I'm new to DL4J and I'm having an ominous bug in my code right now.

I'm using a GPU backend on Windows 10 with CUDA 9.2 and when I come to train my model using model.fit(...) with batch sizes greater than 1 (i.e new RecordReaderMultiDataSetIterator.Builder(2), I get the following exception:

java.lang.RuntimeException: Legacy ConcatFloat(...) failedError code [4]
at org.nd4j.nativeblas.Nd4jCuda$NativeOps.concatFloat(Native Method)
at org.nd4j.linalg.jcublas.JCublasNDArrayFactory.concat(JCublasNDArrayFactory.java:481)
at org.nd4j.linalg.factory.Nd4j.concat(Nd4j.java:5170)
at org.deeplearning4j.datasets.datavec.RecordReaderMultiDataSetIterator.convertWritablesBatched(RecordReaderMultiDataSetIterator.java:400)
at org.deeplearning4j.datasets.datavec.RecordReaderMultiDataSetIterator.convertFeaturesOrLabels(RecordReaderMultiDataSetIterator.java:359)
at org.deeplearning4j.datasets.datavec.RecordReaderMultiDataSetIterator.nextMultiDataSet(RecordReaderMultiDataSetIterator.java:326)
at org.deeplearning4j.datasets.datavec.RecordReaderMultiDataSetIterator.next(RecordReaderMultiDataSetIterator.java:212)
at org.deeplearning4j.datasets.datavec.RecordReaderMultiDataSetIterator.next(RecordReaderMultiDataSetIterator.java:118)
at org.deeplearning4j.datasets.datavec.RecordReaderMultiDataSetIterator.next(RecordReaderMultiDataSetIterator.java:60)
at training.algorithm.AlphaZeroLeHavreTrainingAlgorithm.trainModel(AlphaZeroLeHavreTrainingAlgorithm.java:220)
at training.algorithm.AlgorithmTest.test(AlgorithmTest.java:29)
at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method)
at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:62)
at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43)
at java.lang.reflect.Method.invoke(Method.java:498)
at org.junit.runners.model.FrameworkMethod$1.runReflectiveCall(FrameworkMethod.java:50)
at org.junit.internal.runners.model.ReflectiveCallable.run(ReflectiveCallable.java:12)
at org.junit.runners.model.FrameworkMethod.invokeExplosively(FrameworkMethod.java:47)
at org.junit.internal.runners.statements.InvokeMethod.evaluate(InvokeMethod.java:17)
at org.junit.runners.ParentRunner.runLeaf(ParentRunner.java:325)
at org.junit.runners.BlockJUnit4ClassRunner.runChild(BlockJUnit4ClassRunner.java:78)
at org.junit.runners.BlockJUnit4ClassRunner.runChild(BlockJUnit4ClassRunner.java:57)
at org.junit.runners.ParentRunner$3.run(ParentRunner.java:290)
at org.junit.runners.ParentRunner$1.schedule(ParentRunner.java:71)
at org.junit.runners.ParentRunner.runChildren(ParentRunner.java:288)
at org.junit.runners.ParentRunner.access$000(ParentRunner.java:58)
at org.junit.runners.ParentRunner$2.evaluate(ParentRunner.java:268)
at org.junit.runners.ParentRunner.run(ParentRunner.java:363)
at org.eclipse.jdt.internal.junit4.runner.JUnit4TestReference.run(JUnit4TestReference.java:86)
at org.eclipse.jdt.internal.junit.runner.TestExecution.run(TestExecution.java:38)
at org.eclipse.jdt.internal.junit.runner.RemoteTestRunner.runTests(RemoteTestRunner.java:538)
at org.eclipse.jdt.internal.junit.runner.RemoteTestRunner.runTests(RemoteTestRunner.java:760)
at org.eclipse.jdt.internal.junit.runner.RemoteTestRunner.run(RemoteTestRunner.java:460)
at org.eclipse.jdt.internal.junit.runner.RemoteTestRunner.main(RemoteTestRunner.java:206)
Suppressed: java.lang.RuntimeException: cudaStreamSynchronize(...) failed
    at org.nd4j.nativeblas.Nd4jCuda$NativeOps.streamSynchronize(Native Method)
    at org.nd4j.linalg.jcublas.context.CudaContext.syncSpecialStream(CudaContext.java:112)
    at org.nd4j.linalg.jcublas.ops.executioner.CudaGridExecutioner.flushQueueBlocking(CudaGridExecutioner.java:959)
    at org.nd4j.linalg.jcublas.ops.executioner.CudaGridExecutioner.commit(CudaGridExecutioner.java:1087)
    at org.nd4j.linalg.memory.abstracts.Nd4jWorkspace.close(Nd4jWorkspace.java:594)
    at training.algorithm.AlgorithmTest.test(AlgorithmTest.java:36)
    ... 23 more

On top of the exception found, I sometimes get an error message in the console before the exception is thrown, either

CUDA error at D:/jenkins/ws/dl4j-latest_release-windows-x86_64-cuda-9.2/libnd4j/blas/cuda/NativeOps.cu:4355 code=4(cudaErrorLaunchFailure) "result"

or

FATAL ERROR in native method: JDWP on checking for an interface, 
jvmtiError=JVMTI_ERROR_WRONG_PHASE(112)
JDWP exit error JVMTI_ERROR_WRONG_PHASE(112): on checking for an interface 
[util.c:1313]

and sometimes none appear before the exception above (java.lang.RuntimeException: Legacy ConcatFloat(...) failedError code [4]...).

However, the code works just fine for a batch size of 1 (i.e . new RecordReaderMultiDataSetIterator.Builder(1).....

I thought that my pom.xml file may have had the wrong version for my CUDA, but as of right now, these are the related dependencies used for DL4j in my project:

...
 <dependency>
  <groupId>org.deeplearning4j</groupId>
  <artifactId>deeplearning4j-core</artifactId>
  <version>1.0.0-beta2</version>
</dependency>
<dependency>
     <groupId>org.nd4j</groupId>
     <artifactId>nd4j-cuda-9.2-platform</artifactId>
     <version>1.0.0-beta2</version>
</dependency>

<dependency>
     <groupId>org.nd4j</groupId>
     <artifactId>nd4j-cuda-9.2</artifactId>
     <version>1.0.0-beta2</version>
</dependency>  

<dependency>
    <groupId>org.deeplearning4j</groupId>
    <artifactId>deeplearning4j-ui_2.10</artifactId>
    <version>1.0.0-beta2</version>
</dependency>

<dependency>
    <groupId>org.deeplearning4j</groupId>
    <artifactId>deeplearning4j-parallel-wrapper_2.10</artifactId>
    <version>1.0.0-beta2</version>
</dependency>
...

I've tried changing the ComputationGraph model to a simpler one, but I still get the same error. I'm using the basic RecordReaderMultiDataSetIterator as my data iterator.

To ensure that I didn't have any problems in my dataset, I tried the native (CPU) version of Dl4j, and it works just fine, only CUDA backend actually fails.

I also cleaned and rebuilt my maven project in case some dependencies were being overridden, but to no avail.

Any help is greatly appreciated, thanks!

  • If I had to guess, you have an issue with your cuda install. Make sure the versions are right. It also might be your gpu card as well. – Adam Gibson Sep 15 at 0:39
  • I remember having problems with cuda when i set it up too. Not sure if it was the same, but in the end i settled with cuda 8.0. Might want to try that – reden Sep 16 at 8:30

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Browse other questions tagged or ask your own question.