Hello, there,

I am currently working with Tensorflow for the first time and as far as I 
know Tensorflow uses Protocol Buffers to store the data. I work on IoT 
devices in a protected network and I have to deliver the data of a 
Tensorflow DNNClassifier to external systems. These may be databases, but I 
may also need to communicate with industrial controls as a byte stream. 
Especially in this case I can only transfer primitive data like Int, Float, 
Char etc. If I have now trained a Tensorflow DNNClassifier, a local 
directory with the stored data will be created for me and I would now like 
to read and process this data in native Python data types such as a Dict or 
similar. How can I do this?
I also get a model as a native byte stream and would have to use it again 
to generate a DNNClassifier. How can I realize this?

I am currently quite "new" with Tensorflow and Protocol Buffers.

Thank you very much for your help.

Phil

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