I want to check the loading graph is correct.

I save the learned protocol buffers file by python. And, I load the protocol buffers file by c++.

But I can't get the output tensor when the session run.

I want to output and check the graph information.

**Saveing code by python**

```
with tf.Graph().as_default() as graph:
input_data = tf.placeholder(tf.float32, shape=train_data.shape, name="input")
keep_prob = tf.placeholder(tf.float32)
answer = net.inference(input_data, units, io_data_dim, keep_prob, output_net=True)
saver = tf.train.Saver()
with tf.Session() as sess:
# Load model file
sess.run(tf.initialize_all_variables())
ckpt = tf.train.get_checkpoint_state(ckpt_dir_name)
if ckpt: # checkpoint is exist
last_model = ckpt.model_checkpoint_path # last model path
saver.restore(sess, last_model)
else:
print("There is no training network...")
exit()
# check the saveing graph
for v in sess.graph.get_operations():
print(v.name)
graph_def = graph_util.convert_variables_to_constants(sess, graph.as_graph_def(), ['output_lay/output_lay'])
tf.train.write_graph(graph_def, '.', pb_name, as_text=False)
```

**Loading code by C++**

```
Status LoadGraph(string graph_file_name, std::unique_ptr<tensorflow::Session>* session) {
tensorflow::GraphDef graph_def;
Status graph_status = ReadBinaryProto(tensorflow::Env::Default(), graph_file_name, &graph_def);
if (!graph_status.ok())
{
return graph_status;
}
session->reset(tensorflow::NewSession(tensorflow::SessionOptions()));
Status create_status = (*session)->Create(graph_def);
if (!create_status.ok())
{
return create_status;
}
return Status::OK();
}
```

**Runing code by c++**

input_node_name = "input"

output_node_name = "output_lay/output_lay"

```
Status Infer(std::unique_ptr<tensorflow::Session>* session,
tensorflow::Tensor* input,
string* input_node_name,
string* output_node_name,
tensorflow::Tensor* output)
{
tensorflow::Tensor input_object = *input;
// input
// I am not confident here
tensorflow::Tensor keep_prob(tensorflow::DT_FLOAT, tensorflow::TensorShape());
keep_prob.scalar<float>()() = 1.0;
std::vector<std::pair<string, tensorflow::Tensor>> inputs = {
{"Placeholder", keep_prob},
{*input_node_name, *input}
};
// ouput
std::vector<tensorflow::Tensor> outputs;
std::cout << "Runnning network..." << std::endl;
Status result = (*session)->Run(
inputs,
{*output_node_name},
{},
&outputs
);
// output 0 (no reply?)
std::cout << "outputs size " << outputs.size() << std::endl;
if (!result.ok())
{
LOG(ERROR) << "Failure: " << result;
}
(*output) = outputs[0];
//std::cout << "take first output" << std::endl;
return result;
}
```

**result** is

Invalid argument: Incompatible shapes: **[77,1,513,16] vs. [13780,1,513,16]**
[[Node: conv1/dropout/mul = Mul[T=DT_FLOAT, _device="/job:localhost/replica:0/task:0/cpu:0"](conv1/dropout/Div, conv1/dropout/Floor)]]

ex) if not use the cnn ( the 3 layer perceptron network)
Invalid argument: Incompatible shapes: **[77,600] vs. [10242,600]**
[[Node: hidden1/dropout/mul = Mul[T=DT_FLOAT, _device="/job:localhost/replica:0/task:0/cpu:0"](hidden1/dropout/Div, hidden1/dropout/Floor)]]

**pickup of the output 1st python code**

- input
- Placeholder
- Reshape/shape
- Reshape
- conv1/weights
- conv1/biases
- conv1/Conv2D
- conv1/MaxPool
- conv1/Add
- conv1/conv1
- conv1/dropout/Shape
- conv1/dropout/add
- conv1/dropout/Floor
- conv1/dropout/Div
- conv1/dropout/mul
- conv2/weights
- conv2/biases
- conv2/Conv2D
- ...
- Reshape_1/shape
- Reshape_1
- hidden1/weights
- hidden1/biases
- hidden1/MatMul
- hidden1/Add
- hidden1/hidden1
- hidden1/dropout/add
- hidden1/dropout/Floor
- hidden1/dropout/Div
- hidden1/dropout/mul
- hidden2/weights
- ...
- output_lay/weights
- output_lay/biases
- output_lay/MatMul
- output_lay/Add
- output_lay/output_lay