montignyp
bluej-flux-lora
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README
License: apache-2.0Model Details
- Base Model: black-forest-labs/FLUX.1-dev
- Training Steps: 1500
- Final Loss: 0.91
- Resolution: 512x512
- LoRA Rank: 16
- LoRA Alpha: 16
- Learning Rate: 1e-4
- Scheduler: Cosine
- Caption Dropout: 0.1
Usage
Use the trigger word bluej in your prompts.
Example prompts:
- "bluej, woman, professional photo, studio lighting"
- "bluej, portrait, looking at viewer, high quality"
- "bluej, full body, casual outfit, natural lighting"
Training Data
Trained on 363 images with 10 repeats (3630 effective samples) from the bluej-character dataset.
Files
bluej-flux-lora.safetensors- Final model (recommended)bluej-flux-lora-step00000500.safetensors- Checkpoint at step 500bluej-flux-lora-step00001000.safetensors- Checkpoint at step 1000bluej-flux-lora-step00001500.safetensors- Checkpoint at step 1500
Model provider
montignyp
Model tree
Base
black-forest-labs/FLUX.1-dev
Adapter
this model
Modalities
Input
Text
Output
Image
Pricing
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