Quantizes then dequantizes a tensor. (deprecated)
View aliases
Compat aliases for migration
See Migration guide for more details.
tf.quantization.quantize_and_dequantize(
input, input_min, input_max, signed_input=True, num_bits=8, range_given=False,
round_mode='HALF_TO_EVEN', name=None, narrow_range=False, axis=None
)
Args | |
---|---|
input
|
A Tensor to quantize and dequantize.
|
input_min
|
If range_given=True, the minimum input value, that needs to be represented in the quantized representation. If axis is specified, this should be a vector of minimum values for each slice along axis. |
input_max
|
If range_given=True, the maximum input value that needs to be represented in the quantized representation. If axis is specified, this should be a vector of maximum values for each slice along axis. |
signed_input
|
True if the quantization is signed or unsigned. |
num_bits
|
The bitwidth of the quantization. |
range_given
|
If true use input_min and input_max for the range of the
input, otherwise determine min and max from the input Tensor .
|
round_mode
|
Rounding mode when rounding from float values to quantized ones. one of ['HALF_TO_EVEN', 'HALF_UP'] |
name
|
Optional name for the operation. |
narrow_range
|
If true, then the absolute value of the quantized minimum value is the same as the quantized maximum value, instead of 1 greater. i.e. for 8 bit quantization, the minimum value is -127 instead of -128. |
axis
|
Integer. If specified, refers to a dimension of the input tensor, such that quantization will be per slice along that dimension. |
Returns | |
---|---|
A Tensor . Each element is the result of quantizing and dequantizing the
corresponding element of input .
|