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Is there a convenient way to calculate percentiles for a sequence or single-dimensional numpy array?

I am looking for something similar to Excel's percentile function.

I looked in NumPy's statistics reference, and couldn't find this. All I could find is the median (50th percentile), but not something more specific.

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up vote 99 down vote accepted

You might be interested in the SciPy Stats package. It has the percentile function you're after and many other statistical goodies.

percentile() is available in numpy too.

import numpy as np
a = np.array([1,2,3,4,5])
p = np.percentile(a, 50) # return 50th percentile, e.g median.
print p

This ticket leads me to believe they won't be integrating percentile() into numpy anytime soon.

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Thank you! So that's where it's been hiding. I was aware of scipy but I guess I assumed simple things like percentiles would be built into numpy. – Uri Mar 3 '10 at 20:51
By now, a percentile function exists in numpy:… – Anaphory Oct 29 '13 at 14:36
You can use it as an aggregation function as well, e.g. to compute the tenth percentile of each group of a value column by key, use df.groupby('key')[['value']].agg(lambda g: np.percentile(g, 10)) – patricksurry Nov 26 '13 at 17:25
Note that SciPy recommends to use np.percentile for NumPy 1.9 and higher – timdiels Nov 26 '15 at 18:21

By the way, there is a pure-Python implementation of percentile function, in case one doesn't want to depend on scipy. The function is copied below:

## {{{ (r1)
import math
import functools

def percentile(N, percent, key=lambda x:x):
    Find the percentile of a list of values.

    @parameter N - is a list of values. Note N MUST BE already sorted.
    @parameter percent - a float value from 0.0 to 1.0.
    @parameter key - optional key function to compute value from each element of N.

    @return - the percentile of the values
    if not N:
        return None
    k = (len(N)-1) * percent
    f = math.floor(k)
    c = math.ceil(k)
    if f == c:
        return key(N[int(k)])
    d0 = key(N[int(f)]) * (c-k)
    d1 = key(N[int(c)]) * (k-f)
    return d0+d1

# median is 50th percentile.
median = functools.partial(percentile, percent=0.5)
## end of }}}
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I am the author of the above recipe. A commenter in ASPN has pointed out the original code has a bug. The formula should be d0 = key(N[int(f)]) * (c-k); d1 = key(N[int(c)]) * (k-f). It has been corrected on ASPN. – Wai Yip Tung Apr 25 '11 at 3:43
@Wai Yip Tung, I fixed the bug in the code – bgbg Sep 15 '11 at 6:38
How does percentile know what to use for N? It isn't specified in the function call. – Richard Oct 31 '13 at 9:54
for those who didn't even read the code, before using it, N must be sorted – kevin Mar 4 '14 at 2:55
import numpy as np
a = [154, 400, 1124, 82, 94, 108]
print np.percentile(a,95) # gives the 95th percentile
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The definition of percentile I usually see expects as a result the value from the supplied list below which P percent of values are found. To get that, you can use a simpler function.

def percentile(N, P):
    Find the percentile of a list of values

    @parameter N - A list of values.  N must be sorted.
    @parameter P - A float value from 0.0 to 1.0

    @return - The percentile of the values.
    n = int(round(P * len(N) + 0.5))
    return N[n-1]

# A = (1, 2, 3, 4, 5, 6, 7, 8, 9, 10)
# B = (15, 20, 35, 40, 50)
# print percentile(A, P=0.3)
# 4
# print percentile(A, P=0.8)
# 9
# print percentile(B, P=0.3)
# 20
# print percentile(B, P=0.8)
# 50

If you would rather get the value from the supplied list at or below which P percent of values are found, then use this simple modification:

def percentile(N, P):
    n = int(round(P * len(N) + 0.5))
    if n > 1:
        return N[n-2]
        return 0
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thanks, I also expect percentile/median to result actual values from the sets and not interpolations – Philipp Keller Nov 16 '11 at 15:44

check for scipy.stats module:

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Is there something I am missing?

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Yes. The date of the question. – Veedrac Jun 8 '14 at 0:54

Here's how to do it without numpy, using only python to calculate the percentile.

import math

def percentile(data, percentile):
    size = len(data)
    return sorted(data)[int(math.ceil((size * percentile) / 100)) - 1]

p5 = percentile(mylist, 5)
p25 = percentile(mylist, 25)
p50 = percentile(mylist, 50)
p75 = percentile(mylist, 75)
p95 = percentile(mylist, 95)
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this will only work if the data is ordered – otmezger Jun 14 '13 at 12:28
Yes, you have to sort the list before: mylist=sorted(...) – Ashkan Jul 18 '13 at 15:54

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