# How can I normalize a histogram such that the sum of the heights is equal to 1?

I generated the figure below using the a call to `matplotlib.pyplot.hist` in which I passed the kwarg `normed=True`:

Upon further research, I realized that this kind of normalization works in such a way that the integral of the histogram is equal to 1. How can I plot this same data such that the sum of the heights of the bars equals 1?

In other words, I want each bit to represent the proportion of the whole that its values contain.

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I'm not sure if there's a straightforward way, but you can manually divide all bar heights by the length of the input (the following is made in `ipython --pylab` to skip the imports):

``````inp = normal(size=1000)
h = hist(inp)
``````

Which gives you

Now, you can do:

``````bar(h[1][:-1], h[0]/float(len(inp)), diff(h[1]))
``````

and get

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Thanks! Could you please explain what each element in the tuple returned from `hist` is? Your `bar(h[1][:-1], h[0]/float(len(inp)), diff(h[1]))` leaves me a bit confused! –  blz Dec 6 '12 at 10:43
@blz `hist` returns `heights` and `x points` as first two elements of the tuple. `bar` takes `left` and `top` as first two arguments. –  Lev Levitsky Dec 6 '12 at 11:06
Thanks! I ran your code on my data, but I don't seem to be getting a normalized histogram =/ Here is the data (PANDAS DataFrame object), and here is the code I used. Also, here is the graph I get. Any idea what I did incorrectly? –  blz Dec 6 '12 at 11:09
@blz Unfortunately, I don't have `pandas` and don't know how to use it. Can you try your code on a regular list first? –  Lev Levitsky Dec 6 '12 at 11:24
I tried it on my data in list-form, but I get the same result. Here's a pickled version of the list, if you can make any sense of it =/ –  blz Dec 6 '12 at 20:40