So I have a little problem. I have a data set in scipy that is already in the histogram format, so I have the center of the bins and the number of events per bin. How can I now plot is as a histogram. I tried just doing

bins, n=hist()

but it didn't like that. Any recommendations?

import matplotlib.pyplot as plt
import numpy as np

mu, sigma = 100, 15
x = mu + sigma * np.random.randn(10000)
hist, bins = np.histogram(x, bins=50)
width = 0.7 * (bins[1] - bins[0])
center = (bins[:-1] + bins[1:]) / 2
plt.bar(center, hist, align='center', width=width)

enter image description here

The object-oriented interface is also straightforward:

fig, ax = plt.subplots()
ax.bar(center, hist, align='center', width=width)

If you are using custom (non-constant) bins, you can pass compute the widths using np.diff, pass the widths to ax.bar and use ax.set_xticks to label the bin edges:

import matplotlib.pyplot as plt
import numpy as np

mu, sigma = 100, 15
x = mu + sigma * np.random.randn(10000)
bins = [0, 40, 60, 75, 90, 110, 125, 140, 160, 200]
hist, bins = np.histogram(x, bins=bins)
width = np.diff(bins)
center = (bins[:-1] + bins[1:]) / 2

fig, ax = plt.subplots(figsize=(8,3))
ax.bar(center, hist, align='center', width=width)


enter image description here

  • Is there a way to pass the bin edges to the x-axis of the bar graph? – CMCDragonkai Sep 9 '16 at 9:54
  • @CMCDragonkai: plt.bar's width parameter can accept an array-like object (instead of a scalar). So you could use width = np.diff(bins) instead of width = 0.7 * (bins[1] - bins[0]). – unutbu Sep 9 '16 at 14:54
  • But the width setting by itself only sets the width of the bar right? I'm talking about the x-axis labels (that is I want to see the actual bin edges being labels on the x-axis). It should be similar to how plt.hist works. – CMCDragonkai Sep 10 '16 at 12:22
  • 2
    @CMCDragonkai: You could use ax.set_xticks to set the xlabels. I've added an example above to show what I mean. – unutbu Sep 10 '16 at 13:29

If you don't want bars you can plot it like this:

import numpy as np
import matplotlib.pyplot as plt

mu, sigma = 100, 15
x = mu + sigma * np.random.randn(10000)

bins, edges = np.histogram(x, 50, normed=1)
left,right = edges[:-1],edges[1:]
X = np.array([left,right]).T.flatten()
Y = np.array([bins,bins]).T.flatten()



  • 5
    You can also use ax.step. – tacaswell May 4 '14 at 21:29

I know this does not answer your question, but I always end up on this page, when I search for the matplotlib solution to histograms, because the simple histogram_demo was removed from the matplotlib example gallery page.

Here is a solution, which doesn't require numpy to be imported. I only import numpy to generate the data x to be plotted. It relies on the function hist instead of the function bar as in the answer by @unutbu.

import numpy as np
mu, sigma = 100, 15
x = mu + sigma * np.random.randn(10000)

import matplotlib.pyplot as plt
plt.hist(x, bins=50)

enter image description here

Also check out the matplotlib gallery and the matplotlib examples.

  • "Here is a solution, which doesn't require numpy" -- first line of code imports numpy :) – Martin R. Jan 25 '18 at 18:31
  • 1
    @Martin R. That's only to generate the data to be plotted. See lines 4-6. No use of numpy. – tommy.carstensen Jan 25 '18 at 18:50

If you're willing to use pandas:

  • 27
    If you are going to suggest using pandas you should probably include a link to their site and a more through example that explains what is going on. – tacaswell May 4 '14 at 21:28

I think this might be useful for someone.

Numpy's histogram function, to my annoyance (although, I appreciate there is a good reason for it), returns back the edges of each bin, rather than the value of the bin. While, this makes sense for floating-point numbers, which can lie within an interval (i.e. the center value is not super meaningful), this is not the desired output when dealing with discrete values or integers (0, 1, 2, etc). In particular, the length of bins returned from np.histogram is not equal to the length of the counts / density.

To get around this, I used np.digitize to quantize the input, and return a discrete number of bins, along with fraction of counts for each bin. You could easily edit to get the integer number of counts.

def compute_PMF(data)
    import numpy as np
    from collections import Counter
    _, bins = np.histogram(data, bins='auto', range=(data.min(), data.max()), density=False)
    h = Counter(np.digitize(data,bins) - 1)
    weights = np.asarray(list(h.values())) 
    weights = weights / weights.sum()
    values = np.asarray(list(h.keys()))
    return weights, values


[1] https://docs.scipy.org/doc/numpy/reference/generated/numpy.histogram.html

[2] https://docs.scipy.org/doc/numpy/reference/generated/numpy.digitize.html

protected by Sheldore Mar 21 at 2:01

Thank you for your interest in this question. Because it has attracted low-quality or spam answers that had to be removed, posting an answer now requires 10 reputation on this site (the association bonus does not count).

Would you like to answer one of these unanswered questions instead?

Not the answer you're looking for? Browse other questions tagged or ask your own question.