50 Commits

Author SHA1 Message Date
Quentin Fuxa
12a69205ed bump to 0.2.12 2025-10-06 19:59:05 +02:00
Quentin Fuxa
1f684cdd97 fixes #251 2025-10-06 19:53:27 +02:00
Quentin Fuxa
290470dd60 forwarded_allow_ips in core 2025-10-04 23:04:00 +02:00
Quentin Fuxa
425ac7b51d forwarded_allow_ips in core 2025-10-04 23:04:00 +02:00
Quentin Fuxa
0382cfbeba forwarded_allow_ips in core 2025-10-04 23:04:00 +02:00
Quentin Fuxa
9b1e061b32 forwarded_allow_ips in core 2025-10-04 23:04:00 +02:00
Quentin Fuxa
b4abc158b9 Merge pull request #249 from Damrod/add-ip-forwarding-support
fix wss for reverse proxying
2025-10-06 10:20:05 +02:00
Alvaro Ollero
5832d7433d update documentation 2025-10-04 23:18:10 +02:00
Alvaro Ollero
3736458503 Uvicorn exposes a configuration option to enable reverse proxying from a trusted ip. This PR exposes it downstreams to end clients 2025-10-04 22:21:06 +02:00
Quentin Fuxa
374618e050 token speakers are only reattributed for token coming after last_validated_token 2025-10-04 09:52:00 +02:00
Quentin Fuxa
543972ef38 fixes #248 2025-10-04 09:52:00 +02:00
Quentin Fuxa
971f8473eb update api doc 2025-10-05 11:09:47 +02:00
Quentin Fuxa
8434ef5efc update api 2025-10-05 11:09:12 +02:00
Quentin Fuxa
73f36cc0ef v0 doc new api 2025-10-02 23:04:00 +02:00
Quentin Fuxa
a7db39d999 solves incorrect spacing in buffer diarization 2025-10-02 23:04:00 +02:00
Quentin Fuxa
a153e11fe0 update when self.diarization_before_transcription 2025-09-28 11:04:00 +02:00
Quentin Fuxa
ca6f9246cc force language = en for .en models 2025-09-28 11:04:00 +02:00
Quentin Fuxa
d080d675a8 cutom alignment heads parameter for custom models 2025-09-27 11:04:00 +02:00
Quentin Fuxa
40bff38933 Merge pull request #239 from msghik/feature/fine-tuned-model-support
feat: Allow loading fine-tuned models in simulstreaming
2025-09-29 10:08:26 +02:00
Quentin Fuxa
2fe3ca0188 connect source to output destination when used as chrome extension to keep audio playing 2025-09-27 13:59:44 +02:00
Quentin Fuxa
545ea15c9a ensure buffer size to be a multiple of the element size 2025-09-27 13:58:32 +02:00
Quentin Fuxa
8cbaeecc75 cutom alignment heads parameter for custom models 2025-09-27 11:04:00 +02:00
google-labs-jules[bot]
70e854b346 feat: Allow loading fine-tuned models in simulstreaming
This change modifies the `simulstreaming` backend to support loading fine-tuned Whisper models via the `--model_dir` argument.

The `SimulStreamingASR` class has been updated to:
- Use the `model_dir` path directly to load the model, which is the correct procedure for fine-tuned `.pt` files.
- Automatically disable the `faster-whisper` and `mlx-whisper` fast encoders when `model_dir` is used, as they are not compatible with standard fine-tuned models.

The call site in `core.py` already passed the `model_dir` argument, so no changes were needed there. This change makes the `simulstreaming` backend more flexible and allows users to leverage their own custom models.
2025-09-27 07:29:30 +00:00
Quentin Fuxa
d55490cd27 typo and simpler conditions 2025-09-26 20:38:26 +02:00
Quentin Fuxa
1fa9e1f656 Merge pull request #238 from CorentinvdBdO/fix_install
fix: translation in pyproject
2025-09-26 20:35:29 +02:00
cvandenbroek
994f30e1ed fix: translation in pyproject 2025-09-26 20:08:35 +02:00
Quentin Fuxa
b22478c0b4 correct silences handling when language not auto 2025-09-25 23:20:00 +02:00
Quentin Fuxa
94c34efd90 chrome extension ws default to localhost 2025-09-25 23:04:00 +02:00
Quentin Fuxa
32099b9275 demo extension 2025-09-25 23:59:24 +02:00
Quentin Fuxa
9fc6654a4a common frontend for web/ and chrome extension 2025-09-25 23:14:25 +02:00
Quentin Fuxa
d24c110d55 to 0.2.11 2025-09-24 22:34:01 +02:00
Quentin Fuxa
4dd5d8bf8a translation compatible with auto and detected language 2025-09-22 11:20:00 +02:00
Quentin Fuxa
cd9a32a36b update archi to show fastapi server is independent from core 2025-09-21 11:03:00 +02:00
Quentin Fuxa
6caf3e0485 correct silence handling in translation 2025-09-27 11:58:00 +02:00
Quentin Fuxa
93f002cafb language detection after few seconds working 2025-09-20 11:08:00 +02:00
Quentin Fuxa
c5e30c2c07 svg loaded once in javascript, no more need for StaticFiles 2025-09-20 11:06:00 +02:00
Quentin Fuxa
1c2afb8bd2 svg loaded once in javascript, no more need for StaticFiles 2025-09-20 11:06:00 +02:00
Quentin Fuxa
674b20d3af in buffer while language not detected » 2025-09-21 11:05:00 +02:00
Quentin Fuxa
a5503308c5 O(n) to O(1) for simulstreaming timestamp determination 2025-09-21 11:04:00 +02:00
Quentin Fuxa
e61afdefa3 punctuation is now checked in timed_object 2025-09-22 22:40:39 +02:00
Quentin Fuxa
426d70a790 simulstreaming infer does not return a dictionary anymore 2025-09-21 11:03:00 +02:00
Quentin Fuxa
b03a212fbf fixes #227 , auto language dectection v0.1 - simulstreaming only - when diarization and auto 2025-09-19 19:15:28 +02:00
Quentin Fuxa
1833e7c921 0.2.10 2025-09-16 23:45:00 +02:00
Quentin Fuxa
777ec63a71 --pcm-input option information 2025-09-17 16:06:28 +02:00
Quentin Fuxa
0a6e5ae9c1 ffmpeg install instruction error indicates --pcm-input alternative 2025-09-17 16:04:17 +02:00
Quentin Fuxa
ee448a37e9 when pcm-input is set, the frontend uses AudioWorklet 2025-09-17 14:55:57 +02:00
Quentin Fuxa
9c051052b0 Merge branch 'main' into ScriptProcessorNode-to-AudioWorklet 2025-09-17 11:28:36 +02:00
Quentin Fuxa
65025cc448 nllb backend can be transformers, and model size can be 1.3B 2025-09-17 10:20:31 +02:00
Quentin Fuxa
bbba1d9bb7 add nllb-backend and translation perf test in dev_notes 2025-09-16 20:45:01 +02:00
Quentin Fuxa
99dc96c644 fixes #224 2025-09-16 18:34:35 +02:00
42 changed files with 1817 additions and 2126 deletions

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@@ -18,8 +18,29 @@ Decoder weights: 59110771 bytes
Encoder weights: 15268874 bytes
# 2. Translation: Faster model for each system
# 2. SortFormer Diarization: 4-to-2 Speaker Constraint Algorithm
## Benchmark Results
Testing on MacBook M3 with NLLB-200-distilled-600M model:
### Standard Transformers vs CTranslate2
| Test Text | Standard Inference Time | CTranslate2 Inference Time | Speedup |
|-----------|-------------------------|---------------------------|---------|
| UN Chief says there is no military solution in Syria | 0.9395s | 2.0472s | 0.5x |
| The rapid advancement of AI technology is transforming various industries | 0.7171s | 1.7516s | 0.4x |
| Climate change poses a significant threat to global ecosystems | 0.8533s | 1.8323s | 0.5x |
| International cooperation is essential for addressing global challenges | 0.7209s | 1.3575s | 0.5x |
| The development of renewable energy sources is crucial for a sustainable future | 0.8760s | 1.5589s | 0.6x |
**Results:**
- Total Standard time: 4.1068s
- Total CTranslate2 time: 8.5476s
- CTranslate2 is slower on this system --> Use Transformers, and ideally we would have an mlx implementation.
# 3. SortFormer Diarization: 4-to-2 Speaker Constraint Algorithm
Transform a diarization model that predicts up to 4 speakers into one that predicts up to 2 speakers by mapping the output predictions.

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@@ -18,9 +18,9 @@ Real-time speech transcription directly to your browser, with a ready-to-use bac
#### Powered by Leading Research:
- [SimulStreaming](https://github.com/ufal/SimulStreaming) (SOTA 2025) - Ultra-low latency transcription with AlignAtt policy
- [SimulStreaming](https://github.com/ufalSimulStreaming) (SOTA 2025) - Ultra-low latency transcription using [AlignAtt policy](https://arxiv.org/pdf/2305.11408)
- [NLLB](https://arxiv.org/abs/2207.04672), ([distilled](https://huggingface.co/entai2965/nllb-200-distilled-600M-ctranslate2)) (2024) - Translation to more than 100 languages.
- [WhisperStreaming](https://github.com/ufal/whisper_streaming) (SOTA 2023) - Low latency transcription with LocalAgreement policy
- [WhisperStreaming](https://github.com/ufal/whisper_streaming) (SOTA 2023) - Low latency transcription using [LocalAgreement policy](https://www.isca-archive.org/interspeech_2020/liu20s_interspeech.pdf)
- [Streaming Sortformer](https://arxiv.org/abs/2507.18446) (SOTA 2025) - Advanced real-time speaker diarization
- [Diart](https://github.com/juanmc2005/diart) (SOTA 2021) - Real-time speaker diarization
- [Silero VAD](https://github.com/snakers4/silero-vad) (2024) - Enterprise-grade Voice Activity Detection
@@ -42,15 +42,6 @@ pip install whisperlivekit
```
> You can also clone the repo and `pip install -e .` for the latest version.
> **FFmpeg is required** and must be installed before using WhisperLiveKit
>
> | OS | How to install |
> |-----------|-------------|
> | Ubuntu/Debian | `sudo apt install ffmpeg` |
> | MacOS | `brew install ffmpeg` |
> | Windows | Download .exe from https://ffmpeg.org/download.html and add to PATH |
#### Quick Start
1. **Start the transcription server:**
```bash
@@ -63,6 +54,14 @@ pip install whisperlivekit
> - See [tokenizer.py](https://github.com/QuentinFuxa/WhisperLiveKit/blob/main/whisperlivekit/simul_whisper/whisper/tokenizer.py) for the list of all available languages.
> - For HTTPS requirements, see the **Parameters** section for SSL configuration options.
#### Use it to capture audio from web pages.
Go to `chrome-extension` for instructions.
<p align="center">
<img src="https://raw.githubusercontent.com/QuentinFuxa/WhisperLiveKit/refs/heads/main/chrome-extension/demo-extension.png" alt="WhisperLiveKit Demo" width="600">
</p>
#### Optional Dependencies
@@ -86,11 +85,11 @@ See **Parameters & Configuration** below on how to use them.
**Command-line Interface**: Start the transcription server with various options:
```bash
# Use better model than default (small)
whisperlivekit-server --model large-v3
# Large model and translate from french to danish
whisperlivekit-server --model large-v3 --language fr --target-language da
# Advanced configuration with diarization and language
whisperlivekit-server --host 0.0.0.0 --port 8000 --model medium --diarization --language fr
# Diarization and server listening on */80
whisperlivekit-server --host 0.0.0.0 --port 80 --model medium --diarization --language fr
```
@@ -137,26 +136,16 @@ async def websocket_endpoint(websocket: WebSocket):
## Parameters & Configuration
An important list of parameters can be changed. But what *should* you change?
- the `--model` size. List and recommandations [here](https://github.com/QuentinFuxa/WhisperLiveKit/blob/main/available_models.md)
- the `--language`. List [here](https://github.com/QuentinFuxa/WhisperLiveKit/blob/main/whisperlivekit/simul_whisper/whisper/tokenizer.py). If you use `auto`, the model attempts to detect the language automatically, but it tends to bias towards English.
- the `--backend` ? you can switch to `--backend faster-whisper` if `simulstreaming` does not work correctly or if you prefer to avoid the dual-license requirements.
- `--warmup-file`, if you have one
- `--task translate`, to translate in english
- `--host`, `--port`, `--ssl-certfile`, `--ssl-keyfile`, if you set up a server
- `--diarization`, if you want to use it.
- [BETA] `--target-language`, to translate using NLLB. [118 languages available](https://github.com/QuentinFuxa/WhisperLiveKit/blob/main/whisperlivekit/translation/mapping_languages.py). If you want to translate to english, you should rather use `--task translate`, since Whisper can do it directly.
### Full list of parameters :
| Parameter | Description | Default |
|-----------|-------------|---------|
| `--model` | Whisper model size. | `small` |
| `--language` | Source language code or `auto` | `auto` |
| `--task` | Set to `translate` to translate to english | `transcribe` |
| `--target-language` | [BETA] Translation language target. Ex: `fr` | `None` |
| `--backend` | Processing backend | `simulstreaming` |
| `--min-chunk-size` | Minimum audio chunk size (seconds) | `1.0` |
| `--model` | Whisper model size. List and recommandations [here](https://github.com/QuentinFuxa/WhisperLiveKit/blob/main/available_models.md) | `small` |
| `--model-dir` | Directory containing Whisper model.bin and other files. Overrides `--model`. | `None` |
| `--language` | List [here](https://github.com/QuentinFuxa/WhisperLiveKit/blob/main/whisperlivekit/simul_whisper/whisper/tokenizer.py). If you use `auto`, the model attempts to detect the language automatically, but it tends to bias towards English. | `auto` |
| `--target-language` | If sets, activates translation using NLLB. Ex: `fr`. [118 languages available](https://github.com/QuentinFuxa/WhisperLiveKit/blob/main/whisperlivekit/translation/mapping_languages.py). If you want to translate to english, you should rather use `--task translate`, since Whisper can do it directly. | `None` |
| `--task` | Set to `translate` to translate *only* to english, using Whisper translation. | `transcribe` |
| `--diarization` | Enable speaker identification | `False` |
| `--backend` | Processing backend. You can switch to `faster-whisper` if `simulstreaming` does not work correctly | `simulstreaming` |
| `--no-vac` | Disable Voice Activity Controller | `False` |
| `--no-vad` | Disable Voice Activity Detection | `False` |
| `--warmup-file` | Audio file path for model warmup | `jfk.wav` |
@@ -164,12 +153,25 @@ An important list of parameters can be changed. But what *should* you change?
| `--port` | Server port | `8000` |
| `--ssl-certfile` | Path to the SSL certificate file (for HTTPS support) | `None` |
| `--ssl-keyfile` | Path to the SSL private key file (for HTTPS support) | `None` |
| `--pcm-input` | raw PCM (s16le) data is expected as input and FFmpeg will be bypassed. | `False` |
| `--forwarded-allow-ips` | Ip or Ips allowed to reverse proxy the whisperlivekit-server. Supported types are IP Addresses (e.g. 127.0.0.1), IP Networks (e.g. 10.100.0.0/16), or Literals (e.g. /path/to/socket.sock) | `None` |
| `--pcm-input` | raw PCM (s16le) data is expected as input and FFmpeg will be bypassed. Frontend will use AudioWorklet instead of MediaRecorder | `False` |
| Translation options | Description | Default |
|-----------|-------------|---------|
| `--nllb-backend` | `transformers` or `ctranslate2` | `ctranslate2` |
| `--nllb-size` | `600M` or `1.3B` | `600M` |
| Diarization options | Description | Default |
|-----------|-------------|---------|
| `--diarization-backend` | `diart` or `sortformer` | `sortformer` |
| `--disable-punctuation-split` | Disable punctuation based splits. See #214 | `False` |
| `--segmentation-model` | Hugging Face model ID for Diart segmentation model. [Available models](https://github.com/juanmc2005/diart/tree/main?tab=readme-ov-file#pre-trained-models) | `pyannote/segmentation-3.0` |
| `--embedding-model` | Hugging Face model ID for Diart embedding model. [Available models](https://github.com/juanmc2005/diart/tree/main?tab=readme-ov-file#pre-trained-models) | `speechbrain/spkrec-ecapa-voxceleb` |
| SimulStreaming backend options | Description | Default |
|-----------|-------------|---------|
| `--disable-fast-encoder` | Disable Faster Whisper or MLX Whisper backends for the encoder (if installed). Inference can be slower but helpful when GPU memory is limited | `False` |
| `--custom-alignment-heads` | Use your own alignment heads, useful when `--model-dir` is used | `None` |
| `--frame-threshold` | AlignAtt frame threshold (lower = faster, higher = more accurate) | `25` |
| `--beams` | Number of beams for beam search (1 = greedy decoding) | `1` |
| `--decoder` | Force decoder type (`beam` or `greedy`) | `auto` |
@@ -184,25 +186,16 @@ An important list of parameters can be changed. But what *should* you change?
| `--preload-model-count` | Optional. Number of models to preload in memory to speed up loading (set up to the expected number of concurrent users) | `1` |
| WhisperStreaming backend options | Description | Default |
|-----------|-------------|---------|
| `--confidence-validation` | Use confidence scores for faster validation | `False` |
| `--buffer_trimming` | Buffer trimming strategy (`sentence` or `segment`) | `segment` |
| Diarization options | Description | Default |
|-----------|-------------|---------|
| `--diarization` | Enable speaker identification | `False` |
| `--diarization-backend` | `diart` or `sortformer` | `sortformer` |
| `--disable-punctuation-split` | Disable punctuation based splits. See #214 | `False` |
| `--segmentation-model` | Hugging Face model ID for Diart segmentation model. [Available models](https://github.com/juanmc2005/diart/tree/main?tab=readme-ov-file#pre-trained-models) | `pyannote/segmentation-3.0` |
| `--embedding-model` | Hugging Face model ID for Diart embedding model. [Available models](https://github.com/juanmc2005/diart/tree/main?tab=readme-ov-file#pre-trained-models) | `speechbrain/spkrec-ecapa-voxceleb` |
> For diarization using Diart, you need access to pyannote.audio models:
> 1. [Accept user conditions](https://huggingface.co/pyannote/segmentation) for the `pyannote/segmentation` model
> 2. [Accept user conditions](https://huggingface.co/pyannote/segmentation-3.0) for the `pyannote/segmentation-3.0` model
> 3. [Accept user conditions](https://huggingface.co/pyannote/embedding) for the `pyannote/embedding` model
>4. Login with HuggingFace: `huggingface-cli login`
> For diarization using Diart, you need to accept user conditions [here](https://huggingface.co/pyannote/segmentation) for the `pyannote/segmentation` model, [here](https://huggingface.co/pyannote/segmentation-3.0) for the `pyannote/segmentation-3.0` model and [here](https://huggingface.co/pyannote/embedding) for the `pyannote/embedding` model. **Then**, login to HuggingFace: `huggingface-cli login`
### 🚀 Deployment Guide

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@@ -1,4 +1,4 @@
# Available model sizes:
# Available Whisper model sizes:
- tiny.en (english only)
- tiny
@@ -71,3 +71,39 @@
3. Good hardware and want best quality? → `large-v3`
4. Need fast, high-quality transcription without translation? → `large-v3-turbo`
5. Need translation capabilities? → `large-v2` or `large-v3` (avoid turbo)
_______________________
# Translation Models and Backend
**Language Support**: ~200 languages
## Distilled Model Sizes Available
| Model | Size | Parameters | VRAM (FP16) | VRAM (INT8) | Quality |
|-------|------|------------|-------------|-------------|---------|
| 600M | 2.46 GB | 600M | ~1.5GB | ~800MB | Good, understandable |
| 1.3B | 5.48 GB | 1.3B | ~3GB | ~1.5GB | Better accuracy, context |
**Quality Impact**: 1.3B has ~15-25% better BLEU scores vs 600M across language pairs.
## Backend Performance
| Backend | Speed vs Base | Memory Usage | Quality Loss |
|---------|---------------|--------------|--------------|
| CTranslate2 | 6-10x faster | 40-60% less | ~5% BLEU drop |
| Transformers | Baseline | High | None |
| Transformers + MPS (on Apple Silicon) | 2x faster | Medium | None |
**Metrics**:
- CTranslate2: 50-100+ tokens/sec
- Transformers: 10-30 tokens/sec
- Apple Silicon with MPS: Up to 2x faster than CTranslate2
## Quick Decision Matrix
**Choose 600M**: Limited resources, close to 0 lag
**Choose 1.3B**: Quality matters
**Choose Transformers**: On Apple Silicon

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@@ -1,11 +1,13 @@
## WhisperLiveKit Chrome Extension v0.1.0
Capture the audio of your current tab, transcribe or translate it using WhisperliveKit. **Still unstable**
## WhisperLiveKit Chrome Extension v0.1.1
Capture the audio of your current tab, transcribe diarize and translate it using WhisperliveKit, in Chrome and other Chromium-based browsers.
> Currently, only the tab audio is captured; your microphone audio is not recorded.
<img src="https://raw.githubusercontent.com/QuentinFuxa/WhisperLiveKit/refs/heads/main/chrome-extension/demo-extension.png" alt="WhisperLiveKit Demo" width="730">
## Running this extension
1. Clone this repository.
2. Load this directory in Chrome as an unpacked extension.
1. Run `python sync_extension.py` to copy frontend files to the `chrome-extension` directory.
2. Load the `chrome-extension` directory in Chrome as an unpacked extension.
## Devs:

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@@ -1,669 +0,0 @@
/* Theme, WebSocket, recording, rendering logic extracted from inline script and adapted for segmented theme control and WS caption */
let isRecording = false;
let websocket = null;
let recorder = null;
let chunkDuration = 100;
let websocketUrl = "ws://localhost:8000/asr";
let userClosing = false;
let wakeLock = null;
let startTime = null;
let timerInterval = null;
let audioContext = null;
let analyser = null;
let microphone = null;
let waveCanvas = document.getElementById("waveCanvas");
let waveCtx = waveCanvas.getContext("2d");
let animationFrame = null;
let waitingForStop = false;
let lastReceivedData = null;
let lastSignature = null;
let availableMicrophones = [];
let selectedMicrophoneId = null;
waveCanvas.width = 60 * (window.devicePixelRatio || 1);
waveCanvas.height = 30 * (window.devicePixelRatio || 1);
waveCtx.scale(window.devicePixelRatio || 1, window.devicePixelRatio || 1);
const statusText = document.getElementById("status");
const recordButton = document.getElementById("recordButton");
const chunkSelector = document.getElementById("chunkSelector");
const websocketInput = document.getElementById("websocketInput");
const websocketDefaultSpan = document.getElementById("wsDefaultUrl");
const linesTranscriptDiv = document.getElementById("linesTranscript");
const timerElement = document.querySelector(".timer");
const themeRadios = document.querySelectorAll('input[name="theme"]');
const microphoneSelect = document.getElementById("microphoneSelect");
const settingsToggle = document.getElementById("settingsToggle");
const settingsDiv = document.querySelector(".settings");
chrome.runtime.onInstalled.addListener((details) => {
if (details.reason.search(/install/g) === -1) {
return
}
chrome.tabs.create({
url: chrome.runtime.getURL("welcome.html"),
active: true
})
})
function getWaveStroke() {
const styles = getComputedStyle(document.documentElement);
const v = styles.getPropertyValue("--wave-stroke").trim();
return v || "#000";
}
let waveStroke = getWaveStroke();
function updateWaveStroke() {
waveStroke = getWaveStroke();
}
function applyTheme(pref) {
if (pref === "light") {
document.documentElement.setAttribute("data-theme", "light");
} else if (pref === "dark") {
document.documentElement.setAttribute("data-theme", "dark");
} else {
document.documentElement.removeAttribute("data-theme");
}
updateWaveStroke();
}
// Persisted theme preference
const savedThemePref = localStorage.getItem("themePreference") || "system";
applyTheme(savedThemePref);
if (themeRadios.length) {
themeRadios.forEach((r) => {
r.checked = r.value === savedThemePref;
r.addEventListener("change", () => {
if (r.checked) {
localStorage.setItem("themePreference", r.value);
applyTheme(r.value);
}
});
});
}
// React to OS theme changes when in "system" mode
const darkMq = window.matchMedia && window.matchMedia("(prefers-color-scheme: dark)");
const handleOsThemeChange = () => {
const pref = localStorage.getItem("themePreference") || "system";
if (pref === "system") updateWaveStroke();
};
if (darkMq && darkMq.addEventListener) {
darkMq.addEventListener("change", handleOsThemeChange);
} else if (darkMq && darkMq.addListener) {
// deprecated, but included for Safari compatibility
darkMq.addListener(handleOsThemeChange);
}
async function enumerateMicrophones() {
try {
const micPermission = await navigator.permissions.query({
name: "microphone",
});
const stream = await navigator.mediaDevices.getUserMedia({ audio: true });
stream.getTracks().forEach(track => track.stop());
const devices = await navigator.mediaDevices.enumerateDevices();
availableMicrophones = devices.filter(device => device.kind === 'audioinput');
populateMicrophoneSelect();
console.log(`Found ${availableMicrophones.length} microphone(s)`);
} catch (error) {
console.error('Error enumerating microphones:', error);
statusText.textContent = "Error accessing microphones. Please grant permission.";
}
}
function populateMicrophoneSelect() {
if (!microphoneSelect) return;
microphoneSelect.innerHTML = '<option value="">Default Microphone</option>';
availableMicrophones.forEach((device, index) => {
const option = document.createElement('option');
option.value = device.deviceId;
option.textContent = device.label || `Microphone ${index + 1}`;
microphoneSelect.appendChild(option);
});
const savedMicId = localStorage.getItem('selectedMicrophone');
if (savedMicId && availableMicrophones.some(mic => mic.deviceId === savedMicId)) {
microphoneSelect.value = savedMicId;
selectedMicrophoneId = savedMicId;
}
}
function handleMicrophoneChange() {
selectedMicrophoneId = microphoneSelect.value || null;
localStorage.setItem('selectedMicrophone', selectedMicrophoneId || '');
const selectedDevice = availableMicrophones.find(mic => mic.deviceId === selectedMicrophoneId);
const deviceName = selectedDevice ? selectedDevice.label : 'Default Microphone';
console.log(`Selected microphone: ${deviceName}`);
statusText.textContent = `Microphone changed to: ${deviceName}`;
if (isRecording) {
statusText.textContent = "Switching microphone... Please wait.";
stopRecording().then(() => {
setTimeout(() => {
toggleRecording();
}, 1000);
});
}
}
// Helpers
function fmt1(x) {
const n = Number(x);
return Number.isFinite(n) ? n.toFixed(1) : x;
}
// Default WebSocket URL computation
const host = window.location.hostname || "localhost";
const port = window.location.port;
const protocol = window.location.protocol === "https:" ? "wss" : "ws";
const defaultWebSocketUrl = websocketUrl;
// Populate default caption and input
if (websocketDefaultSpan) websocketDefaultSpan.textContent = defaultWebSocketUrl;
websocketInput.value = defaultWebSocketUrl;
websocketUrl = defaultWebSocketUrl;
// Optional chunk selector (guard for presence)
if (chunkSelector) {
chunkSelector.addEventListener("change", () => {
chunkDuration = parseInt(chunkSelector.value);
});
}
// WebSocket input change handling
websocketInput.addEventListener("change", () => {
const urlValue = websocketInput.value.trim();
if (!urlValue.startsWith("ws://") && !urlValue.startsWith("wss://")) {
statusText.textContent = "Invalid WebSocket URL (must start with ws:// or wss://)";
return;
}
websocketUrl = urlValue;
statusText.textContent = "WebSocket URL updated. Ready to connect.";
});
function setupWebSocket() {
return new Promise((resolve, reject) => {
try {
websocket = new WebSocket(websocketUrl);
} catch (error) {
statusText.textContent = "Invalid WebSocket URL. Please check and try again.";
reject(error);
return;
}
websocket.onopen = () => {
statusText.textContent = "Connected to server.";
resolve();
};
websocket.onclose = () => {
if (userClosing) {
if (waitingForStop) {
statusText.textContent = "Processing finalized or connection closed.";
if (lastReceivedData) {
renderLinesWithBuffer(
lastReceivedData.lines || [],
lastReceivedData.buffer_diarization || "",
lastReceivedData.buffer_transcription || "",
0,
0,
true
);
}
}
} else {
statusText.textContent = "Disconnected from the WebSocket server. (Check logs if model is loading.)";
if (isRecording) {
stopRecording();
}
}
isRecording = false;
waitingForStop = false;
userClosing = false;
lastReceivedData = null;
websocket = null;
updateUI();
};
websocket.onerror = () => {
statusText.textContent = "Error connecting to WebSocket.";
reject(new Error("Error connecting to WebSocket"));
};
websocket.onmessage = (event) => {
const data = JSON.parse(event.data);
if (data.type === "ready_to_stop") {
console.log("Ready to stop received, finalizing display and closing WebSocket.");
waitingForStop = false;
if (lastReceivedData) {
renderLinesWithBuffer(
lastReceivedData.lines || [],
lastReceivedData.buffer_diarization || "",
lastReceivedData.buffer_transcription || "",
0,
0,
true
);
}
statusText.textContent = "Finished processing audio! Ready to record again.";
recordButton.disabled = false;
if (websocket) {
websocket.close();
}
return;
}
lastReceivedData = data;
const {
lines = [],
buffer_transcription = "",
buffer_diarization = "",
remaining_time_transcription = 0,
remaining_time_diarization = 0,
status = "active_transcription",
} = data;
renderLinesWithBuffer(
lines,
buffer_diarization,
buffer_transcription,
remaining_time_diarization,
remaining_time_transcription,
false,
status
);
};
});
}
function renderLinesWithBuffer(
lines,
buffer_diarization,
buffer_transcription,
remaining_time_diarization,
remaining_time_transcription,
isFinalizing = false,
current_status = "active_transcription"
) {
if (current_status === "no_audio_detected") {
linesTranscriptDiv.innerHTML =
"<p style='text-align: center; color: var(--muted); margin-top: 20px;'><em>No audio detected...</em></p>";
return;
}
const showLoading = !isFinalizing && (lines || []).some((it) => it.speaker == 0);
const showTransLag = !isFinalizing && remaining_time_transcription > 0;
const showDiaLag = !isFinalizing && !!buffer_diarization && remaining_time_diarization > 0;
const signature = JSON.stringify({
lines: (lines || []).map((it) => ({ speaker: it.speaker, text: it.text, start: it.start, end: it.end })),
buffer_transcription: buffer_transcription || "",
buffer_diarization: buffer_diarization || "",
status: current_status,
showLoading,
showTransLag,
showDiaLag,
isFinalizing: !!isFinalizing,
});
if (lastSignature === signature) {
const t = document.querySelector(".lag-transcription-value");
if (t) t.textContent = fmt1(remaining_time_transcription);
const d = document.querySelector(".lag-diarization-value");
if (d) d.textContent = fmt1(remaining_time_diarization);
const ld = document.querySelector(".loading-diarization-value");
if (ld) ld.textContent = fmt1(remaining_time_diarization);
return;
}
lastSignature = signature;
const linesHtml = (lines || [])
.map((item, idx) => {
let timeInfo = "";
if (item.start !== undefined && item.end !== undefined) {
timeInfo = ` ${item.start} - ${item.end}`;
}
let speakerLabel = "";
if (item.speaker === -2) {
speakerLabel = `<span class="silence">Silence<span id='timeInfo'>${timeInfo}</span></span>`;
} else if (item.speaker == 0 && !isFinalizing) {
speakerLabel = `<span class='loading'><span class="spinner"></span><span id='timeInfo'><span class="loading-diarization-value">${fmt1(
remaining_time_diarization
)}</span> second(s) of audio are undergoing diarization</span></span>`;
} else if (item.speaker !== 0) {
speakerLabel = `<span id="speaker">Speaker ${item.speaker}<span id='timeInfo'>${timeInfo}</span></span>`;
}
let currentLineText = item.text || "";
if (idx === lines.length - 1) {
if (!isFinalizing && item.speaker !== -2) {
if (remaining_time_transcription > 0) {
speakerLabel += `<span class="label_transcription"><span class="spinner"></span>Lag <span id='timeInfo'><span class="lag-transcription-value">${fmt1(
remaining_time_transcription
)}</span>s</span></span>`;
}
if (buffer_diarization && remaining_time_diarization > 0) {
speakerLabel += `<span class="label_diarization"><span class="spinner"></span>Lag<span id='timeInfo'><span class="lag-diarization-value">${fmt1(
remaining_time_diarization
)}</span>s</span></span>`;
}
}
if (buffer_diarization) {
if (isFinalizing) {
currentLineText +=
(currentLineText.length > 0 && buffer_diarization.trim().length > 0 ? " " : "") + buffer_diarization.trim();
} else {
currentLineText += `<span class="buffer_diarization">${buffer_diarization}</span>`;
}
}
if (buffer_transcription) {
if (isFinalizing) {
currentLineText +=
(currentLineText.length > 0 && buffer_transcription.trim().length > 0 ? " " : "") +
buffer_transcription.trim();
} else {
currentLineText += `<span class="buffer_transcription">${buffer_transcription}</span>`;
}
}
}
return currentLineText.trim().length > 0 || speakerLabel.length > 0
? `<p>${speakerLabel}<br/><div class='textcontent'>${currentLineText}</div></p>`
: `<p>${speakerLabel}<br/></p>`;
})
.join("");
linesTranscriptDiv.innerHTML = linesHtml;
window.scrollTo({ top: document.body.scrollHeight, behavior: "smooth" });
}
function updateTimer() {
if (!startTime) return;
const elapsed = Math.floor((Date.now() - startTime) / 1000);
const minutes = Math.floor(elapsed / 60).toString().padStart(2, "0");
const seconds = (elapsed % 60).toString().padStart(2, "0");
timerElement.textContent = `${minutes}:${seconds}`;
}
function drawWaveform() {
if (!analyser) return;
const bufferLength = analyser.frequencyBinCount;
const dataArray = new Uint8Array(bufferLength);
analyser.getByteTimeDomainData(dataArray);
waveCtx.clearRect(
0,
0,
waveCanvas.width / (window.devicePixelRatio || 1),
waveCanvas.height / (window.devicePixelRatio || 1)
);
waveCtx.lineWidth = 1;
waveCtx.strokeStyle = waveStroke;
waveCtx.beginPath();
const sliceWidth = (waveCanvas.width / (window.devicePixelRatio || 1)) / bufferLength;
let x = 0;
for (let i = 0; i < bufferLength; i++) {
const v = dataArray[i] / 128.0;
const y = (v * (waveCanvas.height / (window.devicePixelRatio || 1))) / 2;
if (i === 0) {
waveCtx.moveTo(x, y);
} else {
waveCtx.lineTo(x, y);
}
x += sliceWidth;
}
waveCtx.lineTo(
waveCanvas.width / (window.devicePixelRatio || 1),
(waveCanvas.height / (window.devicePixelRatio || 1)) / 2
);
waveCtx.stroke();
animationFrame = requestAnimationFrame(drawWaveform);
}
async function startRecording() {
try {
try {
wakeLock = await navigator.wakeLock.request("screen");
} catch (err) {
console.log("Error acquiring wake lock.");
}
let stream;
try {
// Try tab capture first
stream = await new Promise((resolve, reject) => {
chrome.tabCapture.capture({audio: true}, (s) => {
if (s) {
resolve(s);
} else {
reject(new Error('Tab capture failed or not available'));
}
});
});
statusText.textContent = "Using tab audio capture.";
} catch (tabError) {
console.log('Tab capture not available, falling back to microphone', tabError);
// Fallback to microphone
const audioConstraints = selectedMicrophoneId
? { audio: { deviceId: { exact: selectedMicrophoneId } } }
: { audio: true };
stream = await navigator.mediaDevices.getUserMedia(audioConstraints);
statusText.textContent = "Using microphone audio.";
}
audioContext = new (window.AudioContext || window.webkitAudioContext)();
analyser = audioContext.createAnalyser();
analyser.fftSize = 256;
microphone = audioContext.createMediaStreamSource(stream);
microphone.connect(analyser);
recorder = new MediaRecorder(stream, { mimeType: "audio/webm" });
recorder.ondataavailable = (e) => {
if (websocket && websocket.readyState === WebSocket.OPEN) {
websocket.send(e.data);
}
};
recorder.start(chunkDuration);
startTime = Date.now();
timerInterval = setInterval(updateTimer, 1000);
drawWaveform();
isRecording = true;
updateUI();
} catch (err) {
if (window.location.hostname === "0.0.0.0") {
statusText.textContent =
"Error accessing audio input. Browsers may block audio access on 0.0.0.0. Try using localhost:8000 instead.";
} else {
statusText.textContent = "Error accessing audio input. Please check permissions.";
}
console.error(err);
}
}
async function stopRecording() {
if (wakeLock) {
try {
await wakeLock.release();
} catch (e) {
// ignore
}
wakeLock = null;
}
userClosing = true;
waitingForStop = true;
if (websocket && websocket.readyState === WebSocket.OPEN) {
const emptyBlob = new Blob([], { type: "audio/webm" });
websocket.send(emptyBlob);
statusText.textContent = "Recording stopped. Processing final audio...";
}
if (recorder) {
recorder.stop();
recorder = null;
}
if (microphone) {
microphone.disconnect();
microphone = null;
}
if (analyser) {
analyser = null;
}
if (audioContext && audioContext.state !== "closed") {
try {
await audioContext.close();
} catch (e) {
console.warn("Could not close audio context:", e);
}
audioContext = null;
}
if (animationFrame) {
cancelAnimationFrame(animationFrame);
animationFrame = null;
}
if (timerInterval) {
clearInterval(timerInterval);
timerInterval = null;
}
timerElement.textContent = "00:00";
startTime = null;
isRecording = false;
updateUI();
}
async function toggleRecording() {
if (!isRecording) {
if (waitingForStop) {
console.log("Waiting for stop, early return");
return;
}
console.log("Connecting to WebSocket");
try {
if (websocket && websocket.readyState === WebSocket.OPEN) {
await startRecording();
} else {
await setupWebSocket();
await startRecording();
}
} catch (err) {
statusText.textContent = "Could not connect to WebSocket or access mic. Aborted.";
console.error(err);
}
} else {
console.log("Stopping recording");
stopRecording();
}
}
function updateUI() {
recordButton.classList.toggle("recording", isRecording);
recordButton.disabled = waitingForStop;
if (waitingForStop) {
if (statusText.textContent !== "Recording stopped. Processing final audio...") {
statusText.textContent = "Please wait for processing to complete...";
}
} else if (isRecording) {
statusText.textContent = "Recording...";
} else {
if (
statusText.textContent !== "Finished processing audio! Ready to record again." &&
statusText.textContent !== "Processing finalized or connection closed."
) {
statusText.textContent = "Click to start transcription";
}
}
if (!waitingForStop) {
recordButton.disabled = false;
}
}
recordButton.addEventListener("click", toggleRecording);
if (microphoneSelect) {
microphoneSelect.addEventListener("change", handleMicrophoneChange);
}
// Settings toggle functionality
settingsToggle.addEventListener("click", () => {
settingsDiv.classList.toggle("visible");
settingsToggle.classList.toggle("active");
});
document.addEventListener('DOMContentLoaded', async () => {
try {
await enumerateMicrophones();
} catch (error) {
console.log("Could not enumerate microphones on load:", error);
}
});
navigator.mediaDevices.addEventListener('devicechange', async () => {
console.log('Device change detected, re-enumerating microphones');
try {
await enumerateMicrophones();
} catch (error) {
console.log("Error re-enumerating microphones:", error);
}
});
async function run() {
const micPermission = await navigator.permissions.query({
name: "microphone",
});
document.getElementById(
"audioPermission"
).innerText = `MICROPHONE: ${micPermission.state}`;
if (micPermission.state !== "granted") {
chrome.tabs.create({ url: "welcome.html" });
}
const intervalId = setInterval(async () => {
const micPermission = await navigator.permissions.query({
name: "microphone",
});
if (micPermission.state === "granted") {
document.getElementById(
"audioPermission"
).innerText = `MICROPHONE: ${micPermission.state}`;
clearInterval(intervalId);
}
}, 100);
}
void run();

View File

@@ -3,9 +3,6 @@
"name": "WhisperLiveKit Tab Capture",
"version": "1.0",
"description": "Capture and transcribe audio from browser tabs using WhisperLiveKit.",
"background": {
"service_worker": "background.js"
},
"icons": {
"16": "icons/icon16.png",
"32": "icons/icon32.png",
@@ -14,7 +11,7 @@
},
"action": {
"default_title": "WhisperLiveKit Tab Capture",
"default_popup": "popup.html"
"default_popup": "live_transcription.html"
},
"permissions": [
"scripting",
@@ -22,16 +19,5 @@
"offscreen",
"activeTab",
"storage"
],
"web_accessible_resources": [
{
"resources": [
"requestPermissions.html",
"requestPermissions.js"
],
"matches": [
"<all_urls>"
]
}
]
}

View File

@@ -1,78 +0,0 @@
<!DOCTYPE html>
<html lang="en">
<head>
<meta charset="UTF-8" />
<meta name="viewport" content="width=device-width, initial-scale=1.0" />
<title>WhisperLiveKit</title>
<link rel="stylesheet" href="/web/live_transcription.css" />
</head>
<body>
<div class="settings-container">
<button id="recordButton">
<div class="shape-container">
<div class="shape"></div>
</div>
<div class="recording-info">
<div class="wave-container">
<canvas id="waveCanvas"></canvas>
</div>
<div class="timer">00:00</div>
</div>
</button>
<button id="settingsToggle" class="settings-toggle" title="Show/hide settings">
<img src="/web/src/settings.svg" alt="Settings" />
</button>
<div class="settings">
<div class="field">
<label for="websocketInput">Websocket URL</label>
<input id="websocketInput" type="text" placeholder="ws://host:port/asr" />
</div>
<div class="field">
<label id="microphoneSelectLabel" for="microphoneSelect">Select Microphone</label>
<select id="microphoneSelect">
<option value="">Default Microphone</option>
</select>
<div id="audioPermission"></div>
</div>
<div class="theme-selector-container">
<div class="segmented" role="radiogroup" aria-label="Theme selector">
<input type="radio" id="theme-system" name="theme" value="system" />
<label for="theme-system" title="System">
<img src="/web/src/system_mode.svg" alt="" />
<!-- <span>System</span> -->
</label>
<input type="radio" id="theme-light" name="theme" value="light" />
<label for="theme-light" title="Light">
<img src="/web/src/light_mode.svg" alt="" />
<!-- <span>Light</span> -->
</label>
<input type="radio" id="theme-dark" name="theme" value="dark" />
<label for="theme-dark" title="Dark">
<img src="/web/src/dark_mode.svg" alt="" />
<!-- <span>Dark</span> -->
</label>
</div>
</div>
</div>
</div>
<p id="status"></p>
<div id="linesTranscript"></div>
<script src="live_transcription.js"></script>
</body>
</html>

View File

@@ -1,539 +0,0 @@
:root {
--bg: #ffffff;
--text: #111111;
--muted: #666666;
--border: #e5e5e5;
--chip-bg: rgba(0, 0, 0, 0.04);
--chip-text: #000000;
--spinner-border: #8d8d8d5c;
--spinner-top: #b0b0b0;
--silence-bg: #f3f3f3;
--loading-bg: rgba(255, 77, 77, 0.06);
--button-bg: #ffffff;
--button-border: #e9e9e9;
--wave-stroke: #000000;
--label-dia-text: #868686;
--label-trans-text: #111111;
}
@media (prefers-color-scheme: dark) {
:root:not([data-theme="light"]) {
--bg: #0b0b0b;
--text: #e6e6e6;
--muted: #9aa0a6;
--border: #333333;
--chip-bg: rgba(255, 255, 255, 0.08);
--chip-text: #e6e6e6;
--spinner-border: #555555;
--spinner-top: #dddddd;
--silence-bg: #1a1a1a;
--loading-bg: rgba(255, 77, 77, 0.12);
--button-bg: #111111;
--button-border: #333333;
--wave-stroke: #e6e6e6;
--label-dia-text: #b3b3b3;
--label-trans-text: #ffffff;
}
}
:root[data-theme="dark"] {
--bg: #0b0b0b;
--text: #e6e6e6;
--muted: #9aa0a6;
--border: #333333;
--chip-bg: rgba(255, 255, 255, 0.08);
--chip-text: #e6e6e6;
--spinner-border: #555555;
--spinner-top: #dddddd;
--silence-bg: #1a1a1a;
--loading-bg: rgba(255, 77, 77, 0.12);
--button-bg: #111111;
--button-border: #333333;
--wave-stroke: #e6e6e6;
--label-dia-text: #b3b3b3;
--label-trans-text: #ffffff;
}
:root[data-theme="light"] {
--bg: #ffffff;
--text: #111111;
--muted: #666666;
--border: #e5e5e5;
--chip-bg: rgba(0, 0, 0, 0.04);
--chip-text: #000000;
--spinner-border: #8d8d8d5c;
--spinner-top: #b0b0b0;
--silence-bg: #f3f3f3;
--loading-bg: rgba(255, 77, 77, 0.06);
--button-bg: #ffffff;
--button-border: #e9e9e9;
--wave-stroke: #000000;
--label-dia-text: #868686;
--label-trans-text: #111111;
}
body {
font-family: ui-sans-serif, system-ui, sans-serif, 'Apple Color Emoji', 'Segoe UI Emoji', 'Segoe UI Symbol', 'Noto Color Emoji';
margin: 20px;
text-align: center;
background-color: var(--bg);
color: var(--text);
}
.settings-toggle {
margin-top: 4px;
width: 40px;
height: 40px;
border: none;
border-radius: 50%;
background-color: var(--button-bg);
cursor: pointer;
transition: all 0.3s ease;
/* border: 1px solid var(--button-border); */
display: flex;
align-items: center;
justify-content: center;
position: relative;
}
.settings-toggle:hover {
background-color: var(--chip-bg);
}
.settings-toggle img {
width: 24px;
height: 24px;
opacity: 0.7;
transition: opacity 0.2s ease, transform 0.3s ease;
}
.settings-toggle:hover img {
opacity: 1;
}
.settings-toggle.active img {
transform: rotate(80deg);
}
/* Record button */
#recordButton {
width: 50px;
height: 50px;
border: none;
border-radius: 50%;
background-color: var(--button-bg);
cursor: pointer;
transition: all 0.3s ease;
border: 1px solid var(--button-border);
display: flex;
align-items: center;
justify-content: center;
position: relative;
}
#recordButton.recording {
width: 180px;
border-radius: 40px;
justify-content: flex-start;
padding-left: 20px;
}
#recordButton:active {
transform: scale(0.95);
}
.shape-container {
width: 25px;
height: 25px;
display: flex;
align-items: center;
justify-content: center;
flex-shrink: 0;
}
.shape {
width: 25px;
height: 25px;
background-color: rgb(209, 61, 53);
border-radius: 50%;
transition: all 0.3s ease;
}
#recordButton:disabled .shape {
background-color: #6e6d6d;
}
#recordButton.recording .shape {
border-radius: 5px;
width: 25px;
height: 25px;
}
/* Recording elements */
.recording-info {
display: none;
align-items: center;
margin-left: 15px;
flex-grow: 1;
}
#recordButton.recording .recording-info {
display: flex;
}
.wave-container {
width: 60px;
height: 30px;
position: relative;
display: flex;
align-items: center;
justify-content: center;
}
#waveCanvas {
width: 100%;
height: 100%;
}
.timer {
font-size: 14px;
font-weight: 500;
color: var(--text);
margin-left: 10px;
}
#status {
margin-top: 20px;
font-size: 16px;
color: var(--text);
}
/* Settings */
.settings-container {
display: flex;
justify-content: center;
align-items: flex-start;
gap: 15px;
margin-top: 20px;
flex-wrap: wrap;
}
.settings {
display: none;
flex-wrap: wrap;
align-items: flex-start;
gap: 12px;
transition: opacity 0.3s ease;
}
.settings.visible {
display: flex;
}
.field {
display: flex;
flex-direction: column;
align-items: flex-start;
gap: 3px;
}
#chunkSelector,
#websocketInput,
#themeSelector,
#microphoneSelect {
font-size: 16px;
padding: 5px 8px;
border-radius: 8px;
border: 1px solid var(--border);
background-color: var(--button-bg);
color: var(--text);
max-height: 30px;
}
#microphoneSelect {
width: 100%;
max-width: 190px;
min-width: 120px;
}
#chunkSelector:focus,
#websocketInput:focus,
#themeSelector:focus,
#microphoneSelect:focus {
outline: none;
border-color: #007bff;
box-shadow: 0 0 0 3px rgba(0, 123, 255, 0.15);
}
label {
font-size: 13px;
color: var(--muted);
}
.ws-default {
font-size: 12px;
color: var(--muted);
}
/* Segmented pill control for Theme */
.segmented {
display: inline-flex;
align-items: stretch;
border: 1px solid var(--button-border);
background-color: var(--button-bg);
border-radius: 999px;
overflow: hidden;
}
.segmented input[type="radio"] {
position: absolute;
opacity: 0;
pointer-events: none;
}
.theme-selector-container {
display: flex;
align-items: center;
margin-top: 17px;
}
.segmented label {
display: inline-flex;
align-items: center;
gap: 6px;
padding: 6px 12px;
font-size: 14px;
color: var(--muted);
cursor: pointer;
user-select: none;
transition: background-color 0.2s ease, color 0.2s ease;
}
.segmented label span {
display: none;
}
.segmented label:hover span {
display: inline;
}
.segmented label:hover {
background-color: var(--chip-bg);
}
.segmented img {
width: 16px;
height: 16px;
}
.segmented input[type="radio"]:checked + label {
background-color: var(--chip-bg);
color: var(--text);
}
.segmented input[type="radio"]:focus-visible + label,
.segmented input[type="radio"]:focus + label {
outline: 2px solid #007bff;
outline-offset: 2px;
border-radius: 999px;
}
/* Transcript area */
#linesTranscript {
margin: 20px auto;
max-width: 700px;
text-align: left;
font-size: 16px;
}
#linesTranscript p {
margin: 0px 0;
}
#linesTranscript strong {
color: var(--text);
}
#speaker {
border: 1px solid var(--border);
border-radius: 100px;
padding: 2px 10px;
font-size: 14px;
margin-bottom: 0px;
}
.label_diarization {
background-color: var(--chip-bg);
border-radius: 8px 8px 8px 8px;
padding: 2px 10px;
margin-left: 10px;
display: inline-block;
white-space: nowrap;
font-size: 14px;
margin-bottom: 0px;
color: var(--label-dia-text);
}
.label_transcription {
background-color: var(--chip-bg);
border-radius: 8px 8px 8px 8px;
padding: 2px 10px;
display: inline-block;
white-space: nowrap;
margin-left: 10px;
font-size: 14px;
margin-bottom: 0px;
color: var(--label-trans-text);
}
#timeInfo {
color: var(--muted);
margin-left: 10px;
}
.textcontent {
font-size: 16px;
padding-left: 10px;
margin-bottom: 10px;
margin-top: 1px;
padding-top: 5px;
border-radius: 0px 0px 0px 10px;
}
.buffer_diarization {
color: var(--label-dia-text);
margin-left: 4px;
}
.buffer_transcription {
color: #7474748c;
margin-left: 4px;
}
.spinner {
display: inline-block;
width: 8px;
height: 8px;
border: 2px solid var(--spinner-border);
border-top: 2px solid var(--spinner-top);
border-radius: 50%;
animation: spin 0.7s linear infinite;
vertical-align: middle;
margin-bottom: 2px;
margin-right: 5px;
}
@keyframes spin {
to {
transform: rotate(360deg);
}
}
.silence {
color: var(--muted);
background-color: var(--silence-bg);
font-size: 13px;
border-radius: 30px;
padding: 2px 10px;
}
.loading {
color: var(--muted);
background-color: var(--loading-bg);
border-radius: 8px 8px 8px 0px;
padding: 2px 10px;
font-size: 14px;
margin-bottom: 0px;
}
/* for smaller screens */
/* @media (max-width: 450px) {
.settings-container {
flex-direction: column;
gap: 10px;
align-items: center;
}
.settings {
justify-content: center;
gap: 8px;
width: 100%;
}
.field {
align-items: center;
width: 100%;
}
#websocketInput,
#microphoneSelect {
min-width: 200px;
max-width: 100%;
}
.theme-selector-container {
margin-top: 10px;
}
} */
/* @media (max-width: 768px) and (min-width: 451px) {
.settings-container {
gap: 10px;
}
.settings {
gap: 8px;
}
#websocketInput,
#microphoneSelect {
min-width: 150px;
max-width: 300px;
}
} */
/* @media (max-width: 480px) {
body {
margin: 10px;
}
.settings-toggle {
width: 35px;
height: 35px;
}
.settings-toggle img {
width: 20px;
height: 20px;
}
.settings {
flex-direction: column;
align-items: center;
gap: 6px;
}
#websocketInput,
#microphoneSelect {
max-width: 400px;
}
.segmented label {
padding: 4px 8px;
font-size: 12px;
}
.segmented img {
width: 14px;
height: 14px;
}
} */
html
{
width: 400px; /* max: 800px */
height: 600px; /* max: 600px */
border-radius: 10px;
}

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@@ -1,12 +0,0 @@
<!DOCTYPE html>
<html>
<head>
<title>Welcome</title>
<script src="welcome.js"></script>
</head>
<body>
This page exists to workaround an issue with Chrome that blocks permission
requests from chrome extensions
<!-- <button id="requestMicrophone">Request Microphone</button> -->
</body>
</html>

BIN
demo.png

Binary file not shown.

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264
docs/API.md Normal file
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# WhisperLiveKit WebSocket API Documentation
> !! **Note**: The new API structure described in this document is currently under deployment.
This documentation is intended for devs who want to build custom frontends.
WLK provides real-time speech transcription, speaker diarization, and translation through a WebSocket API. The server sends incremental updates as audio is processed, allowing clients to display live transcription results with minimal latency.
---
## Legacy API (Current)
### Message Structure
The current API sends complete state snapshots on each update (several time per second)
```typescript
{
"type": str,
"status": str,
"lines": [
{
"speaker": int,
"text": str,
"start": float,
"end": float,
"translation": str | null,
"detected_language": str
}
],
"buffer_transcription": str,
"buffer_diarization": str,
"remaining_time_transcription": float,
"remaining_time_diarization": float
}
```
---
## New API (Under Development)
### Philosophy
Principles:
- **Incremental Updates**: Only updates and new segments are sent
- **Ephemeral Buffers**: Temporary, unvalidated data displayed in real-time but overwritten on next update, at speaker level
## Message Format
```typescript
{
"type": "transcript_update",
"status": "active_transcription" | "no_audio_detected",
"segments": [
{
"id": number,
"speaker": number,
"text": string,
"start_speaker": float,
"start": float,
"end": float,
"language": string | null,
"translation": string,
"words": [
{
"text": string,
"start": float,
"end": float,
"validated": {
"text": boolean,
"speaker": boolean,
}
}
],
"buffer": {
"transcription": string,
"diarization": string,
"translation": string
}
}
],
"metadata": {
"remaining_time_transcription": float,
"remaining_time_diarization": float
}
}
```
### Other Message Types
#### Config Message (sent on connection)
```json
{
"type": "config",
"useAudioWorklet": true / false
}
```
#### Ready to Stop Message (sent after processing complete)
```json
{
"type": "ready_to_stop"
}
```
---
## Field Descriptions
### Segment Fields
| Field | Type | Description |
|-------|------|-------------|
| `id` | `number` | Unique identifier for this segment. Used by clients to update specific segments efficiently. |
| `speaker` | `number` | Speaker ID (1, 2, 3...). Special value `-2` indicates silence. |
| `text` | `string` | Validated transcription text for this update. Should be **appended** to the segment's text on the client side. |
| `start_speaker` | `float` | Timestamp (seconds) when this speaker segment began. |
| `start` | `float` | Timestamp (seconds) of the first word in this update. |
| `end` | `float` | Timestamp (seconds) of the last word in this update. |
| `language` | `string \| null` | ISO language code (e.g., "en", "fr"). `null` until language is detected. |
| `translation` | `string` | Validated translation text for this update. Should be **appended** to the segment's translation on the client side. |
| `words` | `Array` | Array of word-level objects with timing and validation information. |
| `buffer` | `Object` | Per-segment temporary buffers, see below |
### Word Object
| Field | Type | Description |
|-------|------|-------------|
| `text` | `string` | The word text. |
| `start` | `number` | Start timestamp (seconds) of this word. |
| `end` | `number` | End timestamp (seconds) of this word. |
| `validated.text` | `boolean` | Whether the transcription text has been validated. if false, word is also in buffer: transcription |
| `validated.speaker` | `boolean` | Whether the speaker assignment has been validated. if false, word is also in buffer: diarization |
| `validated.language` | `boolean` | Whether the language detection has been validated. if false, word is also in buffer: translation |
### Buffer Object (Per-Segment)
Buffers are **ephemeral**. They should be displayed to the user but not stored permanently in the frontend. Each update may contain a completely different buffer value, and previous buffer is likely to be in the next validated text.
| Field | Type | Description |
|-------|------|-------------|
| `transcription` | `string` | Pending transcription text. Displayed immediately but **overwritten** on next update. |
| `diarization` | `string` | Pending diarization text (text waiting for speaker assignment). Displayed immediately but **overwritten** on next update. |
| `translation` | `string` | Pending translation text. Displayed immediately but **overwritten** on next update. |
### Metadata Fields
| Field | Type | Description |
|-------|------|-------------|
| `remaining_time_transcription` | `float` | Seconds of audio waiting for transcription processing. |
| `remaining_time_diarization` | `float` | Seconds of audio waiting for speaker diarization. |
### Status Values
| Status | Description |
|--------|-------------|
| `active_transcription` | Normal operation, transcription is active. |
| `no_audio_detected` | No audio has been detected yet. |
---
## Update Behavior
### Incremental Updates
The API sends **only changed or new segments**. Clients should:
1. Maintain a local map of segments by ID
2. When receiving an update, merge/update segments by ID
3. Render only the changed segments
### Language Detection
When language is detected for a segment:
```jsonc
// Update 1: No language yet
{
"segments": [
{"id": 1, "speaker": 1, "text": "May see", "language": null}
]
}
// Update 2: Same segment ID, language now detected
{
"segments": [
{"id": 1, "speaker": 1, "text": "Merci", "language": "fr"}
]
}
```
**Client behavior**: **Replace** the existing segment with the same ID.
### Buffer Behavior
Buffers are **per-segment** to handle multi-speaker scenarios correctly.
#### Example: Translation with diarization and translation
```jsonc
// Update 1
{
"segments": [
{
"id": 1,
"speaker": 1,
"text": "Hello world, how are",
"translation": "",
"buffer": {
"transcription": "",
"diarization": " you on",
"translation": "Bonjour le monde"
}
}
]
}
// ==== Frontend ====
// <SPEAKER>1</SPEAKER>
// <TRANSCRIPTION>Hello world, how are <DIARIZATION BUFFER> you on</DIARIZATION BUFFER></TRANSCRIPTION>
// <TRANSLATION><TRANSLATION BUFFER>Bonjour le monde</TRANSLATION BUFFER></TRANSLATION>
// Update 2
{
"segments": [
{
"id": 1,
"speaker": 1,
"text": " you on this",
"translation": "Bonjour tout le monde",
"buffer": {
"transcription": "",
"diarization": " beautiful day",
"translation": ",comment"
}
},
]
}
// ==== Frontend ====
// <SPEAKER>1</SPEAKER>
// <TRANSCRIPTION>Hello world, how are you on this<DIARIZATION BUFFER> beautiful day</DIARIZATION BUFFER></TRANSCRIPTION>
// <TRANSLATION>Bonjour tout le monde<TRANSLATION BUFFER>, comment</TRANSLATION BUFFER><TRANSLATION>
```
### Silence Segments
Silence is represented with the speaker id = `-2`:
```jsonc
{
"id": 5,
"speaker": -2,
"text": "",
"start": 10.5,
"end": 12.3
}
```

View File

@@ -4,7 +4,7 @@ build-backend = "setuptools.build_meta"
[project]
name = "whisperlivekit"
version = "0.2.9"
version = "0.2.12"
description = "Real-time speech-to-text with speaker diarization using Whisper"
readme = "README.md"
authors = [
@@ -50,7 +50,7 @@ Homepage = "https://github.com/QuentinFuxa/WhisperLiveKit"
whisperlivekit-server = "whisperlivekit.basic_server:main"
[tool.setuptools]
packages = ["whisperlivekit", "whisperlivekit.diarization", "whisperlivekit.simul_whisper", "whisperlivekit.simul_whisper.whisper", "whisperlivekit.simul_whisper.whisper.assets", "whisperlivekit.simul_whisper.whisper.normalizers", "whisperlivekit.web", "whisperlivekit.whisper_streaming_custom"]
packages = ["whisperlivekit", "whisperlivekit.diarization", "whisperlivekit.simul_whisper", "whisperlivekit.simul_whisper.whisper", "whisperlivekit.simul_whisper.whisper.assets", "whisperlivekit.simul_whisper.whisper.normalizers", "whisperlivekit.web", "whisperlivekit.whisper_streaming_custom", "whisperlivekit.translation"]
[tool.setuptools.package-data]
whisperlivekit = ["web/*.html", "web/*.css", "web/*.js", "web/src/*.svg"]

38
sync_extension.py Normal file
View File

@@ -0,0 +1,38 @@
import shutil
import os
from pathlib import Path
def sync_extension_files():
"""Copy core files from web directory to Chrome extension directory."""
web_dir = Path("whisperlivekit/web")
extension_dir = Path("chrome-extension")
files_to_sync = [
"live_transcription.html", "live_transcription.js", "live_transcription.css"
]
svg_files = [
"system_mode.svg",
"light_mode.svg",
"dark_mode.svg",
"settings.svg"
]
for file in files_to_sync:
src_path = web_dir / file
dest_path = extension_dir / file
dest_path.parent.mkdir(parents=True, exist_ok=True)
shutil.copy2(src_path, dest_path)
for svg_file in svg_files:
src_path = web_dir / "src" / svg_file
dest_path = extension_dir / "web" / "src" / svg_file
dest_path.parent.mkdir(parents=True, exist_ok=True)
shutil.copy2(src_path, dest_path)
if __name__ == "__main__":
sync_extension_files()

View File

@@ -4,17 +4,30 @@ from time import time, sleep
import math
import logging
import traceback
from whisperlivekit.timed_objects import ASRToken, Silence, Line, FrontData, State
from whisperlivekit.timed_objects import ASRToken, Silence, Line, FrontData, State, Transcript, ChangeSpeaker
from whisperlivekit.core import TranscriptionEngine, online_factory, online_diarization_factory, online_translation_factory
from whisperlivekit.silero_vad_iterator import FixedVADIterator
from whisperlivekit.results_formater import format_output
# Set up logging once
from whisperlivekit.ffmpeg_manager import FFmpegManager, FFmpegState
logging.basicConfig(level=logging.INFO, format="%(asctime)s - %(levelname)s - %(message)s")
logger = logging.getLogger(__name__)
logger.setLevel(logging.DEBUG)
SENTINEL = object() # unique sentinel object for end of stream marker
def cut_at(cumulative_pcm, cut_sec):
cumulative_len = 0
cut_sample = int(cut_sec * 16000)
for ind, pcm_array in enumerate(cumulative_pcm):
if (cumulative_len + len(pcm_array)) >= cut_sample:
cut_chunk = cut_sample - cumulative_len
before = np.concatenate(cumulative_pcm[:ind] + [cumulative_pcm[ind][:cut_chunk]])
after = [cumulative_pcm[ind][cut_chunk:]] + cumulative_pcm[ind+1:]
return before, after
cumulative_len += len(pcm_array)
return np.concatenate(cumulative_pcm), []
async def get_all_from_queue(queue):
items = []
@@ -48,33 +61,53 @@ class AudioProcessor:
self.bytes_per_sample = 2
self.bytes_per_sec = self.samples_per_sec * self.bytes_per_sample
self.max_bytes_per_sec = 32000 * 5 # 5 seconds of audio at 32 kHz
self.is_pcm_input = True
self.debug = False
self.is_pcm_input = self.args.pcm_input
# State management
self.is_stopping = False
self.silence = False
self.silence_duration = 0.0
self.tokens = []
self.last_validated_token = 0
self.translated_segments = []
self.buffer_transcription = ""
self.buffer_diarization = ""
self.buffer_transcription = Transcript()
self.end_buffer = 0
self.end_attributed_speaker = 0
self.lock = asyncio.Lock()
self.beg_loop = None #to deal with a potential little lag at the websocket initialization, this is now set in process_audio
self.beg_loop = 0.0 #to deal with a potential little lag at the websocket initialization, this is now set in process_audio
self.sep = " " # Default separator
self.last_response_content = FrontData()
self.last_detected_speaker = None
self.speaker_languages = {}
self.diarization_before_transcription = False
if self.diarization_before_transcription:
self.cumulative_pcm = []
self.last_start = 0.0
self.last_end = 0.0
# Models and processing
self.asr = models.asr
self.tokenizer = models.tokenizer
self.vac_model = models.vac_model
if self.args.vac:
self.vac = FixedVADIterator(models.vac_model)
else:
self.vac = None
self.ffmpeg_manager = None
self.ffmpeg_reader_task = None
self._ffmpeg_error = None
if not self.is_pcm_input:
self.ffmpeg_manager = FFmpegManager(
sample_rate=self.sample_rate,
channels=self.channels
)
async def handle_ffmpeg_error(error_type: str):
logger.error(f"FFmpeg error: {error_type}")
self._ffmpeg_error = error_type
self.ffmpeg_manager.on_error_callback = handle_ffmpeg_error
self.transcription_queue = asyncio.Queue() if self.args.transcription else None
self.diarization_queue = asyncio.Queue() if self.args.diarization else None
self.translation_queue = asyncio.Queue() if self.args.target_language else None
@@ -82,39 +115,30 @@ class AudioProcessor:
self.transcription_task = None
self.diarization_task = None
self.translation_task = None
self.watchdog_task = None
self.all_tasks_for_cleanup = []
self.transcription = None
self.translation = None
self.diarization = None
if self.args.transcription:
self.online = online_factory(self.args, models.asr, models.tokenizer)
self.sep = self.online.asr.sep
self.transcription = online_factory(self.args, models.asr)
self.sep = self.transcription.asr.sep
if self.args.diarization:
self.diarization = online_diarization_factory(self.args, models.diarization_model)
if self.args.target_language:
self.online_translation = online_translation_factory(self.args, models.translation_model)
if models.translation_model:
self.translation = online_translation_factory(self.args, models.translation_model)
def convert_pcm_to_float(self, pcm_buffer):
"""Convert PCM buffer in s16le format to normalized NumPy array."""
return np.frombuffer(pcm_buffer, dtype=np.int16).astype(np.float32) / 32768.0
async def update_transcription(self, new_tokens, buffer, end_buffer):
"""Thread-safe update of transcription with new data."""
async with self.lock:
self.tokens.extend(new_tokens)
self.buffer_transcription = buffer
self.end_buffer = end_buffer
async def update_diarization(self, end_attributed_speaker, buffer_diarization=""):
"""Thread-safe update of diarization with new data."""
async with self.lock:
self.end_attributed_speaker = end_attributed_speaker
if buffer_diarization:
self.buffer_diarization = buffer_diarization
async def add_dummy_token(self):
"""Placeholder token when no transcription is available."""
async with self.lock:
current_time = time() - self.beg_loop if self.beg_loop else 0
current_time = time() - self.beg_loop
self.tokens.append(ASRToken(
start=current_time, end=current_time + 1,
text=".", speaker=-1, is_dummy=True
@@ -137,9 +161,9 @@ class AudioProcessor:
return State(
tokens=self.tokens.copy(),
last_validated_token=self.last_validated_token,
translated_segments=self.translated_segments.copy(),
buffer_transcription=self.buffer_transcription,
buffer_diarization=self.buffer_diarization,
end_buffer=self.end_buffer,
end_attributed_speaker=self.end_attributed_speaker,
remaining_time_transcription=remaining_transcription,
@@ -151,10 +175,60 @@ class AudioProcessor:
async with self.lock:
self.tokens = []
self.translated_segments = []
self.buffer_transcription = self.buffer_diarization = ""
self.buffer_transcription = Transcript()
self.end_buffer = self.end_attributed_speaker = 0
self.beg_loop = time()
async def ffmpeg_stdout_reader(self):
"""Read audio data from FFmpeg stdout and process it into the PCM pipeline."""
beg = time()
while True:
try:
if self.is_stopping:
logger.info("Stopping ffmpeg_stdout_reader due to stopping flag.")
break
state = await self.ffmpeg_manager.get_state() if self.ffmpeg_manager else FFmpegState.STOPPED
if state == FFmpegState.FAILED:
logger.error("FFmpeg is in FAILED state, cannot read data")
break
elif state == FFmpegState.STOPPED:
logger.info("FFmpeg is stopped")
break
elif state != FFmpegState.RUNNING:
await asyncio.sleep(0.1)
continue
current_time = time()
elapsed_time = max(0.0, current_time - beg)
buffer_size = max(int(32000 * elapsed_time), 4096) # dynamic read
beg = current_time
chunk = await self.ffmpeg_manager.read_data(buffer_size)
if not chunk:
# No data currently available
await asyncio.sleep(0.05)
continue
self.pcm_buffer.extend(chunk)
await self.handle_pcm_data()
except asyncio.CancelledError:
logger.info("ffmpeg_stdout_reader cancelled.")
break
except Exception as e:
logger.warning(f"Exception in ffmpeg_stdout_reader: {e}")
logger.debug(f"Traceback: {traceback.format_exc()}")
await asyncio.sleep(0.2)
logger.info("FFmpeg stdout processing finished. Signaling downstream processors if needed.")
if not self.diarization_before_transcription and self.transcription_queue:
await self.transcription_queue.put(SENTINEL)
if self.diarization:
await self.diarization_queue.put(SENTINEL)
if self.translation:
await self.translation_queue.put(SENTINEL)
async def transcription_processor(self):
"""Process audio chunks for transcription."""
cumulative_pcm_duration_stream_time = 0.0
@@ -167,12 +241,7 @@ class AudioProcessor:
self.transcription_queue.task_done()
break
if not self.online:
logger.warning("Transcription processor: self.online not initialized.")
self.transcription_queue.task_done()
continue
asr_internal_buffer_duration_s = len(getattr(self.online, 'audio_buffer', [])) / self.online.SAMPLING_RATE
asr_internal_buffer_duration_s = len(getattr(self.transcription, 'audio_buffer', [])) / self.transcription.SAMPLING_RATE
transcription_lag_s = max(0.0, time() - self.beg_loop - self.end_buffer)
asr_processing_logs = f"internal_buffer={asr_internal_buffer_duration_s:.2f}s | lag={transcription_lag_s:.2f}s |"
if type(item) is Silence:
@@ -180,50 +249,47 @@ class AudioProcessor:
if self.tokens:
asr_processing_logs += f" | last_end = {self.tokens[-1].end} |"
logger.info(asr_processing_logs)
if type(item) is Silence:
cumulative_pcm_duration_stream_time += item.duration
self.online.insert_silence(item.duration, self.tokens[-1].end if self.tokens else 0)
self.transcription.insert_silence(item.duration, self.tokens[-1].end if self.tokens else 0)
continue
if isinstance(item, np.ndarray):
elif isinstance(item, ChangeSpeaker):
self.transcription.new_speaker(item)
elif isinstance(item, np.ndarray):
pcm_array = item
else:
raise Exception('item should be pcm_array')
logger.info(asr_processing_logs)
duration_this_chunk = len(pcm_array) / self.sample_rate
cumulative_pcm_duration_stream_time += duration_this_chunk
stream_time_end_of_current_pcm = cumulative_pcm_duration_stream_time
self.online.insert_audio_chunk(pcm_array, stream_time_end_of_current_pcm)
new_tokens, current_audio_processed_upto = await asyncio.to_thread(self.online.process_iter)
self.transcription.insert_audio_chunk(pcm_array, stream_time_end_of_current_pcm)
new_tokens, current_audio_processed_upto = await asyncio.to_thread(self.transcription.process_iter)
# Get buffer information
_buffer_transcript_obj = self.online.get_buffer()
buffer_text = _buffer_transcript_obj.text
_buffer_transcript = self.transcription.get_buffer()
buffer_text = _buffer_transcript.text
if new_tokens:
validated_text = self.sep.join([t.text for t in new_tokens])
if buffer_text.startswith(validated_text):
buffer_text = buffer_text[len(validated_text):].lstrip()
_buffer_transcript.text = buffer_text[len(validated_text):].lstrip()
candidate_end_times = [self.end_buffer]
if new_tokens:
candidate_end_times.append(new_tokens[-1].end)
if _buffer_transcript_obj.end is not None:
candidate_end_times.append(_buffer_transcript_obj.end)
if _buffer_transcript.end is not None:
candidate_end_times.append(_buffer_transcript.end)
candidate_end_times.append(current_audio_processed_upto)
new_end_buffer = max(candidate_end_times)
async with self.lock:
self.tokens.extend(new_tokens)
self.buffer_transcription = _buffer_transcript
self.end_buffer = max(candidate_end_times)
await self.update_transcription(
new_tokens, buffer_text, new_end_buffer
)
if new_tokens and self.args.target_language and self.translation_queue:
if self.translation_queue:
for token in new_tokens:
await self.translation_queue.put(token)
@@ -247,8 +313,9 @@ class AudioProcessor:
async def diarization_processor(self, diarization_obj):
"""Process audio chunks for speaker diarization."""
buffer_diarization = ""
cumulative_pcm_duration_stream_time = 0.0
if self.diarization_before_transcription:
self.current_speaker = 0
await self.transcription_queue.put(ChangeSpeaker(speaker=self.current_speaker, start=0.0))
while True:
try:
item = await self.diarization_queue.get()
@@ -256,20 +323,42 @@ class AudioProcessor:
logger.debug("Diarization processor received sentinel. Finishing.")
self.diarization_queue.task_done()
break
if type(item) is Silence:
cumulative_pcm_duration_stream_time += item.duration
elif type(item) is Silence:
diarization_obj.insert_silence(item.duration)
continue
if isinstance(item, np.ndarray):
elif isinstance(item, np.ndarray):
pcm_array = item
else:
raise Exception('item should be pcm_array')
# Process diarization
await diarization_obj.diarize(pcm_array)
if self.diarization_before_transcription:
segments = diarization_obj.get_segments()
self.cumulative_pcm.append(pcm_array)
if segments:
last_segment = segments[-1]
if last_segment.speaker != self.current_speaker:
cut_sec = last_segment.start - self.last_end
to_transcript, self.cumulative_pcm = cut_at(self.cumulative_pcm, cut_sec)
await self.transcription_queue.put(to_transcript)
self.current_speaker = last_segment.speaker
await self.transcription_queue.put(ChangeSpeaker(speaker=self.current_speaker, start=last_segment.start))
cut_sec = last_segment.end - last_segment.start
to_transcript, self.cumulative_pcm = cut_at(self.cumulative_pcm, cut_sec)
await self.transcription_queue.put(to_transcript)
self.last_start = last_segment.start
self.last_end = last_segment.end
else:
cut_sec = last_segment.end - self.last_end
to_transcript, self.cumulative_pcm = cut_at(self.cumulative_pcm, cut_sec)
await self.transcription_queue.put(to_transcript)
self.last_end = last_segment.end
elif not self.diarization_before_transcription:
async with self.lock:
self.tokens = diarization_obj.assign_speakers_to_tokens(
self.tokens,
@@ -277,9 +366,6 @@ class AudioProcessor:
)
if len(self.tokens) > 0:
self.end_attributed_speaker = max(self.tokens[-1].end, self.end_attributed_speaker)
if buffer_diarization:
self.buffer_diarization = buffer_diarization
self.diarization_queue.task_done()
except Exception as e:
@@ -289,20 +375,23 @@ class AudioProcessor:
self.diarization_queue.task_done()
logger.info("Diarization processor task finished.")
async def translation_processor(self, online_translation):
async def translation_processor(self):
# the idea is to ignore diarization for the moment. We use only transcription tokens.
# And the speaker is attributed given the segments used for the translation
# in the future we want to have different languages for each speaker etc, so it will be more complex.
while True:
try:
token = await self.translation_queue.get() #block until at least 1 token
if token is SENTINEL:
item = await self.translation_queue.get() #block until at least 1 token
if item is SENTINEL:
logger.debug("Translation processor received sentinel. Finishing.")
self.translation_queue.task_done()
break
elif type(item) is Silence:
self.translation.insert_silence(item.duration)
continue
# get all the available tokens for translation. The more words, the more precise
tokens_to_process = [token]
tokens_to_process = [item]
additional_tokens = await get_all_from_queue(self.translation_queue)
sentinel_found = False
@@ -310,11 +399,14 @@ class AudioProcessor:
if additional_token is SENTINEL:
sentinel_found = True
break
elif type(additional_token) is Silence:
self.translation.insert_silence(additional_token.duration)
continue
else:
tokens_to_process.append(additional_token)
if tokens_to_process:
online_translation.insert_tokens(tokens_to_process)
self.translated_segments = await asyncio.to_thread(online_translation.process)
self.translation.insert_tokens(tokens_to_process)
self.translated_segments = await asyncio.to_thread(self.translation.process)
self.translation_queue.task_done()
for _ in additional_tokens:
self.translation_queue.task_done()
@@ -326,7 +418,7 @@ class AudioProcessor:
except Exception as e:
logger.warning(f"Exception in translation_processor: {e}")
logger.warning(f"Traceback: {traceback.format_exc()}")
if 'token' in locals() and token is not SENTINEL:
if 'token' in locals() and item is not SENTINEL:
self.translation_queue.task_done()
if 'additional_tokens' in locals():
for _ in additional_tokens:
@@ -337,47 +429,49 @@ class AudioProcessor:
"""Format processing results for output."""
while True:
try:
# Get current state
if self._ffmpeg_error:
yield FrontData(status="error", error=f"FFmpeg error: {self._ffmpeg_error}")
self._ffmpeg_error = None
await asyncio.sleep(1)
continue
state = await self.get_current_state()
# Add dummy tokens if needed
if (not state.tokens or state.tokens[-1].is_dummy) and not self.args.transcription and self.args.diarization:
await self.add_dummy_token()
sleep(0.5)
state = await self.get_current_state()
# Format output
lines, undiarized_text, buffer_transcription, buffer_diarization = format_output(
lines, undiarized_text = format_output(
state,
self.silence,
current_time = time() - self.beg_loop if self.beg_loop else None,
current_time = time() - self.beg_loop,
args = self.args,
debug = self.debug,
sep=self.sep
)
# Handle undiarized text
if lines and lines[-1].speaker == -2:
buffer_transcription = Transcript()
else:
buffer_transcription = state.buffer_transcription
buffer_diarization = ''
if undiarized_text:
combined = self.sep.join(undiarized_text)
if buffer_transcription:
combined += self.sep
await self.update_diarization(state.end_attributed_speaker, combined)
buffer_diarization = combined
buffer_diarization = self.sep.join(undiarized_text)
async with self.lock:
self.end_attributed_speaker = state.end_attributed_speaker
response_status = "active_transcription"
if not state.tokens and not buffer_transcription and not buffer_diarization:
response_status = "no_audio_detected"
lines = []
elif response_status == "active_transcription" and not lines:
elif not lines:
lines = [Line(
speaker=1,
start=state.get("end_buffer", 0),
end=state.get("end_buffer", 0)
start=state.end_buffer,
end=state.end_buffer
)]
response = FrontData(
status=response_status,
lines=lines,
buffer_transcription=buffer_transcription,
buffer_transcription=buffer_transcription.text.strip(),
buffer_diarization=buffer_diarization,
remaining_time_transcription=state.remaining_time_transcription,
remaining_time_diarization=state.remaining_time_diarization if self.args.diarization else 0
@@ -412,18 +506,33 @@ class AudioProcessor:
self.all_tasks_for_cleanup = []
processing_tasks_for_watchdog = []
if self.args.transcription and self.online:
# If using FFmpeg (non-PCM input), start it and spawn stdout reader
if not self.is_pcm_input:
success = await self.ffmpeg_manager.start()
if not success:
logger.error("Failed to start FFmpeg manager")
async def error_generator():
yield FrontData(
status="error",
error="FFmpeg failed to start. Please check that FFmpeg is installed."
)
return error_generator()
self.ffmpeg_reader_task = asyncio.create_task(self.ffmpeg_stdout_reader())
self.all_tasks_for_cleanup.append(self.ffmpeg_reader_task)
processing_tasks_for_watchdog.append(self.ffmpeg_reader_task)
if self.transcription:
self.transcription_task = asyncio.create_task(self.transcription_processor())
self.all_tasks_for_cleanup.append(self.transcription_task)
processing_tasks_for_watchdog.append(self.transcription_task)
if self.args.diarization and self.diarization:
if self.diarization:
self.diarization_task = asyncio.create_task(self.diarization_processor(self.diarization))
self.all_tasks_for_cleanup.append(self.diarization_task)
processing_tasks_for_watchdog.append(self.diarization_task)
if self.args.target_language and self.args.lan != 'auto':
self.translation_task = asyncio.create_task(self.translation_processor(self.online_translation))
if self.translation:
self.translation_task = asyncio.create_task(self.translation_processor())
self.all_tasks_for_cleanup.append(self.translation_task)
processing_tasks_for_watchdog.append(self.translation_task)
@@ -466,7 +575,14 @@ class AudioProcessor:
if created_tasks:
await asyncio.gather(*created_tasks, return_exceptions=True)
logger.info("All processing tasks cancelled or finished.")
if self.args.diarization and hasattr(self, 'diarization') and hasattr(self.diarization, 'close'):
if not self.is_pcm_input and self.ffmpeg_manager:
try:
await self.ffmpeg_manager.stop()
logger.info("FFmpeg manager stopped.")
except Exception as e:
logger.warning(f"Error stopping FFmpeg manager: {e}")
if self.diarization:
self.diarization.close()
logger.info("AudioProcessor cleanup complete.")
@@ -484,6 +600,9 @@ class AudioProcessor:
if self.transcription_queue:
await self.transcription_queue.put(SENTINEL)
if not self.is_pcm_input and self.ffmpeg_manager:
await self.ffmpeg_manager.stop()
return
if self.is_stopping:
@@ -493,6 +612,17 @@ class AudioProcessor:
if self.is_pcm_input:
self.pcm_buffer.extend(message)
await self.handle_pcm_data()
else:
if not self.ffmpeg_manager:
logger.error("FFmpeg manager not initialized for non-PCM input.")
return
success = await self.ffmpeg_manager.write_data(message)
if not success:
ffmpeg_state = await self.ffmpeg_manager.get_state()
if ffmpeg_state == FFmpegState.FAILED:
logger.error("FFmpeg is in FAILED state, cannot process audio")
else:
logger.warning("Failed to write audio data to FFmpeg")
async def handle_pcm_data(self):
# Process when enough data
@@ -505,9 +635,13 @@ class AudioProcessor:
f"Consider using a smaller model."
)
# Process audio chunk
pcm_array = self.convert_pcm_to_float(self.pcm_buffer[:self.max_bytes_per_sec])
self.pcm_buffer = self.pcm_buffer[self.max_bytes_per_sec:]
chunk_size = min(len(self.pcm_buffer), self.max_bytes_per_sec)
aligned_chunk_size = (chunk_size // self.bytes_per_sample) * self.bytes_per_sample
if aligned_chunk_size == 0:
return
pcm_array = self.convert_pcm_to_float(self.pcm_buffer[:aligned_chunk_size])
self.pcm_buffer = self.pcm_buffer[aligned_chunk_size:]
res = None
end_of_audio = False
@@ -524,13 +658,15 @@ class AudioProcessor:
silence_buffer = Silence(duration=time() - self.start_silence)
if silence_buffer:
if self.args.transcription and self.transcription_queue:
if not self.diarization_before_transcription and self.transcription_queue:
await self.transcription_queue.put(silence_buffer)
if self.args.diarization and self.diarization_queue:
await self.diarization_queue.put(silence_buffer)
if self.translation_queue:
await self.translation_queue.put(silence_buffer)
if not self.silence:
if self.args.transcription and self.transcription_queue:
if not self.diarization_before_transcription and self.transcription_queue:
await self.transcription_queue.put(pcm_array.copy())
if self.args.diarization and self.diarization_queue:

View File

@@ -5,9 +5,6 @@ from fastapi.middleware.cors import CORSMiddleware
from whisperlivekit import TranscriptionEngine, AudioProcessor, get_inline_ui_html, parse_args
import asyncio
import logging
from starlette.staticfiles import StaticFiles
import pathlib
import whisperlivekit.web as webpkg
logging.basicConfig(level=logging.INFO, format="%(asctime)s - %(levelname)s - %(message)s")
logging.getLogger().setLevel(logging.WARNING)
@@ -19,15 +16,6 @@ transcription_engine = None
@asynccontextmanager
async def lifespan(app: FastAPI):
#to remove after 0.2.8
if args.backend == "simulstreaming" and not args.disable_fast_encoder:
logger.warning(f"""
{'='*50}
WhisperLiveKit 0.2.8 has introduced a new fast encoder feature using MLX Whisper or Faster Whisper for improved speed. Use --disable-fast-encoder to disable if you encounter issues.
{'='*50}
""")
global transcription_engine
transcription_engine = TranscriptionEngine(
**vars(args),
@@ -42,8 +30,6 @@ app.add_middleware(
allow_methods=["*"],
allow_headers=["*"],
)
web_dir = pathlib.Path(webpkg.__file__).parent
app.mount("/web", StaticFiles(directory=str(web_dir)), name="web")
@app.get("/")
async def get():
@@ -73,6 +59,11 @@ async def websocket_endpoint(websocket: WebSocket):
await websocket.accept()
logger.info("WebSocket connection opened.")
try:
await websocket.send_json({"type": "config", "useAudioWorklet": bool(args.pcm_input)})
except Exception as e:
logger.warning(f"Failed to send config to client: {e}")
results_generator = await audio_processor.create_tasks()
websocket_task = asyncio.create_task(handle_websocket_results(websocket, results_generator))
@@ -127,6 +118,8 @@ def main():
if ssl_kwargs:
uvicorn_kwargs = {**uvicorn_kwargs, **ssl_kwargs}
if args.forwarded_allow_ips:
uvicorn_kwargs = { **uvicorn_kwargs, "forwarded_allow_ips" : args.forwarded_allow_ips }
uvicorn.run(**uvicorn_kwargs)

View File

@@ -4,10 +4,15 @@ try:
except ImportError:
from .whisper_streaming_custom.whisper_online import backend_factory
from .whisper_streaming_custom.online_asr import OnlineASRProcessor
from whisperlivekit.warmup import warmup_asr
from argparse import Namespace
import sys
def update_with_kwargs(_dict, kwargs):
_dict.update({
k: v for k, v in kwargs.items() if k in _dict
})
return _dict
class TranscriptionEngine:
_instance = None
_initialized = False
@@ -21,69 +26,48 @@ class TranscriptionEngine:
if TranscriptionEngine._initialized:
return
defaults = {
global_params = {
"host": "localhost",
"port": 8000,
"warmup_file": None,
"diarization": False,
"punctuation_split": False,
"min_chunk_size": 0.5,
"model": "tiny",
"model_cache_dir": None,
"model_dir": None,
"lan": "auto",
"task": "transcribe",
"target_language": "",
"backend": "faster-whisper",
"vac": True,
"vac_chunk_size": 0.04,
"log_level": "DEBUG",
"ssl_certfile": None,
"ssl_keyfile": None,
"forwarded_allow_ips": None,
"transcription": True,
"vad": True,
"pcm_input": False,
# whisperstreaming params:
"buffer_trimming": "segment",
"confidence_validation": False,
"buffer_trimming_sec": 15,
# simulstreaming params:
"disable_fast_encoder": False,
"frame_threshold": 25,
"beams": 1,
"decoder_type": None,
"audio_max_len": 20.0,
"audio_min_len": 0.0,
"cif_ckpt_path": None,
"never_fire": False,
"init_prompt": None,
"static_init_prompt": None,
"max_context_tokens": None,
"model_path": './base.pt',
"diarization_backend": "sortformer",
# diarization params:
"disable_punctuation_split" : False,
"segmentation_model": "pyannote/segmentation-3.0",
"embedding_model": "pyannote/embedding",
"diarization_backend": "sortformer",
}
global_params = update_with_kwargs(global_params, kwargs)
config_dict = {**defaults, **kwargs}
transcription_common_params = {
"backend": "simulstreaming",
"warmup_file": None,
"min_chunk_size": 0.5,
"model_size": "tiny",
"model_cache_dir": None,
"model_dir": None,
"lan": "auto",
"task": "transcribe",
}
transcription_common_params = update_with_kwargs(transcription_common_params, kwargs)
if transcription_common_params['model_size'].endswith(".en"):
transcription_common_params["lan"] = "en"
if 'no_transcription' in kwargs:
config_dict['transcription'] = not kwargs['no_transcription']
global_params['transcription'] = not global_params['no_transcription']
if 'no_vad' in kwargs:
config_dict['vad'] = not kwargs['no_vad']
global_params['vad'] = not kwargs['no_vad']
if 'no_vac' in kwargs:
config_dict['vac'] = not kwargs['no_vac']
global_params['vac'] = not kwargs['no_vac']
config_dict.pop('no_transcription', None)
config_dict.pop('no_vad', None)
if 'language' in kwargs:
config_dict['lan'] = kwargs['language']
config_dict.pop('language', None)
self.args = Namespace(**config_dict)
self.args = Namespace(**{**global_params, **transcription_common_params})
self.asr = None
self.tokenizer = None
@@ -97,72 +81,79 @@ class TranscriptionEngine:
if self.args.transcription:
if self.args.backend == "simulstreaming":
from whisperlivekit.simul_whisper import SimulStreamingASR
simulstreaming_params = {
"disable_fast_encoder": False,
"custom_alignment_heads": None,
"frame_threshold": 25,
"beams": 1,
"decoder_type": None,
"audio_max_len": 20.0,
"audio_min_len": 0.0,
"cif_ckpt_path": None,
"never_fire": False,
"init_prompt": None,
"static_init_prompt": None,
"max_context_tokens": None,
"model_path": './base.pt',
"preload_model_count": 1,
}
simulstreaming_params = update_with_kwargs(simulstreaming_params, kwargs)
self.tokenizer = None
simulstreaming_kwargs = {}
for attr in ['frame_threshold', 'beams', 'decoder_type', 'audio_max_len', 'audio_min_len',
'cif_ckpt_path', 'never_fire', 'init_prompt', 'static_init_prompt',
'max_context_tokens', 'model_path', 'warmup_file', 'preload_model_count', 'disable_fast_encoder']:
if hasattr(self.args, attr):
simulstreaming_kwargs[attr] = getattr(self.args, attr)
# Add segment_length from min_chunk_size
simulstreaming_kwargs['segment_length'] = getattr(self.args, 'min_chunk_size', 0.5)
simulstreaming_kwargs['task'] = self.args.task
size = self.args.model
self.asr = SimulStreamingASR(
modelsize=size,
lan=self.args.lan,
cache_dir=getattr(self.args, 'model_cache_dir', None),
model_dir=getattr(self.args, 'model_dir', None),
**simulstreaming_kwargs
**transcription_common_params, **simulstreaming_params
)
else:
self.asr, self.tokenizer = backend_factory(self.args)
warmup_asr(self.asr, self.args.warmup_file) #for simulstreaming, warmup should be done in the online class not here
whisperstreaming_params = {
"buffer_trimming": "segment",
"confidence_validation": False,
"buffer_trimming_sec": 15,
}
whisperstreaming_params = update_with_kwargs(whisperstreaming_params, kwargs)
self.asr = backend_factory(
**transcription_common_params, **whisperstreaming_params
)
if self.args.diarization:
if self.args.diarization_backend == "diart":
from whisperlivekit.diarization.diart_backend import DiartDiarization
diart_params = {
"segmentation_model": "pyannote/segmentation-3.0",
"embedding_model": "pyannote/embedding",
}
diart_params = update_with_kwargs(diart_params, kwargs)
self.diarization_model = DiartDiarization(
block_duration=self.args.min_chunk_size,
segmentation_model_name=self.args.segmentation_model,
embedding_model_name=self.args.embedding_model
**diart_params
)
elif self.args.diarization_backend == "sortformer":
from whisperlivekit.diarization.sortformer_backend import SortformerDiarization
self.diarization_model = SortformerDiarization()
else:
raise ValueError(f"Unknown diarization backend: {self.args.diarization_backend}")
self.translation_model = None
if self.args.target_language:
if self.args.lan == 'auto':
raise Exception('Translation cannot be set with language auto')
if self.args.lan == 'auto' and self.args.backend != "simulstreaming":
raise Exception('Translation cannot be set with language auto when transcription backend is not simulstreaming')
else:
from whisperlivekit.translation.translation import load_model
self.translation_model = load_model([self.args.lan]) #in the future we want to handle different languages for different speakers
translation_params = {
"nllb_backend": "ctranslate2",
"nllb_size": "600M"
}
translation_params = update_with_kwargs(translation_params, kwargs)
self.translation_model = load_model([self.args.lan], **translation_params) #in the future we want to handle different languages for different speakers
TranscriptionEngine._initialized = True
def online_factory(args, asr, tokenizer, logfile=sys.stderr):
def online_factory(args, asr):
if args.backend == "simulstreaming":
from whisperlivekit.simul_whisper import SimulStreamingOnlineProcessor
online = SimulStreamingOnlineProcessor(
asr,
logfile=logfile,
)
online = SimulStreamingOnlineProcessor(asr)
else:
online = OnlineASRProcessor(
asr,
tokenizer,
logfile=logfile,
buffer_trimming=(args.buffer_trimming, args.buffer_trimming_sec),
confidence_validation = args.confidence_validation
)
online = OnlineASRProcessor(asr)
return online

View File

@@ -289,6 +289,7 @@ class SortformerDiarizationOnline:
Returns:
List of tokens with speaker assignments
Last speaker_segment
"""
with self.segment_lock:
segments = self.speaker_segments.copy()

View File

@@ -0,0 +1,197 @@
import asyncio
import logging
from enum import Enum
from typing import Optional, Callable
import contextlib
logger = logging.getLogger(__name__)
logging.basicConfig(level=logging.INFO)
ERROR_INSTALL_INSTRUCTIONS = f"""
{'='*50}
FFmpeg is not installed or not found in your system's PATH.
Alternative Solution: You can still use WhisperLiveKit without FFmpeg by adding the --pcm-input parameter. Note that when using this option, audio will not be compressed between the frontend and backend, which may result in higher bandwidth usage.
If you want to install FFmpeg:
# Ubuntu/Debian:
sudo apt update && sudo apt install ffmpeg
# macOS (using Homebrew):
brew install ffmpeg
# Windows:
# 1. Download the latest static build from https://ffmpeg.org/download.html
# 2. Extract the archive (e.g., to C:\\FFmpeg).
# 3. Add the 'bin' directory (e.g., C:\\FFmpeg\\bin) to your system's PATH environment variable.
After installation, please restart the application.
{'='*50}
"""
class FFmpegState(Enum):
STOPPED = "stopped"
STARTING = "starting"
RUNNING = "running"
RESTARTING = "restarting"
FAILED = "failed"
class FFmpegManager:
def __init__(self, sample_rate: int = 16000, channels: int = 1):
self.sample_rate = sample_rate
self.channels = channels
self.process: Optional[asyncio.subprocess.Process] = None
self._stderr_task: Optional[asyncio.Task] = None
self.on_error_callback: Optional[Callable[[str], None]] = None
self.state = FFmpegState.STOPPED
self._state_lock = asyncio.Lock()
async def start(self) -> bool:
async with self._state_lock:
if self.state != FFmpegState.STOPPED:
logger.warning(f"FFmpeg already running in state: {self.state}")
return False
self.state = FFmpegState.STARTING
try:
cmd = [
"ffmpeg",
"-hide_banner",
"-loglevel", "error",
"-i", "pipe:0",
"-f", "s16le",
"-acodec", "pcm_s16le",
"-ac", str(self.channels),
"-ar", str(self.sample_rate),
"pipe:1"
]
self.process = await asyncio.create_subprocess_exec(
*cmd,
stdin=asyncio.subprocess.PIPE,
stdout=asyncio.subprocess.PIPE,
stderr=asyncio.subprocess.PIPE
)
self._stderr_task = asyncio.create_task(self._drain_stderr())
async with self._state_lock:
self.state = FFmpegState.RUNNING
logger.info("FFmpeg started.")
return True
except FileNotFoundError:
logger.error(ERROR_INSTALL_INSTRUCTIONS)
async with self._state_lock:
self.state = FFmpegState.FAILED
if self.on_error_callback:
await self.on_error_callback("ffmpeg_not_found")
return False
except Exception as e:
logger.error(f"Error starting FFmpeg: {e}")
async with self._state_lock:
self.state = FFmpegState.FAILED
if self.on_error_callback:
await self.on_error_callback("start_failed")
return False
async def stop(self):
async with self._state_lock:
if self.state == FFmpegState.STOPPED:
return
self.state = FFmpegState.STOPPED
if self.process:
if self.process.stdin and not self.process.stdin.is_closing():
self.process.stdin.close()
await self.process.stdin.wait_closed()
await self.process.wait()
self.process = None
if self._stderr_task:
self._stderr_task.cancel()
with contextlib.suppress(asyncio.CancelledError):
await self._stderr_task
logger.info("FFmpeg stopped.")
async def write_data(self, data: bytes) -> bool:
async with self._state_lock:
if self.state != FFmpegState.RUNNING:
logger.warning(f"Cannot write, FFmpeg state: {self.state}")
return False
try:
self.process.stdin.write(data)
await self.process.stdin.drain()
return True
except Exception as e:
logger.error(f"Error writing to FFmpeg: {e}")
if self.on_error_callback:
await self.on_error_callback("write_error")
return False
async def read_data(self, size: int) -> Optional[bytes]:
async with self._state_lock:
if self.state != FFmpegState.RUNNING:
logger.warning(f"Cannot read, FFmpeg state: {self.state}")
return None
try:
data = await asyncio.wait_for(
self.process.stdout.read(size),
timeout=20.0
)
return data
except asyncio.TimeoutError:
logger.warning("FFmpeg read timeout.")
return None
except Exception as e:
logger.error(f"Error reading from FFmpeg: {e}")
if self.on_error_callback:
await self.on_error_callback("read_error")
return None
async def get_state(self) -> FFmpegState:
async with self._state_lock:
return self.state
async def restart(self) -> bool:
async with self._state_lock:
if self.state == FFmpegState.RESTARTING:
logger.warning("Restart already in progress.")
return False
self.state = FFmpegState.RESTARTING
logger.info("Restarting FFmpeg...")
try:
await self.stop()
await asyncio.sleep(1) # short delay before restarting
return await self.start()
except Exception as e:
logger.error(f"Error during FFmpeg restart: {e}")
async with self._state_lock:
self.state = FFmpegState.FAILED
if self.on_error_callback:
await self.on_error_callback("restart_failed")
return False
async def _drain_stderr(self):
try:
while True:
if not self.process or not self.process.stderr:
break
line = await self.process.stderr.readline()
if not line:
break
logger.debug(f"FFmpeg stderr: {line.decode(errors='ignore').strip()}")
except asyncio.CancelledError:
logger.info("FFmpeg stderr drain task cancelled.")
except Exception as e:
logger.error(f"Error draining FFmpeg stderr: {e}")

View File

@@ -89,6 +89,7 @@ def parse_args():
"--model",
type=str,
default="small",
dest='model_size',
help="Name size of the Whisper model to use (default: tiny). Suggested values: tiny.en,tiny,base.en,base,small.en,small,medium.en,medium,large-v1,large-v2,large-v3,large,large-v3-turbo. The model is automatically downloaded from the model hub if not present in model cache dir.",
)
@@ -109,6 +110,7 @@ def parse_args():
"--language",
type=str,
default="auto",
dest='lan',
help="Source language code, e.g. en,de,cs, or 'auto' for language detection.",
)
parser.add_argument(
@@ -173,11 +175,12 @@ def parse_args():
)
parser.add_argument("--ssl-certfile", type=str, help="Path to the SSL certificate file.", default=None)
parser.add_argument("--ssl-keyfile", type=str, help="Path to the SSL private key file.", default=None)
parser.add_argument("--forwarded-allow-ips", type=str, help="Allowed ips for reverse proxying.", default=None)
parser.add_argument(
"--pcm-input",
action="store_true",
default=False,
help="If set, raw PCM (s16le) data is expected as input and FFmpeg will be bypassed."
help="If set, raw PCM (s16le) data is expected as input and FFmpeg will be bypassed. Frontend will use AudioWorklet instead of MediaRecorder."
)
# SimulStreaming-specific arguments
simulstreaming_group = parser.add_argument_group('SimulStreaming arguments (only used with --backend simulstreaming)')
@@ -190,6 +193,13 @@ def parse_args():
help="Disable Faster Whisper or MLX Whisper backends for encoding (if installed). Slower but helpful when GPU memory is limited",
)
simulstreaming_group.add_argument(
"--custom-alignment-heads",
type=str,
default=None,
help="Use your own alignment heads, useful when `--model-dir` is used",
)
simulstreaming_group.add_argument(
"--frame-threshold",
type=int,
@@ -287,6 +297,20 @@ def parse_args():
help="Optional. Number of models to preload in memory to speed up loading (set up to the expected number of concurrent instances).",
)
simulstreaming_group.add_argument(
"--nllb-backend",
type=str,
default="ctranslate2",
help="transformers or ctranslate2",
)
simulstreaming_group.add_argument(
"--nllb-size",
type=str,
default="600M",
help="600M or 1.3B",
)
args = parser.parse_args()
args.transcription = not args.no_transcription

View File

@@ -39,7 +39,7 @@ def blank_to_silence(tokens):
)
else:
if silence_token: #there was silence but no more
if silence_token.end - silence_token.start >= MIN_SILENCE_DURATION:
if silence_token.duration() >= MIN_SILENCE_DURATION:
cleaned_tokens.append(
silence_token
)
@@ -77,15 +77,9 @@ def no_token_to_silence(tokens):
new_tokens.append(token)
return new_tokens
def ends_with_silence(tokens, buffer_transcription, buffer_diarization, current_time, vac_detected_silence):
if not tokens:
return [], buffer_transcription, buffer_diarization
def ends_with_silence(tokens, current_time, vac_detected_silence):
last_token = tokens[-1]
if tokens and current_time and (
current_time - last_token.end >= END_SILENCE_DURATION
or
(current_time - last_token.end >= 3 and vac_detected_silence)
):
if vac_detected_silence or (current_time - last_token.end >= END_SILENCE_DURATION):
if last_token.speaker == -2:
last_token.end = current_time
else:
@@ -97,14 +91,14 @@ def ends_with_silence(tokens, buffer_transcription, buffer_diarization, current_
probability=0.95
)
)
buffer_transcription = "" # for whisperstreaming backend, we should probably validate the buffer has because of the silence
buffer_diarization = ""
return tokens, buffer_transcription, buffer_diarization
return tokens
def handle_silences(tokens, buffer_transcription, buffer_diarization, current_time, vac_detected_silence):
def handle_silences(tokens, current_time, vac_detected_silence):
if not tokens:
return []
tokens = blank_to_silence(tokens) #useful for simulstreaming backend which tends to generate [BLANK_AUDIO] text
tokens = no_token_to_silence(tokens)
tokens, buffer_transcription, buffer_diarization = ends_with_silence(tokens, buffer_transcription, buffer_diarization, current_time, vac_detected_silence)
return tokens, buffer_transcription, buffer_diarization
tokens = ends_with_silence(tokens, current_time, vac_detected_silence)
return tokens

View File

@@ -6,11 +6,12 @@ from whisperlivekit.timed_objects import Line, format_time
logger = logging.getLogger(__name__)
logger.setLevel(logging.DEBUG)
PUNCTUATION_MARKS = {'.', '!', '?', '', '', ''}
CHECK_AROUND = 4
DEBUG = False
def is_punctuation(token):
if token.text.strip() in PUNCTUATION_MARKS:
if token.is_punctuation():
return True
return False
@@ -31,106 +32,129 @@ def next_speaker_change(i, tokens, speaker):
def new_line(
token,
speaker,
debug_info = ""
):
return Line(
speaker = speaker,
text = token.text + debug_info,
speaker = token.corrected_speaker,
text = token.text + (f"[{format_time(token.start)} : {format_time(token.end)}]" if DEBUG else ""),
start = token.start,
end = token.end,
detected_language=token.detected_language
)
def append_token_to_last_line(lines, sep, token, debug_info):
def append_token_to_last_line(lines, sep, token):
if not lines:
lines.append(new_line(token))
else:
if token.text:
lines[-1].text += sep + token.text + debug_info
lines[-1].text += sep + token.text + (f"[{format_time(token.start)} : {format_time(token.end)}]" if DEBUG else "")
lines[-1].end = token.end
if not lines[-1].detected_language and token.detected_language:
lines[-1].detected_language = token.detected_language
def format_output(state, silence, current_time, args, debug, sep):
def format_output(state, silence, current_time, args, sep):
diarization = args.diarization
disable_punctuation_split = args.disable_punctuation_split
tokens = state.tokens
translated_segments = state.translated_segments # Here we will attribute the speakers only based on the timestamps of the segments
buffer_transcription = state.buffer_transcription
buffer_diarization = state.buffer_diarization
end_attributed_speaker = state.end_attributed_speaker
last_validated_token = state.last_validated_token
previous_speaker = -1
lines = []
previous_speaker = 1
undiarized_text = []
tokens, buffer_transcription, buffer_diarization = handle_silences(tokens, buffer_transcription, buffer_diarization, current_time, silence)
tokens = handle_silences(tokens, current_time, silence)
last_punctuation = None
for i, token in enumerate(tokens):
speaker = token.speaker
if not diarization and speaker == -1: #Speaker -1 means no attributed by diarization. In the frontend, it should appear under 'Speaker 1'
speaker = 1
if diarization and not tokens[-1].speaker == -2:
if (speaker in [-1, 0]) and token.end >= end_attributed_speaker:
undiarized_text.append(token.text)
continue
elif (speaker in [-1, 0]) and token.end < end_attributed_speaker:
speaker = previous_speaker
debug_info = ""
if debug:
debug_info = f"[{format_time(token.start)} : {format_time(token.end)}]"
if not lines:
lines.append(new_line(token, speaker, debug_info = ""))
continue
for i, token in enumerate(tokens[last_validated_token:]):
speaker = int(token.speaker)
token.corrected_speaker = speaker
if not diarization:
if speaker == -1: #Speaker -1 means no attributed by diarization. In the frontend, it should appear under 'Speaker 1'
token.corrected_speaker = 1
token.validated_speaker = True
else:
previous_speaker = lines[-1].speaker
# if token.end > end_attributed_speaker and token.speaker != -2:
# if tokens[-1].speaker == -2: #if it finishes by a silence, we want to append the undiarized text to the last speaker.
# token.corrected_speaker = previous_speaker
# else:
# undiarized_text.append(token.text)
# continue
# else:
if is_punctuation(token):
last_punctuation = i
if last_punctuation == i-1:
if speaker != previous_speaker:
if token.speaker != previous_speaker:
token.validated_speaker = True
# perfect, diarization perfectly aligned
lines.append(new_line(token, speaker, debug_info = ""))
last_punctuation, next_punctuation = None, None
continue
last_punctuation = None
else:
speaker_change_pos, new_speaker = next_speaker_change(i, tokens, speaker)
if speaker_change_pos:
# Corrects delay:
# That was the idea. Okay haha |SPLIT SPEAKER| that's a good one
# That was the idea. <Okay> haha |SPLIT SPEAKER| that's a good one
# should become:
# That was the idea. |SPLIT SPEAKER| Okay haha that's a good one
lines.append(new_line(token, new_speaker, debug_info = ""))
else:
# No speaker change to come
append_token_to_last_line(lines, sep, token, debug_info)
continue
if speaker != previous_speaker:
if speaker == -2 or previous_speaker == -2: #silences can happen anytime
lines.append(new_line(token, speaker, debug_info = ""))
continue
elif next_punctuation_change(i, tokens):
# That was the idea. |SPLIT SPEAKER| <Okay> haha that's a good one
token.corrected_speaker = new_speaker
token.validated_speaker = True
elif speaker != previous_speaker:
if not (speaker == -2 or previous_speaker == -2):
if next_punctuation_change(i, tokens):
# Corrects advance:
# Are you |SPLIT SPEAKER| okay? yeah, sure. Absolutely
# Are you |SPLIT SPEAKER| <okay>? yeah, sure. Absolutely
# should become:
# Are you okay? |SPLIT SPEAKER| yeah, sure. Absolutely
append_token_to_last_line(lines, sep, token, debug_info)
continue
else: #we create a new speaker, but that's no ideal. We are not sure about the split. We prefer to append to previous line
if disable_punctuation_split:
lines.append(new_line(token, speaker, debug_info = ""))
continue
pass
# Are you <okay>? |SPLIT SPEAKER| yeah, sure. Absolutely
token.corrected_speaker = previous_speaker
token.validated_speaker = True
else: #Problematic, except if the language has no punctuation. We append to previous line, except if disable_punctuation_split is set to True.
if not disable_punctuation_split:
token.corrected_speaker = previous_speaker
token.validated_speaker = False
if token.validated_speaker:
state.last_validated_token = i
previous_speaker = token.corrected_speaker
append_token_to_last_line(lines, sep, token, debug_info)
if lines and translated_segments:
cts_idx = 0 # current_translated_segment_idx
for line in lines:
while cts_idx < len(translated_segments):
ts = translated_segments[cts_idx]
if ts and ts.start and ts.start >= line.start and ts.end <= line.end:
line.translation += ts.text + ' '
cts_idx += 1
previous_speaker = 1
lines = []
for token in tokens:
if int(token.corrected_speaker) != int(previous_speaker):
lines.append(new_line(token))
else:
break
return lines, undiarized_text, buffer_transcription, ''
append_token_to_last_line(lines, sep, token)
previous_speaker = token.corrected_speaker
if lines and translated_segments:
unassigned_translated_segments = []
for ts in translated_segments:
assigned = False
for line in lines:
if ts and ts.overlaps_with(line):
if ts.is_within(line):
line.translation += ts.text + ' '
assigned = True
break
else:
ts0, ts1 = ts.approximate_cut_at(line.end)
if ts0 and line.overlaps_with(ts0):
line.translation += ts0.text + ' '
if ts1:
unassigned_translated_segments.append(ts1)
assigned = True
break
if not assigned:
unassigned_translated_segments.append(ts)
if unassigned_translated_segments:
for line in lines:
remaining_segments = []
for ts in unassigned_translated_segments:
if ts and ts.overlaps_with(line):
line.translation += ts.text + ' '
else:
remaining_segments.append(ts)
unassigned_translated_segments = remaining_segments #maybe do smth in the future about that
if state.buffer_transcription and lines:
lines[-1].end = max(state.buffer_transcription.end, lines[-1].end)
return lines, undiarized_text

View File

@@ -4,9 +4,8 @@ import logging
from typing import List, Tuple, Optional
import logging
import platform
from whisperlivekit.timed_objects import ASRToken, Transcript
from whisperlivekit.timed_objects import ASRToken, Transcript, ChangeSpeaker
from whisperlivekit.warmup import load_file
from whisperlivekit.simul_whisper.license_simulstreaming import SIMULSTREAMING_LICENSE
from .whisper import load_model, tokenizer
from .whisper.audio import TOKENS_PER_SECOND
import os
@@ -23,7 +22,9 @@ try:
HAS_MLX_WHISPER = True
except ImportError:
if platform.system() == "Darwin" and platform.machine() == "arm64":
print('MLX Whisper not found but you are on Apple Silicon. Consider installing mlx-whisper for better performance: pip install mlx-whisper')
print(f"""{"="*50}
MLX Whisper not found but you are on Apple Silicon. Consider installing mlx-whisper for better performance: pip install mlx-whisper
{"="*50}""")
HAS_MLX_WHISPER = False
if HAS_MLX_WHISPER:
HAS_FASTER_WHISPER = False
@@ -44,13 +45,11 @@ class SimulStreamingOnlineProcessor:
self,
asr,
logfile=sys.stderr,
warmup_file=None
):
self.asr = asr
self.logfile = logfile
self.end = 0.0
self.global_time_offset = 0.0
self.buffer = []
self.committed: List[ASRToken] = []
self.last_result_tokens: List[ASRToken] = []
self.load_new_backend()
@@ -79,7 +78,7 @@ class SimulStreamingOnlineProcessor:
else:
self.process_iter(is_last=True) #we want to totally process what remains in the buffer.
self.model.refresh_segment(complete=True)
self.global_time_offset = silence_duration + offset
self.model.global_time_offset = silence_duration + offset
@@ -91,63 +90,15 @@ class SimulStreamingOnlineProcessor:
self.end = audio_stream_end_time #Only to be aligned with what happens in whisperstreaming backend.
self.model.insert_audio(audio_tensor)
def new_speaker(self, change_speaker: ChangeSpeaker):
self.process_iter(is_last=True)
self.model.refresh_segment(complete=True)
self.model.speaker = change_speaker.speaker
self.global_time_offset = change_speaker.start
def get_buffer(self):
return Transcript(
start=None,
end=None,
text='',
probability=None
)
def timestamped_text(self, tokens, generation):
"""
generate timestamped text from tokens and generation data.
args:
tokens: List of tokens to process
generation: Dictionary containing generation progress and optionally results
returns:
List of tuples containing (start_time, end_time, word) for each word
"""
FRAME_DURATION = 0.02
if "result" in generation:
split_words = generation["result"]["split_words"]
split_tokens = generation["result"]["split_tokens"]
else:
split_words, split_tokens = self.model.tokenizer.split_to_word_tokens(tokens)
progress = generation["progress"]
frames = [p["most_attended_frames"][0] for p in progress]
absolute_timestamps = [p["absolute_timestamps"][0] for p in progress]
tokens_queue = tokens.copy()
timestamped_words = []
for word, word_tokens in zip(split_words, split_tokens):
# start_frame = None
# end_frame = None
for expected_token in word_tokens:
if not tokens_queue or not frames:
raise ValueError(f"Insufficient tokens or frames for word '{word}'")
actual_token = tokens_queue.pop(0)
current_frame = frames.pop(0)
current_timestamp = absolute_timestamps.pop(0)
if actual_token != expected_token:
raise ValueError(
f"Token mismatch: expected '{expected_token}', "
f"got '{actual_token}' at frame {current_frame}"
)
# if start_frame is None:
# start_frame = current_frame
# end_frame = current_frame
# start_time = start_frame * FRAME_DURATION
# end_time = end_frame * FRAME_DURATION
start_time = current_timestamp
end_time = current_timestamp + 0.1
timestamp_entry = (start_time, end_time, word)
timestamped_words.append(timestamp_entry)
logger.debug(f"TS-WORD:\t{start_time:.2f}\t{end_time:.2f}\t{word}")
return timestamped_words
concat_buffer = Transcript.from_tokens(tokens= self.buffer, sep='')
return concat_buffer
def process_iter(self, is_last=False) -> Tuple[List[ASRToken], float]:
"""
@@ -156,47 +107,14 @@ class SimulStreamingOnlineProcessor:
Returns a tuple: (list of committed ASRToken objects, float representing the audio processed up to time).
"""
try:
tokens, generation_progress = self.model.infer(is_last=is_last)
ts_words = self.timestamped_text(tokens, generation_progress)
timestamped_words = self.model.infer(is_last=is_last)
if self.model.cfg.language == "auto" and timestamped_words and timestamped_words[0].detected_language == None:
self.buffer.extend(timestamped_words)
return [], self.end
new_tokens = []
for ts_word in ts_words:
start, end, word = ts_word
token = ASRToken(
start=start,
end=end,
text=word,
probability=0.95 # fake prob. Maybe we can extract it from the model?
).with_offset(
self.global_time_offset
)
new_tokens.append(token)
# identical_tokens = 0
# n_new_tokens = len(new_tokens)
# if n_new_tokens:
self.committed.extend(new_tokens)
# if token in self.committed:
# pos = len(self.committed) - 1 - self.committed[::-1].index(token)
# if pos:
# for i in range(len(self.committed) - n_new_tokens, -1, -n_new_tokens):
# commited_segment = self.committed[i:i+n_new_tokens]
# if commited_segment == new_tokens:
# identical_segments +=1
# if identical_tokens >= TOO_MANY_REPETITIONS:
# logger.warning('Too many repetition, model is stuck. Load a new one')
# self.committed = self.committed[:i]
# self.load_new_backend()
# return [], self.end
# pos = self.committed.rindex(token)
return new_tokens, self.end
self.committed.extend(timestamped_words)
self.buffer = []
return timestamped_words, self.end
except Exception as e:
@@ -225,32 +143,20 @@ class SimulStreamingASR():
"""SimulStreaming backend with AlignAtt policy."""
sep = ""
def __init__(self, lan, modelsize=None, cache_dir=None, model_dir=None, logfile=sys.stderr, **kwargs):
logger.warning(SIMULSTREAMING_LICENSE)
def __init__(self, logfile=sys.stderr, **kwargs):
self.logfile = logfile
self.transcribe_kargs = {}
self.original_language = lan
self.model_path = kwargs.get('model_path', './large-v3.pt')
self.frame_threshold = kwargs.get('frame_threshold', 25)
self.audio_max_len = kwargs.get('audio_max_len', 20.0)
self.audio_min_len = kwargs.get('audio_min_len', 0.0)
self.segment_length = kwargs.get('segment_length', 0.5)
self.beams = kwargs.get('beams', 1)
self.decoder_type = kwargs.get('decoder_type', 'greedy' if self.beams == 1 else 'beam')
self.task = kwargs.get('task', 'transcribe')
self.cif_ckpt_path = kwargs.get('cif_ckpt_path', None)
self.never_fire = kwargs.get('never_fire', False)
self.init_prompt = kwargs.get('init_prompt', None)
self.static_init_prompt = kwargs.get('static_init_prompt', None)
self.max_context_tokens = kwargs.get('max_context_tokens', None)
self.warmup_file = kwargs.get('warmup_file', None)
self.preload_model_count = kwargs.get('preload_model_count', 1)
self.disable_fast_encoder = kwargs.get('disable_fast_encoder', False)
for key, value in kwargs.items():
setattr(self, key, value)
if self.decoder_type is None:
self.decoder_type = 'greedy' if self.beams == 1 else 'beam'
self.fast_encoder = False
if model_dir is not None:
self.model_path = model_dir
elif modelsize is not None:
if self.model_dir is not None:
self.model_path = self.model_dir
elif self.model_size is not None:
model_mapping = {
'tiny': './tiny.pt',
'base': './base.pt',
@@ -265,13 +171,13 @@ class SimulStreamingASR():
'large-v3': './large-v3.pt',
'large': './large-v3.pt'
}
self.model_path = model_mapping.get(modelsize, f'./{modelsize}.pt')
self.model_path = model_mapping.get(self.model_size, f'./{self.model_size}.pt')
self.cfg = AlignAttConfig(
model_path=self.model_path,
segment_length=self.segment_length,
segment_length=self.min_chunk_size,
frame_threshold=self.frame_threshold,
language=self.original_language,
language=self.lan,
audio_max_len=self.audio_max_len,
audio_min_len=self.audio_min_len,
cif_ckpt_path=self.cif_ckpt_path,
@@ -290,6 +196,10 @@ class SimulStreamingASR():
else:
self.tokenizer = None
if self.model_dir:
self.model_name = self.model_dir
self.model_path = None
else:
self.model_name = os.path.basename(self.cfg.model_path).replace(".pt", "")
self.model_path = os.path.dirname(os.path.abspath(self.cfg.model_path))
@@ -313,7 +223,12 @@ class SimulStreamingASR():
def load_model(self):
whisper_model = load_model(name=self.model_name, download_root=self.model_path, decoder_only=self.fast_encoder)
whisper_model = load_model(
name=self.model_name,
download_root=self.model_path,
decoder_only=self.fast_encoder,
custom_alignment_heads=self.custom_alignment_heads
)
warmup_audio = load_file(self.warmup_file)
if warmup_audio is not None:
warmup_audio = torch.from_numpy(warmup_audio).float()
@@ -329,7 +244,7 @@ class SimulStreamingASR():
else:
# For standard encoder, use the original transcribe warmup
warmup_audio = load_file(self.warmup_file)
whisper_model.transcribe(warmup_audio, language=self.original_language if self.original_language != 'auto' else None)
whisper_model.transcribe(warmup_audio, language=self.lan if self.lan != 'auto' else None)
return whisper_model
def get_new_model_instance(self):

View File

@@ -8,6 +8,7 @@ import torch.nn.functional as F
from .whisper import load_model, DecodingOptions, tokenizer
from .config import AlignAttConfig
from whisperlivekit.timed_objects import ASRToken
from .whisper.audio import log_mel_spectrogram, TOKENS_PER_SECOND, pad_or_trim, N_SAMPLES, N_FRAMES
from .whisper.timing import median_filter
from .whisper.decoding import GreedyDecoder, BeamSearchDecoder, SuppressTokens, detect_language
@@ -18,6 +19,7 @@ from time import time
from .token_buffer import TokenBuffer
import numpy as np
from ..timed_objects import PUNCTUATION_MARKS
from .generation_progress import *
DEC_PAD = 50257
@@ -40,12 +42,6 @@ else:
except ImportError:
HAS_FASTER_WHISPER = False
# New features added to the original version of Simul-Whisper:
# - large-v3 model support
# - translation support
# - beam search
# - prompt -- static vs. non-static
# - context
class PaddedAlignAttWhisper:
def __init__(
self,
@@ -70,7 +66,7 @@ class PaddedAlignAttWhisper:
self.fw_feature_extractor = FeatureExtractor(feature_size=self.model.dims.n_mels)
logger.info(f"Model dimensions: {self.model.dims}")
self.speaker = -1
self.decode_options = DecodingOptions(
language = cfg.language,
without_timestamps = True,
@@ -78,7 +74,10 @@ class PaddedAlignAttWhisper:
)
self.tokenizer_is_multilingual = not model_name.endswith(".en")
self.create_tokenizer(cfg.language if cfg.language != "auto" else None)
# self.create_tokenizer('en')
self.detected_language = cfg.language if cfg.language != "auto" else None
self.global_time_offset = 0.0
self.reset_tokenizer_to_auto_next_call = False
self.max_text_len = self.model.dims.n_text_ctx
self.num_decoder_layers = len(self.model.decoder.blocks)
@@ -153,6 +152,7 @@ class PaddedAlignAttWhisper:
self.last_attend_frame = -self.cfg.rewind_threshold
self.cumulative_time_offset = 0.0
self.first_timestamp = None
if self.cfg.max_context_tokens is None:
self.max_context_tokens = self.max_text_len
@@ -260,7 +260,6 @@ class PaddedAlignAttWhisper:
self.init_context()
logger.debug(f"Context: {self.context}")
if not complete and len(self.segments) > 2:
logger.debug("keeping last two segments because they are and it is not complete.")
self.segments = self.segments[-2:]
else:
logger.debug("removing all segments.")
@@ -382,11 +381,11 @@ class PaddedAlignAttWhisper:
new_segment = True
if len(self.segments) == 0:
logger.debug("No segments, nothing to do")
return [], {}
return []
if not self._apply_minseglen():
logger.debug(f"applied minseglen {self.cfg.audio_min_len} > {self.segments_len()}.")
input_segments = torch.cat(self.segments, dim=0)
return [], {}
return []
# input_segments is concatenation of audio, it's one array
if len(self.segments) > 1:
@@ -394,6 +393,13 @@ class PaddedAlignAttWhisper:
else:
input_segments = self.segments[0]
# if self.cfg.language == "auto" and self.reset_tokenizer_to_auto_next_call:
# logger.debug("Resetting tokenizer to auto for new sentence.")
# self.create_tokenizer(None)
# self.detected_language = None
# self.init_tokens()
# self.reset_tokenizer_to_auto_next_call = False
# NEW : we can use a different encoder, before using standart whisper for cross attention with the hooks on the decoder
beg_encode = time()
if self.mlx_encoder:
@@ -426,58 +432,38 @@ class PaddedAlignAttWhisper:
end_encode = time()
# print('Encoder duration:', end_encode-beg_encode)
# logger.debug(f"Encoder feature shape: {encoder_feature.shape}")
# if mel.shape[-2:] != (self.model.dims.n_audio_ctx, self.model.dims.n_audio_state):
# logger.debug("mel ")
if self.cfg.language == "auto" and self.detected_language is None:
if self.cfg.language == "auto" and self.detected_language is None and self.first_timestamp:
seconds_since_start = self.segments_len() - self.first_timestamp
if seconds_since_start >= 2.0:
language_tokens, language_probs = self.lang_id(encoder_feature)
logger.debug(f"Language tokens: {language_tokens}, probs: {language_probs}")
top_lan, p = max(language_probs[0].items(), key=lambda x: x[1])
logger.info(f"Detected language: {top_lan} with p={p:.4f}")
#self.tokenizer.language = top_lan
#self.tokenizer.__post_init__()
print(f"Detected language: {top_lan} with p={p:.4f}")
self.create_tokenizer(top_lan)
self.detected_language = top_lan
self.last_attend_frame = -self.cfg.rewind_threshold
self.cumulative_time_offset = 0.0
self.init_tokens()
self.init_context()
self.detected_language = top_lan
logger.info(f"Tokenizer language: {self.tokenizer.language}, {self.tokenizer.sot_sequence_including_notimestamps}")
self.trim_context()
current_tokens = self._current_tokens()
#
fire_detected = self.fire_at_boundary(encoder_feature[:, :content_mel_len, :])
####################### Decoding loop
logger.info("Decoding loop starts\n")
sum_logprobs = torch.zeros(self.cfg.beam_size, device=self.device)
completed = False
# punctuation_stop = False
attn_of_alignment_heads = None
most_attended_frame = None
token_len_before_decoding = current_tokens.shape[1]
generation_progress = []
generation = {
"starting_tokens": BeamTokens(current_tokens[0,:].clone(), self.cfg.beam_size),
"token_len_before_decoding": token_len_before_decoding,
#"fire_detected": fire_detected,
"frames_len": content_mel_len,
"frames_threshold": 4 if is_last else self.cfg.frame_threshold,
l_absolute_timestamps = []
# to be filled later
"logits_starting": None,
# to be filled later
"no_speech_prob": None,
"no_speech": False,
# to be filled in the loop
"progress": generation_progress,
}
while not completed and current_tokens.shape[1] < self.max_text_len: # bos is 3 tokens
generation_progress_loop = []
if new_segment:
tokens_for_logits = current_tokens
@@ -486,50 +472,26 @@ class PaddedAlignAttWhisper:
tokens_for_logits = current_tokens[:,-1:]
logits = self.logits(tokens_for_logits, encoder_feature) # B, len(tokens), token dict size
if new_segment:
generation["logits_starting"] = Logits(logits[:,:,:])
if new_segment and self.tokenizer.no_speech is not None:
probs_at_sot = logits[:, self.sot_index, :].float().softmax(dim=-1)
no_speech_probs = probs_at_sot[:, self.tokenizer.no_speech].tolist()
generation["no_speech_prob"] = no_speech_probs[0]
if no_speech_probs[0] > self.cfg.nonspeech_prob:
generation["no_speech"] = True
logger.info("no speech, stop")
break
logits = logits[:, -1, :] # logits for the last token
generation_progress_loop.append(("logits_before_suppress",Logits(logits)))
# supress blank tokens only at the beginning of the segment
if new_segment:
logits[:, self.tokenizer.encode(" ") + [self.tokenizer.eot]] = -np.inf
new_segment = False
self.suppress_tokens(logits)
#generation_progress_loop.append(("logits_after_suppres",BeamLogits(logits[0,:].clone(), self.cfg.beam_size)))
generation_progress_loop.append(("logits_after_suppress",Logits(logits)))
current_tokens, completed = self.token_decoder.update(current_tokens, logits, sum_logprobs)
generation_progress_loop.append(("beam_tokens",Tokens(current_tokens[:,-1].clone())))
generation_progress_loop.append(("sum_logprobs",sum_logprobs.tolist()))
generation_progress_loop.append(("completed",completed))
logger.debug(f"Decoding completed: {completed}, sum_logprobs: {sum_logprobs.tolist()}, tokens: ")
self.debug_print_tokens(current_tokens)
# if self.decoder_type == "beam":
# logger.debug(f"Finished sequences: {self.token_decoder.finished_sequences}")
# logprobs = F.log_softmax(logits.float(), dim=-1)
# idx = 0
# logger.debug(f"Beam search topk: {logprobs[idx].topk(self.cfg.beam_size + 1)}")
# logger.debug(f"Greedy search argmax: {logits.argmax(dim=-1)}")
# if completed:
# self.debug_print_tokens(current_tokens)
# logger.debug("decode stopped because decoder completed")
attn_of_alignment_heads = [[] for _ in range(self.num_align_heads)]
for i, attn_mat in enumerate(self.dec_attns):
layer_rank = int(i % len(self.model.decoder.blocks))
@@ -548,30 +510,24 @@ class PaddedAlignAttWhisper:
t = torch.cat(mat, dim=1)
tmp.append(t)
attn_of_alignment_heads = torch.stack(tmp, dim=1)
# logger.debug(str(attn_of_alignment_heads.shape) + " tttady")
std, mean = torch.std_mean(attn_of_alignment_heads, dim=-2, keepdim=True, unbiased=False)
attn_of_alignment_heads = (attn_of_alignment_heads - mean) / std
attn_of_alignment_heads = median_filter(attn_of_alignment_heads, 7) # from whisper.timing
attn_of_alignment_heads = attn_of_alignment_heads.mean(dim=1)
# logger.debug(str(attn_of_alignment_heads.shape) + " po mean")
attn_of_alignment_heads = attn_of_alignment_heads[:,:, :content_mel_len]
# logger.debug(str(attn_of_alignment_heads.shape) + " pak ")
# for each beam, the most attended frame is:
most_attended_frames = torch.argmax(attn_of_alignment_heads[:,-1,:], dim=-1)
generation_progress_loop.append(("most_attended_frames",most_attended_frames.clone().tolist()))
# Calculate absolute timestamps accounting for cumulative offset
absolute_timestamps = [(frame * 0.02 + self.cumulative_time_offset) for frame in most_attended_frames.tolist()]
generation_progress_loop.append(("absolute_timestamps", absolute_timestamps))
logger.debug(str(most_attended_frames.tolist()) + " most att frames")
logger.debug(f"Absolute timestamps: {absolute_timestamps} (offset: {self.cumulative_time_offset:.2f}s)")
most_attended_frame = most_attended_frames[0].item()
l_absolute_timestamps.append(absolute_timestamps[0])
generation_progress.append(dict(generation_progress_loop))
logger.debug("current tokens" + str(current_tokens.shape))
if completed:
# # stripping the last token, the eot
@@ -609,66 +565,53 @@ class PaddedAlignAttWhisper:
self.tokenizer.decode([current_tokens[i, -1].item()])
))
# for k,v in generation.items():
# print(k,v,file=sys.stderr)
# for x in generation_progress:
# for y in x.items():
# print("\t\t",*y,file=sys.stderr)
# print("\t","----", file=sys.stderr)
# print("\t", "end of generation_progress_loop", file=sys.stderr)
# sys.exit(1)
####################### End of decoding loop
logger.info("End of decoding loop")
# if attn_of_alignment_heads is not None:
# seg_len = int(segment.shape[0] / 16000 * TOKENS_PER_SECOND)
# # Lets' now consider only the top hypothesis in the beam search
# top_beam_attn_of_alignment_heads = attn_of_alignment_heads[0]
# # debug print: how is the new token attended?
# new_token_attn = top_beam_attn_of_alignment_heads[token_len_before_decoding:, -seg_len:]
# logger.debug(f"New token attention shape: {new_token_attn.shape}")
# if new_token_attn.shape[0] == 0: # it's not attended in the current audio segment
# logger.debug("no token generated")
# else: # it is, and the max attention is:
# new_token_max_attn, _ = new_token_attn.max(dim=-1)
# logger.debug(f"segment max attention: {new_token_max_attn.mean().item()/len(self.segments)}")
# let's now operate only with the top beam hypothesis
tokens_to_split = current_tokens[0, token_len_before_decoding:]
if fire_detected or is_last:
if fire_detected or is_last: #or punctuation_stop:
new_hypothesis = tokens_to_split.flatten().tolist()
split_words, split_tokens = self.tokenizer.split_to_word_tokens(new_hypothesis)
else:
# going to truncate the tokens after the last space
split_words, split_tokens = self.tokenizer.split_to_word_tokens(tokens_to_split.tolist())
generation["result"] = {"split_words": split_words[:-1], "split_tokens": split_tokens[:-1]}
generation["result_truncated"] = {"split_words": split_words[-1:], "split_tokens": split_tokens[-1:]}
# text_to_split = self.tokenizer.decode(tokens_to_split)
# logger.debug(f"text_to_split: {text_to_split}")
# logger.debug("text at current step: {}".format(text_to_split.replace(" ", "<space>")))
# text_before_space = " ".join(text_to_split.split(" ")[:-1])
# logger.debug("before the last space: {}".format(text_before_space.replace(" ", "<space>")))
if len(split_words) > 1:
new_hypothesis = [i for sublist in split_tokens[:-1] for i in sublist]
else:
new_hypothesis = []
### new hypothesis
logger.debug(f"new_hypothesis: {new_hypothesis}")
new_tokens = torch.tensor([new_hypothesis], dtype=torch.long).repeat_interleave(self.cfg.beam_size, dim=0).to(
device=self.device,
)
self.tokens.append(new_tokens)
# TODO: test if this is redundant or not
# ret = ret[ret<DEC_PAD]
logger.info(f"Output: {self.tokenizer.decode(new_hypothesis)}")
self._clean_cache()
return new_hypothesis, generation
if len(l_absolute_timestamps) >=2 and self.first_timestamp is None:
self.first_timestamp = l_absolute_timestamps[0]
timestamped_words = []
timestamp_idx = 0
for word, word_tokens in zip(split_words, split_tokens):
try:
current_timestamp = l_absolute_timestamps[timestamp_idx]
except:
pass
timestamp_idx += len(word_tokens)
timestamp_entry = ASRToken(
start=current_timestamp,
end=current_timestamp + 0.1,
text= word,
probability=0.95,
speaker=self.speaker,
detected_language=self.detected_language
).with_offset(
self.global_time_offset
)
timestamped_words.append(timestamp_entry)
return timestamped_words

View File

@@ -105,7 +105,8 @@ def load_model(
device: Optional[Union[str, torch.device]] = None,
download_root: str = None,
in_memory: bool = False,
decoder_only=False
decoder_only=False,
custom_alignment_heads=None
) -> Whisper:
"""
Load a Whisper ASR model
@@ -136,15 +137,17 @@ def load_model(
if name in _MODELS:
checkpoint_file = _download(_MODELS[name], download_root, in_memory)
alignment_heads = _ALIGNMENT_HEADS[name]
elif os.path.isfile(name):
checkpoint_file = open(name, "rb").read() if in_memory else name
alignment_heads = None
else:
raise RuntimeError(
f"Model {name} not found; available models = {available_models()}"
)
alignment_heads = _ALIGNMENT_HEADS.get(name, None)
if custom_alignment_heads:
alignment_heads = custom_alignment_heads.encode()
with (
io.BytesIO(checkpoint_file) if in_memory else open(checkpoint_file, "rb")
) as fp:

View File

@@ -1,7 +1,9 @@
from dataclasses import dataclass, field
from typing import Optional
from typing import Optional, Any, List
from datetime import timedelta
PUNCTUATION_MARKS = {'.', '!', '?', '', '', ''}
def format_time(seconds: float) -> str:
"""Format seconds as HH:MM:SS."""
return str(timedelta(seconds=int(seconds)))
@@ -15,12 +17,41 @@ class TimedText:
speaker: Optional[int] = -1
probability: Optional[float] = None
is_dummy: Optional[bool] = False
detected_language: Optional[str] = None
@dataclass
def is_punctuation(self):
return self.text.strip() in PUNCTUATION_MARKS
def overlaps_with(self, other: 'TimedText') -> bool:
return not (self.end <= other.start or other.end <= self.start)
def is_within(self, other: 'TimedText') -> bool:
return other.contains_timespan(self)
def duration(self) -> float:
return self.end - self.start
def contains_time(self, time: float) -> bool:
return self.start <= time <= self.end
def contains_timespan(self, other: 'TimedText') -> bool:
return self.start <= other.start and self.end >= other.end
def __bool__(self):
return bool(self.text)
@dataclass()
class ASRToken(TimedText):
corrected_speaker: Optional[int] = -1
validated_speaker: bool = False
validated_text: bool = False
validated_language: bool = False
def with_offset(self, offset: float) -> "ASRToken":
"""Return a new token with the time offset added."""
return ASRToken(self.start + offset, self.end + offset, self.text, self.speaker, self.probability)
return ASRToken(self.start + offset, self.end + offset, self.text, self.speaker, self.probability, detected_language=self.detected_language)
@dataclass
class Sentence(TimedText):
@@ -28,7 +59,28 @@ class Sentence(TimedText):
@dataclass
class Transcript(TimedText):
pass
"""
represents a concatenation of several ASRToken
"""
@classmethod
def from_tokens(
cls,
tokens: List[ASRToken],
sep: Optional[str] = None,
offset: float = 0
) -> "Transcript":
sep = sep if sep is not None else ' '
text = sep.join(token.text for token in tokens)
probability = sum(token.probability for token in tokens if token.probability) / len(tokens) if tokens else None
if tokens:
start = offset + tokens[0].start
end = offset + tokens[-1].end
else:
start = None
end = None
return cls(start, end, text, probability=probability)
@dataclass
class SpeakerSegment(TimedText):
@@ -41,6 +93,34 @@ class SpeakerSegment(TimedText):
class Translation(TimedText):
pass
def approximate_cut_at(self, cut_time):
"""
Each word in text is considered to be of duration (end-start)/len(words in text)
"""
if not self.text or not self.contains_time(cut_time):
return self, None
words = self.text.split()
num_words = len(words)
if num_words == 0:
return self, None
duration_per_word = self.duration() / num_words
cut_word_index = int((cut_time - self.start) / duration_per_word)
if cut_word_index >= num_words:
cut_word_index = num_words -1
text0 = " ".join(words[:cut_word_index])
text1 = " ".join(words[cut_word_index:])
segment0 = Translation(start=self.start, end=cut_time, text=text0)
segment1 = Translation(start=cut_time, end=self.end, text=text1)
return segment0, segment1
@dataclass
class Silence():
duration: float
@@ -51,13 +131,18 @@ class Line(TimedText):
translation: str = ''
def to_dict(self):
return {
'speaker': int(self.speaker),
_dict = {
'speaker': int(self.speaker) if self.speaker != -1 else 1,
'text': self.text,
'translation': self.translation,
'start': format_time(self.start),
'end': format_time(self.end),
}
if self.translation:
_dict['translation'] = self.translation
if self.detected_language:
_dict['detected_language'] = self.detected_language
return _dict
@dataclass
class FrontData():
@@ -72,7 +157,7 @@ class FrontData():
def to_dict(self):
_dict = {
'status': self.status,
'lines': [line.to_dict() for line in self.lines],
'lines': [line.to_dict() for line in self.lines if (line.text or line.speaker == -2)],
'buffer_transcription': self.buffer_transcription,
'buffer_diarization': self.buffer_diarization,
'remaining_time_transcription': self.remaining_time_transcription,
@@ -82,12 +167,17 @@ class FrontData():
_dict['error'] = self.error
return _dict
@dataclass
class ChangeSpeaker:
speaker: int
start: int
@dataclass
class State():
tokens: list
last_validated_token: int
translated_segments: list
buffer_transcription: str
buffer_diarization: str
end_buffer: float
end_attributed_speaker: float
remaining_time_transcription: float

View File

@@ -1,42 +1,63 @@
import logging
import time
import ctranslate2
import torch
import transformers
from dataclasses import dataclass
from dataclasses import dataclass, field
import huggingface_hub
from whisperlivekit.translation.mapping_languages import get_nllb_code
from whisperlivekit.timed_objects import Translation
logger = logging.getLogger(__name__)
#In diarization case, we may want to translate just one speaker, or at least start the sentences there
PUNCTUATION_MARKS = {'.', '!', '?', '', '', ''}
MIN_SILENCE_DURATION_DEL_BUFFER = 3 #After a silence of x seconds, we consider the model should not use the buffer, even if the previous
# sentence is not finished.
@dataclass
class TranslationModel():
translator: ctranslate2.Translator
tokenizer: dict
device: str
tokenizer: dict = field(default_factory=dict)
backend_type: str = 'ctranslate2'
nllb_size: str = '600M'
def load_model(src_langs):
MODEL = 'nllb-200-distilled-600M-ctranslate2'
def get_tokenizer(self, input_lang):
if not self.tokenizer.get(input_lang, False):
self.tokenizer[input_lang] = transformers.AutoTokenizer.from_pretrained(
f"facebook/nllb-200-distilled-{self.nllb_size}",
src_lang=input_lang,
clean_up_tokenization_spaces=True
)
return self.tokenizer[input_lang]
def load_model(src_langs, nllb_backend='ctranslate2', nllb_size='600M'):
device = "cuda" if torch.cuda.is_available() else "cpu"
MODEL = f'nllb-200-distilled-{nllb_size}-ctranslate2'
if nllb_backend=='ctranslate2':
MODEL_GUY = 'entai2965'
huggingface_hub.snapshot_download(MODEL_GUY + '/' + MODEL,local_dir=MODEL)
device = "cuda" if torch.cuda.is_available() else "cpu"
translator = ctranslate2.Translator(MODEL,device=device)
elif nllb_backend=='transformers':
translator = transformers.AutoModelForSeq2SeqLM.from_pretrained(f"facebook/nllb-200-distilled-{nllb_size}")
tokenizer = dict()
for src_lang in src_langs:
if src_lang != 'auto':
tokenizer[src_lang] = transformers.AutoTokenizer.from_pretrained(MODEL, src_lang=src_lang, clean_up_tokenization_spaces=True)
return TranslationModel(
translator=translator,
tokenizer=tokenizer
)
def translate(input, translation_model, tgt_lang):
source = translation_model.tokenizer.convert_ids_to_tokens(translation_model.tokenizer.encode(input))
target_prefix = [tgt_lang]
results = translation_model.translator.translate_batch([source], target_prefix=[target_prefix])
target = results[0].hypotheses[0][1:]
return translation_model.tokenizer.decode(translation_model.tokenizer.convert_tokens_to_ids(target))
translation_model = TranslationModel(
translator=translator,
tokenizer=tokenizer,
backend_type=nllb_backend,
device = device,
nllb_size = nllb_size
)
for src_lang in src_langs:
if src_lang != 'auto':
translation_model.get_tokenizer(src_lang)
return translation_model
class OnlineTranslation:
def __init__(self, translation_model: TranslationModel, input_languages: list, output_languages: list):
@@ -59,27 +80,38 @@ class OnlineTranslation:
self.commited.extend(self.buffer[:i])
self.buffer = results[i:]
def translate(self, input, input_lang=None, output_lang=None):
def translate(self, input, input_lang, output_lang):
if not input:
return ""
if input_lang is None:
input_lang = self.input_languages[0]
if output_lang is None:
output_lang = self.output_languages[0]
nllb_output_lang = get_nllb_code(output_lang)
source = self.translation_model.tokenizer[input_lang].convert_ids_to_tokens(self.translation_model.tokenizer[input_lang].encode(input))
results = self.translation_model.translator.translate_batch([source], target_prefix=[[nllb_output_lang]]) #we can use return_attention=True to try to optimize the stuff.
tokenizer = self.translation_model.get_tokenizer(input_lang)
tokenizer_output = tokenizer(input, return_tensors="pt").to(self.translation_model.device)
if self.translation_model.backend_type == 'ctranslate2':
source = tokenizer.convert_ids_to_tokens(tokenizer_output['input_ids'][0])
results = self.translation_model.translator.translate_batch([source], target_prefix=[[nllb_output_lang]])
target = results[0].hypotheses[0][1:]
results = self.translation_model.tokenizer[input_lang].decode(self.translation_model.tokenizer[input_lang].convert_tokens_to_ids(target))
return results
result = tokenizer.decode(tokenizer.convert_tokens_to_ids(target))
else:
translated_tokens = self.translation_model.translator.generate(**tokenizer_output, forced_bos_token_id=tokenizer.convert_tokens_to_ids(nllb_output_lang))
result = tokenizer.batch_decode(translated_tokens, skip_special_tokens=True)[0]
return result
def translate_tokens(self, tokens):
if tokens:
text = ' '.join([token.text for token in tokens])
start = tokens[0].start
end = tokens[-1].end
translated_text = self.translate(text)
if self.input_languages[0] == 'auto':
input_lang = tokens[0].detected_language
else:
input_lang = self.input_languages[0]
translated_text = self.translate(text,
input_lang,
self.output_languages[0]
)
translation = Translation(
text=translated_text,
start=start,
@@ -89,7 +121,6 @@ class OnlineTranslation:
return None
def insert_tokens(self, tokens):
self.buffer.extend(tokens)
pass
@@ -99,7 +130,7 @@ class OnlineTranslation:
if len(self.buffer) < self.len_processed_buffer + 3: #nothing new to process
return self.validated + [self.translation_remaining]
while i < len(self.buffer):
if self.buffer[i].text in PUNCTUATION_MARKS:
if self.buffer[i].is_punctuation():
translation_sentence = self.translate_tokens(self.buffer[:i+1])
self.validated.append(translation_sentence)
self.buffer = self.buffer[i+1:]
@@ -110,6 +141,10 @@ class OnlineTranslation:
self.len_processed_buffer = len(self.buffer)
return self.validated + [self.translation_remaining]
def insert_silence(self, silence_duration: float):
if silence_duration >= MIN_SILENCE_DURATION_DEL_BUFFER:
self.buffer = []
self.validated += [self.translation_remaining]
if __name__ == '__main__':
output_lang = 'fr'
@@ -122,16 +157,13 @@ if __name__ == '__main__':
test = test_string.split(' ')
step = len(test) // 3
shared_model = load_model([input_lang])
shared_model = load_model([input_lang], nllb_backend='ctranslate2')
online_translation = OnlineTranslation(shared_model, input_languages=[input_lang], output_languages=[output_lang])
beg_inference = time.time()
for id in range(5):
val = test[id*step : (id+1)*step]
val_str = ' '.join(val)
result = online_translation.translate(val_str)
print(result)
# print(result)
print('inference time:', time.time() - beg_inference)

View File

@@ -72,6 +72,12 @@
--label-trans-text: #111111;
}
html.is-extension
{
width: 350px;
height: 500px;
}
body {
font-family: ui-sans-serif, system-ui, sans-serif, 'Apple Color Emoji', 'Segoe UI Emoji', 'Segoe UI Symbol', 'Noto Color Emoji';
margin: 0;
@@ -191,6 +197,14 @@ body {
justify-content: center;
align-items: center;
gap: 15px;
position: relative;
flex-wrap: wrap;
}
.buttons-container {
display: flex;
align-items: center;
gap: 15px;
}
.settings {
@@ -200,6 +214,66 @@ body {
gap: 12px;
}
.settings-toggle {
width: 40px;
height: 40px;
border: none;
border-radius: 50%;
background-color: var(--button-bg);
border: 1px solid var(--button-border);
cursor: pointer;
display: none;
align-items: center;
justify-content: center;
transition: all 0.2s ease;
}
.settings-toggle:hover {
background-color: var(--chip-bg);
}
.settings-toggle.active {
background-color: var(--chip-bg);
}
.settings-toggle img {
width: 20px;
height: 20px;
}
@media (max-width: 10000px) {
.settings-toggle {
display: flex;
}
.settings {
display: none;
background: var(--bg);
border: 1px solid var(--border);
border-radius: 18px;
padding: 12px;
}
.settings.visible {
display: flex;
}
}
@media (max-width: 600px) {
.settings-container {
flex-direction: column;
align-items: center;
gap: 10px;
}
.buttons-container {
display: flex;
justify-content: center;
align-items: center;
gap: 15px;
}
}
.field {
display: flex;
flex-direction: column;
@@ -346,7 +420,7 @@ label {
.label_diarization {
background-color: var(--chip-bg);
border-radius: 8px 8px 8px 8px;
border-radius: 100px;
padding: 2px 10px;
margin-left: 10px;
display: inline-block;
@@ -358,7 +432,7 @@ label {
.label_transcription {
background-color: var(--chip-bg);
border-radius: 8px 8px 8px 8px;
border-radius: 100px;
padding: 2px 10px;
display: inline-block;
white-space: nowrap;
@@ -370,16 +444,20 @@ label {
.label_translation {
background-color: var(--chip-bg);
display: inline-flex;
border-radius: 10px;
padding: 4px 8px;
margin-top: 4px;
font-size: 14px;
color: var(--text);
display: flex;
align-items: flex-start;
gap: 4px;
}
.lag-diarization-value {
margin-left: 10px;
}
.label_translation img {
margin-top: 2px;
}
@@ -391,7 +469,7 @@ label {
#timeInfo {
color: var(--muted);
margin-left: 10px;
margin-left: 0px;
}
.textcontent {
@@ -405,7 +483,6 @@ label {
.buffer_diarization {
color: var(--label-dia-text);
margin-left: 4px;
}
.buffer_transcription {
@@ -438,7 +515,6 @@ label {
font-size: 13px;
border-radius: 30px;
padding: 2px 10px;
display: none;
}
.loading {
@@ -451,7 +527,7 @@ label {
}
/* for smaller screens */
@media (max-width: 768px) {
@media (max-width: 200px) {
.header-container {
padding: 15px;
}
@@ -461,6 +537,10 @@ label {
gap: 10px;
}
.buttons-container {
gap: 10px;
}
.settings {
justify-content: center;
gap: 8px;
@@ -515,3 +595,31 @@ label {
padding: 10px;
}
}
.label_language {
background-color: var(--chip-bg);
margin-bottom: 0px;
border-radius: 100px;
padding: 2px 8px;
margin-left: 10px;
display: inline-flex;
align-items: center;
gap: 4px;
font-size: 14px;
color: var(--muted);
}
.speaker-badge {
display: inline-flex;
align-items: center;
justify-content: center;
width: 16px;
height: 16px;
margin-left: -5px;
border-radius: 50%;
font-size: 11px;
line-height: 1;
font-weight: 800;
color: var(--muted);
}

View File

@@ -5,12 +5,13 @@
<meta charset="UTF-8" />
<meta name="viewport" content="width=device-width, initial-scale=1.0" />
<title>WhisperLiveKit</title>
<link rel="stylesheet" href="/web/live_transcription.css" />
<link rel="stylesheet" href="live_transcription.css" />
</head>
<body>
<div class="header-container">
<div class="settings-container">
<div class="buttons-container">
<button id="recordButton">
<div class="shape-container">
<div class="shape"></div>
@@ -23,6 +24,11 @@
</div>
</button>
<button id="settingsToggle" class="settings-toggle" title="Show/hide settings">
<img src="web/src/settings.svg" alt="Settings" />
</button>
</div>
<div class="settings">
<div class="field">
<label for="websocketInput">Websocket URL</label>
@@ -67,7 +73,7 @@
<div id="linesTranscript"></div>
</div>
<script src="/web/live_transcription.js"></script>
<script src="live_transcription.js"></script>
</body>
</html>

View File

@@ -1,4 +1,8 @@
/* Theme, WebSocket, recording, rendering logic extracted from inline script and adapted for segmented theme control and WS caption */
const isExtension = typeof chrome !== 'undefined' && chrome.runtime && chrome.runtime.getURL;
if (isExtension) {
document.documentElement.classList.add('is-extension');
}
const isWebContext = !isExtension;
let isRecording = false;
let websocket = null;
@@ -22,6 +26,11 @@ let lastReceivedData = null;
let lastSignature = null;
let availableMicrophones = [];
let selectedMicrophoneId = null;
let serverUseAudioWorklet = null;
let configReadyResolve;
const configReady = new Promise((r) => (configReadyResolve = r));
let outputAudioContext = null;
let audioSource = null;
waveCanvas.width = 60 * (window.devicePixelRatio || 1);
waveCanvas.height = 30 * (window.devicePixelRatio || 1);
@@ -37,6 +46,26 @@ const timerElement = document.querySelector(".timer");
const themeRadios = document.querySelectorAll('input[name="theme"]');
const microphoneSelect = document.getElementById("microphoneSelect");
const settingsToggle = document.getElementById("settingsToggle");
const settingsDiv = document.querySelector(".settings");
// if (isExtension) {
// chrome.runtime.onInstalled.addListener((details) => {
// if (details.reason.search(/install/g) === -1) {
// return;
// }
// chrome.tabs.create({
// url: chrome.runtime.getURL("welcome.html"),
// active: true
// });
// });
// }
const translationIcon = `<svg xmlns="http://www.w3.org/2000/svg" height="12px" viewBox="0 -960 960 960" width="12px" fill="#5f6368"><path d="m603-202-34 97q-4 11-14 18t-22 7q-20 0-32.5-16.5T496-133l152-402q5-11 15-18t22-7h30q12 0 22 7t15 18l152 403q8 19-4 35.5T868-80q-13 0-22.5-7T831-106l-34-96H603ZM362-401 188-228q-11 11-27.5 11.5T132-228q-11-11-11-28t11-28l174-174q-35-35-63.5-80T190-640h84q20 39 40 68t48 58q33-33 68.5-92.5T484-720H80q-17 0-28.5-11.5T40-760q0-17 11.5-28.5T80-800h240v-40q0-17 11.5-28.5T360-880q17 0 28.5 11.5T400-840v40h240q17 0 28.5 11.5T680-760q0 17-11.5 28.5T640-720h-76q-21 72-63 148t-83 116l96 98-30 82-122-125Zm266 129h144l-72-204-72 204Z"/></svg>`
const silenceIcon = `<svg xmlns="http://www.w3.org/2000/svg" style="vertical-align: text-bottom;" height="14px" viewBox="0 -960 960 960" width="14px" fill="#5f6368"><path d="M514-556 320-752q9-3 19-5.5t21-2.5q66 0 113 47t47 113q0 11-1.5 22t-4.5 22ZM40-200v-32q0-33 17-62t47-44q51-26 115-44t141-18q26 0 49.5 2.5T456-392l-56-54q-9 3-19 4.5t-21 1.5q-66 0-113-47t-47-113q0-11 1.5-21t4.5-19L84-764q-11-11-11-28t11-28q12-12 28.5-12t27.5 12l675 685q11 11 11.5 27.5T816-80q-11 13-28 12.5T759-80L641-200h39q0 33-23.5 56.5T600-120H120q-33 0-56.5-23.5T40-200Zm80 0h480v-32q0-14-4.5-19.5T580-266q-36-18-92.5-36T360-320q-71 0-127.5 18T140-266q-9 5-14.5 14t-5.5 20v32Zm240 0Zm560-400q0 69-24.5 131.5T829-355q-12 14-30 15t-32-13q-13-13-12-31t12-33q30-38 46.5-85t16.5-98q0-51-16.5-97T767-781q-12-15-12.5-33t12.5-32q13-14 31.5-13.5T829-845q42 51 66.5 113.5T920-600Zm-182 0q0 32-10 61.5T700-484q-11 15-29.5 15.5T638-482q-13-13-13.5-31.5T633-549q6-11 9.5-24t3.5-27q0-14-3.5-27t-9.5-25q-9-17-8.5-35t13.5-31q14-14 32.5-13.5T700-716q18 25 28 54.5t10 61.5Z"/></svg>`;
const languageIcon = `<svg xmlns="http://www.w3.org/2000/svg" height="12" viewBox="0 -960 960 960" width="12" fill="#5f6368"><path d="M480-80q-82 0-155-31.5t-127.5-86Q143-252 111.5-325T80-480q0-83 31.5-155.5t86-127Q252-817 325-848.5T480-880q83 0 155.5 31.5t127 86q54.5 54.5 86 127T880-480q0 82-31.5 155t-86 127.5q-54.5 54.5-127 86T480-80Zm0-82q26-36 45-75t31-83H404q12 44 31 83t45 75Zm-104-16q-18-33-31.5-68.5T322-320H204q29 50 72.5 87t99.5 55Zm208 0q56-18 99.5-55t72.5-87H638q-9 38-22.5 73.5T584-178ZM170-400h136q-3-20-4.5-39.5T300-480q0-21 1.5-40.5T306-560H170q-5 20-7.5 39.5T160-480q0 21 2.5 40.5T170-400Zm216 0h188q3-20 4.5-39.5T580-480q0-21-1.5-40.5T574-560H386q-3 20-4.5 39.5T380-480q0 21 1.5 40.5T386-400Zm268 0h136q5-20 7.5-39.5T800-480q0-21-2.5-40.5T790-560H654q3 20 4.5 39.5T660-480q0 21-1.5 40.5T654-400Zm-16-240h118q-29-50-72.5-87T584-782q18 33 31.5 68.5T638-640Zm-234 0h152q-12-44-31-83t-45-75q-26 36-45 75t-31 83Zm-200 0h118q9-38 22.5-73.5T376-782q-56 18-99.5 55T204-640Z"/></svg>`
const speakerIcon = `<svg xmlns="http://www.w3.org/2000/svg" height="16px" style="vertical-align: text-bottom;" viewBox="0 -960 960 960" width="16px" fill="#5f6368"><path d="M480-480q-66 0-113-47t-47-113q0-66 47-113t113-47q66 0 113 47t47 113q0 66-47 113t-113 47ZM160-240v-32q0-34 17.5-62.5T224-378q62-31 126-46.5T480-440q66 0 130 15.5T736-378q29 15 46.5 43.5T800-272v32q0 33-23.5 56.5T720-160H240q-33 0-56.5-23.5T160-240Zm80 0h480v-32q0-11-5.5-20T700-306q-54-27-109-40.5T480-360q-56 0-111 13.5T260-306q-9 5-14.5 14t-5.5 20v32Zm240-320q33 0 56.5-23.5T560-640q0-33-23.5-56.5T480-720q-33 0-56.5 23.5T400-640q0 33 23.5 56.5T480-560Zm0-80Zm0 400Z"/></svg>`;
function getWaveStroke() {
const styles = getComputedStyle(document.documentElement);
const v = styles.getPropertyValue("--wave-stroke").trim();
@@ -148,10 +177,16 @@ function fmt1(x) {
return Number.isFinite(n) ? n.toFixed(1) : x;
}
// Default WebSocket URL computation
const host = window.location.hostname || "localhost";
const port = window.location.port;
const protocol = window.location.protocol === "https:" ? "wss" : "ws";
let host, port, protocol;
port = 8000;
if (isExtension) {
host = "localhost";
protocol = "ws";
} else {
host = window.location.hostname || "localhost";
port = window.location.port;
protocol = window.location.protocol === "https:" ? "wss" : "ws";
}
const defaultWebSocketUrl = `${protocol}://${host}${port ? ":" + port : ""}/asr`;
// Populate default caption and input
@@ -228,6 +263,14 @@ function setupWebSocket() {
websocket.onmessage = (event) => {
const data = JSON.parse(event.data);
if (data.type === "config") {
serverUseAudioWorklet = !!data.useAudioWorklet;
statusText.textContent = serverUseAudioWorklet
? "Connected. Using AudioWorklet (PCM)."
: "Connected. Using MediaRecorder (WebM).";
if (configReadyResolve) configReadyResolve();
return;
}
if (data.type === "ready_to_stop") {
console.log("Ready to stop received, finalizing display and closing WebSocket.");
@@ -295,7 +338,7 @@ function renderLinesWithBuffer(
const showTransLag = !isFinalizing && remaining_time_transcription > 0;
const showDiaLag = !isFinalizing && !!buffer_diarization && remaining_time_diarization > 0;
const signature = JSON.stringify({
lines: (lines || []).map((it) => ({ speaker: it.speaker, text: it.text, start: it.start, end: it.end })),
lines: (lines || []).map((it) => ({ speaker: it.speaker, text: it.text, start: it.start, end: it.end, detected_language: it.detected_language })),
buffer_transcription: buffer_transcription || "",
buffer_diarization: buffer_diarization || "",
status: current_status,
@@ -324,24 +367,22 @@ function renderLinesWithBuffer(
let speakerLabel = "";
if (item.speaker === -2) {
speakerLabel = `<span class="silence">Silence<span id='timeInfo'>${timeInfo}</span></span>`;
speakerLabel = `<span class="silence">${silenceIcon}<span id='timeInfo'>${timeInfo}</span></span>`;
} else if (item.speaker == 0 && !isFinalizing) {
speakerLabel = `<span class='loading'><span class="spinner"></span><span id='timeInfo'><span class="loading-diarization-value">${fmt1(
remaining_time_diarization
)}</span> second(s) of audio are undergoing diarization</span></span>`;
} else if (item.speaker !== 0) {
speakerLabel = `<span id="speaker">Speaker ${item.speaker}<span id='timeInfo'>${timeInfo}</span></span>`;
const speakerNum = `<span class="speaker-badge">${item.speaker}</span>`;
speakerLabel = `<span id="speaker">${speakerIcon}${speakerNum}<span id='timeInfo'>${timeInfo}</span></span>`;
if (item.detected_language) {
speakerLabel += `<span class="label_language">${languageIcon}<span>${item.detected_language}</span></span>`;
}
}
let currentLineText = item.text || "";
if (item.translation) {
currentLineText += `<div class="label_translation">
<img src="/web/src/translate.svg" alt="Translation" width="12" height="12" />
<span>${item.translation}</span>
</div>`;
}
if (idx === lines.length - 1) {
if (!isFinalizing && item.speaker !== -2) {
if (remaining_time_transcription > 0) {
@@ -375,6 +416,16 @@ function renderLinesWithBuffer(
}
}
if (item.translation) {
currentLineText += `
<div>
<div class="label_translation">
${translationIcon}
<span>${item.translation}</span>
</div>
</div>`;
}
return currentLineText.trim().length > 0 || speakerLabel.length > 0
? `<p>${speakerLabel}<br/><div class='textcontent'>${currentLineText}</div></p>`
: `<p>${speakerLabel}<br/></p>`;
@@ -447,11 +498,44 @@ async function startRecording() {
console.log("Error acquiring wake lock.");
}
let stream;
// chromium extension. in the future, both chrome page audio and mic will be used
if (isExtension) {
try {
stream = await new Promise((resolve, reject) => {
chrome.tabCapture.capture({audio: true}, (s) => {
if (s) {
resolve(s);
} else {
reject(new Error('Tab capture failed or not available'));
}
});
});
try {
outputAudioContext = new (window.AudioContext || window.webkitAudioContext)();
audioSource = outputAudioContext.createMediaStreamSource(stream);
audioSource.connect(outputAudioContext.destination);
} catch (audioError) {
console.warn('could not preserve system audio:', audioError);
}
statusText.textContent = "Using tab audio capture.";
} catch (tabError) {
console.log('Tab capture not available, falling back to microphone', tabError);
const audioConstraints = selectedMicrophoneId
? { audio: { deviceId: { exact: selectedMicrophoneId } } }
: { audio: true };
const stream = await navigator.mediaDevices.getUserMedia(audioConstraints);
stream = await navigator.mediaDevices.getUserMedia(audioConstraints);
statusText.textContent = "Using microphone audio.";
}
} else if (isWebContext) {
const audioConstraints = selectedMicrophoneId
? { audio: { deviceId: { exact: selectedMicrophoneId } } }
: { audio: true };
stream = await navigator.mediaDevices.getUserMedia(audioConstraints);
}
audioContext = new (window.AudioContext || window.webkitAudioContext)();
analyser = audioContext.createAnalyser();
@@ -459,6 +543,7 @@ async function startRecording() {
microphone = audioContext.createMediaStreamSource(stream);
microphone.connect(analyser);
if (serverUseAudioWorklet) {
if (!audioContext.audioWorklet) {
throw new Error("AudioWorklet is not supported in this browser");
}
@@ -491,6 +576,21 @@ async function startRecording() {
[ab]
);
};
} else {
try {
recorder = new MediaRecorder(stream, { mimeType: "audio/webm" });
} catch (e) {
recorder = new MediaRecorder(stream);
}
recorder.ondataavailable = (e) => {
if (websocket && websocket.readyState === WebSocket.OPEN) {
if (e.data && e.data.size > 0) {
websocket.send(e.data);
}
}
};
recorder.start(chunkDuration);
}
startTime = Date.now();
timerInterval = setInterval(updateTimer, 1000);
@@ -528,6 +628,14 @@ async function stopRecording() {
statusText.textContent = "Recording stopped. Processing final audio...";
}
if (recorder) {
try {
recorder.stop();
} catch (e) {
}
recorder = null;
}
if (recorderWorker) {
recorderWorker.terminate();
recorderWorker = null;
@@ -561,6 +669,16 @@ async function stopRecording() {
audioContext = null;
}
if (audioSource) {
audioSource.disconnect();
audioSource = null;
}
if (outputAudioContext && outputAudioContext.state !== "closed") {
outputAudioContext.close()
outputAudioContext = null;
}
if (animationFrame) {
cancelAnimationFrame(animationFrame);
animationFrame = null;
@@ -586,9 +704,11 @@ async function toggleRecording() {
console.log("Connecting to WebSocket");
try {
if (websocket && websocket.readyState === WebSocket.OPEN) {
await configReady;
await startRecording();
} else {
await setupWebSocket();
await configReady;
await startRecording();
}
} catch (err) {
@@ -610,7 +730,7 @@ function updateUI() {
statusText.textContent = "Please wait for processing to complete...";
}
} else if (isRecording) {
statusText.textContent = "Recording...";
statusText.textContent = "";
} else {
if (
statusText.textContent !== "Finished processing audio! Ready to record again." &&
@@ -644,3 +764,40 @@ navigator.mediaDevices.addEventListener('devicechange', async () => {
console.log("Error re-enumerating microphones:", error);
}
});
settingsToggle.addEventListener("click", () => {
settingsDiv.classList.toggle("visible");
settingsToggle.classList.toggle("active");
});
if (isExtension) {
async function checkAndRequestPermissions() {
const micPermission = await navigator.permissions.query({
name: "microphone",
});
const permissionDisplay = document.getElementById("audioPermission");
if (permissionDisplay) {
permissionDisplay.innerText = `MICROPHONE: ${micPermission.state}`;
}
// if (micPermission.state !== "granted") {
// chrome.tabs.create({ url: "welcome.html" });
// }
const intervalId = setInterval(async () => {
const micPermission = await navigator.permissions.query({
name: "microphone",
});
if (micPermission.state === "granted") {
if (permissionDisplay) {
permissionDisplay.innerText = `MICROPHONE: ${micPermission.state}`;
}
clearInterval(intervalId);
}
}, 100);
}
void checkAndRequestPermissions();
}

View File

@@ -0,0 +1 @@
<svg xmlns="http://www.w3.org/2000/svg" height="24px" viewBox="0 -960 960 960" width="24px" fill="#5f6368"><path d="M480-80q-82 0-155-31.5t-127.5-86Q143-252 111.5-325T80-480q0-83 31.5-155.5t86-127Q252-817 325-848.5T480-880q83 0 155.5 31.5t127 86q54.5 54.5 86 127T880-480q0 82-31.5 155t-86 127.5q-54.5 54.5-127 86T480-80Zm0-82q26-36 45-75t31-83H404q12 44 31 83t45 75Zm-104-16q-18-33-31.5-68.5T322-320H204q29 50 72.5 87t99.5 55Zm208 0q56-18 99.5-55t72.5-87H638q-9 38-22.5 73.5T584-178ZM170-400h136q-3-20-4.5-39.5T300-480q0-21 1.5-40.5T306-560H170q-5 20-7.5 39.5T160-480q0 21 2.5 40.5T170-400Zm216 0h188q3-20 4.5-39.5T580-480q0-21-1.5-40.5T574-560H386q-3 20-4.5 39.5T380-480q0 21 1.5 40.5T386-400Zm268 0h136q5-20 7.5-39.5T800-480q0-21-2.5-40.5T790-560H654q3 20 4.5 39.5T660-480q0 21-1.5 40.5T654-400Zm-16-240h118q-29-50-72.5-87T584-782q18 33 31.5 68.5T638-640Zm-234 0h152q-12-44-31-83t-45-75q-26 36-45 75t-31 83Zm-200 0h118q9-38 22.5-73.5T376-782q-56 18-99.5 55T204-640Z"/></svg>

After

Width:  |  Height:  |  Size: 976 B

View File

@@ -0,0 +1 @@
<svg xmlns="http://www.w3.org/2000/svg" height="24px" viewBox="0 -960 960 960" width="24px" fill="#5f6368"><path d="M514-556 320-752q9-3 19-5.5t21-2.5q66 0 113 47t47 113q0 11-1.5 22t-4.5 22ZM40-200v-32q0-33 17-62t47-44q51-26 115-44t141-18q26 0 49.5 2.5T456-392l-56-54q-9 3-19 4.5t-21 1.5q-66 0-113-47t-47-113q0-11 1.5-21t4.5-19L84-764q-11-11-11-28t11-28q12-12 28.5-12t27.5 12l675 685q11 11 11.5 27.5T816-80q-11 13-28 12.5T759-80L641-200h39q0 33-23.5 56.5T600-120H120q-33 0-56.5-23.5T40-200Zm80 0h480v-32q0-14-4.5-19.5T580-266q-36-18-92.5-36T360-320q-71 0-127.5 18T140-266q-9 5-14.5 14t-5.5 20v32Zm240 0Zm560-400q0 69-24.5 131.5T829-355q-12 14-30 15t-32-13q-13-13-12-31t12-33q30-38 46.5-85t16.5-98q0-51-16.5-97T767-781q-12-15-12.5-33t12.5-32q13-14 31.5-13.5T829-845q42 51 66.5 113.5T920-600Zm-182 0q0 32-10 61.5T700-484q-11 15-29.5 15.5T638-482q-13-13-13.5-31.5T633-549q6-11 9.5-24t3.5-27q0-14-3.5-27t-9.5-25q-9-17-8.5-35t13.5-31q14-14 32.5-13.5T700-716q18 25 28 54.5t10 61.5Z"/></svg>

After

Width:  |  Height:  |  Size: 984 B

View File

@@ -0,0 +1 @@
<svg xmlns="http://www.w3.org/2000/svg" height="24px" viewBox="0 -960 960 960" width="24px" fill="#5f6368"><path d="M480-480q-66 0-113-47t-47-113q0-66 47-113t113-47q66 0 113 47t47 113q0 66-47 113t-113 47ZM160-240v-32q0-34 17.5-62.5T224-378q62-31 126-46.5T480-440q66 0 130 15.5T736-378q29 15 46.5 43.5T800-272v32q0 33-23.5 56.5T720-160H240q-33 0-56.5-23.5T160-240Zm80 0h480v-32q0-11-5.5-20T700-306q-54-27-109-40.5T480-360q-56 0-111 13.5T260-306q-9 5-14.5 14t-5.5 20v32Zm240-320q33 0 56.5-23.5T560-640q0-33-23.5-56.5T480-720q-33 0-56.5 23.5T400-640q0 33 23.5 56.5T480-560Zm0-80Zm0 400Z"/></svg>

After

Width:  |  Height:  |  Size: 592 B

View File

@@ -23,6 +23,24 @@ def get_inline_ui_html():
with resources.files('whisperlivekit.web').joinpath('live_transcription.js').open('r', encoding='utf-8') as f:
js_content = f.read()
with resources.files('whisperlivekit.web').joinpath('pcm_worklet.js').open('r', encoding='utf-8') as f:
worklet_code = f.read()
with resources.files('whisperlivekit.web').joinpath('recorder_worker.js').open('r', encoding='utf-8') as f:
worker_code = f.read()
js_content = js_content.replace(
'await audioContext.audioWorklet.addModule("/web/pcm_worklet.js");',
'const workletBlob = new Blob([`' + worklet_code + '`], { type: "application/javascript" });\n' +
'const workletUrl = URL.createObjectURL(workletBlob);\n' +
'await audioContext.audioWorklet.addModule(workletUrl);'
)
js_content = js_content.replace(
'recorderWorker = new Worker("/web/recorder_worker.js");',
'const workerBlob = new Blob([`' + worker_code + '`], { type: "application/javascript" });\n' +
'const workerUrl = URL.createObjectURL(workerBlob);\n' +
'recorderWorker = new Worker(workerUrl);'
)
# SVG files
with resources.files('whisperlivekit.web').joinpath('src', 'system_mode.svg').open('r', encoding='utf-8') as f:
system_svg = f.read()
@@ -33,15 +51,18 @@ def get_inline_ui_html():
with resources.files('whisperlivekit.web').joinpath('src', 'dark_mode.svg').open('r', encoding='utf-8') as f:
dark_svg = f.read()
dark_data_uri = f"data:image/svg+xml;base64,{base64.b64encode(dark_svg.encode('utf-8')).decode('utf-8')}"
with resources.files('whisperlivekit.web').joinpath('src', 'settings.svg').open('r', encoding='utf-8') as f:
settings = f.read()
settings_uri = f"data:image/svg+xml;base64,{base64.b64encode(settings.encode('utf-8')).decode('utf-8')}"
# Replace external references
html_content = html_content.replace(
'<link rel="stylesheet" href="/web/live_transcription.css" />',
'<link rel="stylesheet" href="live_transcription.css" />',
f'<style>\n{css_content}\n</style>'
)
html_content = html_content.replace(
'<script src="/web/live_transcription.js"></script>',
'<script src="live_transcription.js"></script>',
f'<script>\n{js_content}\n</script>'
)
@@ -61,6 +82,11 @@ def get_inline_ui_html():
f'<img src="{dark_data_uri}" alt="" />'
)
html_content = html_content.replace(
'<img src="web/src/settings.svg" alt="Settings" />',
f'<img src="{settings_uri}" alt="" />'
)
return html_content
except Exception as e:

View File

@@ -11,14 +11,14 @@ class ASRBase:
sep = " " # join transcribe words with this character (" " for whisper_timestamped,
# "" for faster-whisper because it emits the spaces when needed)
def __init__(self, lan, modelsize=None, cache_dir=None, model_dir=None, logfile=sys.stderr):
def __init__(self, lan, model_size=None, cache_dir=None, model_dir=None, logfile=sys.stderr):
self.logfile = logfile
self.transcribe_kargs = {}
if lan == "auto":
self.original_language = None
else:
self.original_language = lan
self.model = self.load_model(modelsize, cache_dir, model_dir)
self.model = self.load_model(model_size, cache_dir, model_dir)
def with_offset(self, offset: float) -> ASRToken:
# This method is kept for compatibility (typically you will use ASRToken.with_offset)
@@ -27,7 +27,7 @@ class ASRBase:
def __repr__(self):
return f"ASRToken(start={self.start:.2f}, end={self.end:.2f}, text={self.text!r})"
def load_model(self, modelsize, cache_dir, model_dir):
def load_model(self, model_size, cache_dir, model_dir):
raise NotImplementedError("must be implemented in the child class")
def transcribe(self, audio, init_prompt=""):
@@ -41,7 +41,7 @@ class WhisperTimestampedASR(ASRBase):
"""Uses whisper_timestamped as the backend."""
sep = " "
def load_model(self, modelsize=None, cache_dir=None, model_dir=None):
def load_model(self, model_size=None, cache_dir=None, model_dir=None):
import whisper
import whisper_timestamped
from whisper_timestamped import transcribe_timestamped
@@ -49,7 +49,7 @@ class WhisperTimestampedASR(ASRBase):
self.transcribe_timestamped = transcribe_timestamped
if model_dir is not None:
logger.debug("ignoring model_dir, not implemented")
return whisper.load_model(modelsize, download_root=cache_dir)
return whisper.load_model(model_size, download_root=cache_dir)
def transcribe(self, audio, init_prompt=""):
result = self.transcribe_timestamped(
@@ -88,17 +88,17 @@ class FasterWhisperASR(ASRBase):
"""Uses faster-whisper as the backend."""
sep = ""
def load_model(self, modelsize=None, cache_dir=None, model_dir=None):
def load_model(self, model_size=None, cache_dir=None, model_dir=None):
from faster_whisper import WhisperModel
if model_dir is not None:
logger.debug(f"Loading whisper model from model_dir {model_dir}. "
f"modelsize and cache_dir parameters are not used.")
f"model_size and cache_dir parameters are not used.")
model_size_or_path = model_dir
elif modelsize is not None:
model_size_or_path = modelsize
elif model_size is not None:
model_size_or_path = model_size
else:
raise ValueError("Either modelsize or model_dir must be set")
raise ValueError("Either model_size or model_dir must be set")
device = "auto" # Allow CTranslate2 to decide available device
compute_type = "auto" # Allow CTranslate2 to decide faster compute type
@@ -149,18 +149,18 @@ class MLXWhisper(ASRBase):
"""
sep = ""
def load_model(self, modelsize=None, cache_dir=None, model_dir=None):
def load_model(self, model_size=None, cache_dir=None, model_dir=None):
from mlx_whisper.transcribe import ModelHolder, transcribe
import mlx.core as mx
if model_dir is not None:
logger.debug(f"Loading whisper model from model_dir {model_dir}. modelsize parameter is not used.")
logger.debug(f"Loading whisper model from model_dir {model_dir}. model_size parameter is not used.")
model_size_or_path = model_dir
elif modelsize is not None:
model_size_or_path = self.translate_model_name(modelsize)
logger.debug(f"Loading whisper model {modelsize}. You use mlx whisper, so {model_size_or_path} will be used.")
elif model_size is not None:
model_size_or_path = self.translate_model_name(model_size)
logger.debug(f"Loading whisper model {model_size}. You use mlx whisper, so {model_size_or_path} will be used.")
else:
raise ValueError("Either modelsize or model_dir must be set")
raise ValueError("Either model_size or model_dir must be set")
self.model_size_or_path = model_size_or_path
dtype = mx.float16

View File

@@ -106,9 +106,6 @@ class OnlineASRProcessor:
def __init__(
self,
asr,
tokenize_method: Optional[callable] = None,
buffer_trimming: Tuple[str, float] = ("segment", 15),
confidence_validation = False,
logfile=sys.stderr,
):
"""
@@ -119,13 +116,14 @@ class OnlineASRProcessor:
buffer_trimming: A tuple (option, seconds), where option is either "sentence" or "segment".
"""
self.asr = asr
self.tokenize = tokenize_method
self.tokenize = asr.tokenizer
self.logfile = logfile
self.confidence_validation = confidence_validation
self.confidence_validation = asr.confidence_validation
self.global_time_offset = 0.0
self.init()
self.buffer_trimming_way, self.buffer_trimming_sec = buffer_trimming
self.buffer_trimming_way = asr.buffer_trimming
self.buffer_trimming_sec = asr.buffer_trimming_sec
if self.buffer_trimming_way not in ["sentence", "segment"]:
raise ValueError("buffer_trimming must be either 'sentence' or 'segment'")

View File

@@ -6,6 +6,7 @@ from functools import lru_cache
import time
import logging
from .backends import FasterWhisperASR, MLXWhisper, WhisperTimestampedASR, OpenaiApiASR
from whisperlivekit.warmup import warmup_asr
logger = logging.getLogger(__name__)
@@ -63,11 +64,23 @@ def create_tokenizer(lan):
return WtPtok()
def backend_factory(args):
backend = args.backend
def backend_factory(
backend,
lan,
model_size,
model_cache_dir,
model_dir,
task,
buffer_trimming,
buffer_trimming_sec,
confidence_validation,
warmup_file=None,
min_chunk_size=None,
):
backend = backend
if backend == "openai-api":
logger.debug("Using OpenAI API.")
asr = OpenaiApiASR(lan=args.lan)
asr = OpenaiApiASR(lan=lan)
else:
if backend == "faster-whisper":
asr_cls = FasterWhisperASR
@@ -77,34 +90,33 @@ def backend_factory(args):
asr_cls = WhisperTimestampedASR
# Only for FasterWhisperASR and WhisperTimestampedASR
size = args.model
t = time.time()
logger.info(f"Loading Whisper {size} model for language {args.lan}...")
logger.info(f"Loading Whisper {model_size} model for language {lan}...")
asr = asr_cls(
modelsize=size,
lan=args.lan,
cache_dir=getattr(args, 'model_cache_dir', None),
model_dir=getattr(args, 'model_dir', None),
model_size=model_size,
lan=lan,
cache_dir=model_cache_dir,
model_dir=model_dir,
)
e = time.time()
logger.info(f"done. It took {round(e-t,2)} seconds.")
# Apply common configurations
if getattr(args, "vad", False): # Checks if VAD argument is present and True
logger.info("Setting VAD filter")
asr.use_vad()
language = args.lan
if args.task == "translate":
if backend != "simulstreaming":
asr.set_translate_task()
if task == "translate":
tgt_language = "en" # Whisper translates into English
else:
tgt_language = language # Whisper transcribes in this language
tgt_language = lan # Whisper transcribes in this language
# Create the tokenizer
if args.buffer_trimming == "sentence":
if buffer_trimming == "sentence":
tokenizer = create_tokenizer(tgt_language)
else:
tokenizer = None
return asr, tokenizer
warmup_asr(asr, warmup_file)
asr.confidence_validation = confidence_validation
asr.tokenizer = tokenizer
asr.buffer_trimming = buffer_trimming
asr.buffer_trimming_sec = buffer_trimming_sec
return asr