Split Image Directory
This topic describes how to use the Split Image Directory component in Azure Machine Learning designer, to divide the images of an image directory into two distinct sets.
This component is particularly useful when you need to separate image data into training and testing sets.
How to configure Split Image Directory
Add the Split Image Directory component to your pipeline. You can find this component under 'Computer Vision/Image Data Transformation' category.
Connect it to component of which the output is image directory.
Input Fraction of images in the first output to specify the percentage of data to put in the left split, by default 0.9. If the fraction result is not integer, the component uses the smaller near integer.
Technical notes
Expected inputs
Name | Type | Description |
---|---|---|
Input image directory | ImageDirectory | Image directory to split |
Component parameters
Name | Type | Range | Optional | Description | Default |
---|---|---|---|---|---|
Fraction of images in the first output | Float | 0-1 | Required | Fraction of images in the first output | 0.9 |
Outputs
Name | Type | Description |
---|---|---|
Output image directory1 | ImageDirectory | Image directory that contains selected images |
Output image directory2 | ImageDirectory | Image directory that contains all other images |
Next steps
See the set of components available to Azure Machine Learning.
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