Tensorflow 1.12 release notes states that: "Keras models can now be directly exported to the SavedModel format(tf.contrib.saved_model.save_keras_model()) and used with Tensorflow Serving". So I gave it a shot -
I have exported a simple model with this op using a single line. However, Tensorflow serving doesn't recognize the model. I guess the problem is with the docker call, and maybe with a missing 'signature_defs' in the model definition. I would be thankful for info regarding the missing steps.
1. Training and exporting the model to TF serving:
Here is the code based on Jason Brownlee's first NN (chosen thanks to its simplicity)
(the training data, as a short CSV file, is here):
from tensorflow.keras.models import Sequential from tensorflow.keras.layers import Dense from tensorflow.contrib.saved_model import save_keras_model import numpy # fix random seed for reproducibility numpy.random.seed(7) # load pima indians dataset dataset = numpy.loadtxt("pima-indians-diabetes.csv", delimiter=",") # split into input (X) and output (Y) variables X = dataset[:,0:8] Y = dataset[:,8] # create model model = Sequential() model.add(Dense(12, input_dim=8, activation='relu')) model.add(Dense(8, activation='relu')) model.add(Dense(1, activation='sigmoid')) # Compile model model.compile(loss='binary_crossentropy', optimizer='adam', metrics=['accuracy']) # Fit the model model.fit(X, Y, epochs=150, batch_size=10) # evaluate the model scores = model.evaluate(X, Y) print("\n%s: %.2f%%" % (model.metrics_names, scores*100)) # calculate predictions predictions = model.predict(X) # round predictions rounded = [round(x) for x in predictions] print(rounded) # Save the model for serving path = '/TensorFlow_Models/Keras_serving/saved_model' # full path of where to save the model save_keras_model(model, path)
2. Setting up Tensorflow Server:
- Install Docker (from here)
- Get the latest TF serving version:
docker pull tensorflow/serving
- Activate TF serving with this model (TF ref):
docker run -p 8501:8501 --name NNN --mount type=bind,source=SSS,target=TTT -e MODEL_NAME=MMM -t tensorflow/serving &
I would be happy if one could confirm:
- NNN - the docker container name - which is used, for instance, to kill the process. It can be set arbitrarily (e.g. to: mydocker).
- MMM - the name of the model, which seem to be set arbitrarily.
- SSS - the folder where the model is located, full path.
- TTT - What should be this set to ?
3. the client
The server can get requests either over gRPC or RESTful API. Assuming we go with RESTful API, the model can be accessed by using curl (here is a TF example). But how do we set the input/output of the model? does SignatureDefs needed (ref)?
All in all, while "Keras models can now be directly exported to the SavedModel format(tf.contrib.saved_model.save_keras_model()) and used with Tensorflow Serving", as stated in TF1.12 release notes, there is a way to go in order to actually serve the model. I would be happy for ideas on completing this.