前一篇讲过环境的部署篇,这一次就讲讲从代码角度如何导出pb模型,如何进行服务调用。

1 hello world篇

部署完docker后,如果是cpu环境,可以直接拉取tensorflow/serving,如果是GPU环境则麻烦点,具体参考前一篇,这里就不再赘述了。

cpu版本的可以直接拉取tensorflow/serving,docker会自动拉取latest版本:

docker pull tensorflow/serving


比如我需要的是1.12.0版本的tf,那么也可以拉取指定的版本:

docker pull tensorflow/serving:1.12.0


拉取完镜像,需要下载一个hello world的程序代码。

mkdir -p /tmp/tfserving
cd /tmp/tfserving
git clone https://github.com/tensorflow/serving


tensorflow/serving的github中有对应的测试模型,模型其实就是 y = 0.5 * x + 2。即输入一个数,输出是对应的y。

运行下面的命令,在docker中部署服务:

docker run -p 8501:8501 --mount type=bind,source=/tmp/serving/tensorflow_serving/servables/tensorflow/testdata/saved_model_half_plus_two_cpu,target=/models/half_plus_two -e MODEL_NAME=half_plus_two -t tensorflow/serving &


上面的命令中,把​​/tmp/serving/tensorflow_serving/servables/tensorflow/testdata/saved_model_half_plus_two_cpu​​路径挂载到​​/models/half_plus_two​​,这样tensorflow_serving就可以加载models下的模型了,然后开放内部8501的http接口。

执行​​docker ps​​查看服务列表:

➜  ~ docker ps
CONTAINER ID IMAGE COMMAND CREATED STATUS PORTS NAMES
7decb4286057 tensorflow/serving "/usr/bin/tf_serving…" 7 seconds ago Up 6 seconds 8500/tcp, 0.0.0.0:8501->8501/tcp eager_dewdney


发送一个http请求测试一下:

curl -d '{"instances": [1.0, 2.0, 5.0]}' -X POST http://localhost:8501/v1/models/half_plus_two:predict
{
"predictions": [2.5, 3.0, 4.5
]
}%


2 mnist篇

由于前面的例子,serving工程下只有pb模型,没有模型的训练和导出,因此看不出其中的门道。这一部分就直接基于手写体识别的例子,展示一下如何从tensorflow训练代码导出模型,又如何通过grpc服务进行模型的调用。

训练和导出:

#! /usr/bin/env python
"""
训练并导出Softmax回归模型,使用SaveModel导出训练模型并添加签名。
"""

from __future__ import print_function

import os
import sys

# This is a placeholder for a Google-internal import.

import tensorflow as tf
import ssl
ssl._create_default_https_context = ssl._create_unverified_context

import basic.mnist_input_data as mnist_input_data

# 定义模型参数
tf.app.flags.DEFINE_integer('training_iteration', 10, 'number of training iterations.')
tf.app.flags.DEFINE_integer('model_version', 2, 'version number of the model.')
tf.app.flags.DEFINE_string('work_dir', './tmp', 'Working directory.')
FLAGS = tf.app.flags.FLAGS

def main(_):

# 参数校验
# if len(sys.argv) < 2 or sys.argv[-1].startswith('-'):
# print('Usage: mnist_saved_model.py [--training_iteration=x] '
# '[--model_version=y] export_dir')
# sys.exit(-1)
# if FLAGS.training_iteration <= 0:
# print('Please specify a positive value for training iteration.')
# sys.exit(-1)
# if FLAGS.model_version <= 0:
# print('Please specify a positive value for version number.')
# sys.exit(-1)

# Train model
print('Training model...')

mnist = mnist_input_data.read_data_sets(FLAGS.work_dir, one_hot=True)

sess = tf.InteractiveSession()

serialized_tf_example = tf.placeholder(tf.string, name='tf_example')
feature_configs = {'x': tf.FixedLenFeature(shape=[784], dtype=tf.float32), }
tf_example = tf.parse_example(serialized_tf_example, feature_configs)
x = tf.identity(tf_example['x'], name='x') # use tf.identity() to assign name
y_ = tf.placeholder('float', shape=[None, 10])
w = tf.Variable(tf.zeros([784, 10]))
b = tf.Variable(tf.zeros([10]))
sess.run(tf.global_variables_initializer())
y = tf.nn.softmax(tf.matmul(x, w) + b, name='y')
cross_entropy = -tf.reduce_sum(y_ * tf.log(y))
train_step = tf.train.GradientDescentOptimizer(0.01).minimize(cross_entropy)
values, indices = tf.nn.top_k(y, 10)
table = tf.contrib.lookup.index_to_string_table_from_tensor(
tf.constant([str(i) for i in range(10)]))
prediction_classes = table.lookup(tf.to_int64(indices))
for _ in range(FLAGS.training_iteration):
batch = mnist.train.next_batch(50)
train_step.run(feed_dict={x: batch[0], y_: batch[1]})
correct_prediction = tf.equal(tf.argmax(y, 1), tf.argmax(y_, 1))
accuracy = tf.reduce_mean(tf.cast(correct_prediction, 'float'))
print('training accuracy %g' % sess.run(
accuracy, feed_dict={
x: mnist.test.images,
y_: mnist.test.labels
}))
print('Done training!')

# Export model
# WARNING(break-tutorial-inline-code): The following code snippet is
# in-lined in tutorials, please update tutorial documents accordingly
# whenever code changes.

# export_path_base = sys.argv[-1]
export_path_base = "/Users/xingoo/PycharmProjects/ml-in-action/实践-tensorflow/01-官方文档-学习和使用ML/save_model"
export_path = os.path.join(tf.compat.as_bytes(export_path_base), tf.compat.as_bytes(str(FLAGS.model_version)))
print('Exporting trained model to', export_path)
# 配置导出地址,创建SaveModel
builder = tf.saved_model.builder.SavedModelBuilder(export_path)

# Build the signature_def_map.

# 创建TensorInfo,包含type,shape,name
classification_inputs = tf.saved_model.utils.build_tensor_info(serialized_tf_example)
classification_outputs_classes = tf.saved_model.utils.build_tensor_info(prediction_classes)
classification_outputs_scores = tf.saved_model.utils.build_tensor_info(values)

# 分类签名:算法类型+输入+输出(概率和名字)
classification_signature = (
tf.saved_model.signature_def_utils.build_signature_def(
inputs={
tf.saved_model.signature_constants.CLASSIFY_INPUTS:
classification_inputs
},
outputs={
tf.saved_model.signature_constants.CLASSIFY_OUTPUT_CLASSES:
classification_outputs_classes,
tf.saved_model.signature_constants.CLASSIFY_OUTPUT_SCORES:
classification_outputs_scores
},
method_name=tf.saved_model.signature_constants.CLASSIFY_METHOD_NAME))

tensor_info_x = tf.saved_model.utils.build_tensor_info(x)
tensor_info_y = tf.saved_model.utils.build_tensor_info(y)

# 预测签名:输入的x和输出的y
prediction_signature = (
tf.saved_model.signature_def_utils.build_signature_def(
inputs={'images': tensor_info_x},
outputs={'scores': tensor_info_y},
method_name=tf.saved_model.signature_constants.PREDICT_METHOD_NAME))

# 构建图和变量的信息:
"""
sess 会话
tags 标签,默认提供serving、train、eval、gpu、tpu
signature_def_map 签名
main_op 初始化?
strip_default_attrs strip?
"""
# predict_images就是服务调用的方法
# serving_default是没有输入签名时,使用的方法
builder.add_meta_graph_and_variables(
sess, [tf.saved_model.tag_constants.SERVING],
signature_def_map={
'predict_images':
prediction_signature,
tf.saved_model.signature_constants.DEFAULT_SERVING_SIGNATURE_DEF_KEY:
classification_signature,
},
main_op=tf.tables_initializer(),
strip_default_attrs=True)

# 保存
builder.save()

print('Done exporting!')


if __name__ == '__main__':
tf.app.run()


执行后,在当前目录中就有一个save_model文件,保存了各个版本的pb模型文件。

然后基于grpc部署服务:

docker run -p 8500:8500 --mount type=bind,source=/Users/xingoo/PycharmProjects/ml-in-action/01-实践-tensorflow/01-官方文档-学习和使用ML/save_model,target=/models/mnist -e MODEL_NAME=mnist -t tensorflow/serving &


服务部署成功,查看一下docker列表:

➜  ~ docker ps
CONTAINER ID IMAGE COMMAND CREATED STATUS PORTS NAMES
39a06cc35961 tensorflow/serving "/usr/bin/tf_serving…" 4 seconds ago Up 3 seconds 0.0.0.0:8500->8500/tcp, 8501/tcp hardcore_galileo


然后编写对应的client代码:

import tensorflow as tf
import basic.mnist_input_data as mnist_input_data
import grpc
import numpy as np
import sys
import threading

from tensorflow_serving.apis import predict_pb2
from tensorflow_serving.apis import prediction_service_pb2_grpc

tf.app.flags.DEFINE_integer('concurrency', 1, 'maximum number of concurrent inference requests')
tf.app.flags.DEFINE_integer('num_tests', 100, 'Number of test images')
tf.app.flags.DEFINE_string('server', 'localhost:8500', 'PredictionService host:port')
tf.app.flags.DEFINE_string('work_dir', './tmp', 'Working directory. ')
FLAGS = tf.app.flags.FLAGS

test_data_set = mnist_input_data.read_data_sets(FLAGS.work_dir).test
channel = grpc.insecure_channel(FLAGS.server)
stub = prediction_service_pb2_grpc.PredictionServiceStub(channel)

class _ResultCounter(object):
"""Counter for the prediction results."""

def __init__(self, num_tests, concurrency):
self._num_tests = num_tests
self._concurrency = concurrency
self._error = 0
self._done = 0
self._active = 0
self._condition = threading.Condition()

def inc_error(self):
with self._condition:
self._error += 1

def inc_done(self):
with self._condition:
self._done += 1
self._condition.notify()

def dec_active(self):
with self._condition:
self._active -= 1
self._condition.notify()

def get_error_rate(self):
with self._condition:
while self._done != self._num_tests:
self._condition.wait()
return self._error / float(self._num_tests)

def throttle(self):
with self._condition:
while self._active == self._concurrency:
self._condition.wait()
self._active += 1

def _create_rpc_callback(label, result_counter):
def _callback(result_future):
exception = result_future.exception()
if exception:
result_counter.inc_error()
print(exception)
else:
response = np.array(result_future.result().outputs['scores'].float_val)
prediction = np.argmax(response)
sys.stdout.write("%s - %s\n" % (label, prediction))
sys.stdout.flush()

result_counter.inc_done()
result_counter.dec_active()

return _callback


result_counter = _ResultCounter(FLAGS.num_tests, FLAGS.concurrency)
for i in range(FLAGS.num_tests):
request = predict_pb2.PredictRequest()
request.model_spec.name = 'mnist'
request.model_spec.signature_name = 'predict_images'
image, label = test_data_set.next_batch(1)
request.inputs['images'].CopyFrom(tf.contrib.util.make_tensor_proto(image[0], shape=[1, image[0].size]))
result_counter.throttle()
result_future = stub.Predict.future(request, 5.0) # 5 seconds
result_future.add_done_callback(_create_rpc_callback(label[0], result_counter))

print(result_counter.get_error_rate())


得到对应的输出:

3 - 3
6 - 6
9 - 9
3 - 3
1 - 1
4 - 9
1 - 5
7 - 9
6 - 6
9 - 9
0.0