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
import datetime as dt
import numpy as np
import matplotlib.pyplot as plt
import matplotlib as mpl
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)
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) # 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...
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__':
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.