程序代写代做代考 python Keras # About Keras models

# About Keras models

There are two types of models available in Keras: [the Sequential model](/models/sequential) and [the Model class used with functional API](/models/model).

These models have a number of methods in common:

– `model.summary()`: prints a summary representation of your model. Shortcut for [utils.print_summary](/utils/#print_summary)
– `model.get_config()`: returns a dictionary containing the configuration of the model. The model can be reinstantiated from its config via:
“`python
config = model.get_config()
model = Model.from_config(config)
# or, for Sequential:
model = Sequential.from_config(config)
“`

– `model.get_weights()`: returns a list of all weight tensors in the model, as Numpy arrays.
– `model.set_weights(weights)`: sets the values of the weights of the model, from a list of Numpy arrays. The arrays in the list should have the same shape as those returned by `get_weights()`.
– `model.to_json()`: returns a representation of the model as a JSON string. Note that the representation does not include the weights, only the architecture. You can reinstantiate the same model (with reinitialized weights) from the JSON string via:
“`python
from keras.models import model_from_json

json_string = model.to_json()
model = model_from_json(json_string)
“`
– `model.to_yaml()`: returns a representation of the model as a YAML string. Note that the representation does not include the weights, only the architecture. You can reinstantiate the same model (with reinitialized weights) from the YAML string via:
“`python
from keras.models import model_from_yaml

yaml_string = model.to_yaml()
model = model_from_yaml(yaml_string)
“`
– `model.save_weights(filepath)`: saves the weights of the model as a HDF5 file.
– `model.load_weights(filepath, by_name=False)`: loads the weights of the model from a HDF5 file (created by `save_weights`). By default, the architecture is expected to be unchanged. To load weights into a different architecture (with some layers in common), use `by_name=True` to load only those layers with the same name.