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.
Args:
tensor_index: Tensor index of tensor to query.
Returns:
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.