# python plot simple histogram given binned data

I have count data (a 100 of them), each correspond to a bin (0 to 99). I need to plot these data as histogram. However, histogram count those data and does not plot correctly because my data is already binned.

``````import random
import matplotlib.pyplot as plt
x = random.sample(range(1000), 100)
xbins = [0, len(x)]
#plt.hist(x, bins=xbins, color = 'blue')
#Does not make the histogram correct. It counts the occurances of the individual counts.

plt.plot(x)
#plot works but I need this in histogram format
plt.show()
``````
• You could use the code in this answer or this answer as an example for plotting already binned data as histograms. – tmthydvnprt Jun 1 '16 at 12:50

If I'm understanding what you want to achieve correctly then the following should give you what you want:

``````import matplotlib.pyplot as plt
plt.bar(range(0,100), x)
plt.show()
``````

It doesn't use `hist()`, but it looks like you've already put your data into bins so there's no need.

• If you want the `bar` to look more like the `hist` output use the code in this answer or this answer as an example for plotting histograms via the `bar` plot. – tmthydvnprt Jun 1 '16 at 12:51

The problem is with your xbins. You currently have

``````xbins = [0, len(x)]
``````

which will give you the list [0, 100]. This means you will only see 1 bin (not 2) bounded below by 0 and above by 100. I am not totally sure what you want from your histogram. If you want to have 2 unevenly spaced bins, you can use

``````xbins = [0, 100, 1000]
``````

to show everything below 100 in one bin, and everything else in the other bin. Another option would be to use an integer value to get a certain number of evenly spaced bins. In other words do

``````plt.hist(x, bins=50, color='blue')
``````

where bins is the number of desired bins.

On a side note, whenever I can't remember how to do something with matplotlib, I will usually just go to the thumbnail gallery and find an example that looks more or less what I am trying to accomplish. These examples all have accompanying source code so they are quite helpful. The documentation for matplotlib can also be very handy.

Cool, thanks! Here's what I think the OP wanted to do:

``````import random
import matplotlib.pyplot as plt
x=[x/1000 for x in random.sample(range(100000),100)]
xbins=range(0,len(x))
plt.hist(x, bins=xbins, color='blue')
plt.show()
``````

I am fairly sure that your problem is the bins. It is not a list of limits but rather a list of bin edges.

``````xbins = [0,len(x)]
``````

returns in your case a list containing `[0, 100]` Indicating that you want a bin edge at 0 and one at 100. So you get one bin from 0 to 100. What you want is:

``````xbins = [x for x in range(len(x))]
``````

Which returns:

``````[0,1,2,3, ... 99]
``````

Which indicates the bin edges you want.

You can achieve this using matplotlib's hist as well, no need for numpy. You have essentially already created the bins as `xbins`. In this case `x` will be your weights.

``````plt.hist(xbins,weights=x)
``````

Have a look at the histogram examples in the matplotlib documentation. You should use the `hist` function. If it by default does not yield the result you expect, then play around with the arguments to `hist` and prepare/transform/modify your data before providing it to `hist`. It is not really clear to me what you want to achieve, so I cannot help at this point.

• after trying for a while I asked this question. My only concern is if I can achieve what the above code does with hist function. – Curious Sep 6 '12 at 16:02