feat: use Edge TTS (Korean Hyunsu voice @ +45%) as the default voice
Some checks failed
Release / semantic-release (push) Successful in 31s
Release / build-windows (push) Has been cancelled
Release / build-macos (arm64, macos-latest) (push) Has been cancelled
Release / build-macos (x64, macos-15-intel) (push) Has been cancelled
Release / build-linux (push) Has been cancelled
Release / release-main (push) Has been cancelled
Release / release-develop (push) Has been cancelled
tests / Unit tests (Linux, Python 3.11) (push) Has been cancelled
Some checks failed
Release / semantic-release (push) Successful in 31s
Release / build-windows (push) Has been cancelled
Release / build-macos (arm64, macos-latest) (push) Has been cancelled
Release / build-macos (x64, macos-15-intel) (push) Has been cancelled
Release / build-linux (push) Has been cancelled
Release / release-main (push) Has been cancelled
Release / release-develop (push) Has been cancelled
tests / Unit tests (Linux, Python 3.11) (push) Has been cancelled
The user chose Microsoft Edge TTS, voice ko-KR-HyunsuMultilingualNeural at rate +45% (~1.45x), as the natural Korean voice. Wire it into the bridge and make it the default engine. - bridge/server.py: _edge_synthesize() calls edge-tts and transcodes the MP3 to PCM16 mono WAV with the system ffmpeg (temp file for a correct header); TTS_ENGINE default -> edge; EDGE_TTS_VOICE / EDGE_TTS_RATE env-driven - requirements-bridge.txt: add edge-tts (lightweight; httpx) - compose/.env.example/README: TTS_ENGINE=edge + EDGE_TTS_* knobs; note the online/privacy trade-off (reply text is sent to Microsoft, needs internet) - drop the now-unused MeloTTS build layer (Dockerfile) and melo-worker (supervisord) — edge synthesises in-process, no model/worker baked, slimmer and faster image; settings UI engine list -> edge/piper, restart only bridge Verified on host: edge-tts -> ffmpeg yields a valid 16-bit mono 24kHz WAV; envsubst renders tts_engine=edge; docker build --check + 26 tests pass. Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
This commit is contained in:
@@ -49,31 +49,8 @@ stdout_logfile_maxbytes=0
|
||||
stderr_logfile=/dev/stderr
|
||||
stderr_logfile_maxbytes=0
|
||||
|
||||
[program:melo-worker]
|
||||
; Warm MeloTTS Korean voice (speed 1.5) in its own py3.11 venv. The bridge's
|
||||
; synthesize() POSTs here; if this is down the bridge falls back to Piper.
|
||||
command=/app/docker/run-if-role.sh full,bot /opt/melo/bin/python /app/bridge/melo_worker.py
|
||||
directory=/app
|
||||
; HF_HOME points at the dedicated, image-baked melo cache (warmed in
|
||||
; setup-melo.sh). The brain's whisper_cache volume is mounted over
|
||||
; /root/.cache/huggingface, so without this the pre-cached BERT + KR checkpoint
|
||||
; would be shadowed and re-downloaded (and would fail if the host is offline).
|
||||
; HF_HUB_OFFLINE/TRANSFORMERS_OFFLINE force pure-cache reads: the pinned old
|
||||
; transformers/huggingface_hub otherwise retry the network on every load and
|
||||
; error out instead of falling back to the (complete) baked cache.
|
||||
; MELO_DEVICE and MELO_SPEED inherit from the container env (compose sets both
|
||||
; with defaults: cuda / 1.5) so the worker runs MeloTTS on the GPU at the
|
||||
; configured rate. supervisord interpolates %(ENV_x)s from its own environment,
|
||||
; which is the container's — so MELO_SPEED must always be set in the env
|
||||
; (compose guarantees it) or this expansion fails at startup. Hardcoding 1.5
|
||||
; here previously shadowed the .env value, so lowering MELO_SPEED had no effect.
|
||||
environment=MELO_LANGUAGE="KR",MELO_SPEED="%(ENV_MELO_SPEED)s",MELO_DEVICE="%(ENV_MELO_DEVICE)s",MELO_WORKER_HOST="127.0.0.1",MELO_WORKER_PORT="8770",HF_HOME="/opt/melo-cache",HF_HUB_OFFLINE="1",TRANSFORMERS_OFFLINE="1"
|
||||
priority=280
|
||||
autorestart=true
|
||||
stdout_logfile=/dev/stdout
|
||||
stdout_logfile_maxbytes=0
|
||||
stderr_logfile=/dev/stderr
|
||||
stderr_logfile_maxbytes=0
|
||||
# (No TTS worker program: the default Edge TTS engine synthesises in-process in
|
||||
# the bridge via the `edge-tts` package — no warm model/worker is needed.)
|
||||
|
||||
[program:bridge]
|
||||
command=/app/docker/run-if-role.sh full,bot /opt/venv/bin/python -m bridge.server
|
||||
|
||||
Reference in New Issue
Block a user