# How to create broken vertical bar graphs in matpltolib?

I'd like to create a broken vertical bar graph in matplotlib.

To give a better idea of the result I'm after, I put an example together with Balsamiq:

I've had a look at the matpltolib docs and examples but I can't seem to find the appropriate chart type to use. The only thing that looks remotely similar is the boxplot but this isn't what I need.

• I'd rather not have to draw the graph manually with graphics primitive.
• I can massage the data into shape as needed.

PS: If you know of a good library that does this in another language (javascript, for example), I'd be grateful for the pointer too.

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It sounds like you have a few series of start datetimes and stop datetimes.

In that case, just use `bar` to plot things, and tell matplotlib that the axes are dates.

To get the times, you can exploit the fact that matplotlib's internal date format is a float where each integer corresponds to 0:00 of that day. Therefore, to get the times, we can just do `times = dates % 1`.

As an example (90% of this is generating and manipulating dates. The plotting is just a single call to `bar`.):

``````import datetime as dt
import numpy as np
import matplotlib.pyplot as plt
import matplotlib as mpl

def main():
start, stop = dt.datetime(2012,3,1), dt.datetime(2012,4,1)

fig, ax = plt.subplots()
for color in ['blue', 'red', 'green']:
starts, stops = generate_data(start, stop)
plot_durations(starts, stops, ax, facecolor=color, alpha=0.5)
plt.show()

def plot_durations(starts, stops, ax=None, **kwargs):
if ax is None:
ax = plt.gca()
# Make the default alignment center, unless specified otherwise
kwargs['align'] = kwargs.get('align', 'center')

# Convert things to matplotlib's internal date format...
starts, stops = mpl.dates.date2num(starts), mpl.dates.date2num(stops)

# Break things into start days and start times
start_times = starts % 1
start_days = starts - start_times
durations = stops - starts
start_times += int(starts[0]) # So that we have a valid date...

# Plot the bars
artist = ax.bar(start_days, durations, bottom=start_times, **kwargs)

# Tell matplotlib to treat the axes as dates...
ax.xaxis_date()
ax.yaxis_date()
ax.figure.autofmt_xdate()
return artist

def generate_data(start, stop):
"""Generate some random data..."""
# Make a series of events 1 day apart
starts = mpl.dates.drange(start, stop, dt.timedelta(days=1))

# Vary the datetimes so that they occur at random times
# Remember, 1.0 is equivalent to 1 day in this case...
starts += np.random.random(starts.size)

# Make some random stopping times...
stops = starts + 0.2 * np.random.random(starts.size)

# Convert back to datetime objects...
return mpl.dates.num2date(starts), mpl.dates.num2date(stops)

if __name__ == '__main__':
main()
``````

On a side note, for events that start on one day and end on the next, this will extend the y-axis into the next day. You can handle it in other ways if you prefer, but I think this is the simplest option.

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That's brilliant Joe! It's exactly what I was looking for and you gave a great code example. Thank you. –  brice Apr 3 '12 at 21:43