# Find the x value corresponding to a histogram max

I re-worded this to confirm to the idea of S.O. (thanks Michael0x2a)

I have been trying to find the x value associated with the maximum of a histogram plotted in `matplotlib.pyplot`. At first I had trouble even finding out how to access the data of the histogram just using the code

``````import matplotlib.pyplot as plt

# Dealing with sub figures...
fig = plt.figure()
ax.hist(<your data>, bins=<num of bins>, normed=True, fc='k', alpha=0.3)

plt.show()
``````

Then after doing some reading online (and around these forums) I found that you can 'extract' the histogram data like so:

``````n, bins, patches = ax.hist(<your data>, bins=<num of bins>, normed=True, fc='k', alpha=0.3)
``````

Basically I need to know how to find the value of `bins` that the maximum `n` corresponds to!

Cheers!

You can also do this with a `numpy` function.

``````elem = np.argmax(n)
``````

Which will be much faster than a python loop (doc).

If you do want to write this as a loop, I would write it as such

``````nmax = np.max(n)
arg_max = None
for j, _n in enumerate(n):
if _n == nmax:
arg_max = j
break
print b[arg_max]
``````
• I fail to see the difference between this loop and my own. It does the exact same thing the exact same way, except the `range(0,len(n))`, and the `else:` you do some pre-definitions., it is really just a matter of style. .... But I did not know about `np.argmax(n)` thanks for that. Still no reason to neg a question people! Sep 17, 2013 at 4:29
• @FriskyGrub 1) Style is surprising important in python. 2) I don't know if numpy caches the maximum value. If it does not, then your method (which gets the max every time through) is O(N**2) Sep 17, 2013 at 12:12
• and if these solved your problem, please accept (big gray check box on the left) Sep 17, 2013 at 12:13
• Yeah cheers :) ... It is generally a matter of.. oh I see, you found the max outside the loop... tricky :D ... still difference between a micro and nano second for small arrays I would guess :) Thanks though Sep 17, 2013 at 12:19
• Yes, but it would be quite a shock if you end up using this on a large array. Sep 17, 2013 at 12:22
``````import matplotlib.pyplot as plt
import numpy as np
import pylab as P

mu, sigma = 200, 25
x = mu + sigma*P.randn(10000)

n, b, patches = plt.hist(x, 50, normed=1, histtype='stepfilled')

bin_max = np.where(n == n.max())

print 'maxbin', b[bin_max]
``````

This can be achieved with a simple 'find-n-match' sort of approach

``````import matplotlib.pyplot as plt

# Yur sub-figure stuff
fig = plt.figure()

so `b` is the 'x values' list, `b[y]` is the 'x value' corresponding to `n.max()` Hope that helps!