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freeze_graph.py
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freeze_graph.py
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# Copyright 2015 The TensorFlow Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ==============================================================================
r"""Converts checkpoint variables into Const ops in a standalone GraphDef file.
This script is designed to take a GraphDef proto, a SaverDef proto, and a set of
variable values stored in a checkpoint file, and output a GraphDef with all of
the variable ops converted into const ops containing the values of the
variables.
It's useful to do this when we need to load a single file in C++, especially in
environments like mobile or embedded where we may not have access to the
RestoreTensor ops and file loading calls that they rely on.
An example of command-line usage is:
bazel build tensorflow/python/tools:freeze_graph && \
bazel-bin/tensorflow/python/tools/freeze_graph \
--input_graph=some_graph_def.pb \
--input_checkpoint=model.ckpt-8361242 \
--output_graph=/tmp/frozen_graph.pb --output_node_names=softmax
You can also look at freeze_graph_test.py for an example of how to use it.
"""
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import argparse
import sys
from google.protobuf import text_format
from tensorflow.core.framework import graph_pb2
from tensorflow.core.protobuf import saver_pb2
from tensorflow.core.protobuf.meta_graph_pb2 import MetaGraphDef
from tensorflow.python import pywrap_tensorflow
from tensorflow.python.client import session
from tensorflow.python.framework import graph_util
from tensorflow.python.framework import importer
from tensorflow.python.platform import app
from tensorflow.python.platform import gfile
from tensorflow.python.saved_model import loader
from tensorflow.python.saved_model import tag_constants
from tensorflow.python.tools import saved_model_utils
from tensorflow.python.training import saver as saver_lib
FLAGS = None
def freeze_graph_with_def_protos(input_graph_def,
input_saver_def,
input_checkpoint,
output_node_names,
restore_op_name,
filename_tensor_name,
output_graph,
clear_devices,
initializer_nodes,
variable_names_whitelist="",
variable_names_blacklist="",
input_meta_graph_def=None,
input_saved_model_dir=None,
saved_model_tags=None,
checkpoint_version=saver_pb2.SaverDef.V2):
"""Converts all variables in a graph and checkpoint into constants."""
del restore_op_name, filename_tensor_name # Unused by updated loading code.
# 'input_checkpoint' may be a prefix if we're using Saver V2 format
if (not input_saved_model_dir and
not saver_lib.checkpoint_exists(input_checkpoint)):
print("Input checkpoint '" + input_checkpoint + "' doesn't exist!")
return -1
if not output_node_names:
print("You need to supply the name of a node to --output_node_names.")
return -1
# Remove all the explicit device specifications for this node. This helps to
# make the graph more portable.
if clear_devices:
if input_meta_graph_def:
for node in input_meta_graph_def.graph_def.node:
node.device = ""
elif input_graph_def:
for node in input_graph_def.node:
node.device = ""
if input_graph_def:
_ = importer.import_graph_def(input_graph_def, name="")
with session.Session() as sess:
if input_saver_def:
saver = saver_lib.Saver(
saver_def=input_saver_def, write_version=checkpoint_version)
saver.restore(sess, input_checkpoint)
elif input_meta_graph_def:
restorer = saver_lib.import_meta_graph(
input_meta_graph_def, clear_devices=True)
restorer.restore(sess, input_checkpoint)
if initializer_nodes:
sess.run(initializer_nodes.replace(" ", "").split(","))
elif input_saved_model_dir:
if saved_model_tags is None:
saved_model_tags = []
loader.load(sess, saved_model_tags, input_saved_model_dir)
else:
var_list = {}
reader = pywrap_tensorflow.NewCheckpointReader(input_checkpoint)
var_to_shape_map = reader.get_variable_to_shape_map()
for key in var_to_shape_map:
try:
tensor = sess.graph.get_tensor_by_name(key + ":0")
except KeyError:
# This tensor doesn't exist in the graph (for example it's
# 'global_step' or a similar housekeeping element) so skip it.
continue
var_list[key] = tensor
saver = saver_lib.Saver(
var_list=var_list, write_version=checkpoint_version)
saver.restore(sess, input_checkpoint)
if initializer_nodes:
sess.run(initializer_nodes.replace(" ", "").split(","))
variable_names_whitelist = (
variable_names_whitelist.replace(" ", "").split(",")
if variable_names_whitelist else None)
variable_names_blacklist = (
variable_names_blacklist.replace(" ", "").split(",")
if variable_names_blacklist else None)
if input_meta_graph_def:
output_graph_def = graph_util.convert_variables_to_constants(
sess,
input_meta_graph_def.graph_def,
output_node_names.replace(" ", "").split(","),
variable_names_whitelist=variable_names_whitelist,
variable_names_blacklist=variable_names_blacklist)
else:
output_graph_def = graph_util.convert_variables_to_constants(
sess,
input_graph_def,
output_node_names.replace(" ", "").split(","),
variable_names_whitelist=variable_names_whitelist,
variable_names_blacklist=variable_names_blacklist)
# Write GraphDef to file if output path has been given.
if output_graph:
with gfile.GFile(output_graph, "wb") as f:
f.write(output_graph_def.SerializeToString())
return output_graph_def
def _parse_input_graph_proto(input_graph, input_binary):
"""Parser input tensorflow graph into GraphDef proto."""
if not gfile.Exists(input_graph):
print("Input graph file '" + input_graph + "' does not exist!")
return -1
input_graph_def = graph_pb2.GraphDef()
mode = "rb" if input_binary else "r"
with gfile.FastGFile(input_graph, mode) as f:
if input_binary:
input_graph_def.ParseFromString(f.read())
else:
text_format.Merge(f.read(), input_graph_def)
return input_graph_def
def _parse_input_meta_graph_proto(input_graph, input_binary):
"""Parser input tensorflow graph into MetaGraphDef proto."""
if not gfile.Exists(input_graph):
print("Input meta graph file '" + input_graph + "' does not exist!")
return -1
input_meta_graph_def = MetaGraphDef()
mode = "rb" if input_binary else "r"
with gfile.FastGFile(input_graph, mode) as f:
if input_binary:
input_meta_graph_def.ParseFromString(f.read())
else:
text_format.Merge(f.read(), input_meta_graph_def)
print("Loaded meta graph file '" + input_graph)
return input_meta_graph_def
def _parse_input_saver_proto(input_saver, input_binary):
"""Parser input tensorflow Saver into SaverDef proto."""
if not gfile.Exists(input_saver):
print("Input saver file '" + input_saver + "' does not exist!")
return -1
mode = "rb" if input_binary else "r"
with gfile.FastGFile(input_saver, mode) as f:
saver_def = saver_pb2.SaverDef()
if input_binary:
saver_def.ParseFromString(f.read())
else:
text_format.Merge(f.read(), saver_def)
return saver_def
def freeze_graph(input_graph,
input_saver,
input_binary,
input_checkpoint,
output_node_names,
restore_op_name,
filename_tensor_name,
output_graph,
clear_devices,
initializer_nodes,
variable_names_whitelist="",
variable_names_blacklist="",
input_meta_graph=None,
input_saved_model_dir=None,
saved_model_tags=tag_constants.SERVING,
checkpoint_version=saver_pb2.SaverDef.V2):
"""Converts all variables in a graph and checkpoint into constants."""
input_graph_def = None
if input_saved_model_dir:
input_graph_def = saved_model_utils.get_meta_graph_def(
input_saved_model_dir, saved_model_tags).graph_def
elif input_graph:
input_graph_def = _parse_input_graph_proto(input_graph, input_binary)
input_meta_graph_def = None
if input_meta_graph:
input_meta_graph_def = _parse_input_meta_graph_proto(
input_meta_graph, input_binary)
input_saver_def = None
if input_saver:
input_saver_def = _parse_input_saver_proto(input_saver, input_binary)
freeze_graph_with_def_protos(
input_graph_def,
input_saver_def,
input_checkpoint,
output_node_names,
restore_op_name,
filename_tensor_name,
output_graph,
clear_devices,
initializer_nodes,
variable_names_whitelist,
variable_names_blacklist,
input_meta_graph_def,
input_saved_model_dir,
saved_model_tags.replace(" ", "").split(","),
checkpoint_version=checkpoint_version)
def main(d):
if d['checkpoint_version'] == 1:
checkpoint_version = saver_pb2.SaverDef.V1
elif d['checkpoint_version'] == 2:
checkpoint_version = saver_pb2.SaverDef.V2
else:
print("Invalid checkpoint version (must be '1' or '2'): %d" %
d['checkpoint_version'])
return -1
freeze_graph(d['input_graph'], d['input_saver'], d['input_binary'],
d['input_checkpoint'], d['output_node_names'],
d['restore_op_name'], d['filename_tensor_name'],
d['output_graph'], d['clear_devices'], d['initializer_nodes'],
d['variable_names_whitelist'], d['variable_names_blacklist'],
d['input_meta_graph'], d['input_saved_model_dir'],
d['saved_model_tags'], checkpoint_version)