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Keras Network Reader

Analytics Integrations Deep Learning Keras
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This node reads a Keras deep learning network from an input file. The file can either contain a full, pre-trained network (.h5 file) or just a network specification without weights (.json or .yaml file).

External resources

  • KNIME Deep Learning Keras Integration

Node details

Output ports
  1. Type: Keras Deep Learning Network
    Keras Network
    The Keras deep learning network.

Extension

The Keras Network Reader node is part of this extension:

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