Files
javis_bot/bridge/requirements-bridge.txt
javis-bot 0dbc0300d7
Some checks failed
Release / semantic-release (push) Successful in 19s
tests / Unit tests (Linux, Python 3.11) (push) Successful in 9m54s
Release / build-linux (push) Failing after 7m14s
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 / release-main (push) Has been cancelled
Release / release-develop (push) Has been cancelled
Enable GPU: LLM + Whisper on the RTX 5050, pick qwen3:8b
GPU acceleration is now on by default and verified end-to-end on the
Blackwell RTX 5050 (sm_120):

- Ollama offloads 100% to GPU (log: library=CUDA compute=12.0,
  BLACKWELL_NATIVE_FP4=1). compose passes GPU via CDI
  (devices: nvidia.com/gpu=all) to both ollama and javis.
- Whisper STT on GPU: faster-whisper>=1.1.0 + nvidia-cublas/cudnn cu12,
  LD_LIBRARY_PATH baked into the image. Verified float16 transcribe on
  sm_120; bridge auto-falls back to CPU when no GPU is present.
- Model: default chat model -> qwen3:8b (best 8GB-VRAM tool-calling,
  ~5GB Q4). Embed stays nomic-embed-text.
- README documents the host one-time setup (nvidia-container-toolkit +
  `nvidia-ctk cdi generate`) and GPU on/off.

Verified: image builds; GPU visible in both containers via compose;
ollama ps = 100% GPU; faster-whisper cuda OK + CPU fallback OK;
bridge /health 200.
2026-06-09 15:49:21 +09:00

35 lines
1.0 KiB
Plaintext

# Slim dependency set for the containerized brain bridge.
# Excludes the upstream desktop GUI / dictation / packaging / alternate-TTS
# stack (PyQt6, pyinstaller, sounddevice, webrtcvad, pynput, pygame,
# chatterbox-tts/torch, mlx) which are unused in the Discord+VNC deployment.
# --- Brain runtime (imported when the reply engine loads) ---
python-dotenv==1.0.1
# >=1.1.0 pulls a ctranslate2 with Blackwell (sm_120) CUDA kernels.
faster-whisper>=1.1.0
mcp==1.13.1
numpy<2.0.0
rapidfuzz==3.6.1
requests==2.32.3
# --- CUDA libraries for GPU-accelerated Whisper (RTX 5050 / sm_120) ---
# ctranslate2 dlopens these at transcribe time; LD_LIBRARY_PATH is set in the
# Dockerfile to point at them. Verified working on Blackwell sm_120.
nvidia-cublas-cu12
nvidia-cudnn-cu12
# --- Bridge HTTP service ---
flask>=3.0.0
# --- Text-to-speech (Piper) ---
piper-tts>=1.3.0
# --- Built-in tools (lazily imported; needed for full functionality) ---
beautifulsoup4>=4.12.0
lxml>=4.9.0
html2text>=2020.1.16
geoip2==4.8.0
Pillow==10.4.0
pytesseract==0.3.13
faiss-cpu>=1.7.4