You are viewing the RapidMiner Deployment documentation for version 9.8 - Check here for latest version
GPU-enabled Job Agent
Before you create your own GPU-enabled Job Agent, be aware that RapidMiner provides pre-configured Docker images for Deep Learning. Nevertheless, if you want more technical detail, continue reading!
The main points are the following:
- Your Job Agent must be installed on a computer with CUDA-compatible GPU.
- You must install the Nvidia library CUDA and should install the library cuDNN for enhanced performance.
You must install the following RapidMiner extensions:
Pay careful attention to the compatibility matrix:
Deep Learning Extension | ND4J Back-End | Supported CUDA | Supported cuDNN |
---|---|---|---|
1.0.1 | 1.0 | 10.1 | 7.6 |
1.0 | 1.0 | 10.1 | 7.6 |
0.9.4 | 0.1.1 | 10.0 | 7.4 |
0.9.3 | 0.1.0 | 10.0 | - |
0.9.1 | - | 9.0 | - |
0.9.0 | - | 9.0 | - |
0.8.1 | - | 9.1 | - |
0.8.0 | - | 9.1 | - |
Create a GPU-enabled Job Agent
Read more: Install the Deep Learning extension
A Job Agent can take advantage of a GPU for processing images or training and scoring neural networks. Currently, one GPU can be used per Job Agent.
Take the following steps:
Install the Job Agent on a computer that has a CUDA-compatible GPU.
Follow the installation instructions for CUDA 10.1 (and cuDNN version 7.6).
Download the ND4J Back End and the Deep Learning extensions from the RapidMiner marketplace, and move them to the extensions folder belonging to the Job Agent
{homeDir}/resources/extensions/
.Create the settings file
{homeDir}/config/rapidminer/rapidminer.properties
as follows:rapidminer.backend.nd4j=GPU-CUDA rapidminer.backend.nd4j.max_bytes=32G rapidminer.backend.nd4j.max_physical_bytes=48G rapidminer.deeplearning.training_ui.ports=60080
In the current context, the first of these settings is required (GPU-CUDA), but the last three are optional, corresponding to the RapidMiner Studio settings discussed here.
Settings
The settings are defined by a properties file,
{homeDir}/config/rapidminer/rapidminer.properties
, located in the home directory of the Job Agent.
Parameter Key | Possible Parameter Value | Explanation |
---|---|---|
rapidminer.backend.nd4j |
CPU-OpenBLAS , CPU-MKL , GPU-CUDA |
Choose the computation back-end to use for calculation. |
rapidminer.backend.nd4j.max_bytes |
1024M , 16G |
The JVM off-heap memory limit for the computation backend (~native memory limit) |
rapidminer.backend.nd4j.max_physical_bytes |
1024M , 16G |
The maximum bytes for the entire process - usually set to max-bytes plus Xmx plus a bit extra, in case other libraries require some off-heap memory as well. |
rapidminer.deeplearning.training_ui.ports |
1 -65535 |
Choose a port a Job Agents training UI should be listening to. The port 0 is also allowed, but will assign a random port. |