Instructions to use OpenMOSS-Team/MOSS-Transcribe-Diarize with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Transformers
How to use OpenMOSS-Team/MOSS-Transcribe-Diarize with Transformers:
# Load model directly from transformers import AutoModelForCausalLM model = AutoModelForCausalLM.from_pretrained("OpenMOSS-Team/MOSS-Transcribe-Diarize", trust_remote_code=True, dtype="auto") - Notebooks
- Google Colab
- Kaggle
MOSS-Transcribe-Diarize
MOSS-Transcribe-Diarize 0.9B is an end-to-end audio understanding model for long-form multi-speaker transcription, diarization, timestamps, and acoustic event awareness.
Given an audio or video file, the model generates a compact speaker-aware transcript in one pass, including timestamps and anonymous speaker labels such as [S01], [S02], and beyond.
News
- 2026-07-09: Released MOSS-Transcribe-Diarize 0.9B.
Contents
- Introduction
- Model Architecture
- Evaluation
- Quickstart
- Output Format
- More Information
- License
- Citation
Introduction
MOSS-Transcribe-Diarize 0.9B turns real-world long-form audio into structured, speaker-aware transcripts in one pass. Instead of stitching together separate ASR and diarization systems, it jointly performs speech transcription and speaker diarization, producing time-aligned text with consistent speaker labels.
The model is built for meetings, calls, podcasts, interviews, lectures, videos, and other long or messy multi-speaker recordings. It can also emit acoustic event annotations, giving downstream systems a richer view of what happened, who spoke, and when.
Core capabilities:
- Long-form transcription: Converts long audio or video recordings into timestamped text.
- Speaker-aware diarization: Assigns anonymous speaker labels such as
[S01]and[S02]without a separate diarization pipeline. - Promptable generation: Supports custom transcription instructions, hotwords, and acoustic event annotations.
Model Architecture
| Component | Specification |
|---|---|
| Text backbone | Qwen3-0.6B style causal decoder |
| Audio encoder | Whisper-Medium encoder configuration |
| Audio frontend | WhisperFeatureExtractor, 16 kHz, 80 mel bins, 30 s chunks |
| Audio-text bridge | 4x temporal merge + MLP adaptor |
| Fusion | Audio features replace <|audio_pad|> embeddings via masked_scatter |
| Output format | Compact [start][Sxx]text[end] transcript with speaker tags such as [S01] |
This Hugging Face repository includes the custom Transformers remote code required to load the model with trust_remote_code=True.
Evaluation
We evaluate MOSS-Transcribe-Diarize using three objective metrics: Character Error Rate (CER), concatenated minimum-permutation Character Error Rate (cpCER), and Delta-cp. Lower is better for all metrics. A dash (-) indicates that the result is unavailable.
| Model | AISHELL‑4 | Alimeeting | Podcast | Movies | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| CER↓ | cpCER↓ | Δcp↓ | CER↓ | cpCER↓ | Δcp↓ | CER↓ | cpCER↓ | Δcp↓ | CER↓ | cpCER↓ | Δcp↓ | |
| Doubao | 18.18 | 27.86 | 9.68 | 25.25 | 37.57 | 12.31 | 7.93 | 10.54 | 2.61 | 9.94 | 30.88 | 20.94 |
| ElevenLabs | 19.58 | 37.95 | 18.36 | 25.70 | 36.69 | 10.99 | 8.50 | 11.34 | 2.85 | 11.49 | 17.85 | 6.37 |
| GPT-4o | - | - | - | - | - | - | - | - | - | 14.37 | 23.67 | 9.31 |
| Gemini 2.5 Pro | 42.70 | 53.42 | 10.72 | 27.43 | 41.64 | 14.21 | 7.38 | 10.23 | 2.85 | 15.46 | 24.15 | 8.69 |
| Gemini 3 Pro | 22.75 | 27.43 | 4.68 | 26.75 | 32.84 | 6.09 | - | - | - | 8.62 | 14.73 | 6.11 |
| VIBEVOICE ASR | 21.40 | 24.99 | 3.59 | 27.40 | 29.33 | 1.93 | 27.94 | 48.30 | 20.36 | 14.59 | 42.54 | 27.94 |
| MOSS Transcribe Diarize 0.9B | 14.84 | 15.83 | 0.99 | 24.86 | 22.17 | -2.69 | 5.97 | 7.37 | 1.40 | 6.36 | 12.76 | 6.40 |
| MOSS Transcribe Diarize Pro | 13.78 | 14.02 | 0.24 | 18.22 | 13.94 | -4.27 | 4.46 | 6.97 | 2.51 | 5.86 | 11.78 | 5.92 |
Quickstart
Environment Setup
Use a clean Python environment. The model uses custom Transformers code, so load the model and processor with trust_remote_code=True.
conda create -n moss-transcribe-diarize python=3.12 -y
conda activate moss-transcribe-diarize
git clone https://github.com/OpenMOSS/MOSS-Transcribe-Diarize.git
cd MOSS-Transcribe-Diarize
pip install --index-url https://download.pytorch.org/whl/cu128 torch torchaudio
pip install -e .
The GitHub package provides helper utilities such as audio/video loading, transcription message construction, transcript parsing, CLI inference, and the subtitle web app. The model weights and remote-code model files are loaded from this Hugging Face repository.
Python Usage
import torch
from transformers import AutoModelForCausalLM, AutoProcessor
from moss_transcribe_diarize import parse_transcript
from moss_transcribe_diarize.inference_utils import (
build_transcription_messages,
generate_transcription,
resolve_device,
)
model_id = "OpenMOSS-Team/MOSS-Transcribe-Diarize"
audio_path = "audio.wav"
device = resolve_device("auto")
dtype = torch.bfloat16 if device.type == "cuda" else torch.float32
model = AutoModelForCausalLM.from_pretrained(
model_id,
trust_remote_code=True,
dtype="auto",
).to(dtype=dtype).to(device).eval()
processor = AutoProcessor.from_pretrained(
model_id,
trust_remote_code=True,
)
messages = build_transcription_messages(audio_path)
result = generate_transcription(
model,
processor,
messages,
max_new_tokens=2048,
do_sample=False,
device=device,
dtype=dtype,
)
print(result["text"])
for segment in parse_transcript(result["text"]):
print(segment.start, segment.end, segment.speaker, segment.text)
The message flow follows the common Qwen multimodal pattern:
processor.apply_chat_template(messages, tokenize=False)renders text with audio placeholders.- The helper utilities load audio waveforms from the same messages.
processor(text=text, audio=audios)computes Whisper input features and expands audio placeholders.model.generate(...)produces timestamped transcription and diarization text.
Custom Prompt and Hotwords
The default prompt is optimized for timestamped transcription and speaker diarization:
请将音频转写为文本,每一段需以起始时间戳和说话人编号([S01]、[S02]、[S03]…)开头,正文为对应的语音内容,并在段末标注结束时间戳,以清晰标明该段语音范围。
To add hotwords, append a short hint to the default prompt:
请将音频转写为文本,每一段需以起始时间戳和说话人编号([S01]、[S02]、[S03]…)开头,正文为对应的语音内容,并在段末标注结束时间戳,以清晰标明该段语音范围。热词提示:热词1, 热词2, 热词3
More prompt recipes are available in the GitHub repository: https://github.com/OpenMOSS/MOSS-Transcribe-Diarize/blob/main/examples/prompts.md
Serve with vLLM and SGLang
MOSS-Transcribe-Diarize supports vLLM serving through the OpenAI-compatible transcription API. Use a pinned vLLM nightly build that includes the MOSS-Transcribe-Diarize model registration. Choose one of the following commands: for CUDA 12 environments, use cu129; for CUDA 13 environments, use cu130.
uv pip install -U vllm \
--torch-backend=auto \
--extra-index-url https://wheels.vllm.ai/68b4a1d582818e67adc903bf1b8fc5a5447da2fa/cu129
or:
uv pip install -U vllm \
--torch-backend=auto \
--extra-index-url https://wheels.vllm.ai/68b4a1d582818e67adc903bf1b8fc5a5447da2fa/cu130
vllm serve OpenMOSS-Team/MOSS-Transcribe-Diarize --trust-remote-code
curl http://localhost:8000/v1/audio/transcriptions \
-F model="OpenMOSS-Team/MOSS-Transcribe-Diarize" \
-F file=@"audio.wav" \
-F response_format="json" \
-F temperature="0"
The recommended way to serve MOSS-Transcribe-Diarize is SGLang Omni through the OpenAI-compatible /v1/audio/transcriptions endpoint. Install sglang-omni by following the installation guide, then download the model:
hf download OpenMOSS-Team/MOSS-Transcribe-Diarize
Serve the model:
sgl-omni serve \
--model-path OpenMOSS-Team/MOSS-Transcribe-Diarize \
--port 8000 \
--max-running-requests 16 \
--cuda-graph-max-bs 16 \
--mem-fraction-static 0.80
Use response_format=verbose_json when you need parsed speaker segments. json returns the raw transcript text only.
curl -X POST http://localhost:8000/v1/audio/transcriptions \
-F model=OpenMOSS-Team/MOSS-Transcribe-Diarize \
-F file=@audio.wav \
-F response_format=verbose_json
import requests
with open("audio.wav", "rb") as f:
resp = requests.post(
"http://localhost:8000/v1/audio/transcriptions",
data={
"model": "OpenMOSS-Team/MOSS-Transcribe-Diarize",
"response_format": "verbose_json",
},
files={"file": ("audio.wav", f, "audio/wav")},
timeout=300,
)
resp.raise_for_status()
payload = resp.json()
print(payload["text"])
for segment in payload.get("segments", []):
print(f"[{segment['start']:.2f}-{segment['end']:.2f}] {segment['text']}")
For longer multi-speaker audio, raise max_new_tokens so the decoder can finish the full diarized transcript:
curl -X POST http://localhost:8000/v1/audio/transcriptions \
-F model=OpenMOSS-Team/MOSS-Transcribe-Diarize \
-F file=@audio.wav \
-F response_format=verbose_json \
-F max_new_tokens=65536
| Parameter | Type | Default | Description |
|---|---|---|---|
file |
file | required | Audio file uploaded as multipart form data |
model |
string | server default | Model identifier |
language |
string | unset | Optional language hint |
response_format |
string | json |
json, verbose_json, or text |
temperature |
float | model default (0.0) |
Sampling temperature |
max_new_tokens |
int | 5120 |
Max generated tokens; raise for long audio, for example 65536 |
prompt |
string | unset | Optional instruction override; omit to use the built-in transcribe+diarize prompt |
For benchmarking, performance numbers, and implementation details, see the SGLang Omni cookbook. The following single-H100 results are reported for short- and long-sequence multi-speaker ASR tasks.
movies short-sequence ASR:
| Concurrency | Throughput (req/s) | Mean latency (s) | RTF mean | audio_s/s |
|---|---|---|---|---|
| 1 | 2.57 | 0.388 | 0.0612 | 29.76 |
| 2 | 4.89 | 0.409 | 0.0659 | 56.55 |
| 4 | 6.62 | 0.513 | 0.0790 | 76.64 |
| 8 | 6.80 | 0.533 | 0.0810 | 78.70 |
| 16 | 7.08 | 0.659 | 0.0922 | 81.98 |
aishell4_long long-sequence ASR:
| Concurrency | Throughput (req/s) | Mean latency (s) | RTF mean | audio_s/s |
|---|---|---|---|---|
| 1 | 0.022 | 45.2 | 0.0197 | 50.64 |
| 2 | 0.032 | 60.7 | 0.0265 | 74.25 |
| 4 | 0.036 | 105.6 | 0.0461 | 81.64 |
| 8 | 0.040 | 172.6 | 0.0754 | 90.62 |
| 16 | 0.043 | 282.8 | 0.1237 | 98.83 |
Subtitle Web App
The source package includes a local subtitle workflow for upload, review, subtitle export, and optional FFmpeg burn-in:
mtd-subtitle-web \
--model OpenMOSS-Team/MOSS-Transcribe-Diarize \
--host 127.0.0.1 \
--port 7860
Open http://127.0.0.1:7860, upload an audio/video file, review the parsed subtitle segments, then download JSON/SRT/ASS or burn an MP4 if ffmpeg and ffprobe are available on PATH.
For batch processing:
mtd-subtitle /path/to/input.mp4 \
--model OpenMOSS-Team/MOSS-Transcribe-Diarize \
--out-dir runs/example \
--render
Output Format
The canonical output format is:
[start_time][Sxx]transcribed speech[end_time]
Example:
[0.48][S01]Welcome everyone[1.66][12.26][S02]The new transcription pipeline is ready for evaluation[13.81][14.36][S01]Great, include the diarization results in the report[18.76]
In this format:
start_timeandend_timeare timestamps in seconds.[S01],[S02], and similar labels are anonymous model-generated speaker labels.- Speaker labels are relative labels within the input audio and should not be interpreted as real speaker identities.
More Information
- GitHub: https://github.com/OpenMOSS/MOSS-Transcribe-Diarize
- MOSI.AI: https://mosi.cn
- OpenMOSS: https://www.open-moss.com
License
MOSS-Transcribe-Diarize 0.9B is licensed under the Apache License 2.0.
Citation
If you use MOSS-Transcribe-Diarize 0.9B, please cite the technical report:
@misc{moss_transcribe_diarize_2026,
title={MOSS Transcribe Diarize Technical Report},
author={{MOSI.AI}},
year={2026},
eprint={2601.01554},
archivePrefix={arXiv},
primaryClass={cs.SD},
url={https://arxiv.org/abs/2601.01554}
}
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