# Numpy: how do I get the smallest index for which a property is true [duplicate]

I have a numpy array that is one dimensional. I would like to get the biggest and the smallest index for which a property is true.

For instance,

A = np.array([0, 3, 2, 4, 3, 6, 1, 0])

and I would like to know the smallest index for which the value of A is larger or equal to 4.

I can do

i = 0
while A[i] < 4:
i += 1
print("smallest index", i)

i = -1
while A[i] <4:
i -= 1
print("largest index", len(A)+i)

Is there a better way of doing this?

np.argmax(A>=4)

returns 3, which is indeed the smallest index. But this doesn't give me the largest index.

• Do you need the biggest and smallest occurrences? – Josmoor98 Jan 31 at 11:01
• From the link, I'm still missing how to get the largest index. – usernumber Jan 31 at 11:25
• To get the maximum value, you can use np.argmax(A == A[A >= 4].max()). This however, will only return the first index with this value. So it will ignore duplicate values of the max value. This returns 5. Tried to answer, but the ability has been removed, since it's marked as a duplicate – Josmoor98 Jan 31 at 11:32
• I see what you mean now. You can use np.where(A>=4) to return all index values meeting your condition. Then just select the first and last occurrence to get the min/max values. So np.where(A>=4) returns array([3, 5, 7]), then you can just slice the first and last values, or use .min() and .max() – Josmoor98 Jan 31 at 11:44

You can try something like. As per the comments, if A is.

A = np.array([0, 3, 2, 4, 3, 6, 1, 4])

idx_values = np.where(A >= 4)[0]
min_idx, max_idx = idx_values[[0, -1]]

print(idx_values)
# array([3, 5, 7], dtype=int64)

idx_values returns all the index values meeting your condition. You can then access the smallest and largest index positions.

print(min_idx, max_idx)
# (3, 7)