1

I'm looking the TF Lite Android App

Which can be found on GIT: https://github.com/tensorflow/tensorflow/tree/master/tensorflow/contrib/lite/java/demo

How can I compile the tensorflow lite framework to use the optimized "atom" cpu type?

Is it possible to compile it on a MAC os with the CPU optimizations for the "atom" cpu?

I want to run the app on an Android device (SDK 22) with an "Intel Atom" Processor. When I run the application without any changes through Android Studio the rate was about 1200ms per frame. Compering the same APK installed on my Galaxy S9 (arm - snapdragon processor) was about 30ms per frame.

In the "build.gradle" there is this section:

dependencies {
...    
compile 'org.tensorflow:tensorflow-lite:0.0.0-nightly'

...
}

So it's seems that it's downloading the framework,

How can I compile it locally with the CPU optimization and set the app to use it instead of downloading the non optimized nightly version?

I tried to run this tutorial : Installing TensorFlow from Sources with the cpu flags but not sure exactly how it's helping me with the Android scenario..

3

Assuming that your Atom device is x86, use the --fat_apk_cpu flag to specify the x86 ABI:

$ bazel build -c opt --cxxopt='--std=c++11' \ 
    --fat_apk_cpu=x86 \
    //tensorflow/contrib/lite/java/demo/app/src/main:TfLiteCameraDemo 

Switch x86 with x86_64 if you're building for a 64-bit device.

The built APK, available at bazel-bin/tensorflow/contrib/lite/java/demo/app/src/main/TfLiteCameraDemo.apk, will contain the x86 .so file:

$ zipinfo bazel-bin/tensorflow/contrib/lite/java/demo/app/src/main/TfLiteCameraDemo.apk | grep lib
-rw----     2.0 fat  1434712 b- defN 80-Jan-01 00:00 lib/x86/libtensorflowlite_jni.so 

If your device is connected, you can use bazel mobile-install instead of bazel build to directly install the app:

$ bazel mobile-install -c opt --cxxopt='--std=c++11' \ 
  --fat_apk_cpu=x86 \ 
  --start_app \
  //tensorflow/contrib/lite/java/demo/app/src/main:TfLiteCameraDemo
| improve this answer | |
  • keep getting weird compilation errors when doing so : "ERROR: No default_toolchain found for cpu 'x86'. Valid cpus are: [ darwin, darwin_x86_64, k8, ios_x86_64, ios_i386, ios_armv7, ios_arm64, watchos_i386, watchos_armv7k, tvos_x86_64, tvos_arm64, armeabi-v7a, ]" How can I add this cpu type to this cpu collection? – Aviram Fireberger Jul 9 '18 at 15:11
  • What command are you running? Are you building the cc_library directly? – Jin Jul 9 '18 at 15:33
  • Well now I'm getting this error while running the first command you give me: ERROR: /Users/myuser/Workspaces/tensorflow/tensorflow/contrib/lite/java/demo/app/src/main/BUILD:7:1: no such package '@androidsdk//com.android.support': The repository could not be resolved and referenced by '//tensorflow/contrib/lite/java/demo/app/src/main:TfLiteCameraDemo' ERROR: /Users/myuser/Workspaces/tensorflow/tensorflow/contrib/lite/java/demo/app/src/main/BUILD:7:1: no such package '@androidsdk//com.android.support': The repository could not be resolved and referenced by – Aviram Fireberger Jul 9 '18 at 15:35
  • Please follow step 3 of the "Building from Source with Bazel" guide to set up the Android SDK and NDK in the WORKSPACE file. – Jin Jul 9 '18 at 15:37
  • 1
    It does look like it has changed but the docs are not updated. The error you're getting is for a missing SDK. You can fix that manually by adding the lines android_sdk_repository( name = "androidsdk", path = "/path/to/Android/sdk" ) and android_ndk_repository( name = "androidndk", path = "/path/to/ndk" ) to the WORKSPACE file. – Jin Jul 9 '18 at 15:46

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.