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SOTA
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Accelerator Toolkit
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Deep Learning Toolkit
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Computer Vision Toolkit
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CUDA Toolkit
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Getting Started
This section provides step-by-step instructions on how to install and configure the LabVIEW Computer Vision toolkit.
To begin, please follow these steps
Install SOTA
- Download SOTA: In order to install the LabVIEW Computer Vision toolkit, you will first need to download SOTA. You can download SOTA by visiting the following link:Β https://graiphic.io/download/
- Install SOTA: Once you have downloaded the SOTA setup file, run the installer and follow the on-screen instructions to install SOTA on your system.
- Launch SOTA : After the installation is complete, launch SOTA from your desktop or start menu.
Install the Computer Vision Toolkit
- Access LabVIEW Computer Vision Module: In the SOTA interface, locate and click on the LabVIEW Computer Vision module.
- Select Version and Install: Select your LabVIEW version and click on the install button.
- Accept License Agreement: Accept the terms of the license agreement to install the toolkit.
- Launch LabVIEW: Once the installation is complete, you can launch LabVIEW and start utilizing theComputer Vision toolkit.
Congratulations! You have successfully installed the Compuer Vision toolkit using SOTA, and now you can make the most of your computer vision toolkit within LabVIEW.
Note: Installing the Computer Vision Toolkit requires SOTA to be installed first. SOTA provides the interface to select, install, and activate the Computer Vision Toolkit within your LabVIEW environment.
If you encounter any issues or have any questions during the installation process, please refer reach out to our support team for assistance on support community page.
We appreciate your interest in the Computer Vision toolkit and hope you find this installation guide helpful.
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System Requirements
Visit the FREQUENTLY ASKED QUESTIONS to learn about hardware and software requirements.
Technical support
The support is managed via the support community page. You can post all your questions, thoughts or suggestions about Computer Vision toolkit and other Graiphic product.
Releases notes
The Computer Vision toolkitΒ is constantly updated. Latest release note is available HERE.
