### `tf.nn.quantized_avg_pool(input, min_input, max_input, ksize, strides, padding, name=None)` {#quantized_avg_pool}
Produces the average pool of the input tensor for quantized types.
##### Args:
* `input`: A `Output`. Must be one of the following types: `qint8`, `quint8`, `qint16`, `quint16`, `qint32`.
4-D with shape `[batch, height, width, channels]`.
* `min_input`: An `Output` of type `float32`.
The float value that the lowest quantized input value represents.
* `max_input`: An `Output` of type `float32`.
The float value that the highest quantized input value represents.
* `ksize`: A list of `ints`.
The size of the window for each dimension of the input tensor.
The length must be 4 to match the number of dimensions of the input.
* `strides`: A list of `ints`.
The stride of the sliding window for each dimension of the input
tensor. The length must be 4 to match the number of dimensions of the input.
* `padding`: A `string` from: `"SAME", "VALID"`.
The type of padding algorithm to use.
* `name`: A name for the operation (optional).
##### Returns:
A tuple of `Output` objects (output, min_output, max_output).
* `output`: A `Output`. Has the same type as `input`.
* `min_output`: An `Output` of type `float32`. The float value that the lowest quantized output value represents.
* `max_output`: An `Output` of type `float32`. The float value that the highest quantized output value represents.