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Computer Vision Toolkit
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CUDA Toolkit
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- Resume
- Array size
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UpdatedNovember 27, 2025
FREQUENTLY ASKED QUESTIONS
Which LabVIEW functionalities are supported by the toolkit ?
Perrine try to offers all existing LabVIEW functionalities and is constantly updated. The detail of the available functionalities is available here.
Does the toolkit support evaluation ?
No, for now this toolkit is free.
What type of hardware is supported by the toolkit ?
PERRINE supports x86 based PC Windows OS.Β
Can a user suggest adding a new feature?
Yes, absolutely! We encourage user feedback and suggestions. Our teams are dynamic and efficient, and they will be more than happy to consider and add new functionalities. Don’t hesitate to share your ideas with us!
Which version of LabVIEW is supported by the toolkit ?
The latest version of the toolkit supports 64-bit versions of LabVIEWΒ 2020 and LabVIEW 2023. For a specific version please contact us.
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