Using tflite and getting properties of interpreter like :


[{'name': 'input_1_1', 'index': 47, 'shape': array([  1, 128, 128,   3], dtype=int32), 'dtype': <class 'numpy.uint8'>, 'quantization': (0.003921568859368563, 0)}]

What does 'quantization': (0.003921568859368563, 0) mean?

2 Answers 2


It means quantization parameters values: scale and zero_point of input tensor.

This is necessary to convert a quantized uint8 number q to floating point number f using formula:

f = (q - zero_point) * scale

Unfortunately the documentation of get_input_details doesn't explain:

Returns: A list of input details.

But if you look the source code get_input_details, it calls _get_tensor_details (source), and this function does document it:

    """Gets tensor details.
      tensor_index: Tensor index of tensor to query.
      A dictionary containing the following fields of the tensor:
        'name': The tensor name.
        'index': The tensor index in the interpreter.
        'shape': The shape of the tensor.
        'quantization': Deprecated, use 'quantization_parameters'. This field
            only works for per-tensor quantization, whereas
            'quantization_parameters' works in all cases.
        'quantization_parameters': The parameters used to quantize the tensor:
          'scales': List of scales (one if per-tensor quantization)
          'zero_points': List of zero_points (one if per-tensor quantization)
          'quantized_dimension': Specifies the dimension of per-axis
              quantization, in the case of multiple scales/zero_points.

What does it mean?

These quantization parameters are values used to quantize (convert a range of numbers from one range to another more limited range, e.g. 0-10 into 0-1). In TensorFlow, this is specifically used to mean when the data type changes to a data type which supports fewer numbers: e.g. float32 to float16, or float32 to uint8, or float16 to int8. Dequantization is the reverse (e.g. when you want to get probabilities out of a model which was quantized to uint8 and the quantized output is between 0-255).

The maths is quite simple, like a more general form normalization (making something range from (0 to 1):

  • quantization: q = (f / s) + z
  • dequantization: f = (q - z) * s
  • For more on this quantization equation, see the Quantization Specification.

Note: Aleksandr Kondratyev's equation f = (q - zero_point) * scale is actually dequantization, since it takes q (quantized value) and provides you f (float). Of course you can reverse the equation to get the other one.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.