I am evaluating Bokeh to see if it is ready for more extensive use. I have plotted two columns of a dataframe (code at the end), "Close" and "Adj Close". enter image description here

I want to put in checkboxes to toggle the display of both the line graphs in the plot. So if the relevant checkbox is unchecked the line does not appear. The Bokeh documentation at http://docs.bokeh.org/en/latest/docs/user_guide/interaction.html does talk about checkbox group but doesn't provide an explicit working example. I would appreciate any help in getting checkboxes working for columns of a dataframe.

import pandas as pd
from bokeh.plotting import figure, output_file, show

IBM = pd.read_csv(


p = figure(width=500, height=250, x_axis_type="datetime")

p.line(IBM['Date'], IBM['Close'], color='navy', alpha=0.5)
p.line(IBM['Date'], IBM['Adj Close'], color='red', alpha=0.5)


3 Answers 3


This is obviously a late reply but I'm currently trying to learn python and bokeh to hack out some sort of data dashboard. I was trying to figure out how the checkboxes worked and I stumbled on your question. This solution only works with bokeh serve . I don't know how to make it work in an HTML output.

I'm only modifying the line visibility and not the source. I didn't try it yet but I'm sure the legends would still show the invisible lines

Apologies for duct tape code.

#-| bokeh serve

import pandas as pd
from bokeh.io import curdoc,output_file, show
from bokeh.layouts import row, widgetbox
from bokeh.plotting import figure
from bokeh.models import ColumnDataSource
from bokeh.models.widgets import *


ticker = TextInput(title='Ticker Symbol',value='IBM')
log = Paragraph(text="""log""",
width=200, height=100)
cb_group = CheckboxButtonGroup(labels=['Close', 'Adj Close'],active=[0,1])


p = figure(title='',width=500, height=250, x_axis_type='datetime')

source = ColumnDataSource({'x': [], 'y1': [],'y2': []})

lineClose=p.line('x','y1',source=source, color='navy', alpha=0.5)
lineAdj=p.line('x','y2',source=source, color='red', alpha=0.5)


#Event handling

def error(msg):

def update_data():
        source.data=({'x': df['Date'], 'y1': df['Close'],'y2': df['Adj Close']})
        error('Error ticker')

def update_plot(new):

    for x in range(0,len(lines)):
        if x in switch:

    error('<CheckboxButtonGroup>.active = '+str(switch))



curdoc().title = 'Bokeh Checkbox Example'

I added the 'Placebo' checkbox to see if I could append to the checkbox group instead of the typical method so I'm sure there's a way to more elegantly and dynamically add checkboxes.

enter image description here


I haven't been able to get the check boxes to work yet, although I wouldn't be surprised if that functionality is coming soon. In the meantime, here is a workaround using the multiselect widget:

from bokeh.io import vform
from bokeh.models import CustomJS, ColumnDataSource, MultiSelect
from bokeh.plotting import figure, output_file, show
import pandas as pd

IBM = pd.read_csv(

source = ColumnDataSource({'x': IBM['Date'], 'y1': IBM['Close'], \
'y2': IBM['Adj Close'], 'y1p': IBM['Close'], 'y2p': IBM['Adj Close']})

p = figure(width=500, height=250, x_axis_type="datetime")

p.line('x', 'y1', source=source, color='navy', alpha=0.5)
p.line('x', 'y2', source=source, color='red', alpha=0.5)

callback = CustomJS(args=dict(source=source), code="""
        var data = source.get('data');
        var f = cb_obj.get('value')
        y1 = data['y1']
        y2 = data['y2']
        y1p = data['y1p']
        y2p = data['y2p']
        if (f == "line2") {
            for (i = 0; i < y1.length; i++) {
                y1[i] = 'nan'
                y2[i] = y2p[i]
        } else if (f == "line1") {
            for (i = 0; i < y2.length; i++) {
                y1[i] = y1p[i]
                y2[i] = 'nan'
        } else if (f == "none") {
            for (i = 0; i < y2.length; i++) {
                y1[i] = 'nan'
                y2[i] = 'nan'
        } else {
            for (i = 0; i < y2.length; i++) {
                y1[i] = y1p[i]
                y2[i] = y2p[i]

multi_select = MultiSelect(title="Lines to plot:", \
value=["line1", "line2", "none"], \
options=["line1", "line2", "none"], callback=callback)
layout = vform(multi_select, p)

The output looks like this: enter image description here

  • Thanks for the example. I can roughly see how to extend this to a dataframe of arbitrary number of columns. Create a list of generated id strings for the ColumnDataSource. Then do a string.format() to plug in those strings in the CustomJS which also needs to be expanded. Looking at the big picture, it seems that Bokeh lacks quite a few functionality of Plotly but even here, there are a few things missing. The Python-Javascript interface is problematic. I am tempted to look into pure JS solutions that feed off JSON files generated by Python.
    – Spinor8
    Mar 22, 2016 at 3:39
  • 1
    Yeah, this answer does not scale very elegantly for larger numbers of lines. Bigger picture, I agree that so far bokeh seems a bit limited, but I've only been playing with it for a little while, so I'm hoping it improves over time. I think developing pure JS would definitely pay off for someone doing a lot of this type of thing -- maybe contributing to bokeh?!
    – Peter
    Mar 22, 2016 at 15:39

For people still looking for this. It was solved by mosc9575. Here is a slightly modified version of mosc9575's solution code:

import numpy as np
from bokeh.layouts import column, row
from bokeh.models import CustomJS, Slider, CheckboxGroup
from bokeh.plotting import ColumnDataSource, figure, show

# initial input data
x = np.linspace(0, 10, 500)
y = np.sin(x)
z = np.cos(x)
name_lst = ['sin', 'cos']

# dataframe
source = ColumnDataSource(data=dict(x=x, y=y, z=z))

# initialize figure
fig = figure()
line_renderer = [
    fig.line('x', 'y', source=source, name=name_lst[0]),
    fig.line('x', 'z', source=source, name=name_lst[1])
line_renderer[0].visible = False
# create a slider and a couple of check boxes
freq_slider = Slider(start=0.1, end=10, value=1, step=.1, title="Frequency")
checkbox = CheckboxGroup(
    active=[1, 1], 

# callbacks
callback = CustomJS(args=dict(source=source, freq=freq_slider),
    const data = source.data;
    const k = freq.value;
    const x = data['x'];
    const y = data['y'];
    const z = data['z'];

    for (let i = 0; i < x.length; i++) {
        y[i] = Math.sin(k*x[i]);
        z[i] = Math.cos(k*x[i]);


callback2 = CustomJS(args=dict(lines=line_renderer, checkbox=checkbox),
    lines[0].visible = checkbox.active.includes(0);
    lines[1].visible = checkbox.active.includes(1);

# changes upon clicking and sliding
freq_slider.js_on_change('value', callback)
checkbox.js_on_change('active', callback2)

layout = row(
    column(freq_slider, checkbox)

cos(kx) and a sin(kx) functions can be turned on and off using the checkboxes. With a slider k can be changed. This does not require a bokeh server.

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