So, you start with a list of dates that you want to histogram:

```
from datetime import datetime
list_of_datetime_datetime_objects = [datetime(2010, 6, 14), datetime(1974, 2, 8), datetime(1974, 2, 8)]
```

Matplotlib allows you to convert a `datetime.datetime`

object into a simple number, as David mentioned:

```
from matplotlib.dates import date2num, num2date
num_dates = [date2num(d) for d in list_of_datetime_datetime_objects]
```

You can then calculate the histogram of your data:

```
import numpy
histo = numpy.histogram(num_dates) # Look at the doc for more options (number of bins, etc.)
```

Since you want the *cumulative* histogram, you add individual counts together:

```
cumulative_histo_counts = histo[0].cumsum()
```

The histogram plot will need the bin size:

```
from matplotlib import pyplot
```

You can then plot the cumulative histogram:

```
bin_size = histo[1][1]-histo[1][0]
pyplot.bar(histo[1][:-1], cumulative_histo_counts, width=bin_size)
```

Alternatively, you might want a curve instead of an histogram:

```
# pyplot.plot(histo[1][1:], cumulative_histo_counts)
```

If you want dates on the x axis instead of numbers, you can convert the numbers back to dates and ask matplotlib to use date strings as ticks, instead of numbers:

```
from matplotlib import ticker
# The format for the x axis is set to the chosen string, as defined from a numerical date:
pyplot.gca().xaxis.set_major_formatter(ticker.FuncFormatter(lambda numdate, _: num2date(numdate).strftime('%Y-%d-%m')))
# The formatting proper is done:
pyplot.gcf().autofmt_xdate()
# To show the result:
pyplot.show() # or draw(), if you don't want to block
```

Here, `gca()`

and `gcf()`

return the current axis and figure, respectively.

Of course, you can adapt the way you display dates, in the call to `strftime()`

above.

To go beyond your question, I would like to mention that Matplotlib's gallery is a very good source of information: you can generally quickly find what you need by just finding images that look like what you're trying to do, and looking at their source code.