Tensorgraph is an TensorFlow example to show
More detailed description in my blog post
How to generate checkpoint, graph.pb, tensorboard.
The directory struct is
mnist.py
board/
models/
After run
$ python mnist.py
The directory struct will be expected to
mnist.py
board/
event.out.tfevents
models/
graph.pb
model.ckpt
Mnist_data/
...
From Tensorflow official guide says that:
What this does is load the GraphDef, pull in the values for all the variables from the latest checkpoint file, and then replace each Variable op with a Const that has the numerical data for the weights stored in its attributes It then strips away all the extraneous nodes that aren't used for forward inference, and saves out the resulting GraphDef into an output file
Hence, we do the following steps to generate frozen graph
bazel build tensorflow/python/tools:freeze_graph && \
bazel-bin/tensorflow/python/tools/freeze_graph \
--input_graph=graph.pb \
--input_checkpoint=model.ckpt \
--output_graph=/tmp/frozen_graph.pb --output_node_names=softmax
How to load graph with tensorflow c++ api and do the prediction.
Put the directory to tensorflow source code.
Here is the final directory structure:
tensorflow/tensorflow/loadgraph
tensorflow/tensorflow/loadgraph/mnist.cc
tensorflow/tensorflow/loadgraph/MNIST.h
tensorflow/tensorflow/loadgraph/BUILD
Compile and Run
From inside the TensorFlow project folder call $bazel build tensorflow/tensorflow/loadgraph:mnistpredict
From the repository root, go into bazel-bin/tensorflow/loadgraph
.
Copy the frozen_graph.pb
and Mnist_data
to bazel-bin/tensorflow/loadgraph
Then run ./mnistpredict
and check the output