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Model Reader (deprecated)

IO Read

This node has been deprecated and its use is not recommended. Please search for updated nodes instead.

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Reads KNIME model port objects that were written with the Model Writer node.

Node details

Output ports
  1. Type: PortObject
    Object
    The KNIME model just read.

Extension

The Model Reader (deprecated) node is part of this extension:

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