-
Your Name authored
Root cause: The refactored code was hardcoding torch.float16 for CUDA, ignoring the --image-precision bf16 CLI argument. The Z-Image-Turbo model requires bfloat16 precision - using float16 causes NaN values in the image processor, resulting in all-black images. Also restored the original model loading logic with: - GGUF model detection (skip diffusers for GGUF) - OOM retry with progressive memory optimization - use_safetensors=True - Sequential CPU offload support
9b3126d7
| Name |
Last commit
|
Last update |
|---|---|---|
| .. | ||
| __init__.py | ||
| app.py | ||
| images.py | ||
| log.py | ||
| state.py | ||
| text.py | ||
| transcriptions.py | ||
| tts.py |