ai-toolkit / config /examples /train_lora_flex2_24gb.yaml
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# Note, Flex2 is a highly experimental WIP model. Finetuning a model with built in controls and inpainting has not
# been done before, so you will be experimenting with me on how to do it. This is my recommended setup, but this is highly
# subject to change as we learn more about how Flex2 works.
---
job: extension
config:
# this name will be the folder and filename name
name: "my_first_flex2_lora_v1"
process:
- type: 'sd_trainer'
# root folder to save training sessions/samples/weights
training_folder: "output"
# uncomment to see performance stats in the terminal every N steps
# performance_log_every: 1000
device: cuda:0
# if a trigger word is specified, it will be added to captions of training data if it does not already exist
# alternatively, in your captions you can add [trigger] and it will be replaced with the trigger word
# trigger_word: "p3r5on"
network:
type: "lora"
linear: 32
linear_alpha: 32
save:
dtype: float16 # precision to save
save_every: 250 # save every this many steps
max_step_saves_to_keep: 4 # how many intermittent saves to keep
push_to_hub: false #change this to True to push your trained model to Hugging Face.
# You can either set up a HF_TOKEN env variable or you'll be prompted to log-in
# hf_repo_id: your-username/your-model-slug
# hf_private: true #whether the repo is private or public
datasets:
# datasets are a folder of images. captions need to be txt files with the same name as the image
# for instance image2.jpg and image2.txt. Only jpg, jpeg, and png are supported currently
# images will automatically be resized and bucketed into the resolution specified
# on windows, escape back slashes with another backslash so
# "C:\\path\\to\\images\\folder"
- folder_path: "/path/to/images/folder"
# Flex2 is trained with controls and inpainting. If you want the model to truely understand how the
# controls function with your dataset, it is a good idea to keep doing controls during training.
# this will automatically generate the controls for you before training. The current script is not
# fully optimized so this could be rather slow for large datasets, but it caches them to disk so it
# only needs to be done once. If you want to skip this step, you can set the controls to [] and it will
controls:
- "depth"
- "line"
- "pose"
- "inpaint"
# you can make custom inpainting images as well. These images must be webp or png format with an alpha.
# just erase the part of the image you want to inpaint and save it as a webp or png. Again, erase your
# train target. So the person if training a person. The automatic controls above with inpaint will
# just run a background remover mask and erase the foreground, which works well for subjects.
# inpaint_path: "/my/impaint/images"
# you can also specify existing control image pairs. It can handle multiple groups and will randomly
# select one for each step.
# control_path:
# - "/my/custom/control/images"
# - "/my/custom/control/images2"
caption_ext: "txt"
caption_dropout_rate: 0.05 # will drop out the caption 5% of time
resolution: [ 512, 768, 1024 ] # flex2 enjoys multiple resolutions
train:
batch_size: 1
# IMPORTANT! For Flex2, you must bypass the guidance embedder during training
bypass_guidance_embedding: true
steps: 3000 # total number of steps to train 500 - 4000 is a good range
gradient_accumulation: 1
train_unet: true
train_text_encoder: false # probably won't work with flex2
gradient_checkpointing: true # need the on unless you have a ton of vram
noise_scheduler: "flowmatch" # for training only
# shift works well for training fast and learning composition and style.
# for just subject, you may want to change this to sigmoid
timestep_type: 'shift' # 'linear', 'sigmoid', 'shift'
optimizer: "adamw8bit"
lr: 1e-4
optimizer_params:
weight_decay: 1e-5
# uncomment this to skip the pre training sample
# skip_first_sample: true
# uncomment to completely disable sampling
# disable_sampling: true
# uncomment to use new vell curved weighting. Experimental but may produce better results
# linear_timesteps: true
# ema will smooth out learning, but could slow it down. Defaults off
ema_config:
use_ema: false
ema_decay: 0.99
# will probably need this if gpu supports it for flex, other dtypes may not work correctly
dtype: bf16
model:
# huggingface model name or path
name_or_path: "ostris/Flex.2-preview"
arch: "flex2"
quantize: true # run 8bit mixed precision
quantize_te: true
# you can pass special training infor for controls to the model here
# percentages are decimal based so 0.0 is 0% and 1.0 is 100% of the time.
model_kwargs:
# inverts the inpainting mask, good to learn outpainting as well, recommended 0.0 for characters
invert_inpaint_mask_chance: 0.5
# this will do a normal t2i training step without inpaint when dropped out. REcommended if you want
# your lora to be able to inference with and without inpainting.
inpaint_dropout: 0.5
# randomly drops out the control image. Dropout recvommended if your want it to work without controls as well.
control_dropout: 0.5
# does a random inpaint blob. Usually a good idea to keep. Without it, the model will learn to always 100%
# fill the inpaint area with your subject. This is not always a good thing.
inpaint_random_chance: 0.5
# generates random inpaint blobs if you did not provide an inpaint image for your dataset. Inpaint breaks down fast
# if you are not training with it. Controls are a little more robust and can be left out,
# but when in doubt, always leave this on
do_random_inpainting: false
# does random blurring of the inpaint mask. Helps prevent weird edge artifacts for real workd inpainting. Leave on.
random_blur_mask: true
# applies a small amount of random dialition and restriction to the inpaint mask. Helps with edge artifacts.
# Leave on.
random_dialate_mask: true
sample:
sampler: "flowmatch" # must match train.noise_scheduler
sample_every: 250 # sample every this many steps
width: 1024
height: 1024
prompts:
# you can add [trigger] to the prompts here and it will be replaced with the trigger word
# - "[trigger] holding a sign that says 'I LOVE PROMPTS!'"\
# you can use a single inpaint or single control image on your samples.
# for controls, the ctrl_idx is 1, the images can be any name and image format.
# use either a pose/line/depth image or whatever you are training with. An example is
# - "photo of [trigger] --ctrl_idx 1 --ctrl_img /path/to/control/image.jpg"
# for an inpainting image, it must be png/webp. Erase the part of the image you want to inpaint
# IMPORTANT! the inpaint images must be ctrl_idx 0 and have .inpaint.{ext} in the name for this to work right.
# - "photo of [trigger] --ctrl_idx 0 --ctrl_img /path/to/inpaint/image.inpaint.png"
- "woman with red hair, playing chess at the park, bomb going off in the background"
- "a woman holding a coffee cup, in a beanie, sitting at a cafe"
- "a horse is a DJ at a night club, fish eye lens, smoke machine, lazer lights, holding a martini"
- "a man showing off his cool new t shirt at the beach, a shark is jumping out of the water in the background"
- "a bear building a log cabin in the snow covered mountains"
- "woman playing the guitar, on stage, singing a song, laser lights, punk rocker"
- "hipster man with a beard, building a chair, in a wood shop"
- "photo of a man, white background, medium shot, modeling clothing, studio lighting, white backdrop"
- "a man holding a sign that says, 'this is a sign'"
- "a bulldog, in a post apocalyptic world, with a shotgun, in a leather jacket, in a desert, with a motorcycle"
neg: "" # not used on flex2
seed: 42
walk_seed: true
guidance_scale: 4
sample_steps: 25
# you can add any additional meta info here. [name] is replaced with config name at top
meta:
name: "[name]"
version: '1.0'