import onnx
from onnx import helper, TensorProto
import numpy as np
def create_multi_io_model():
input1 = helper.make_tensor_value_info('input_a', TensorProto.FLOAT, [1, 4])
input2 = helper.make_tensor_value_info('input_b', TensorProto.FLOAT, [1, 4])
input3 = helper.make_tensor_value_info('input_c', TensorProto.FLOAT, [1, 4])
output1 = helper.make_tensor_value_info('output_sum', TensorProto.FLOAT, [1, 4])
output2 = helper.make_tensor_value_info('output_product', TensorProto.FLOAT, [1, 4])
nodes = [
helper.make_node('Add', ['input_a', 'input_b'], ['sum_ab'], name='add1'),
helper.make_node('Mul', ['sum_ab', 'input_c'], ['output_product'], name='mul1'),
helper.make_node('Add', ['sum_ab', 'input_c'], ['output_sum'], name='add2'),
]
graph = helper.make_graph(
nodes,
'multi_io_model',
[input1, input2, input3],
[output1, output2],
)
model = helper.make_model(graph, producer_name="onnx-ir-test", opset_imports=[helper.make_opsetid("", 16)])
onnx.checker.check_model(model)
return model
def main():
model = create_multi_io_model()
output_path = '../fixtures/multi_io.onnx'
onnx.save(model, output_path)
print(f"Model saved to {output_path}")
print(f"\nModel info:")
print(f" Opset version: {model.opset_import[0].version}")
print(f" Inputs: {[inp.name for inp in model.graph.input]}")
print(f" Outputs: {[out.name for out in model.graph.output]}")
print(f" Nodes: {len(model.graph.node)}")
for node in model.graph.node:
print(f" - {node.op_type} ({node.name}): {list(node.input)} → {list(node.output)}")
if __name__ == '__main__':
main()