dataset: https://github.com/rashida048/Datasets/blob/master/StudentsPerformance.csv

I am trying to implement the hovertool function to display the value for the "Total" (sum of the 3 score columns) on each outlier. but when I hover over each value only ??? is displayed. I have also tried moving "source" inside the body of the function, as well as defining '@tot' in the hovertool as '@df.Total' and vice versa but still no success. where have I gone wrong? image attached.

enter image description here


def box_plot(df, vals, label, ylabel=None,xlabel=None,title=None):
    # Group Data frame
    df_gb = df.groupby(label)
    # Get the categories
    cats = list(df_gb.groups.keys())

    # Compute quartiles for each group
    q1 = df_gb[vals].quantile(q=0.25)
    q2 = df_gb[vals].quantile(q=0.5)
    q3 = df_gb[vals].quantile(q=0.75)
    # Compute interquartile region and upper and lower bounds for outliers
    iqr = q3 - q1
    upper_cutoff = q3 + 1.5*iqr
    lower_cutoff = q1 - 1.5*iqr

    # Find the outliers for each category
    def outliers(group):
        cat = group.name
        outlier_inds = (group[vals] > upper_cutoff[cat]) \
                                     | (group[vals] < lower_cutoff[cat])
        return group[vals][outlier_inds]

    # Apply outlier finder
    out = df_gb.apply(outliers).dropna()

    # Points of outliers for plotting
    outx = []
    outy = []
    for cat in cats:
        # only add outliers if they exist
        if cat in out and not out[cat].empty:
            for value in out[cat]:
    # If outliers, shrink whiskers to smallest and largest non-outlier
    qmin = df_gb[vals].min()
    qmax = df_gb[vals].max()
    upper = [min([x,y]) for (x,y) in zip(qmax, upper_cutoff)]
    lower = [max([x,y]) for (x,y) in zip(qmin, lower_cutoff)]

    cats = [str(i) for i in cats]
# Build figure
    p = figure(sizing_mode='stretch_width', x_range=cats,height=300,toolbar_location=None)
    p.xgrid.grid_line_color = None
    p.ygrid.grid_line_width = 2
    p.yaxis.axis_label = ylabel
    p.xaxis.axis_label = xlabel
    p.title.align = 'center'
    # stems
    p.segment(cats, upper, cats, q3, line_width=2, line_color="black")
    p.segment(cats, lower, cats, q1, line_width=2, line_color="black")

    # boxes
    p.rect(cats, (q3 + q1)/2, 0.5, q3 - q1, fill_color=['#a50f15', '#de2d26', '#fb6a4a', '#fcae91', '#fee5d9'], 
           alpha=0.7, line_width=2, line_color="black")

    # median (almost-0 height rects simpler than segments)
    p.rect(cats, q2, 0.5, 0.01, line_color="black", line_width=2)

    # whiskers (almost-0 height rects simpler than segments)
    p.rect(cats, lower, 0.2, 0.01, line_color="black")
    p.rect(cats, upper, 0.2, 0.01, line_color="black")

    # outliers
    p.circle(outx, outy, size=6, color="black")

    return p

p = box_plot(df, 'Total', 'race/ethnicity', ylabel='Total spread',xlabel='Race/Ethnicity',title='BoxPlot')
the error i get after implementing your changes @mosc

RuntimeError                              Traceback (most recent call last)
Input In [18], in <cell line: 86>()
     82     p.add_tools(HoverTool(tooltips=[('Total','@tot')]))
     84     return p
---> 86 p = box_plot(df, 'Total', 'race/ethnicity', ylabel='Total spread',xlabel='Race/Ethnicity',title='BoxPlot')
     87 show(p)

Input In [18], in box_plot(df, vals, label, ylabel, xlabel, title)
     77 p.rect(cats, upper, 0.2, 0.01, line_color="black")
     79 # outliers
---> 80 p.circle(outx, outy, size=6, color="black", source=outliers_source)
     82 p.add_tools(HoverTool(tooltips=[('Total','@tot')]))
     84 return p

File ~\Anaconda3\lib\site-packages\bokeh\plotting\_decorators.py:86, in glyph_method.<locals>.decorator.<locals>.wrapped(self, *args, **kwargs)
     84 if self.coordinates is not None:
     85     kwargs.setdefault("coordinates", self.coordinates)
---> 86 return create_renderer(glyphclass, self.plot, **kwargs)

File ~\Anaconda3\lib\site-packages\bokeh\plotting\_renderer.py:96, in create_renderer(glyphclass, plot, **kwargs)
     94 incompatible_literal_spec_values += _process_sequence_literals(glyphclass, glyph_visuals, source, is_user_source)
     95 if incompatible_literal_spec_values:
---> 96     raise RuntimeError(_GLYPH_SOURCE_MSG % nice_join(incompatible_literal_spec_values, conjuction="and"))
     98 # handle the nonselection glyph, we always set one
     99 nonselection_visuals = pop_visuals(glyphclass, kwargs, prefix='nonselection_', defaults=glyph_visuals, override_defaults={'alpha':0.1})


Expected x and y to reference fields in the supplied data source.

When a 'source' argument is passed to a glyph method, values that are sequences
(like lists or arrays) must come from references to data columns in the source.

For instance, as an example:

    source = ColumnDataSource(data=dict(x=a_list, y=an_array))

    p.circle(x='x', y='y', source=source, ...) # pass column names and a source

Alternatively, *all* data sequences may be provided as literals as long as a
source is *not* provided:

    p.circle(x=a_list, y=an_array, ...)  # pass actual sequences and no source

1 Answer 1


The problem is, that you never pass a source to the figure object, but the HoverTool is looking for data in the tot column. There is none, and every time bokeh doesn't find any data, it shows ???.

See the minimal example below, how it could work.

from bokeh.plotting import figure, show, output_notebook
from bokeh.models import HoverTool, ColumnDataSource

source = ColumnDataSource(dict(

p = figure(width=300, height=300)
p.circle(x='x', y='y', source=source)

simple HoverTool

Back to your code and how to make a HoverTool work. Since you only want a hover information for the outliers, you can create a outliers_source right befor you call p.figure().

outliers_source= ColumnDataSource(dict(

and then change the line below:

# old
# p.circle(outx, outy, size=6, color="black")
p.circle('outx', 'outy', size=6, color="black", source=outliers_source)

The changes maybe look quite small, but the information for the circles are now coming from a complete different source. Internally a lot has changed.

Now your HoverTool should show some numbers. You have to implement the logic of your information, because I didn't understand it.

  • thank you for the feedback, i have implemented the changes advised but i have received a runtime error. specified above May 5 at 10:57
  • Did you change outx to "outx"? This is a shortcut for x="outx". I think this is missing, because of this line in your error message: p.circle(outx, outy, size=6, color="black", source=outliers_source).
    – mosc9575
    May 5 at 11:01
  • yes i made the changes however the hover details are incorrect: i.stack.imgur.com/9PDUg.png May 5 at 12:05
  • Yes of course. I wrote in the last sentence of my answer, that I don't understand which values you want to show. I only explained how to activate the HoverTool. This time you have to figure it out by your own.
    – mosc9575
    May 5 at 12:48
  • from the dataset linked above in the initial question, I am trying to display the values for a column I created as "Total" which is the sum of the other 3 "score" columns, and this "total" outlier is what I am trying to implement on the hover tool. this was all mentioned in the initial question May 5 at 13:05

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