How to save a keras model from a python recipe in a folder ?

Solved!
Laurent
Level 2
How to save a keras model from a python recipe in a folder ?

I would like to save a keras model in a folder. I can not figure out how to save the weights of my models because I do not find the correct filepath.



The needed code to achieve this goal is :




model.save_weights(filepath)


Even with this syntax :




path = str(trained_LSTM_info['accessInfo']['root'])



model.save_weights(os.path.join(path, 'My_model_weights.h5'))


I can not use the syntax because I am on HDFS : 




.get_path()


Do you have the correct syntax ?



Thank you very much. 



  



 



 



 

0 Kudos
1 Solution
Clรฉment_Stenac

Hi,



Keras can only save H5 files to a regular filesystem, not to arbitrary storage locations.



You can either (recommended) switch your managed folder to a local folder, or:



* Save weights to a local file

* Then upload the models file to the managed folder using folder.upload_file(path_of_the_local_file, "path_in_the_managed_folder"). You'll need to use something like that for retrieving the file in the scoring recipe:




with open("localfile", "wb") as out:
with folder.get_download_stream("path-of-the-h5-file") as in:
out.write(in.read())

View solution in original post

2 Replies
Clรฉment_Stenac

Hi,



Keras can only save H5 files to a regular filesystem, not to arbitrary storage locations.



You can either (recommended) switch your managed folder to a local folder, or:



* Save weights to a local file

* Then upload the models file to the managed folder using folder.upload_file(path_of_the_local_file, "path_in_the_managed_folder"). You'll need to use something like that for retrieving the file in the scoring recipe:




with open("localfile", "wb") as out:
with folder.get_download_stream("path-of-the-h5-file") as in:
out.write(in.read())
Laurent
Level 2
Author
Hi,
The first solution fits my expectations.
Thank you very much
0 Kudos