--- license: other base_model: "flux/unknown-model" tags: - flux - flux-diffusers - text-to-image - diffusers - simpletuner - safe-for-work - lora - template:sd-lora - standard inference: true widget: - text: 'unconditional (blank prompt)' parameters: negative_prompt: 'blurry, cropped, ugly' output: url: ./assets/image_0_0.png - text: 'A photo-realistic image of a cat' parameters: negative_prompt: 'blurry, cropped, ugly' output: url: ./assets/image_1_0.png --- # autotrain-07-01 This is a standard PEFT LoRA derived from [flux/unknown-model](https://huggingface.co/flux/unknown-model). The main validation prompt used during training was: ``` A photo-realistic image of a cat ``` ## Validation settings - CFG: `3.5` - CFG Rescale: `0.0` - Steps: `28` - Sampler: `FlowMatchEulerDiscreteScheduler` - Seed: `42` - Resolution: `1024x1024` - Skip-layer guidance: Note: The validation settings are not necessarily the same as the [training settings](#training-settings). You can find some example images in the following gallery: The text encoder **was not** trained. You may reuse the base model text encoder for inference. ## Training settings - Training epochs: 4 - Training steps: 2000 - Learning rate: 0.0001 - Learning rate schedule: polynomial - Warmup steps: 100 - Max grad norm: 2.0 - Effective batch size: 1 - Micro-batch size: 1 - Gradient accumulation steps: 1 - Number of GPUs: 1 - Gradient checkpointing: True - Prediction type: flow-matching (extra parameters=['shift=3', 'flux_guidance_mode=constant', 'flux_guidance_value=1.0', 'flow_matching_loss=compatible', 'flux_lora_target=all']) - Optimizer: adamw_bf16 - Trainable parameter precision: Pure BF16 - Caption dropout probability: 5.0% - LoRA Rank: 16 - LoRA Alpha: None - LoRA Dropout: 0.1 - LoRA initialisation style: default ## Datasets ### autotrain-256 - Repeats: 10 - Total number of images: 6 - Total number of aspect buckets: 1 - Resolution: 0.065536 megapixels - Cropped: False - Crop style: None - Crop aspect: None - Used for regularisation data: No ### autotrain-crop-256 - Repeats: 10 - Total number of images: 6 - Total number of aspect buckets: 1 - Resolution: 0.065536 megapixels - Cropped: True - Crop style: center - Crop aspect: square - Used for regularisation data: No ### autotrain-512 - Repeats: 10 - Total number of images: 6 - Total number of aspect buckets: 2 - Resolution: 0.262144 megapixels - Cropped: False - Crop style: None - Crop aspect: None - Used for regularisation data: No ### autotrain-crop-512 - Repeats: 10 - Total number of images: 6 - Total number of aspect buckets: 1 - Resolution: 0.262144 megapixels - Cropped: True - Crop style: center - Crop aspect: square - Used for regularisation data: No ### autotrain-768 - Repeats: 10 - Total number of images: 6 - Total number of aspect buckets: 4 - Resolution: 0.589824 megapixels - Cropped: False - Crop style: None - Crop aspect: None - Used for regularisation data: No ### autotrain-crop-768 - Repeats: 10 - Total number of images: 5 - Total number of aspect buckets: 1 - Resolution: 0.589824 megapixels - Cropped: True - Crop style: center - Crop aspect: square - Used for regularisation data: No ### autotrain-1024 - Repeats: 10 - Total number of images: 5 - Total number of aspect buckets: 3 - Resolution: 1.048576 megapixels - Cropped: False - Crop style: None - Crop aspect: None - Used for regularisation data: No ### autotrain-crop-1024 - Repeats: 10 - Total number of images: 3 - Total number of aspect buckets: 1 - Resolution: 1.048576 megapixels - Cropped: True - Crop style: center - Crop aspect: square - Used for regularisation data: No ## Inference ```python import torch from diffusers import DiffusionPipeline model_id = '/workspace/models/FLUX.1-dev' adapter_id = 'datnt114/autotrain-07-01' pipeline = DiffusionPipeline.from_pretrained(model_id, torch_dtype=torch.bfloat16) # loading directly in bf16 pipeline.load_lora_weights(adapter_id) prompt = "A photo-realistic image of a cat" ## Optional: quantise the model to save on vram. ## Note: The model was quantised during training, and so it is recommended to do the same during inference time. from optimum.quanto import quantize, freeze, qint8 quantize(pipeline.transformer, weights=qint8) freeze(pipeline.transformer) pipeline.to('cuda' if torch.cuda.is_available() else 'mps' if torch.backends.mps.is_available() else 'cpu') # the pipeline is already in its target precision level image = pipeline( prompt=prompt, num_inference_steps=28, generator=torch.Generator(device='cuda' if torch.cuda.is_available() else 'mps' if torch.backends.mps.is_available() else 'cpu').manual_seed(42), width=1024, height=1024, guidance_scale=3.5, ).images[0] image.save("output.png", format="PNG") ```