x, y, z)' where x, y, z belong to the interval [0, 255] and a color tuple is a tuple of the form (a, b, c) where a, b and c belong to [0, 1]. If colormap is a list, it must contain the valid color types aforementioned as its members :param (bool) show_colorbar: determines if colorbar is visible :param (list|array) scale: sets the scale values to be used if a non- linearly interpolated colormap is desired. If left as None, a linear interpolation between the colors will be excecuted :param (function|list) color_func: The parameter that determines the coloring of the surface. Takes either a function with 3 arguments x, y, z or a list/array of color values the same length as simplices. If None, coloring will only depend on the z axis :param (str) title: title of the plot :param (bool) plot_edges: determines if the triangles on the trisurf are visible :param (bool) showbackground: makes background in plot visible :param (str) backgroundcolor: color of background. Takes a string of the form 'rgb(x,y,z)' x,y,z are between 0 and 255 inclusive :param (str) gridcolor: color of the gridlines besides the axes. Takes a string of the form 'rgb(x,y,z)' x,y,z are between 0 and 255 inclusive :param (str) zerolinecolor: color of the axes. Takes a string of the form 'rgb(x,y,z)' x,y,z are between 0 and 255 inclusive :param (str) edges_color: color of the edges, if plot_edges is True :param (int|float) height: the height of the plot (in pixels) :param (int|float) width: the width of the plot (in pixels) :param (dict) aspectratio: a dictionary of the aspect ratio values for the x, y and z axes. 'x', 'y' and 'z' take (int|float) values Example 1: Sphere ``` # Necessary Imports for Trisurf import numpy as np from scipy.spatial import Delaunay import plotly.plotly as py from plotly.figure_factory import create_trisurf from plotly.graph_objs import graph_objs # Make data for plot u = np.linspace(0, 2*np.pi, 20) v = np.linspace(0, np.pi, 20) u,v = np.meshgrid(u,v) u = u.flatten() v = v.flatten() x = np.sin(v)*np.cos(u) y = np.sin(v)*np.sin(u) z = np.cos(v) points2D = np.vstack([u,v]).T tri = Delaunay(points2D) simplices = tri.simplices # Create a figure fig1 = create_trisurf(x=x, y=y, z=z, colormap="Rainbow", simplices=simplices) # Plot the data py.iplot(fig1, filename='trisurf-plot-sphere') ``` Example 2: Torus ``` # Necessary Imports for Trisurf import numpy as np from scipy.spatial import Delaunay import plotly.plotly as py from plotly.figure_factory import create_trisurf from plotly.graph_objs import graph_objs # Make data for plot u = np.linspace(0, 2*np.pi, 20) v = np.linspace(0, 2*np.pi, 20) u,v = np.meshgrid(u,v) u = u.flatten() v = v.flatten() x = (3 + (np.cos(v)))*np.cos(u) y = (3 + (np.cos(v)))*np.sin(u) z = np.sin(v) points2D = np.vstack([u,v]).T tri = Delaunay(points2D) simplices = tri.simplices # Create a figure fig1 = create_trisurf(x=x, y=y, z=z, colormap="Viridis", simplices=simplices) # Plot the data py.iplot(fig1, filename='trisurf-plot-torus') ``` Example 3: Mobius Band ``` # Necessary Imports for Trisurf import numpy as np from scipy.spatial import Delaunay import plotly.plotly as py from plotly.figure_factory import create_trisurf from plotly.graph_objs import graph_objs # Make data for plot u = np.linspace(0, 2*np.pi, 24) v = np.linspace(-1, 1, 8) u,v = np.meshgrid(u,v) u = u.flatten() v = v.flatten() tp = 1 + 0.5*v*np.cos(u/2.) x = tp*np.cos(u) y = tp*np.sin(u) z = 0.5*v*np.sin(u/2.) points2D = np.vstack([u,v]).T tri = Delaunay(points2D) simplices = tri.simplices # Create a figure fig1 = create_trisurf(x=x, y=y, z=z, colormap=[(0.2, 0.4, 0.6), (1, 1, 1)], simplices=simplices) # Plot the data py.iplot(fig1, filename='trisurf-plot-mobius-band') ``` Example 4: Using a Custom Colormap Function with Light Cone ``` # Necessary Imports for Trisurf import numpy as np from scipy.spatial import Delaunay import plotly.plotly as py from plotly.figure_factory import create_trisurf from plotly.graph_objs import graph_objs # Make data for plot u=np.linspace(-np.pi, np.pi, 30) v=np.linspace(-np.pi, np.pi, 30) u,v=np.meshgrid(u,v) u=u.flatten() v=v.flatten() x = u y = u*np.cos(v) z = u*np.sin(v) points2D = np.vstack([u,v]).T tri = Delaunay(points2D) simplices = tri.simplices # Define distance function def dist_origin(x, y, z): return np.sqrt((1.0 * x)**2 + (1.0 * y)**2 + (1.0 * z)**2) # Create a figure fig1 = create_trisurf(x=x, y=y, z=z, colormap=['#FFFFFF', '#E4FFFE', '#A4F6F9', '#FF99FE', '#BA52ED'], scale=[0, 0.6, 0.71, 0.89, 1], simplices=simplices, color_func=dist_origin) # Plot the data py.iplot(fig1, filename='trisurf-plot-custom-coloring') ``` Example 5: Enter color_func as a list of colors ``` # Necessary Imports for Trisurf import numpy as np from scipy.spatial import Delaunay import random import plotly.plotly as py from plotly.figure_factory import create_trisurf from plotly.graph_objs import graph_objs # Make data for plot u=np.linspace(-np.pi, np.pi, 30) v=np.linspace(-np.pi, np.pi, 30) u,v=np.meshgrid(u,v) u=u.flatten() v=v.flatten() x = u y = u*np.cos(v) z = u*np.sin(v) points2D = np.vstack([u,v]).T tri = Delaunay(points2D) simplices = tri.simplices colors = [] color_choices = ['rgb(0, 0, 0)', '#6c4774', '#d6c7dd'] for index in range(len(simplices)): colors.append(random.choice(color_choices)) fig = create_trisurf( x, y, z, simplices, color_func=colors, show_colorbar=True, edges_color='rgb(2, 85, 180)', title=' Modern Art' ) py.iplot(fig, filename="trisurf-plot-modern-art") ``` """ if aspectratio is None: aspectratio = {'x': 1, 'y': 1, 'z': 1} # Validate colormap colors.validate_colors(colormap) colormap, scale = colors.convert_colors_to_same_type( colormap, colortype='tuple', return_default_colors=True, scale=scale) data1 = trisurf(x, y, z, simplices, show_colorbar=show_colorbar, color_func=color_func, colormap=colormap, scale=scale, edges_color=edges_color, plot_edges=plot_edges) axis = dict( showbackground=showbackground, backgroundcolor=backgroundcolor, gridcolor=gridcolor, zerolinecolor=zerolinecolor, ) layout = graph_objs.Layout(title=title, width=width, height=height, scene=graph_objs.Scene( xaxis=graph_objs.XAxis(axis), yaxis=graph_objs.YAxis(axis), zaxis=graph_objs.ZAxis(axis), aspectratio=dict(x=aspectratio['x'], y=aspectratio['y'], z=aspectratio['z']), )) return graph_objs.Figure(data=data1, layout=layout)
def create_2d_density(x, y, colorscale='Earth', ncontours=20, hist_color=(0, 0, 0.5), point_color=(0, 0, 0.5), point_size=2, title='2D Density Plot', height=600, width=600): """ Returns figure for a 2D density plot :param (list|array) x: x-axis data for plot generation :param (list|array) y: y-axis data for plot generation :param (str|tuple|list) colorscale: either a plotly scale name, an rgb or hex color, a color tuple or a list or tuple of colors. An rgb color is of the form 'rgb(x, y, z)' where x, y, z belong to the interval [0, 255] and a color tuple is a tuple of the form (a, b, c) where a, b and c belong to [0, 1]. If colormap is a list, it must contain the valid color types aforementioned as its members. :param (int) ncontours: the number of 2D contours to draw on the plot :param (str) hist_color: the color of the plotted histograms :param (str) point_color: the color of the scatter points :param (str) point_size: the color of the scatter points :param (str) title: set the title for the plot :param (float) height: the height of the chart :param (float) width: the width of the chart Example 1: Simple 2D Density Plot ``` import plotly.plotly as py from plotly.figure_factory create_2d_density import numpy as np # Make data points t = np.linspace(-1,1.2,2000) x = (t**3)+(0.3*np.random.randn(2000)) y = (t**6)+(0.3*np.random.randn(2000)) # Create a figure fig = create_2D_density(x, y) # Plot the data py.iplot(fig, filename='simple-2d-density') ``` Example 2: Using Parameters ``` import plotly.plotly as py from plotly.figure_factory create_2d_density import numpy as np # Make data points t = np.linspace(-1,1.2,2000) x = (t**3)+(0.3*np.random.randn(2000)) y = (t**6)+(0.3*np.random.randn(2000)) # Create custom colorscale colorscale = ['#7A4579', '#D56073', 'rgb(236,158,105)', (1, 1, 0.2), (0.98,0.98,0.98)] # Create a figure fig = create_2D_density( x, y, colorscale=colorscale, hist_color='rgb(255, 237, 222)', point_size=3) # Plot the data py.iplot(fig, filename='use-parameters') ``` """ # validate x and y are filled with numbers only for array in [x, y]: if not all(isinstance(element, Number) for element in array): raise exceptions.PlotlyError( "All elements of your 'x' and 'y' lists must be numbers." ) # validate x and y are the same length if len(x) != len(y): raise exceptions.PlotlyError( "Both lists 'x' and 'y' must be the same length." ) colorscale = clrs.validate_colors(colorscale, 'rgb') colorscale = make_linear_colorscale(colorscale) # validate hist_color and point_color hist_color = clrs.validate_colors(hist_color, 'rgb') point_color = clrs.validate_colors(point_color, 'rgb') trace1 = graph_objs.Scatter( x=x, y=y, mode='markers', name='points', marker=dict( color=point_color[0], size=point_size, opacity=0.4 ) ) trace2 = graph_objs.Histogram2dContour( x=x, y=y, name='density', ncontours=ncontours, colorscale=colorscale, reversescale=True, showscale=False ) trace3 = graph_objs.Histogram( x=x, name='x density', marker=dict(color=hist_color[0]), yaxis='y2' ) trace4 = graph_objs.Histogram( y=y, name='y density', marker=dict(color=hist_color[0]), xaxis='x2' ) data = [trace1, trace2, trace3, trace4] layout = graph_objs.Layout( showlegend=False, autosize=False, title=title, height=height, width=width, xaxis=dict( domain=[0, 0.85], showgrid=False, zeroline=False ), yaxis=dict( domain=[0, 0.85], showgrid=False, zeroline=False ), margin=dict( t=50 ), hovermode='closest', bargap=0, xaxis2=dict( domain=[0.85, 1], showgrid=False, zeroline=False ), yaxis2=dict( domain=[0.85, 1], showgrid=False, zeroline=False ) ) fig = graph_objs.Figure(data=data, layout=layout) return fig
def create_violin(data, data_header=None, group_header=None, colors=None, use_colorscale=False, group_stats=None, rugplot=True, sort=False, height=450, width=600, title='Violin and Rug Plot'): """ Returns figure for a violin plot :param (list|array) data: accepts either a list of numerical values, a list of dictionaries all with identical keys and at least one column of numeric values, or a pandas dataframe with at least one column of numbers. :param (str) data_header: the header of the data column to be used from an inputted pandas dataframe. Not applicable if 'data' is a list of numeric values. :param (str) group_header: applicable if grouping data by a variable. 'group_header' must be set to the name of the grouping variable. :param (str|tuple|list|dict) colors: either a plotly scale name, an rgb or hex color, a color tuple, a list of colors or a dictionary. An rgb color is of the form 'rgb(x, y, z)' where x, y and z belong to the interval [0, 255] and a color tuple is a tuple of the form (a, b, c) where a, b and c belong to [0, 1]. If colors is a list, it must contain valid color types as its members. :param (bool) use_colorscale: only applicable if grouping by another variable. Will implement a colorscale based on the first 2 colors of param colors. This means colors must be a list with at least 2 colors in it (Plotly colorscales are accepted since they map to a list of two rgb colors). Default = False :param (dict) group_stats: a dictioanry where each key is a unique value from the group_header column in data. Each value must be a number and will be used to color the violin plots if a colorscale is being used. :param (bool) rugplot: determines if a rugplot is draw on violin plot. Default = True :param (bool) sort: determines if violins are sorted alphabetically (True) or by input order (False). Default = False :param (float) height: the height of the violin plot. :param (float) width: the width of the violin plot. :param (str) title: the title of the violin plot. Example 1: Single Violin Plot ``` import plotly.plotly as py from plotly.figure_factory import create_violin from plotly.graph_objs import graph_objs import numpy as np from scipy import stats # create list of random values data_list = np.random.randn(100) data_list.tolist() # create violin fig fig = create_violin(data_list, colors='#604d9e') # plot py.iplot(fig, filename='Violin Plot') ``` Example 2: Multiple Violin Plots with Qualitative Coloring ``` import plotly.plotly as py from plotly.figure_factory import create_violin from plotly.graph_objs import graph_objs import numpy as np import pandas as pd from scipy import stats # create dataframe np.random.seed(619517) Nr=250 y = np.random.randn(Nr) gr = np.random.choice(list("ABCDE"), Nr) norm_params=[(0, 1.2), (0.7, 1), (-0.5, 1.4), (0.3, 1), (0.8, 0.9)] for i, letter in enumerate("ABCDE"): y[gr == letter] *=norm_params[i][1]+ norm_params[i][0] df = pd.DataFrame(dict(Score=y, Group=gr)) # create violin fig fig = create_violin(df, data_header='Score', group_header='Group', sort=True, height=600, width=1000) # plot py.iplot(fig, filename='Violin Plot with Coloring') ``` Example 3: Violin Plots with Colorscale ``` import plotly.plotly as py from plotly.figure_factory import create_violin from plotly.graph_objs import graph_objs import numpy as np import pandas as pd from scipy import stats # create dataframe np.random.seed(619517) Nr=250 y = np.random.randn(Nr) gr = np.random.choice(list("ABCDE"), Nr) norm_params=[(0, 1.2), (0.7, 1), (-0.5, 1.4), (0.3, 1), (0.8, 0.9)] for i, letter in enumerate("ABCDE"): y[gr == letter] *=norm_params[i][1]+ norm_params[i][0] df = pd.DataFrame(dict(Score=y, Group=gr)) # define header params data_header = 'Score' group_header = 'Group' # make groupby object with pandas group_stats = {} groupby_data = df.groupby([group_header]) for group in "ABCDE": data_from_group = groupby_data.get_group(group)[data_header] # take a stat of the grouped data stat = np.median(data_from_group) # add to dictionary group_stats[group] = stat # create violin fig fig = create_violin(df, data_header='Score', group_header='Group', height=600, width=1000, use_colorscale=True, group_stats=group_stats) # plot py.iplot(fig, filename='Violin Plot with Colorscale') ``` """ # Validate colors if isinstance(colors, dict): valid_colors = clrs.validate_colors_dict(colors, 'rgb') else: valid_colors = clrs.validate_colors(colors, 'rgb') # validate data and choose plot type if group_header is None: if isinstance(data, list): if len(data) <= 0: raise exceptions.PlotlyError("If data is a list, it must be " "nonempty and contain either " "numbers or dictionaries.") if not all(isinstance(element, Number) for element in data): raise exceptions.PlotlyError("If data is a list, it must " "contain only numbers.") if pd and isinstance(data, pd.core.frame.DataFrame): if data_header is None: raise exceptions.PlotlyError("data_header must be the " "column name with the " "desired numeric data for " "the violin plot.") data = data[data_header].values.tolist() # call the plotting functions plot_data, plot_xrange = violinplot(data, fillcolor=valid_colors[0], rugplot=rugplot) layout = graph_objs.Layout( title=title, autosize=False, font=graph_objs.layout.Font(size=11), height=height, showlegend=False, width=width, xaxis=make_XAxis('', plot_xrange), yaxis=make_YAxis(''), hovermode='closest' ) layout['yaxis'].update(dict(showline=False, showticklabels=False, ticks='')) fig = graph_objs.Figure(data=plot_data, layout=layout) return fig else: if not isinstance(data, pd.core.frame.DataFrame): raise exceptions.PlotlyError("Error. You must use a pandas " "DataFrame if you are using a " "group header.") if data_header is None: raise exceptions.PlotlyError("data_header must be the column " "name with the desired numeric " "data for the violin plot.") if use_colorscale is False: if isinstance(valid_colors, dict): # validate colors dict choice below fig = violin_dict( data, data_header, group_header, valid_colors, use_colorscale, group_stats, rugplot, sort, height, width, title ) return fig else: fig = violin_no_colorscale( data, data_header, group_header, valid_colors, use_colorscale, group_stats, rugplot, sort, height, width, title ) return fig else: if isinstance(valid_colors, dict): raise exceptions.PlotlyError("The colors param cannot be " "a dictionary if you are " "using a colorscale.") if len(valid_colors) < 2: raise exceptions.PlotlyError("colors must be a list with " "at least 2 colors. A " "Plotly scale is allowed.") if not isinstance(group_stats, dict): raise exceptions.PlotlyError("Your group_stats param " "must be a dictionary.") fig = violin_colorscale( data, data_header, group_header, valid_colors, use_colorscale, group_stats, rugplot, sort, height, width, title ) return fig