PyeIQ is written on top of eIQ™ ML Software Development Environment and provides a set of Python classes allowing the user to run Machine Learning applications in a simplified and efficiently way without spending time on cross-compilations, deployments or reading extensive guides.
Now PyeIQ 3.0.x release is announced. This release is based on i.MX Linux BSP 5.4.70_2.3.0 & 5.4.70_2.3.2(8QM, 8M Plus) and can also work on i.MX Linux BSP 5.10.9_1.0.0 & 5.10.35_2.0.0 & 5.10.52_2.1.0. And also, in latest PyeIQ 3.1.0 release, BSP 5.10.72_2.2.0 is also added into supported list.
This article is a simple guide for users. For further questions, please post a comment on eIQ Community or just below this article.
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