TensorFlow 1 version
 | 
Fake-quantize the 'inputs' tensor of type float via global float scalars
tf.quantization.fake_quant_with_min_max_vars(
    inputs, min, max, num_bits=8, narrow_range=False, name=None
)
Fake-quantize the inputs tensor of type float via global float scalars
min and max to outputs tensor of same shape as inputs.
Attributes
[min; max]define the clamping range for theinputsdata.inputsvalues are quantized into the quantization range ([0; 2^num_bits - 1]whennarrow_rangeis false and[1; 2^num_bits - 1]when it is true) and then de-quantized and output as floats in[min; max]interval.num_bitsis the bitwidth of the quantization; between 2 and 16, inclusive.
Before quantization, min and max values are adjusted with the following
logic.
It is suggested to have min <= 0 <= max. If 0 is not in the range of values,
the behavior can be unexpected:
- If 
0 < min < max:min_adj = 0andmax_adj = max - min. - If 
min < max < 0:min_adj = min - maxandmax_adj = 0. - If 
min <= 0 <= max:scale = (max - min) / (2^num_bits - 1),min_adj = scale * round(min / scale)andmax_adj = max + min_adj - min. 
This operation has a gradient and thus allows for training min and max
values.
Args | |
|---|---|
inputs
 | 
A Tensor of type float32.
 | 
min
 | 
A Tensor of type float32.
 | 
max
 | 
A Tensor of type float32.
 | 
num_bits
 | 
An optional int. Defaults to 8.
 | 
narrow_range
 | 
An optional bool. Defaults to False.
 | 
name
 | 
A name for the operation (optional). | 
Returns | |
|---|---|
A Tensor of type float32.
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  TensorFlow 1 version