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title | short_title | description | category | weight |
---|---|---|---|---|
Deeplearning4j Hardware and CPU/GPU Setup | GPU/CPU Setup | Hardware setup for Eclipse Deeplearning4j, including GPUs and CUDA. | Configuration | 1 |
ND4J backends for GPUs and CPUs
You can choose GPUs or native CPUs for your backend linear algebra operations by changing the dependencies in ND4J's POM.xml file. Your selection will affect both ND4J and DL4J being used in your application.
If you have CUDA v9.2+ installed and NVIDIA-compatible hardware, then your dependency declaration will look like:
<dependency>
<groupId>org.nd4j</groupId>
<artifactId>nd4j-cuda-{{ page.cudaVersion }}</artifactId>
<version>{{ page.version }}</version>
</dependency>
As of now, the artifactId
for the CUDA versions can be one of nd4j-cuda-9.0
, nd4j-cuda-9.2
or nd4j-cuda-10.0
.
You can also find the available CUDA versions via Maven Central search or in the Release Notes.
Otherwise you will need to use the native implementation of ND4J as a CPU backend:
<dependency>
<groupId>org.nd4j</groupId>
<artifactId>nd4j-native</artifactId>
<version>{{ page.version }}</version>
</dependency>
System architectures
If you are developing your project on multiple operating systems/system architectures, you can add -platform
to the end of your artifactId
which will download binaries for most major systems.
<dependency>
...
<artifactId>nd4j-native-platform</artifactId>
...
</dependency>
Multiple GPUs
If you have several GPUs, but your system is forcing you to use just one, you can use the helper CudaEnvironment.getInstance().getConfiguration().allowMultiGPU(true);
as first line of your main()
method.
CuDNN
See our page on CuDNN.
CUDA Installation
Check the NVIDIA guides for instructions on setting up CUDA on the NVIDIA website.