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Updated
LabVIEW OneDNN Driver
This section explains how to install and configure OneDNN for the LabVIEW Deep Learning toolkit.
System Requirements
The LabVIEW Deep Learning toolkit run actually OneDNN version. To know if your GPU is compatible with this version, please consult this page.
How to install the LabVIEW Deep Learning toolkit GPU INSTALLER ?
To leverage GPU acceleration and fully utilize your OneDNN -compatible hardware in an optimized manner, you need to install OneDNN exclusively using SOTA.
- Launch SOTA: Launch SOTA..
- Access OneDNN Section: In the SOTA interface, locate and click on Hardware then Intel – OneDNN in the top menu. This will take you to the OneDNN section.
- Select Version and Install: Select your LabVIEW version and click on the install button.
- Toolkit Ready: Congratulations, you’re now ready to run Graiphic toolkits on your GPU.
Technical support
The support is managed via the support community page. You can post all your questions, thoughts or suggestions about the LabVIEW Deep Learning toolkit and other Graiphic product.
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