keras如何保存和载入已经训练的模型

1,保存模型:

my_model = create_model_function( ...... )

my_model.compile( ...... )

my_model.fit( ...... )

model_name . save( filepath, overwrite: bool=True, include_optimizer: bool=True )

filepath:保存的路径

overwrite:如果存在源文件,是否覆盖

include_optimizer:是否保存优化器状态

ex : mymodel.save(filepath="p402/my_model.h5", includeoptimizer=False)

2, 载入模型:

my_model = keras . models . load_model( filepath )

载入后可以继续训练:

my_model . fit( X_train_2,Y_train_2 )

也可以直接评估:

preds = my_model . evaluate( X_test, Y_test )

print ( "Loss = " + str( preds[0] ) )

print ( "Test Accuracy = " + str( preds[1] ) )

3, 如果仅保存模型的结构,而不包含其权重或配置信息,可以使用:


  
  
  1. # save as JSON
  2. json_string = model.to_json()
  3. # save as YAML
  4. yaml_string = model.to_yaml()

    从保存好的json文件或yaml文件中载入模型:


  
  
  1. # model reconstruction from JSON:
  2. from keras.models import model_from_json
  3. model = model_from_json(json_string)
  4. # model reconstruction from YAML
  5. model = model_from_yaml(yaml_string)

4,如果需要保存模型的权重,可通过下面的代码利用HDF5进行保存:

model.save_weights('my_model_weights.h5')
  
  

    若在代码中初始化一个完全相同的模型,请使用:

model.load_weights('my_model_weights.h5')
  
  

5,若要加载权重到不同的网络结构(有些层一样)中,例如fine-tune或transfer-learning,可通过层名字来加载模型:

model.load_weights('my_model_weights.h5', by_name=True)
  
  

如:


  
  
  1. """
  2. 假如原模型为:
  3. model = Sequential()
  4. model.add(Dense(2, input_dim=3, name="dense_1"))
  5. model.add(Dense(3, name="dense_2"))
  6. ...
  7. model.save_weights(fname)
  8. """
  9. # new model
  10. model = Sequential()
  11. model.add(Dense( 2, input_dim= 3, name= "dense_1")) # will be loaded
  12. model.add(Dense( 10, name= "new_dense")) # will not be loaded
  13. # load weights from first model; will only affect the first layer, dense_1.
  14. model.load_weights(fname, by_name= True)
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1,保存模型:

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转载自blog.csdn.net/rocking_struggling/article/details/104063188