# How do I count the occurrence of a certain item in an ndarray?

How do I count the number of `0`s and `1`s in the following array?

``````y = np.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])
``````

`y.count(0)` gives:

`numpy.ndarray` object has no attribute `count`

• In this case, it is also possible to simply use `numpy.count_nonzero`. Mar 31, 2019 at 17:50

## 32 Answers

Using `numpy.unique`:

``````import numpy
a = numpy.array([0, 3, 0, 1, 0, 1, 2, 1, 0, 0, 0, 0, 1, 3, 4])
unique, counts = numpy.unique(a, return_counts=True)

>>> dict(zip(unique, counts))
{0: 7, 1: 4, 2: 1, 3: 2, 4: 1}
``````

Non-numpy method using `collections.Counter`;

``````import collections, numpy
a = numpy.array([0, 3, 0, 1, 0, 1, 2, 1, 0, 0, 0, 0, 1, 3, 4])
counter = collections.Counter(a)

>>> counter
Counter({0: 7, 1: 4, 3: 2, 2: 1, 4: 1})
``````
• What if I want to access the number of occurences of each unique elements of the array without assigning to the variable - counts. Any hints on that ? Dec 24, 2016 at 23:08
• I have the same goal as @sajis997. I want to use 'count' as an aggregating function in a groupby Mar 15, 2018 at 16:34
• this is a hack. Numpy has functions for this called bincount() or histogram() Oct 22, 2018 at 3:01
• Tried using both methods for a very large array (~30Gb). Numpy method ran out of memory whereas the `collections.Counter` worked just fine Nov 26, 2019 at 13:10
• For those wondering, this answer works for any type of np array (e.g. it works for floats), unlike some of the answers provided. Aug 10, 2021 at 10:27

What about using `numpy.count_nonzero`, something like

``````>>> import numpy as np
>>> y = np.array([1, 2, 2, 2, 2, 0, 2, 3, 3, 3, 0, 0, 2, 2, 0])

>>> np.count_nonzero(y == 1)
1
>>> np.count_nonzero(y == 2)
7
>>> np.count_nonzero(y == 3)
3
``````
• This answer seems better than the one with the most upvotes.
– Alex
Dec 31, 2017 at 17:16
• I don't think this would work for `numpy.ndarray` as OP originally asked.
– LYu
Jul 28, 2018 at 20:55
• @LYu - the y is an np.ndarray in this answer. Also - most if not all np.something functions work on ndarrays without problem. Jul 29, 2018 at 19:34

Personally, I'd go for: `(y == 0).sum()` and `(y == 1).sum()`

E.g.

``````import numpy as np
y = np.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])
num_zeros = (y == 0).sum()
num_ones = (y == 1).sum()
``````
• It's definitely the easiest to read. The question is which is fastest, and most space efficient May 30, 2018 at 19:02
• Mightbe less space efficient than numpy.count_nonzero(y==0), since it evaluates the vector (y==0) Oct 27, 2018 at 22:21
• I like this because is similar to matlab/octave `sum( vector==value )` Aug 17, 2019 at 17:01
• This is also going to work for other values in the array - not just 0 and 1; they don't even have to be numbers. `(y == "A")` returns an array of `bool` values. Since booleans are equal to 0 and 1 in Python, so they can be summed: `(y == "A").sum()` will return the count of `A`s in the array `y`. Dec 17, 2020 at 15:00

For your case you could also look into numpy.bincount

``````In [56]: a = np.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])

In [57]: np.bincount(a)
Out[57]: array([8, 4])  #count of zeros is at index 0, i.e. 8
#count of ones is at index 1, i.e. 4
``````
• This code may be one of the fastest solutions for larger arrays I experimented. Getting the result as a list is a bonus, too. Thanx! Oct 24, 2018 at 22:56
• And if 'a' is an n-dimensional array, we can just use: np.bincount(np.reshape(a, a.size))
– Ari
Jan 15, 2020 at 9:01
• be aware: (1) this rounds down non-integers. e.g. `np.bincount([0, 0.5, 1.1]) == array([2, 1])` (2) if you have an array with large integers, you will get a long output, e.g. `len(np.bincount([1000])) == 1001`. Jul 2, 2021 at 9:29
• It is helpful, too, for when we need showing zero for values between the max and the min values e.g. if `a = np.array([0, 0, 0, 2, 0, 2, 2, 0, 0, 0, 0, 2])` it will gets `[8 0 4]`. So, for `1` it put `0` in the result. Feb 6, 2022 at 2:42
``````y = np.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])
``````

If you know that they are just `0` and `1`:

``````np.sum(y)
``````

gives you the number of ones. `np.sum(1-y)` gives the zeroes.

For slight generality, if you want to count `0` and not zero (but possibly 2 or 3):

``````np.count_nonzero(y)
``````

gives the number of nonzero.

But if you need something more complicated, I don't think numpy will provide a nice `count` option. In that case, go to collections:

``````import collections
collections.Counter(y)
> Counter({0: 8, 1: 4})
``````

This behaves like a dict

``````collections.Counter(y)[0]
> 8
``````

Convert your array `y` to list `l` and then do `l.count(1)` and `l.count(0)`

``````>>> y = numpy.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])
>>> l = list(y)
>>> l.count(1)
4
>>> l.count(0)
8
``````

If you know exactly which number you're looking for, you can use the following;

``````lst = np.array([1,1,2,3,3,6,6,6,3,2,1])
(lst == 2).sum()
``````

returns how many times 2 is occurred in your array.

# Filter and use `len`

Using `len` could be another option.

``````A = np.array([1,0,1,0,1,0,1])
``````

Say we want the number of occurrences of `0`.

``````A[A==0]  # Return the array where item is 0, array([0, 0, 0])
``````

Now, wrap it around with `len`.

``````len(A[A==0])  # 3
len(A[A==1])  # 4
len(A[A==7])  # 0, because there isn't such item.
``````

Honestly I find it easiest to convert to a pandas Series or DataFrame:

``````import pandas as pd
import numpy as np

df = pd.DataFrame({'data':np.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])})
print df['data'].value_counts()
``````

Or this nice one-liner suggested by Robert Muil:

``````pd.Series([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1]).value_counts()
``````
• Just a note: don't need the DataFrame or numpy, can go directly from a list to a Series: `pd.Series([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1]).value_counts()` Feb 2, 2017 at 20:14
• Awesome, that's a nice one-liner. Big up Sep 11, 2017 at 17:43

No one suggested to use `numpy.bincount(input, minlength)` with `minlength = np.size(input)`, but it seems to be a good solution, and definitely the fastest:

``````In [1]: choices = np.random.randint(0, 100, 10000)

In [2]: %timeit [ np.sum(choices == k) for k in range(min(choices), max(choices)+1) ]
100 loops, best of 3: 2.67 ms per loop

In [3]: %timeit np.unique(choices, return_counts=True)
1000 loops, best of 3: 388 µs per loop

In [4]: %timeit np.bincount(choices, minlength=np.size(choices))
100000 loops, best of 3: 16.3 µs per loop
``````

That's a crazy speedup between `numpy.unique(x, return_counts=True)` and `numpy.bincount(x, minlength=np.max(x))` !

• hows it compare to histogram? Oct 22, 2018 at 3:02
• @johnktejik `np.histogram` does not compute the same thing. No point comparing the three approaches I propose with the `histogram` function, sorry. Oct 24, 2018 at 8:20
• @Næreen `bincount` only works for integers though, so it works for the OP's problem, but maybe not for the generic problem described in the title. Also have you tried using `bincount` with arrays with very big ints? Oct 27, 2018 at 13:19
• @ImperishableNight no I haven't tried with large ints, but anyone is welcome to do so and post their own benchmark :-) Oct 30, 2018 at 17:47
• Thank you for this underappreciated trick! On my machine `bincount` is about four times faster than `unique`. Oct 29, 2019 at 20:47

If you are interested in the fastest execution, you know in advance which value(s) to look for, and your array is 1D, or you are otherwise interested in the result on the flattened array (in which case the input of the function should be `np.ravel(arr)` rather than just `arr`), then Numba is your friend:

``````import numba as nb

@nb.jit
def count_nb(arr, value):
result = 0
for x in arr:
if x == value:
result += 1
return result
``````

or, for very large arrays where parallelization may be beneficial:

``````@nb.jit(parallel=True)
def count_nbp(arr, value):
result = 0
for i in nb.prange(arr.size):
if arr[i] == value:
result += 1
return result
``````

These can be benchmarked against `np.count_nonzero()` (which also has a problem of creating a temporary array -- something that is avoided in the Numba solutions) and a `np.unique()`-based solution (which is actually counting all unique value values contrarily to the other solutions).

``````import numpy as np

def count_np(arr, value):
return np.count_nonzero(arr == value)
``````
``````import numpy as np

def count_np_uniq(arr, value):
uniques, counts = np.unique(a, return_counts=True)
counter = dict(zip(uniques, counts))
return counter[value] if value in counter else 0
``````

Since the support for "typed" dicts in Numba, it is also possible to have a function counting all occurrences of all elements. This competes more directly with `np.unique()` because it is capable of counting all values in a single run. Here is proposed a version which eventually only returns the number of elements for a single value (for comparison purposes, similarly to what is done in `count_np_uniq()`):

``````@nb.jit
def count_nb_dict(arr, value):
counter = {arr[0]: 1}
for x in arr:
if x not in counter:
counter[x] = 1
else:
counter[x] += 1
return counter[value] if value in counter else 0
``````

The input is generated with:

``````def gen_input(n, a=0, b=100):
return np.random.randint(a, b, n)
``````

The timings are reported in the following plots (the second row of plots is a zoom on the faster approaches):

Showing that the simple Numba-based solution is fastest for smaller inputs and the parallelized version is fastest for larger inputs. They NumPy version is reasonably fast at all scales.

When one wants to count all values in an array, `np.unique()` is more performant than a solution implemented manually with Numba for sufficiently large arrays.

EDIT: It seems that the NumPy solution has become faster in recent versions. In a previous iteration, the simple Numba solution was outperforming NumPy's approach for any input size.

Full code available here.

To count the number of occurrences, you can use `np.unique(array, return_counts=True)`:

``````In [75]: boo = np.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])

# use bool value `True` or equivalently `1`
In [77]: uniq, cnts = np.unique(boo, return_counts=1)
In [81]: uniq
Out[81]: array([0, 1])   #unique elements in input array are: 0, 1

In [82]: cnts
Out[82]: array([8, 4])   # 0 occurs 8 times, 1 occurs 4 times
``````

I'd use np.where:

``````how_many_0 = len(np.where(a==0.)[0])
how_many_1 = len(np.where(a==1.)[0])
``````

`y.tolist().count(val)`

with val 0 or 1

Since a python list has a native function `count`, converting to list before using that function is a simple solution.

Try this:

``````a = np.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])
list(a).count(1)
``````

Yet another simple solution might be to use numpy.count_nonzero():

``````import numpy as np
y = np.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])
y_nonzero_num = np.count_nonzero(y==1)
y_zero_num = np.count_nonzero(y==0)
y_nonzero_num
4
y_zero_num
8
``````

Don't let the name mislead you, if you use it with the boolean just like in the example, it will do the trick.

take advantage of the methods offered by a Series:

``````>>> import pandas as pd
>>> y = [0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1]
>>> pd.Series(y).value_counts()
0    8
1    4
dtype: int64
``````

You can use dictionary comprehension to create a neat one-liner. More about dictionary comprehension can be found here

``````>>> counts = {int(value): list(y).count(value) for value in set(y)}
>>> print(counts)
{0: 8, 1: 4}
``````

This will create a dictionary with the values in your ndarray as keys, and the counts of the values as the values for the keys respectively.

This will work whenever you want to count occurences of a value in arrays of this format.

You have a special array with only 1 and 0 here. So a trick is to use

``````np.mean(x)
``````

which gives you the percentage of 1s in your array. Alternatively, use

``````np.sum(x)
np.sum(1-x)
``````

will give you the absolute number of 1 and 0 in your array.

``````dict(zip(*numpy.unique(y, return_counts=True)))
``````

Just copied Seppo Enarvi's comment here which deserves to be a proper answer

It involves one more step, but a more flexible solution which would also work for 2d arrays and more complicated filters is to create a boolean mask and then use .sum() on the mask.

``````>>>>y = np.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])
>>>>mask = y == 0
>>>>mask.sum()
8
``````

A general and simple answer would be:

``````numpy.sum(MyArray==x)   # sum of a binary list of the occurence of x (=0 or 1) in MyArray
``````

which would result into this full code as exemple

``````import numpy
MyArray=numpy.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])  # array we want to search in
x=0   # the value I want to count (can be iterator, in a list, etc.)
numpy.sum(MyArray==0)   # sum of a binary list of the occurence of x in MyArray
``````

Now if MyArray is in multiple dimensions and you want to count the occurence of a distribution of values in line (= pattern hereafter)

``````MyArray=numpy.array([[6, 1],[4, 5],[0, 7],[5, 1],[2, 5],[1, 2],[3, 2],[0, 2],[2, 5],[5, 1],[3, 0]])
x=numpy.array([5,1])   # the value I want to count (can be iterator, in a list, etc.)
temp = numpy.ascontiguousarray(MyArray).view(numpy.dtype((numpy.void, MyArray.dtype.itemsize * MyArray.shape[1])))  # convert the 2d-array into an array of analyzable patterns
xt=numpy.ascontiguousarray(x).view(numpy.dtype((numpy.void, x.dtype.itemsize * x.shape[0])))  # convert what you search into one analyzable pattern
numpy.sum(temp==xt)  # count of the searched pattern in the list of patterns
``````

For generic entries:

``````x = np.array([11, 2, 3, 5, 3, 2, 16, 10, 10, 3, 11, 4, 5, 16, 3, 11, 4])
n = {i:len([j for j in np.where(x==i)[0]]) for i in set(x)}
ix = {i:[j for j in np.where(x==i)[0]] for i in set(x)}
``````

Will output a count:

``````{2: 2, 3: 4, 4: 2, 5: 2, 10: 2, 11: 3, 16: 2}
``````

And indices:

``````{2: [1, 5],
3: [2, 4, 9, 14],
4: [11, 16],
5: [3, 12],
10: [7, 8],
11: [0, 10, 15],
16: [6, 13]}
``````

This can be done easily in the following method

``````y = np.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])
y.tolist().count(1)
``````

Since your ndarray contains only 0 and 1, you can use sum() to get the occurrence of 1s and len()-sum() to get the occurrence of 0s.

``````num_of_ones = sum(array)
num_of_zeros = len(array)-sum(array)
``````

if you are dealing with very large arrays using generators could be an option. The nice thing here it that this approach works fine for both arrays and lists and you dont need any additional package. Additionally, you are not using that much memory.

``````my_array = np.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])
sum(1 for val in my_array if val==0)
Out: 8
``````

This funktion returns the number of occurences of a variable in an array:

``````def count(array,variable):
number = 0
for i in range(array.shape[0]):
for j in range(array.shape[1]):
if array[i,j] == variable:
number += 1
return number
``````

here I have something, through which you can count the number of occurrence of a particular number: according to your code

``````count_of_zero=list(y[y==0]).count(0)

print(count_of_zero)

// according to the match there will be boolean values and according
// to True value the number 0 will be return.
``````

If you don't want to use numpy or a collections module you can use a dictionary:

``````d = dict()
a = [0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1]
for item in a:
try:
d[item]+=1
except KeyError:
d[item]=1
``````

result:

``````>>>d
{0: 8, 1: 4}
``````

Of course you can also use an if/else statement. I think the Counter function does almost the same thing but this is more transparant.

The simplest,do comment if not necessary

``````import numpy as np
y = np.array([0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 0, 1])
count_0, count_1 = 0, 0
for i in y_train:
if i == 0:
count_0 += 1
if i == 1:
count_1 += 1
count_0, count_1
``````