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I have a pandas dataframe with several columns and a numeric index which looks like:

import pandas as pd
df = pd.DataFrame({'2007':[10,20,30,40], 
                   '2008':[90,60,70,40], 
                   '2009':[30,60,70,10], 
                   '2010':[80,50,30,10]})
df.index = [0, 0.5, 1, 1.5]

I can plot a specific column of this dataset with bokeh, with the following code:

from bokeh.plotting import figure
from bokeh.models import ColumnDataSource, CustomJS
from bokeh.io import output_notebook, show
from bokeh.models.tools import HoverTool
from bokeh.models import Select
from bokeh.layouts import column

from bokeh.resources import INLINE

output_notebook(INLINE) 

ds = ColumnDataSource(df)
p = figure(toolbar_location="above", 
           x_axis_type="linear") 

p.line(source=ds, y='index', x='2007')

hover = HoverTool(tooltips=[("y", 
                             "@index"),
                           ])

p.add_tools(hover)

show(p)

I am now trying to connect a selector to switch between the data frame's columns using a callback:

handler = CustomJS(args=dict(source=ds), code="""
   // code to update data field
""")

select = Select(title="df-column:", options=list(df.columns))
select.js_on_change('value', handler)

layout = column(select, p)
show(layout)

I don't know how to access and update the values on the X-axis (data field).

Of course, this is due to my lack of understanding of JS and the columndatasource model.

2
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Don't change the data, change the pointers to the data:

import pandas as pd

from bokeh.io import show
from bokeh.layouts import column
from bokeh.models import ColumnDataSource, CustomJS
from bokeh.models import Select
from bokeh.models.tools import HoverTool
from bokeh.plotting import figure

df = pd.DataFrame({'2007': [10, 20, 30, 40],
                   '2008': [90, 60, 70, 40],
                   '2009': [30, 60, 70, 10],
                   '2010': [80, 50, 30, 10]},
                  index=[0, 0.5, 1, 1.5])
ds = ColumnDataSource(df)
p = figure(toolbar_location="above", x_axis_type="linear")
p.add_tools(HoverTool(tooltips=[("y", "@index")]))

line_renderer = p.line('2007', 'index', source=ds)

handler = CustomJS(args=dict(line_renderer=line_renderer), code="""
   line_renderer.glyph.x = {field: cb_obj.value};
""")

select = Select(title="df-column:", options=list(df.columns))
select.js_on_change('value', handler)

show(column(select, p))
| improve this answer | |
  • 1
    Thanks, Eugene! I just saw tour answer while editing my question, I actually found a solution adapting your example here: discourse.bokeh.org/t/update-scatter-plot-x-y-or-both/2511/3 - Your answer works great! – epifanio May 14 at 10:05
  • I am trying to switch to the bokeh server so I am trying to do in python, the equivalent of the JS callback. Do you have any advice? I tried this gist.github.com/epifanio/fb6123ae73dadf10e8fa2ca6a881edd0 but it fails with a ValueError – epifanio Jun 26 at 20:05
  • 1
    In your callback, replace ds.data[new] with dict(field=new). – Eugene Pakhomov Jun 27 at 7:10
  • 1
    Thank you again @eugene! Very appreciated :) - For reference, I updated the gist with the two working version of the same approach (Python+JS callbacks) – epifanio Jun 27 at 7:32

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