# What is the meaning of axis=-1 in keras.argmax?

I am a beginner in Keras and need help to understand `keras.argmax(a, axis=-1)` and `keras.max(a, axis=-1)`. What is the meaning of `axis=-1` when `a.shape = (19, 19, 5, 80)`? And also what will be the output of `keras.argmax(a, axis=-1)` and `keras.max(a, axis=-1)`?

• Somebody's following deeplearning.ai's convolutional neural networks course :-) – Asciiom Feb 9 '18 at 9:55
• Adding to the excellent answer by Daniel Möller, if your data has a shape `(19,19,5,80)` then `keras.max(a, axis=-1)` would return a matrix of shape `(19,19,5)` where each value of the output matrix would be the maximum of the 80 elements (the maximum of the values specified within the last index) – user9702892 Apr 26 '18 at 9:05

This means that the index that will be returned by argmax will be taken from the last axis.

Your data has some shape `(19,19,5,80)`. This means:

• Axis 0 = 19 elements
• Axis 1 = 19 elements
• Axis 2 = 5 elements
• Axis 3 = 80 elements

Now, negative numbers work exactly like in python lists, in numpy arrays, etc. Negative numbers represent the inverse order:

• Axis -1 = 80 elements
• Axis -2 = 5 elements
• Axis -3 = 19 elements
• Axis -4 = 19 elements

When you pass the `axis` parameter to the `argmax` function, the indices returned will be based on this axis. Your results will lose this specific axes, but keep the others.

See what shape `argmax` will return for each index:

• `K.argmax(a,axis= 0 or -4)` returns `(19,5,80)` with values from `0 to 18`
• `K.argmax(a,axis= 1 or -3)` returns `(19,5,80)` with values from `0 to 18`
• `K.argmax(a,axis= 2 or -2)` returns `(19,19,80)` with values from `0 to 4`
• `K.argmax(a,axis= 3 or -1)` returns `(19,19,5)` with values from `0 to 79`
• Thank you! I was working with a different data structure, and it turns out for me it was important to use the Keras axis indexing as something like K.sum(three_dimensional_array, axis=[0,1]). – legel Sep 3 '19 at 8:32
• – legel Sep 4 '19 at 18:28