# Replace all elements of NumPy array that are greater than some value

I have a 2D NumPy array. How do I replace all values in it greater than a threshold `T = 255` with a value `x = 255`? A slow for-loop based method would be:

``````# arr = arr.copy()  # Optionally, do not modify original arr.

for i in range(arr.shape[0]):
for j in range(arr.shape[1]):
if arr[i, j] > 255:
arr[i, j] = x
``````

I think both the fastest and most concise way to do this is to use NumPy's built-in Fancy indexing. If you have an `ndarray` named `arr`, you can replace all elements `>255` with a value `x` as follows:

``````arr[arr > 255] = x
``````

I ran this on my machine with a 500 x 500 random matrix, replacing all values >0.5 with 5, and it took an average of 7.59ms.

``````In [1]: import numpy as np
In [2]: A = np.random.rand(500, 500)
In [3]: timeit A[A > 0.5] = 5
100 loops, best of 3: 7.59 ms per loop
``````
• Note that this modifies the existing array `arr`, instead of creating a `result` array as in the OP. Oct 29, 2013 at 20:01
• Is there a way to do this by not modifying `A` but creating a new array? Aug 25, 2015 at 23:12
• What would we do, if we wanted to change values at indexes which are multiple of given n, like a[2],a[4],a[6],a[8]..... for n=2? Oct 7, 2015 at 19:01
• NOTE: this doesn't work if the data is in a python list, it HAS to be in a numpy array (`np.array([1,2,3]`)
– mjp
May 8, 2017 at 14:28
• is it possible to use this indexing to update every value without condition? I want to do this: `array[ ? ] = x`, setting every value to x. Secondly, is it possible to do multiple conditions like: `array[ ? ] = 255 if array[i] > 127 else 0` I want to optimize my code and am currently using list comprehension which was dramatically slower than this fancy indexing. Oct 17, 2019 at 15:33

If you want a new array `result` containing a copy of `arr` whenever `arr < 255`, and `255` otherwise:

``````result = np.minimum(arr, 255)
``````

More generally, for a lower and/or upper bound:

``````result = np.clip(arr, 0, 255)
``````

If you just want to access the values over 255, or something more complicated, @mtitan8's answer is more general, but `np.clip` and `np.minimum` (or `np.maximum`) are nicer and much faster for your case:

``````In [292]: timeit np.minimum(a, 255)
100000 loops, best of 3: 19.6 µs per loop

In [293]: %%timeit
.....: c = np.copy(a)
.....: c[a>255] = 255
.....:
10000 loops, best of 3: 86.6 µs per loop
``````

If you want to do it in-place (i.e., modify `arr` instead of creating `result`) you can use the `out` parameter of `np.minimum`:

``````np.minimum(arr, 255, out=arr)
``````

or

``````np.clip(arr, 0, 255, arr)
``````

(the `out=` name is optional since the arguments in the same order as the function's definition.)

For in-place modification, the boolean indexing speeds up a lot (without having to make and then modify the copy separately), but is still not as fast as `minimum`:

``````In [328]: %%timeit
.....: a = np.random.randint(0, 300, (100,100))
.....: np.minimum(a, 255, a)
.....:
100000 loops, best of 3: 303 µs per loop

In [329]: %%timeit
.....: a = np.random.randint(0, 300, (100,100))
.....: a[a>255] = 255
.....:
100000 loops, best of 3: 356 µs per loop
``````

For comparison, if you wanted to restrict your values with a minimum as well as a maximum, without `clip` you would have to do this twice, with something like

``````np.minimum(a, 255, a)
np.maximum(a, 0, a)
``````

or,

``````a[a>255] = 255
a[a<0] = 0
``````
• Thank you very much for your complete comment, however np.clip and np.minimum do not seem to be what I need in this case, in the OP you see that the threshold T and the replacement value (255) are not necessarily the same number. However I still gave you an up vote for thoroughness. Thanks again. Oct 30, 2013 at 3:31
• What would we do, if we wanted to change values at indexes which are multiple of given n, like a[2],a[4],a[6],a[8]..... for n=2? Oct 7, 2015 at 19:01
• @lavee_singh, to do that, you can use the third part of the slice, which is usually neglected: `a[start:stop:step]` gives you the elements of the array from `start` to `stop`, but instead of every element, it takes only every `step` (if neglected, it is `1` by default). So to set all the evens to zero, you could do `a[::2] = 0` Oct 8, 2015 at 3:02
• Thanks I needed something, like this, even though I knew it for simple lists, but I didn't know whether or how it works for numpy.array. Oct 8, 2015 at 6:48
• Surprisingly in my investigation, `a = np.maximum(a,0)` is faster than `np.maximum(a,0,out=a)`. Jan 31, 2022 at 14:12

I think you can achieve this the quickest by using the `where` function:

For example looking for items greater than 0.2 in a numpy array and replacing those with 0:

``````import numpy as np

nums = np.random.rand(4,3)

print np.where(nums > 0.2, 0, nums)
``````

Another way is to use `np.place` which does in-place replacement and works with multidimentional arrays:

``````import numpy as np

# create 2x3 array with numbers 0..5
arr = np.arange(6).reshape(2, 3)

# replace 0 with -10
np.place(arr, arr == 0, -10)
``````
• This is the solution I used because it was the first I came across. I wonder if there is a big difference between this and the selected answer above. What do you think? Feb 18, 2018 at 16:44
• In my very limited tests, my above code with np.place is running 2X slower than accepted answer's method of direct indexing. It's surprising because I would have thought np.place would be more optimized but I guess they have probably put more work on direct indexing. Jun 28, 2018 at 9:30
• In my case `np.place` was also slower compared to the built-in method, although the opposite is claimed in this comment. May 20, 2020 at 7:37

``````np.putmask(arr, arr>=T, 255.0)
``````

Here is a performance comparison with the Numpy's builtin indexing:

``````In [1]: import numpy as np
In [2]: A = np.random.rand(500, 500)

In [3]: timeit np.putmask(A, A>0.5, 5)
1000 loops, best of 3: 1.34 ms per loop

In [4]: timeit A[A > 0.5] = 5
1000 loops, best of 3: 1.82 ms per loop
``````
• I have tested the code for when upper limit `0.5` used instead of `5`, and `indexing` was better than `np.putmask` about two times. Dec 25, 2021 at 22:51

You can also use `&`, `|` (and/or) for more flexibility:

values between 5 and 10: `A[(A>5)&(A<10)]`

values greater than 10 or smaller than 5: `A[(A<5)|(A>10)]`

np.where() works great!

``````np.where(arr > 255, 255, arr)
``````

example:

``````FF = np.array([[0, 0],
[1, 0],
[0, 1],
[1, 1]])
np.where(FF == 1, '+', '-')
Out[]:
array([['-', '-'],
['+', '-'],
['-', '+'],
['+', '+']], dtype='<U1')
``````
• np.where is a great solution, it doesn't mutate the arrays involved, and it's also directly compatible with pandas series objects. Really helped me. Mar 21, 2022 at 23:04

Lets us assume you have a `numpy` array that has contains the value from 0 all the way up to 20 and you want to replace numbers greater than 10 with 0

``````import numpy as np

my_arr = np.arange(0,21) # creates an array
my_arr[my_arr > 10] = 0 # modifies the value
``````

Note this will however modify the original array to avoid overwriting the original array try using `arr.copy()` to create a new detached copy of the original array and modify that instead.

``````import numpy as np

my_arr = np.arange(0,21)
my_arr_copy = my_arr.copy() # creates copy of the orignal array

my_arr_copy[my_arr_copy > 10] = 0
``````