I'm doing a neural network prediction with my own datasets using Tensorflow. The first I did was a model that works with a small dataset in my computer. After this, I changed the code a little bit in order to use Google Cloud ML-Engine with bigger datasets to realize in ML-Engine the train and the predictions.

I am normalizing the features in the panda dataframe but this introduces skew and I get poor prediction results.

What I would really like is use the library `tf-transform`

to normalize the data in the graph. To do this, I would like to create a function `preprocessing_fn`

and use the '`tft.scale_to_0_1`

'. https://github.com/tensorflow/transform/blob/master/getting_started.md

The main problem that I found is when I'm trying to do the predict. I'm looking for internet but I don't find any example of exported model where the data is normalized in the training. In all the examples I found, the data is NOT normalized anywhere.

What I would like to know is **If I normalize the data in the training and I send a new instance with new data to do the prediction, how is normalized this data?**

¿Maybe in the Tensorflow Data Pipeline? The variables to do the normalization are saved in some place?

In summary: I'm looking for a way to normalize the inputs for my model and then that the new instances also become standardized.