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		Accelerator
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		Constant
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		Generator
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		Full Train Step
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		Train Step
Convert ONNX To H5
Description
This VI transforms a .onnx model into the HDF5 format (.h5) commonly used in TensorFlow/Keras workflows. It enables ONNX models to be reused in training or inference pipelines within the Keras ecosystem. Optionally, the converted model can be visualized in Netron.
 
			Input parameters
 Open Netron : boolean, indicating whether to automatically open the resulting ONNX file in Netron after conversion. If true opens in Netron else conversion only.
 Open Netron : boolean, indicating whether to automatically open the resulting ONNX file in Netron after conversion. If true opens in Netron else conversion only.
 ONNX Model Path : path, path to the input
 ONNX Model Path : path, path to the input .onnx file containing the model to be converted.
 H5 Model Path : path, path to the destination
 H5 Model Path : path, path to the destination .h5 file where the converted Keras model will be saved.
Output parameters
 Β standard output :Β string,Β text output from the underlying Python process. Can include logs, conversion info, or warnings.
Β standard output :Β string,Β text output from the underlying Python process. Can include logs, conversion info, or warnings.
 Β standard error :Β string,Β text output capturing any error messages from the Python process, useful for debugging failed conversions.
Β standard error :Β string,Β text output capturing any error messages from the Python process, useful for debugging failed conversions.
