flux2k9b-simpletuner-lora-loona

This is a PEFT LoRA derived from black-forest-labs/FLUX.2-klein-base-9B.

The main validation prompt used during training was:

Loona with her pale grey furand red eyes sits at a desk typing on a laptop with a focused exprssion, wearing her black studded outfit andchoker. The office has pink-tinted walls with a potted plant visible on the desk.

Loona

Validation settings

  • CFG: 4.0
  • CFG Rescale: 0.0
  • Steps: 20
  • Sampler: FlowMatchEulerDiscreteScheduler
  • Seed: None
  • Resolution: 1024x1024

Note: The validation settings are not necessarily the same as the training settings.

The text encoder was not trained. You may reuse the base model text encoder for inference.

Training settings

  • Training epochs: 24

  • Training steps: 2500

  • Learning rate: 1e-05

    • Learning rate schedule: cosine
    • Warmup steps: 100
  • Max grad value: 2.0

  • Effective batch size: 2

    • Micro-batch size: 1
    • Gradient accumulation steps: 2
    • Number of GPUs: 1
  • Gradient checkpointing: True

  • Prediction type: flow_matching[]

  • Optimizer: optimi-lion

  • Trainable parameter precision: Pure BF16

  • Base model precision: int8-torchao

  • Caption dropout probability: 0.1%

  • LoRA Rank: 16

  • LoRA Alpha: None

  • LoRA Dropout: 0.1

  • LoRA initialisation style: default

  • LoRA mode: Standard

Datasets

loona-flux2

  • Repeats: 3
  • Total number of images: 50
  • Total number of aspect buckets: 1
  • Resolution: 0.262144 megapixels
  • Cropped: False
  • Crop style: None
  • Crop aspect: None
  • Used for regularisation data: No

Inference

import torch
from diffusers import DiffusionPipeline

model_id = 'black-forest-labs/FLUX.2-klein-base-9B'
adapter_id = 'markury/flux2k9b-simpletuner-lora-loona'
pipeline = DiffusionPipeline.from_pretrained(model_id, torch_dtype=torch.bfloat16) # loading directly in bf16
pipeline.load_lora_weights(adapter_id)

prompt = "Loona with her pale grey furand red eyes sits at a desk typing on a laptop with a focused exprssion, wearing her black studded outfit andchoker. The office has pink-tinted walls with a potted plant visible on the desk."
negative_prompt = 'blurry, cropped, ugly'

## 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
model_output = pipeline(
    prompt=prompt,
    negative_prompt=negative_prompt,
    num_inference_steps=20,
    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=4.0,
).images[0]

model_output.save("output.png", format="PNG")

Exponential Moving Average (EMA)

SimpleTuner generates a safetensors variant of the EMA weights and a pt file.

The safetensors file is intended to be used for inference, and the pt file is for continuing finetuning.

The EMA model may provide a more well-rounded result, but typically will feel undertrained compared to the full model as it is a running decayed average of the model weights.

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