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A tutorial exploring multiple approaches to deploy a trained TensorFlow (or Keras) model or multiple models for prediction.

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TensorFlow Model Deployment

A tutorial exploring multiple approaches to deploy / serve a trained TensorFlow (or Keras) model or multiple models in a production environment for prediction / inferences.

The code samples provided here may originally developed based on TensorFlow 1.2, 1.3 or 1.4. However, unless explicitly specified, they should work for all versions >= 1.0.

Table of Contents

  1. Import the Model Graph from Meta File
  2. Create the Model Graph from Scratch
  3. Restore Multiple Models
  4. Inspect a Model
  5. Freeze a Model before Serving it
  6. Convert a Keras model to a TensorFlow model
  7. Deploy Multiple Freezed Models
  8. Serve a Model via Web Services

During the training, TensorFlow generates the following 3 files for each checkpoint, although optionally, you can choose not to create the meta file. You can ignore the file named checkpoint as it is not used in the prediction process.

  1. meta file: It holds the compressed Protobufs graph of the model and all the other metadata associated, such as collections and operations.
  2. index file: It holds an immutable table (key-value table) linking a serialised tensor name to where to find its data in the data file.
  3. data file: It is TensorBundle collection, which saves the values of all variables, such as weights.

Import the Model Graph from Meta File

One common approach is to restore the model graph from the meta file, and then restore weights and other data from the data file (index file will be used as well). Here is a sample code snippet:

import tensorflow as tf
    
with tf.Session(graph=tf.Graph()) as sess:
    saver = tf.train.import_meta_graph("/trained/model_ckpt.meta")
    saver.restore(sess, "/trained/model_ckpt")
    
    # Retrieve Ops from the collection
        
    # Run sess to predict

A small trick here is where to place the following of code (saver) when you define the model graph for training. By default, only variables defined above this line will be saved into the meta file. If you don't plan to retrain the model, you can leave the code defining your train_ops, such as optimizer, loss, accuracy below this line so that your model file can be reasonably smaller.

saver = tf.train.Saver()

You normally need to leave some hooks in the trained model so that you can easily feed the data for prediction. For example, you need to save logits and image_placehoder into the collection and save them in the training, and later retrieve them for prediction.

A concrete example can be found in train() and predict() methods here.

This applies to the case when the graph used for inference and training are the same or very similar. In case the inference graph is very different from the graph used for training, this approach is not preferred as it would require the graph built for the training to adapt both training and inference, making it unnecessarily large.

Create the Model Graph from Scratch

Another common approach is to create the model graph from scratch instead of restoring the graph from the meta file. This is extremely useful when the graph for inference is considerably different from the graph for training. The new TensorFlow NMT model (https://github.com/tensorflow/nmt) is one of the cases.

import tensorflow as tf
# Replace this with your valid ModelCreator
import ModelCreator 
    
with tf.Session() as sess:
    # Replace this line with your valid ModelCreator and its arguments
    model = ModelCreator(training=False)
    # Restore model weights
    model.saver.restore(sess, "/trained/model_ckpt")

A concrete example can be found in the constructor (__init__ method) here.

Restore Multiple Models

Sometimes, you may need to load multiple trained models into a single TF session to work together for a task. For example, in a face recognition application, you may need a model to detect faces from a given images, then use another model to recognize these faces. In a typical photo OCR application, you normally require three models to work as a pipeline: model one to detect the text areas (blocks) from a given image; model two to segment characters from the text strings detected by the first model; and model three to recognize those characters.

Loading multiple models into a single session can be tricky if you don't handle it properly. Here are the steps to follow:

  1. For each of the models, you need to have a unique model_scope, and define all the variables within that scope when building the graph for training:
with tf.variable_scope(model_scope):
    # Define variables here
  1. At the time of restoring models, do the following:
tf.train.import_meta_graph(os.path.join(result_dir, result_file + ".meta"))
all_vars = tf.global_variables()
model_vars = [var for var in all_vars if var.name.startswith(model_scope)]
saver = tf.train.Saver(model_vars)
saver.restore(sess, os.path.join(result_dir, result_file))

Here, a TF session object (sess) is often passed into the method, as you don't want to create its own session here. Also, don't be fooled by the frequently used way of this statement:

saver = tf.train.import_meta_graph("/trained/model_ckpt.meta")

When the right side is run inside a TF session, the model graph is imported. It returns a saver, but you don't have to use it. My experience was if this saver is used to restore the data (weights), it won't work for loading multiple models: it will complain all kinds of conflicts.

A whole working example can be found in my DmsMsgRcg project:

Inspect a Model

Very often, you need to check what are in the model files, including operations and possibly weights. Here are a few things you may want to do.

  1. Check the operations (nodes), all variables, or trainable variables in the graph; OR even save everything, including the weights into a text file so that you can read them.
import tensorflow as tf
    
saver = tf.train.import_meta_graph("/trained/model_ckpt.meta")
graph = tf.get_default_graph()
input_graph_def = graph.as_graph_def()
    
with tf.Session() as sess:
    saver.restore(sess, "/trained/model_ckpt")

    # Check all operations (nodes) in the graph:
    print("## All operations: ")
    for op in graph.get_operations():
        print(op.name)

    # OR check all variables in the graph:
    print("## All variables: ")
    for v in tf.global_variables():
        print(v.name)

    # OR check all trainable variables in the graph:
    print("## Trainable variables: ")
    for v in tf.trainable_variables():
        print(v.name)

    # OR save the whole graph and weights into a text file:
    log_dir = "/log_dir"
    out_file = "train.pbtxt"
    tf.train.write_graph(input_graph_def, logdir=log_dir, name=out_file, as_text=True)
  1. Inspect all tensors and their weight values:
from tensorflow.python import pywrap_tensorflow
    
model_file = "/trained/model_ckpt"
reader = pywrap_tensorflow.NewCheckpointReader(model_file)
var_to_shape_map = reader.get_variable_to_shape_map()
    
for key in sorted(var_to_shape_map):
    print("tensor_name: ", key)
    print(reader.get_tensor(key))

A complete working script is included in this repository (inspect_checkpoint.py).

Freeze a Model before Serving it

Sometimes, a trained model (file) can be very big, and ranging from half to several GB is a common case. At inference time, you don't have to deal with the big file if you choose to freeze the model. This process can normally decrease the model file to 25% to 35% of its original size, making the inference considerably faster.

Here are the 3 steps to achieve this:

  1. Restore / load the trained model:
import tensorflow as tf
    
saver = tf.train.import_meta_graph("/trained/model_ckpt.meta")
graph = tf.get_default_graph()
input_graph_def = graph.as_graph_def()
sess = tf.Session()
saver.restore(sess, "/trained/model_ckpt")
  1. Choose the output for the freezed model:
output_node_names = []
output_node_names.append("prediction_node")  # Specify the real node name
output_graph_def = tf.graph_util.convert_variables_to_constants(
    sess,
    input_graph_def,
    output_node_names
)

Here, you may need to use the following code to check the output node name as you have learned in the above section:

for op in graph.get_operations():
    print(op.name)

Keep in mind that when you request to output an operation, all the other operations that it depends will also be saved. Therefore, you only need to specify the final output operation in the inference graph for freezing purpose.

  1. Serialize and write the output graph and trained weights to the file system:
output_file = "model_file.pb"
with tf.gfile.GFile(output_file, "wb") as f:
    f.write(output_graph_def.SerializeToString())
    
sess.close()

A concrete working example, including how to use the freezed model for prediction can be found here.

Convert a Keras model to a TensorFlow model

The procedures to convert a Keras model to a TensorFlow model (and freeze it) are very similar to those to freeze a model described above.

Here are the 3 steps to perform the model conversion:

  1. Load the Keras model you want to convert:
import tensorflow as tf
from keras.models import load_model
from keras import backend as K

K.set_learning_phase(0)
keras_model = load_model("/trained/model_and_weights.h5")

If you have any custom functions when you build the Keras model, specify those in a python dict and pass the dict to custom_objects when using load_model() method.

  1. Specify the output for the model. Use tf.identity to rename the output nodes.
# Define num_output. If you have multiple outputs, change this number accordingly
num_output = 1

output = [None] * num_output
out_node_names = [None] * num_output
for i in range(num_output):
    out_node_names[i] = name_output + str(i)
    output[i] = tf.identity(keras_model.outputs[i], name=out_node_names[i])
    
sess = K.get_session()
constant_graph = tf.graph_util.convert_variables_to_constants(
    sess,
    sess.graph.as_graph_def(),
    out_node_names  # All other operations relying on this will also be saved
)
  1. Serialize and write the output graph and trained weights to the file system:
output_file = "model_file.pb"
with tf.gfile.GFile(output_file, "wb") as f:
    f.write(output_graph_def.SerializeToString())

A concrete working example, including how to use the converted model for prediction can be found here. This example was based on tf.keras in TensorFlow 1.4.

Deploy Multiple Freezed Models

As explained above, there is often a need to deploy multiple models. With the help of the two above sections, you can freeze a trained model in TensorFlow, and convert a trained Keras model to a model in TensorFlow. So, now if you can deploy multiple freezed models, you can actually deploy multiple models trained in TensorFlow or Keras (including the tf.keras in TF 1.4).

  1. Load the freezed or converted model
import tensorflow as tf
    
frozen_model = "/trained/model_ckpt.pb"
# Change this to use a specific prefix for all variables/tensors in this model. If the model has already a prefix
# during the training time, let name="" in the tf.import_graph_def() function.
model_scope = "model_prefix"  
    
with tf.gfile.GFile(frozen_model, "rb") as f:
    graph_def = tf.GraphDef()
    graph_def.ParseFromString(f.read())

    # This model_scope adds a prefix to all the nodes in the graph
    tf.import_graph_def(graph_def, input_map=None, return_elements=None, name="{}/".format(model_scope))

You normally need to identify the input and output of each model, and get the tensor. Then use session.run() for the prediction.

  1. Create the graph and session and pass the parameters to each model

In order to load mutliple models, you need to create the graph and session outside of the process of loading each model. Something like this:

with tf.Graph().as_default() as graph:
    # Invoke model 1 constructor
    # Invoke model 2 constructor
    # Invoke model 3 constructor if you need
    
with tf.Session(graph=graph) as sess:
    # Run model 1 prediction
    # Run model 2 prediction
    # Run model 3 prediction if you need

A concrete working example can be found in my DmsMsgRcg project.

  1. Model constructor and its prediction method for converted models from Keras: https://github.com/bshao001/DmsMsgRcg/blob/master/textdect/convertmodel.py
  2. Model constructor and its prediction method for freezed models in TensorFlow: https://github.com/bshao001/DmsMsgRcg/blob/master/misc/freezemodel.py
  3. Put everything together to load multiple models and run predictions: https://github.com/bshao001/DmsMsgRcg/blob/master/mesgclsf/msgclassifier.py

Serve a Model via Web Services

Although this does not directly relate to the problem of how to serve a trained model in TensorFlow, it is a commonly encountered issue.

We train a machine learning model using python and TensorFlow, however, we often need to make use of the model to provide services to other different environments, such as a web application or a mobile application, or using different programming languages, such as Java or C#.

Both REST API and SOAP API can meet your needs on this. REST API is relatively light-weighted, but SOAP API is not that complicated either. You can pick any of them based on your personal preferences.

As there are many online tutorials talking about the technical details of how REST and SOAP work, I only want to provide concrete working examples to illustrate the approaches.

  • REST API

An example based on Flask framework in Python as the server, while Java and Tomcat as the client can be found in my ChatLearner Project.

  • SOAP API

An example based on Tornado web server in Python as the server, while Java and Tomcat as the client can also be found in my ChatLearner Project.

References:

  1. http://cv-tricks.com/how-to/freeze-tensorflow-models/
  2. https://github.com/tensorflow/tensorflow/blob/master/tensorflow/python/tools/inspect_checkpoint.py

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