#!/usr/bin/env python3 # Copyright 2025 Xiaomi Corp. (authors: Fangjun Kuang) import onnxruntime import onnx """ [key: "model_type" value: "silero-vad-v4" , key: "sample_rate" value: "16000" , key: "version" value: "4" , key: "h_shape" value: "2,1,64" , key: "c_shape" value: "2,1,64" ] NodeArg(name='x', type='tensor(float)', shape=[1, 512]) NodeArg(name='h', type='tensor(float)', shape=[2, 1, 64]) NodeArg(name='c', type='tensor(float)', shape=[2, 1, 64]) ----- NodeArg(name='prob', type='tensor(float)', shape=[1, 1]) NodeArg(name='next_h', type='tensor(float)', shape=[2, 1, 64]) NodeArg(name='next_c', type='tensor(float)', shape=[2, 1, 64]) """ def show(filename): model = onnx.load(filename) print(model.metadata_props) session_opts = onnxruntime.SessionOptions() session_opts.log_severity_level = 3 sess = onnxruntime.InferenceSession( filename, session_opts, providers=["CPUExecutionProvider"] ) for i in sess.get_inputs(): print(i) print("-----") for i in sess.get_outputs(): print(i) def main(): show("./m.onnx") if __name__ == "__main__": main()