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Inference Performance

Test Scripts

from towhee import ops
import time

decode = ops.audio_decode.ffmpeg()
audio = [x[0] for x in decode('path/to/test.wav')]

op = ops.audio_embedding.nnfp()
# op = ops.audio_embedding.nnfp(
#		    model_path='path/to/torchscript/model.pt')
# op = ops.audio_embedding.nnfp(
#		    model_path='path/to/model.onnx')


start = time.time()
for _ in range(100):
	embs = op(audio)
	assert(embs.shape == (10, 128))
end = time.time()

print((end-start) / 100)

Results

  • Device: MacOS, 2.3 GHz Quad-Core Intel Core i7, 8 CPUs
  • Input: 10s audio, loop for 100 times
inference method mem usage avg time
pytorch 0.3G 0.451s
torchscript 0.3G 0.470s
onnx 0.3G 0.378s
  • Device: MacOS, 2.3 GHz Quad-Core Intel Core i7, 8 CPUs
  • Input: 188s audio, loop for 100 times
inference method mem usage avg time
pytorch 2.6G 8.162s
torchscript 2.8G 7.507s
onnx 1.7G 6.769s