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I've been developing c++ project using a Tensorflow c++ api. it just execute created tensorflow's graph from Python. I build it using bazel with Tensorflow code now. But I think it's inefficient way.

I want just Tensorflow library and header files, and Just compile my project only using Cmake.

I know how to build shared library.

bazel build -c opt --config=cuda //tensorflow:libtensorflow.so but this command just make a libtensorflow.so file. I can't find header files for build my project.

Is there way to package tensorflow library for c++? such as mvn package command.

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  • 1
    Possible duplicate of How to build and use Google TensorFlow C++ api
    – m8mble
    Nov 10, 2016 at 8:33
  • @m8mble The questions are close, indeed. It seems to me more specific to CMake here. Should we ask for an extra tag or something in the title? Nov 10, 2016 at 8:37
  • 1
    @EricPlaton Yes, this would atleast help. In any case, the question lacks distinction from the old one...
    – m8mble
    Nov 10, 2016 at 8:40

5 Answers 5

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As far as I know, there is no official distributable C++ API package. There is, however, tensorflow_cc project that builds and installs TF C++ API for you, along with convenient CMake targets you can link against. According to your description, that may be just what you need.

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If your operating system is Debian or Ubuntu, you can download unofficial prebuilt packages with the Tensorflow C/C++ libraries. This distribution can be used for C/C++ inference with CPU, GPU support is not included:

https://github.com/kecsap/tensorflow_cpp_packaging/releases

There are instructions written how to freeze a checkpoint in Tensorflow (TFLearn) and load this model for inference with the C/C++ API:

https://github.com/kecsap/tensorflow_cpp_packaging/blob/master/README.md

Beware: I am the developer of this Github project.

As Floop already mentioned, his tensorflow_cc project is also a good alternative without packaging, especially if you want GPU support for the inference.

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You can build tensorflow with CMake. This also creates a TensorflowConfig.cmake, which you can integrate in your project

https://github.com/tensorflow/tensorflow/tree/master/tensorflow/contrib/cmake

Little hint: You have to build the shared lib, even if you do not need it.

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You have two option: static linking and dynamic linking. If you want to dynamic link your c++ project to TensorFlow, all you need is a --whole-archive linker flag. The necessary header files are provided by a pip install.

Generating the library is basically

bazel build -c opt --copt=-mfpmath=both --config=cuda //tensorflow:libtensorflow.so
bazel build -c opt --copt=-mfpmath=both --config=cuda //tensorflow:libtensorflow_cc.so

Having everything in place it is easy to run a TensorFlow graph in C, C++, Go (GitHub project). See the linked project for these working examples in C, C++, Go.

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When building against the shared library, the headers I use are in $PROJECT_HOME/bazel-genfiles.

Adding $PROJECT_HOME/bazel-genfiles to the linker header list should be enough.

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  • This is not enough.
    – Seanny123
    May 24, 2017 at 7:50

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