# Keras returns wrong value for sum

I have this code to understand how Jaccard Index works and I am trying to implement it as a Keras custom metric, but the return of this function is wrong and I have no idea why (I am new to Keras btw).

This function creates a rectangular area to test intersections:

``````def block(start, width=20, heigth=10, length=60):
block = np.zeros((1, heigth, length))
block[:, :, start:(start + width)] = 1
return block.astype('uint8')
``````

If I get a `block(10)` and a `block(20)` there should be two 10x20 blocks with a 10x10 area of intersection so the union must be `2*(10*20) - 10*10` which is confirmed by this Numpy line:

``````np.sum(((block(10) + block(20)) > 0).astype('uint8'))
``````

But when I try to use this Keras function:

``````def test(a, b):
return K.sum(K.cast((a + b) > 0, dtype='uint8'))
``````

The result is 44 when I call it with `K.eval(test(block(10), block(20)))`

EDIT (new test):

``````def test(a, b):
return K.sum(a), K.sum(b), K.sum(a) + K.sum(b)

[K.eval(elem) for elem in test(block(10), block(20))]
``````

This is the result: `[200, 200, 144]`

What am I doing wrong to get this result?

The dtype of the Keras sum is inferred from the object that is summed over, so in this case the sum will be of type `uint8`. Your result is 300. `uint8` can take 256 different values, and `300 - 44 = 256`. If you take a closer look on your python code:

``````blocks = block(10) + block(20) # dtype='uint8'
mask = (blocks > 0) # dtype=bool
mask_as_uint = mask.astype('uint8') # dtype='uint8', which is an unnescessary conversion
So your result is of type `uint64`, while you ask Keras to give you a result in `uint8`. In fact the following gives 44 as an answer as well:
``````np.int8(300)
In short, switch to a bigger dtype for the sum or do the operations in an order manually where `uint8` doesn't have shortcomings.
• Changing the line to `test(block(10).astype('float32'), block(20).astype('float32'))` should be enough? It did not work. – Gustavo Maia Sep 12 at 13:02
• Try and change the sum to `K.sum(K.cast((a + b) > 0), dtype='uint32')` – user2653663 Sep 12 at 13:03