GET https://dev.normadoc.fr/_partial/product/IEEE00007136/features

Components

3 Twig Components
5 Render Count
5 ms Render Time
178.0 MiB Memory Usage

Components

Name Metadata Render Count Render Time
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components/ProductState.html.twig
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components/ProductMostRecent.html.twig
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ProductType
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components/ProductType.html.twig
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