Is there a way to read/write a MP3 audio file into/from a numpy array with a similar API to scipy.io.wavfile.read and scipy.io.wavfile.write:

sr, x = wavfile.read('test.wav')
wavfile.write('test2.wav', sr, x)


Note: pydub's AudioSegment object doesn't give direct access to a numpy array.

PS: I have already read Importing sound files into Python as NumPy arrays (alternatives to audiolab), tried all the answers, including those which requires to Popen ffmpeg and read the content from stdout pipe, etc. I have also read Trying to convert an mp3 file to a Numpy Array, and ffmpeg just hangs, etc., and tried the main answers, but there was no simple solution. After spending hours on this, I'm posting it here with "Answer your own question – share your knowledge, Q&A-style". I have also read How to create a numpy array from a pydub AudioSegment? but this does not easily cover the multi channel case, etc.

2 Answers 2


Calling ffmpeg and manually parsing its stdout as suggested in many posts about reading a MP3 is a tedious task (many corner cases because different number of channels are possible, etc.), so here is a working solution using pydub (you need to pip install pydub first).

This code allows to read a MP3 to a numpy array / write a numpy array to a MP3 file with a similar API than scipy.io.wavfile.read/write:

import pydub 
import numpy as np

def read(f, normalized=False):
    """MP3 to numpy array"""
    a = pydub.AudioSegment.from_mp3(f)
    y = np.array(a.get_array_of_samples())
    if a.channels == 2:
        y = y.reshape((-1, 2))
    if normalized:
        return a.frame_rate, np.float32(y) / 2**15
        return a.frame_rate, y

def write(f, sr, x, normalized=False):
    """numpy array to MP3"""
    channels = 2 if (x.ndim == 2 and x.shape[1] == 2) else 1
    if normalized:  # normalized array - each item should be a float in [-1, 1)
        y = np.int16(x * 2 ** 15)
        y = np.int16(x)
    song = pydub.AudioSegment(y.tobytes(), frame_rate=sr, sample_width=2, channels=channels)
    song.export(f, format="mp3", bitrate="320k")


  • It only works for 16-bit files for now (even if 24-bit WAV files are pretty common, I've rarely seen 24-bit MP3 files... Does this exist?)
  • normalized=True allows to work with a float array (each item in [-1,1))

Usage example:

sr, x = read('test.mp3')

#[[-225  707]
# [-234  782]
# [-205  755]
# ..., 
# [ 303   89]
# [ 337   69]
# [ 274   89]]

write('out2.mp3', sr, x)
  • Great! For linux users, the output/argument tags can be added to read/write to retreive and save metadatas as shown on github.com/jiaaro/pydub/issues/44 . Add tags=mediainfo(f).get('TAG', {}) to read and export(f, format="mp3", bitrate="320k", tags=tags) to write.
    – francis
    Sep 27, 2019 at 17:49
  • Some extra dependencies (that can't just be installed with pip on Windows) may be needed in order to use this solution. See github.com/jiaaro/pydub/issues/348
    – Pro Q
    Nov 24, 2021 at 21:58

You can use audio2numpy library. Install with

pip install audio2numpy

Then, your code would be:

import audio2numpy as a2n

For writing, use @Basj 's answer

  • 1
    These all in one packages are great when just quickly implementing something for an experiment, but in my opinion, using them is even worse than just copy-pasting something like @Basj's answer. (+1 anyways)
    – Joran
    Oct 30, 2021 at 4:23
  • Yes... But it works and if you don't care about speed or efficiency of your code, it's the easiest solution. Nov 1, 2021 at 14:52

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