How guarantee code security for Keras models at customer site
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I didn't find some complete answer to this question .
The scenario is where we need to move following items to customer place :
- keras model architecture json file
- keras weights file
- keras code
For first two items the solution can be encryption on my side and decryption during the prediction .
If anybody can provide some example how to do it ?
Third item is actually how to create DLL and arrange some installation while complying with MIT permissive license .
If anybody can guide me to some reference to understand how to do it ?
Thanks a lot
deployment deep-learning
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up vote
0
down vote
favorite
I didn't find some complete answer to this question .
The scenario is where we need to move following items to customer place :
- keras model architecture json file
- keras weights file
- keras code
For first two items the solution can be encryption on my side and decryption during the prediction .
If anybody can provide some example how to do it ?
Third item is actually how to create DLL and arrange some installation while complying with MIT permissive license .
If anybody can guide me to some reference to understand how to do it ?
Thanks a lot
deployment deep-learning
add a comment |
up vote
0
down vote
favorite
up vote
0
down vote
favorite
I didn't find some complete answer to this question .
The scenario is where we need to move following items to customer place :
- keras model architecture json file
- keras weights file
- keras code
For first two items the solution can be encryption on my side and decryption during the prediction .
If anybody can provide some example how to do it ?
Third item is actually how to create DLL and arrange some installation while complying with MIT permissive license .
If anybody can guide me to some reference to understand how to do it ?
Thanks a lot
deployment deep-learning
I didn't find some complete answer to this question .
The scenario is where we need to move following items to customer place :
- keras model architecture json file
- keras weights file
- keras code
For first two items the solution can be encryption on my side and decryption during the prediction .
If anybody can provide some example how to do it ?
Third item is actually how to create DLL and arrange some installation while complying with MIT permissive license .
If anybody can guide me to some reference to understand how to do it ?
Thanks a lot
deployment deep-learning
deployment deep-learning
asked Nov 19 at 15:59
NiMa
474
474
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