# Plotting a histogram from pre-counted data in Matplotlib

I'd like to use Matplotlib to plot a histogram over data that's been pre-counted. For example, say I have the raw data

``` data = [1, 2, 2, 3, 4, 5, 5, 5, 5, 6, 10] ```

Given this data, I can use

``` pylab.hist(data, bins=[...]) ```

to plot a histogram.

In my case, the data has been pre-counted and is represented as a dictionary:

``` counted_data = {1: 1, 2: 2, 3: 1, 4: 1, 5: 4, 6: 1, 10: 1} ```

Ideally, I'd like to pass this pre-counted data to a histogram function that lets me control the bin widths, plot range, etc, as if I had passed it the raw data. As a workaround, I'm expanding my counts into the raw data:

``` data = list(chain.from_iterable(repeat(value, count) for (value, count) in counted_data.iteritems())) ```

This is inefficient when `counted_data` contains counts for millions of data points.

Is there an easier way to use Matplotlib to produce a histogram from my pre-counted data?

Alternatively, if it's easiest to just bar-plot data that's been pre-binned, is there a convenience method to "roll-up" my per-item counts into binned counts?

-

You can use the `weights` keyword argument to `np.histgram` (which `plt.hist` calls underneath)

``````val, weight = zip(*[(k, v) for k,v in counted_data.items()])
plt.hist(val, weights=weight)
``````

Assuming you only have integers as the keys, you can also use `bar` directly:

``````min_bin = np.min(counted_data.keys())
max_bin = np.max(counted_data.keys())

bins = np.arange(min_bin, max_bin + 1)
vals = np.zeros(max_bin - min_bin + 1)

for k,v in counted_data.items():
vals[k - min_bin] = v

plt.bar(bins, vals, ...)
``````

where ... is what ever arguments you want to pass to `bar` (doc)

If you want to re-bin your data see Histogram with separate list denoting frequency

-
Thanks for the pointer to the `weights` option; I had overlooked it, but it solves my problem perfectly (see my answer). –  Josh Rosen Oct 6 '13 at 22:27
I hadn't made that connection (got blinded by directly using `bar`). Edited to reflect your comment. –  tcaswell Oct 6 '13 at 22:39
I used pyplot.hist's `weights` option to weight each key by its value, producing the histogram that I wanted:
``` pylab.hist(counted_data.keys(), weights=counted_data.values(), bins=range(50)) ```
This allows me to rely on `hist` to re-bin my data.