The aim of this repository is to create a comprehensive, curated list of python software/tools related and used for scientific research in audio/music applications.
- Audio Related Packages
- Read/Write
- Transformations - General DSP
- Feature extraction
- Data augmentation
- Speech Processing
- Environmental Sounds
- Perceptial Models - Auditory Models
- Source Separation
- Music Information Retrieval
- Deep Learning
- Symbolic Music - MIDI - Musicology
- Realtime applications
- Web - Audio
- Audio related APIs and Datasets
- Wrappers for Audio Plugins
- Tutorials
- Books
- Scientific Paper
- Other Resources
- Related lists
- Contributing
- License
- Total number of packages: 66
- audiolazy ๐ฆ - Expressive Digital Signal Processing (DSP) package for Python.
- audioread ๐ฆ - Cross-library (GStreamer + Core Audio + MAD + FFmpeg) audio decoding.
- mutagen ๐ฆ - Reads and writes all kind of audio metadata for various formats.
- pyAV - PyAV is a Pythonic binding for FFmpeg or Libav.
- (Py)Soundfile ๐ฆ - Library based on libsndfile, CFFI, and NumPy.
- pySox ๐ฆ - Wrapper for sox.
- stempeg ๐ฆ - read/write of STEMS multistream audio.
- tinytag ๐ฆ - reading music meta data of MP3, OGG, FLAC and Wave files.
- acoustics ๐ฆ - useful tools for acousticians.
- AudioTK - DSP filter toolbox (lots of filters).
- AudioTSM ๐ฆ - real-time audio time-scale modification procedures.
- Gammatone - Gammatone filterbank implementation.
- pyFFTW ๐ฆ - Wrapper for FFTW(3).
- NSGT ๐ฆ - Non-stationary gabor transform, constant-q.
- matchering ๐ฆ - Automated reference audio mastering.
- MDCT ๐ฆ - MDCT transform.
- pydub ๐ฆ - Manipulate audio with a simple and easy high level interface.
- pytftb - Implementation of the MATLAB Time-Frequency Toolbox.
- pyroomacoustics ๐ฆ - Room Acoustics Simulation (RIR generator)
- PyRubberband ๐ฆ - Wrapper for rubberband to do pitch-shifting and time-stretching.
- PyWavelets ๐ฆ - Discrete Wavelet Transform in Python.
- Resampy ๐ฆ - Sample rate conversion.
- SFS-Python ๐ฆ - Sound Field Synthesis Toolbox.
- sound_field_analysis ๐ฆ - Analyze, visualize and process sound field data recorded by spherical microphone arrays.
- STFT ๐ฆ - Standalone package for Short-Time Fourier Transform.
- aubio ๐ฆ - Feature extractor, written in C, Python interface.
- audioFlux ๐ฆ - A library for audio and music analysis, feature extraction.
- audiolazy ๐ฆ - Realtime Audio Processing lib, general purpose.
- essentia - Music related low level and high level feature extractor, C++ based, includes Python bindings.
- python_speech_features ๐ฆ - Common speech features for ASR.
- pyYAAFE - Python bindings for YAAFE feature extractor.
- speechpy ๐ฆ - Library for Speech Processing and Recognition, mostly feature extraction for now.
- spafe ๐ฆ - Python library for features extraction from audio files.
- audiomentations ๐ฆ - Audio Data Augmentation.
- muda ๐ฆ - Musical Data Augmentation.
- pydiogment ๐ฆ - Audio Data Augmentation.
- aeneas ๐ฆ - Forced aligner, based on MFCC+DTW, 35+ languages.
- deepspeech ๐ฆ - Pretrained automatic speech recognition.
- gentle - Forced-aligner built on Kaldi.
- Parselmouth ๐ฆ - Python interface to the Praat phonetics and speech analysis, synthesis, and manipulation software.
- persephone ๐ฆ - Automatic phoneme transcription tool.
- pyannote.audio ๐ฆ - Neural building blocks for speaker diarization.
- pyAudioAnalysisยฒ ๐ฆ - Feature Extraction, Classification, Diarization.
- py-webrtcvad ๐ฆ - Interface to the WebRTC Voice Activity Detector.
- pypesq - Wrapper for the PESQ score calculation.
- pystoi ๐ฆ - Short Term Objective Intelligibility measure (STOI).
- PyWorldVocoder - Wrapper for Morise's World Vocoder.
- Montreal Forced Aligner - Forced aligner, based on Kaldi (HMM), English (others can be trained).
- SIDEKIT ๐ฆ - Speaker and Language recognition.
- SpeechRecognition ๐ฆ - Wrapper for several ASR engines and APIs, online and offline.
- cochlea ๐ฆ - Inner ear models.
- Brian2 ๐ฆ - Spiking neural networks simulator, includes cochlea model.
- Loudness - Perceived loudness, includes Zwicker, Moore/Glasberg model.
- pyloudnorm - Audio loudness meter and normalization, implements ITU-R BS.1770-4.
- Sound Field Synthesis Toolbox ๐ฆ - Sound Field Synthesis Toolbox.
- commonfate ๐ฆ - Common Fate Model and Transform.
- NTFLib - Sparse Beta-Divergence Tensor Factorization.
- NUSSL ๐ฆ - Holistic source separation framework including DSP methods and deep learning methods.
- NIMFA ๐ฆ - Several flavors of non-negative-matrix factorization.
- Catchy - Corpus Analysis Tools for Computational Hook Discovery.
- chord-detection - Algorithms for chord detection and key estimation.
- Madmom ๐ฆ - MIR packages with strong focus on beat detection, onset detection and chord recognition.
- mir_eval ๐ฆ - Common scores for various MIR tasks. Also includes bss_eval implementation.
- msaf ๐ฆ - Music Structure Analysis Framework.
- librosa ๐ฆ - General audio and music analysis.
- Kapre ๐ฆ - Keras Audio Preprocessors
- TorchAudio - PyTorch Audio Loaders
- nnAudio ๐ฆ - Accelerated audio processing using 1D convolution networks in PyTorch.
- Music21 ๐ฆ - Toolkit for Computer-Aided Musicology.
- Mido ๐ฆ - Realtime MIDI wrapper.
- mingus ๐ฆ - Advanced music theory and notation package with MIDI file and playback support.
- Pretty-MIDI ๐ฆ - Utility functions for handling MIDI data in a nice/intuitive way.
- Jupylet - Subtractive, additive, FM, and sample-based sound synthesis.
- PYO - Realtime audio dsp engine.
- python-sounddevice ๐ฆ - PortAudio wrapper providing realtime audio I/O with NumPy.
- ReTiSAR - Binarual rendering of streamed or IR-based high-order spherical microphone array signals.
- TimeSide (Beta) - high level audio analysis, imaging, transcoding, streaming and labelling.
- beets ๐ฆ - Music library manager and MusicBrainz tagger.
- musdb ๐ฆ - Parse and process the MUSDB18 dataset.
- medleydb - Parse medleydb audio + annotations.
- Soundcloud API ๐ฆ - Wrapper for Soundcloud API.
- Youtube-Downloader ๐ฆ - Download youtube videos (and the audio).
- audiomate ๐ฆ - Loading different types of audio datasets.
- mirdata ๐ฆ - Common loaders for Music Information Retrieval (MIR) datasets.
- VamPy Host ๐ฆ - Interface compiled vamp plugins.
- Whirlwind Tour Of Python - fast-paced introduction to Python essentials, aimed at researchers and developers.
- Introduction to Numpy and Scipy - Highly recommended tutorial, covers large parts of the scientific Python ecosystem.
- Numpy for MATLABยฎ Users - Short overview of equivalent python functions for switchers.
- MIR Notebooks - collection of instructional iPython Notebooks for music information retrieval (MIR).
- Selected Topics in Audio Signal Processing - Exercises as iPython notebooks.
- Live-coding a music synthesizer Live-coding video showing how to use the SoundDevice library to reproduce realistic sounds. Code.
- Python Data Science Handbook - Jake Vanderplas, Excellent Book and accompanying tutorial notebooks.
- Fundamentals of Music Processing - Meinard Mรผller, comes with Python exercises.
- Python for audio signal processing - John C. Glover, Victor Lazzarini and Joseph Timoney, Linux Audio Conference 2011.
- librosa: Audio and Music Signal Analysis in Python, Video - Brian McFee, Colin Raffel, Dawen Liang, Daniel P.W. Ellis, Matt McVicar, Eric Battenberg, Oriol Nieto, Scipy 2015.
- pyannote.audio: neural building blocks for speaker diarization, Video - Hervรฉ Bredin, Ruiqing Yin, Juan Manuel Coria, Gregory Gelly, Pavel Korshunov, Marvin Lavechin, Diego Fustes, Hadrien Titeux, Wassim Bouaziz, Marie-Philippe Gill, ICASSP 2020.
- Coursera Course - Audio Signal Processing, Python based course from UPF of Barcelona and Stanford University.
- Digital Signal Processing Course - Masters Course Material (University of Rostock) with many Python examples.
- Slack Channel - Music Information Retrieval Community.
There is already PythonInMusic but it is not up to date and includes too many packages of special interest that are mostly not relevant for scientific applications. Awesome-Python is large curated list of python packages. However, the audio section is very small.
Your contributions are always welcome! Please take a look at the contribution guidelines first.
I will keep some pull requests open if I'm not sure whether those libraries are awesome, you could vote for them by adding ๐ to them.