--- license: cc-by-nc-4.0 library_name: muscriptor tags: - music - music-transcription - automatic-music-transcription - amt - audio-to-midi - midi - music-information-retrieval - transformer - pytorch --- # MuScriptor — large (≈1.3B) **MuScriptor** is an open-weight model for **general-purpose, multi-instrument automatic music transcription (AMT)**: it converts a music recording (any genre, multiple simultaneous instruments) into a stream of notes played. This repository hosts the **large** variant (≈1.3B parameters) — the **flagship, best-quality checkpoint**. For a smaller footprint use [`muscriptor-medium`](https://huggingface.co/MuScriptor/muscriptor-medium) (≈300M, good trade-off) or [`muscriptor-small`](https://huggingface.co/MuScriptor/muscriptor-small) (≈100M, fastest). - Developed by [Mirelo](https://www.mirelo.ai/) x [kyutai](https://kyutai.org/) - 📄 Paper: *MuScriptor: An Open Model for Multi-Instrument Music Transcription* — Rouard, Krause, Roebel, Simon-Gabriel, Défossez (2026). __ - 💻 Code: - 🔊 Audio samples: ## Table of contents - [Quickstart](#quickstart) - [Model description](#model-description) - [Model variants](#model-variants) - [Intended uses & limitations](#intended-uses--limitations) - [Instrument conditioning](#instrument-conditioning) - [Training](#training) - [Evaluation](#evaluation) - [Citation](#citation) - [License](#license) ## Quickstart Install the `muscriptor` package (it uses `huggingface_hub` to fetch weights automatically): ```bash pip install git+https://github.com/muscriptor/muscriptor.git # TODO (PyPI release forthcoming: pip install muscriptor) ``` ### Python ```python from pathlib import Path from muscriptor import TranscriptionModel # "large" resolves to hf://MuScriptor/muscriptor-large and downloads on first use. model = TranscriptionModel.load_model("large") # Get a MIDI file directly: Path("out.mid").write_bytes(model.transcribe_to_midi("audio.wav")) # Or stream note events as they are transcribed: for event in model.transcribe("audio.wav"): print(event) # NoteStartEvent / NoteEndEvent / ProgressEvent ``` `load_model` accepts a size keyword (`"small"`/`"medium"`/`"large"`), a local `.safetensors` path, or an `hf://` / `https://` URL. Weights loaded by size keyword (or any `hf://` URL) are cached in the standard Hugging Face cache (`~/.cache/huggingface/hub`, configurable via `HF_HOME`); weights fetched from a plain `http(s)://` URL are cached under `~/.cache/muscriptor/`. Input audio can be WAV or any format `libsndfile` reads (mp3, flac, ogg, m4a, …); it is resampled to 16 kHz mono internally. ### CLI ```bash muscriptor transcribe --model large audio.wav -o out.mid ``` ## Model description MuScriptor performs transcription by **autoregressively predicting a MIDI-like token sequence** given the mel-spectrogram of a short audio segment, following the sequence-to-sequence AMT paradigm (cf. MT3). It deliberately avoids complex architectural tweaks in favor of a simple, decoder-only Transformer. - **Architecture:** decoder-only Transformer (this variant: `dim=1536`, `num_heads=24`, `num_layers=48`). - **Input:** raw waveform (16 kHz, mono) of a 5-second segment → mel-spectrogram (STFT `n_fft=2048`, hop 160 → 100 Hz frame rate, 512 mel bins). The spectrogram is projected to the model dimension and used as a prefix condition. - **Output tokenization:** MT3-like note events; the 128 MIDI programs are mapped to **36 instrument subgroups** using the `MT3_FULL_PLUS` taxonomy. Decoding is greedy (argmax) by default, with optional classifier-free guidance (CFG). - **Inference:** audio is processed in 5-second chunks; note events are emitted in temporal order. Optional **instrument conditioning** stabilizes predictions across chunk boundaries and lets you restrict/customize the transcription (see below). **Note on the representation:** the tokenizer recovers onset/offset timing, pitch, and instrument, but **not velocity**. It also cannot represent two notes of the same pitch and instrument sounding at the same time. Drums are onset-only. ## Model variants | Repo | Params | `dim` | heads | layers | Notes | |---|---|---|---|---|---| | [`muscriptor-small`](https://huggingface.co/MuScriptor/muscriptor-small) | ≈100M | 768 | 12 | 14 | smallest / fastest | | [`muscriptor-medium`](https://huggingface.co/MuScriptor/muscriptor-medium) | ≈300M | 1024 | 16 | 24 | good trade-off | | [`muscriptor-large`](https://huggingface.co/MuScriptor/muscriptor-large) | ≈1.3B | 1536 | 24 | 48 | **this model** · best quality | All variants share the same input pipeline, tokenizer, and training recipe; they differ only in latent dimension, attention heads, and depth. ## Intended uses & limitations **Intended uses** - General-purpose transcription of real, multi-instrument music across genres (classical → heavy metal) into MIDI. - A building block for music information retrieval (chord/key recognition), musicological analysis, generative-modeling data pipelines, and tools for musicians. **Out of scope / use with care** - Not a substitute for a hand-annotated score; expect errors, especially on dense mixes, unusual timbres, and heavily processed audio. - Velocity/dynamics are **not** produced (see note above). - Onset/offset precision is lower for some styles (e.g. choral music), and exact offsets are inherently harder than onsets. **Limitations & biases** - Training data skews toward pop and Western classical music, and the instrument distribution is long-tailed (piano/guitar/bass/drums are most frequent). Rare instruments and underrepresented genres may be transcribed less reliably. - The fixed `MT3_FULL_PLUS` 36-group instrument taxonomy limits instrument granularity. - Simultaneous same-pitch/same-instrument notes cannot be represented by the tokenizer. ## Instrument conditioning The model can be told which instrument groups are present in the track. Supplying the correct set improves quantitative scores and produces more coherent instrument assignments across segments. ```python from muscriptor.tokenizer.mt3 import MT3_FULL_PLUS_GROUP_NAMES # `instrument_group` is a space-separated string of MT3_FULL_PLUS group IDs. # Convert readable group names to IDs: names = ["acoustic_piano", "acoustic_guitar", "acoustic_bass"] instrument_group = " ".join(str(MT3_FULL_PLUS_GROUP_NAMES[n]) for n in names) # -> "0 4 7" # Only expect piano, acoustic guitar and bass in this track: model.transcribe_to_midi("audio.wav", instrument_group=instrument_group) ``` ```bash muscriptor transcribe --model large --instruments "acoustic_piano,acoustic_guitar,acoustic_bass" audio.wav -o out.mid muscriptor list-instruments # show all available group names ``` ## Evaluation Metrics are instrument-agnostic F1 scores computed with [`mir_eval`](https://github.com/craffel/mir_eval). ### Headline results on `D_Test` `D_Test` is the authors' held-out test set of 372 multi-instrument tracks. Results below are for this 1.3B model with the full training pipeline (`D_Synth` + `D_Real` + `D_RL`), CFG = 2: | Model | Onset F1 | Frame F1 | Offset F1 | Drums F1 | Multi F1 | |---|---|---|---|---|---| | YourMT3+ (baseline) | 32.5 | 45.5 | 17.8 | 41.4 | 21.9 | | **MuScriptor 1.3B** | **60.4** | **72.4** | **48.6** | **49.6** | **47.8** | ### Model-size comparison F1 ↑ on `D_Test` from the paper's scaling study (models trained on `D_Real` only, CFG = 2). Note these ablation numbers omit synthetic pre-training and RL, so they are **lower** than the full-pipeline results above: | Variant | Params | Onset | Frame | Offset | Drums | Multi | |---|---|---|---|---|---|---| | `muscriptor-small` | 100M | 51.2 | 67.2 | 38.7 | 41.5 | 38.2 | | `muscriptor-medium` | 300M | 52.4 | 68.0 | 40.3 | 42.0 | 39.7 | | **`muscriptor-large`** | **1.3B** | **53.2** | **68.7** | **41.0** | **42.5** | **40.5** | ## Citation ```bibtex @inproceedings{muscriptor2026, title = {MuScriptor: An Open Model for Multi-Instrument Music Transcription}, author = {Rouard, Simon and Krause, Michael and Roebel, Axel and Simon-Gabriel, Carl-Johann and D{\'e}fossez, Alexandre}, year = {2026}, note = {Kyutai, Mirelo AI, IRCAM} } ``` ## License Code released under the [MIT License](https://github.com/muscriptor/muscriptor/blob/main/LICENSE). Weights released under CC-BY-NC.